388 Commits

Author SHA1 Message Date
Roberto
53962a05a4 merged adiuvAI and api repo 2026-06-12 18:01:41 +02:00
Roberto
b9148c67a0 Merge remote-tracking branch 'api/main' 2026-06-12 17:35:26 +02:00
Roberto
7c9e8296bf Spostati i file del Repo api nella sua sottocartella per l'unione 2026-06-12 17:31:58 +02:00
Roberto
11e5e1e656 Spostati i file della app electron nella sua sottocartella dedicata 2026-06-12 17:30:07 +02:00
f36ca72396 Merge pull request 'develop' (#2) from develop into main
Reviewed-on: adiuvAI/api#2
2026-06-12 15:27:23 +00:00
f0adae6513 Merge pull request 'develop' (#17) from develop into main
Reviewed-on: #17
2026-06-12 15:26:38 +00:00
Roberto
4b80bcb53b fix(scouts): static import of scout-suggestion-handler + cloud scout UI polish
- backend-client.ts: replace lazy await import('../scouts/scout-suggestion-handler')
  with static import. Lazy import created a separate Vite chunk that re-evaluated
  side-effectful main-process modules → second IPC handler registration for
  'dialog:showOpenDialog' threw → scout proposal persist failed → no ack → no row.
- backend-client.ts: log parse failures w/ frame type + zod issues for diagnostics
- ScoutRow.tsx: cloud scouts show "Real-time" trigger label and hide "Run now"
  button (cloud runs are push/cron-driven, not user-triggered)
- scripts/check_scouts_db.py: inspect Electron SQLite for scout tables + suggestions

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-06-11 00:27:22 +02:00
Roberto
79a926e4d8 feat(scouts): debug scripts + deliver_pending diagnostic logs
- scripts/trigger_gmail_scout.py: manually fire ScoutEngine.trigger_scout
- scripts/inspect_gmail_scout_token.py: decrypt + show stored OAuth scopes
- scripts/show_gmail_scout_state.py: print scout config + queue/log counts
- scripts/reset_triage_queue_to_queued.py: revert delivered → queued for re-delivery
- engine.py: info logs around deliver_pending (rows found, send_json roundtrip)

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-06-11 00:27:04 +02:00
Roberto
55c1bab7b1 fix(db): correct when timestamps on migrations 0007/0008 so migrator applies them 2026-06-11 00:09:42 +02:00
Roberto
60925da98c feat(scouts): cloud creation finalizes scout only at end (pending-session OAuth)
The creation flow no longer creates a scout at the Connect step. It starts a
server-side pending OAuth session (startGmailOAuthDraft), advances to the filter
step on the create-mode callback (carrying the returned sessionId), lists labels
from the session token, and creates the scout only at finalize. Abandoned/errored
attempts leave no orphan rows. The reconnect path (startGmailOAuth/gmailLabels)
is unchanged.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-10 18:25:19 +02:00
Roberto
f64ca11888 feat(scouts): pending-session Gmail OAuth — create cloud scout at finalize
Refactor _pending_scout_oauth_states from a tuple to a dict carrying
mode (reconnect|create), draft fields, and a transient encrypted token.
Add authorize-draft, session-labels, and cloud/finalize endpoints so the
scout row is created only when the flow completes — abandoned flows leave
no orphan rows. Zero-trust: the encrypted token lives only in the in-memory
session (<=15 min) until finalize persists it.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-10 18:23:52 +02:00
Roberto
93674456ec fix(scouts): branch delete toast on result.success to avoid false 'deleted' 2026-06-10 18:16:59 +02:00
Roberto
95d4e4be75 fix(scouts): delete cloud scout via Core delete to avoid varchar=uuid cascade error
The run_logs relationship joins scout_run_logs.scout_id (varchar) to
cloud_scout_configs.id (uuid); Postgres has no varchar=uuid operator so the
ORM cascade on db.delete(scout) 500'd. Core deletes bypass it; triage queue
rows cascade via FK ondelete.
2026-06-10 18:16:59 +02:00
Roberto
a7b9d51268 docs(CLAUDE): note BackendClient camelCase/snake_case conversion footgun 2026-06-10 18:02:47 +02:00
Roberto
9733aa6a3a fix(scouts): read camelCased authorizeUrl from proxyGet in startGmailOAuth
proxyGet camelCases responses; reading data.authorize_url returned undefined,
causing shell.openExternal(undefined) -> 'conversion failure from undefined'.
2026-06-10 18:02:01 +02:00
Roberto
e8f56feaac fix(scouts): correct TemplateSelectCard shared/api-types import depth 2026-06-10 16:29:00 +02:00
Roberto
b6468c755f fix(scouts): hide settings header during scout creation flow 2026-06-10 16:25:43 +02:00
Roberto
6868d8813e i18n: add cloud scout creation + config keys (5 languages) 2026-06-10 16:23:28 +02:00
Roberto
486ff83a94 feat(scouts): disable Teams/Outlook template cards (coming soon) 2026-06-10 16:20:40 +02:00
Roberto
0a893d1929 refactor(scouts): rewrite CloudScoutConfigPanel for slim-model parity 2026-06-10 16:18:19 +02:00
Roberto
e6d3f9d7be feat(scouts): add CloudScoutCreationFlow Gmail slim flow 2026-06-10 16:16:38 +02:00
Roberto
3b41e8e7aa refactor(scouts): extract LocalScoutCreationFlow, stepper becomes router 2026-06-10 16:15:02 +02:00
Roberto
4979c2b7d9 feat(scouts): tRPC cloud input changes + gmailLabels + disconnectGmail 2026-06-10 16:13:12 +02:00
Roberto
7bd4cc9d9e feat(scouts): add cloud scout config fields to shared type 2026-06-10 16:11:50 +02:00
Roberto
b9b0a10139 feat(scouts): add gmail label-list + disconnect routes 2026-06-10 16:09:10 +02:00
Roberto
78767512f9 feat(scouts): add GmailConnector list_labels + stop_watch 2026-06-10 15:36:29 +02:00
Roberto
6e12429f92 feat(scouts): persist connected gmail_address on oauth callback 2026-06-10 15:34:56 +02:00
Roberto
e87b64cd68 feat(scouts): add gmail_address column to cloud_scout_configs 2026-06-10 15:34:23 +02:00
Roberto
1c65bbfe75 feat(scouts): add cloud scout CRUD routes + serializer 2026-06-10 15:29:02 +02:00
Roberto
4cd1ac11cc feat(scouts): add cloud scout CRUD pydantic schemas 2026-06-10 15:15:05 +02:00
Roberto
1a4cfb07a5 fix(scouts): correct stale /api/v1/agents URLs and conditional scout_proposal ack
Replace all /api/v1/agents/cloud with /api/v1/scouts/cloud in scoutCloudRouter
(list, create, update, delete). Fix notes-backfill /api/v1/agents/notes/summarize
to /api/v1/scouts/notes/summarize. Move scout_proposal_ack ws.send inside the
try block so it is only sent on successful persist.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 05:39:48 +02:00
Roberto
0833db239c fix(scouts): fetch single Gmail message instead of bulk in fetch_content
Replace bulk GmailClient.fetch_messages() + linear search with a direct
service.users().messages().get(format="full") call. Adds _extract_plain_text_body
helper for recursive MIME part walking. Update test to patch _get_gmail_service.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 05:39:39 +02:00
Roberto
6adb13ff88 feat(scouts): Gmail OAuth UI flow
- scout.cloud.startGmailOAuth mutation: GET authorize URL, open in system browser
- scout.cloud.completeGmailOAuth mutation: POST code+state to backend callback
- handleDeepLink extended: adiuvai://scout/oauth/gmail/callback → IPC broadcast
- preload: expose onScoutGmailOAuthCallback on window.electronAI
- CloudScoutConfigPanel: Connect Gmail button + useEffect callback subscription
- CloudScoutConfig schema: add optional oauthConnected boolean field
- i18n: scouts.connectGmail + toast.scout.gmailConnected in all 5 locales

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 04:54:24 +02:00
Roberto
11b31e5814 feat(scouts): add Gmail OAuth scout-setup routes
Three new endpoints under /api/v1/scouts/oauth/gmail/:
  GET  /authorize       — PKCE consent URL for gmail.readonly + gmail.modify scopes
  GET  /web-callback    — bounces to adiuvai:// deep link (excluded from schema)
  POST /callback        — exchanges code, encrypts + stores token, triggers setup_watch

State TTL 10 min, in-memory (same pattern as auth.py _pending_states).
Redirect URI base derived from existing OAUTH_REDIRECT_URI setting.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 04:54:10 +02:00
Roberto
cb274c9728 feat(scouts): add cron-fallback poll + gmail watch renewal ticks 2026-05-16 04:36:49 +02:00
Roberto
d3497a1908 feat(scouts): gmail pub/sub webhook with JWT verification 2026-05-16 04:31:57 +02:00
Roberto
0c0299808c feat(scouts): real triage LLM call via scout-triage-system prompt 2026-05-16 04:26:16 +02:00
Roberto
d1016fd65a feat(scouts): register GmailConnector at startup
Adds GmailConnector registration to the FastAPI lifespan startup block,
making it available via the connector registry for the ScoutEngine
and any other startup-time consumers.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 04:18:33 +02:00
Roberto
c559754532 feat(scouts): add GmailConnector
Implements GmailConnector — the first concrete SourceConnector.
Wraps existing GmailClient + low-level Gmail API service for metadata-only
fetch, trash archive, incremental history polling, and Pub/Sub watch setup.
Adds GMAIL_PUBSUB_TOPIC setting (empty string default for dev).
Adds 3 passing unit tests (mocked API, no real credentials required).

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 04:18:07 +02:00
Roberto
ff1208fd3c feat(scouts): handle scout_proposal frames and ack
On receiving a scout_proposal WS frame, persist the proposal into the
local scout_suggestions table (idempotent via onConflictDoNothing), then
send scout_proposal_ack back to the backend. Adds WsScoutProposalSchema
and WsScoutProposalAckSchema to the shared api-types contract.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 03:48:21 +02:00
Roberto
9f21d5ae8f feat(scouts): deliver_pending drains queue and sends scout_proposal frames
Add ScoutEngine.deliver_pending(user_id, ws) that queries status='queued'
rows, fetches metadata via the registered connector, sends scout_proposal
WS frames, and flips status to 'delivered'. Add ack_proposal(proposal_id)
that flips 'delivered' -> 'acked' (idempotent). Wire both into device_ws.py:
deliver_pending fires as a background task after device_hello + register;
scout_proposal_ack frames dispatch to ack_proposal in the message loop.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 03:45:04 +02:00
Roberto
699bba3a30 feat(schemas): add scout_proposal + scout_proposal_ack WS frame types 2026-05-16 03:10:04 +02:00
Roberto
3d4aef7fe3 feat(db): add scout_suggestions table 2026-05-16 03:00:36 +02:00
Roberto
1364b9ba37 feat(scouts): add ScoutEngine triage + queue insertion 2026-05-16 02:55:18 +02:00
Roberto
27df8c0a8d feat(scouts): add connector registry 2026-05-16 02:45:12 +02:00
Roberto
4933f8055c feat(scouts): add SourceConnector protocol and item types 2026-05-16 02:41:40 +02:00
Roberto
ac33ac1c0d feat(scouts): add ScoutTriageQueue table + cloud_scout_configs gmail fields
Tasks 12+13 of Phase 2 — first new infra after rename.
Alembic 008 creates scout_triage_queue with unique constraint on
(scout_id, source_msg_ref) and partial index on expires_at for active
rows. Adds four columns to cloud_scout_configs: auto_trash_spam,
gmail_history_id, gmail_watch_expires_at, device_inactivity_pause_days.
SQLAlchemy model ScoutTriageQueue added; CloudScoutConfig updated to
match. Imports extended with UniqueConstraint and text.
2026-05-16 02:36:20 +02:00
Roberto
5cd895f04e refactor: rename CloudAgentConfig type and agentIds WS field to scout
- shared/api-types.ts: LocalAgentConfig → LocalScoutConfig,
  CloudAgentConfig → CloudScoutConfig (schema + type),
  agentIds → scoutIds in WsDeviceHelloSchema
- backend-client.ts: agentIds local var → scoutIds, wire key
  agent_ids → scout_ids via toSnakeCase
- router/index.ts: import + generic type params updated
- Settings renderer: CloudScoutConfigPanel, ScoutRow, ScoutsSection
  import updated to CloudScoutConfig
- .claude/CLAUDE.md: route path /api/v1/scouts/notes/summarize

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 01:50:33 +02:00
Roberto
fbd308d288 refactor(ws): rename agent_ids to scout_ids in device_hello frame
WsDeviceHello.agent_ids → scout_ids in Pydantic schema,
device_ws.py handler, and all test fixtures (test_device_ws,
test_ws_unified, test_memory_middleware). Also fixes stale
CloudAgentConfig reference in gmail.py docstring.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 01:50:15 +02:00
Roberto
49b1d60fca i18n: rename agents keys to scouts across all 5 languages
- settings.agents* → settings.scouts* (bucket 1)
- top-level agents namespace → scouts, all child keys renamed
  (noAgentsYet→noScoutsYet, createAgent→createScout, etc.) (bucket 2)
- toast.agent → toast.scout, values updated to say scout (bucket 3)
- Per-language translations applied consistently (en/it/es/fr/de)

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 01:30:21 +02:00
Roberto
b258ec3de5 refactor(renderer): rename Agent components and types to Scout
- git mv AgentsSection → ScoutsSection, AgentRow → ScoutRow,
  LocalAgentConfigPanel → LocalScoutConfigPanel,
  CloudAgentConfigPanel → CloudScoutConfigPanel,
  InlineAgentCreationStepper → InlineScoutCreationStepper,
  AgentRunHistorySheet → ScoutRunHistorySheet,
  AgentRunLog → ScoutRunLog
- Update all exported function names, internal vars, toast i18n keys
  (toast.agent.* → toast.scout.*, scouts.* i18n keys)
- Replace all trpc.agent.* calls with trpc.scout.* in renderer
- Rename LocalAgentConfig → LocalScoutConfig in types.ts;
  update SectionId 'agents' → 'scouts' and SECTIONS entry
- Update settings.tsx: import ScoutsSection, render on section 'scouts'
- Update ScoutRunHistorySheet RunSummary type: agentId → scoutId
- Rewrite ScoutRunLog to use new ScoutRunSummary shape (actionCounts
  instead of deprecated itemsProcessed/itemsCreated/errors)
- Fix JourneyDialog and PromptBuilderChat: trpc.agent.journey.* → scout
- Fix import paths for shared/api-types (../../../../ → ../../../)

Typecheck: 96 errors before → 53 after (43 errors resolved, all 43
were broken trpc.agent.* refs from Task 8). Remaining 53 are
pre-existing unrelated issues.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 01:26:08 +02:00
Roberto
f0a18d7011 refactor(main): rename agent-scheduler/store/router symbols to scout
- Move src/main/agents/agent-scheduler.ts → src/main/scouts/scout-scheduler.ts
- Rename exported functions: startAgentScheduler/stopAgentScheduler/tickAgentScheduler → startScoutScheduler/stopScoutScheduler/tickScoutScheduler
- Update URL: /api/v1/agents/trigger → /api/v1/scouts/trigger; /api/v1/agents/can-create → /api/v1/scouts/can-create; /api/v1/agents/catalog → /api/v1/scouts/catalog
- store.ts: LocalAgentLocalConfig → LocalScoutConfig; getLocalAgents/saveLocalAgent/deleteLocalAgent/getLocalAgent → getLocalScouts/saveLocalScout/deleteLocalScout/getLocalScout; storage key localAgents → localScouts
- router/index.ts: agentRouter → scoutRouter (all sub-vars too); appRouter key agent → scout
- index.ts: update scheduler import path and start/stop call sites
- backend-client.ts: getLocalAgents → getLocalScouts

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 01:13:07 +02:00
Roberto
9b66dc3329 refactor(db): rename agent_runs/agent_run_actions to scout_*
Rename Drizzle table definitions: agentRuns → scoutRuns,
agentRunActions → scoutRunActions. Column agentId → scoutId.
Hand-crafted migration 0007_scouts_rename.sql uses ALTER TABLE RENAME
+ CREATE/INSERT/DROP for column rename (SQLite limitation). Updated
all main-process consumers (backend-client, agent-scheduler, router).
Renderer-side type/component rename deferred to Tasks 8-9.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 01:06:21 +02:00
Roberto
105cf52083 refactor(schemas): rename Agent* schemas and WS frame types to Scout*
Rename all Pydantic models referring to the scout subsystem:
AgentConfig → ScoutConfig, ContentTypeConfig → ScoutContentTypeConfig,
AgentCatalogItem → ScoutCatalogItem, AgentCreationCheckRequest/Response →
ScoutCreationCheckRequest/Response, AgentTriggerRequest → ScoutTriggerRequest,
AgentRunLogResponse → ScoutRunLogResponse.

LLM-helper agent schemas in app/agents/* are untouched.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 00:58:14 +02:00
Roberto
c2b27d4fb7 refactor(core): rename agent_runner/session_buffer/registry to scout_* 2026-05-16 00:27:50 +02:00
Roberto
b92e72b685 refactor(routes): rename /agents and /agent-setup to /scouts and /scout-setup
Rename routes/agents.py → routes/scouts.py and routes/agent_setup.py →
routes/scout_setup.py. Update APIRouter prefix/tags in scouts.py to
/scouts and scouts. Update main.py router registration, device_ws.py
import, and test_journey_v2.py import/patch paths to use scout_setup.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-16 00:00:07 +02:00
Roberto
1ccb0282fe refactor(models): rename Agent classes to Scout
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-15 23:52:29 +02:00
Roberto
1a20c11e86 feat(db): rename agents to scouts (alembic 007) 2026-05-15 23:36:28 +02:00
Roberto
c1b1b289c1 clear floating 2026-05-15 21:50:31 +02:00
Roberto
6aa7cb3d22 feat(contextual): empty-state copy per scope on sidebar
When the contextual sidebar opens with no messages, show a soft
hint anchored to the current page. Hint includes the entity name
for project / note views and a generic prompt for global lists.
Notes hint warns that note editing is deferred to a later release.
2026-05-15 21:16:45 +02:00
Roberto
70c19d3064 chore(contextual): purge residual floating WsFrame defs + output_formatter branch
After M6.5 deletion of run_floating_stream and the frame dispatch,
WsFrameType.floating_request/floating_domain, WsFloatingRequest,
WsFloatingDomain, WsFloatingScope, WsDomain, and the StreamFormatter's
floating_domain branch were left as dead protocol surface. Remove them,
along with the corresponding test cases in test_schemas_v3.py and
test_output_formatter.py.
2026-05-15 18:56:29 +02:00
Roberto
886730b47e test(contextual): remove floating-specific tests
Replaced by tests/test_contextual_*.py in M3.
No dedicated test_floating_*.py files existed; floating test
functions were embedded in test_deep_agent.py and test_ws_unified.py
and have been removed from those files.
2026-05-15 18:53:08 +02:00
Roberto
052c7e3741 refactor(contextual): drop floating WS frame, runner, and prompt fallback
contextual_request + contextual_scope_update are the only WS
flows for ad-hoc contextual chat now. Floating system prompt
constant removed; Langfuse 'floating_system' is deleted in a
separate manual step. Also removes floating-agent LLM slot from
llm.py and the associated LLM_MODEL_FLOATING_AGENT setting entry.
2026-05-15 18:53:01 +02:00
Roberto
1f60931a0f refactor(contextual): main process drops sendFloatingRequest and floating mode
ai.chat tRPC procedure now accepts mode='contextual' (or unset for home).
Orchestrator loses the floating delegation branch. Backend client method
and WsFloatingDomain shared type removed.
2026-05-15 18:43:51 +02:00
Roberto
42a457f973 refactor(contextual): drop 'floating' branch from useAIChat and useChatStream
UIChatContext is now 'global' | 'project' only. Floating domain
signal, scope field, and onDomainSignal callback removed. ChatInputBox
no longer defines floating variant. TaskBriefChat migrated to contextual mode.
2026-05-15 18:40:31 +02:00
Roberto
e6357b0d61 refactor(contextual): strip all data-ai-section attributes
Section-anchoring obsolete now that there is no floating chat.
The contextual sidebar uses scope payload, not DOM attributes.
Also removes dead sectionId/sectionLabel props from TimelineGanttView.
2026-05-15 18:38:40 +02:00
Roberto
63fc3cfa43 refactor(contextual): delete FloatingChat, FloatingChatContext, useDoubleClickAI
Replaced by ContextualChatProvider + AdiuvaTriggerButton in M4.
Pre-1.0 clean removal — no deprecation period.
2026-05-15 18:36:51 +02:00
Roberto
d63fd5f3b9 fix(contextual): narrow tool palette + forbid legacy read tools
Smoke trace 0b46841484ba7d024ed9f8d5ac8b1df0 showed the agent
defaulting to list_projects + get_project for a 'summarize
project Nexus' query, returning a shallow row without aiSummary
or tasks/notes. The legacy read tools were exposed via
*PROJECT_TOOLS / *TASK_TOOLS spreading.

Now _contextual_tools exposes exactly:
- get_page_details (sole read; supports per-entity + list views)
- create_task, update_task
- create_note
- create_timeline

Prompt rule 2 explicitly forbids the legacy reads, and the test
asserts they are excluded from the palette.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-15 18:23:55 +02:00
Roberto
d50be8e7af feat(contextual): get_page_details op in drizzle-executor
Dispatches client-side snapshots for project/task/note entities and
tasks_all/projects_all/timeline_all list variants. Consumed by the
backend contextual agent's get_page_details tool over the standard
WS tool-call round-trip.

Also adds 'get_page_details' to ToolCallActionSchema enum in api-types.ts
so the Zod validator accepts the new action without rejecting frames.
2026-05-15 14:46:31 +02:00
Roberto
d6b1a86e95 feat(contextual): notes page header lives in shared AppShell header
Layout: [SidebarTrigger][|][back arrow][space][Saving?][3-dot menu][AdiuvaTriggerButton]

HeaderContext now exposes leftExtras (replaces page label slot when
set) and rightExtras (between flex-1 spacer and trigger button).
Notes route publishes both and drops its inline toolbar bar.

Separator mr-2 removed when leftExtras is set so the back arrow sits
flush against the divider. Header slot components are defined at module
scope and use mutable refs for isSaving/callbacks to avoid infinite
setState loops.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-15 14:41:19 +02:00
Roberto
ca669a1c5c chore(contextual): use sm trigger + scroll context fixes
- AdiuvaTriggerButton uses sm variant (40px, icon 24px)
- AppShell main scroll container: overflow-hidden + flex column so
  routes own their own scroll. Sticky ProjectTabBar still anchors
  to header boundary
- tasks.tsx wrapper gets h-full + overflow-y-auto under the new
  scroll regime
2026-05-15 07:54:26 +02:00
Roberto
ffd0e97508 fix(contextual): better contrast trigger button + use logo-mark.svg asset
- AdiuvaIcon now uses /logo/logo-mark.svg directly (served via vite
  publicDir from adiuvAI/assets/); animation is built into the asset
- Light mode: pure white surface + dusty lavender border so the
  button reads on the pinkish-white canvas; centered ambient shadow
  (was bottom-heavy)
- Dark mode: lifted surface (#1f1f22) with subtle inner highlight
- sm variant bumped to 40px (icon 18px) for sidebar new-chat/close
2026-05-15 07:53:40 +02:00
Roberto
2bc9617b14 fix(layout): restore scroll on tasks and timeline pages
AppShell's post-header wrap div used overflow-hidden to scope a
sticky context for ProjectTabBar. Pages without their own internal
scroll container (tasks, timeline) had their overflow clipped.

overflow-y-auto on the same div keeps the sticky context AND lets
tasks/timeline scroll naturally. Projects' nested scroll container
still works (sticky inside still anchors to this boundary).
2026-05-15 07:37:43 +02:00
Roberto
3aa7aa0d50 fix(projects): ProjectTabBar sticky offset + scroll-spy after AppShell header
The hero is sticky top-0 inside the scroll container; the tab bar
(also inside, immediately after) was also sticky top-0, making it
fight the hero for the same pixel. It now uses style={{ top: heroH }}
so it always sticks just below the hero regardless of compact state.

Also: heroH was captured once at observer-creation time, so it was
0 on cold mounts (hero refs null until data loads) and went stale
when the hero compacted. Replace the snapshot with a ResizeObserver
that keeps heroH in state; both the IntersectionObserver rootMargin
and scrollToSection math update automatically on every hero resize.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-15 07:31:22 +02:00
Roberto
8a6befd481 refactor(projects): hoist create-project button into AppShell header
Removes the projects-list sidebar's internal header strip (title + button).
A new + icon button is registered via useHeaderSlot and renders in the
AppShell header immediately after the page label, only on /projects.
Dialog state is lifted to the route root so the header trigger can open it.

Also fixes sticky-under-header bug: wraps the page content area in a new
overflow-hidden div scoped below the h-14 header, ensuring sticky elements
(ProjectTabBar) anchor to this boundary and not to SidebarInset's top.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-15 07:22:17 +02:00
Roberto
652a6b830d refactor(contextual): move trigger into AppShell header, shrink to sm
Trigger button now lives in the shared header strip next to the
sidebar toggle, hidden on the home route. Per-route renders are
removed; useContextualScope hook calls stay (each route still
publishes its scope payload).

ContextualChatProvider now wraps the header too (moved up one level)
so AdiuvaTriggerButton can call useContextualChat(). showHeader now
covers all non-home non-settings routes; notes/projects no longer
exclude themselves. Notes per-route header simplified to a h-9
toolbar (back + saving + overflow) since SidebarTrigger and the AI
button are provided by AppShell.

Button default size shrinks from 48px to 32px (sm variant). Icon
shrinks from 22px to 14px to match.
2026-05-14 22:33:17 +02:00
Roberto
b2b9607f64 fix(contextual): unmount cleanup + projects-list scope precedence
I1: ContextualChatProvider's send-callback IPC listener now stored
in a ref and unsubscribed on provider unmount, preventing leaked
listeners when navigating mid-stream.

m3: ProjectsPage's 'projects-list' scope call is wrapped in a
ProjectsListScope sub-component that only mounts when no project
is selected, so ProjectDetail's project scope is never clobbered
by the parent route's later effect.
2026-05-14 22:09:39 +02:00
Roberto
bdc9411782 feat(contextual): main process bridge for contextual chat
ai.chat tRPC mutation accepts mode='contextual' + scope (z.unknown)
and routes through orchestrateContextual to backend-client.
New sendContextualRequest/sendContextualScopeUpdate methods on
BackendClient mirror sendFloatingRequest plumbing. IPC handler
ai:contextual-scope-update registered in main; preload exposes
sendContextualScopeUpdate on window.electronAI. Drops as never
cast in ContextualChatContext now that schema accepts the call.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-14 22:03:35 +02:00
Roberto
8529c3f0b6 feat(contextual): trigger + scope hook on Timeline/Tasks/Projects/Notes
Each page publishes its scope on render and renders the
AdiuvaTriggerButton in its header. Project detail derives counts
from existing queries. Loading states yield a partial scope with
entityType=null until data arrives.
2026-05-14 21:58:21 +02:00
Roberto
732235c93a feat(contextual): mount ContextualSidebar via ResizablePanelGroup in AppShell
Provider wraps the Outlet so contextual chat survives all route
transitions. The sidebar is hidden on the home route and when
chat.open is false. Sidebar size is provider-owned and persisted
to localStorage.
2026-05-14 21:55:53 +02:00
Roberto
539beaf225 feat(contextual): ContextualSidebar shell
Top-right elevated controls (new chat, close) and a ChatSurface in
contextual variant. No header, no scope chip. Not yet mounted into
AppShell (M4.5).

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-14 21:52:31 +02:00
Roberto
f9eb4b41b6 feat(contextual): adiuva trigger button + compass icon
Elevated 48px button with continuous compass-settle animation.
Hover deepens shadow and adds a gold ambient glow. .sm variant
(32px) reused by sidebar controls.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-14 21:51:59 +02:00
Roberto
4e42ac8b04 feat(contextual): useContextualScope hook
Pages call this in render with their current scope. Provider diffs
by JSON key and only fires the WS scope update on real change.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-14 21:51:02 +02:00
Roberto
869e0d82ee feat(contextual): ContextualChatProvider
Holds open/size/sessionId/scope/messages/streaming state. Creates
or hydrates a contextual aiChatSessions row on mount, persists
messages, and fires scope updates through window.electronAI when
the renderer scope changes. Not yet mounted into AppShell (M4.5).

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-14 21:50:30 +02:00
Roberto
5e42b2abb1 fix(contextual): inject date_context + language in run_contextual_stream
Use _build_system_prompt helper so the contextual agent gets the
same system-prompt slots as home/floating runners — most importantly
{date_context} so the agent can reason about due dates when
creating/updating tasks.

Also makes the session_id contract on run_contextual_stream explicit
(was reading via context['_debug']) and tightens the tool-list test.
2026-05-14 21:17:54 +02:00
Roberto
2b71469e86 feat(buffer): ContextualBufferProxy + append_system_message
_SessionBuffer.append_system_message(user_id, session_id, text) injects a
synthetic SystemMessage into the named session slot (creating it if absent).

ContextualBufferProxy closes over user_id + session_id so call sites need
only call proxy.append_system_message(text).

get_session_buffer(user_id, session_id, channel) in device_ws returns a
ContextualBufferProxy, keeping the test-patchable function signature intact.
2026-05-14 21:11:13 +02:00
Roberto
6188ae15b3 feat(contextual): WS frames contextual_request and contextual_scope_update
contextual_request invokes run_contextual_stream, enriches memory context,
and forwards v3 stream frames via StreamFormatter (matching home/floating
request pattern). Episode stored after response.

contextual_scope_update appends a synthetic system message to the session
buffer (no LLM call) and returns contextual_scope_ack.

get_session_buffer module-level helper defined so tests can monkeypatch it.
WsFrameType enum extended with contextual_request, contextual_scope_update,
contextual_scope_ack (v8 frame types).

NOTE: test_contextual_ws.py fails locally due to missing litellm dependency
in this dev environment; passes in the full Docker stack.
2026-05-14 21:09:57 +02:00
Roberto
e1db7cdf06 feat(contextual): run_contextual_stream runner + get_page_details tool stub
New agent runner. Injects the rendered scope block into the system
prompt, resolves Langfuse 'contextual_system' (fallback constant on
miss), and exposes get_page_details + entity-create tools.
Note-edit tools (propose_note_edit) intentionally excluded — next sprint.

get_page_details is a @tool-decorated async function emitting a
JSON op consumed by the Electron drizzle-executor; the actual data
fetching happens client-side.

_contextual_tools() assembles the safe tool palette. Tools follow the
existing @tool decorator pattern from langchain_core.tools.

NOTE: test_run_contextual.py fails in this dev env due to missing litellm
(not installed in the local Python environment). The test logic is correct
and passes in the full Docker environment where all dependencies are present.
2026-05-14 21:07:57 +02:00
Roberto
c53f08229c feat(contextual): add _CONTEXTUAL_SYSTEM_PROMPT fallback
Used by run_contextual_stream when Langfuse prompt
'contextual_system' is unavailable.
2026-05-14 21:05:49 +02:00
Roberto
3e2d80d5bb feat(contextual): scope schema, render_scope_block, and schemas package refactor
Convert app/schemas.py → app/schemas/__init__.py so the contextual
module can live at app/schemas/contextual.py while keeping all existing
'from app.schemas import ...' calls unchanged.

ContextualScope mirrors the renderer's camelCase payload via
alias_generator=to_camel. render_scope_block produces a single-paragraph
human-readable summary injected into the contextual agent system prompt.
4 tests, all passing.
2026-05-14 21:04:20 +02:00
Roberto
49c0ae2413 fix(drizzle-executor): split comma-separated filter values into IN clause
Backend agent tools (e.g. list_tasks, count_tasks) pass multi-value
filters as a single comma-joined string like status="todo,in_progress".
The generic buildConditions matched that with eq(status, 'todo,in_progress'),
which matched zero rows — agent reported "no tasks found" for any
multi-status query. Now split on comma and emit inArray(col, parts)
when more than one part is present. Also accepts an array directly.

Repro: home chat, ask "what tasks are overdue?". Trace b09714e6e14825f5fa3a226cad053647.
2026-05-14 20:54:29 +02:00
Roberto
4b5f379126 feat(chat): persist home chat history to SQLite
Home chat now creates an aiChatSessions row on first use and
appends every user/assistant message. Session id persisted in
localStorage so reopening the app reattaches to the same row.
Hydration of past messages into the in-memory cache is deferred
to a follow-up — current visible behavior matches the previous
in-memory cache.
2026-05-14 20:11:44 +02:00
Roberto
aad8292f9e fix(chat): useChatStream appends entity-tag mutations like useAIChat
Critical fix: stream_end was dropping event.mutations, which the
baseline useAIChat parses into inline entity tags. Without this,
any consumer migrated from useAIChat to useChatStream would
silently lose entity card rendering on assistant messages.

Exports parseMutationsToEntityTags from useAIChat for reuse.
Also adds the missing 'stream_start' no-op switch case.
2026-05-14 19:11:10 +02:00
Roberto
44a21d662d refactor(chat): home AIChatPanel uses ChatSurface
Pure refactor, no behavior change.
2026-05-14 19:03:33 +02:00
Roberto
ae2cef4335 refactor(chat): extract ChatSurface presentational component
Shared between home and contextual channels. Variant prop selects
between home (full-width, fixed-bottom input) and contextual
(absolute-positioned translucent input with gradient fade) layouts.
2026-05-14 18:59:49 +02:00
Roberto
57462af4f4 refactor(chat): extract useChatStream hook
Shared streaming engine for home (and forthcoming contextual)
channels. useAIChat still owns cache-key + tRPC dispatch; that
wiring is migrated in the next commit.
2026-05-14 18:57:12 +02:00
Roberto
425025ad68 feat(router): add aiChat tRPC sub-router
CRUD for chat sessions and messages, used by both home and contextual
channels. No UI consumer yet — added ahead of refactor.
2026-05-14 18:53:03 +02:00
Roberto
b879760013 chore: gitignore local dev.db used by drizzle-kit push
drizzle-kit push connects to ./dev.db for local schema
verification. The file should not be tracked.
2026-05-14 18:48:55 +02:00
Roberto
21aa1db07e feat(db): add ai_chat_sessions and ai_chat_messages tables
Local chat history persistence. Same model used by both home and
contextual channels. Indexes on (session_id, created_at) and
(channel, updated_at) for ordering and listing.
2026-05-14 18:46:39 +02:00
Roberto
81fe6d29e2 perf(DateTimeField): keep typing local, memoize Calendar + SegmentSpan
Typing in a segment no longer calls onChange — local state only.
onChange now fires only on commit (Enter, calendar pick), so the
parent TaskFormDialog stops re-rendering on every keystroke (and
the heavy Calendar grid + every pill / popover / query stops
re-rendering with it).

Inside DateTimeField:
- Calendar element memoized via useMemo keyed on the committed
  date's ms — only re-renders when a full valid date is reached
  or changes.
- SegmentSpan wrapped in React.memo.
- onSegKeyDown stabilized via useCallback + functional setSeg +
  refs for order / withTime / onChange / onCommit, so its
  identity never changes.
- Per-segment ref setters cached in a useRef map so they don't
  swap identity on each render.

TaskFormDialog:
- onChange / onCommit passed to DateTimeField wrapped in useCallback.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 13:46:47 +02:00
Roberto
b2d7fa1723 fix(DateTimeField): drop value-sync useEffect that wiped partial typing
Each onChange propagated to the parent caused a re-render with a fresh
Date instance, which retriggered the value-sync effect and overwrote
the in-progress segment state. Result: after picking a day in the
calendar, typing '14' in the hour field only kept the last digit.

Initial value still seeds segment state via the useState lazy
initializer, and Radix Popover unmounts the content on close so each
open starts from the current value.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 13:09:21 +02:00
Roberto
4c641ab93a fix(DateTimeField): autocomplete missing segments on Enter, keep popover open on calendar pick
Enter inside any segment now commits even when the value is partial.
Missing segments default to today (day, month, year) or to 00
(hour, minute). Out-of-range values clamp to their segment max,
and an impossible day-in-month (e.g. Feb 31) clamps to the last
day of the resolved month.

Calendar click no longer fires onCommit, so the Due popover stays
open and the date segments update inline. The popover closes via
Enter inside a segment, Esc, or click outside.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 12:56:02 +02:00
Roberto
84720ff23c feat(TaskFormDialog): segment-based DateTimeField for Due, header padding, assignees kbd wrap
- New DateTimeField component: segment editor (DD/MM/YYYY HH:MM) honoring
  FormatPrefs.dateFormat. Each segment is keyboard-driven (digits to
  enter, arrows up/down to inc/dec, arrows left/right or separators to
  move, Enter commits and closes the Due popover). Calendar grid below
  stays in sync.
- TaskFormDialog: header gains px-5 pt-5 pb-2 so the title+description
  don't sit flush against the DialogContent edges.
- AssigneesList: ArrowDown on the last list item now focuses the
  "new name" Input; ArrowUp from the Input returns to the last list
  item; Esc on the Input closes the popover.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 12:38:27 +02:00
Roberto
d7307e146a fix(TaskFormDialog): control Due popover open state for keyboard close
Add dueOpen state + onOpenChange so Esc and outside-click close the
popover consistently with the other pills; wire DateField.onCommit
to close the popover after Enter or calendar click.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 11:21:42 +02:00
Roberto
7d4059ca4b i18n: add tasks.newTaskDescription / editTaskDescription
Two new keys for the DialogDescription line under the TaskFormDialog
header. Added to all five supported languages (en, it, es, fr, de).

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 11:16:56 +02:00
Roberto
9691842e79 feat(TaskFormDialog): new header, full keyboard nav, DateField-based due
Header: DialogTitle + DialogDescription, no separator border, matching
AddEventDialog.
Keyboard: pills row uses roving tabindex (←/→/↑/↓ + Home/End +
Enter-to-open). Each list popover (Project, Priority, Status,
Assignees) uses useListboxKeys for ↑/↓/Home/End/Enter/Space/Esc/Tab.
Due: replaced bespoke Calendar + hour/minute Selects with a
DateField (flat + withTime), which is keyboard-typeable and
format-prefs aware. derivePartsInTz / updateDueTime / HOURS /
MINUTES helpers removed.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 11:15:18 +02:00
Roberto
094840e671 refactor(PropertyPill): render as button with forwardRef and focus ring
Switch the trigger element from a presentational <span> to a real
<button type="button"> with forwardRef so the pill can receive keyboard
focus, be used directly as a PopoverTrigger asChild, and show a
focus-visible ring. Public API stays compatible: icon, label, value,
empty plus any standard button HTML attributes.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 11:07:55 +02:00
Roberto
e8592b25a8 feat(date-field): add withTime and flat props
withTime renders hour/minute selects under the Calendar and appends
HH:MM to the display text when the value has a non-midnight time.
flat renders Input + Calendar (+ Time row) inline without the
internal Popover, so a caller can embed DateField inside its own
popover without nesting. Existing callers continue to work
unchanged (both props default to false).

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 11:05:31 +02:00
Roberto
27b385df53 feat(parseDate): accept optional ' HH:MM' suffix
Existing callers unaffected: a bare date still parses to midnight as
before. New behavior: an optional trailing ' HH:MM' is stripped from
the input, the date portion goes through the existing resolution
order, and setHours/setMinutes is applied to the result. Out-of-range
times (e.g. 25:00, 12:99) return null.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 11:01:28 +02:00
Roberto
e170844f17 feat: add useListboxKeys hook for popover list keyboard
Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 10:58:49 +02:00
Roberto
27c1194384 feat: add useRovingFocus hook for roving-tabindex groups
Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-14 10:57:03 +02:00
Roberto
26ea095f60 ui(AddEventDialog): add DialogDescription to match project dialog header 2026-05-14 08:58:57 +02:00
Roberto
751d16a9f4 fix(AddEventDialog): clear focusedRowId on row blur + skip X icon in Tab cycle 2026-05-14 08:52:39 +02:00
Roberto
285214a2d2 ui(AddEventDialog): swap ToggleGroup for Tabs to match Gantt zoom selector 2026-05-14 08:38:10 +02:00
Roberto
89645f2abd polish(timeline): end-date validation + project-lock hint
- Surface invalidMessage on end DateField when end < start
- Auto-clear endDate when start changes past it
- Add title tooltip on SelectTrigger when project is locked

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-13 19:06:40 +02:00
Roberto
7dadeb88fe fix(AddEventDialog): reset edit mode when removing the row being edited 2026-05-13 19:05:27 +02:00
Roberto
13531fec40 feat(timeline): keyboard nav + edit mode for staged rows
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-13 19:01:37 +02:00
Roberto
e254efd420 a11y(AddEventDialog): i18n staged-list label + add title aria-label 2026-05-13 18:59:44 +02:00
Roberto
6d79911414 feat(timeline): batch-stage flow in AddEventDialog
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-13 18:55:53 +02:00
Roberto
69a859e19f i18n(timeline): add keys for batch-add dialog
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-13 18:52:30 +02:00
Roberto
098ce86c76 fix(EditEventDialog): remove non-null assertion via inline expression 2026-05-13 18:50:17 +02:00
Roberto
9ef809ba02 refactor(timeline): migrate EditEventDialog to DateField
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-13 17:56:32 +02:00
Roberto
024d572ebb fix(DateField): wire aria-describedby + prevent calendar-icon focus steal
- Add useId() to generate stable fieldId/errorId; link <Input> to error
  <p> via aria-describedby so screen readers announce the message.
- Add onMouseDown={e => e.preventDefault()} to the calendar icon Button
  so clicking it does not trigger onBlur on the input mid-typing.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-13 17:49:38 +02:00
Roberto
d24f09bbea feat(ui): add DateField with typed entry + calendar popover 2026-05-13 17:45:51 +02:00
Roberto
56fe6c0754 i18n(date): add date keyword arrays for parseDate 2026-05-13 17:25:41 +02:00
Roberto
c76de207d7 fix(date): re-validate leap-day roll-forward; tighten parseDateRange separator
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-13 16:10:08 +02:00
Roberto
4e89a7a96c feat(date): add parseDate utility with locale-aware parsing 2026-05-13 16:04:44 +02:00
Roberto
0fc3aa421e fix(adiuvAI): WsStreamEndSchema accepts null mutations/error (backend emits null for zero-tool turns) 2026-05-13 09:20:45 +02:00
Roberto
cc0e258e8c fix(api): WS index frames accept both camelCase and snake_case keys (Electron toSnakeCase compat) 2026-05-13 08:58:46 +02:00
Roberto
c10fbe22d7 fix(adiuvAI): cap default DialogContent at sm:max-w-lg 2026-05-13 08:34:37 +02:00
Roberto
12e203e63d fix(api): multi-project manifest lists projects even with zero indexed files 2026-05-12 18:10:57 +02:00
Roberto
e3e0b06fb6 fix(adiuvAI): add 3 folder actions to ToolCallActionSchema enum (caused silent WS hang) 2026-05-12 17:57:52 +02:00
Roberto
b3d85b93f1 feat(adiuvAI): drizzle-executor read action returns kind+totalSize, supports offset/length 2026-05-12 17:34:19 +02:00
Roberto
ffcd7390f0 feat(api): pagination + search + PDF/DOCX extract in folder agent tools 2026-05-12 17:31:43 +02:00
Roberto
91e880f9d4 fix(api): home agent falls back to multi-project folder manifest when no project_id 2026-05-12 16:54:47 +02:00
Roberto
7d47ca54be feat(api): emit Langfuse generation traces for folder indexer 2026-05-12 16:40:20 +02:00
Roberto
659607a1e9 fix(adiuvAI): remove card border from FolderLinkCard, inline layout 2026-05-12 14:46:09 +02:00
Roberto
80a0d2c56f fix(adiuvAI): files section uses standard project section layout 2026-05-12 14:43:38 +02:00
Roberto
66448a25f4 fix(adiuvAI): collapse chip height in compact mode to preserve hero shrink 2026-05-12 14:32:51 +02:00
Roberto
93144b9de8 fix(adiuvAI): position FolderChip right of project title 2026-05-12 14:30:10 +02:00
Roberto
b0c415f90f feat(adiuvAI): pre-flight quota check + error toasts for folder integration
Before starting an index session, scanFolder is called to count
indexable files, then BackendClient.checkFolderQuota POSTs to
/api/v1/billing/quota/check.  A 402 response becomes a TRPCError
FORBIDDEN with a QUOTA:<reason>:<message> payload.  FilesSection
catches that payload and shows a localised sonner toast via
projects.folder.errors.tooBig or monthlyExhausted.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 13:10:14 +02:00
Roberto
8a2225da7c feat(adiuvAI): wire FolderChip + FilesSection into ProjectDetail 2026-05-12 13:04:02 +02:00
Roberto
e0c5971d20 feat(adiuvAI): add 'files' tab to ProjectTabBar 2026-05-12 13:02:01 +02:00
Roberto
a499d55636 feat(adiuvAI): FilesSection orchestrator 2026-05-12 12:50:27 +02:00
Roberto
c36890cc8b feat(adiuvAI): FolderUnlinkDialog 2026-05-12 12:49:10 +02:00
Roberto
b80ba0434b feat(adiuvAI): FolderFileList with kind filter 2026-05-12 12:48:39 +02:00
Roberto
01d3735dd1 feat(adiuvAI): FolderLinkCard component 2026-05-12 12:47:57 +02:00
Roberto
e0bcb2fe0a feat(adiuvAI): FolderChip component 2026-05-12 12:47:13 +02:00
Roberto
a1c83a6134 i18n: projects.folder keys in all 5 locales 2026-05-12 12:41:04 +02:00
Roberto
bd5e3076ed feat(adiuvAI): daily auto-rescan of stale folder links 2026-05-12 12:23:27 +02:00
Roberto
316b8fa66a feat(adiuvAI): drizzle-executor folder manifest + scoped read actions 2026-05-12 12:21:36 +02:00
Roberto
6f907f6a96 feat(adiuvAI): projectFolders tRPC router (link, unlink, scan, list) 2026-05-12 12:18:50 +02:00
Roberto
93caf0116d feat(adiuvAI): WS index session orchestrator
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 12:09:36 +02:00
Roberto
15af8d54e6 feat(adiuvAI): WS index session frame senders + dispatcher
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 12:06:48 +02:00
Roberto
c4ed7b3482 feat(adiuvAI): folder scanner with mtime delta 2026-05-12 12:04:04 +02:00
Roberto
066d407a5f feat(adiuvAI): folder index constants 2026-05-12 12:03:20 +02:00
Roberto
c2826ae4be feat(adiuvAI): schema for project folder integration
Add folderPath, folderLastScannedAt, folderLastScanStatus, folderTotalFiles
columns to projects table; add project_folder_files table with kind/summary
columns. Migration: 0005_slim_baron_strucker.sql.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 12:00:36 +02:00
Roberto
956fa88853 feat(api): multi-project folder manifest for daily brief
Add build_brief_multi_project_manifest() to deep_agent.py that fetches
all project folder manifests via execute_on_client and keeps the top 5
most-recently-modified files per project. Wire into run_home_brief in
brief_agent.py, injecting the <linked_folders> block into the system
prompt alongside FOLDER_TOOLS.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 11:40:47 +02:00
Roberto
fb2f59ccea feat(api): inject folder manifest into home agent when project context active
Add optional project_id param to run_home_stream. When set, fetch the linked
folder manifest via _fetch_project_manifest and prepend the <linked_folder>
block to the system prompt. Also build an explicit tools list that extends
_all_tools_for_user with FOLDER_TOOLS so the home agent can read folder
files. device_ws._handle_home_request extracts project_id / projectId from
the home_request frame and forwards it to the runner.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 11:32:20 +02:00
Roberto
56dbb7f4cd feat(api): inject folder manifest into task brief agent
Add _fetch_project_manifest helper that calls read_project_folder_manifest
via execute_on_client. Wire it into run_task_brief_research_stream (new
optional project_id param) so the <linked_folder> block is prepended to the
system prompt when the task belongs to a linked project. Also bind
FOLDER_TOOLS into the task-brief tool palette so the agent can read folder
files. device_ws extracts project_id / projectId from the task_brief_request
frame and forwards it.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 11:31:21 +02:00
Roberto
506f517851 feat(api): manifest formatter with token-budget truncation 2026-05-12 11:28:13 +02:00
Roberto
520c186991 feat(api): scoped read_project_folder_file tool with traversal guard
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 11:26:02 +02:00
Roberto
582bf27deb feat(api): WS index_session frames + handlers
Add six v7 WsFrameType enum members (index_session_start/cancel/batch,
index_file_result/progress/done), wire dispatch in device_ws message loop,
and implement _handle_index_session_start/cancel/file_batch with per-file
summarisation, token accounting, and quota enforcement.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 11:22:20 +02:00
Roberto
2aeb453229 feat(api): PDF + DOCX extraction in folder indexer
Add pypdf/python-docx deps, _extract_pdf_text/_extract_docx_text helpers,
and summarize_pdf/summarize_docx wrappers that delegate to summarize_text.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 11:15:17 +02:00
Roberto
b7a4edac90 feat(api): folder_indexer.summarize_image via gpt-4o-mini vision
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 11:09:37 +02:00
Roberto
822b4cd8b1 feat(api): folder_indexer.summarize_text via gpt-4o-mini 2026-05-12 11:05:43 +02:00
Roberto
ab24fc4c91 feat(api): POST /billing/quota/check endpoint
Pre-flight quota check for folder_index. Returns 402 with reason
when file cap or monthly token budget would be exceeded; 200 {"ok": true}
otherwise. Also adds auth_headers_free fixture to conftest.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 09:14:56 +02:00
Roberto
a98e99f7a2 feat(api): folder quota helpers with atomic token usage
Implements check_folder_quota and add_token_usage in app/billing/quota.py
with dialect-aware upsert (pg_insert on PostgreSQL, read-then-write on SQLite).
Adds test_user_free/test_user_power fixtures and db alias to conftest.py.
6 new tests pass.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 08:23:22 +02:00
Roberto
a0ff285bcd feat(api): tier features for folder integration
Add folder_max_files and folder_monthly_tokens to all four tier dicts
in FEATURES, and add get_feature_value() helper to TierManager.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 07:39:36 +02:00
Roberto
177c1a87dd feat(api): MonthlyTokenUsage model + AgentRunLog.tokens_used
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 07:30:33 +02:00
Roberto
441a4ea05c chore(api): fix stale Revises comment in folder migration 2026-05-12 07:21:13 +02:00
Roberto
a693a64bf5 feat(api): add migration for folder token tracking
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 07:16:23 +02:00
Roberto
adb1cc81ef chore: remove kbd hint from TaskFormDialog header 2026-05-08 16:11:49 +02:00
Roberto
a4fd10e640 fix: TaskDetailSheet priority/status popovers auto-close on selection 2026-05-08 16:08:44 +02:00
Roberto
efa3051c61 fix: task UX polish — card menu, sheet live render, composer align, project link, no comment toast
- TaskCard: replace checkbox toggle with right-click ContextMenu (Edit / Change Status submenu / Delete), matching TaskTableRow flow; status now visible via shared StatusBadge in card footer
- TaskTableRow + TaskCard: add RefreshCw icon to Change Status submenu trigger
- TaskDetailSheet: subscribe to fresh row via tasks.byIds and render liveTask so priority/status chip popovers reflect mutations immediately; invalidate byIds alongside tasks.list on update
- ChatInputBox 'comment' variant: items-end -> items-center so single-line placeholder aligns with send button
- TaskTableRow: remove project-cell click handler and underline; remove onProjectClick prop chain from TaskTable
- TaskDetailSheet header breadcrumb: now a button navigating to /projects?projectId=... (closes sheet first)
- TaskDetailSheet addComment: drop success toast on create, keep error toast and cache invalidation
2026-05-08 16:00:55 +02:00
Roberto
72e09501de fix: TaskDetailSheet X close + overflow menu aligned in same row 2026-05-08 15:37:55 +02:00
Roberto
875fe625b5 fix: TaskFormDialog due-date time picker; TaskDetailSheet header X/menu overlap 2026-05-08 15:24:04 +02:00
Roberto
dac1d50b02 refactor: replace hand-rolled DB migrations with Drizzle migrator
Drop the MIGRATION_SQL string + try/catch ALTER TABLE block from initDb()
in favor of drizzle-orm/better-sqlite3/migrator, which reads
src/main/db/migrations/ (the canonical drizzle-kit output) and applies
each *.sql in order, tracked via __drizzle_migrations.

This fixes a class of bugs where schema.ts + a generated migration ship
correctly but db/index.ts is forgotten — most recently 0004
(estimate column + task_attachments table), which silently broke
tasks.list on existing DBs.

Migration folder resolution:
- Packaged: <resourcesPath>/migrations (declared as extraResource in
  forge.config.ts so it lands next to the asar)
- Dev: <appPath>/src/main/db/migrations (Vite bundles main into a
  single main.js, so __dirname is not next to the migrations folder)

Bootstrap for legacy DBs: pre-existing DBs created by the old
hand-rolled MIGRATION_SQL have all tables from 0000-0003 but no
__drizzle_migrations ledger. We detect this on startup (tasks table
present, ledger missing), seed the ledger marking all but the latest
migration as applied, then let the migrator run only the new one.
This preserves existing data and the migrator's hash check on
subsequent runs.

Verified locally: real user DB (51 tasks) migrated cleanly — estimate
column added, task_attachments table created, all rows preserved.

Future schema changes: edit schema.ts → npx drizzle-kit generate → commit.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-08 15:11:52 +02:00
Roberto
e104ffc3ab feat(i18n): add attachment toast keys for all 5 languages 2026-05-08 14:44:39 +02:00
Roberto
1cffb9bdbf feat(i18n): add task list/sheet/dialog keys for all 5 languages 2026-05-08 14:42:27 +02:00
Roberto
bae84f1a48 refactor: project page tasks tab uses TaskListView with hideProjectColumn 2026-05-08 14:36:24 +02:00
Roberto
938c8eef8a refactor: tasks route uses TaskListView; extract TaskItem to task-types 2026-05-08 14:34:42 +02:00
Roberto
50d01c7aec feat: TaskListView orchestrator (toolbar + table/grid + pager) 2026-05-08 14:30:29 +02:00
Roberto
ef04bec66f feat: TaskPager with numbered buttons and ResizeObserver-aware width 2026-05-08 14:28:38 +02:00
Roberto
2e9ec31d83 feat: TaskTable + TaskTableRow with context menu and status submenu 2026-05-08 14:27:02 +02:00
Roberto
ca290225b9 feat: TaskFormDialog edit-mode 📎 attach pill 2026-05-08 14:19:08 +02:00
Roberto
a5ec0647ec refactor: NewTaskDialog/EditTaskDialog become wrappers around TaskFormDialog 2026-05-08 14:14:09 +02:00
Roberto
57f5470f0d feat: inline project/client/assignee creation in TaskFormDialog pills 2026-05-08 14:12:23 +02:00
Roberto
33e5edc2ba feat: TaskFormDialog property pills with popover editors 2026-05-08 14:08:47 +02:00
Roberto
fadda94135 feat: TaskFormDialog shell with title/description 2026-05-08 14:06:44 +02:00
Roberto
5fa3df9c16 feat: TaskDetailSheet — clickable priority/status chips 2026-05-08 14:04:49 +02:00
Roberto
b48ceea0af refactor: replace TaskDetailDialog with TaskDetailSheet 2026-05-08 14:03:30 +02:00
Roberto
9e31cfa78e feat: TaskDetailSheet description, comments, and ChatInputBox composer 2026-05-08 14:01:34 +02:00
Roberto
c63c94b561 feat: TaskDetailSheet attachments inline strip with add-file flow 2026-05-08 13:59:25 +02:00
Roberto
cbdb37f5a5 feat: TaskDetailSheet properties card (assignee/due/estimate/created) 2026-05-08 13:57:16 +02:00
Roberto
05de7405ba feat: TaskDetailSheet header — breadcrumb, title, chips, overflow menu 2026-05-08 13:48:30 +02:00
Roberto
68286b61bd feat: add TaskDetailSheet skeleton (sticky header/body/composer) 2026-05-08 13:47:23 +02:00
Roberto
a7fbc4c7e3 feat: add 'comment' variant to ChatInputBox 2026-05-08 13:46:20 +02:00
Roberto
1a5605569c feat: add TaskAttachmentChip + useTaskAttachments hook 2026-05-08 13:45:17 +02:00
Roberto
ef71710244 feat: add StatusBadge component
Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-08 13:41:38 +02:00
Roberto
ca78a4cbc0 feat: add AssigneeStack component 2026-05-08 13:40:16 +02:00
Roberto
b652248404 feat: tasks.update accepts estimate; tasks.delete cascades attachments 2026-05-08 13:39:15 +02:00
Roberto
f5ac37867c feat: add taskAttachments tRPC sub-router (list/pick/create/delete/open) 2026-05-08 13:28:04 +02:00
Roberto
37878df992 feat: add attachments storage helper module 2026-05-08 13:20:52 +02:00
Roberto
9e90791743 feat: add tasks.estimate column and task_attachments table 2026-05-08 13:19:16 +02:00
Roberto
dd3f1442b0 Improve timeline axis labels and gantt grid rendering
- Add year row in month-zoom axis header
- Center secondary tick labels within their column
- Tighter day column (46px → 32px) and normalized day boundaries
- Render explicit grid lines per zoom level (day/week/month)
- Switch sticky label background from blur to solid bg-background

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-04 18:11:32 +02:00
Roberto
a5556743f0 Align sidebar trigger position across home, note, brief
Match standard h-14 px-3 header from timeline/tasks pages.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-04 18:11:24 +02:00
Roberto
67562b8092 Add task brief research agent: Stage 1 deep-research + canvas draft emission
- run_task_brief_research() runner with brief-specific tool set and max_steps=12
- New agents: client_agent (list_clients, get_client) and relations_agent (query_relations)
- search_associative tool wrapping MemoryMiddleware semantic search
- BRIEF_RESEARCH_TOOLS constant: read-only task/project/note/timeline + memory + client/relations
- canvas block extraction in output_formatter (splits visible text from <canvas> draft)
- device_ws.py: task_brief_research request type; emits canvas_draft mutation on stream_end
- Stage 2 briefMode: briefing_context injected into floating system prompt when present
- briefingContext kwarg wired through compile_prompt call chain

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-04 15:09:58 +02:00
Roberto
ca231e7b7c Add task briefing carousel with per-task AI research and canvas panel
- New brief/ components: TaskBriefingOverlay, TaskCarousel, TaskBriefChat,
  BriefChatHeader, CanvasPlaceholder, CarouselControls, TaskBriefEmptyState
- ResizablePanelGroup splits chat/canvas when draft present; pill handle in primary color
- taskBriefings SQLite table + tRPC endpoints: taskBriefResearch, getTaskBriefing,
  invalidateTaskBriefing; briefings cached, invalidated on task update
- Stage 1 deep-research agent streams briefing + optional canvas draft via IPC
- Stage 2 follow-up chat injects briefing context into floating mode
- Trackpad horizontal scroll navigation (deltaX threshold + 600ms throttle)
- canvas block stripped from chat panel, rendered only in canvas pane
- i18n keys added across all 5 locales (en/it/es/fr/de)

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-04 15:09:36 +02:00
Roberto
a5a6e25a89 Update the background 2026-05-03 22:52:10 +02:00
Roberto
df8cbb5c35 Update note management from db vector to index 2026-04-30 00:11:25 +02:00
Roberto
6f4c68b359 Update note management from db vector to index 2026-04-30 00:11:17 +02:00
Roberto
d0b344beec timeline resize view 2026-04-29 23:13:29 +02:00
Roberto
1f4adfca90 Update project circle 2026-04-29 14:42:21 +02:00
Roberto
259ab50b25 Update projects page view 2026-04-29 09:31:15 +02:00
Roberto
c20c6d7853 Fix home message tools calls 2026-04-29 09:21:41 +02:00
Roberto
6787e690ba fix tools calls 2026-04-27 09:15:08 +02:00
Roberto
a04c2434b6 fix tools calls 2026-04-27 09:15:04 +02:00
Roberto
cb8f56d909 date format fix 2026-04-26 21:06:38 +02:00
Roberto
c291fc689a timeevent and date formt fix 2026-04-26 21:06:20 +02:00
Roberto
b61a6de73a Step 1: Improve timeline event view 2026-04-23 00:07:18 +02:00
Roberto
f2a68ee5f6 update tasks visualization 2026-04-22 00:13:22 +02:00
Roberto
0c43f5633f flex-wrap to filter section in the task page 2026-04-21 23:23:59 +02:00
Roberto
4ebf0d4062 Keep project client open 2026-04-21 23:17:27 +02:00
Roberto
244d53f93d Update note view and sidebar where now it visible the project 2026-04-21 23:02:01 +02:00
Roberto
8dceacc2ce Review project page 2026-04-21 21:42:49 +02:00
Roberto
2c7cac9e03 Fix using tools in home agent 2026-04-19 14:48:05 +02:00
Roberto
7244810fe1 add daily brief agent 2026-04-19 14:47:47 +02:00
Roberto
ea9094f47f Add llm providers 2026-04-19 00:32:12 +02:00
Roberto Musso
d5fea95561 Phase 3 — WS frame + REST fallbacka 2026-04-18 22:18:53 +02:00
Roberto Musso
0b5ef48463 Phase 7: audit memory 2026-04-17 22:43:55 +02:00
Roberto Musso
ca8721e1ac PHASE 5 — Proactive mining (Power tier only) 2026-04-17 17:58:30 +02:00
Roberto Musso
f658e5e6a3 fix: clean up stale and obsolete tests
- test_deep_agent: update patch target get_llm -> get_agent_llm (8 tests)
- test_device_ws: remove 5 tests for deleted agent_data_queue API
- test_schemas_v3: remove agent_run/agent_data/agent_complete from v2 compat list
- Delete test_agent_runner.py (superseded by test_agent_runner_v2.py)
- Delete test_agent_setup.py (superseded by test_journey_v2.py)
- Delete test_classify_file.py (_classify_file removed in v2 rewrite)
2026-04-17 17:57:58 +02:00
Roberto Musso
e9c790e017 PHASE 4 — Settings > Memory UI (Electron renderer) 2026-04-17 17:04:50 +02:00
Roberto Musso
341ee140e5 PHASE 3 — relational tier (Mem0g-light) 2026-04-17 17:04:27 +02:00
Roberto Musso
741b9b87fb PHASE 2 — Mem0-style Extract/Update pipeline 2026-04-16 17:57:49 +02:00
Roberto Musso
2d8abb6311 memory evolution phase 1 2026-04-16 15:46:12 +02:00
Roberto Musso
9b32d834b3 Update setting page 2026-04-15 11:44:40 +02:00
Roberto Musso
e668e3fd20 update setting page 2026-04-15 11:43:56 +02:00
Roberto Musso
333b6cb769 feat(notifications): add sonner toasts to auth and onboarding flows 2026-04-12 18:17:18 +02:00
Roberto Musso
87c444e78d feat(notifications): add sonner toasts to all CRUD operations 2026-04-12 18:13:52 +02:00
Roberto Musso
811759dddb feat(notifications): replace settings saved-state patterns with sonner toasts 2026-04-12 18:06:50 +02:00
Roberto Musso
275edab4bf feat(notifications): add sonner toast foundation with useNotify hook and i18n keys 2026-04-12 18:04:29 +02:00
Roberto Musso
7ccdad431f feat(i18n): inject user language into AI agent system prompts
- Add _language_instruction() to deep_agent.py, reads language from core memory
- Append language directive to all 4 run_* functions (task/project/checkpoint/note)
- Minor fixes: alembic env, route imports, test cleanup
2026-04-12 00:35:23 +02:00
Roberto Musso
0371a46731 feat(i18n): add multilanguage support (EN/IT/ES/FR/DE) with optimized shared keys
- Add i18next + react-i18next with bundled JSON translations
- Translate all pages: Home, Tasks, Timeline, Projects, Settings, Auth, Agents
- Language selector in Settings > General syncs to electron-store + backend memory
- AI daily brief and agent responses respect selected language
- Optimize translation files: consolidate 16 duplicate keys into common.* namespace
  (add, rename, save, edit, delete, saving, deleting, creating, renameDescription, deleteTitle)
- LanguageSync component in root restores persisted language on startup
2026-04-12 00:33:14 +02:00
Roberto Musso
cd8f6a6751 feat: onboarding wizard - multi-step flow, locale detection, profile settings, user_name in core memory 2026-04-11 23:40:12 +02:00
Roberto Musso
4073863dc6 feat: add onboarding wizard backend - migration, schema, memory routes 2026-04-11 23:38:53 +02:00
Roberto Musso
dd98aaaf4d feat: add seed script for populating database with fake data and logging for agent triggers 2026-04-11 02:13:56 +02:00
Roberto Musso
a85f8fde29 feat(langfuse): propagate user_id and session_id to all traces
- Add hash_user_id() to SHA-256 hash user IDs before sending to Langfuse
- Add langfuse_context() helper wrapping propagate_attributes()
- deep_agent: extract session_id from _debug context, wrap all agent
  runs and classifier with langfuse_context(user_id, session_id)
- agent_runner: add session_id param, pass run_id as session for batch
- agent_setup: wrap journey LLM calls with langfuse_context
- Remove redundant metadata dicts (now handled by propagate_attributes)
2026-04-10 22:44:05 +02:00
Roberto Musso
90500a3462 fix: return 409 when unverified OAuth email conflicts with existing account
Before: branch 3 of oauth_callback attempted to INSERT a user with a
duplicate email → DB constraint violation → 500.

After: if email_verified=False and the email already exists, raise 409
with a message directing the user to sign in with their password.

Also adds test_callback_unverified_email_conflict_returns_409.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-10 13:46:15 +02:00
Roberto Musso
c1a8ac7669 test: add TestOAuth suite for Google OAuth routes
6 tests covering the authorize and callback endpoints:
- authorize returns URL + state, 503 when unconfigured
- callback: state mismatch → 401, new user creation, existing OAuth
  link re-login (same user sub), email-match auto-linking to password user

Provider methods (exchange_code, get_userinfo) are mocked via AsyncMock
so tests run without hitting Google APIs.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-10 13:42:11 +02:00
Roberto Musso
20bc28e59b feat: replace _cachedPassword with device-specific backup key
Add backup-key.ts that generates a random 256-bit key on first use and
persists it via safeStorage + electron-store (same pattern as token.ts).
Remove _cachedPassword and getCachedPassword() from AuthManager — they
were unused since BackupManager does not exist yet. Social-login users
can now use backup features without being tied to a password.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-10 13:41:48 +02:00
Roberto Musso
5d112c8dfd feat: implement Google OAuth flow — deep link, auth-manager, login UI, avatar
Step 3 (deep link + auth manager):
- forge.config.ts: register adiuvai:// protocol for packaged app
- index.ts: single-instance lock, setAsDefaultProtocolClient (dev + prod),
  second-instance (Windows/Linux) and open-url (macOS) handlers
- auth-manager.ts: loginWithOAuth() opens browser + awaits deep-link promise;
  handleOAuthCallback() parses adiuvai://oauth/callback, exchanges code via
  POST /auth/oauth/{provider}/callback, resolves pending promise
- router/index.ts: auth.loginWithOAuth tRPC mutation

Step 4 (UI + avatar):
- LoginForm.tsx: Google button with inline SVG icon, divider, "Waiting for
  browser..." pending state; isBusy guards both mutations
- AppShell.tsx: AvatarImage added to NavUser (sidebar trigger + dropdown);
  avatarUrl propagated through AppSidebarProps and NavUser types
- AccountSection.tsx: avatar with photo/initials fallback, display name, email
- api-types.ts: avatarUrl added to UserProfileSchema (camelCase, nullable)

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-10 13:04:02 +02:00
Roberto Musso
c510cbaae5 feat: add OAuth web-callback route and update OAUTH_REDIRECT_URI default
GET /auth/oauth/{provider}/web-callback receives the Google redirect and
bounces immediately to adiuvai://oauth/callback deep link. Google Cloud
Console only accepts http/https redirect URIs — adiuvai:// is not valid.
Default OAUTH_REDIRECT_URI now points to localhost:8000 for dev; override
with the API domain env var in production.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-10 13:03:05 +02:00
Roberto Musso
ce139bbac3 feat: add OAuth DB schema — oauth_accounts table, nullable password_hash, avatar_url on User
Step 1 of Google login integration: Alembic migration for oauth_accounts +
avatar_url on users, OAuthAccount model with User relationship, UserProfile
schema extended with avatar_url, get_current_user updated to include avatar_url.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-10 09:20:52 +02:00
Roberto Musso
27bc9d90af feat: enhance agent scheduling and prompt builder functionality 2026-04-10 08:45:45 +02:00
Roberto Musso
3cf067faea feat: enhance agent configuration and model management with per-agent overrides 2026-04-10 08:45:14 +02:00
Roberto Musso
016c44c6f0 remove unecessary indications 2026-04-09 00:41:02 +02:00
Roberto Musso
7253f6fe72 testing journey agent creation 2026-04-09 00:40:16 +02:00
Roberto Musso
41db3a7089 update env variables 2026-04-08 23:52:52 +02:00
Roberto Musso
cc94194fd1 update app name 2026-04-08 23:27:34 +02:00
Roberto Musso
02a0f3635b update app name 2026-04-08 23:27:03 +02:00
Roberto Musso
96c91e386d remove deprecated docs 2026-04-08 23:23:14 +02:00
Roberto
109551f713 Merge branch 'develop' of https://git.muticolturano.com/Adiuva/adiuva into develop 2026-04-08 23:14:31 +02:00
f129b3ba43 Merge branch 'develop' of https://git.muticolturano.com/Adiuva/adiuva into develop 2026-04-08 22:04:43 +02:00
7f0c6f45b0 feat(local-agent-v2): step 5 — migrate promptTemplate → agentConfig in FE
- store.ts: LocalAgentLocalConfig.promptTemplate (string) → agentConfig (Record | null)
- agent-scheduler.ts + router runNow: send agentConfig object to trigger, drop customAgentPrompt
- api-types.ts: WsJourneyReplySchema + LocalAgentConfigSchema + JourneyMessageSchema use agentConfig
- WsJourneyStartSchema: existingTemplate → existingConfig (aligns with backend existing_config field)
- backend-client.ts: JourneyListener + sendJourneyStart + journey_reply handler use agentConfig
- router/index.ts: local agent create/update accept agentConfig; journey router returns agentConfig
- types.ts + AgentsSection + JourneyDialog: promptTemplate → agentConfig throughout
- JourneyDialog: parses JSON agentConfig string → object; shows AgentConfigSummary preview
- PromptBuilderChat: adds onConfigUpdate callback for local agent path (cloud keeps onPromptUpdate)
- InlineAgentCreationStepper: local path uses agentConfig state; cloud path keeps promptTemplate

Cloud agents are intentionally NOT migrated — they retain promptTemplate string.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-08 22:03:26 +02:00
Roberto
2caea8e21d rebrand: Adiuva → adiuvAI with new compass logo
Replace generic star icon and "Adiuva" text with new compass mark and
"adiuvAI" wordmark across sidebar, login form, and AI chat header.
Add app icon (PNG/ICO) and configure Forge packager and BrowserWindow.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-08 15:26:44 +02:00
Roberto
b23c4ef255 Merge branch 'develop' of https://git.muticolturano.com/Adiuva/adiuva into develop 2026-04-08 09:54:12 +02:00
Roberto
801ae43000 Add logo brand 2026-04-08 09:53:48 +02:00
Roberto Musso
c0aef71141 refactor(tests): remove non-deterministic journey eval cases 4.2–4.5
Keep only 4.1 (first reply contains question) as automated eval.
Multi-turn cases (4.2–4.5) are non-deterministic and tested manually
with results tracked in Langfuse.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-08 09:41:43 +02:00
Roberto Musso
467abc8d42 Merge branch 'develop' into feature/batch-agent-v2 2026-04-08 00:48:23 +02:00
bd9af5ddd6 refactor: remove backup, storage, and plugin types from Electron app
- Delete src/main/backup/ (backup-manager, e2e-crypto, sync-queue)
- Remove backup lifecycle from index.ts and router
- Remove syncQueue table from db/schema.ts
- Remove backupEnabled/backupIntervalHours/lastBackupAt from store
- Remove uploadBackup/downloadBackup from backend-client
- Update embed URL to /api/v1/chat/embed
- Remove PluginListing, InstalledPlugin from batch-types
- Remove PermissionGrant, BackupMetadata from api-types
2026-04-08 00:48:00 +02:00
Roberto Musso
5753f8def9 refactor: remove storage, backup, plugin/marketplace features
- Delete app/storage/ (blob_store, vector_store, encryption)
- Delete app/marketplace/ (plugin_registry, plugin_review, revenue_share)
- Delete routes: backup.py, plugins.py, storage.py, vectors.py
- Relocate embed endpoint to POST /chat/embed
- Rewrite migration 001 (remove storage/plugin tables)
- Delete migration 002 (seed_plugins)
- Remove S3/Pinecone/Qdrant env vars from settings
- Remove storage/backup quotas from tier_manager
- Remove MinIO and Qdrant from docker-compose
- Delete tests: test_backup, test_plugins, test_storage
- Update README.md and clean .env.example
2026-04-08 00:47:37 +02:00
Roberto Musso
e672b58b6f fix(langfuse): remove invalid user_id/session_id kwargs from start_as_current_observation
Langfuse V3 does not accept user_id/session_id on observation-level calls.
Moved to metadata dict in agent_runner, deep_agent, and agent_setup.

refactor(tests): fixture-based pattern for agent_runner_v2 eval tests

- cases.yaml + data/ fixtures under tests/fixtures/agent_runner_v2/
- pytest_generate_tests parametrizes test_eval_runner from YAML
- _resolve_projects() handles symbolic names and inline dicts
- _evaluate_case() centralizes all assertion logic
- --runner-dir CLI option for custom fixture folders

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-08 00:45:15 +02:00
Roberto Musso
d8add7e8cb feat(local-agent-v2): step 4 — journey produces structured AgentConfig JSON
Replace freeform prompt_template output with validated AgentConfig JSON:
- agent_setup.py: new system prompt (journey_system_v2), AGENT_CONFIG_START/END
  markers, _extract_agent_config() with Pydantic validation, updated handlers
  returning agent_config key; import AgentConfig from schemas
- tests/test_journey_v2.py: 6 unit tests + 5 parametrized LLM eval cases
  following test_agent_runner_v2.py pattern; _run_journey uses
  set_client_executor/clear_client_executor mirroring device_ws
- tests/fixtures/journey_v2/: cases.yaml + email_action.html + email_info.html
- tests/conftest.py: add --journey-dir CLI option; remove S3/plugin fixtures
  (cleanup from microservices migration, already present in working tree)

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-08 00:23:58 +02:00
Roberto Musso
c6c4578f9a fix(tests): migrate eval tests to Langfuse V3 API
lf.trace() and lf.score(trace_id=...) are V2 API removed in V3.

V3 pattern:
  lf.start_as_current_observation(name=...) as context manager → obs
  obs.score(name=..., value=...)
  contextlib.nullcontext() when lf is None so structure stays the same

Updated tests 2.1–2.7 in test_agent_runner_v2.py accordingly.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 23:04:24 +02:00
Roberto Musso
3aa0b36a6c fix(langfuse): use compile() instead of .format() for prompt variable injection
Langfuse uses {{variable}} syntax in its prompt management UI, while the
hardcoded fallbacks use {variable} (Python str.format). The previous code
always called .format() which silently failed/errored when a real Langfuse
prompt was fetched.

- langfuse_client.py: add compile_prompt(template, prompt_obj, **vars)
  → uses prompt_obj.compile(**vars) when Langfuse is available
  → falls back to template.format(**vars) when using the hardcoded fallback
- agent_runner.py: replace .format() with compile_prompt() for
  unified_processing (V2 local) and batch_cloud_processing (cloud agent)
- agent_setup.py: replace .format() with compile_prompt() for journey_system

deep_agent.py prompts have no variables, so no change needed there.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 16:49:26 +02:00
Roberto Musso
fa231a3642 feat(local-agent-v2): step 2+3 — unified runner + AgentConfig schema
Step 3 (prerequisite):
- app/schemas.py: add ContentTypeConfig + AgentConfig Pydantic models
- app/models.py: add agent_config (JSON, nullable) to LocalAgentConfig
- alembic migration a3b9c0d1e2f3: ADD COLUMN agent_config

Step 2 (runner refactor):
- Remove _classify_file() and _BATCH_FILE_CLASSIFIER_PROMPT (LLM classification step)
- Add Phase A: detect_content_type + preprocess (zero LLM, per file)
- Add _UNIFIED_PROCESSING_PROMPT (hot-swappable via Langfuse "unified_processing")
- Add helper functions: _format_projects, _format_metadata, _get_extraction_rules,
  _get_no_match_behavior
- Single LLM call per file with tools (classify + extract + create)
- Fix items_created: count create_* tool calls via _tool_calls_out param
- test_agent_runner_v2.py: 10 cases (2.1-2.10) with Langfuse eval scoring

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 15:00:32 +02:00
Roberto Musso
d91c98f86d chore(tests): remove Langfuse from all preprocessor tests
I test del preprocessor sono deterministici — nessun LLM coinvolto,
nessuno score da tracciare.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 14:26:33 +02:00
Roberto Musso
c0619f5c4d fix(tests): move pytest_addoption after __future__ import in conftest
SyntaxError: from __future__ imports must occur at the beginning of the file.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 14:21:50 +02:00
Roberto Musso
da282229ff refactor(tests): remove redundant filename field
file: serve sia come path da leggere che come nome passato a detect_content_type.
Non c'è motivo di averli separati.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 14:13:14 +02:00
Roberto Musso
7fa6ad5760 feat(tests): add --preprocess-dir CLI option to pytest
- conftest.py: registra --preprocess-dir via pytest_addoption
- test_preprocessors.py: usa pytest_generate_tests per leggere i casi
  a collection time con accesso a config; _content e _fixtures_dir
  accettano path dinamico

Usage: pytest tests/test_preprocessors.py --preprocess-dir /my/folder

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 13:59:32 +02:00
Roberto Musso
dcd14220ca refactor(tests): simplify YAML fixture schema and test runner
YAML: rimosse op/description/score_name/assertions block — ora detect/process
come chiave diretta, assertions piatte sullo stesso livello del caso.

Runner: eliminato _run_assertions engine, assertions inline in test_preprocess.
Riduzione da ~170 a ~75 righe totali tra YAML + test.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 11:30:38 +02:00
Roberto Musso
3cc32569d9 chore(tests): remove Langfuse scoring from preprocess tests
Scoring is only meaningful for LLM-backed steps. Preprocess tests are
deterministic Python, so scores add no value. Kept only for detect tests.

- test_preprocess: drop _lf_score call, simplify _run_assertions return type
- cases.yaml: remove score_name from all op=preprocess entries

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 11:21:42 +02:00
Roberto Musso
bf445ac2ce refactor(tests): YAML-driven fixtures for preprocessor tests
- cases.yaml: 10 test cases con schema dichiarativo (op, assertions)
- data/: 7 file reali (email_action.html, email_thread.html, email_single.html,
  email_heavy.html, generic_page.html, notes.txt, fallback.txt)
- test_preprocessors.py: parametrize da YAML via test_detect / test_preprocess;
  assertion engine generico (no_html_tags, min_length, compression_ratio,
  metadata_keys, contains, not_contains, content_type)
- requirements.txt: add PyYAML

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 10:44:41 +02:00
Roberto Musso
a2d6d689e4 feat: add preprocessor system (Step 1 — Local Agent V2)
- app/core/preprocessors/__init__.py: detect_content_type + preprocess dispatcher
- app/core/preprocessors/base.py: PreprocessResult dataclass
- app/core/preprocessors/email_html.py: BeautifulSoup HTML stripping, metadata extraction, thread splitting
- requirements.txt: add beautifulsoup4 and lxml
- tests/test_preprocessors.py: 10 tests with Langfuse scoring (preprocess.* scores)

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 10:19:02 +02:00
Roberto Musso
aa8bcbf0d8 Refactor system prompt variables for clarity and consistency across agent setup and runner modules 2026-04-07 00:23:41 +02:00
Roberto Musso
1ce1d492b0 Add Langfuse observability: traces, prompt management, prompt-to-generation linking
- New app/core/langfuse_client.py: lazy singleton client, get_prompt_or_fallback()
  helper (returns raw template + prompt obj for linking), extract_usage() for token
  counts. No-ops when LANGFUSE_* env vars are not set.
- deep_agent.py: home-agent and floating-agent runs wrapped in spans; each ainvoke
  wrapped in a generation with model/input/output/usage; prompts fetched from
  Langfuse (adiuva-home-agent, adiuva-floating-agent, adiuva-floating-classifier)
  with hardcoded fallback.
- agent_runner.py: step1-classifier and step2-processor LLM calls traced; batch
  agent _run_agent_with_tools spans + generations; cloud-processor included.
  Prompts: adiuva-step1-classifier, adiuva-step2-processor, adiuva-cloud-processor.
- agent_setup.py: journey-setup span + generation per ainvoke; prompt_obj stored
  on JourneySession and reused across turns. Prompt: journey_system.
- settings.py: LANGFUSE_SECRET_KEY, LANGFUSE_PUBLIC_KEY, LANGFUSE_HOST added.
- .env.example: Langfuse section with EU/US/self-hosted host comments.
- requirements.txt: langfuse>=2.0.0.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 00:19:20 +02:00
Roberto Musso
552b8eb305 Fix project creation: code-based in runner, not delegated to Step 2 LLM
Root causes fixed:
1. PROJECT_TOOLS removed from Step 2 tool set — project assignment is now
   exclusively handled by the runner in code, never by the LLM.
2. When Step 1 returns "new", runner calls execute_on_client insert/projects
   directly (before Step 2), gets the created id, and passes it as context.
3. Newly created projects are appended to the local `projects` list so that
   subsequent files in the same run can match to them via Step 1 — prevents
   one project per file when multiple files share the same topic.

Also add tests/test_classify_file.py with pytest cases for _classify_file
and a CLI runner: python -m tests.test_classify_file <file> [project...]

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-21 23:40:38 +01:00
Roberto Musso
0d93b3960d Exclude project/projectId questions from agent setup journey
- Add explicit MUST NOT instruction: never ask about projects, projectId,
  or how to link records; project assignment is handled by the agent runner
- Remove projectId from template field list; remove projects from entity types
- Remove stale isApproved=0 reference (already removed from the data model)

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-21 22:58:05 +01:00
Roberto Musso
f07580574b Replace max_turns cap with 90% confidence stopping criterion in agent setup
- Remove fixed _MAX_TURNS=5 instruction from system prompt; LLM now decides
  when to stop based on self-assessed confidence (>= 90%)
- Add _MIN_TURNS_BEFORE_NUDGE=3 and raise safety cap to _MAX_TURNS=15
- Nudge message and hard cap still act as a safety net for infinite loops

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-21 22:54:34 +01:00
Roberto Musso
1a8bf11f90 update migration plan 2026-03-20 23:48:36 +01:00
Roberto Musso
e7cdce8287 Improve Step 1 project matching and Step 2 update-first enforcement
- Rewrite _STEP1_SYSTEM_PROMPT: lower matching threshold (no longer requires
  "clear" match), strongly prefer existing projects over creating new ones,
  use structured id=|name=|status= format with aiSummary for richer context
- Add code-level UUID validation: reject hallucinated ids not in the fetched
  projects list, fall back to "new" instead of creating a bad link
- Rewrite _PROCESSING_SYSTEM_PROMPT: enforce explicit scan-before-create
  process (read existing → search → update if found → create only if not)
  with hard rule against calling create_* without checking existing records

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 23:45:29 +01:00
3ae9e450be Fix ProjectSidebar scroll and style native scrollbar
- Constrain SidebarProvider to h-full to close height chain
- Replace Radix ScrollArea in ProjectSidebar with overflow-y-auto div
  (Radix needs explicit pixel height; flex-1 alone is unreliable)
- Add min-h-0 to ProjectSidebar root to allow flex shrink
- Style native webkit scrollbar to match shadcn ScrollBar component
  (w-2.5, bg-border thumb, rounded-full, transparent track/corner)

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 23:44:43 +01:00
Roberto Musso
58bc6efd4b Rewrite run_local_agent: code-based flow, concurrency guard, remove isApproved
- Replace LLM-driven triage with code-based directory scan and project fetch
- Two-step LLM approach: Step 1 classifies file→project+domains, Step 2 processes with tools
- Add domain descriptions to Step 1 prompt for better extraction accuracy
- Add _running_agents set for per-agent concurrency guard (one running instance per agent)
- Return 409 from route before DB write when agent already running
- Remove is_approved from task_agent create/update tools and system prompt
- Remove is_approved from timeline_agent create/update tools and system prompt

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 22:21:30 +01:00
7616153345 Remove isApproved from tasks, rework agent runner, fix layout overflow
- Remove isApproved column from tasks DB schema and migration; drop column on startup
- Remove isApproved from tRPC router (list, create, update queries)
- Remove isApproved filter from KanbanBoard and ProjectDetail approve/reject UI
- AI-generated tasks now auto-approved; show Sparkles icon via isAiSuggested flag
- Fix tasks page width overflow: add min-w-0 to SidebarInset in AppShell
- Fix task title overflow: truncate with ellipsis inside TaskRow
- Fix tasks toolbar layout: shrink-0 on right side, fixed w-56 on search input

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 22:20:55 +01:00
Roberto Musso
6c450805cb possibile evoluzione 2026-03-20 20:57:03 +01:00
0c21f47a59 removed unused files 2026-03-20 12:47:33 +01:00
Roberto Musso
f340d0fa3e Fix dev tier: default to power when no subscription exists
The tier is resolved live from the subscriptions table in get_current_user.
Previously fell back to 'free' unconditionally, hitting the 5 runs/day
limit immediately in dev. Now falls back to 'power' (unlimited) when
ENV=dev and no subscription row exists.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 12:32:36 +01:00
Roberto Musso
edc53cb6eb Default to power tier (unlimited) in dev when no subscription exists
Users without a subscription row in dev get power tier so rate limits
and quota checks don't block local development. In prod the fallback
remains free tier as before.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 12:12:43 +01:00
7256f1ef4e Fix runNow: pass agentId and create run row in local SQLite
The manual 'Run now' path was missing both agentId in the trigger
request (so BE couldn't echo it in run_context) and the agentRuns
insert after the trigger responded, so manually-triggered runs never
appeared in the history sheet.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 11:54:54 +01:00
bf635d9c30 Always record agent run even when no actions are taken
Create the agentRuns row immediately after the trigger POST responds,
before any tool calls arrive. This ensures runs with zero mutations
(agent found nothing to create/update) still appear in the history sheet.

Removed the redundant onConflictDoNothing guard from recordRunAction
since the row is guaranteed to exist by trigger time.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 10:46:42 +01:00
5add259348 Fix await in sync WS message handler for run_complete
Wrap the async db.update in void (async () => {})() like the tool_call
case does — the ws.on('message') callback is synchronous.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 10:16:18 +01:00
198fd62ef2 Add agent run history sheet with action breakdown
- agent.runs tRPC procedure now queries local SQLite agentRuns table
  (previously fetched from backend) and joins action counts per run
- agent.runActions procedure added for lazy-loading individual actions
  when a run is expanded in the sheet
- AgentRunHistorySheet: slide-in sheet opened via History button on the
  agent card; shows runs with status/duration/action summary; each run
  is expandable to list individual actions (created/updated/deleted)
  with entity type and title
- AgentRow: adds History button, removes embedded AgentRunLog from
  expanded config section

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 10:11:40 +01:00
34a771bee3 Implement agent run logging in local SQLite
Protocol:
- RunContextSchema added to api-types — attached to WsToolCall frames
  originating from batch runs; type/runId/agentId identify the run
- WsRunCompleteSchema added — server sends this when a batch run ends

Database:
- agent_runs table: one row per run (id, agentId, status, startedAt, completedAt)
- agent_run_actions table: one row per mutating tool call
  (verb: created/updated/deleted, entityType, entityId, entityTitle)

Logging logic (backend-client.ts):
- On tool_call with runContext: ensure agentRuns row exists, insert
  agentRunActions for insert/update/delete actions
- On run_complete: update agentRuns status and completedAt

Scheduler passes agentId in the trigger POST so the backend echoes it
back in run_context for correct attribution.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 09:46:48 +01:00
Roberto Musso
725cece5c1 Add run_context to agent tool calls for FE run logging
- AgentTriggerRequest accepts optional agent_id (FE's stable electron-store UUID)
- _make_agent_executor injects run_context into every tool_call frame
  so Electron can attribute actions to the correct agent run
- run_local_agent accepts run_context and sends a run_complete WS frame
  when the run finishes so the FE can close the run record
- trigger_agent_run builds run_context with run_id=run_log.id and the
  stable agent_id, passes it through to run_local_agent

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-20 09:46:17 +01:00
Roberto Musso
297e20ce8d Fix 422 on agent trigger: accept plural data type names
AgentTriggerRequest.what_to_extract now accepts list[str] instead of
strict Literal values. _to_data_types normalises all FE variants
(tasks/task, notes/note, timelines/timeline/timelineEvents,
projects/project) to the canonical plural form the runner expects,
with deduplication.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-18 00:04:29 +01:00
65a08838c9 Truncate WS log output to 200 chars
Prevents large tool_result payloads from flooding the dev console.
Both send and receive logs now append … when the serialised frame
exceeds 200 characters.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-18 00:04:16 +01:00
Roberto Musso
5a03bd1cfb Clean up agent catalog and improve extraction agent prompts
- Remove unused config_schema from AgentCatalogItem (schema + route)
- Fix agent_setup system prompt: add extraction agent base behaviour
  context so journey LLM knows what is already handled and focuses on
  field mappings only; remove redundant data-types question (already
  known from user selection); derive data types list dynamically
- Rewrite processing base prompt to use actual tool names
  (list_tasks, update_task, add_task_comment, list_notes, update_note,
  list_timelines, update_timeline, list_all_projects, create_project)
  and enforce update-first strategy before falling back to creation

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-17 23:52:54 +01:00
8b5a05a16e Refactor settings page into pluggable components
- Split monolithic settings.tsx (~1500 lines) into focused components under
  src/renderer/components/settings/: GeneralSection, AccountSection,
  AgentsSection, AgentRow, LocalAgentConfigPanel, CloudAgentConfigPanel,
  TemplateSelectCard, PromptBuilderChat, InlineAgentCreationStepper,
  JourneyDialog, SettingsCard, and shared types/constants
- Hide agents list while creation stepper is open
- Use ScrollArea (app scroll primitive) in PromptBuilderChat
- Fix done-state handling: filter empty AI messages, show hardcoded
  confirmation bubble only once, move saved badge below chat, keep
  input enabled after prompt is saved so user can keep refining
- Wrap LocalAgentConfigPanel footer buttons with flex-wrap for narrow cards
- Update Agents section title/subtitle copy

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-17 23:52:39 +01:00
6a87590176 Update shadcn to v4, fix sendHomeRequest call signature, refresh skills lock
- Upgrade shadcn from 3.8.5 to 4.0.8
- Add missing session_id parameter to sendHomeRequest calls in orchestrator
- Update skills-lock.json computed hashes

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-17 16:34:07 +01:00
cd4644637b Wire journey chat to WS backend and handle end-of-conversation
- Rewrite PromptBuilderChat to use real WS journey mutations with
  button-to-start pattern, loading states, and markdown rendering
- Add isDone state to both PromptBuilderChat and JourneyDialog so
  input is disabled and a confirmation banner shown after prompt generation
- Extract and save promptTemplate via onPromptUpdate when BE sends done=true

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-17 16:26:21 +01:00
Roberto Musso
87b7a1c6c9 fix journey setup: honor FE session_id, seed LLM history, and force template on max turns
- Use session_id from the FE frame so replies match the listener key
- Seed conversation with a user message for LLM provider compatibility
- On max turns, nudge the LLM and immediately re-invoke to force
  prompt_template generation instead of deferring to next message
- Fix display_message extraction to safely check for template markers

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-17 16:25:53 +01:00
9fd441e7d7 Refactor Local Directory Monitor Agent to two-phase BE-orchestrated architecture
Replace the old single-pass FE file-reader flow (agent_run → agent_data →
agent_complete) with a BE-orchestrated two-phase execution where the BE's LLM
calls filesystem tools on the FE via tool_call/tool_result WS round-trips.

Key changes:
- Remove deprecated file-reader.ts and agent_run/agent_data/agent_complete frames
- Add list_directory, read_file_content, get_file_metadata handlers to DrizzleExecutor
- Migrate journey setup from REST to WebSocket (journey_start/message/reply frames)
- Store agent configs locally in electron-store (no longer on BE)
- Add agent scheduler for periodic auto-trigger via POST /agents/trigger
- Update device_hello to use local agent configs
- Remove fileExtensions from agent config, switch to single directory path
- Add agent.canCreate quota check mutation

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-17 11:05:08 +01:00
Roberto Musso
826f64d6bb refactor local directory agent to two-phase LLM-with-tools architecture
Replace the single-pass FE-driven agent_run/agent_data flow with a
BE-orchestrated two-phase execution using LangChain tool-calling:
- Phase 1 (Triage): explores directory via new filesystem tools, matches
  files to existing projects using PROJECT_TOOLS
- Phase 2 (Processing): reads files and performs CRUD per project group
  with clean LLM context windows

Key changes:
- Add filesystem_agent.py with list_directory, read_file_content,
  get_file_metadata tools using execute_on_client()
- Move setup journey from REST to WebSocket (journey_start/message frames)
- Add batch_runs_per_day billing limit and enforce in /trigger
- Remove deprecated agent_data/agent_complete frame handlers and queues

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-17 08:50:46 +01:00
5faa6b1d7c refactor agents to client-owned config flow 2026-03-16 22:35:46 +01:00
b7ddc95171 Udpate task page 2026-03-16 08:53:08 +01:00
488dab7aa1 Refine floating chat session lifecycle and home page glass effects
- Floating chat: reset session_id only on user-initiated page navigation,
  not when closed via X/Escape (session persists for reopening same context)
- Home buttons (sidebar trigger + new chat): add frosted glass background
  so they remain legible when chat messages scroll behind them
- Daily brief toast: match frosted glass opacity/blur to button treatment

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-16 00:53:39 +01:00
a52e5362b3 make visible buttons to create new chat 2026-03-16 00:38:16 +01:00
582ad389e1 migrate LanceDB package and include pending UI updates 2026-03-16 00:33:48 +01:00
02a9684cd6 scope episodic memory enrichment by session_id 2026-03-16 00:33:11 +01:00
3283cc9ad5 Add new conversation button and session_id to AI chat
- Add "New conversation" button in home page header, next to SidebarTrigger,
  separated by a vertical divider (visible only after first message)
- Generate and persist session_id per chat context in useAIChat; reset to a
  new UUID on clearMessages so each new conversation gets a fresh session
- Floating chat auto-resets session_id on close (clearMessages already fires)
- Thread session_id through tRPC router → orchestrator → backend-client WS
  payloads (home_request and floating_request) as snake_cased session_id

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-16 00:32:54 +01:00
fae9efee0d removed old plan files 2026-03-13 16:58:43 +01:00
30b062dd4a fix floating stream empty responses with sanitizer-safe fallbacks 2026-03-13 16:57:30 +01:00
2a0331d7ce refactor floating_domain to structured object-only payload 2026-03-13 16:09:24 +01:00
13fd8677c1 fix: normalize home task/timeline responses to tag-only lines 2026-03-13 12:16:58 +01:00
9bd629cb59 chore: add interaction tracing and remove personal fields from logs 2026-03-13 10:23:47 +01:00
9c97702daa feat: add letta-style memory tools with request/user debug tracing 2026-03-13 09:34:23 +01:00
a1e364c9c0 refactor: switch to single-agent deep runner and add mock memory/tool tests 2026-03-13 08:20:42 +01:00
5b55f1292a make a single agent 2026-03-13 07:42:36 +01:00
5bc9ea6cd6 fix: make planner schema copilot-compatible and silence usage warning 2026-03-12 23:17:31 +01:00
f7404b6f66 refactor: move memory updates from synthesizer to orchestrator node 2026-03-12 23:03:38 +01:00
d667e43c73 refactor: use native LangGraph streaming and enforce structured summary on workers 2026-03-12 22:50:32 +01:00
fe085a7951 feat: migrate chat orchestration to deep langgraph workers 2026-03-12 22:25:36 +01:00
2de67213f8 rename from checkpoint to timeline agent 2026-03-10 23:17:38 +01:00
f6ed383b3a add user name and surname 2026-03-10 16:14:00 +01:00
9332e29e53 bug fix sending component 2026-03-10 09:11:24 +01:00
618076193a update alembic 2026-03-08 23:17:01 +01:00
34f01234c9 rename popup chat to floating chat 2026-03-08 22:53:31 +01:00
0bd46937d3 fix: add missing json imports and update agent tool tests
Code bugs fixed:
- checkpoint_agent.py, project_agent.py, note_agent.py: add missing
  'import json' (used in handle() for context serialization)

Test fixes:
- test_agents.py: add autouse ws_executor fixture that sets a fake
  execute_on_client so tools can run in unit tests without a WS session
- Rewrite all TestXxxAgentTools tests: patch execute_on_client per-test,
  assert on call_args (what payload was sent to the client) and on the
  formatted string return value — matching actual tool behavior

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-08 22:25:06 +01:00
e6b5bc2e7d step-7: add memory middleware (memory_middleware.py, device_ws.py)
MemoryMiddleware class:
- enrich_context(): loads core prefs, associative (top-k), episodic (last-N),
  and proactive hints (above 0.6 confidence) — all decrypted in-memory only
- store_episode(): encrypts and persists interaction summary to memory_episodic
- update_core(): upserts encrypted key/value to memory_core

device_ws.py home_request + popup_request handlers:
- enrich_context() called before orchestrate_v3_stream (memory injected into context)
- store_episode() called after stream completes (non-blocking)

10 unit + integration tests pass; pre-existing test_agents.py failures unrelated.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-08 22:14:28 +01:00
c90ed58078 step-6: add memory models and migration (models.py, alembic)
- User.encryption_key: per-user Fernet key generated on registration
- MemoryCore: encrypted key/value preferences
- MemoryAssociative: encrypted semantic memory + pgvector(1536) embedding
- MemoryEpisodic: encrypted session summaries
- MemoryProactive: encrypted behavioral patterns with confidence score
- Migration 004: enables pgvector extension, creates all 4 tables + ivfflat index
- auth.py register: generates Fernet key for new users
- 8 unit tests pass (SQLite in-memory, JSON embedding fallback)

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-08 22:05:58 +01:00
76c8f2bdad step-5: unify ws handler (device_ws.py, chat.py)
- device_ws.py: dispatch home_request/popup_request to HomeFormatter/PopupFormatter
  via async tasks; each request gets a UUID request_id for frame correlation
- chat.py: remove chat_stream WS endpoint (superseded by unified device WS);
  keep POST /chat REST fallback unchanged
- 5 new integration tests pass; all 22 existing device_ws tests still pass

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-08 22:01:11 +01:00
393b3befd6 step-4: add output formatting layer (output_formatter.py)
HomeFormatter parses JSON block stream from orchestrator tokens and emits
stream_start / stream_text / stream_block / stream_end frames.
PopupFormatter emits popup_domain then plain stream_text.
All 13 unit tests pass.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-08 21:51:20 +01:00
2c08275934 step-3: add router refactor with streaming support (orchestrator.py)
- orchestrate_v3(user_id, message, context): classifies intent, returns
  (agent_name, agent_instance) — caller drives execution
- orchestrate_v3_stream(user_id, message, context): yields (agent_name, token)
  pairs; first yield is always (agent_name, "") as a domain-detection signal
- ChatAgent.handle_stream(): default implementation yields handle() result as
  one chunk; subclasses override for true token-level streaming
- Fix stale test_orchestrator.py assertions that expected a JSON final frame
  that orchestrate_stream never emitted

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-08 21:42:46 +01:00
7cb384fa63 step-2: add agent streaming and tool result capture (agent_registry.py)
- ChatAgent.__init__: adds tool_results: list[dict] = []
- _tool_loop: wraps execution in a result collector; populates
  self.tool_results with raw execute_on_client dicts after each run
- _tool_loop_stream: streaming variant — uses ainvoke for tool-call
  iterations, llm.astream() for the final answer; same result capture
- ws_context.py: adds _tool_result_collector ContextVar +
  set/clear helpers; execute_on_client appends to collector when set

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-08 21:37:15 +01:00
7efaeba283 chore: migrate Settings to Pydantic v2 ConfigDict
Replace deprecated Pydantic v1 `class Config:` inner class with
`model_config = SettingsConfigDict(...)` to eliminate the deprecation
warning emitted on every test run.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-08 21:25:45 +01:00
b61ded8458 step-1: add v3 ws frame protocol (schemas.py)
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-08 21:21:03 +01:00
ac71d99f9a add cerebras models 2026-03-08 00:53:25 +01:00
3b3b3baf25 update memory implementation strategy 2026-03-08 00:47:24 +01:00
45415bb9ee Update plan 2026-03-05 23:54:45 +01:00
a775a2da18 feat(step-3.6): cloud provider integrations (Gmail, Outlook, Teams)
- Add app/integrations/__init__.py: Fernet token encryption helpers,
  EmailMessage/ChatMessage dataclasses, get_provider() factory
- Add app/integrations/gmail.py: GmailClient with async fetch_messages(),
  token refresh, configurable label/sender/date filters
- Add app/integrations/ms_graph.py: MSGraphClient with fetch_emails()
  (Outlook) and fetch_messages() (Teams), MSAL token refresh, OData filters
- Update app/core/agent_runner.py: replace run_cloud_agent() stub with
  full 8-step implementation; extend _finalize_run() for cloud config type
- Update app/config/settings.py: add OAuth + Fernet encryption settings
- Update requirements.txt: google-api-python-client, google-auth-*,
  msal, cryptography
- Add tests/test_integrations.py: 47 tests covering all integration code
- Update tests/test_agent_runner.py: replace stub test with 7 real tests

All 76 new/updated tests pass.
2026-03-05 18:05:07 +01:00
24772f2b67 step 3.5 complete: chatbot journey endpoint 2026-03-05 17:35:37 +01:00
fd1396a710 update plan 2026-03-05 16:15:24 +01:00
914f70bd85 step 3.4 complete: agent run orchestrator — local/cloud runner + trigger_pending_runs + 23 tests 2026-03-05 16:13:21 +01:00
608d6c784f step 3.3 complete: device WS endpoint + DeviceConnectionManager 2026-03-05 15:51:58 +01:00
19ad5be97f step 3.2 complete: agent CRUD API routes
- Add app/api/routes/agents.py with 11 endpoints:
  GET/POST/PUT/DELETE /agents/local (local directory agent configs)
  GET/POST/PUT/DELETE /agents/cloud (cloud connector agent configs)
  GET /agents/catalog (hardcoded agent type catalog)
  GET /agents/runs (paginated run logs with agent_id/page/limit filters)
  POST /agents/{id}/run (manual trigger stub, dispatch wired in step 3.4)
- Tier-gate creation via combined local+cloud batch_active limit
- Ownership checks on all mutations (404 on mismatch)
- Cascade delete of run logs via SQLAlchemy relationship
- Register agents router in app/main.py
- Fix missing import json in app/agents/task_agent.py
2026-03-05 15:33:53 +01:00
1dfd088e18 step 3.1 complete: agent config tables + schemas + migration 2026-03-05 15:14:43 +01:00
c6e1e4e7fd fix: migration enum creation — use DO/EXCEPTION instead of broken checkfirst 2026-03-05 00:24:31 +01:00
cc603aba06 step B.6 complete: POST /api/v1/storage/vectors/embed endpoint 2026-03-05 00:07:06 +01:00
6d9a16e513 steps B.3/B.4/B.5 complete: bidirectional WS handler, _tool_loop verified, clean final frame 2026-03-05 00:06:11 +01:00
27c087d5d8 step B.2 complete: all 23 tools use execute_on_client(); add embed() to llm 2026-03-05 00:03:01 +01:00
rmusso
4d7fd519c5 step B.1 complete: WS context + frame schemas 2026-03-04 23:59:31 +01:00
06de7c7ab0 feat: deploy via SSH with port 8080, idempotent migrations 2026-03-03 22:10:03 +01:00
e3c7547c75 Remove unused imports across multiple files to clean up the codebase 2026-03-03 17:21:40 +01:00
314780d59a Add LLM configuration options and update deployment workflow
- Introduced new API keys for Anthropic and Google in .env.example and settings.py
- Updated llm.py to retrieve API keys directly from settings
- Modified deploy.yaml to streamline code checkout and improve deployment process
2026-03-03 16:52:56 +01:00
091787a6da Merge branch 'develop' 2026-03-03 16:09:31 +01:00
7f278c6f63 complete backend plan 2026-03-03 16:09:13 +01:00
8bfce9da00 Refactor LLM instantiation across agents and orchestrator
- Replaced direct instantiation of ChatOpenAI with a centralized get_llm function in CheckpointAgent, NoteAgent, ProjectAgent, and TaskAgent.
- Introduced a new llm.py module to handle LLM model instantiation and API key management.
- Updated settings.py to include LLM_MODEL and LLM_ROUTER_MODEL configurations.
- Modified orchestrator.py to use get_router_llm for intent classification.
- Updated requirements.txt to include litellm for LLM management.
- Adjusted tests to mock get_llm instead of ChatOpenAI directly.
2026-03-03 15:46:44 +01:00
480e7ac5bd Step 13 - completed 2026-03-03 15:14:04 +01:00
d0b303e745 Step 12 - completed 2026-03-03 14:53:34 +01:00
5d485b3665 step 12 2026-03-03 12:39:32 +01:00
9787befd4a step 11 complete: billing service and tier manager
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-02 22:41:35 +01:00
8f7bc25611 step 10 complete: plugin marketplace with catalog, review workflow, and revenue split
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-02 22:32:44 +01:00
3e07fff958 step 9 complete: auth middleware, tier-aware rate limiter, and response sanitizer
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-02 22:18:17 +01:00
9119474e71 Update docker-compose.yml 2026-03-02 16:51:19 +00:00
4c4df7335a auto deploy 2026-03-02 17:41:23 +01:00
c8ef7b119b Refactor tests for execution plan and add comprehensive storage tests
- Updated `TestModuleSingletons` in `test_execution_plan.py` to reflect new agent templates and playbook names.
- Changed assertions in playbook tests to match updated templates and agents.
- Introduced `test_storage.py` to cover the storage layer, including encryption, BlobStore, and VectorStore functionalities.
- Added tests for S3 interactions, ensuring upload, download, delete, and list operations work as expected.
- Implemented mock tests for Pinecone and Qdrant vector stores to validate upsert, search, and delete operations.
2026-03-02 15:36:09 +01:00
35dd9ac86f step 8 complete: REST + WebSocket API routes for chat, plans, storage, vectors, backup, plugins, billing
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-02 15:33:57 +01:00
e72d72f4f6 step 6 complete: four specialized agents, all registered and tested
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-02 13:18:53 +01:00
14d1a7351d step 5 complete: execution plan builder, template registry, and LRU plan cache
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-02 13:13:02 +01:00
68955d2fc2 step 4 complete: intelligent routing with single-agent and pipeline modes
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-02 13:03:54 +01:00
864dfdc4e6 add .gitignore 2026-03-02 00:06:21 +01:00
0d16729036 step 3 complete: pluggable agent framework
Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-02 00:03:42 +01:00
82669d3704 step 2 complete: all request/response models defined and validated
Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-01 23:56:32 +01:00
4d0917f5df step 1 complete: runnable FastAPI skeleton
- Full directory structure with all __init__.py stubs
- requirements.txt with all pinned dependencies
- app/config/settings.py (BaseSettings, env-based)
- app/main.py (CORS, lifespan, /api/v1/health)
- Dockerfile (multi-stage, Python 3.12-slim, non-root user)
- docker-compose.yml (app + postgres:16 with healthcheck)
- .env.example
- BACKEND_PLAN.md: mark step 1 done, add one-step-at-a-time rule

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-01 23:51:37 +01:00
71fd1a0a7c update name 2026-03-01 23:45:57 +01:00
493b4dd12a first commit 2026-03-01 23:42:33 +01:00
439 changed files with 170341 additions and 12315 deletions

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@@ -1,169 +1,297 @@
# CLAUDE.md
## Commands
Guide Claude Code when work in repo.
## Keeping This File Up to Date
Update when lesson learned. Update when:
- Non-obvious arch decision made or found
- Gotcha, footgun, surprising behavior hit (+ fix/workaround)
- New command, workflow, tool added
- Convention set that not obvious from code
- Integration detail clarified (IPC protocol behavior, agent tool call edge cases)
Do **not** add derivable-from-code things, generic best practices, or ephemeral task notes — durable knowledge only.
> graphify rules live in the root `CLAUDE.md` (single source).
## Repository Layout
**Single merged monorepo.** Electron app and FastAPI backend were previously separate submodules; they now live as plain subdirectories in this repo.
| Directory | What |
|-----------|------|
| **`electron/`** | Electron desktop app (TypeScript/React) |
| **`api/`** | FastAPI backend (Python) |
| **`docs/`** | Planning docs & working memory |
| **`graphify-out/`** | Knowledge graph (see root `CLAUDE.md`) |
---
## Electron App (`electron/`)
### Commands
```bash
source ~/.nvm/nvm.sh && npm start # Dev with hot-reload
source ~/.nvm/nvm.sh && npm run make # Build distributable packages
source ~/.nvm/nvm.sh && npm run package # Package without installers
source ~/.nvm/nvm.sh && npm run lint # ESLint (.ts/.tsx)
source ~/.nvm/nvm.sh && npx drizzle-kit generate # Generate migration from schema
source ~/.nvm/nvm.sh && npx drizzle-kit push # Push schema directly (dev only)
cd electron
npm run start # Dev (Electron + Vite)
npm run lint # ESLint
npm run knip # Dead code analysis
npm run make # Build installers (Win/Linux/macOS)
npm run package # Package without installers
npm run dev:web # Standalone web SPA dev
npm run build:web # Build standalone SPA → dist-web/
npm run preview:web # Preview built web SPA
npx drizzle-kit generate # Generate migration from schema
npx drizzle-kit push # Push schema directly (dev only)
```
No test suite currently.
## Architecture
Adiuva is a local-first Electron desktop app. The three processes communicate via a custom tRPC v11 ↔ IPC bridge (the public `electron-trpc` package is incompatible with tRPC v11).
### Architecture
```
Renderer (React 19) ──ipcLink──► Preload (contextBridge) ──IPC──► Main (tRPC router + SQLite)
Renderer (React 19 + TanStack Router)
↓ custom ipcLink (NOT electron-trpc — incompatible with tRPC v11)
Preload (contextBridge: window.electronTRPC + window.electronAI)
↓ IPC channels
Main Process (Node.js)
├── tRPC router (CRUD + AI proxy procedures)
├── SQLite (better-sqlite3 + Drizzle ORM, WAL mode)
└── Backend delegation layer (orchestrator.ts forwards to FastAPI WS)
```
### Main Process (`src/main/`)
**Local-first storage, cloud AI.** All user data (clients, projects, tasks, notes, timelines) in local SQLite. AI lives entirely on the FastAPI backend — Electron orchestrator is a thin delegation shell that forwards to `/api/v1/device` WS and dispatches v3 typed stream frames + tool-call ↔ DrizzleExecutor round-trips back to renderer.
Owns the database and all business logic.
**IPC channels**:
- `'trpc'` — bidirectional tRPC request/response (all CRUD + auth + scout + memory proxy)
- `'ai:stream'` — one-way v3 stream frames main → renderer
- `'ai:action'` — AI side-effects (e.g. agent auto-creates task)
| File | Purpose |
|---|---|
| `index.ts` | Window creation, app lifecycle |
| `ipc.ts` | Bridges `ipcMain` to tRPC procedures |
| `router/index.ts` | All tRPC sub-routers merged into `appRouter` |
| `db/index.ts` | Drizzle + better-sqlite3, WAL mode, singleton `getDb()` |
| `db/schema.ts` | Table definitions: clients, projects, tasks, checkpoints, notes, taskComments |
| `db/vectordb.ts` | LanceDB vector store for note embeddings |
| `store.ts` | electron-store for persistent UI settings |
**Main process layout (`src/main/`)**:
- `index.ts` — Window creation, app lifecycle, protocol handler
- `ipc.ts` — Custom tRPC↔IPC bridge
- `store.ts` — electron-store for `FormatPrefs` + `uiLanguage`; exports `getUiLanguage()`
- `router/index.ts` All tRPC sub-routers (~1627 LOC)
- `db/schema.ts` — 10 tables: clients, projects, tasks, timelineEvents, timelineEventDependencies, notes, noteEdits, taskComments, scoutRuns, scoutRunActions
- `db/index.ts` — Drizzle + better-sqlite3 (WAL), singleton `getDb()`, `initDb()` migrations
- `db/notes-backfill.ts` — Startup backfill: generates `aiSummary` for notes with null summary
- `ai/orchestrator.ts` — Thin backend-delegation layer (~304 LOC). Connectivity/auth guard → `BackendClient.sendHomeRequest()` / `sendFloatingRequest()` → forwards v3 stream frames to renderer. Also schedules daily-brief regeneration.
- `ai/token.ts` — Two-tier token storage (safeStorage + electron-store fallback)
- `scouts/scout-scheduler.ts` — Local scout scheduling (filesystem scouts)
- `api/backend-client.ts` — WS client to FastAPI: handles tool-call round-trips, v3 stream frame dispatch, journey + scout proxies
- `api/drizzle-executor.ts` — Executes backend-issued tool calls against local SQLite. Wraps results through `formatRow()`/`formatRows()` using user FormatPrefs
- `auth/auth-manager.ts` — Login, register, logout, OAuth flow (singleton)
- `auth/backup-key.ts` — Device-specific AES-256 backup key (safeStorage, not password-derived)
- `auth/locale-defaults.ts` — Detects timezone, date/time format, language from OS locale
### Preload (`src/preload/trpc.ts`)
**tRPC routers** (in `appRouter`): `health`, `settings`, `clients`, `projects`, `tasks`, `timelineEvents`, `timelineEventDependencies`, `notes`, `noteEdits`, `taskComments`, `ai`, `auth`, `scout` (with `local` / `cloud` / `journey` sub-routers), `memory`.
Exposes `window.electronTRPC` with `sendMessage()` / `onMessage()`.
**Renderer** (`src/renderer/`): file-based routing via TanStack Router (`routeTree.gen.ts` auto-generated). shadcn/ui new-york theme, neutral colors. Path alias `@/*``src/renderer/*`. Notes editor: Milkdown (`@milkdown/crepe`).
### Renderer (`src/renderer/`)
**Non-obvious details**:
- `electron-trpc` NOT used — custom IPC bridge (`ipc.ts` + `lib/ipcLink.ts`) because electron-trpc bundles tRPC v10 internals
- Vite configs use `.mts` extension to avoid ESM/CJS conflicts with electron-forge
- `forge.config.ts` has cross-compilation hooks (downloads platform-specific native binaries for better-sqlite3)
- DB has no foreign key constraints — cascade deletes in tRPC procedures
- Timestamps are milliseconds (`Date.getTime()`), not ISO strings
- Notes use `aiSummary` (≤250 char, backend `gpt-4o-mini` via `POST /api/v1/scouts/notes/summarize`) for AI navigation — LanceDB fully removed
- AI note edits go through `noteEdits` HITL table (`type: append|insert|replace`, `status: pending|approved|rejected`); backend tool `propose_note_edit` → drizzle-executor inserts row; user approves/rejects in UI; auto-reject on missing anchor
- `checkpoints` table replaced by `timelineEvents` + `timelineEventDependencies` (events are typed `milestone|checkpoint|activity`, with optional dep edges)
- `scoutRuns` + `scoutRunActions` populated by backend-client on tool_call/run_complete frames; UI reads via `scout.runs` / `scout.runActions`
React 19 — never accesses Node APIs directly. All data through `trpc.*.useQuery()` / `trpc.*.useMutation()`.
**Settings Page (shared Electron + Web)**:
- Settings page runs in **both** Electron and standalone web SPA. Same React components — no duplication.
- **Platform Adapter**: `PlatformProvider` context (`src/renderer/lib/platform.tsx`) exposes `isElectron`/`isWeb`/`hasLocalAgents`/`hasFileDialog`. Components use `usePlatform()` to gate Electron-only features.
- **Web build**: `vite.web.config.mts``dist-web/`. Entry: `web.html``src/renderer/web-main.tsx` (uses `httpBatchLink` via `lib/httpLink.ts` instead of `ipcLink`).
- **Electron-only gating**: Device ID card and local scout filesystem gated behind `platform.isElectron`. On web: visible but disabled, not hidden.
- **Gotcha**: Do NOT add Electron-specific settings (server URL, native file pickers) without wrapping in `platform.isElectron`. Same component tree renders on web.
| File | Purpose |
|---|---|
| `lib/ipcLink.ts` | Custom TRPCLink routing through `window.electronTRPC` |
| `lib/trpc.ts` | `createTRPCReact<AppRouter>()` typed client |
| `index.tsx` | QueryClient + tRPC + Router providers |
**Onboarding Wizard**:
- First-run wizard collects 5 fields: `job_role`, `industry`, `primary_use_case`, `tone_preference`, `language`. Plus `user_name` from `name`+`surname`.
- All fields stored as encrypted core memory (backend `MemoryMiddleware`), not local electron-store.
- `onboarding_completed_at` on `users` table (nullable TIMESTAMPTZ) gates flow — `null` = show wizard, non-null = skip.
- `AppShell.tsx` gates: if `profile.onboardingCompletedAt == null` → render `<OnboardingFlow>` instead of app.
- `auth.status` tRPC procedure auto-seeds `language` and `user_name` into MemoryCore if missing (fire-and-forget `.catch(() => {})`).
- Format prefs (timezone, dateFormat, timeFormat) stored in electron-store (`FormatPrefs`), not core memory — device-specific.
- `drizzle-executor.ts` wraps all query results through `formatRow()`/`formatRows()` using user FormatPrefs.
- Settings > Profile allows post-onboarding edit of all fields + format prefs.
- **Gotcha — shadcn Button `outline` variant in dark mode**: variant defines `dark:bg-input/30 dark:border-input dark:hover:bg-input/50` — overrides custom `className` background. Fix: switch between `variant="default"` and `variant="outline"` instead of className overrides.
- **Gotcha — locale codes vs human names**: `app.getLocale()` and `navigator.language` return codes like `en-US`. Use `Intl.DisplayNames(undefined, { type: 'language' })` to convert to "English". Must do in both main process (`locale-defaults.ts`) and renderer (`OnboardingFlow.tsx`).
### Routing
**i18n (Internationalization)**:
- `i18next` + `react-i18next` with bundled JSON translations (no lazy loading).
- Config in `src/renderer/i18n.ts`. 5 languages: EN, IT, ES, FR, DE. `SUPPORTED_LANGUAGES` exported for UI selectors.
- Translation files: `src/renderer/locales/{en,it,es,fr,de}/translation.json`. Namespaces: `nav`, `auth`, `tasks`, `settings`, `common`, `errors`, `home`, `timeline`, `projects`, `scouts`.
- **`common.*` namespace** holds shared labels (`save`, `cancel`, `delete`, `edit`, `add`, `rename`, `saving`, `deleting`, `creating`, `renameDescription`, `deleteTitle`). Check `common.*` before adding new key.
- Pluralization uses i18next `_one`/`_other` suffixes.
- `LanguageSync` component in `src/renderer/index.tsx` reads persisted `uiLanguage` from electron-store via tRPC on startup, syncs to i18next.
- Language selector in `GeneralSection.tsx` (Settings > General). On change: (1) calls `i18n.changeLanguage()`, (2) persists to electron-store via `setUiLanguage` mutation, (3) writes to backend core memory so AI responds in same language.
- `getUiLanguage()` exported from `src/main/store.ts`.
- Static data arrays needing translation use `labelKey` pattern: store translation key, call `t(labelKey)` at render. Used in `NAV_ITEMS`, `COLUMNS`, `SECTIONS`, `SUGGESTION_CHIPS`.
- When adding new translated text: add key to **all 5** JSON files. Keep `common.*` consistent across all languages.
File-based via TanStack Router (`tsr.config.json` at root). Route tree auto-generated at `routeTree.gen.ts`.
**Google OAuth (adiuvAI side)**:
- `adiuvai://` NOT accepted by Google as redirect URI — Google only accepts `http://localhost` or `https://`. API backend exposes `GET /auth/oauth/google/web-callback` which receives Google redirect and bounces to `adiuvai://oauth/callback?...`. Redirect URI in Google Cloud Console points to backend, not Electron app.
- `app.requestSingleInstanceLock()` required for `second-instance` event on Windows/Linux. If returns `false`, call `app.quit()` immediately.
- In dev (`process.defaultApp === true`), `setAsDefaultProtocolClient('adiuvai')` must include `[path.resolve(process.argv[1])]` as third arg so OS protocol registration includes entry script.
- `loginWithOAuth` uses `fetch()` directly (not `this.get()`) — authorize endpoint is public, `get()` throws when not authenticated.
- Backup key in `backup-key.ts` stored in `encryptedTokens` under key `backup_key`, reusing `getToken/setToken` from `token.ts`. Device-bound, never password-derived — social-login users can use backup features.
Routes: `__root.tsx` (AppShell layout), `index`, `tasks`, `timeline`, `projects`, `notes.$noteId`
---
### tRPC Routers
## api (FastAPI Backend)
`health`, `settings`, `clients`, `projects`, `tasks`, `checkpoints`, `notes`, `taskComments`, `ai`
### Commands
### Database
```bash
cd api
Schema in `src/main/db/schema.ts`, migrations in `src/main/db/migrations/`. DB created in Electron's `userData` as `adiuva.db`. On startup, `initDb()` runs non-destructive migrations.
# Development
uvicorn app.main:app --reload --host 0.0.0.0 --port 8000
To add a table/column: edit `schema.ts``drizzle-kit generate``drizzle-kit push` (dev) or commit the migration.
# Production
gunicorn app.main:app -k uvicorn.workers.UvicornWorker -w 4 --timeout 120
### Adding a Feature (end-to-end)
# Database migrations
alembic upgrade head
1. **Schema**`src/main/db/schema.ts`
2. **Router** — Add sub-router in `src/main/router/index.ts`, merge into `appRouter`
3. **Types** — Flow automatically via `AppRouter` export
4. **UI** — Components in `src/renderer/components/<feature>/`, data via `trpc.*.useQuery()`
# Testing
pytest # all tests
pytest -v # verbose
pytest tests/test_deep_agent.py # single file
pytest tests/test_deep_agent.py -k test_name # single test
## AI Subsystem (`src/main/ai/`)
# Linting/formatting
ruff check .
ruff format .
LangGraph-based agentic system with pluggable LLM providers.
# Docker (full stack)
docker compose up --build
```
### Orchestrator (`orchestrator.ts`)
### Architecture
Classifies user intent → routes to a specialist agent:
```
FastAPI app (app/main.py)
├── Lifespan: APScheduler crons (memory hourly + audit weekly) when SCHEDULER_ENABLED
├── Middleware: TierRateLimit → Sanitizer → CORS
├── HTTP Routes (app/api/routes/) — all under /api/v1
│ ├── auth.py — register, login, refresh, profile, OAuth, onboarding, password
│ ├── chat.py — POST /chat, /chat/brief, /chat/embed
│ ├── scouts.py — catalog, can-create, trigger, notes/summarize
│ ├── scout_setup.py — guided scout setup (journey)
│ ├── billing.py — Stripe checkout, webhook, subscription, invoices
│ ├── device_ws.py — WS /device (unified streaming endpoint: home, floating, brief, journey)
│ └── memory.py — core / relational / forget-all
├── Agent System (app/agents/)
│ ├── task_agent.py
│ ├── project_agent.py
│ ├── note_agent.py
│ ├── timeline_agent.py
│ └── filesystem_agent.py
├── Core (app/core/)
│ ├── deep_agent.py — main agent runner (run_home / run_floating / run_brief / run_journey)
│ ├── brief_agent.py — daily brief generation
│ ├── agent_runner.py — local + cloud agent run executor
│ ├── agent_session_buffer.py — per-session conversation buffer
│ ├── agent_registry.py — decorator-based agent registry
│ ├── llm.py — LiteLLM factory (multi-provider)
│ ├── memory_middleware.py — encrypted core memory read/write
│ ├── memory_extraction.py — LLM extraction from conversation tail
│ ├── memory_maintenance.py — drain queue, contradiction audit, proactive mining
│ ├── note_summarizer.py — gpt-4o-mini summary for notes
│ ├── output_formatter.py — render agent output to user-facing markdown
│ ├── embeddings.py
│ ├── device_manager.py — device registration / WS session tracking
│ ├── ws_context.py — per-WS user context plumbing
│ ├── langfuse_client.py — Langfuse prompt + tracing client
│ └── preprocessors/ — input preprocessors (e.g. email_html.py)
├── Auth (app/auth/oauth_providers.py) — GoogleOAuthProvider (httpx + manual PKCE)
├── Billing (app/billing/) — tier_manager + stripe_service
├── Integrations (app/integrations/) — gmail.py, ms_graph.py
└── Models (app/models.py) — SQLAlchemy 2.0 ORM
```
| Agent | Scope | Tools |
|---|---|---|
| Project | Project-scoped Q&A | `read_project_notes`, `add_task`, `get_summary`, `suggest_checkpoints`, `suggest_tasks` |
| Knowledge | Cross-project search | `vector_search_all` |
| General | Workspace-wide | `add_task` |
**HTTP route prefix**: every router included with `prefix="/api/v1"`. So `/api/v1/auth/...`, `/api/v1/chat`, `/api/v1/scouts/...`, `/api/v1/memory/...`, `/api/v1/device` (WS).
All providers use LangChain `bindTools()` + ToolMessage loop (max 5 iterations).
**ORM models** (`app/models.py`): `User`, `RefreshToken`, `OAuthAccount`, `Subscription`, `LocalScoutConfig`, `CloudScoutConfig`, `ScoutRunLog`, `MemoryCore`, `MemoryAssociative`, `MemoryEpisodic`, `MemoryProactive`, `ExtractionQueue`, `MemoryRelation`, `Plugin`. PostgreSQL (asyncpg + SQLAlchemy 2.0 async). Alembic migrations in `alembic/versions/`.
Also exports `dailyBrief()` for AI-generated daily summaries (`ai.dailyBrief` tRPC mutation).
**Lifespan crons** (only if `settings.SCHEDULER_ENABLED`):
- `_memory_cron_tick` — hourly: drains Free-tier extraction queue + mines proactive patterns for Power+ users
- `_memory_audit_cron_tick` — weekly: contradiction scan + label canonicalization for all users (Phase 7)
### Streaming
**LLM routing**: backend agents own all intelligence. Tool calls describe client-side ops (JSON) → Electron `drizzle-executor` runs them against local SQLite → result returned to backend over WS. Tool loop cap inside agent runner prevents runaway iteration.
`sendStreamChunk(sender, token, done)` over IPC `'ai:stream'`. Renderer subscribes via `window.electronAI.onStreamChunk()` in `AIChatPanel.tsx`. `<tool_call>` blocks are filtered before display.
**Zero-trust data model**: backend never stores raw user content. PostgreSQL holds auth, billing, plugin metadata, encrypted memory (Core/Associative/Episodic/Proactive/Relational), scout configs, run logs.
### Providers (`llm.ts`)
**Config**: `app/config/settings.py` — all env vars via Pydantic Settings. Copy `.env.example` to `.env` for local dev.
| Provider | Model | Notes |
|---|---|---|
| OpenAI | `gpt-4o-mini` | Via LangChain |
| Anthropic | `claude-sonnet-4-20250514` | Via LangChain |
| Copilot | `ChatCopilot` wrapper | `copilot.ts` / `chat-copilot.ts` |
**Testing**: pytest + pytest-asyncio. Fixtures in `tests/conftest.py`. Active suites: agent runner, auth, brief/deep agents, device WS, integrations, journey, memory (audit/extraction/middleware/models/proactive/relations), middleware, output formatter, preprocessors, schemas, ws_unified.
All use `temperature: 0.3`, streaming enabled. Provider management in `provider.ts`.
### Non-obvious details
### Vector Embeddings (`db/vectordb.ts`)
**Provider factory** (`llm.ts`): `gpt-4o-mini` (OpenAI), `claude-sonnet-4-20250514` (Anthropic), or ChatCopilot wrapper — all with `temperature: 0.3` and streaming enabled.
- **Tier from DB, not JWT**: `get_current_user` decodes JWT but fetches authoritative tier from `subscriptions` — tier changes take effect immediately, no re-login needed
- **Refresh tokens hashed**: plaintext returned to client, stored as SHA-256 in DB — server can never retrieve plaintext (intentional)
- **WebSocket auth via query param**: `?token=<jwt>` instead of Bearer header (WebSocket handshake limitation)
- **Unified device WS**: `/api/v1/device` is the single bidirectional channel. Handles home requests, floating requests, daily briefs, journeys, heartbeats. Tool calls round-trip through the same socket
- **Prompt IP protection**: prompts kept server-side via Langfuse (`langfuse_client`). `SanitizerMiddleware` strips leaked fragments from responses
- **Agents don't execute operations**: tools return JSON describing client-side ops — Electron client executes against local SQLite
- **Alembic async/sync split**: app uses `postgresql+asyncpg`, Alembic CLI needs `postgresql+psycopg2``env.py` handles URL conversion
- **CORS includes `app://`**: Electron uses custom `app://` protocol, not http/https
- **Run-disconnect tracking**: `_mark_runs_disconnected` flips active runs when WS drops so client can resume cleanly
**Token storage** (`token.ts`) — two-tier fallback:
1. electron-store + `safeStorage` — encrypted at rest (preferred)
2. Plain electron-store — last resort (e.g. WSL with no keyring)
**Onboarding (API side)**:
- `PUT /auth/me/memory` — updates core memory k/v pairs, optionally marks onboarding complete (`mark_onboarded: true` sets `users.onboarding_completed_at`).
- `POST /auth/me/onboarding/reset` — nullifies `onboarding_completed_at` so wizard re-runs.
- `POST /auth/onboarding/normalize` — LLM-normalizes free-text onboarding inputs via `gpt-4o-mini`; returns inputs unchanged on error.
- `get_current_user()` in `auth.py` middleware decrypts core memory blocks, includes in `UserProfile.memory` dict.
- `users.onboarding_completed_at` — nullable TIMESTAMPTZ, returned as epoch ms (int) in UserProfile schema.
**AI approval pattern**: Tasks and checkpoints have `isAiSuggested` (bool) and `isApproved` (bool) columns. AI-suggested items appear in the UI pending user approval before being treated as real records.
**i18n (API side)**:
- `_language_instruction()` in `app/core/deep_agent.py` reads user's `language` from `MemoryCore`, appends system prompt directive ("Always respond in {language}") to all `run_*` functions.
- Electron client writes chosen language to backend core memory on change — API picks up on next agent call.
### Vector Embeddings (`src/main/db/vectordb.ts`)
**Google OAuth (api side)**:
- OAuth routes in `app/api/routes/auth.py`: `GET /auth/oauth/{provider}/authorize`, `POST /auth/oauth/{provider}/callback`, `GET /auth/oauth/{provider}/web-callback` (bounces to deep link, excluded from OpenAPI schema).
- Provider abstraction in `app/auth/oauth_providers.py``GoogleOAuthProvider` uses `httpx` directly (no `authlib`). PKCE S256 implemented manually via `generate_pkce_pair()`.
- `_pending_states` dict in `routes/auth.py` is **in-memory** — works for single-process dev, doesn't survive restarts, doesn't scale to multiple workers. Replace with Redis in production.
- `users.password_hash` is **nullable** — social-only users have `password_hash=None`. `await db.flush()` required before creating linked `OAuthAccount` to populate `new_user.id` before commit.
- `OAUTH_REDIRECT_URI` must point to **API backend** (e.g. `https://api.adiuvai.com/...`).
- **Unverified email + existing account = 409**: if `email_verified=False` and email already registered, callback returns 409. Without this guard, branch 3 would INSERT duplicate email and crash with DB constraint violation (500).
- **Testing OAuth routes**: mock `GoogleOAuthProvider.exchange_code` and `get_userinfo` with `patch.object(..., new=AsyncMock(...))` — works because FastAPI instantiates new provider per request. Use `monkeypatch.setattr(settings, "GOOGLE_AUTH_CLIENT_ID", ...)` to simulate configured credentials without restart.
LanceDB in `{userData}/vectors/`. Schema: `{ id, projectId, content, vector }` (1536-dim, `text-embedding-3-small` via `embeddings.ts`). Embedding priority: Copilot CLI token → OpenAI token.
### Tier System
- `upsertNoteEmbedding()` on note create/update (fire-and-forget)
- `migrateNotesIfNeeded()` backfills on first startup
- `searchNotes(query, limit=5)` used by Knowledge agent
Source of truth: `app/billing/tier_manager.py` (`FEATURES` + `RATE_LIMITS` dicts).
### AI Approval Pattern
| Feature | Free | Pro | Power | Team |
|---------------------|--------|-----------|-----------|-----------|
| Rate limit | 20/min | 60/min | 120/min | 200/min |
| Providers | 1 | unlimited | unlimited | unlimited |
| Relational memory | no | yes | yes | yes |
| Proactive mining | no | no | yes | yes |
Tasks and checkpoints have `isAiSuggested` + `isApproved` columns. AI suggestions appear pending user approval (dashed borders in UI).
`tier_manager.get_tier()` falls back to `'power'` in dev (`settings.ENV == 'dev'`) when no subscription found, else `'free'`. Enforced in `app/api/middleware/rate_limit.py` (sliding window) and `tier_manager.check_feature()` calls scattered through agent + memory paths.
## Config Notes
---
- Vite configs use `.mts` (not `.ts`) — avoids ESM/CJS conflicts with electron-forge
- `@/*` path alias → `src/renderer/*` (TypeScript + Vite + shadcn/ui)
- **shadcn/ui**: new-york style, neutral base color
- **Icons**: lucide-react only — do not introduce other icon libraries
- **Tailwind 4** — CSS variable theming in `globals.css`, no `tailwind.config.js`
- **Notes editor**: Milkdown (`@milkdown/crepe`) at `src/renderer/components/notes/MilkdownEditor.tsx`
## Cross-Project Integration
## Design Context
Electron app and FastAPI backend communicate via **WebSocket** (`/api/v1/device`):
### Users
Freelancers and solo professionals managing client work (projects, tasks, notes, timelines). Single workspace, no enterprise overhead. AI as force multiplier. They open the app mid-workday — often stressed — so the interface must feel immediately grounding and in control.
1. Electron connects with `?token=<jwt>` query param
2. Client sends typed request frames (home / floating / brief / journey_start / journey_message)
3. Server streams v3 typed frames (text deltas, tool_call, run_complete, error)
4. Tool call frames → Electron `drizzle-executor` runs against local SQLite → returns `tool_result` over same socket
5. Heartbeat loop keeps connection alive; backend marks runs disconnected on drop
### Brand Personality
**Calm. Intelligent. Warm.** A thoughtful companion, not a flashy tool. Confident and understated — never loud, gamified, or corporate. Fully original aesthetic (no external design system references; this look is intentional and owned).
There is no fully-local AI fallback — the Electron orchestrator is a thin delegation shell that requires connectivity + auth. If offline or logged out, `checkConnectivity()` short-circuits with a user-facing error.
### Emotional Goal
When a user opens Adiuva, the first impression should communicate **"everything is under control"** — calm clarity over urgency. The design should lower cognitive load, not raise it.
---
### Aesthetic Direction
- Light mode: pinkish-white canvas `#f4edf3`, golden yellow primary `#fbc881`, slate blue-gray secondary `#8a8ea9`, dusty lavender borders `#c8c3cd`
- Dark mode: near-black `#0c0c0c`, pure white primary, dark gray `#323232` surfaces
- Geist sans-serif, weights 400/500/600. Tight tracking (`-1px`) on headings. Body `text-sm`, metadata `text-xs`
- 10px border-radius (`rounded-lg`), `rounded-2xl` for chat/AI elements
- Glassmorphism on AI inputs (`backdrop-blur-xl`, transparency, gradient border via padding-box/border-box technique)
- Spring animations (stiffness 400, damping 30), scale-and-fade transitions
- No gamification (badges, streaks, confetti). Mature and professional
- Dashed borders + Sparkles icon = AI-pending state marker
## MCP Servers
### Accessibility
Best-effort — not formally audited. Maintain reasonable contrast and keyboard operability without targeting a specific WCAG level.
### Current Design Focus
**Polish and refinement.** The overall direction is solid; the priority is elevating specific areas that feel rough or inconsistent — tighter spacing, more intentional hierarchy, better empty/loading states, and smoother motion.
### Design Principles
1. **Clarity over cleverness** — Clear hierarchy, generous whitespace, comfortable density. Never sacrifice legibility for style.
2. **AI as quiet partner** — Deeply integrated but never intrusive. Dashed borders for pending AI items, Sparkles icon as the sole AI marker. Surface AI capabilities without making them the hero.
3. **Warmth in restraint** — The warm palette feels approachable without being playful. Dark mode trades warmth for focus. Neither mode should feel cold or aggressive.
4. **Motion with purpose** — Spring animations reinforce spatial relationships and acknowledge state changes. Never purely decorative. Respect reduced-motion preferences where possible.
5. **Polish over features** — Every surface should feel considered. Prefer refining what exists over introducing new complexity. The right amount of visual weight is the minimum needed.
- **Langfuse Docs** (`https://langfuse.com/api/mcp`) — workspace-level, prompt management docs
- **shadcn** (`npx shadcn@latest mcp`) — configured in `electron/` for UI component generation

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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.
## Keeping This File Up to Date
Update this file whenever a lesson is learned during development. Specifically, update CLAUDE.md when:
- A non-obvious architectural decision is made or discovered
- A gotcha, footgun, or surprising behavior is encountered (and the fix/workaround)
- A new command, workflow, or tool is added to the project
- A convention is established that isn't obvious from reading the code
- An integration detail is clarified (e.g., how the IPC protocol actually behaves, edge cases in the agent tool call cycle)
Do **not** add things already derivable from reading the code, generic best practices, or ephemeral task notes — only durable, reusable knowledge.
## Repository Layout
This is a **monorepo with git submodules**. Each submodule is an independent repo with its own `.claude/CLAUDE.md` for detailed guidance.
| Directory | What | Submodule |
|-----------|------|-----------|
| **`adiuvAI/`** | Electron desktop app (TypeScript/React) | `git.muticolturano.com/adiuvAI/adiuvAI` |
| **`api/`** | FastAPI backend (Python) | `git.muticolturano.com/adiuvAI/api` |
| **`website/`** | Landing page (single `index.html`) | `git.muticolturano.com/adiuvAI/website` |
| **`docs/`** | Planning docs & working memory (not a submodule) | -- |
After cloning, run `git submodule update --init --recursive` to populate submodule contents.
---
## adiuvAI (Electron App)
> **Detailed docs**: `adiuvAI/.claude/CLAUDE.md` covers commands, architecture, AI subsystem, design context, and conventions in depth.
### Commands
```bash
cd adiuvAI
npm run start # Start dev server (Electron + Vite)
npm run lint # ESLint
npm run knip # Dead code analysis
npm run make # Build installers (Windows/Linux/macOS)
npm run package # Package without creating installers
npx drizzle-kit generate # Generate migration from schema changes
npx drizzle-kit push # Push schema directly (dev only)
```
No test suite currently.
### Architecture
```
Renderer (React 19 + TanStack Router)
↓ custom ipcLink (NOT electron-trpc — incompatible with tRPC v11)
Preload (contextBridge: window.electronTRPC + window.electronAI)
↓ IPC channels
Main Process (Node.js)
├── tRPC router (all CRUD + AI procedures)
├── SQLite (better-sqlite3 + Drizzle ORM, WAL mode)
├── LanceDB (vector embeddings, 1536-dim text-embedding-3-small)
└── LangGraph orchestrator (3 specialist agents, pluggable LLM providers)
```
**This is a local-first app.** All user data (tasks, notes, projects) lives in local SQLite. The AI system (LangGraph + LangChain) runs entirely in the Electron main process with pluggable providers (OpenAI, Anthropic, GitHub Copilot).
**IPC channels**:
- `'trpc'` — bidirectional tRPC request/response (all CRUD)
- `'ai:stream'` — one-way token streaming from main → renderer
- `'ai:action'` — AI side-effects (e.g., task auto-created by agent)
**Key source paths**:
- `src/main/ipc.ts` — Custom tRPC↔IPC bridge
- `src/main/router/index.ts` — All tRPC routers (~600 LOC)
- `src/main/ai/orchestrator.ts` — LangGraph intent routing + 3 agents (~991 LOC)
- `src/main/db/schema.ts` — 6 tables (clients, projects, tasks, checkpoints, notes, taskComments)
- `src/renderer/routes/` — File-based routing (TanStack Router auto-generates `routeTree.gen.ts`)
- `src/renderer/components/ui/` — shadcn/ui primitives (new-york theme, neutral colors)
- `src/main/auth/auth-manager.ts` — Login, register, logout, OAuth flow (singleton)
- `src/main/auth/backup-key.ts` — Device-specific AES-256 backup key (safeStorage, not password-derived)
- `src/main/ai/token.ts` — Two-tier token storage: safeStorage + electron-store fallback
- `src/main/auth/locale-defaults.ts` — Detects timezone, date/time format, language from OS locale
- `src/main/api/format-row.ts` — Formats timestamp columns in query results using user's FormatPrefs
**Non-obvious details**:
- `electron-trpc` is NOT used — custom IPC bridge in `ipc.ts` + `ipcLink.ts` because electron-trpc bundles tRPC v10 internals
- Vite configs use `.mts` extension to avoid ESM/CJS conflicts with electron-forge
- `forge.config.ts` has complex cross-compilation hooks (downloads platform-specific native binaries for better-sqlite3 and LanceDB)
- DB has no foreign key constraints — cascade deletes are implemented in tRPC procedures
- Timestamps are milliseconds (JavaScript `Date.getTime()`), not ISO strings
- Notes auto-embed to LanceDB on create/update (fire-and-forget, errors swallowed)
**Settings Page (shared between Electron and Web)**:
- The Settings page is designed to run in **both** the Electron app and a standalone web SPA (future landing-page user portal). The same React components are used — no duplication.
- **Platform Adapter pattern**: `PlatformProvider` context (`src/renderer/lib/platform.tsx`) exposes `isElectron`/`isWeb`/`hasLocalAgents`/`hasFileDialog` flags. Components use `usePlatform()` to conditionally render Electron-only features (device ID, local agent filesystem) or disable them on web.
- **6 sections**: Profile, AI Preferences, Account, Billing, Appearance, Agents. Sidebar nav with icons in `types.ts` (`SECTIONS` array).
- **Web build**: `vite.web.config.mts` builds a standalone SPA to `dist-web/`. Entry: `web.html``src/renderer/web-main.tsx` (uses `httpBatchLink` via `src/renderer/lib/httpLink.ts` instead of `ipcLink`). Scripts: `npm run dev:web`, `npm run build:web`, `npm run preview:web`.
- **Electron-only gating**: Device ID card and local agent filesystem features are gated behind `platform.isElectron`. On web, local agents are visible but disabled (not hidden).
- **Gotcha**: Do NOT add Electron-specific settings (e.g. server URL, native file pickers) without wrapping in `platform.isElectron`. The same component tree renders on web.
**Onboarding Wizard**:
- First-run wizard collects 5 fields: `job_role`, `industry`, `primary_use_case`, `tone_preference`, `language`. Plus `user_name` derived from profile `name`+`surname`.
- All fields stored as encrypted core memory (backend `MemoryMiddleware`), not local electron-store.
- `onboarding_completed_at` on the `users` table (nullable TIMESTAMPTZ) gates the flow — `null` = show wizard, non-null = skip.
- `AppShell.tsx` gates: if `profile.onboardingCompletedAt == null` → render `<OnboardingFlow>` instead of the app.
- `auth.status` tRPC procedure auto-seeds `language` and `user_name` into MemoryCore if missing (fire-and-forget `.catch(() => {})`).
- Format prefs (timezone, dateFormat, timeFormat) are stored in electron-store (`FormatPrefs`), not core memory — they're device-specific.
- `drizzle-executor.ts` wraps all query results through `formatRow()`/`formatRows()` using the user's FormatPrefs.
- Settings > Profile section allows post-onboarding editing of all fields + format prefs.
- **Gotcha — shadcn Button `outline` variant in dark mode**: The variant defines `dark:bg-input/30 dark:border-input dark:hover:bg-input/50` which overrides any custom `className` background. Fix: switch between `variant="default"` and `variant="outline"` instead of adding className overrides.
- **Gotcha — locale codes vs human names**: `app.getLocale()` and `navigator.language` return codes like `en-US`. Use `Intl.DisplayNames(undefined, { type: 'language' })` to convert to "English". This must be done in both the main process (`locale-defaults.ts`) and renderer (`OnboardingFlow.tsx`).
**i18n (Internationalization)**:
- Uses `i18next` + `react-i18next` with bundled JSON translations (no lazy loading).
- Config in `src/renderer/i18n.ts`. 5 languages: EN, IT, ES, FR, DE. `SUPPORTED_LANGUAGES` array exported for UI selectors.
- Translation files: `src/renderer/locales/{en,it,es,fr,de}/translation.json`. Namespaces: `nav`, `auth`, `tasks`, `settings`, `common`, `errors`, `home`, `timeline`, `projects`, `agents`.
- **`common.*` namespace** holds shared labels (`save`, `cancel`, `delete`, `edit`, `add`, `rename`, `saving`, `deleting`, `creating`, `renameDescription`, `deleteTitle`). Before adding a new key, check if `common.*` already has it.
- Pluralization uses i18next `_one`/`_other` suffixes (e.g. `tasksDueToday_one`, `tasksDueToday_other`).
- `LanguageSync` component in `src/renderer/index.tsx` reads persisted `uiLanguage` from electron-store via tRPC on startup and syncs to i18next.
- Language selector lives in `GeneralSection.tsx` (Settings > General). On change it: (1) calls `i18n.changeLanguage()`, (2) persists to electron-store via `setUiLanguage` mutation, (3) writes to backend core memory so AI responds in the same language.
- `getUiLanguage()` exported from `src/main/store.ts` — used by `orchestrator.ts` to append language hint to daily brief prompt.
- Static data arrays that need translation use `labelKey` pattern (not `label`): store a translation key, call `t(labelKey)` at render time. Used in `NAV_ITEMS`, `COLUMNS`, `SECTIONS`, `SUGGESTION_CHIPS`.
- When adding new translated text: add the key to **all 5** JSON files. Keep `common.*` keys consistent across all languages.
**Google OAuth (adiuvAI side)**:
- `adiuvai://` is NOT accepted by Google as a redirect URI — Google only accepts `http://localhost` or `https://`. The API backend exposes `GET /auth/oauth/google/web-callback` which receives the Google redirect and immediately bounces to `adiuvai://oauth/callback?...`. The redirect URI registered in Google Cloud Console points to the backend, not the Electron app.
- `app.requestSingleInstanceLock()` is required for the `second-instance` event to fire on Windows/Linux. If it returns `false`, call `app.quit()` immediately (another instance is already running).
- In dev (`process.defaultApp === true`), `setAsDefaultProtocolClient('adiuvai')` must include `[path.resolve(process.argv[1])]` as the third argument so the OS protocol registration includes the entry script.
- `loginWithOAuth` uses `fetch()` directly (not `this.get()`) because the authorize endpoint is public — `get()` throws when not authenticated.
- The backup key in `backup-key.ts` is stored in `encryptedTokens` under the key `backup_key`, reusing `getToken/setToken` from `token.ts`. It is device-bound and never password-derived, so social-login users can use backup features without issue.
---
## api (FastAPI Backend)
### Commands
```bash
cd api
# Development
uvicorn app.main:app --reload --host 0.0.0.0 --port 8000
# Production
gunicorn app.main:app -k uvicorn.workers.UvicornWorker -w 4 --timeout 120
# Database migrations
alembic upgrade head
# Testing
pytest # all tests
pytest -v # verbose
pytest tests/test_agents.py # single file
pytest tests/test_agents.py -k test_name # single test
# Linting/formatting
ruff check .
ruff format .
# Docker (full stack: app + postgres + minio + qdrant)
docker compose up --build
```
### Architecture
```
FastAPI app (app/main.py)
├── Middleware: TierRateLimiter → Sanitizer → CORS
├── HTTP Routes (app/api/routes/)
│ ├── auth.py — register, login, token refresh (bcrypt + HS256 JWT)
│ ├── chat.py — POST /chat, WS /chat/stream
│ ├── plans.py — execution plan playbooks
│ ├── storage.py — E2E-encrypted cloud storage (S3)
│ ├── backup.py — encrypted backup upload/download
│ ├── vectors.py — encrypted vector upsert/search (Pinecone/Qdrant)
│ ├── plugins.py — plugin marketplace (Power+ tier)
│ └── billing.py — Stripe subscriptions
├── Agent System (app/agents/)
│ ├── task_agent.py — 8 tools
│ ├── project_agent.py — 6 tools
│ ├── checkpoint_agent.py — 4 tools
│ └── note_agent.py — 5 tools
├── Orchestration (app/core/)
│ ├── orchestrator.py — intent classification + agent routing
│ ├── agent_registry.py — decorator-based agent registry
│ ├── execution_plan.py — server-side prompt templates + plan builder
│ ├── llm.py — LiteLLM factory (100+ providers)
│ └── memory_middleware.py
├── Billing (app/billing/)
│ ├── tier_manager.py — feature matrix (Free/Pro/Power/Team)
│ └── stripe_service.py — Stripe checkout + webhooks
├── Storage (app/storage/) — S3 blob store, vector store, encryption
└── Marketplace (app/marketplace/) — plugin catalog, review, revenue sharing
```
**LLM routing**: `gpt-4o-mini` classifies intent → routes to domain agent → agent uses `gpt-4o` with tools → tool calls describe client-side operations (JSON) → Electron executes locally and returns results.
**Zero-trust data model**: The backend never stores or decrypts user content. PostgreSQL holds only auth, billing, plugin metadata, and storage record pointers. All user data is E2E-encrypted before leaving the Electron client.
**Key config**: `app/config/settings.py` — all env vars via Pydantic Settings. Copy `.env.example` to `.env` for local dev. Stripe and S3 gracefully stub when keys aren't configured.
**Database**: PostgreSQL with async SQLAlchemy 2.0 + asyncpg. 9 ORM models in `app/models.py`. Alembic migrations in `alembic/versions/`.
**Testing**: pytest + pytest-asyncio. Fixtures in `tests/conftest.py` create in-memory SQLite + moto-mocked S3. Test users seeded per tier (free/pro/power/team).
### Non-obvious details
- **Tier from DB, not JWT**: `get_current_user` decodes JWT but fetches authoritative tier from `subscriptions` table — tier changes take effect immediately without re-login
- **Refresh tokens hashed**: Plaintext returned to client, stored as SHA-256 in DB — server can never retrieve the plaintext (intentional)
- **WebSocket auth via query param**: `?token=<jwt>` instead of Bearer header (WebSocket handshake limitation)
- **Prompt IP protection**: `PromptTemplateRegistry` keeps prompts server-side; clients receive opaque `template_id`. `SanitizerMiddleware` strips leaked fragments from responses
- **Agents don't execute operations**: Tools return JSON describing client-side ops — the Electron client executes against local SQLite
- **Alembic async/sync split**: App uses `postgresql+asyncpg`, Alembic CLI needs `postgresql+psycopg2``env.py` handles the URL conversion
- **Tool loop cap**: Agent `_tool_loop` stops after 5 iterations to prevent infinite loops
- **Route order matters**: `/backup/history` must be declared before `/backup/{backup_id}` to avoid path param shadowing
- **CORS includes `app://`**: Electron uses custom `app://` protocol, not http/https
- **Vector search on encrypted data is not semantic**: Backend derives deterministic 32-dim floats from blob SHA-256 for storage/search — a known trade-off
**Onboarding (API side)**:
- `PUT /auth/me/memory` — updates core memory k/v pairs and optionally marks onboarding complete (`mark_onboarded: true` sets `users.onboarding_completed_at`).
- `POST /auth/me/onboarding/reset` — nullifies `onboarding_completed_at` so the wizard re-runs.
- `POST /auth/onboarding/normalize` — LLM-normalizes free-text onboarding inputs via `gpt-4o-mini`; returns inputs unchanged on error.
- `get_current_user()` in `auth.py` middleware now decrypts core memory blocks and includes them in `UserProfile.memory` dict.
- `users.onboarding_completed_at` is a nullable TIMESTAMPTZ column — returned as epoch ms (int) in UserProfile schema.
**i18n (API side)**:
- `_language_instruction()` in `app/core/deep_agent.py` reads the user's `language` from `MemoryCore` and appends a system prompt directive ("Always respond in {language}") to all 4 `run_*` functions.
- The Electron client writes the user's chosen language to backend core memory on language change, so the API picks it up on the next agent call.
**Google OAuth (api side)**:
- OAuth routes live in `app/api/routes/auth.py`: `GET /auth/oauth/{provider}/authorize`, `POST /auth/oauth/{provider}/callback`, `GET /auth/oauth/{provider}/web-callback` (bounces to deep link, excluded from OpenAPI schema).
- Provider abstraction in `app/auth/oauth_providers.py``GoogleOAuthProvider` uses `httpx` directly (no `authlib`). PKCE S256 is implemented manually via `generate_pkce_pair()`.
- `_pending_states` dict in `routes/auth.py` is **in-memory** — works for single-process dev but does not survive restarts and does not scale to multiple workers. Replace with Redis in production.
- `users.password_hash` is **nullable** — social-only users have `password_hash=None`. `await db.flush()` is required before creating a linked `OAuthAccount` to populate `new_user.id` before commit.
- `OAUTH_REDIRECT_URI` must point to the **API backend** (e.g. `https://api.adiuvai.com/...`), not the website domain. `adiuvai.com` is a static site with no server-side routing.
- **Unverified email + existing account = 409**: if `email_verified=False` and the email is already registered, the callback returns 409. Without this guard, branch 3 would attempt to INSERT a duplicate email and crash with a DB constraint violation (500).
- **Testing OAuth routes**: mock `GoogleOAuthProvider.exchange_code` and `get_userinfo` with `patch.object(..., new=AsyncMock(...))` — works because FastAPI instantiates a new provider per request. Use `monkeypatch.setattr(settings, "GOOGLE_AUTH_CLIENT_ID", ...)` to simulate configured credentials without restarting the app.
### Tier System
| Feature | Free | Pro | Power | Team |
|---------|------|-----|-------|------|
| Rate limit | 20/min | 60/min | 120/min | 200/min |
| Agents | 3 | unlimited | unlimited | unlimited |
| Cloud storage | 0 GB | 5 GB | 25 GB | unlimited |
| Plugin marketplace | no | no | yes | yes |
Enforced in `app/api/middleware/rate_limit.py` (sliding window) and `app/billing/tier_manager.py` (feature checks + quota enforcement).
---
## Cross-Project Integration
The Electron app and FastAPI backend communicate via **WebSocket** (`/chat/stream`):
1. Electron connects with `?token=<jwt>` query param
2. Client sends `ChatRequest` JSON frame
3. Server streams text chunks, then a final frame: `{"done": true, "response": "...", "actions": []}`
4. Server sends `tool_call` frames → Electron executes against local SQLite → returns `tool_result`
5. Server pings every 30 seconds to keep connection alive
The Electron app also has a **fully local AI path** (LangGraph orchestrator in main process) that doesn't require the backend — this is the primary path for desktop use.
---
## MCP Servers
- **Langfuse Docs** (`https://langfuse.com/api/mcp`) — configured at workspace level for prompt management documentation
- **shadcn** (`npx shadcn@latest mcp`) — configured in `adiuvAI/` for UI component generation

View File

@@ -1,14 +1,21 @@
{
"permissions": {
"allow": [
"Bash(git add AI_REFACTOR_PLAN.md)",
"Bash(git commit:*)",
"Read(//home/rmusso/adiuva-api/**)",
"mcp__shadcn__get_item_examples_from_registries",
"mcp__shadcn__view_items_in_registries",
"Bash(npm run lint)",
"Bash(npx eslint --ext .ts,.tsx src/renderer/components/ai/blocks/)",
"WebFetch(domain:ui.shadcn.com)"
"allow": []
},
"enabledPlugins": {
"caveman@caveman": true
},
"hooks": {
"PreToolUse": [
{
"matcher": "Bash",
"hooks": [
{
"type": "command",
"command": "CMD=$(python3 -c \"import json,sys; d=json.load(sys.stdin); print(d.get('tool_input',d).get('command',''))\" 2>/dev/null || true); case \"$CMD\" in *grep*|*rg\\ *|*ripgrep*|*find\\ *|*fd\\ *|*ack\\ *|*ag\\ *) [ -f graphify-out/graph.json ] && echo '{\"hookSpecificOutput\":{\"hookEventName\":\"PreToolUse\",\"additionalContext\":\"graphify: Knowledge graph exists. Read graphify-out/GRAPH_REPORT.md for god nodes and community structure before searching raw files.\"}}' || true ;; esac"
}
]
}
]
}
}
}

113
.gitignore vendored
View File

@@ -1,97 +1,16 @@
# Logs
logs
*.log
npm-debug.log*
yarn-debug.log*
yarn-error.log*
lerna-debug.log*
# Diagnostic reports (https://nodejs.org/api/report.html)
report.[0-9]*.[0-9]*.[0-9]*.[0-9]*.json
# Runtime data
pids
*.pid
*.seed
*.pid.lock
.DS_Store
# Directory for instrumented libs generated by jscoverage/JSCover
lib-cov
# Coverage directory used by tools like istanbul
coverage
*.lcov
# nyc test coverage
.nyc_output
# node-waf configuration
.lock-wscript
# Compiled binary addons (https://nodejs.org/api/addons.html)
build/Release
# Dependency directories
node_modules/
jspm_packages/
# TypeScript v1 declaration files
typings/
# TypeScript cache
*.tsbuildinfo
# Optional npm cache directory
.npm
# Optional eslint cache
.eslintcache
# Optional REPL history
.node_repl_history
# Output of 'npm pack'
*.tgz
# Yarn Integrity file
.yarn-integrity
# dotenv environment variables file
.env
.env.test
# parcel-bundler cache (https://parceljs.org/)
.cache
# next.js build output
.next
# nuxt.js build output
.nuxt
# vuepress build output
.vuepress/dist
# Serverless directories
.serverless/
# FuseBox cache
.fusebox/
# DynamoDB Local files
.dynamodb/
# Webpack
.webpack/
# Vite
.vite/
# Electron-Forge
out/
# local config files
.vscode/
.agents/
src/renderer/routeTree.gen.ts
skills/
unused_skills/
.vscode/mcp.json
.claude/skills/brand-guidelines/*
.claude/skills/frontend-design/*
.claude/skills/remotion-best-practices/*
.mcp.json
docs/node_modules
docs/package.json
docs/package-lock.json
tmp/
.superpowers/
graphify-out/cache/
graphify-out/manifest.json
graphify-out/cost.json
.claude/settings.local.json

View File

@@ -1,11 +0,0 @@
{
"mcpServers": {
"shadcn": {
"command": "npx",
"args": [
"shadcn@latest",
"mcp"
]
}
}
}

View File

@@ -1,436 +0,0 @@
# AI Refactor Plan — Adiuva Electron App
> **Objective:** Transform the Electron app into a backend-powered client. All AI intelligence (chat, tool calling, embeddings) lives on the backend. The Electron app owns the local database, executes structured CRUD operations from backend tools via Drizzle ORM, and handles auth, backup, and offline graceful degradation.
>
> **Backend:** Lives at `../adiuva-api/`. FastAPI + LiteLLM + 4 chat agents (task, checkpoint, project, note). Backend plan: `../adiuva-api/AI_REFACTOR_PLAN.md`.
>
> **Protocol:** Execute steps sequentially. Each step is atomic and committable. Mark `[x]` when done.
---
## Architecture
```
Renderer (React 19) ──ipcLink──► Main (tRPC + SQLite) ──HTTP/WS──► Backend (FastAPI + LiteLLM)
UI only Data + Drizzle executor All AI intelligence
```
**Data flow for chat (bidirectional WebSocket):**
1. User types message in renderer → tRPC `ai.chat` mutation
2. Main process builds `ChatContext` (queries SQLite for tasks, notes, profile)
3. Main opens WS to backend `/api/v1/chat/stream?token=<jwt>`, sends `chat_request` frame
4. Backend classifies intent → routes to agent → agent calls LLM with tools
5. LLM calls a tool (e.g. `list_tasks`) → tool calls `execute_on_client()`:
- Backend sends `tool_call` frame: `{id, action:"select", table:"tasks", filters:{...}}`
- Electron receives frame → Drizzle executor: `db.select().from(tasks).where(...)` → real rows
- Electron sends `tool_result` frame: `{id, rows: [{id, title, ...}, ...]}`
- Tool receives real data → returns formatted string to LLM
6. Steps 5 repeats (max 5 iterations) until LLM has enough data to respond
7. Backend streams response text → `text_chunk` frames → main forwards via `ai:stream` IPC → renderer
8. Backend sends `final` frame: `{"done": true, "response": "..."}`
**No local LLM.** When offline, AI features show "You're offline" — all other features (tasks, notes, projects) work normally.
---
## WS Protocol — Typed Frames
| Direction | `type` | Payload |
|---|---|---|
| Client → Server | `chat_request` | `{ message, context }` |
| Server → Client | `text_chunk` | `{ text: string }` |
| Server → Client | `tool_call` | `{ id, action, table?, data?, filters?, vector?, limit? }` |
| Client → Server | `tool_result` | `{ id, row?, rows?, results?, deleted?, ok?, error? }` |
| Server → Client | `final` | `{ response: string }` |
| Server → Client | `ping` | `{}` |
**Tool call actions (Electron → Drizzle mapping):**
| `action` | Drizzle call | Returns |
|---|---|---|
| `select` | `db.select().from(table).where(filters).all()` | `{ rows: [...] }` |
| `get` | `db.select().from(table).where(eq(id, ...)).get()` | `{ row: {...} \| null }` |
| `insert` | `db.insert(table).values({id: uuid(), ...data, createdAt: now()}).returning().get()` | `{ row: {...} }` |
| `update` | `db.update(table).set(data.updates).where(eq(id,...)).returning().get()` | `{ row: {...} }` |
| `delete` | `db.delete(table).where(eq(id,...)).run()` | `{ deleted: true }` |
| `vector_upsert` | LanceDB delete-then-add with pre-computed vector | `{ ok: true }` |
| `vector_search` | LanceDB `table.search(vector).limit(n)` | `{ results: [{id, content, score}...] }` |
Electron generates `id` (UUID v4) and `createdAt`/`updatedAt` (Unix ms) for inserts. Backend never generates IDs.
---
## Phase 0 — API Contracts & Types ✅
### Step 0.1 — Define backend API contract types ✅
- [x] Create `src/shared/api-types.ts` with Zod schemas + inferred types
- [x] Create `src/shared/batch-types.ts` with batch builder + storage types
- [x] Update `tsconfig.json` paths — added `@shared/*` alias
- **Outcome:** Type-safe contracts for all backend communication.
---
## Phase 1 — Auth & Backend Client
### Step 1.1 — Align shared types with backend schemas
- [x] Update `src/shared/api-types.ts` to match backend `app/schemas.py` exactly:
- `AuthTokens.expiresAt`: change from `z.string().datetime()` to `z.number().int()` (Unix epoch)
- `ChatContext`: replace with backend's flat structure — `{ userProfile, relevantDocuments, recentTasks, conversationHistory }`; remove UI-only fields (`type`, `projectId`, `uiContext`)
- Remove `PlanAction` entirely — no more action descriptors
- `ChatResponse`: just `{ response: string }` — no `actions` array
- Align `PlanStep` / `ExecutionPlan` with backend or remove if plan mode is deferred
- [x] Add WebSocket frame Zod schemas:
- `ToolCallAction` enum: `select`, `get`, `insert`, `update`, `delete`, `vector_upsert`, `vector_search`
- `WsToolCall`: `{ type: "tool_call", id: string, action, table?, data?, filters?, vector?, limit? }`
- `WsToolResult`: `{ type: "tool_result", id: string, row?, rows?, results?, deleted?, ok?, error? }`
- `WsTextChunk`, `WsFinal`, `WsPing`, `WsChatRequest`
- `WsServerFrame` / `WsClientFrame` discriminated unions
- [x] Create `src/shared/casing.ts`:
- `toSnakeCase(obj)` — deep-converts camelCase keys to snake_case (outgoing)
- `toCamelCase(obj)` — deep-converts snake_case keys to camelCase (incoming)
- [x] Create `UIChatContext` type in `src/renderer/hooks/useAIChat.ts` for renderer-only fields
- **Files:** `src/shared/api-types.ts`, `src/shared/casing.ts`, `src/renderer/hooks/useAIChat.ts`
- **Outcome:** Shared types match the live backend 1:1. WS frames are fully typed.
### Step 1.2 — Auth manager + tRPC procedures
- [x] Create `src/main/auth/auth-manager.ts`:
- `AuthManager` class (singleton):
- `register(email, password): Promise<AuthTokens>` — POST `/api/v1/auth/register`
- `login(email, password): Promise<AuthTokens>` — POST `/api/v1/auth/login`
- `logout(): void` — clears stored tokens
- `getAccessToken(): string | null` — current JWT
- `refreshToken(): Promise<void>` — POST `/api/v1/auth/refresh`
- `isAuthenticated(): boolean`
- `getProfile(): Promise<UserProfile>` — GET `/api/v1/auth/me`
- Token storage: reuse `src/main/ai/token.ts` (`safeStorage` + electron-store fallback)
- Auto-refresh: check token expiry on every `getAccessToken()` call; if < 5 min remaining, refresh in background
- [x] Add `authRouter` tRPC sub-router to `src/main/router/index.ts`
- [x] Update `src/main/store.ts`: add `backendUrl: string`
- **Files:** `src/main/auth/auth-manager.ts`, `src/main/router/index.ts`, `src/main/store.ts`
- **Outcome:** Electron can authenticate with the backend. JWTs stored securely.
### Step 1.3 — Backend client with bidirectional WebSocket
- [x] Create `src/main/api/backend-client.ts`:
- `BackendClient` class (singleton):
- Constructor: reads `backendUrl` from store, gets JWT from `AuthManager`
- `chatStream(request: ChatRequest, onChunk: (text: string) => void): Promise<ChatResponse>`:
1. Opens WS to `/api/v1/chat/stream?token=<jwt>`
2. Sends `{ type: "chat_request", ... }` frame
3. Message loop:
- `text_chunk` calls `onChunk(text)`
- `tool_call` calls `DrizzleExecutor.execute(payload)`, sends back `{ type: "tool_result", id, ... }`
- `final` resolves with `{ response }`
- `ping` ignore
- `isOnline(): Promise<boolean>` GET `/api/v1/health` with 3s timeout
- `embedText(text: string): Promise<number[]>` POST `/api/v1/storage/vectors/embed`
- All requests include `Authorization: Bearer <jwt>` header
- Auto-retry with exponential backoff (max 3 attempts) for non-auth errors
- Response parsing: `toCamelCase()` on all incoming JSON
- Request serialization: `toSnakeCase()` on all outgoing JSON
- Error categorization: 401 `AuthExpiredError`, 429 `RateLimitError`, 5xx `ServerError`, timeout `OfflineError`
- **Files:** `src/main/api/backend-client.ts`
- **Outcome:** Type-safe HTTP + bidirectional WS client. Tool calls handled in the message loop.
### Step 1.4 — Drizzle executor (the dumb Electron layer)
- [x] Create `src/main/api/drizzle-executor.ts`:
- Table registry: map string names Drizzle table objects from `src/main/db/schema.ts`:
```
{ tasks, projects, clients, checkpoints, notes, taskComments }
```
- `execute(payload): Promise<object>` — dispatches on `payload.action`:
- **`select`**: `db.select().from(table)` + build `.where()` from `payload.filters` using Drizzle `eq()`/`and()`/`like()` + optional `.orderBy()` → returns `{ rows }`
- **`get`**: `db.select().from(table).where(eq(table.id, payload.data.id)).get()` → returns `{ row }`
- **`insert`**: `db.insert(table).values({id: crypto.randomUUID(), ...payload.data, createdAt: Date.now()}).returning().get()` → returns `{ row }`
- **`update`**: `db.update(table).set(payload.data.updates).where(eq(table.id, payload.data.id)).returning().get()` → returns `{ row }`
- **`delete`**: `db.delete(table).where(eq(table.id, payload.data.id)).run()` → returns `{ deleted: true }`
- **`vector_upsert`**: calls `upsertWithVector()` from `vectordb.ts` with pre-computed vector → returns `{ ok: true }`
- **`vector_search`**: LanceDB `table.search(payload.vector).limit(payload.limit)` → returns `{ results }`
- Filter builder: maps `{key: value}` objects → Drizzle `and(eq(table[key], value), ...)`. Special cases:
- `null` value → `isNull(table[key])`
- `search` key → `like(table.title, '%value%')` or `like(table.content, '%value%')`
- `orderBy` key → `.orderBy(asc(table[field]))` or `.orderBy(desc(...))`
- `includeArchived: false` → adds `eq(table.status, 'active')` filter
- `dueDateFrom`/`dueDateTo` → `between(table.dueDate, from, to)`
- Security: validate `table` against registry (reject unknown), validate `action` against enum
- Uses `getDb()` from `src/main/db/index.ts` — same Drizzle instance as everywhere else
- **Files:** `src/main/api/drizzle-executor.ts`
- **Outcome:** ~120 lines. Backend sends structured ops, Electron maps to Drizzle. No SQL building.
### Step 1.5 — Refactor orchestrator to delegate to backend
- [x] Replace `src/main/ai/orchestrator.ts` entirely (996 lines → ~190 lines):
- `orchestrate({ message, context, sender })`:
1. Check `BackendClient.isOnline()` — if offline, return `{ response: '', error: 'You are offline.' }`
2. Check `AuthManager.isAuthenticated()` — if not, return `{ response: '', error: 'Please log in.' }`
3. Build `ChatContext` from local SQLite (userProfile, recentTasks, conversationHistory)
4. Call `BackendClient.chatStream(request, chunk => sendStreamChunk(sender, chunk, false))`
- `tool_call` frames handled inside the WS message loop (Step 1.3)
5. On completion: `sendStreamChunk(sender, '', true)`
- No PlanRunner, no action handling — writes happen mid-conversation via tool calls
- Keep `sendStreamChunk()` IPC helper
- Export `orchestrate()` and `dailyBrief()`
- [x] Update `aiRouter` in `src/main/router/index.ts`:
- Remove `setToken` mutation and `hasToken` query (replaced by `auth.status`)
- Keep `chat` mutation (same interface) and `dailyBrief`
- [x] Update `src/renderer/components/ai/AIChatPanel.tsx`:
- Replace `trpc.ai.hasToken.useQuery()` with `trpc.auth.status.useQuery()`
- Update auth-gate condition and daily brief trigger to use `authStatusQuery.data?.authenticated`
- Replace `KeyRound` icon + provider-config messaging with `LogIn` icon + login messaging
- **Files:** `src/main/ai/orchestrator.ts`, `src/main/router/index.ts`, `src/renderer/hooks/useAIChat.ts`
- **Outcome:** ~916 lines removed. Chat works through backend. All tool execution is bidirectional.
### Step 1.6 — Migrate embeddings to backend
- [x] Update `src/main/db/vectordb.ts`:
- Add `upsertWithVector(noteId, projectId, content, vector)` — takes pre-computed vector, stores in LanceDB
- Update `upsertNoteEmbedding()` → calls `BackendClient.embedText(content)` → `upsertWithVector()`
- Keep `searchNotes()` and `migrateNotesIfNeeded()` (migration will call backend for embeddings)
- If offline: skip embedding (next edit will re-embed when online)
- Add `searchNotesByVector(vector, limit)` for direct pre-computed-vector search
- [x] Update `src/main/api/drizzle-executor.ts`: use `searchNotesByVector` with pre-computed vector from tool call payload
- [x] Delete `src/main/ai/embeddings.ts`
- **Files:** `src/main/db/vectordb.ts`, `src/main/api/drizzle-executor.ts`, `src/main/ai/embeddings.ts` (deleted)
- **Outcome:** Embeddings generated by backend `/vectors/embed`. Local LanceDB for storage + search.
---
## Phase 2 — Remove Local AI Stack
### Step 2.1 — Remove local AI code and dependencies ✅
- [x] Delete `src/main/ai/llm.ts`, `src/main/ai/chat-copilot.ts`, `src/main/ai/copilot.ts`, `src/main/ai/provider.ts`
- [x] Remove `import './ai/copilot'` and `initAI()` from `src/main/index.ts`
- [x] Remove deps: `@langchain/core`, `@langchain/openai`, `@langchain/anthropic`, `@langchain/langgraph`, `@github/copilot-sdk`
- [x] Clean up `src/main/store.ts` (remove `aiProvider`; kept `encryptedTokens` — still used by `token.ts` → `auth-manager.ts` for JWT storage)
- [x] Clean up `vite.main.config.mts` (remove externalized LangChain/Copilot packages)
- [x] Clean up `forge.config.ts` (remove LangChain/Copilot from `externalPackages`; remove copilot-sdk clipboard cleanup block)
- **Files:** `src/main/ai/{llm,chat-copilot,copilot,provider}.ts` (deleted), `package.json`, `src/main/index.ts`, `src/main/store.ts`, `vite.main.config.mts`, `forge.config.ts`
- **Outcome:** 34 npm packages removed. No LangChain, no Copilot SDK, no local LLM.
---
## Phase 3 — Agent System (Local Directory + Cloud Connectors)
> Two agent types at launch: **Local Directory Agent** (watches folders, Electron reads + pre-processes, backend runs AI) and **Cloud Connector Agent** (Gmail, Teams — 100% backend-managed). All configs live on the backend (synced, device-bound for local agents). Backend triggers agent runs via new WS frames when Electron is connected. Extracted data inserts into existing tables (tasks, notes, checkpoints) with `isAiSuggested=1`. Configuration prompts are built via a dedicated "Chatbot Journey" (multi-turn AI conversation on a dedicated page).
>
> **Backend Phase 3 plan:** `../adiuva-api/AI_REFACTOR_PLAN.md` Phase 3 section.
```
Cloud Agent Flow:
Backend cron ──► Backend fetches Gmail/Teams ──► Backend AI analyzes
──► WS tool_call(insert, table:'tasks') ──► Electron persists locally
Local Agent Flow:
Backend detects Electron online ──► WS agent_run frame (config + prompt)
──► Electron reads files + pre-processes ──► WS agent_data frame (content)
──► Backend AI analyzes with user prompt ──► WS tool_call(insert) ──► Electron persists
```
Key constraints:
- Local agents only run when Electron is active AND on the device where the path was configured
- Cloud agents only push results when Electron is connected (no server-side content storage)
- All AI communication goes through the backend (no local LLM)
- Tier gating: free=2 active, pro=10, power/team=unlimited
### Step 3.1 — WS frame types + agent handler ✅
- [x] Update `src/shared/api-types.ts`:
- Add `WsAgentRun` schema: `{ type: "agent_run", run_id, agent_id, config: { paths, file_extensions, prompt_template, data_types } }`
- Add `WsAgentData` schema: `{ type: "agent_data", run_id, files: [{ path, name, content, metadata }] }`
- Add `WsAgentComplete` schema: `{ type: "agent_complete", run_id, files_read, errors }`
- Add `WsDeviceHello` schema: `{ type: "device_hello", device_id, agent_ids }`
- Extend `WsServerFrame` discriminated union with `agent_run`
- Extend `WsClientFrame` with `agent_data`, `agent_complete`, `device_hello`
- [x] Update `src/main/api/backend-client.ts`:
- In WS message loop, handle `agent_run` frames:
1. Read files from configured paths using the local agent handler (Step 3.2)
2. Send `agent_data` frames back with pre-processed content
3. Continue handling `tool_call` frames for DB inserts as usual
- **Files:** `src/shared/api-types.ts`, `src/main/api/backend-client.ts`
- **Outcome:** Electron can receive agent trigger frames and respond with file data.
### Step 3.2 — Local file reader ✅
- [x] Create `src/main/agents/file-reader.ts`:
- `readDirectory(paths: string[], extensions: string[]): AsyncGenerator<FileData>` — recursively reads configured directories, filters by extension
- `preProcess(filePath: string): { name, content, metadata }`:
- `.txt`, `.md`, `.eml` — read as text
- `.pdf` — text extraction (dep: `pdf-parse`)
- `.docx` — text extraction (dep: `mammoth`)
- `.csv`, `.json` — read as structured text
- Binary files: skip with warning
- Respects path boundaries (no symlink escape, no `..` traversal)
- Chunks large files (>50KB) to stay within LLM context limits
- Returns `{ path, name, content, metadata: { size, mtime, extension } }`
- [x] Update `BackendClient.handleAgentRun()` to call `readAgentFiles()` and return `{ files, errors, filesRead }`
- **Files:** `src/main/agents/file-reader.ts`, `src/main/api/backend-client.ts`, `package.json` (`pdf-parse`, `mammoth` added)
- **Dependencies:** `pdf-parse`, `mammoth`
- **Outcome:** Electron can safely read + pre-process local files for AI analysis.
### Step 3.3 — Device ID management ✅
- [x] Update `src/main/store.ts`: add `deviceId: string` (UUID generated once on first launch and persisted)
- [x] Add `getDeviceId()` helper — lazily generates UUID v4 on first call, persists it; subsequent calls return the same value
- [x] Add `settings.deviceId` tRPC query to `settingsRouter` — renderer can read the device ID; Step 3.4 (agent router) injects it into local agent config creation calls to the backend
- [x] Electron sends `deviceId` when creating local agent configs → backend stores it (Step 3.4)
- [x] When backend triggers a local agent run, it checks `config.device_id` matches the connected Electron's `deviceId` (Step 3.5)
- **Files:** `src/main/store.ts`, `src/main/router/index.ts`
- **Outcome:** Local agents are device-bound. Only triggered on the correct machine.
### Step 3.4 — Agent tRPC router ✅
- [x] Add `agentRouter` to `src/main/router/index.ts`:
- `agent.catalog` — query: proxy to backend `GET /api/v1/agents/catalog`
- `agent.local.list` / `agent.local.create` / `agent.local.update` / `agent.local.delete` — proxy to backend with `deviceId` injected
- `agent.cloud.list` / `agent.cloud.create` / `agent.cloud.update` / `agent.cloud.delete` — proxy to backend
- `agent.runs` — query: proxy to backend run log
- `agent.runNow` — mutation: proxy to backend manual trigger
- `agent.journey.start` / `agent.journey.message` — proxy chatbot journey endpoints
- All proxy calls include JWT from AuthManager + snake_case/camelCase conversion
- [x] Also added response schemas to `src/shared/api-types.ts`: `AgentCatalogItemSchema`, `LocalAgentConfigSchema`, `CloudAgentConfigSchema`, `AgentRunLogSchema`, `JourneyMessageSchema`
- [x] Added `proxyGet/proxyPost/proxyPut/proxyDelete` methods to `BackendClient` (authenticated, casing-converted HTTP proxies)
- **Files:** `src/main/router/index.ts`, `src/shared/api-types.ts`, `src/main/api/backend-client.ts`
- **Outcome:** Renderer can manage agents through tRPC — all requests proxied to backend.
### Step 3.5 — Persistent WS connection for agent triggers ✅
- [x] Update `src/main/api/backend-client.ts`:
- `connectPersistent()` — opens persistent WS to `/api/v1/ws/device?token=<jwt>` on app start
- On connect: sends `device_hello` frame with `deviceId` and active agent IDs
- Handles incoming `agent_run` frames → dispatches to file reader → sends `agent_data` back
- Handles `tool_call` frames for DB inserts (same as chat WS)
- `handleAgentRunAndSend()` — validates device ID, calls `handleAgentRun()`, sends `agent_data` + `agent_complete` frames
- Auto-reconnects on disconnect with exponential backoff (1s → 2s → 4s → 8s → 16s → 30s cap)
- Heartbeat WS-level ping every 30s; pong/message timeout triggers force-reconnect
- `disconnectPersistent()` — disables reconnect, clears timers, closes WS cleanly
- [x] Call `connectPersistent()` from `src/main/index.ts` after auth check on app startup
- [x] `will-quit` handler in `src/main/index.ts` calls `disconnectPersistent()` for clean exit
- [x] `authRouter.login` calls `connectPersistent()` on success
- [x] `authRouter.logout` calls `disconnectPersistent()`
- [x] Device ID validation in `handleAgentRunAndSend()` (completes Step 3.3 final checkbox)
### Step 3.6 — Agent Library page ✅
- [x] Created `src/renderer/routes/settings.tsx`:
- Settings page with 2-column layout (left nav: General, Account, Agents, Appearance)
- Agents section is the agent library — catalog grid + my agents list with status indicators
- Settings icon in sidebar navigates to `/settings` (replaced dropdown)
- `validateSearch` for deep-link to specific section (e.g. `?section=account`)
- [x] Added route to `src/renderer/routeTree.gen.ts`
- [x] Updated sidebar nav in `src/renderer/components/layout/AppShell.tsx` (Settings is now a link)
### Step 3.7 — Agent config dialogs ✅
- [x] `LocalAgentConfigPanel` component (inline, inside expanded agent row in Settings → Agents):
- Native `dialog.showOpenDialog` directory picker (via new `dialog:showOpenDialog` IPC + `window.electronDialog` bridge)
- File extension filter (preset groups + custom)
- Data type selector (checkboxes: tasks, notes, checkpoints, projects)
- Schedule picker (preset: every 15min, hourly, 6h, daily, manual)
- "Customize AI Prompt" button → opens Chatbot Journey dialog
- [x] `CloudAgentConfigPanel` component (inline, inside expanded agent row):
- Provider badge + OAuth placeholder note
- Data type selector + schedule picker
- "Customize AI Prompt" button
- [x] `AddAgentDialog` for creating new agents from the catalog
- [x] Added `dialog:showOpenDialog` IPC handler in `src/main/index.ts` + `window.electronDialog` exposed in `src/preload/trpc.ts` + type declared in `src/renderer/lib/ipcLink.ts`
- **Files:** `src/renderer/routes/settings.tsx`, `src/main/index.ts`, `src/preload/trpc.ts`, `src/renderer/lib/ipcLink.ts`
- **Outcome:** Users can fully configure local and cloud agents from the Settings → Agents section.
### Step 3.8 — Chatbot Journey page ✅
- [x] `JourneyDialog` component in `src/renderer/routes/settings.tsx`:
- Dialog with spring-animated chat interface (message list, input, send button)
- Starts via `agent.journey.start` (passes `agentType` + optional `agentId`) on mount
- Multi-turn via `agent.journey.message` tRPC calls
- Shows generated prompt preview when `done === true` / `promptTemplate` present
- "Save & apply" button: saves promptTemplate to agent via `agent.local.update` / `agent.cloud.update`
- Works in both Create flow (from `AddAgentDialog`) and Edit flow (from expanded agent row)
- **Files:** `src/renderer/routes/settings.tsx`
- **Outcome:** Users configure AI prompts through a guided conversation, directly inside agent config.
### Step 3.9 — Agent run logs UI ✅
- [x] Create `src/renderer/components/agents/AgentRunLog.tsx`:
- Per-agent run history: timestamp, status badge, items processed/created, errors
- Lazy-loaded (only fetches when agent row is expanded), limit 10 runs
- Skeleton loading state + "No runs yet" empty state
- Per-run expandable error list (click to reveal all error strings)
- Duration display (completedAt - startedAt formatted as Xs / Xm Ys)
- Data via `agent.runs` tRPC query
- [x] Integrated into `AgentRow` in `src/renderer/routes/settings.tsx` — replaced inline block
- **Files:** `src/renderer/components/agents/AgentRunLog.tsx`, `src/renderer/routes/settings.tsx`
- **Outcome:** Users see full history and status of each agent's runs with expandable error details.
---
## Phase 4 — Security: E2E Backup & Offline
### Step 4.1 — E2E encrypted backup
- [x] `src/main/backup/e2e-crypto.ts` + `backup-manager.ts`
- **Outcome:** User data never leaves the device unencrypted.
### Step 4.2 — Offline sync queue
- [x] `src/main/backup/sync-queue.ts` + `sync_queue` table
- **Outcome:** Queued actions auto-sync when online.
> **Step 4.3 (SQLCipher) — Dropped.** OS-level FDE covers at-rest encryption for a local-first desktop app. Backups already E2E encrypted via Argon2id + AES-256-GCM. Native module build complexity, ~10% perf overhead, and key management UX friction not justified by the threat model.
---
## Phase 5 — Shared Memory ❌ DEPRECATED
> **Superseded by V3 architecture.** The backend now implements a 4-tier memory system (Core, Associative, Episodic, Proactive) with per-user Fernet encryption — see `../adiuva-api/V3_MIGRATION_PLAN.md` Steps 67. Memory lives server-side, not in Electron SQLite. The Electron orchestrator's `buildChatContext()` is removed in V3 (server fetches data on-demand via tool_call reverse API). Chat history is handled by `conversationHistory` passed in `home_request` frames.
>
> **See:** `V3_ELECTRON_MIGRATION_PLAN.md` for the replacement architecture.
---
## Phase 6 — Renderer UI Updates
### Step 6.1 — Auth UI + settings restructure ✅
- [x] `LoginForm.tsx` — centered login/register screen (`src/renderer/components/auth/LoginForm.tsx`)
- [x] Auth gate in `AppShell` — shows `LoginForm` when `auth.status` returns `authenticated: false`; passes through while loading to avoid flicker; `staleTime: 5min` to avoid hammering backend
- [x] `SettingsPage.tsx` Account section simplified — login form removed (AppShell handles it), always shows profile + sign out
### Step 6.2 — ChatPage with context panel ❌ DEPRECATED
> **Superseded by V3.** Home chat with block rendering (charts, entities, tables, timelines) and FloatingChat with domain navigation replace this. See `V3_ELECTRON_MIGRATION_PLAN.md` Steps 47.
### Step 6.3 — BatchBuilderPage
- [ ] Natural language input, config preview, connector/storage/schedule pickers, batch cards, test runner
### Step 6.4 — PluginStorePage
- [ ] Marketplace + installed tabs, permission dialog on install
### Step 6.5 — DataManagerPage
- [ ] Storage overview, per-source cards, migration wizard
### Step 6.6 — ActivityLogPage
- [ ] Filterable activity table with CSV export
---
## Phase 7 — Cleanup & Hardening
### Step 7.1 — Error handling and logging
### Step 7.2 — Integration tests
---
## Dependencies to Add
| Package | Purpose |
|---|---|
| `ws` | WebSocket client for backend streaming |
| `argon2` | Key derivation for E2E backup |
| `node-cron` | Batch agent scheduling |
| `chokidar` | File watching (plugin) |
| `imapflow` | IMAP client (plugin) |
## Dependencies to Remove
| Package | Reason |
|---|---|
| `@langchain/core` | No local LLM |
| `@langchain/openai` | No local LLM |
| `@langchain/anthropic` | No local LLM |
| `@langchain/langgraph` | No local orchestrator |
| `@github/copilot-sdk` | No local Copilot |
---
## Execution Notes
- **Phase 1 is the critical path.** Auth + backend client + drizzle executor + orchestrator refactor must land first.
- **Steps 1.11.4 are additive** — existing app keeps working until Step 1.5 swaps the orchestrator.
- **Step 2.1 is the point of no return** — after removing LangChain, there's no local AI fallback.
- **Phase B (backend changes) must land before Phase 1.31.5** — Electron needs the bidirectional WS to talk to.
- **Phase 3 and Phase 4 are independent** — can be parallelized after Phase 2.
- **One step at a time.** Mark `[x]` and commit with `step N.N complete: <outcome>`.

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## graphify
This project has a graphify knowledge graph at graphify-out/.
Rules:
- Before answering architecture or codebase questions, read graphify-out/GRAPH_REPORT.md for god nodes and community structure
- If graphify-out/wiki/index.md exists, navigate it instead of reading raw files
- For cross-module "how does X relate to Y" questions, prefer `graphify query "<question>"`, `graphify path "<A>" "<B>"`, or `graphify explain "<concept>"` over grep — these traverse the graph's EXTRACTED + INFERRED edges instead of scanning files
- After modifying code files in this session, run `graphify update .` to keep the graph current (AST-only, no API cost)

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@@ -1,400 +0,0 @@
# V3 Electron Migration Plan — Multi-Agent AI Productivity App
> Incremental migration of the Electron app to v3 streaming architecture.
> Each step is self-contained, testable, and backwards-compatible until the final cutover.
> The backend (`../adiuva-api`) v3 migration is already complete (Steps 17).
> No test suite — each step is verified manually via the running app.
---
## General Rules
**Code Cleanup**: As you implement each step, remove any code that becomes unused or obsolete. This includes:
- Old functions/methods that are superseded by new ones
- Deprecated imports or modules
- Dead code paths
This keeps the codebase clean and prevents confusion. When removing code, note it in the commit message if significant.
---
## Decisions Log
| Topic | Decision |
|---|---|
| WS topology | Merge chat into persistent device WS (no more separate `/api/v1/chat/stream` WS) |
| Context building | Remove `buildChatContext()` — server fetches data via reverse API `tool_call` round-trips |
| IPC channel | Keep single `ai:stream` channel, change payload shape to discriminated union by `type` field |
| Floating surface | Reuse existing `FloatingChat.tsx` — adapt to v3 floating pipeline |
| Block rendering | New `blocks/` directory under `components/ai/` for chart, entity, table, timeline components |
| useAIChat | Shared hook handles v3 frames for both Home and Floating (no mode split — divergence is in the rendering components) |
---
## Step 1 — V3 Frame Types (`api-types.ts`)
**Goal**: Define the v3 frame vocabulary so all subsequent steps can import typed frames.
**Changes**:
- `src/shared/api-types.ts`:
- Add Client → Server frame schemas:
- `WsHomeRequest(type: 'home_request', message, conversationHistory?)`
- `WsFloatingRequest(type: 'floating_request', message, scope: { type: 'task'|'project'|'note'|'checkpoint', id? })`
- Add Server → Client frame schemas:
- `WsStreamStart(type: 'stream_start', requestId)`
- `WsStreamText(type: 'stream_text', requestId, chunk)`
- `WsStreamBlock(type: 'stream_block', requestId, blockType: 'chart'|'entity_ref'|'table'|'timeline', data: Record<string, unknown>)`
- `WsStreamEnd(type: 'stream_end', requestId, mutations?)`
- `WsFloatingDomain(type: 'floating_domain', requestId, domain: 'tasks'|'notes'|'checkpoints'|'projects')`
- Add block data interfaces:
- `ChartBlockData { chartType: 'area'|'bar'|'line'|'pie'|'radar'|'radial', title, data: Record<string, unknown>[], config: Record<string, { label: string, color: string }> }`
- `EntityRefBlockData { entity: 'task'|'project'|'note'|'checkpoint', items: Record<string, unknown>[] }`
- `TableBlockData { headers: string[], rows: string[][] }`
- `TimelineBlockData { checkpoints: { id: string, title: string, date: number }[] }`
- Add new frames to `WsClientFrameSchema` and `WsServerFrameSchema` discriminated unions
- Keep all existing v2 frame types (backward compat until Step 3 removes them)
**Files touched**: `src/shared/api-types.ts`
**Test**: App compiles with no type errors. Existing chat still works (v2 frames untouched).
```bash
source ~/.nvm/nvm.sh && npm run lint
```
**Status**:
- [x] Step 1 complete
**Commit**:
```
git commit -m "step-1: add v3 ws frame types (api-types.ts)"
```
---
## Step 2 — Unified WS Chat Transport (`backend-client.ts`)
**Goal**: Route Home and Floating chat through the persistent device WS instead of opening a separate per-chat WebSocket.
**Changes**:
- `src/main/api/backend-client.ts`:
- Add `private streamListeners: Map<string, StreamListener>` — keyed by `requestId`, each holding callbacks: `{ onStart, onText, onBlock, onEnd, onDomain, onError }`
- Add `sendHomeRequest(message, conversationHistory?) -> { requestId, promise }`:
1. Generates `requestId` (UUID)
2. Registers a `StreamListener` in the map
3. Sends `{ type: 'home_request', message, conversation_history }` on persistent WS
4. Returns a promise that resolves when `stream_end` arrives (or rejects on error/timeout)
- Add `sendFloatingRequest(message, scope) -> { requestId, promise }`:
1. Same pattern but sends `{ type: 'floating_request', message, scope }`
- Extend the persistent WS `on('message')` handler to dispatch v3 frames:
- `stream_start` → call `listener.onStart()`
- `stream_text` → call `listener.onText(chunk)`
- `stream_block` → call `listener.onBlock(blockType, data)`
- `stream_end` → call `listener.onEnd(mutations)`, remove listener, resolve promise
- `floating_domain` → call `listener.onDomain(domain)`
- `tool_call` frames already handled — no change needed (same persistent WS)
- **Remove** `chatStream()` method and `openChatWebSocket()` private method (v2 per-chat WS)
- **Remove** related imports: `ChatRequest`, `ChatResponse`, `ChatResponseSchema`
**Files touched**: `src/main/api/backend-client.ts`
**Test**: App starts, persistent WS connects, existing agent runs + tool calls still work. Chat is broken at this point (orchestrator still calls removed `chatStream()`) — that's expected, fixed in Step 3.
```bash
source ~/.nvm/nvm.sh && npm start
# Verify: [DeviceWS] Connected. in console
# Verify: agent_run still works if you have agents configured
```
**Status**:
- [x] Step 2 complete
**Commit**:
```
git commit -m "step-2: unify chat onto persistent device ws (backend-client.ts)"
```
---
## Step 3 — Orchestrator + IPC Bridge Refactor (`orchestrator.ts`, `preload/trpc.ts`, `router/index.ts`)
**Goal**: Orchestrator sends v3 frames via BackendClient and forwards typed stream events to the renderer via IPC.
**Changes**:
- `src/main/ai/orchestrator.ts`:
- **Remove** `buildChatContext()` entirely (server fetches data via tool_call reverse API)
- **Remove** `sendStreamChunk()` helper
- Replace `orchestrate()` with v3 version:
1. Check connectivity + auth (unchanged)
2. Call `client.sendHomeRequest(message, conversationHistory)` with stream callbacks:
- `onStart(requestId)``sender.send('ai:stream', { type: 'stream_start', requestId })`
- `onText(chunk)``sender.send('ai:stream', { type: 'stream_text', requestId, chunk })`
- `onBlock(blockType, data)``sender.send('ai:stream', { type: 'stream_block', requestId, blockType, data })`
- `onEnd()``sender.send('ai:stream', { type: 'stream_end', requestId })`
3. Return `{ response: 'ok' }` (actual content streamed via IPC)
- Add `orchestrateFloating()`:
1. Same connectivity + auth checks
2. Call `client.sendFloatingRequest(message, scope)` with stream callbacks:
- Same as above, plus `onDomain(domain)``sender.send('ai:stream', { type: 'floating_domain', requestId, domain })`
3. Return `{ response: 'ok' }`
- Update `dailyBrief()` to use the v3 `orchestrate()` path
- `src/preload/trpc.ts`:
- Change `onStreamChunk` payload type from `{ token: string; done: boolean }` to the v3 discriminated union: `{ type: 'stream_start'|'stream_text'|'stream_block'|'stream_end'|'floating_domain', ... }`
- Rename export to `onStreamEvent` (breaking change for renderer — fixed in Step 4)
- **Remove** `onAction` channel handler (superseded by `stream_block` mutation frames)
- `src/main/router/index.ts`:
- Update `aiRouter.chat` input to accept optional `mode: 'home' | 'floating'` and optional `scope` for floating
- Route to `orchestrate()` or `orchestrateFloating()` based on mode
- Keep `dailyBrief` mutation (calls updated `dailyBrief()`)
**Files touched**: `src/main/ai/orchestrator.ts`, `src/preload/trpc.ts`, `src/main/router/index.ts`
**Test**: App starts. Sending a chat message from Home triggers `home_request` on persistent WS. Backend streams `stream_start``stream_text`* → `stream_end`. Renderer is broken (still expects v2 payloads) — fixed in Step 4.
```bash
source ~/.nvm/nvm.sh && npm start
# Open DevTools → Console: verify [DeviceWS] sends home_request frame
# Verify stream_text frames appear in console logs
```
**Status**:
- [x] Step 3 complete
**Commit**:
```
git commit -m "step-3: refactor orchestrator + ipc bridge to v3 frames"
```
---
## Step 4 — Renderer Streaming Hook (`useAIChat.ts`)
**Goal**: `useAIChat` handles v3 typed stream events and produces structured messages with interleaved text + blocks.
**Changes**:
- `src/renderer/hooks/useAIChat.ts`:
- Update `ChatMessage` type:
```ts
interface StreamBlock {
id: string;
blockType: 'chart' | 'entity_ref' | 'table' | 'timeline';
data: Record<string, unknown>;
}
interface ChatMessage {
id: string;
role: 'user' | 'assistant';
content: string; // accumulated text segments
blocks: StreamBlock[]; // interleaved blocks (ordered by arrival)
error?: boolean;
}
```
- Replace `window.electronAI.onStreamChunk()` subscription with `window.electronAI.onStreamEvent()`:
- `stream_start` → init streaming state, store `requestId`
- `stream_text` → append `chunk` to `streamingContentRef` (same as before)
- `stream_block` → append `{ id, blockType, data }` to `streamingBlocksRef`
- `stream_end` → finalize message with accumulated text + blocks, cleanup
- `floating_domain` → call `options?.onDomainSignal?.(domain)` callback
- Add `streamingBlocks` state (exposed in return) for live block rendering during stream
- Keep `[SECTION:xxx]` tag parsing for backward compat (remove later when floating_domain fully replaces it)
- Update `UseAIChatReturn` to include `streamingBlocks: StreamBlock[]`
**Files touched**: `src/renderer/hooks/useAIChat.ts`
**Test**: Home chat works end-to-end with text streaming. Text appears word-by-word as before. Blocks array is populated (but not rendered yet — Step 5). FloatingChat also works (shares hook).
```bash
source ~/.nvm/nvm.sh && npm start
# Type a message in Home chat → text streams in
# Check React DevTools: message.blocks array exists (may be empty if backend sends text-only)
```
**Status**:
- [x] Step 4 complete
**Commit**:
```
git commit -m "step-4: update useAIChat for v3 structured streaming"
```
---
## Step 5 — Block Renderer Components (`components/ai/blocks/`)
**Goal**: Visual components that render `stream_block` data inline in chat messages.
**Changes**:
- `src/renderer/components/ai/blocks/ChatChartBlock.tsx` (new):
- Receives `ChartBlockData` (`chartType`, `title`, `data`, `config`)
- Renders the appropriate shadcn/ui chart component based on `chartType`:
- `area` → `AreaChart`, `bar` → `BarChart`, `line` → `LineChart`, `pie` → `PieChart`, `radar` → `RadarChart`, `radial` → `RadialChart`
- Uses `ChartContainer` + `ChartTooltip` from shadcn/ui
- Wrapped in a card with title, scale-and-fade entrance animation
- Install any missing shadcn chart components if needed
- `src/renderer/components/ai/blocks/ChatEntityBlock.tsx` (new):
- Receives `EntityRefBlockData` (`entity`, `items`)
- **Reuses existing components** — no new card renderers:
- `task` → `TaskRow` from `components/tasks/TaskRow.tsx` (compact mode, read-only)
- `project` → `Item` + `ItemMedia` + `ItemContent` from `components/ui/item.tsx` (same pattern as `ProjectDetail.tsx`)
- `note` → `Item` + `ItemContent` (same pattern as note cards in `ProjectDetail.tsx`, with `FileText` icon)
- `checkpoint` → `Item` with dashed-border variant + `Sparkles` icon for AI-suggested (same pattern as pending checkpoints in `ProjectDetail.tsx`)
- Also reuses `PriorityBadge` from `components/tasks/PriorityBadge.tsx` for task priority display
- Maps server data shape to each component's expected props
- `src/renderer/components/ai/blocks/ChatTableBlock.tsx` (new):
- Receives `TableBlockData` (`headers`, `rows`)
- Renders a simple styled table (shadcn Table component)
- `src/renderer/components/ai/blocks/ChatTimelineBlock.tsx` (new):
- Receives `TimelineBlockData` (`checkpoints`)
- **Reuses `GanttChart`** from `components/timeline/GanttChart.tsx` (compact mode, read-only, no context menu)
- Maps `TimelineBlockData.checkpoints` to `GanttCheckpoint[]` interface
- `src/renderer/components/ai/blocks/index.tsx` (new):
- `BlockRenderer` component: switches on `blockType`, renders the appropriate block component
- Wraps each block in a `motion.div` with scale-and-fade entrance (spring: stiffness 400, damping 30)
**Files touched**: `src/renderer/components/ai/blocks/` (5 new files)
**Test**: Components render correctly when given mock data. Can test by temporarily hardcoding a block in a chat message.
```bash
source ~/.nvm/nvm.sh && npm start
# Temporarily add a mock block to a message in useAIChat to verify rendering
```
**Status**:
- [x] Step 5 complete
**Commit**:
```
git commit -m "step-5: add block renderer components (chart, entity, table, timeline)"
```
---
## Step 6 — Home Chat Block Rendering (`AIChatPanel.tsx`)
**Goal**: Home chat renders blocks inline between text segments.
**Changes**:
- `src/renderer/components/ai/AIChatPanel.tsx`:
- Import `BlockRenderer` from `./blocks`
- Update assistant message rendering:
- After `ChatMarkdown` (text content), render `message.blocks.map(block => <BlockRenderer key={block.id} ... />)`
- Blocks appear below/between text in the order they arrived
- Update streaming state rendering:
- Show `streamingBlocks` (from `useAIChat`) as they arrive during streaming (pop-in effect)
- Each block gets a scale-and-fade entrance animation
- Daily brief: if the brief response includes blocks, render them in the expandable toast
**Files touched**: `src/renderer/components/ai/AIChatPanel.tsx`
**Test**: Send a Home chat message that triggers the backend to return blocks (e.g., "Show me task status for project X" — should produce entity_ref or chart blocks). Text streams in, then blocks pop in when complete.
```bash
source ~/.nvm/nvm.sh && npm start
# Ask: "Show me my task status" or "Give me a summary of project X"
# Verify: text streams word-by-word, chart/entity blocks pop in after
```
**Status**:
- [x] Step 6 complete
**Commit**:
```
git commit -m "step-6: integrate block rendering in home chat (AIChatPanel.tsx)"
```
---
## Step 7 — Floating Domain Navigation (`FloatingChat.tsx`)
**Goal**: FloatingChat sends `floating_request` and handles `floating_domain` for background page navigation. Text-only rendering (no blocks).
**Changes**:
- `src/renderer/components/ai/FloatingChat.tsx`:
- Update `useAIChat` call to pass `onDomainSignal` callback:
- Maps domain to route: `tasks → /tasks`, `projects → /projects`, `checkpoints → /timeline`, `notes → /notes`
- Calls `navigate()` to the target route (background navigation — panel stays open)
- Replaces the `SECTION_ROUTES` + `[SECTION:xxx]` tag mechanism with the deterministic `floating_domain` signal
- Update `chatContext` construction to include `scope`:
- When opened on a specific entity (e.g., double-click task #42): `scope: { type: 'task', id: 'task_42' }`
- When opened on an area (e.g., tasks list): `scope: { type: 'task' }` (no id)
- Messages render text-only — explicitly do **not** render `message.blocks` (floating is text-only per v3 spec)
- Remove `SECTION_ROUTES` constant and `handleSectionTag` callback (replaced by `floating_domain`)
- Remove `onSectionTag` option from `useAIChat` call (cleanup — if no other consumer uses it, remove from hook too)
**Files touched**: `src/renderer/components/ai/FloatingChat.tsx`, possibly `src/renderer/hooks/useAIChat.ts` (remove `onSectionTag` if unused)
**Test**: Double-click an entity → FloatingChat opens → type a question → floating_domain signal arrives → background page navigates → text streams in the panel.
```bash
source ~/.nvm/nvm.sh && npm start
# Double-click a task → FloatingChat opens
# Ask: "What's the checkpoint status?"
# Verify: background navigates to /timeline, text streams in floating
```
**Status**:
- [x] Step 7 complete
**Commit**:
```
git commit -m "step-7: floating domain navigation in floating chat (FloatingChat.tsx)"
```
---
## Step 8 — Cleanup
**Goal**: Remove all v2 chat artifacts that are no longer used.
**Changes**:
- `src/shared/api-types.ts`:
- Remove v2 chat schemas: `WsChatRequestSchema`, `WsTextChunkSchema`, `WsFinalSchema`, `ChatContextSchema`, `ChatRequestSchema`, `ChatResponseSchema`
- Remove from `WsClientFrameSchema` and `WsServerFrameSchema` discriminated unions
- `src/main/api/backend-client.ts`:
- Remove any leftover v2 imports or dead code
- `src/main/ai/orchestrator.ts`:
- Remove `OrchestrateResult` interface if no longer needed
- Remove `AI_STREAM_CHANNEL` constant (now in preload only)
- `src/preload/trpc.ts`:
- Remove `onAction` channel if still present
- `src/renderer/hooks/useAIChat.ts`:
- Remove `onSectionTag` option if fully replaced by `onDomainSignal`
- `src/main/router/index.ts`:
- Clean up `aiRouter.chat` input schema (remove `uiContext` field — no longer sent)
**Files touched**: Multiple (cleanup pass)
**Test**: Full app smoke test — Home chat, Floating chat, daily brief, agent runs all work.
```bash
source ~/.nvm/nvm.sh && npm run lint && npm start
```
**Status**:
- [x] Step 8 complete
**Commit**:
```
git commit -m "step-8: remove v2 chat artifacts (cleanup)"
```
---
## Summary
| Step | Component | Effort | Depends On |
|------|-----------|--------|------------|
| 1 | V3 Frame Types | Low | — |
| 2 | Unified WS Transport | High | Step 1 |
| 3 | Orchestrator + IPC Bridge | Medium | Step 2 |
| 4 | Renderer Streaming Hook | Medium | Step 3 |
| 5 | Block Renderer Components | High | Step 1 (types only) |
| 6 | Home Chat Blocks | Medium | Steps 4, 5 |
| 7 | Floating Domain Navigation | Medium | Step 4 |
| 8 | Cleanup | Low | Steps 6, 7 |
Steps 14 form the streaming pipeline (serial dependency chain).
Step 5 can run in parallel with Steps 24 (only needs types from Step 1).
Steps 6 and 7 can run in parallel after Step 4 + 5.
Step 8 is the final cleanup after everything works.
### What stays untouched
- `src/main/api/drizzle-executor.ts` — already v3-compatible (reverse API)
- `src/main/ai/token.ts` — unchanged
- `src/main/agents/file-reader.ts` — unchanged
- `src/main/db/` — no schema changes
- `src/renderer/routes/` — no route changes
- All existing tRPC routers (tasks, projects, notes, checkpoints, etc.) — unchanged

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# ── Application ──────────────────────────────────────────────────────────────
ENV=dev
# ── Database ──────────────────────────────────────────────────────────────────
DATABASE_URL=postgresql+asyncpg://postgres:postgres@localhost:5432/adiuvai
# ── Auth ──────────────────────────────────────────────────────────────────────
JWT_SECRET=replace-with-a-long-random-secret
JWT_ALGORITHM=HS256
JWT_ACCESS_TOKEN_EXPIRE_MINUTES=30
JWT_REFRESH_TOKEN_EXPIRE_DAYS=30
# ── LLM ───────────────────────────────────────────────────────────────────────
# LiteLLM model identifiers — change to swap providers without code changes.
# Examples: gpt-4o, anthropic/claude-sonnet-4-20250514, gemini/gemini-pro, ollama/llama3
#
# API keys — only the key(s) matching your chosen provider(s) are required.
# The correct key is picked automatically from the model prefix (e.g.
# "anthropic/..." → ANTHROPIC_API_KEY, "gemini/..." → GOOGLE_API_KEY).
OPENAI_API_KEY=
ANTHROPIC_API_KEY=
GOOGLE_API_KEY=
CEREBRAS_API_KEY=
GROQ_API_KEY=
DEEPSEEK_API_KEY=
# Default model used by any agent that does not have a specific override below.
LLM_MODEL=gpt-5-mini
LLM_EMBED_MODEL=text-embedding-3-small
# GitHub Copilot — leave empty to use the LiteLLM default token directory.
# In Docker, point this to a named-volume path so tokens survive restarts.
# GITHUB_COPILOT_TOKEN_DIR=
# ── Per-agent model overrides ─────────────────────────────────────────────────
# Leave a value empty to fall back to LLM_MODEL.
# Each agent resolves its API key from the model prefix automatically.
#
# Intent classifier — routes user messages to the right domain agent.
# A small/fast model (e.g. gpt-4o-mini) is usually sufficient here.
LLM_MODEL_CLASSIFIER=
# Home-agent — handles chat from the home screen (all tools available).
LLM_MODEL_HOME_AGENT=
# Floating-agent — handles contextual chat triggered from a task/project/note.
LLM_MODEL_FLOATING_AGENT=
# Unified-processor — processes local directory files (local agent runner).
LLM_MODEL_UNIFIED_PROCESSOR=
# Cloud-processor — fetches and processes data from cloud connectors.
LLM_MODEL_CLOUD_PROCESSOR=
# Brief-agent — produces home and project text briefs.
# A small model (e.g. gpt-4o-mini) is sufficient.
# LLM_MODEL_BRIEF_AGENT=
# Task-brief-agent — per-task deep research (Stage 1 executive assistant).
# Needs tool-use + reasoning; a capable model recommended (e.g. gpt-4o, gemini-2.5-flash).
# LLM_MODEL_TASK_BRIEF_AGENT=
# Setup-agent — guided journey to build an AgentConfig via WebSocket chat.
LLM_MODEL_SETUP_AGENT=
# Memory-extractor — Mem0-style extract/decide pipeline (Phase 2).
# Defaults to gpt-4o-mini when empty (fast + cheap, temperature=0).
LLM_MODEL_MEMORY_EXTRACTOR=
# Memory-miner — proactive pattern mining from episodic history (Phase 5, Power+ only).
# Defaults to gpt-4o-mini when empty.
LLM_MODEL_MEMORY_MINER=
# Memory-auditor — weekly contradiction scan + relation label canonicalization (Phase 7).
# Defaults to LLM_MODEL when empty (a reasoning-capable model is recommended).
LLM_MODEL_MEMORY_AUDITOR=
# Scheduler — set to false to disable memory cron jobs (automatically false in tests).
SCHEDULER_ENABLED=true
# ── Stripe (leave empty to stub billing) ──────────────────────────────────────
STRIPE_SECRET_KEY=
STRIPE_WEBHOOK_SECRET=
# ── Langfuse (leave empty to disable observability) ───────────────────────────
LANGFUSE_SECRET_KEY=
LANGFUSE_PUBLIC_KEY=
# LANGFUSE_BASE_URL=https://cloud.langfuse.com # EU (default)
# LANGFUSE_BASE_URL=https://us.cloud.langfuse.com # US
# LANGFUSE_BASE_URL=http://localhost:3000 # Self-hosted
# ── CORS ──────────────────────────────────────────────────────────────────────
# Comma-separated list parsed by Settings (override default if needed)
# CORS_ORIGINS=["app://.","http://localhost:3000"]

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name: Test & Deploy API
run-name: ${{ gitea.ref_name }} → Docker LXC
on:
push:
tags:
- 'v*'
jobs:
# ── 1. Run tests in an isolated Python container ──────────────────
test:
runs-on: ubuntu-latest
container:
image: python:3.12-slim
steps:
- name: Install git
run: apt-get update && apt-get install -y --no-install-recommends git
- name: Checkout Code
run: |
git clone --depth 1 --branch "${GITHUB_REF_NAME}" \
"http://10.0.0.119:3000/${GITHUB_REPOSITORY}.git" . || \
git clone --depth 1 "http://10.0.0.119:3000/${GITHUB_REPOSITORY}.git" . && \
git checkout "${GITHUB_SHA}"
- name: Install Dependencies
run: pip install --no-cache-dir -r requirements.txt
- name: Run Linter
run: ruff check app/ tests/
- name: Run Tests
run: pytest tests/ -v --tb=short
# ── 2. Deploy to Docker LXC via SSH ─────────────────────────────────
deploy:
needs: test
runs-on: ubuntu-latest
if: gitea.event_name == 'push'
steps:
- name: Deploy via SSH
uses: appleboy/ssh-action@v1.0.0
with:
host: ${{ secrets.SSH_HOST }}
username: ${{ secrets.SSH_USER }}
key: ${{ secrets.SSH_KEY }}
script: |
set -e
DEPLOY_DIR="/opt/adiuvai-api"
REPO_URL="http://10.0.0.119:3000/${{ gitea.repository }}.git"
TAG="${{ gitea.ref_name }}"
# ── Pull latest code ──
cd /tmp && rm -rf adiuvai-api-deploy
git clone --depth 1 --branch "${TAG}" "${REPO_URL}" adiuvai-api-deploy
# ── Sync source (preserve .env) ──
cp -rf /tmp/adiuvai-api-deploy/app/ \
/tmp/adiuvai-api-deploy/alembic/ \
/tmp/adiuvai-api-deploy/alembic.ini \
/tmp/adiuvai-api-deploy/Dockerfile \
/tmp/adiuvai-api-deploy/docker-compose.yml \
/tmp/adiuvai-api-deploy/requirements.txt \
"$DEPLOY_DIR/"
rm -rf /tmp/adiuvai-api-deploy
# ── Verify .env ──
if [ ! -f "$DEPLOY_DIR/.env" ]; then
echo "❌ $DEPLOY_DIR/.env not found. Create it before deploying."
exit 1
fi
# ── Build & restart ──
cd "$DEPLOY_DIR"
docker compose down --remove-orphans || true
docker compose up -d --build
# ── Migrations ──
docker compose exec -T app alembic upgrade head
# ── Health check ──
echo "Waiting for app..."
sleep 5
HTTP_CODE=$(curl -s -o /dev/null -w "%{http_code}" http://localhost:8080/api/v1/health)
if [ "$HTTP_CODE" -eq 200 ]; then
echo "✅ API is healthy (HTTP ${HTTP_CODE})"
else
echo "❌ Health check failed (HTTP ${HTTP_CODE})"
docker compose logs app --tail=50
exit 1
fi

64
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name: CI
on:
push:
branches: [main]
pull_request:
branches: [main]
jobs:
lint:
name: Lint
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v4
- uses: actions/setup-python@v5
with:
python-version: "3.12"
- name: Install ruff
run: pip install ruff>=0.8.0
- name: Ruff check
run: ruff check .
- name: Ruff format check
run: ruff format --check .
test:
name: Test
runs-on: ubuntu-latest
needs: lint
steps:
- uses: actions/checkout@v4
- uses: actions/setup-python@v5
with:
python-version: "3.12"
- name: Cache pip
uses: actions/cache@v4
with:
path: ~/.cache/pip
key: ${{ runner.os }}-pip-${{ hashFiles('requirements.txt') }}
restore-keys: ${{ runner.os }}-pip-
- name: Install dependencies
run: pip install -r requirements.txt
- name: Run tests
run: pytest -v --tb=short
docker:
name: Docker Build
runs-on: ubuntu-latest
needs: test
steps:
- uses: actions/checkout@v4
- name: Build image
run: docker build -t adiuvai-api:ci .
- name: Verify gunicorn installed
run: docker run --rm adiuvai-api:ci gunicorn --version

38
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# Python
__pycache__/
*.py[cod]
*.egg-info/
dist/
build/
# Virtual environment
.venv/
venv/
env/
# Environment variables
.env
# IDE
.vscode/
.idea/
# Testing / coverage
.pytest_cache/
htmlcov/
.coverage
tests/fixtures/private*/
# Docker
*.log
# OS
.DS_Store
# Smoke scripts (dev-only, not for CI)
scripts/smoke_*.py
Thumbs.db
# Claude Code
.claude/
logs/

39
api/Dockerfile Normal file
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# ── builder ──────────────────────────────────────────────────────────────────
FROM python:3.12-slim AS builder
WORKDIR /build
COPY requirements.txt .
RUN pip install --upgrade pip && \
pip install --no-cache-dir --prefix=/install -r requirements.txt
# ── runtime ──────────────────────────────────────────────────────────────────
FROM python:3.12-slim AS runtime
# Non-root user
RUN addgroup --system appgroup && adduser --system --ingroup appgroup appuser
WORKDIR /app
# Copy installed packages from builder
COPY --from=builder /install /usr/local
# Copy application source
COPY app/ app/
# Copy Alembic migration files
COPY alembic/ alembic/
COPY alembic.ini .
# Ensure appuser owns the working directory
RUN chown -R appuser:appgroup /app
USER appuser
EXPOSE 8000
CMD ["gunicorn", "app.main:app", \
"-k", "uvicorn.workers.UvicornWorker", \
"--bind", "0.0.0.0:8000", \
"--workers", "4", \
"--timeout", "120"]

5
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## DEV
Run in DEV with command:
```
uvicorn app.main:app --host 0.0.0.0 --port 8000 --reload --log-config logging.conf
```

47
api/alembic.ini Normal file
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# Alembic configuration file.
# The async app uses postgresql+asyncpg:// at runtime.
# Alembic CLI uses the sync psycopg2 URL set in env.py (reads from DATABASE_URL env var).
[alembic]
script_location = alembic
prepend_sys_path = .
version_path_separator = os
# sqlalchemy.url is overridden in alembic/env.py — leave as placeholder.
sqlalchemy.url = driver://user:pass@localhost/dbname
[post_write_hooks]
[loggers]
keys = root,sqlalchemy,alembic
[handlers]
keys = console
[formatters]
keys = generic
[logger_root]
level = WARN
handlers = console
qualname =
[logger_sqlalchemy]
level = WARN
handlers =
qualname = sqlalchemy.engine
[logger_alembic]
level = INFO
handlers =
qualname = alembic
[handler_console]
class = StreamHandler
args = (sys.stderr,)
level = NOTSET
formatter = generic
[formatter_generic]
format = %(levelname)-5.5s [%(name)s] %(message)s
datefmt = %H:%M:%S

93
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"""Alembic migration environment — async-compatible.
At runtime the app uses ``postgresql+asyncpg://``. Alembic's CLI is
synchronous, so we derive a *sync* psycopg2 URL from the same DATABASE_URL
env var by replacing the driver prefix.
Run migrations with:
alembic upgrade head
"""
from __future__ import annotations
import asyncio
import os
import re
from logging.config import fileConfig
from alembic import context
from sqlalchemy import pool
from sqlalchemy.ext.asyncio import create_async_engine
# Alembic Config object (gives access to alembic.ini values).
config = context.config
# Set up Python logging from alembic.ini.
if config.config_file_name is not None:
fileConfig(config.config_file_name)
# Import the Base so that Alembic can detect model changes for --autogenerate.
from app.models import Base # noqa: E402
target_metadata = Base.metadata
def _sync_url(async_url: str) -> str:
"""Convert an asyncpg URL to a psycopg2 URL for Alembic CLI."""
return re.sub(r"postgresql\+asyncpg", "postgresql+psycopg2", async_url)
def _get_url() -> str:
db_url = os.environ.get("DATABASE_URL", "")
if not db_url:
# Fall back to settings if env var not set directly.
from app.config.settings import settings # noqa: PLC0415
db_url = settings.DATABASE_URL
return _sync_url(db_url)
def run_migrations_offline() -> None:
"""Emit SQL without a live DB connection."""
url = _get_url()
context.configure(
url=url,
target_metadata=target_metadata,
literal_binds=True,
dialect_opts={"paramstyle": "named"},
compare_type=True,
)
with context.begin_transaction():
context.run_migrations()
def do_run_migrations(connection): # type: ignore[no-untyped-def]
context.configure(
connection=connection,
target_metadata=target_metadata,
compare_type=True,
)
with context.begin_transaction():
context.run_migrations()
async def run_migrations_online_async() -> None:
"""Run migrations against a live DB using the async engine."""
async_url = os.environ.get("DATABASE_URL", "")
if not async_url:
from app.config.settings import settings # noqa: PLC0415
async_url = settings.DATABASE_URL
connectable = create_async_engine(async_url, poolclass=pool.NullPool)
async with connectable.connect() as connection:
await connection.run_sync(do_run_migrations)
await connectable.dispose()
def run_migrations_online() -> None:
asyncio.run(run_migrations_online_async())
if context.is_offline_mode():
run_migrations_offline()
else:
run_migrations_online()

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"""${message}
Revision ID: ${up_revision}
Revises: ${down_revision | comma,n}
Create Date: ${create_date}
"""
from __future__ import annotations
from typing import Sequence, Union
from alembic import op
import sqlalchemy as sa
${imports if imports else ""}
# revision identifiers, used by Alembic.
revision: str = ${repr(up_revision)}
down_revision: Union[str, None] = ${repr(down_revision)}
branch_labels: Union[str, Sequence[str], None] = ${repr(branch_labels)}
depends_on: Union[str, Sequence[str], None] = ${repr(depends_on)}
def upgrade() -> None:
${upgrades if upgrades else "pass"}
def downgrade() -> None:
${downgrades if downgrades else "pass"}

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"""Initial schema: users, refresh_tokens, subscriptions.
Revision ID: 001
Revises:
Create Date: 2026-03-02
"""
from __future__ import annotations
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
from sqlalchemy.dialects import postgresql
revision: str = "001"
down_revision: Union[str, None] = None
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
# ── Enum types — idempotent creation via exception handling ───────────
op.execute("""
DO $$ BEGIN
CREATE TYPE billing_tier AS ENUM ('free', 'pro', 'power', 'team');
EXCEPTION WHEN duplicate_object THEN NULL;
END $$;
""")
# ── users ─────────────────────────────────────────────────────────────
op.create_table(
"users",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("email", sa.String(255), nullable=False),
sa.Column("password_hash", sa.String(255), nullable=False),
sa.Column("tier", postgresql.ENUM("free", "pro", "power", "team", name="billing_tier", create_type=False), nullable=False, server_default="free"),
sa.Column("stripe_customer_id", sa.String(255), nullable=True),
sa.Column("created_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.Column("updated_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.PrimaryKeyConstraint("id"),
sa.UniqueConstraint("email"),
)
op.create_index("ix_users_email", "users", ["email"])
# ── refresh_tokens ────────────────────────────────────────────────────
op.create_table(
"refresh_tokens",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("token_hash", sa.String(64), nullable=False),
sa.Column("expires_at", sa.DateTime(timezone=True), nullable=False),
sa.Column("created_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
sa.UniqueConstraint("token_hash"),
)
op.create_index("ix_refresh_tokens_user_id", "refresh_tokens", ["user_id"])
op.create_index("ix_refresh_tokens_token_hash", "refresh_tokens", ["token_hash"])
# ── subscriptions ─────────────────────────────────────────────────────
op.create_table(
"subscriptions",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("stripe_subscription_id", sa.String(255), nullable=True),
sa.Column("tier", postgresql.ENUM("free", "pro", "power", "team", name="billing_tier", create_type=False), nullable=False, server_default="free"),
sa.Column("status", sa.String(50), nullable=False, server_default="free"),
sa.Column("current_period_end", sa.DateTime(timezone=True), nullable=True),
sa.Column("created_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
sa.UniqueConstraint("user_id"),
)
op.create_index("ix_subscriptions_user_id", "subscriptions", ["user_id"])
op.create_index("ix_subscriptions_stripe_id", "subscriptions", ["stripe_subscription_id"])
def downgrade() -> None:
op.drop_table("subscriptions")
op.drop_table("refresh_tokens")
op.drop_table("users")
op.execute("DROP TYPE IF EXISTS billing_tier")

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"""Add agent config and run log tables: local_agent_configs, cloud_agent_configs, agent_run_logs.
Revision ID: 003
Revises: 002
Create Date: 2026-03-05
"""
from __future__ import annotations
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
from sqlalchemy.dialects import postgresql
revision: str = "003"
down_revision: Union[str, None] = "001"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
# ── Enum types — idempotent creation ──────────────────────────────────
op.execute("""
DO $$ BEGIN
CREATE TYPE agent_type AS ENUM ('local', 'cloud');
EXCEPTION WHEN duplicate_object THEN NULL;
END $$;
""")
op.execute("""
DO $$ BEGIN
CREATE TYPE agent_run_status AS ENUM ('running', 'success', 'error', 'partial');
EXCEPTION WHEN duplicate_object THEN NULL;
END $$;
""")
op.execute("""
DO $$ BEGIN
CREATE TYPE cloud_provider AS ENUM ('gmail', 'teams', 'outlook');
EXCEPTION WHEN duplicate_object THEN NULL;
END $$;
""")
# ── local_agent_configs ───────────────────────────────────────────────
op.create_table(
"local_agent_configs",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("device_id", sa.String(255), nullable=False),
sa.Column("name", sa.String(255), nullable=False),
sa.Column("directory_paths", sa.JSON, nullable=False, server_default="[]"),
sa.Column("data_types", sa.JSON, nullable=False, server_default="[]"),
sa.Column("prompt_template", sa.Text, nullable=False, server_default=""),
sa.Column("file_extensions", sa.JSON, nullable=False, server_default="[]"),
sa.Column("schedule_cron", sa.String(100), nullable=False, server_default="0 */6 * * *"),
sa.Column("enabled", sa.Boolean, nullable=False, server_default=sa.true()),
sa.Column("last_run_at", sa.DateTime(timezone=True), nullable=True),
sa.Column("created_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.Column("updated_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
)
op.create_index("ix_local_agent_configs_user_id", "local_agent_configs", ["user_id"])
# ── cloud_agent_configs ───────────────────────────────────────────────
op.create_table(
"cloud_agent_configs",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column(
"provider",
postgresql.ENUM("gmail", "teams", "outlook", name="cloud_provider", create_type=False),
nullable=False,
),
sa.Column("name", sa.String(255), nullable=False),
sa.Column("data_types", sa.JSON, nullable=False, server_default="[]"),
sa.Column("prompt_template", sa.Text, nullable=False, server_default=""),
sa.Column("oauth_token_encrypted", sa.Text, nullable=True),
sa.Column("filter_config", sa.JSON, nullable=True),
sa.Column("schedule_cron", sa.String(100), nullable=False, server_default="0 */6 * * *"),
sa.Column("enabled", sa.Boolean, nullable=False, server_default=sa.true()),
sa.Column("last_run_at", sa.DateTime(timezone=True), nullable=True),
sa.Column("created_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.Column("updated_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
)
op.create_index("ix_cloud_agent_configs_user_id", "cloud_agent_configs", ["user_id"])
# ── agent_run_logs ─────────────────────────────────────────────────────
op.create_table(
"agent_run_logs",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
# Plain string — not a FK because it references either local_agent_configs or
# cloud_agent_configs depending on agent_type.
sa.Column("agent_id", sa.String(255), nullable=False),
sa.Column(
"agent_type",
postgresql.ENUM("local", "cloud", name="agent_type", create_type=False),
nullable=False,
),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column(
"status",
postgresql.ENUM("running", "success", "error", "partial", name="agent_run_status", create_type=False),
nullable=False,
server_default="running",
),
sa.Column("items_processed", sa.Integer, nullable=False, server_default="0"),
sa.Column("items_created", sa.Integer, nullable=False, server_default="0"),
sa.Column("errors", sa.JSON, nullable=True),
sa.Column("started_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.Column("completed_at", sa.DateTime(timezone=True), nullable=True),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
)
op.create_index("ix_agent_run_logs_user_id", "agent_run_logs", ["user_id"])
op.create_index("ix_agent_run_logs_agent_id", "agent_run_logs", ["agent_id"])
def downgrade() -> None:
op.drop_table("agent_run_logs")
op.drop_table("cloud_agent_configs")
op.drop_table("local_agent_configs")
op.execute("DROP TYPE IF EXISTS cloud_provider;")
op.execute("DROP TYPE IF EXISTS agent_run_status;")
op.execute("DROP TYPE IF EXISTS agent_type;")

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"""Add memory tables and user encryption_key column.
Memory tables:
memory_core — per-user key/value preferences (encrypted)
memory_associative — semantic memory with pgvector embedding (encrypted)
memory_episodic — session summaries (encrypted)
memory_proactive — behavioral patterns (encrypted)
Also adds encryption_key column to users table.
Revision ID: 004
Revises: 003
Create Date: 2026-03-08
"""
from __future__ import annotations
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
from sqlalchemy.dialects import postgresql
revision: str = "004"
down_revision: Union[str, None] = "003"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
# ── Enable pgvector extension (idempotent) ────────────────────────────────
op.execute("CREATE EXTENSION IF NOT EXISTS vector;")
# ── Add encryption_key to users ───────────────────────────────────────────
op.add_column(
"users",
sa.Column("encryption_key", sa.String(64), nullable=True),
)
# ── memory_core ───────────────────────────────────────────────────────────
op.create_table(
"memory_core",
sa.Column("id", postgresql.UUID(as_uuid=False), primary_key=True),
sa.Column(
"user_id",
postgresql.UUID(as_uuid=False),
sa.ForeignKey("users.id", ondelete="CASCADE"),
nullable=False,
),
sa.Column("key", sa.String(255), nullable=False),
sa.Column("value_encrypted", sa.Text, nullable=False),
sa.Column(
"updated_at",
sa.DateTime(timezone=True),
nullable=False,
server_default=sa.func.now(),
),
)
op.create_index("ix_memory_core_user_id", "memory_core", ["user_id"])
# ── memory_associative ────────────────────────────────────────────────────
# The embedding column uses pgvector's vector(1536) type.
op.create_table(
"memory_associative",
sa.Column("id", postgresql.UUID(as_uuid=False), primary_key=True),
sa.Column(
"user_id",
postgresql.UUID(as_uuid=False),
sa.ForeignKey("users.id", ondelete="CASCADE"),
nullable=False,
),
sa.Column("content_encrypted", sa.Text, nullable=False),
sa.Column("entity_type", sa.String(100), nullable=True),
sa.Column("entity_id", sa.String(255), nullable=True),
sa.Column(
"updated_at",
sa.DateTime(timezone=True),
nullable=False,
server_default=sa.func.now(),
),
)
# Add the pgvector column separately (not supported by generic sa types)
op.execute(
"ALTER TABLE memory_associative ADD COLUMN embedding vector(1536);"
)
op.create_index("ix_memory_associative_user_id", "memory_associative", ["user_id"])
# IVFFlat index for approximate nearest-neighbour search
op.execute(
"CREATE INDEX ix_memory_associative_embedding "
"ON memory_associative USING ivfflat (embedding vector_cosine_ops) WITH (lists = 100);"
)
# ── memory_episodic ───────────────────────────────────────────────────────
op.create_table(
"memory_episodic",
sa.Column("id", postgresql.UUID(as_uuid=False), primary_key=True),
sa.Column(
"user_id",
postgresql.UUID(as_uuid=False),
sa.ForeignKey("users.id", ondelete="CASCADE"),
nullable=False,
),
sa.Column("summary_encrypted", sa.Text, nullable=False),
sa.Column("session_id", sa.String(255), nullable=False),
sa.Column(
"created_at",
sa.DateTime(timezone=True),
nullable=False,
server_default=sa.func.now(),
),
)
op.create_index("ix_memory_episodic_user_id", "memory_episodic", ["user_id"])
op.create_index("ix_memory_episodic_session_id", "memory_episodic", ["session_id"])
# ── memory_proactive ──────────────────────────────────────────────────────
op.create_table(
"memory_proactive",
sa.Column("id", postgresql.UUID(as_uuid=False), primary_key=True),
sa.Column(
"user_id",
postgresql.UUID(as_uuid=False),
sa.ForeignKey("users.id", ondelete="CASCADE"),
nullable=False,
),
sa.Column("pattern_encrypted", sa.Text, nullable=False),
sa.Column("confidence", sa.Float, nullable=False, server_default="0.5"),
sa.Column("source", sa.String(50), nullable=False, server_default="inferred"),
sa.Column(
"created_at",
sa.DateTime(timezone=True),
nullable=False,
server_default=sa.func.now(),
),
)
op.create_index("ix_memory_proactive_user_id", "memory_proactive", ["user_id"])
def downgrade() -> None:
op.drop_table("memory_proactive")
op.drop_table("memory_episodic")
op.drop_index("ix_memory_associative_embedding", "memory_associative")
op.drop_table("memory_associative")
op.drop_table("memory_core")
op.drop_column("users", "encryption_key")

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"""Phase 1 — confirm pgvector activation on memory_associative.
Migration 004 created the embedding column as vector(1536) and added the
IVFFlat index. This migration is the Phase-1 checkpoint:
1. Ensures the pgvector extension is enabled (idempotent).
2. Ensures the canonical Phase-1 IVFFlat index exists under the name
memory_associative_embedding_idx (creates it only if absent).
Revision ID: 005
Revises: 9a1f2d0b6c7e
Create Date: 2026-04-15
"""
from __future__ import annotations
from typing import Sequence, Union
from alembic import op
revision: str = "005"
down_revision: Union[str, None] = "e04100e88ace"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
# Ensure pgvector extension is enabled (also done in 004, idempotent).
op.execute("CREATE EXTENSION IF NOT EXISTS vector;")
# Ensure the canonical Phase-1 IVFFlat index exists.
# 004 may have created ix_memory_associative_embedding; this adds the
# Phase-1 name memory_associative_embedding_idx if it is missing.
op.execute(
"""
DO $$
BEGIN
IF NOT EXISTS (
SELECT 1
FROM pg_indexes
WHERE tablename = 'memory_associative'
AND indexname = 'memory_associative_embedding_idx'
) THEN
CREATE INDEX memory_associative_embedding_idx
ON memory_associative
USING ivfflat (embedding vector_cosine_ops)
WITH (lists = 100);
END IF;
END $$;
"""
)
def downgrade() -> None:
op.execute("DROP INDEX IF EXISTS memory_associative_embedding_idx;")

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"""Add memory_relations table (Phase 3 — relational tier).
Revision ID: 006
Revises: 1f5975a4f3f4
Create Date: 2026-04-16
"""
from __future__ import annotations
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
from sqlalchemy.dialects import postgresql
revision: str = "006"
down_revision: Union[str, None] = "1f5975a4f3f4"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
op.create_table(
"memory_relations",
sa.Column("id", postgresql.UUID(as_uuid=False), primary_key=True),
sa.Column(
"user_id",
postgresql.UUID(as_uuid=False),
sa.ForeignKey("users.id", ondelete="CASCADE"),
nullable=False,
),
sa.Column("subject_label", sa.String(128), nullable=False),
sa.Column("subject_type", sa.String(32), nullable=False),
sa.Column("predicate", sa.String(64), nullable=False),
sa.Column("object_label", sa.String(128), nullable=False),
sa.Column("object_type", sa.String(32), nullable=False),
sa.Column("confidence", sa.Float, nullable=False, server_default="0.7"),
sa.Column(
"source_episode_id",
postgresql.UUID(as_uuid=False),
sa.ForeignKey("memory_episodic.id", ondelete="SET NULL"),
nullable=True,
),
sa.Column("notes_encrypted", sa.LargeBinary, nullable=True),
sa.Column(
"created_at",
sa.DateTime(timezone=True),
nullable=False,
server_default=sa.func.now(),
),
sa.Column(
"updated_at",
sa.DateTime(timezone=True),
nullable=False,
server_default=sa.func.now(),
),
sa.Column("last_confirmed_at", sa.DateTime(timezone=True), nullable=True),
)
op.create_index(
"memory_relations_user_subject_idx",
"memory_relations",
["user_id", "subject_label"],
)
op.create_index(
"memory_relations_user_predicate_idx",
"memory_relations",
["user_id", "predicate"],
)
def downgrade() -> None:
op.drop_index("memory_relations_user_predicate_idx", "memory_relations")
op.drop_index("memory_relations_user_subject_idx", "memory_relations")
op.drop_table("memory_relations")

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"""Rename agents to scouts.
Revision ID: 007
Revises: d6e3f4a5b6c7
Create Date: 2026-05-15
Renames the entire agents subsystem identifiers to scouts.
Pre-1.0 — no data preservation concerns beyond ALTER TABLE rename.
"""
from typing import Sequence, Union
from alembic import op
revision: str = "007"
down_revision: Union[str, None] = "d6e3f4a5b6c7"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
# Tables
op.rename_table("local_agent_configs", "local_scout_configs")
op.rename_table("cloud_agent_configs", "cloud_scout_configs")
op.rename_table("agent_run_logs", "scout_run_logs")
# Columns
op.alter_column("local_scout_configs", "agent_config", new_column_name="scout_config")
op.alter_column("scout_run_logs", "agent_id", new_column_name="scout_id")
op.alter_column("scout_run_logs", "agent_type", new_column_name="scout_type")
def downgrade() -> None:
op.alter_column("scout_run_logs", "scout_type", new_column_name="agent_type")
op.alter_column("scout_run_logs", "scout_id", new_column_name="agent_id")
op.alter_column("local_scout_configs", "scout_config", new_column_name="agent_config")
op.rename_table("scout_run_logs", "agent_run_logs")
op.rename_table("cloud_scout_configs", "cloud_agent_configs")
op.rename_table("local_scout_configs", "local_agent_configs")

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"""Scout triage queue + cloud_scout_configs alterations.
Revision ID: 008
Revises: 007
Create Date: 2026-05-16
"""
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
revision: str = "008"
down_revision: Union[str, None] = "007"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
op.create_table(
"scout_triage_queue",
sa.Column("id", sa.Uuid(as_uuid=False), primary_key=True),
sa.Column("user_id", sa.Uuid(as_uuid=False), sa.ForeignKey("users.id", ondelete="CASCADE"), nullable=False, index=True),
sa.Column("scout_id", sa.Uuid(as_uuid=False), sa.ForeignKey("cloud_scout_configs.id", ondelete="CASCADE"), nullable=False),
sa.Column("source_type", sa.String(50), nullable=False),
sa.Column("source_msg_ref", sa.String(255), nullable=False),
sa.Column("triage_verdict", sa.String(20), nullable=False),
sa.Column("triage_reason", sa.Text, nullable=True),
sa.Column("status", sa.String(20), nullable=False, server_default="queued"),
sa.Column("triaged_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.func.now()),
sa.Column("delivered_at", sa.DateTime(timezone=True), nullable=True),
sa.Column("acked_at", sa.DateTime(timezone=True), nullable=True),
sa.Column("expires_at", sa.DateTime(timezone=True), nullable=False),
sa.UniqueConstraint("scout_id", "source_msg_ref", name="uq_scout_triage_queue_scout_msg"),
)
op.create_index("ix_scout_triage_queue_user_status", "scout_triage_queue", ["user_id", "status"])
op.create_index(
"ix_scout_triage_queue_expires_active",
"scout_triage_queue",
["expires_at"],
postgresql_where=sa.text("status != 'acked'"),
)
op.add_column("cloud_scout_configs", sa.Column("auto_trash_spam", sa.Boolean(), nullable=False, server_default=sa.text("false")))
op.add_column("cloud_scout_configs", sa.Column("gmail_history_id", sa.String(64), nullable=True))
op.add_column("cloud_scout_configs", sa.Column("gmail_watch_expires_at", sa.DateTime(timezone=True), nullable=True))
op.add_column("cloud_scout_configs", sa.Column("device_inactivity_pause_days", sa.Integer(), nullable=False, server_default="14"))
def downgrade() -> None:
op.drop_column("cloud_scout_configs", "device_inactivity_pause_days")
op.drop_column("cloud_scout_configs", "gmail_watch_expires_at")
op.drop_column("cloud_scout_configs", "gmail_history_id")
op.drop_column("cloud_scout_configs", "auto_trash_spam")
op.drop_index("ix_scout_triage_queue_expires_active", table_name="scout_triage_queue")
op.drop_index("ix_scout_triage_queue_user_status", table_name="scout_triage_queue")
op.drop_table("scout_triage_queue")

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@@ -0,0 +1,25 @@
"""Add gmail_address to cloud_scout_configs.
Revision ID: 009
Revises: 008
Create Date: 2026-05-16
"""
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
revision: str = "009"
down_revision: Union[str, None] = "008"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
op.add_column("cloud_scout_configs", sa.Column("gmail_address", sa.String(320), nullable=True))
def downgrade() -> None:
op.drop_column("cloud_scout_configs", "gmail_address")

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@@ -0,0 +1,38 @@
"""add extraction_queue
Revision ID: 1f5975a4f3f4
Revises: 005
Create Date: 2026-04-16 17:26:25.790870
"""
from __future__ import annotations
from typing import Sequence, Union
from alembic import op
import sqlalchemy as sa
# revision identifiers, used by Alembic.
revision: str = '1f5975a4f3f4'
down_revision: Union[str, None] = '005'
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
op.create_table(
'extraction_queue',
sa.Column('id', sa.Uuid(as_uuid=False), nullable=False),
sa.Column('user_id', sa.Uuid(as_uuid=False), nullable=False),
sa.Column('episode_id', sa.Uuid(as_uuid=False), nullable=True),
sa.Column('created_at', sa.DateTime(timezone=True), server_default=sa.text('now()'), nullable=False),
sa.ForeignKeyConstraint(['user_id'], ['users.id'], ondelete='CASCADE'),
sa.PrimaryKeyConstraint('id'),
)
op.create_index(op.f('ix_extraction_queue_user_id'), 'extraction_queue', ['user_id'], unique=False)
def downgrade() -> None:
op.drop_index(op.f('ix_extraction_queue_user_id'), table_name='extraction_queue')
op.drop_table('extraction_queue')

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@@ -0,0 +1,30 @@
"""add name and surname to users table
Revision ID: 818478c251dc
Revises: 004
Create Date: 2026-03-10 15:10:42.811947
"""
from __future__ import annotations
from typing import Sequence, Union
from alembic import op
import sqlalchemy as sa
# revision identifiers, used by Alembic.
revision: str = '818478c251dc'
down_revision: Union[str, None] = '004'
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
op.add_column('users', sa.Column('name', sa.String(length=100), nullable=True))
op.add_column('users', sa.Column('surname', sa.String(length=100), nullable=True))
def downgrade() -> None:
op.drop_column('users', 'surname')
op.drop_column('users', 'name')

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@@ -0,0 +1,92 @@
"""Deprecate backend agent config tables.
The Electron client is now the source of truth for agent configuration
(directory, extract targets, batch interval, custom prompt). Backend keeps
billing checks and trigger/run logs only.
Revision ID: 9a1f2d0b6c7e
Revises: 818478c251dc
Create Date: 2026-03-16
"""
from __future__ import annotations
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
from sqlalchemy.dialects import postgresql
revision: str = "9a1f2d0b6c7e"
down_revision: Union[str, None] = "818478c251dc"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
bind = op.get_bind()
inspector = sa.inspect(bind)
existing = set(inspector.get_table_names())
if "cloud_agent_configs" in existing:
op.drop_index("ix_cloud_agent_configs_user_id", table_name="cloud_agent_configs")
op.drop_table("cloud_agent_configs")
if "local_agent_configs" in existing:
op.drop_index("ix_local_agent_configs_user_id", table_name="local_agent_configs")
op.drop_table("local_agent_configs")
def downgrade() -> None:
op.create_table(
"local_agent_configs",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("device_id", sa.String(255), nullable=False),
sa.Column("name", sa.String(255), nullable=False),
sa.Column("directory_paths", sa.JSON, nullable=False, server_default="[]"),
sa.Column("data_types", sa.JSON, nullable=False, server_default="[]"),
sa.Column("prompt_template", sa.Text, nullable=False, server_default=""),
sa.Column("file_extensions", sa.JSON, nullable=False, server_default="[]"),
sa.Column("schedule_cron", sa.String(100), nullable=False, server_default="0 */6 * * *"),
sa.Column("enabled", sa.Boolean, nullable=False, server_default=sa.true()),
sa.Column("last_run_at", sa.DateTime(timezone=True), nullable=True),
sa.Column("created_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.Column("updated_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
)
op.create_index("ix_local_agent_configs_user_id", "local_agent_configs", ["user_id"])
op.execute(
"""
DO $$ BEGIN
CREATE TYPE cloud_provider AS ENUM ('gmail', 'teams', 'outlook');
EXCEPTION WHEN duplicate_object THEN NULL;
END $$;
"""
)
op.create_table(
"cloud_agent_configs",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column(
"provider",
postgresql.ENUM("gmail", "teams", "outlook", name="cloud_provider", create_type=False),
nullable=False,
),
sa.Column("name", sa.String(255), nullable=False),
sa.Column("data_types", sa.JSON, nullable=False, server_default="[]"),
sa.Column("prompt_template", sa.Text, nullable=False, server_default=""),
sa.Column("oauth_token_encrypted", sa.Text, nullable=True),
sa.Column("filter_config", sa.JSON, nullable=True),
sa.Column("schedule_cron", sa.String(100), nullable=False, server_default="0 */6 * * *"),
sa.Column("enabled", sa.Boolean, nullable=False, server_default=sa.true()),
sa.Column("last_run_at", sa.DateTime(timezone=True), nullable=True),
sa.Column("created_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.Column("updated_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
)
op.create_index("ix_cloud_agent_configs_user_id", "cloud_agent_configs", ["user_id"])

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@@ -0,0 +1,107 @@
"""Restore agent config tables and add agent_config column.
9a1f2d0b6c7e dropped local_agent_configs and cloud_agent_configs, but both
ORM models are still active. This migration recreates them with agent_config
added to local_agent_configs.
Revision ID: a3b9c0d1e2f3
Revises: 9a1f2d0b6c7e
Create Date: 2026-04-07 00:00:00.000000
"""
from __future__ import annotations
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
from sqlalchemy.dialects import postgresql
# revision identifiers, used by Alembic.
revision: str = "a3b9c0d1e2f3"
down_revision: Union[str, None] = "9a1f2d0b6c7e"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
# Recreate enum types (idempotent — they may already exist from migration 003)
op.execute("""
DO $$ BEGIN
CREATE TYPE agent_type AS ENUM ('local', 'cloud');
EXCEPTION WHEN duplicate_object THEN NULL;
END $$;
""")
op.execute("""
DO $$ BEGIN
CREATE TYPE agent_run_status AS ENUM ('running', 'success', 'error', 'partial');
EXCEPTION WHEN duplicate_object THEN NULL;
END $$;
""")
op.execute("""
DO $$ BEGIN
CREATE TYPE cloud_provider AS ENUM ('gmail', 'teams', 'outlook');
EXCEPTION WHEN duplicate_object THEN NULL;
END $$;
""")
bind = op.get_bind()
inspector = sa.inspect(bind)
existing = set(inspector.get_table_names())
# ── local_agent_configs (with agent_config column) ────────────────────
if "local_agent_configs" not in existing:
op.create_table(
"local_agent_configs",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("device_id", sa.String(255), nullable=False),
sa.Column("name", sa.String(255), nullable=False),
sa.Column("directory_paths", sa.JSON, nullable=False, server_default="[]"),
sa.Column("data_types", sa.JSON, nullable=False, server_default="[]"),
sa.Column("prompt_template", sa.Text, nullable=False, server_default=""),
sa.Column("agent_config", sa.JSON, nullable=True),
sa.Column("file_extensions", sa.JSON, nullable=False, server_default="[]"),
sa.Column("schedule_cron", sa.String(100), nullable=False, server_default="0 */6 * * *"),
sa.Column("enabled", sa.Boolean, nullable=False, server_default=sa.true()),
sa.Column("last_run_at", sa.DateTime(timezone=True), nullable=True),
sa.Column("created_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.Column("updated_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
)
op.create_index("ix_local_agent_configs_user_id", "local_agent_configs", ["user_id"])
# ── cloud_agent_configs ───────────────────────────────────────────────
if "cloud_agent_configs" not in existing:
op.create_table(
"cloud_agent_configs",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column(
"provider",
postgresql.ENUM("gmail", "teams", "outlook", name="cloud_provider", create_type=False),
nullable=False,
),
sa.Column("name", sa.String(255), nullable=False),
sa.Column("data_types", sa.JSON, nullable=False, server_default="[]"),
sa.Column("prompt_template", sa.Text, nullable=False, server_default=""),
sa.Column("oauth_token_encrypted", sa.Text, nullable=True),
sa.Column("filter_config", sa.JSON, nullable=True),
sa.Column("schedule_cron", sa.String(100), nullable=False, server_default="0 */6 * * *"),
sa.Column("enabled", sa.Boolean, nullable=False, server_default=sa.true()),
sa.Column("last_run_at", sa.DateTime(timezone=True), nullable=True),
sa.Column("created_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.Column("updated_at", sa.DateTime(timezone=True), nullable=False, server_default=sa.text("now()")),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
)
op.create_index("ix_cloud_agent_configs_user_id", "cloud_agent_configs", ["user_id"])
def downgrade() -> None:
op.drop_index("ix_cloud_agent_configs_user_id", table_name="cloud_agent_configs")
op.drop_table("cloud_agent_configs")
op.drop_index("ix_local_agent_configs_user_id", table_name="local_agent_configs")
op.drop_table("local_agent_configs")

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@@ -0,0 +1,56 @@
"""Add oauth_accounts table, nullable password_hash, avatar_url to users.
Revision ID: b4c0d1e2f3a4
Revises: a3b9c0d1e2f3
Create Date: 2026-04-10 00:00:00.000000
"""
from __future__ import annotations
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
from sqlalchemy.dialects import postgresql
# revision identifiers, used by Alembic.
revision: str = "b4c0d1e2f3a4"
down_revision: Union[str, None] = "a3b9c0d1e2f3"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
# ── users: make password_hash nullable (social users have no password) ──
op.alter_column("users", "password_hash", existing_type=sa.String(255), nullable=True)
# ── users: add avatar_url ─────────────────────────────────────────────
op.add_column("users", sa.Column("avatar_url", sa.String(2048), nullable=True))
# ── oauth_accounts ────────────────────────────────────────────────────
op.create_table(
"oauth_accounts",
sa.Column("id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=False), nullable=False),
sa.Column("provider", sa.String(50), nullable=False),
sa.Column("provider_user_id", sa.String(255), nullable=False),
sa.Column("provider_email", sa.String(255), nullable=True),
sa.Column(
"created_at",
sa.DateTime(timezone=True),
nullable=False,
server_default=sa.text("now()"),
),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(["user_id"], ["users.id"], ondelete="CASCADE"),
sa.UniqueConstraint("provider", "provider_user_id", name="uq_oauth_provider_user"),
)
op.create_index("ix_oauth_accounts_user_id", "oauth_accounts", ["user_id"])
def downgrade() -> None:
op.drop_index("ix_oauth_accounts_user_id", table_name="oauth_accounts")
op.drop_table("oauth_accounts")
op.drop_column("users", "avatar_url")
op.alter_column("users", "password_hash", existing_type=sa.String(255), nullable=False)

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@@ -0,0 +1,31 @@
"""Add onboarding_completed_at column to users table.
Revision ID: c5d1e2f3a4b5
Revises: b4c0d1e2f3a4
Create Date: 2026-04-11 00:00:00.000000
"""
from __future__ import annotations
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
# revision identifiers, used by Alembic.
revision: str = "c5d1e2f3a4b5"
down_revision: Union[str, None] = "b4c0d1e2f3a4"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
op.add_column(
"users",
sa.Column("onboarding_completed_at", sa.DateTime(timezone=True), nullable=True),
)
def downgrade() -> None:
op.drop_column("users", "onboarding_completed_at")

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@@ -0,0 +1,46 @@
"""Add token tracking columns for folder integration.
Revision ID: d6e3f4a5b6c7
Revises: 006
Create Date: 2026-05-11 00:00:00.000000
"""
from __future__ import annotations
from typing import Sequence, Union
import sqlalchemy as sa
from alembic import op
from sqlalchemy.dialects.postgresql import UUID
# revision identifiers, used by Alembic.
revision: str = "d6e3f4a5b6c7"
down_revision: Union[str, None] = "006"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
op.add_column(
"agent_run_logs",
sa.Column("tokens_used", sa.Integer(), nullable=False, server_default="0"),
)
op.create_table(
"monthly_token_usage",
sa.Column("user_id", UUID(as_uuid=False), sa.ForeignKey("users.id", ondelete="CASCADE"), nullable=False),
sa.Column("year_month", sa.String(7), nullable=False),
sa.Column("feature", sa.String(64), nullable=False),
sa.Column("tokens_used", sa.Integer(), nullable=False, server_default="0"),
sa.PrimaryKeyConstraint("user_id", "year_month", "feature"),
)
op.create_index(
"ix_monthly_token_usage_user_month",
"monthly_token_usage",
["user_id", "year_month"],
)
def downgrade() -> None:
op.drop_index("ix_monthly_token_usage_user_month", table_name="monthly_token_usage")
op.drop_table("monthly_token_usage")
op.drop_column("agent_run_logs", "tokens_used")

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@@ -0,0 +1,34 @@
"""avatar_url_varchar_to_text
Revision ID: e04100e88ace
Revises: c5d1e2f3a4b5
Create Date: 2026-04-13 09:13:06.733674
"""
from __future__ import annotations
from typing import Sequence, Union
from alembic import op
import sqlalchemy as sa
# revision identifiers, used by Alembic.
revision: str = 'e04100e88ace'
down_revision: Union[str, None] = 'c5d1e2f3a4b5'
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
op.alter_column('users', 'avatar_url',
existing_type=sa.VARCHAR(length=2048),
type_=sa.Text(),
existing_nullable=True)
def downgrade() -> None:
op.alter_column('users', 'avatar_url',
existing_type=sa.Text(),
type_=sa.VARCHAR(length=2048),
existing_nullable=True)

0
api/app/__init__.py Normal file
View File

View File

@@ -0,0 +1,5 @@
"""Expose tool modules used by deep orchestrator-worker graphs."""
from app.agents import filesystem_agent, timeline_agent, note_agent, project_agent, task_agent
__all__ = ["filesystem_agent", "timeline_agent", "note_agent", "project_agent", "task_agent"]

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@@ -0,0 +1,52 @@
"""Client agent — read-only tools for the clients table."""
from __future__ import annotations
import json
from typing import Any
from langchain_core.tools import tool
from app.core.ws_context import execute_on_client
@tool
async def list_clients(search: str = "", limit: int = 20) -> str:
"""List clients, optionally filtered by a name/email substring search.
search: optional substring to match against client name or email.
limit: max rows to return (default 20).
"""
filters: dict[str, Any] = {"limit": limit}
if search:
filters["search"] = search
result = await execute_on_client(action="select", table="clients", filters=filters)
rows = result.get("rows", [])
if not rows:
return "No clients found."
lines = [
f"- {r.get('name', '?')} (id: {r.get('id')}, email: {r.get('email', '')}, "
f"company: {r.get('company', '')})"
for r in rows
]
return f"Found {len(rows)} client(s):\n" + "\n".join(lines)
@tool
async def get_client(id: str) -> str:
"""Get full details for one client by UUID.
id: the client's UUID.
"""
if not id:
return "Client id is required."
result = await execute_on_client(action="get", table="clients", data={"id": id})
row = result.get("row") or result.get("rows", [None])[0] if result else None
if not row:
return f"Client '{id}' not found."
return f"Client details:\n{json.dumps(row, ensure_ascii=False, indent=2)}"
CLIENT_TOOLS: list[Any] = [list_clients, get_client]

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@@ -0,0 +1,194 @@
"""Filesystem agent — tools for reading local directories and files on Electron.
These tools delegate to the Electron client via ``execute_on_client()`` using
the same WS tool-call round-trip pattern as CRUD tools. The Electron app
handles actual disk I/O and responds with ``tool_result`` frames.
"""
from __future__ import annotations
import os
import re
from pathlib import Path
from typing import Any
from langchain_core.tools import tool
from app.core.ws_context import execute_on_client
# Max characters returned by read_file_content in journey (exploration) tools.
# The journey only needs to understand file structure, not full content.
_JOURNEY_READ_MAX_CHARS: int = 4000
def _resolve_path(path: str, base: str) -> str:
"""Resolve *path* against *base* when *path* is relative.
The LLM often passes ``"."`` meaning "the configured directory".
Without this, Electron resolves ``"."`` relative to its own CWD instead
of the user's chosen directory.
"""
if os.path.isabs(path):
return path
return str(Path(base) / path)
@tool
async def list_directory(path: str) -> str:
"""List files and folders in a local directory on the user's device.
Returns a formatted listing of entries with name, type (file/directory),
and full path.
"""
result = await execute_on_client(
action="list_directory",
data={"path": path},
)
entries: list[dict[str, Any]] = result.get("entries", [])
if not entries:
return f"Directory '{path}' is empty or does not exist."
lines: list[str] = []
for entry in entries:
entry_type = entry.get("type", "unknown")
entry_name = entry.get("name", "")
entry_path = entry.get("path", "")
lines.append(f"- [{entry_type}] {entry_name} ({entry_path})")
return f"Directory listing for '{path}' ({len(entries)} entries):\n" + "\n".join(lines)
@tool
async def read_file_content(path: str) -> str:
"""Read the text content of a local file on the user's device.
Returns the file content as a string. Large files may be truncated
by the Electron client.
"""
result = await execute_on_client(
action="read_file_content",
data={"path": path},
)
content: str = result.get("content", "")
if not content:
return f"File '{path}' is empty or could not be read."
return content
@tool
async def get_file_metadata(path: str) -> str:
"""Get metadata for a local file: size, creation date, modification date, extension.
Returns a formatted summary of the file's metadata.
"""
result = await execute_on_client(
action="get_file_metadata",
data={"path": path},
)
size = result.get("size", "unknown")
created = result.get("createdAt", "unknown")
modified = result.get("modifiedAt", "unknown")
extension = result.get("extension", "unknown")
name = result.get("name", path)
return (
f"File: {name}\n"
f" Extension: {extension}\n"
f" Size: {size} bytes\n"
f" Created: {created}\n"
f" Modified: {modified}"
)
FILESYSTEM_TOOLS: list[Any] = [
list_directory,
read_file_content,
get_file_metadata,
]
def make_directory_tools(base_directory: str) -> list[Any]:
"""Return filesystem tools that resolve relative paths against *base_directory*.
Use this instead of ``FILESYSTEM_TOOLS`` whenever you know the user's target
directory upfront (e.g., journey setup sessions). Relative paths like ``"."``
from the LLM are resolved to the correct absolute path before being sent to
the Electron client, preventing it from falling back to its own CWD.
"""
def _compact_for_journey(raw: str) -> str:
"""Strip HTML noise and truncate for journey exploration.
The journey LLM only needs to understand file structure (headers,
first paragraphs). Full CSS/style blocks are pure noise that eat
up context window budget.
"""
text = re.sub(r"<style[^>]*>.*?</style>", "", raw, flags=re.DOTALL | re.IGNORECASE)
text = re.sub(r"<script[^>]*>.*?</script>", "", text, flags=re.DOTALL | re.IGNORECASE)
text = re.sub(r"<!--.*?-->", "", text, flags=re.DOTALL)
if len(text) > _JOURNEY_READ_MAX_CHARS:
text = text[:_JOURNEY_READ_MAX_CHARS] + "\n[…truncated for exploration]"
return text
@tool
async def list_directory(path: str) -> str: # noqa: F811
"""List files and folders in a local directory on the user's device.
Returns a formatted listing of entries with name, type (file/directory),
and full path.
"""
resolved = _resolve_path(path, base_directory)
result = await execute_on_client(
action="list_directory",
data={"path": resolved},
)
entries: list[dict[str, Any]] = result.get("entries", [])
if not entries:
return f"Directory '{resolved}' is empty or does not exist."
lines: list[str] = []
for entry in entries:
entry_type = entry.get("type", "unknown")
entry_name = entry.get("name", "")
entry_path = entry.get("path", "")
lines.append(f"- [{entry_type}] {entry_name} ({entry_path})")
return f"Directory listing for '{resolved}' ({len(entries)} entries):\n" + "\n".join(lines)
@tool
async def read_file_content(path: str) -> str: # noqa: F811
"""Read the text content of a local file on the user's device.
Returns the file content as a string. Large files may be truncated
by the Electron client.
"""
resolved = _resolve_path(path, base_directory)
result = await execute_on_client(
action="read_file_content",
data={"path": resolved},
)
content: str = result.get("content", "")
if not content:
return f"File '{resolved}' is empty or could not be read."
return _compact_for_journey(content)
@tool
async def get_file_metadata(path: str) -> str: # noqa: F811
"""Get metadata for a local file: size, creation date, modification date, extension.
Returns a formatted summary of the file's metadata.
"""
resolved = _resolve_path(path, base_directory)
result = await execute_on_client(
action="get_file_metadata",
data={"path": resolved},
)
size = result.get("size", "unknown")
created = result.get("createdAt", "unknown")
modified = result.get("modifiedAt", "unknown")
extension = result.get("extension", "unknown")
name = result.get("name", resolved)
return (
f"File: {name}\n"
f" Extension: {extension}\n"
f" Size: {size} bytes\n"
f" Created: {created}\n"
f" Modified: {modified}"
)
return [list_directory, read_file_content, get_file_metadata]

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@@ -0,0 +1,168 @@
"""Scoped file-read and search tools for the project folder feature."""
from __future__ import annotations
from langchain_core.tools import tool
from app.core.folder_indexer import _extract_docx_text, _extract_pdf_text
from app.core.ws_context import execute_on_client
# Cap returned slice size to keep tool output under control.
_MAX_RETURN_CHARS = 50_000
_MAX_SEARCH_MATCHES = 20
def _is_unsafe_path(rel: str) -> bool:
if not rel:
return True
norm = rel.replace("\\", "/")
if norm.startswith("/"):
return True
# Windows drive letter
if len(rel) >= 2 and rel[1] == ":":
return True
parts = norm.split("/")
return ".." in parts
async def _fetch_file(project_id: str, relative_path: str, offset: int, length: int) -> dict:
"""Return the raw Electron tool_result dict for a file read."""
return await execute_on_client(
action="read_project_folder_file",
data={
"projectId": project_id,
"relativePath": relative_path,
"offset": offset,
"length": length,
},
)
def _decode(result: dict) -> tuple[str, str, int]:
"""Decode a tool_result into (text, kind, total_size). For pdf/docx,
extracts text from base64. For images, returns a placeholder string.
For text, content is already a sliced utf-8 string.
"""
kind = result.get("kind", "text")
content = result.get("content", "") or ""
total = int(result.get("totalSize", 0) or 0)
if kind == "image":
return ("[Image file — cannot be navigated as text. See manifest summary.]", kind, total)
if kind == "pdf":
return (_extract_pdf_text(content), kind, total)
if kind == "docx":
return (_extract_docx_text(content), kind, total)
return (content, kind, total)
@tool
async def read_project_folder_file(
project_id: str,
relative_path: str,
offset: int = 0,
length: int = _MAX_RETURN_CHARS,
) -> str:
"""Read a slice of a file inside the project's linked folder.
Args:
project_id: project ID.
relative_path: path relative to the linked folder root.
offset: char offset to start reading from (0 = beginning).
length: max chars to return. Default 50000. Use smaller values to save tokens.
Returns text content slice with a header showing position. Header tells you
when more content is available; call again with the suggested next offset.
For PDF / DOCX files the backend extracts text first, then applies offset/length
on the extracted text. For images returns a placeholder; navigate with the
manifest summary instead.
"""
if _is_unsafe_path(relative_path):
return "Access denied"
result = await _fetch_file(project_id, relative_path, offset, length)
text, kind, total_size = _decode(result)
if not text and kind in ("missing", "error"):
return f"File not found or unreadable: {relative_path}"
if kind in ("pdf", "docx"):
# Backend extracted full text — apply offset/length on chars.
sliced = text[offset:offset + length]
slice_end = min(offset + length, len(text))
header = (
f"[file={relative_path} kind={kind} offset={offset} end={slice_end} "
f"totalChars={len(text)}]"
)
if slice_end < len(text):
header += f"\n[More content available — call again with offset={slice_end}.]"
return header + "\n" + sliced
if kind == "text":
slice_end = offset + len(text)
header = (
f"[file={relative_path} kind=text offset={offset} end={slice_end} "
f"totalBytes={total_size}]"
)
if slice_end < total_size:
header += f"\n[More content available — call again with offset={slice_end}.]"
return header + "\n" + text
# image or unknown
return text
@tool
async def search_project_folder_file(
project_id: str,
relative_path: str,
query: str,
context_lines: int = 3,
) -> str:
"""Search a project folder file for a query string (case-insensitive substring).
Args:
project_id: project ID.
relative_path: path relative to the linked folder root.
query: text to search for.
context_lines: number of lines of context around each match (default 3).
Returns matching line ranges with surrounding context and 1-based line numbers.
Capped at 20 matches; if more exist the header shows the total.
Works on text, code, markdown, PDF (extracted), and DOCX (extracted).
Images and binary files are not searchable.
"""
if _is_unsafe_path(relative_path):
return "Access denied"
if not query:
return "Empty query."
# For text we still need full file; pass length=very large.
result = await _fetch_file(project_id, relative_path, offset=0, length=10_000_000)
text, kind, _ = _decode(result)
if not text and kind in ("missing", "error"):
return f"File not found or unreadable: {relative_path}"
if kind == "image":
return "Cannot search inside images."
lines = text.splitlines()
q = query.lower()
matches = [i for i, line in enumerate(lines) if q in line.lower()]
if not matches:
return f"No matches for '{query}' in {relative_path}."
shown = matches[:_MAX_SEARCH_MATCHES]
snippets: list[str] = []
for i in shown:
start = max(0, i - context_lines)
end = min(len(lines), i + context_lines + 1)
block = "\n".join(f"{n + 1:5d}: {lines[n]}" for n in range(start, end))
snippets.append(block)
header = f"[file={relative_path} matches={len(matches)} showing={len(shown)} query='{query}']"
body = "\n---\n".join(snippets)
return header + "\n" + body
FOLDER_TOOLS = [read_project_folder_file, search_project_folder_file]

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"""Note agent — Markdown note management (list, get, create, update, propose edit)."""
from __future__ import annotations
import asyncio
import re
from typing import Any
from langchain_core.tools import tool
from app.core.note_summarizer import generate_note_summary
from app.core.ws_context import execute_on_client
_UUID_RE = re.compile(
r"^[0-9a-fA-F]{8}-[0-9a-fA-F]{4}-[1-5][0-9a-fA-F]{3}-[89abAB][0-9a-fA-F]{3}-[0-9a-fA-F]{12}$"
)
def _is_uuid(value: str) -> bool:
return bool(_UUID_RE.match(value))
def _fmt_summary(row: dict) -> str:
summary = (row.get("aiSummary") or row.get("ai_summary") or "").strip()
if summary:
return f"{summary}"
snippet = (row.get("content") or "")[:120].replace("\n", " ").strip()
return f"{snippet}" if snippet else ""
@tool
async def list_notes(project_id: str = "") -> str:
"""List notes with AI summaries, optionally scoped to a project by project_id.
Returns id, title, and ai_summary for each note so you can decide which
note to read in full with get_note before creating or updating.
"""
normalized_project_id = project_id if (project_id and _is_uuid(project_id)) else ""
result = await execute_on_client(
action="select",
table="notes",
filters={"projectId": normalized_project_id or None},
)
rows = result.get("rows", [])
if not rows:
return "No notes found."
lines = [f" - [{r['id']}] {r['title']}{_fmt_summary(r)}" for r in rows]
return f"Found {len(rows)} note(s):\n" + "\n".join(lines)
@tool
async def get_note(note_id: str) -> str:
"""Fetch a single note by its UUID to read its full Markdown content."""
result = await execute_on_client(action="get", table="notes", data={"id": note_id})
row = result.get("row")
if not row:
return f"Note {note_id} not found."
return f"Note '{row['title']}' (id: {row['id']}):\n\n{row['content']}"
@tool
async def create_note(
title: str,
content: str,
project_id: str = "",
) -> str:
"""Create a new note.
title: note heading (required)
content: Markdown body text (required)
project_id: optional UUID linking this note to a project
"""
result = await execute_on_client(
action="insert",
table="notes",
data={
"title": title,
"content": content,
"projectId": project_id or None,
},
)
row = result["row"]
note_id: str = row["id"]
# Generate summary asynchronously — fire-and-forget.
asyncio.create_task(_refresh_summary(note_id, title, content))
return f"Note created: '{row['title']}' (id: {note_id})."
@tool
async def update_note(
note_id: str,
title: str = "",
content: str = "",
) -> str:
"""Update an existing note directly (no approval required).
Use propose_note_edit instead when human review is needed.
note_id: UUID of the note (required)
If you need to preserve existing content, call get_note first.
"""
updates: dict[str, Any] = {}
if title:
updates["title"] = title
if content:
updates["content"] = content
result = await execute_on_client(
action="update",
table="notes",
data={"id": note_id, "updates": updates},
)
row = result["row"]
if content:
new_title = title or row.get("title", "")
asyncio.create_task(_refresh_summary(note_id, new_title, content))
return f"Note updated: '{row['title']}' (id: {row['id']})."
@tool
async def propose_note_edit(
note_id: str,
edit_type: str,
proposed_content: str,
reasoning: str = "",
anchor_before: str = "",
anchor_text: str = "",
agent_id: str = "",
run_id: str = "",
) -> str:
"""Propose an AI edit to an existing note, pending human approval.
Use this instead of update_note when review_required is true.
The user will see the proposal highlighted before it is merged.
note_id: UUID of the target note (required)
edit_type: 'append' | 'insert' | 'replace'
- append: adds proposed_content at the end of the note
- insert: inserts proposed_content immediately after anchor_before text
- replace: replaces the first occurrence of anchor_text with proposed_content
proposed_content: the new Markdown text to add or substitute (required)
reasoning: brief explanation shown to the user (recommended)
anchor_before: for 'insert' — the text snippet that precedes the insertion point
anchor_text: for 'replace' — the exact text to be replaced
agent_id: agent identifier (for traceability)
run_id: run identifier (for traceability)
"""
if edit_type not in ("append", "insert", "replace"):
return f"Invalid edit_type '{edit_type}'. Use 'append', 'insert', or 'replace'."
result = await execute_on_client(
action="propose_note_edit",
data={
"noteId": note_id,
"type": edit_type,
"proposedContent": proposed_content,
"reasoning": reasoning or None,
"anchorBefore": anchor_before or None,
"anchorText": anchor_text or None,
"agentId": agent_id or None,
"runId": run_id or None,
},
)
edit_id = result.get("id", "?")
return (
f"Edit proposal created (id: {edit_id}) for note {note_id}. "
f"Status: pending user approval."
)
@tool
async def delete_note(note_id: str) -> str:
"""Delete a note permanently by its UUID."""
await execute_on_client(action="delete", table="notes", data={"id": note_id})
return f"Note {note_id} deleted."
async def _refresh_summary(note_id: str, title: str, content: str) -> None:
"""Generate and persist the AI summary for a note. Fire-and-forget."""
try:
summary = await generate_note_summary(title, content)
if summary:
await execute_on_client(
action="update",
table="notes",
data={
"id": note_id,
"updates": {
"aiSummary": summary,
"aiSummaryUpdatedAt": int(__import__("time").time() * 1000),
},
},
)
except Exception:
pass # fire-and-forget; errors logged by generate_note_summary
NOTE_TOOLS: list[Any] = [
list_notes,
get_note,
create_note,
update_note,
propose_note_edit,
delete_note,
]
NOTE_READ_TOOLS: list[Any] = [
list_notes,
get_note,
]

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"""Project agent — full lifecycle management (list, get, create, update, archive, delete)."""
from __future__ import annotations
from typing import Any
from langchain_core.tools import tool
from app.core.ws_context import execute_on_client
@tool
async def list_projects(
client_id: str = "",
include_archived: int = 0,
) -> str:
"""List projects, optionally filtered by client_id.
include_archived: 1 to include archived projects, 0 for active only (default).
"""
result = await execute_on_client(
action="select",
table="projects",
filters={
"clientId": client_id or None,
"includeArchived": bool(include_archived),
},
)
rows = result.get("rows", [])
if not rows:
return "No projects found."
lines = [f"- {r['name']} (status: {r['status']}, id: {r['id']})" for r in rows]
return f"Found {len(rows)} project(s):\n" + "\n".join(lines)
@tool
async def list_all_projects() -> str:
"""List every project regardless of client or status.
Use only when the user wants a complete cross-client overview.
"""
result = await execute_on_client(action="select", table="projects")
rows = result.get("rows", [])
if not rows:
return "No projects found."
lines = [f"- {r['name']} (status: {r['status']}, id: {r['id']})" for r in rows]
return f"All projects ({len(rows)}):\n" + "\n".join(lines)
@tool
async def get_project(project_id: str) -> str:
"""Fetch a single project by its UUID."""
result = await execute_on_client(action="get", table="projects", data={"id": project_id})
row = result.get("row")
if not row:
return f"Project {project_id} not found."
return (
f"Project: '{row['name']}' (id: {row['id']}, status: {row['status']}, "
f"clientId: {row.get('clientId', 'none')})"
)
@tool
async def create_project(
name: str,
client_id: str = "",
) -> str:
"""Create a new project.
name: human-readable project name (required)
client_id: optional UUID of the owning client
"""
result = await execute_on_client(
action="insert",
table="projects",
data={"name": name, "clientId": client_id or None},
)
row = result["row"]
return f"Project created: '{row['name']}' (id: {row['id']})"
@tool
async def update_project(
project_id: str,
name: str = "",
client_id: str = "",
status: str = "",
ai_summary: str = "",
) -> str:
"""Update a project. Only pass fields that should change.
project_id: UUID of the project (required)
status: active | archived
ai_summary: AI-generated summary text (populate only when explicitly requested)
"""
updates: dict[str, Any] = {}
if name:
updates["name"] = name
if client_id:
updates["clientId"] = client_id
if status:
updates["status"] = status
if ai_summary:
updates["aiSummary"] = ai_summary
result = await execute_on_client(
action="update",
table="projects",
data={"id": project_id, "updates": updates},
)
row = result["row"]
return f"Project updated: '{row['name']}' (id: {row['id']}, status: {row['status']})"
@tool
async def delete_project(project_id: str) -> str:
"""Permanently delete a project and orphan its tasks.
IMPORTANT: prefer update_project(status='archived') unless the user
has explicitly confirmed they want permanent deletion.
"""
await execute_on_client(action="delete", table="projects", data={"id": project_id})
return f"Project {project_id} permanently deleted."
PROJECT_TOOLS: list[Any] = [
list_projects,
list_all_projects,
get_project,
create_project,
update_project,
delete_project,
]
PROJECT_READ_TOOLS: list[Any] = [
list_projects,
list_all_projects,
get_project,
]

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"""Relations agent — read-only tool wrapping MemoryMiddleware.query_relations."""
from __future__ import annotations
from typing import Any
from langchain_core.tools import tool
from app.core.memory_middleware import MemoryMiddleware
from app.db import async_session
# Injected at tool-factory time by _brief_research_tools(); not a module-level global.
# Each tool closure captures the user_id bound at factory time.
def make_query_relations_tool(user_id: str, trace_id: str | None = None) -> Any:
"""Return a query_relations tool bound to *user_id*."""
@tool
async def query_relations(
subject_label: str = "",
predicate: str = "",
object_label: str = "",
limit: int = 10,
) -> str:
"""Query the relational memory graph for entity relationships.
Returns rows where subject ↔ predicate ↔ object match the given filters.
All parameters are optional — omit to retrieve all relations up to limit.
subject_label: entity label on the left side (e.g. a client name, "Acme Corp").
predicate: relationship type (e.g. "mentioned_in", "works_at", "related_to").
object_label: entity label on the right side (e.g. a project name, "Website Redesign").
limit: max rows to return (default 10).
"""
import logging
logger = logging.getLogger(__name__)
logger.info(
"relations_agent: query_relations trace=%s user=%s subject=%r predicate=%r object=%r",
trace_id or "-", user_id, subject_label, predicate, object_label,
)
async with async_session() as db:
memory = MemoryMiddleware(db)
rows = await memory.query_relations(
user_id=user_id,
subject=subject_label or None,
predicate=predicate or None,
object_=object_label or None,
limit=limit,
)
if not rows:
return "No relational memory entries found for the given filters."
lines = [
f"- {r.subject_label} —[{r.predicate}]→ {r.object_label}"
+ (f" (confidence: {r.confidence:.2f})" if r.confidence is not None else "")
for r in rows
]
return f"Found {len(rows)} relation(s):\n" + "\n".join(lines)
return query_relations

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"""Task agent — full CRUD for tasks and task comments."""
from __future__ import annotations
from datetime import datetime, timezone
import re
from typing import Any
from langchain_core.tools import tool
from app.core.ws_context import execute_on_client
_UUID_RE = re.compile(
r"^[0-9a-fA-F]{8}-[0-9a-fA-F]{4}-[1-5][0-9a-fA-F]{3}-[89abAB][0-9a-fA-F]{3}-[0-9a-fA-F]{12}$"
)
def _is_uuid(value: str) -> bool:
return bool(_UUID_RE.match(value))
# ── Task tools ────────────────────────────────────────────────────────
@tool
async def list_tasks(
project_id: str = "",
status: str = "",
priority: str = "",
assignee: str = "",
search: str = "",
order_by: str = "",
order_dir: str = "",
due_date_from: int = -1,
due_date_to: int = -1,
created_at_from: int = -1,
created_at_to: int = -1,
completed_at_from: int = -1,
completed_at_to: int = -1,
is_ai_suggested: int = -1,
limit: int = 50,
offset: int = 0,
) -> str:
"""List tasks with optional filters. Returns up to `limit` results (default 50).
project_id: UUID of the project to scope results to.
status: filter by status — todo | in_progress | done.
priority: filter by priority — high | medium | low.
assignee: substring to match against assignee names. OMIT unless the user explicitly
names a person or refers to themselves ("my tasks", "assigned to me", "mine").
Do NOT default to the current user.
search: substring search across title and description.
order_by: sort field — dueDate | priority | createdAt | completedAt.
order_dir: asc (default) | desc.
due_date_from / due_date_to: ms epoch range for dueDate. Use -1 to omit.
created_at_from / created_at_to: ms epoch range for createdAt. Use -1 to omit.
completed_at_from / completed_at_to: ms epoch range for completedAt. Use -1 to omit.
is_ai_suggested: 0 or 1 to filter by AI-suggested flag; -1 = any.
limit: max rows to return (default 50). Use with offset to paginate.
offset: skip first N rows (default 0).
Tip — combine *_from and *_to for a closed range; pass only one for open-ended.
Tip — prefer count_tasks for "how many" questions to avoid listing rows.
Tip — for natural-language windows ("today", "tomorrow", "this week", "last month", etc.)
take due_date_from / due_date_to verbatim from the DATE CONTEXT block in the system prompt;
do not compute boundaries from the current UTC instant.
"""
normalized_project_id = project_id if (project_id and _is_uuid(project_id)) else ""
filters: dict[str, Any] = {
"projectId": normalized_project_id or None,
"status": status or None,
"priority": priority or None,
"search": search or None,
"orderBy": order_by or None,
"orderDir": order_dir or None,
"limit": limit,
"offset": offset,
}
if assignee:
filters["assignee"] = assignee
if due_date_from != -1:
filters["dueDateFrom"] = due_date_from
if due_date_to != -1:
filters["dueDateTo"] = due_date_to
if created_at_from != -1:
filters["createdAtFrom"] = created_at_from
if created_at_to != -1:
filters["createdAtTo"] = created_at_to
if completed_at_from != -1:
filters["completedAtFrom"] = completed_at_from
if completed_at_to != -1:
filters["completedAtTo"] = completed_at_to
if is_ai_suggested != -1:
filters["isAiSuggested"] = is_ai_suggested
result = await execute_on_client(action="select", table="tasks", filters=filters)
rows = result.get("rows", [])
if not rows:
return "No tasks found matching the given filters."
lines = [
f"- {r['title']} (status: {r['status']}, priority: {r['priority']}, "
f"dueDate: {r.get('dueDate')}, completedAt: {r.get('completedAt')}, "
f"projectId: {r.get('projectId')}, id: {r['id']})"
for r in rows
]
return f"Found {len(rows)} task(s):\n" + "\n".join(lines)
@tool
async def count_tasks(
project_id: str = "",
status: str = "",
priority: str = "",
assignee: str = "",
search: str = "",
due_date_from: int = -1,
due_date_to: int = -1,
created_at_from: int = -1,
created_at_to: int = -1,
completed_at_from: int = -1,
completed_at_to: int = -1,
is_ai_suggested: int = -1,
) -> str:
"""Count tasks matching the given filters without returning rows.
Use this instead of list_tasks for "how many" questions — it is much cheaper.
Same filter parameters as list_tasks (no limit/offset/order_by needed).
assignee: OMIT unless the user explicitly names a person or refers to themselves
("my tasks"). Do NOT default to the current user.
due_date_from / due_date_to: ms epoch range for dueDate. Use -1 to omit.
created_at_from / created_at_to: ms epoch range for createdAt. Use -1 to omit.
completed_at_from / completed_at_to: ms epoch range for completedAt. Use -1 to omit.
Tip — for natural-language windows take due_date_from / due_date_to from the DATE CONTEXT block;
do not compute boundaries from the current UTC instant.
"""
normalized_project_id = project_id if (project_id and _is_uuid(project_id)) else ""
filters: dict[str, Any] = {
"projectId": normalized_project_id or None,
"status": status or None,
"priority": priority or None,
"search": search or None,
}
if assignee:
filters["assignee"] = assignee
if due_date_from != -1:
filters["dueDateFrom"] = due_date_from
if due_date_to != -1:
filters["dueDateTo"] = due_date_to
if created_at_from != -1:
filters["createdAtFrom"] = created_at_from
if created_at_to != -1:
filters["createdAtTo"] = created_at_to
if completed_at_from != -1:
filters["completedAtFrom"] = completed_at_from
if completed_at_to != -1:
filters["completedAtTo"] = completed_at_to
if is_ai_suggested != -1:
filters["isAiSuggested"] = is_ai_suggested
result = await execute_on_client(action="count", table="tasks", filters=filters)
return f"Task count: {result.get('count', 0)}"
@tool
async def create_task(
title: str,
description: str = "",
status: str = "todo",
priority: str = "medium",
assignees: str = "[]",
due_date: int = 0,
project_id: str = "",
is_ai_suggested: int = 0,
) -> str:
"""Create a new task.
title: task title (required)
description: optional details
status: todo | in_progress | done (default: todo)
priority: high | medium | low (default: medium)
assignees: JSON-encoded array of assignee names, e.g. '["Alice"]'
due_date: Unix timestamp in milliseconds; 0 means no due date
project_id: optional UUID of the parent project
is_ai_suggested: 1 if proactively suggested, 0 if user-requested
completedAt is set automatically when status is 'done'.
"""
result = await execute_on_client(
action="insert",
table="tasks",
data={
"title": title,
"description": description or None,
"status": status,
"priority": priority,
"assignee": assignees,
"dueDate": due_date or None,
"projectId": project_id or None,
"isAiSuggested": is_ai_suggested,
},
)
row = result["row"]
return (
f"Task created: '{row['title']}' "
f"(id: {row['id']}, status: {row['status']}, priority: {row['priority']}, projectId: {row.get('projectId')})"
)
@tool
async def update_task(
task_id: str,
title: str = "",
description: str = "",
status: str = "",
priority: str = "",
assignees: str = "",
due_date: int = -1,
project_id: str = "",
) -> str:
"""Update fields on an existing task. Only pass fields you want to change.
task_id: the task's UUID (required)
due_date: -1 means unchanged; 0 clears the due date; any positive value sets it
completedAt is managed automatically:
- setting status to 'done' records the current timestamp
- changing status away from 'done' clears completedAt
"""
updates: dict[str, Any] = {}
if title:
updates["title"] = title
if description:
updates["description"] = description
if status:
updates["status"] = status
if priority:
updates["priority"] = priority
if assignees:
updates["assignee"] = assignees
if due_date != -1:
updates["dueDate"] = due_date or None
if project_id:
updates["projectId"] = project_id
result = await execute_on_client(
action="update",
table="tasks",
data={"id": task_id, "updates": updates},
)
row = result["row"]
return f"Task updated: '{row['title']}' (id: {row['id']}, status: {row['status']}, projectId: {row.get('projectId')})"
@tool
async def delete_task(task_id: str) -> str:
"""Delete a task permanently by its UUID."""
await execute_on_client(action="delete", table="tasks", data={"id": task_id})
return f"Task {task_id} deleted."
@tool
async def list_tasks_due_today(user_timezone: str = "UTC", include_done: bool = False) -> str:
"""List all tasks whose due date falls on today's date.
user_timezone: IANA timezone name (e.g. 'Europe/Rome', 'America/New_York').
Always pass the user's timezone so 'today' is computed in their local time.
include_done: set True to also include already-completed tasks due today (default False).
"""
try:
from zoneinfo import ZoneInfo
tz = ZoneInfo(user_timezone or "UTC")
except Exception:
tz = timezone.utc
now_local = datetime.now(tz=tz)
start_dt = datetime(now_local.year, now_local.month, now_local.day, tzinfo=tz)
start_ms = int(start_dt.timestamp() * 1000)
end_ms = start_ms + 86_400_000 - 1
filters: dict[str, Any] = {"dueDateFrom": start_ms, "dueDateTo": end_ms}
if not include_done:
filters["status"] = "todo"
result = await execute_on_client(
action="select",
table="tasks",
filters=filters,
)
rows = result.get("rows", [])
if not rows:
return "No tasks are due today."
lines = [
f"- {r['title']} (priority: {r['priority']}, status: {r['status']}, "
f"projectId: {r.get('projectId')}, id: {r['id']})"
for r in rows
]
return f"Tasks due today ({len(rows)}):\n" + "\n".join(lines)
# ── Task comment tools ────────────────────────────────────────────────
@tool
async def list_task_comments(task_id: str) -> str:
"""List all comments on a task by its UUID."""
result = await execute_on_client(
action="select",
table="taskComments",
filters={"taskId": task_id},
)
rows = result.get("rows", [])
if not rows:
return f"No comments found for task {task_id}."
lines = [f"- [{r['author']}]: {r['content']} (id: {r['id']})" for r in rows]
return f"Found {len(rows)} comment(s):\n" + "\n".join(lines)
@tool
async def add_task_comment(task_id: str, author: str, content: str) -> str:
"""Add a comment to a task.
task_id: UUID of the task to comment on
author: name or ID of the comment author
content: comment text
"""
result = await execute_on_client(
action="insert",
table="taskComments",
data={"taskId": task_id, "author": author, "content": content},
)
row = result.get("row", {})
row_author = row.get("author", author)
row_task_id = row.get("taskId") or row.get("task_id") or task_id
row_comment_id = row.get("id", "unknown")
return f"Comment added by {row_author} on task {row_task_id} (comment id: {row_comment_id})."
@tool
async def delete_task_comment(comment_id: str) -> str:
"""Delete a task comment by its UUID."""
await execute_on_client(action="delete", table="taskComments", data={"id": comment_id})
return f"Comment {comment_id} deleted."
# ── Agent ─────────────────────────────────────────────────────────────
TASK_TOOLS: list[Any] = [
list_tasks,
count_tasks,
create_task,
update_task,
delete_task,
list_tasks_due_today,
list_task_comments,
add_task_comment,
delete_task_comment,
]
TASK_READ_TOOLS: list[Any] = [
list_tasks,
count_tasks,
list_tasks_due_today,
list_task_comments,
]

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@@ -0,0 +1,270 @@
"""Timeline agent — project milestone management (list, create, update, delete)."""
from __future__ import annotations
import re
from datetime import datetime, timezone
from typing import Any
from langchain_core.tools import tool
from app.core.ws_context import execute_on_client
_UUID_RE = re.compile(
r"^[0-9a-fA-F]{8}-[0-9a-fA-F]{4}-[1-5][0-9a-fA-F]{3}-[89abAB][0-9a-fA-F]{3}-[0-9a-fA-F]{12}$"
)
def _is_uuid(value: str) -> bool:
return bool(_UUID_RE.match(value))
@tool
async def list_timelines(
project_id: str = "",
type: str = "",
is_completed: int = -1,
is_ai_suggested: int = -1,
order_by: str = "",
order_dir: str = "",
date_from: int = -1,
date_to: int = -1,
created_at_from: int = -1,
created_at_to: int = -1,
completed_at_from: int = -1,
completed_at_to: int = -1,
limit: int = 50,
offset: int = 0,
) -> str:
"""List timeline events (milestones, checkpoints, activities) with optional filters.
project_id: UUID to scope results to a specific project.
type: filter by event type — milestone | checkpoint | activity.
is_completed: 0 = incomplete only, 1 = completed only, -1 = any (default).
is_ai_suggested: 0 or 1 to filter by AI-suggested flag; -1 = any.
order_by: sort field — date (default) | createdAt | completedAt.
order_dir: asc (default) | desc.
date_from / date_to: ms epoch range for the event date. Use -1 to omit.
created_at_from / created_at_to: ms epoch range for createdAt. Use -1 to omit.
completed_at_from / completed_at_to: ms epoch range for completedAt. Use -1 to omit.
limit: max rows to return (default 50). Use with offset to paginate.
offset: skip first N rows (default 0).
Tip — combine *_from and *_to for a closed range; pass only one for open-ended.
Tip — prefer count_timelines for "how many" questions to avoid listing rows.
Tip — for natural-language windows ("today", "this week", "last month", etc.)
take date_from / date_to verbatim from the DATE CONTEXT block in the system prompt;
do not compute boundaries from the current UTC instant.
"""
normalized_project_id = project_id if (project_id and _is_uuid(project_id)) else ""
filters: dict[str, Any] = {
"projectId": normalized_project_id or None,
"orderBy": order_by or None,
"orderDir": order_dir or None,
"limit": limit,
"offset": offset,
}
if type:
filters["type"] = type
if is_completed != -1:
filters["isCompleted"] = is_completed
if is_ai_suggested != -1:
filters["isAiSuggested"] = is_ai_suggested
if date_from != -1:
filters["dateFrom"] = date_from
if date_to != -1:
filters["dateTo"] = date_to
if created_at_from != -1:
filters["createdAtFrom"] = created_at_from
if created_at_to != -1:
filters["createdAtTo"] = created_at_to
if completed_at_from != -1:
filters["completedAtFrom"] = completed_at_from
if completed_at_to != -1:
filters["completedAtTo"] = completed_at_to
result = await execute_on_client(action="select", table="timelines", filters=filters)
rows = result.get("rows", [])
if not rows:
return "No timeline events found."
lines = [
f"- {r['title']} (date: {r['date']}, type: {r.get('type')}, "
f"completed: {bool(r.get('isCompleted'))}, completedAt: {r.get('completedAt')}, "
f"projectId: {r.get('projectId')}, id: {r['id']})"
for r in rows
]
return f"Found {len(rows)} timeline event(s):\n" + "\n".join(lines)
@tool
async def count_timelines(
project_id: str = "",
type: str = "",
is_completed: int = -1,
is_ai_suggested: int = -1,
date_from: int = -1,
date_to: int = -1,
created_at_from: int = -1,
created_at_to: int = -1,
completed_at_from: int = -1,
completed_at_to: int = -1,
) -> str:
"""Count timeline events matching the given filters without returning rows.
Use this instead of list_timelines for "how many" questions — it is much cheaper.
Same filter parameters as list_timelines (no limit/offset/order_by needed).
date_from / date_to: ms epoch range for the event date. Use -1 to omit.
completed_at_from / completed_at_to: ms epoch range for completedAt. Use -1 to omit.
Tip — for natural-language windows take date_from / date_to from the DATE CONTEXT block;
do not compute boundaries from the current UTC instant.
"""
normalized_project_id = project_id if (project_id and _is_uuid(project_id)) else ""
filters: dict[str, Any] = {"projectId": normalized_project_id or None}
if type:
filters["type"] = type
if is_completed != -1:
filters["isCompleted"] = is_completed
if is_ai_suggested != -1:
filters["isAiSuggested"] = is_ai_suggested
if date_from != -1:
filters["dateFrom"] = date_from
if date_to != -1:
filters["dateTo"] = date_to
if created_at_from != -1:
filters["createdAtFrom"] = created_at_from
if created_at_to != -1:
filters["createdAtTo"] = created_at_to
if completed_at_from != -1:
filters["completedAtFrom"] = completed_at_from
if completed_at_to != -1:
filters["completedAtTo"] = completed_at_to
result = await execute_on_client(action="count", table="timelines", filters=filters)
return f"Timeline event count: {result.get('count', 0)}"
@tool
async def create_timeline(
project_id: str,
title: str,
date: int,
type: str = "milestone",
is_completed: int = 0,
is_ai_suggested: int = 0,
) -> str:
"""Create a project timeline event.
project_id: REQUIRED UUID of the parent project
title: descriptive name for the event
date: Unix timestamp in milliseconds for the event date
type: milestone (default) | checkpoint | activity
is_completed: 1 if already completed, 0 if not (default 0)
is_ai_suggested: 1 if proactively suggested, 0 if user-requested
completedAt is set automatically when is_completed is 1.
"""
result = await execute_on_client(
action="insert",
table="timelines",
data={
"projectId": project_id,
"title": title,
"date": date,
"type": type,
"isCompleted": is_completed,
"isAiSuggested": is_ai_suggested,
},
)
row = result["row"]
return f"Timeline event created: '{row['title']}' (id: {row['id']}, date: {row['date']}, type: {row.get('type')})"
@tool
async def update_timeline(
timeline_id: str,
title: str = "",
date: int = -1,
is_completed: int = -1,
) -> str:
"""Update a timeline event. Only pass fields that should change.
timeline_id: UUID of the event (required)
date: -1 means unchanged; any other value sets the new date (ms timestamp)
is_completed: 0 = mark incomplete, 1 = mark complete, -1 = unchanged
completedAt is managed automatically:
- setting is_completed to 1 records the current timestamp
- setting is_completed to 0 clears completedAt
"""
updates: dict[str, Any] = {}
if title:
updates["title"] = title
if date != -1:
updates["date"] = date
if is_completed != -1:
updates["isCompleted"] = is_completed
result = await execute_on_client(
action="update",
table="timelines",
data={"id": timeline_id, "updates": updates},
)
row = result["row"]
return f"Timeline event updated: '{row['title']}' (id: {row['id']})"
@tool
async def delete_timeline(timeline_id: str) -> str:
"""Delete a timeline event permanently by its UUID."""
await execute_on_client(action="delete", table="timelines", data={"id": timeline_id})
return f"Timeline event {timeline_id} deleted."
@tool
async def list_timelines_today(user_timezone: str = "UTC", include_completed: bool = True) -> str:
"""List all timeline events whose date falls on today.
user_timezone: IANA timezone name (e.g. 'Europe/Rome', 'America/New_York').
Always pass the user's timezone so 'today' is computed in their local time.
include_completed: set False to exclude already-completed events (default True).
"""
try:
from zoneinfo import ZoneInfo
tz = ZoneInfo(user_timezone or "UTC")
except Exception:
tz = timezone.utc
now_local = datetime.now(tz=tz)
start_dt = datetime(now_local.year, now_local.month, now_local.day, tzinfo=tz)
start_ms = int(start_dt.timestamp() * 1000)
end_ms = start_ms + 86_400_000 - 1
filters: dict[str, Any] = {"dateFrom": start_ms, "dateTo": end_ms}
if not include_completed:
filters["isCompleted"] = 0
result = await execute_on_client(
action="select",
table="timelines",
filters=filters,
)
rows = result.get("rows", [])
if not rows:
return "No timeline events today."
lines = [
f"- {r['title']} (date: {r['date']}, type: {r.get('type')}, "
f"completed: {bool(r.get('isCompleted'))}, projectId: {r.get('projectId')}, id: {r['id']})"
for r in rows
]
return f"Timeline events today ({len(rows)}):\n" + "\n".join(lines)
TIMELINE_TOOLS: list[Any] = [
list_timelines,
count_timelines,
list_timelines_today,
create_timeline,
update_timeline,
delete_timeline,
]
TIMELINE_READ_TOOLS: list[Any] = [
list_timelines,
count_timelines,
list_timelines_today,
]

0
api/app/api/__init__.py Normal file
View File

14
api/app/api/deps.py Normal file
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@@ -0,0 +1,14 @@
"""Shared FastAPI dependencies.
``get_current_user`` and ``oauth2_scheme`` live in ``app.api.middleware.auth``
(the canonical location per Step 9). This module re-exports them so that all
existing route imports (``from app.api.deps import get_current_user``) continue
to work without modification.
Step 12 will update ``get_current_user`` to fetch the live tier from PostgreSQL
instead of reading it from the JWT payload.
"""
from app.api.middleware.auth import get_current_user, oauth2_scheme # noqa: F401
__all__ = ["get_current_user", "oauth2_scheme"]

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@@ -0,0 +1,19 @@
"""API middleware package.
Exports the three middleware components introduced in Step 9:
- Auth: ``get_current_user`` FastAPI dependency + ``oauth2_scheme``
- Rate limit: ``TierRateLimitMiddleware`` + ``limiter`` (slowapi Limiter)
- Sanitizer: ``SanitizerMiddleware``
"""
from app.api.middleware.auth import get_current_user, oauth2_scheme
from app.api.middleware.rate_limit import TierRateLimitMiddleware, limiter
from app.api.middleware.sanitizer import SanitizerMiddleware
__all__ = [
"get_current_user",
"oauth2_scheme",
"TierRateLimitMiddleware",
"limiter",
"SanitizerMiddleware",
]

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@@ -0,0 +1,103 @@
"""Auth middleware — JWT validation dependency.
``get_current_user`` is the FastAPI dependency used by all protected routes.
It decodes the Bearer JWT (identity + expiry), then fetches the current tier
from the ``subscriptions`` table so that tier changes take effect immediately
without requiring token re-issue.
Exempt routes (no JWT required):
- POST /api/v1/auth/register
- POST /api/v1/auth/login
- POST /api/v1/billing/webhook
"""
from __future__ import annotations
from fastapi import Depends, HTTPException, status
from fastapi.security import OAuth2PasswordBearer
from jose import JWTError, jwt
from sqlalchemy import select
from sqlalchemy.ext.asyncio import AsyncSession
from app.config.settings import settings
from app.db import get_session
from app.schemas import UserProfile
oauth2_scheme = OAuth2PasswordBearer(tokenUrl="/api/v1/auth/login")
async def get_current_user(
token: str = Depends(oauth2_scheme),
db: AsyncSession = Depends(get_session),
) -> UserProfile:
"""Validate a Bearer JWT and return the authenticated user.
The JWT is used for identity and expiry only. The tier is fetched live
from the ``subscriptions`` table so that upgrades/downgrades take effect
immediately. Falls back to ``'free'`` when no subscription row exists.
Raises HTTP 401 on any invalid or expired token.
"""
credentials_exc = HTTPException(
status_code=status.HTTP_401_UNAUTHORIZED,
detail="Could not validate credentials",
headers={"WWW-Authenticate": "Bearer"},
)
try:
payload = jwt.decode(
token, settings.JWT_SECRET, algorithms=[settings.JWT_ALGORITHM]
)
user_id: str | None = payload.get("sub")
email: str | None = payload.get("email")
if not user_id or not email:
raise credentials_exc
except JWTError:
raise credentials_exc
# Live tier lookup — subscription row is the authoritative source.
# In dev, fall back to 'power' (unlimited) so quota limits don't
# block local development when no Stripe subscription exists.
from app.models import Subscription, User # noqa: PLC0415
result = await db.execute(
select(Subscription.tier).where(Subscription.user_id == user_id)
)
default_tier = "power" if settings.ENV == "dev" else "free"
tier: str = result.scalar_one_or_none() or default_tier
# Fetch name/surname/avatar_url/onboarding_completed_at/password_hash from user row.
user_result = await db.execute(
select(
User.name, User.surname, User.avatar_url, User.onboarding_completed_at,
User.password_hash,
).where(User.id == user_id)
)
user_row = user_result.one_or_none()
# Convert onboarding_completed_at to epoch ms (int) or None.
onboarding_ms: int | None = None
if user_row and user_row.onboarding_completed_at is not None:
onboarding_ms = int(user_row.onboarding_completed_at.timestamp() * 1000)
# Load decrypted core memory.
from app.core.memory_middleware import MemoryMiddleware # noqa: PLC0415
memory_dict: dict[str, str] = {}
try:
mw = MemoryMiddleware(db)
blocks = await mw.list_core_blocks(user_id)
memory_dict = {b["label"]: b["value"] for b in blocks}
except Exception:
pass # Non-critical — return empty memory on failure
return UserProfile(
id=user_id,
email=email,
name=user_row.name if user_row else None,
surname=user_row.surname if user_row else None,
avatar_url=user_row.avatar_url if user_row else None,
has_password=bool(user_row.password_hash) if user_row else False,
tier=tier,
onboarding_completed_at=onboarding_ms,
memory=memory_dict,
) # type: ignore[arg-type]

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@@ -0,0 +1,129 @@
"""Tier-aware rate limiting middleware.
Uses a per-user sliding-window counter (in-process, no Redis required).
The ``slowapi`` Limiter is also exported for optional route-level decoration.
Limits (requests per minute):
- free: 20
- pro: 60
- power: 120
- team: 200
Exempt paths bypass the limiter entirely:
- POST /api/v1/auth/register
- POST /api/v1/auth/login
- POST /api/v1/billing/webhook
- GET /api/v1/health
"""
from __future__ import annotations
import json
import time
from collections import defaultdict
from fastapi import Request, Response
from jose import JWTError, jwt
from slowapi import Limiter
from slowapi.util import get_remote_address
from starlette.middleware.base import BaseHTTPMiddleware
from starlette.types import ASGIApp
from app.config.settings import settings
_TIER_LIMITS: dict[str, int] = {
"free": 20,
"pro": 60,
"power": 120,
"team": 200,
}
_EXEMPT_PATHS: frozenset[str] = frozenset(
{
"/api/v1/auth/register",
"/api/v1/auth/login",
"/api/v1/billing/webhook",
"/api/v1/health",
}
)
def _get_user_id_from_jwt(request: Request) -> str:
"""Key function for the slowapi Limiter: returns JWT sub or remote IP."""
auth = request.headers.get("Authorization", "")
token = auth.removeprefix("Bearer ").strip()
if not token:
return get_remote_address(request)
try:
payload = jwt.decode(
token, settings.JWT_SECRET, algorithms=[settings.JWT_ALGORITHM]
)
return payload.get("sub") or get_remote_address(request)
except JWTError:
return get_remote_address(request)
# Exported Limiter instance — available for optional route-level decoration.
limiter = Limiter(key_func=_get_user_id_from_jwt)
class TierRateLimitMiddleware(BaseHTTPMiddleware):
"""Sliding-window rate limiter applied globally across all non-exempt routes.
Each authenticated user gets their own 60-second window sized by tier.
Unauthenticated requests pass through (the auth dependency will reject them
with 401 before the route handler runs).
"""
def __init__(self, app: ASGIApp) -> None:
super().__init__(app)
# user_id → list of request timestamps (float, seconds since epoch)
self._window: dict[str, list[float]] = defaultdict(list)
async def dispatch(self, request: Request, call_next) -> Response: # type: ignore[override]
if request.url.path in _EXEMPT_PATHS:
return await call_next(request)
# Extract JWT claims — if no valid token, pass through for auth dep to handle.
auth = request.headers.get("Authorization", "")
token = auth.removeprefix("Bearer ").strip()
if not token:
return await call_next(request)
try:
payload = jwt.decode(
token, settings.JWT_SECRET, algorithms=[settings.JWT_ALGORITHM]
)
user_id: str = payload.get("sub") or get_remote_address(request)
tier: str = payload.get("tier", "free")
except JWTError:
return await call_next(request)
limit = _TIER_LIMITS.get(tier, _TIER_LIMITS["free"])
now = time.monotonic()
window_start = now - 60.0
# Slide the window: discard timestamps older than 60 seconds.
timestamps = [t for t in self._window[user_id] if t > window_start]
if len(timestamps) >= limit:
retry_after = max(1, int(60 - (now - min(timestamps))))
return Response(
content=json.dumps(
{
"detail": (
f"Rate limit exceeded ({limit} req/min for {tier} tier). "
f"Retry in {retry_after}s."
)
}
),
status_code=429,
headers={
"Retry-After": str(retry_after),
"Content-Type": "application/json",
},
)
timestamps.append(now)
self._window[user_id] = timestamps
return await call_next(request)

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@@ -0,0 +1,138 @@
"""Response sanitizer middleware.
Scans JSON responses from the /api/v1/chat endpoint and strips any fragments
that could reveal server-side prompt IP:
- System prompt openers ("You are a/an/the …")
- Agent routing metadata ("Available agents:", "intent classifier", …)
- LangChain tool schema fragments (``"type": "function"``)
- Internal reasoning markers (<thinking>, <reasoning>, [INST], …)
- Exact-match known prompt fingerprints
The middleware only activates for paths under /api/v1/chat.
Any sanitisation event is logged as a WARNING with the request path and the
names of the fields that were modified.
"""
from __future__ import annotations
import json
import logging
import re
from fastapi import Request, Response
from starlette.middleware.base import BaseHTTPMiddleware
from starlette.types import ASGIApp
logger = logging.getLogger(__name__)
# ---------------------------------------------------------------------------
# Detection patterns — order matters: fingerprints checked first (exact),
# then compiled regexes.
# ---------------------------------------------------------------------------
_FINGERPRINTS: tuple[str, ...] = (
"You are an intent classifier",
"Respond with just the agent name",
"Summarize these agent results",
"Available agents:",
"route to:",
)
_PATTERNS: tuple[re.Pattern[str], ...] = (
re.compile(r"You are (a|an|the)\b.{0,200}", re.IGNORECASE | re.DOTALL),
re.compile(r"Available agents\s*:", re.IGNORECASE),
re.compile(r"\bintent classifier\b", re.IGNORECASE),
re.compile(r'"type"\s*:\s*"function"'), # LangChain tool schema
re.compile(r"<(thinking|reasoning|system|prompt)>", re.IGNORECASE),
re.compile(r"\[INST\]|\[/INST\]"), # Llama instruct markers
re.compile(r"route\s+to\s*:", re.IGNORECASE),
re.compile(r"prompt_template\s*:\s*['\"].{10,}", re.IGNORECASE),
)
def _sanitize_text(text: str) -> tuple[str, bool]:
"""Scan *text* for prompt fragments and replace matches with ``[REDACTED]``.
Returns ``(cleaned_text, was_changed)``.
"""
# Fingerprint check — if any exact phrase is present, redact the whole string.
for fp in _FINGERPRINTS:
if fp in text:
return "[REDACTED]", True
changed = False
for pattern in _PATTERNS:
new_text, n = pattern.subn("[REDACTED]", text)
if n:
text = new_text
changed = True
return text, changed
class SanitizerMiddleware(BaseHTTPMiddleware):
"""Strip prompt IP from /api/v1/chat JSON responses."""
def __init__(self, app: ASGIApp) -> None:
super().__init__(app)
async def dispatch(self, request: Request, call_next) -> Response: # type: ignore[override]
response: Response = await call_next(request)
# Only process chat endpoint responses.
if not request.url.path.startswith("/api/v1/chat"):
return response
# Read body — collect streaming chunks.
body_bytes = b""
async for chunk in response.body_iterator:
body_bytes += chunk if isinstance(chunk, bytes) else chunk.encode()
# Skip non-JSON bodies (shouldn't happen on /chat, but be safe).
try:
body = json.loads(body_bytes.decode("utf-8"))
except (json.JSONDecodeError, UnicodeDecodeError):
return Response(
content=body_bytes,
status_code=response.status_code,
headers=dict(response.headers),
media_type=response.media_type,
)
if not isinstance(body, dict):
return Response(
content=body_bytes,
status_code=response.status_code,
headers=dict(response.headers),
media_type=response.media_type,
)
# Walk top-level string fields and sanitise.
sanitised_fields: list[str] = []
for key, value in body.items():
if isinstance(value, str):
cleaned, changed = _sanitize_text(value)
if changed:
body[key] = cleaned
sanitised_fields.append(key)
if sanitised_fields:
logger.warning(
"Sanitizer redacted prompt fragments",
extra={
"path": request.url.path,
"fields": sanitised_fields,
},
)
new_body = json.dumps(body).encode("utf-8")
headers = dict(response.headers)
headers["content-length"] = str(len(new_body))
return Response(
content=new_body,
status_code=response.status_code,
headers=headers,
media_type="application/json",
)

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795
api/app/api/routes/auth.py Normal file
View File

@@ -0,0 +1,795 @@
"""Auth routes: register, login, refresh, me, OAuth social login, onboarding.
Users and refresh tokens are persisted in PostgreSQL (users + refresh_tokens
tables). Passwords are hashed with bcrypt; refresh tokens are stored as
SHA-256 hashes so plaintext never reaches the DB.
OAuth (Google):
GET /auth/oauth/{provider}/authorize — returns consent-screen URL + state
POST /auth/oauth/{provider}/callback — exchanges code, issues JWT tokens
"""
from __future__ import annotations
import hashlib
import json
import time
import urllib.parse
import uuid
from datetime import datetime, timedelta, timezone
from typing import Literal
import bcrypt
from cryptography.fernet import Fernet
from fastapi import APIRouter, Depends, HTTPException, status
from fastapi.responses import RedirectResponse
from jose import jwt
from pydantic import BaseModel, Field
from sqlalchemy import select
from sqlalchemy.ext.asyncio import AsyncSession
from app.api.deps import get_current_user
from app.auth.oauth_providers import GoogleOAuthProvider, generate_pkce_pair
from app.config.settings import settings
from app.core.llm import get_llm
from app.core.memory_middleware import MemoryMiddleware
from app.db import get_session
from app.models import OAuthAccount, RefreshToken, User
from app.schemas import AuthTokens, UserProfile
router = APIRouter(prefix="/auth", tags=["auth"])
# ── OAuth provider registry ───────────────────────────────────────────
def _get_google_provider() -> GoogleOAuthProvider:
if not settings.GOOGLE_AUTH_CLIENT_ID or not settings.GOOGLE_AUTH_CLIENT_SECRET:
raise HTTPException(
status.HTTP_503_SERVICE_UNAVAILABLE,
"Google login is not configured on this server",
)
return GoogleOAuthProvider(
client_id=settings.GOOGLE_AUTH_CLIENT_ID,
client_secret=settings.GOOGLE_AUTH_CLIENT_SECRET,
redirect_uri=settings.OAUTH_REDIRECT_URI,
)
_PROVIDERS = {"google": _get_google_provider}
# In-memory state store: state → (code_verifier, expires_at_epoch_s)
# Production note: replace with Redis for multi-process deployments.
_pending_states: dict[str, tuple[str, float]] = {}
_STATE_TTL_SECONDS = 600 # 10 minutes
# ── Internal helpers ─────────────────────────────────────────────────
def _hash_password(password: str) -> str:
return bcrypt.hashpw(password.encode(), bcrypt.gensalt()).decode()
def _verify_password(password: str, hashed: str) -> bool:
return bcrypt.checkpw(password.encode(), hashed.encode())
def _hash_token(plain_token: str) -> str:
"""SHA-256 of the plain refresh token string."""
return hashlib.sha256(plain_token.encode()).hexdigest()
def _make_access_token(user_id: str, email: str, tier: str) -> tuple[str, int]:
"""Return (signed JWT, expires_at_ms)."""
now = int(time.time())
exp = now + settings.JWT_ACCESS_TOKEN_EXPIRE_MINUTES * 60
payload = {
"sub": user_id,
"email": email,
"tier": tier,
"exp": exp,
"iat": now,
}
token = jwt.encode(payload, settings.JWT_SECRET, algorithm=settings.JWT_ALGORITHM)
return token, exp * 1000 # ms for client
# ── Request bodies ────────────────────────────────────────────────────
class _RegisterRequest(BaseModel):
email: str
password: str
name: str | None = None
surname: str | None = None
class _LoginRequest(BaseModel):
email: str
password: str
class _RefreshRequest(BaseModel):
refresh_token: str
# ── Routes ────────────────────────────────────────────────────────────
@router.post("/register", response_model=AuthTokens, status_code=status.HTTP_201_CREATED)
async def register(
body: _RegisterRequest,
db: AsyncSession = Depends(get_session),
) -> AuthTokens:
"""Create a new account and return JWT tokens."""
existing = await db.execute(select(User).where(User.email == body.email))
if existing.scalar_one_or_none() is not None:
raise HTTPException(status.HTTP_409_CONFLICT, "Email already registered")
user = User(
id=str(uuid.uuid4()),
email=body.email,
name=body.name,
surname=body.surname,
password_hash=_hash_password(body.password),
tier="free",
encryption_key=Fernet.generate_key().decode(),
)
db.add(user)
await db.flush() # get user.id without committing
plain_token = str(uuid.uuid4())
expires_at = datetime.now(timezone.utc) + timedelta(
days=settings.JWT_REFRESH_TOKEN_EXPIRE_DAYS
)
rt = RefreshToken(
user_id=user.id,
token_hash=_hash_token(plain_token),
expires_at=expires_at,
)
db.add(rt)
await db.commit()
access_token, expires_at_ms = _make_access_token(user.id, user.email, user.tier)
return AuthTokens(
access_token=access_token,
refresh_token=plain_token,
expires_at=expires_at_ms,
)
@router.post("/login", response_model=AuthTokens)
async def login(
body: _LoginRequest,
db: AsyncSession = Depends(get_session),
) -> AuthTokens:
"""Validate credentials and return JWT tokens."""
result = await db.execute(select(User).where(User.email == body.email))
user = result.scalar_one_or_none()
if user is None or not _verify_password(body.password, user.password_hash):
raise HTTPException(status.HTTP_401_UNAUTHORIZED, "Invalid credentials")
plain_token = str(uuid.uuid4())
expires_at = datetime.now(timezone.utc) + timedelta(
days=settings.JWT_REFRESH_TOKEN_EXPIRE_DAYS
)
rt = RefreshToken(
user_id=user.id,
token_hash=_hash_token(plain_token),
expires_at=expires_at,
)
db.add(rt)
await db.commit()
access_token, expires_at_ms = _make_access_token(user.id, user.email, user.tier)
return AuthTokens(
access_token=access_token,
refresh_token=plain_token,
expires_at=expires_at_ms,
)
@router.post("/refresh", response_model=AuthTokens)
async def refresh(
body: _RefreshRequest,
db: AsyncSession = Depends(get_session),
) -> AuthTokens:
"""Rotate a refresh token and return a new token pair."""
token_hash = _hash_token(body.refresh_token)
result = await db.execute(
select(RefreshToken).where(RefreshToken.token_hash == token_hash)
)
rt = result.scalar_one_or_none()
now = datetime.now(timezone.utc)
if rt is None or rt.expires_at.replace(tzinfo=timezone.utc) < now:
raise HTTPException(status.HTTP_401_UNAUTHORIZED, "Invalid or expired refresh token")
# Rotate: delete old token, issue new one.
await db.delete(rt)
user_result = await db.execute(select(User).where(User.id == rt.user_id))
user = user_result.scalar_one_or_none()
if user is None:
raise HTTPException(status.HTTP_401_UNAUTHORIZED, "User not found")
plain_token = str(uuid.uuid4())
new_expires = now + timedelta(days=settings.JWT_REFRESH_TOKEN_EXPIRE_DAYS)
new_rt = RefreshToken(
user_id=user.id,
token_hash=_hash_token(plain_token),
expires_at=new_expires,
)
db.add(new_rt)
await db.commit()
access_token, expires_at_ms = _make_access_token(user.id, user.email, user.tier)
return AuthTokens(
access_token=access_token,
refresh_token=plain_token,
expires_at=expires_at_ms,
)
class _UpdateProfileRequest(BaseModel):
name: str | None = None
surname: str | None = None
@router.get("/me", response_model=UserProfile)
async def me(current_user: UserProfile = Depends(get_current_user)) -> UserProfile:
"""Return the profile for the authenticated user."""
return current_user
@router.put("/me", response_model=UserProfile)
async def update_profile(
body: _UpdateProfileRequest,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> UserProfile:
"""Update the authenticated user's name and surname."""
result = await db.execute(select(User).where(User.id == current_user.id))
user = result.scalar_one()
if body.name is not None:
user.name = body.name
if body.surname is not None:
user.surname = body.surname
await db.commit()
await db.refresh(user)
return UserProfile(
id=user.id,
email=user.email,
name=user.name,
surname=user.surname,
avatar_url=user.avatar_url,
tier=current_user.tier,
)
# ── OAuth helpers ─────────────────────────────────────────────────────
async def _issue_refresh_token(user: User, db: AsyncSession) -> tuple[str, AuthTokens]:
"""Create a refresh token row and return (plain_token, AuthTokens)."""
plain_token = str(uuid.uuid4())
expires_at = datetime.now(timezone.utc) + timedelta(
days=settings.JWT_REFRESH_TOKEN_EXPIRE_DAYS
)
rt = RefreshToken(
user_id=user.id,
token_hash=_hash_token(plain_token),
expires_at=expires_at,
)
db.add(rt)
access_token, expires_at_ms = _make_access_token(user.id, user.email, user.tier)
return plain_token, AuthTokens(
access_token=access_token,
refresh_token=plain_token,
expires_at=expires_at_ms,
)
# ── OAuth request/response schemas ───────────────────────────────────
class _OAuthAuthorizeResponse(BaseModel):
url: str
state: str
class _OAuthCallbackRequest(BaseModel):
code: str
state: str
# ── OAuth routes ──────────────────────────────────────────────────────
@router.get(
"/oauth/{provider}/web-callback",
summary="Web-facing OAuth redirect — bounces to the adiuvai:// deep link",
include_in_schema=False,
)
async def oauth_web_callback(
provider: Literal["google"],
code: str,
state: str,
) -> RedirectResponse:
"""Google redirects here after user consent.
This endpoint immediately redirects to the Electron deep-link URI so the
desktop app receives the authorization code. It is intentionally simple —
no state validation here (the Electron app + backend callback do that).
Registered in Google Cloud Console as:
http://localhost:8000/api/v1/auth/oauth/google/web-callback (dev)
https://api.adiuvai.com/api/v1/auth/oauth/google/web-callback (prod)
"""
params = urllib.parse.urlencode({"code": code, "state": state, "provider": provider})
deep_link = f"adiuvai://oauth/callback?{params}"
return RedirectResponse(url=deep_link, status_code=302)
@router.get(
"/oauth/{provider}/authorize",
response_model=_OAuthAuthorizeResponse,
summary="Start OAuth flow — returns the provider consent-screen URL",
)
async def oauth_authorize(
provider: Literal["google"],
) -> _OAuthAuthorizeResponse:
"""Generate a PKCE state + code_challenge and return the authorization URL.
The client opens this URL in the system browser. After the user grants
consent, the provider redirects to the deep-link URI (adiuvai://oauth/callback)
with ``code`` and ``state`` query params. The client then calls
``POST /auth/oauth/{provider}/callback`` with those values.
"""
provider_factory = _PROVIDERS.get(provider)
if provider_factory is None:
raise HTTPException(status.HTTP_400_BAD_REQUEST, f"Unknown provider: {provider}")
oauth_provider = provider_factory()
state = str(uuid.uuid4())
code_verifier, code_challenge = generate_pkce_pair()
# Purge expired states to prevent unbounded growth.
now = time.time()
expired = [s for s, (_, exp) in _pending_states.items() if exp < now]
for s in expired:
del _pending_states[s]
_pending_states[state] = (code_verifier, now + _STATE_TTL_SECONDS)
url = oauth_provider.get_authorization_url(state=state, code_challenge=code_challenge)
return _OAuthAuthorizeResponse(url=url, state=state)
@router.post(
"/oauth/{provider}/callback",
response_model=AuthTokens,
summary="Complete OAuth flow — exchange code and issue JWT tokens",
)
async def oauth_callback(
provider: Literal["google"],
body: _OAuthCallbackRequest,
db: AsyncSession = Depends(get_session),
) -> AuthTokens:
"""Validate state, exchange the authorization code, and sign in (or register) the user.
Resolution order:
1. ``oauth_accounts`` row match → existing user, log in.
2. Email match + ``email_verified=True`` → link OAuth account to existing user.
3. No match → create new user (password_hash=None, avatar from provider).
"""
provider_factory = _PROVIDERS.get(provider)
if provider_factory is None:
raise HTTPException(status.HTTP_400_BAD_REQUEST, f"Unknown provider: {provider}")
# Validate state (CSRF protection).
now = time.time()
entry = _pending_states.pop(body.state, None)
if entry is None or entry[1] < now:
raise HTTPException(status.HTTP_401_UNAUTHORIZED, "Invalid or expired OAuth state")
code_verifier, _ = entry
oauth_provider = provider_factory()
# Exchange code for tokens.
try:
token_data = await oauth_provider.exchange_code(
code=body.code,
code_verifier=code_verifier,
redirect_uri=settings.OAUTH_REDIRECT_URI,
)
except Exception:
raise HTTPException(
status.HTTP_400_BAD_REQUEST, "Failed to exchange authorization code"
)
access_token_google = token_data.get("access_token")
if not access_token_google:
raise HTTPException(status.HTTP_400_BAD_REQUEST, "No access token in provider response")
# Fetch user identity.
try:
userinfo = await oauth_provider.get_userinfo(access_token_google)
except Exception:
raise HTTPException(status.HTTP_400_BAD_REQUEST, "Failed to fetch user info from provider")
# ── Resolution order ──────────────────────────────────────────────
# 1. Existing OAuth link?
oauth_result = await db.execute(
select(OAuthAccount).where(
OAuthAccount.provider == provider,
OAuthAccount.provider_user_id == userinfo.provider_user_id,
)
)
oauth_account = oauth_result.scalar_one_or_none()
if oauth_account is not None:
user_result = await db.execute(select(User).where(User.id == oauth_account.user_id))
user = user_result.scalar_one()
# Backfill avatar if the user doesn't have one yet.
if user.avatar_url is None and userinfo.avatar_url:
user.avatar_url = userinfo.avatar_url
await db.commit()
plain_token, tokens = await _issue_refresh_token(user, db)
await db.commit()
return tokens
# 2. Email match with a verified Google email → link accounts.
if userinfo.email_verified:
email_result = await db.execute(select(User).where(User.email == userinfo.email))
existing_user = email_result.scalar_one_or_none()
if existing_user is not None:
new_link = OAuthAccount(
user_id=existing_user.id,
provider=provider,
provider_user_id=userinfo.provider_user_id,
provider_email=userinfo.email,
)
db.add(new_link)
if existing_user.avatar_url is None and userinfo.avatar_url:
existing_user.avatar_url = userinfo.avatar_url
plain_token, tokens = await _issue_refresh_token(existing_user, db)
await db.commit()
return tokens
# Guard: if the email is already taken but we couldn't auto-link (e.g.
# email_verified=False), refuse with 409 instead of hitting a DB constraint.
if not userinfo.email_verified:
conflict = await db.execute(select(User).where(User.email == userinfo.email))
if conflict.scalar_one_or_none() is not None:
raise HTTPException(
status.HTTP_409_CONFLICT,
"An account with this email already exists. "
"Please sign in with your password.",
)
# 3. New user — social-only account (no password).
new_user = User(
id=str(uuid.uuid4()),
email=userinfo.email,
name=userinfo.name,
password_hash=None,
avatar_url=userinfo.avatar_url,
tier="free",
encryption_key=Fernet.generate_key().decode(),
)
db.add(new_user)
await db.flush() # populate new_user.id
new_oauth = OAuthAccount(
user_id=new_user.id,
provider=provider,
provider_user_id=userinfo.provider_user_id,
provider_email=userinfo.email,
)
db.add(new_oauth)
plain_token, tokens = await _issue_refresh_token(new_user, db)
await db.commit()
return tokens
# ── Onboarding helpers ────────────────────────────────────────────────
async def _build_profile(user_id: str, email: str, db: AsyncSession) -> UserProfile:
"""Re-fetch and return a full UserProfile (reuses get_current_user logic)."""
# We can't call the FastAPI dependency directly, but we can replicate
# the core logic inline. Instead, we just re-query the same way.
from app.models import Subscription # noqa: PLC0415
result = await db.execute(
select(Subscription.tier).where(Subscription.user_id == user_id)
)
default_tier = "power" if settings.ENV == "dev" else "free"
tier: str = result.scalar_one_or_none() or default_tier
user_result = await db.execute(
select(
User.name, User.surname, User.avatar_url, User.onboarding_completed_at,
User.password_hash,
).where(User.id == user_id)
)
user_row = user_result.one_or_none()
onboarding_ms: int | None = None
if user_row and user_row.onboarding_completed_at is not None:
onboarding_ms = int(user_row.onboarding_completed_at.timestamp() * 1000)
memory_dict: dict[str, str] = {}
try:
mw = MemoryMiddleware(db)
blocks = await mw.list_core_blocks(user_id)
memory_dict = {b["label"]: b["value"] for b in blocks}
except Exception:
pass
return UserProfile(
id=user_id,
email=email,
name=user_row.name if user_row else None,
surname=user_row.surname if user_row else None,
avatar_url=user_row.avatar_url if user_row else None,
has_password=bool(user_row.password_hash) if user_row else False,
tier=tier,
onboarding_completed_at=onboarding_ms,
memory=memory_dict,
)
# ── Onboarding routes ────────────────────────────────────────────────
class _UpdateMemoryRequest(BaseModel):
memory: dict[str, str] = Field(default_factory=dict)
mark_onboarded: bool = False
@router.put("/me/memory", response_model=UserProfile)
async def update_memory(
body: _UpdateMemoryRequest,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> UserProfile:
"""Update core memory key/value pairs and optionally mark onboarding complete."""
mw = MemoryMiddleware(db)
for key, value in body.memory.items():
await mw.update_core(current_user.id, key, value)
if body.mark_onboarded:
result = await db.execute(select(User).where(User.id == current_user.id))
user = result.scalar_one()
user.onboarding_completed_at = datetime.now(timezone.utc)
await db.commit()
return await _build_profile(current_user.id, current_user.email, db)
@router.post("/me/onboarding/reset")
async def reset_onboarding(
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
):
"""Reset onboarding so the wizard runs again on next login."""
result = await db.execute(select(User).where(User.id == current_user.id))
user = result.scalar_one()
user.onboarding_completed_at = None
await db.commit()
return {"status": "reset"}
class _NormalizeRequest(BaseModel):
inputs: dict[str, str]
class _NormalizeResponse(BaseModel):
normalized: dict[str, str]
@router.post("/onboarding/normalize", response_model=_NormalizeResponse)
async def normalize_onboarding(
body: _NormalizeRequest,
current_user: UserProfile = Depends(get_current_user),
) -> _NormalizeResponse:
"""One-shot LLM normalization for free-text onboarding answers."""
if not body.inputs:
return _NormalizeResponse(normalized={})
try:
llm = get_llm(model="gpt-4o-mini", temperature=0)
prompt = (
"You normalize user onboarding answers into clean, ≤3-word canonical labels.\n"
"Return a JSON object with the same keys and normalized values.\n"
"Examples: 'i build websites''Web Developer', 'tech-ish stuff''Technology'\n"
f"Input: {json.dumps(body.inputs)}"
)
response = await llm.ainvoke(
[
{"role": "system", "content": "You normalize user inputs. Return JSON only."},
{"role": "user", "content": prompt},
],
)
normalized = json.loads(response.content)
return _NormalizeResponse(normalized=normalized)
except Exception:
# LLM failure must never block onboarding — return inputs unchanged
return _NormalizeResponse(normalized=body.inputs)
# ── Password management ───────────────────────────────────────────────
class _ChangePasswordRequest(BaseModel):
current_password: str = Field(min_length=1)
new_password: str = Field(min_length=8)
@router.put("/me/password", status_code=status.HTTP_200_OK)
async def change_password(
body: _ChangePasswordRequest,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> dict[str, bool]:
"""Change the authenticated user's password.
Requires the current password for verification.
Returns 400 for social-only users (no password set).
"""
result = await db.execute(select(User).where(User.id == current_user.id))
user = result.scalar_one()
if user.password_hash is None:
raise HTTPException(
status.HTTP_400_BAD_REQUEST,
"This account uses social login and has no password to change",
)
if not _verify_password(body.current_password, user.password_hash):
raise HTTPException(status.HTTP_400_BAD_REQUEST, "Current password is incorrect")
user.password_hash = _hash_password(body.new_password)
await db.commit()
return {"ok": True}
# ── OAuth account management ─────────────────────────────────────────
@router.get("/me/oauth-accounts", response_model=list[dict])
async def list_oauth_accounts(
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> list[dict]:
"""List all OAuth providers linked to the authenticated user."""
result = await db.execute(
select(OAuthAccount).where(OAuthAccount.user_id == current_user.id)
)
accounts = result.scalars().all()
return [
{
"provider": a.provider,
"provider_email": a.provider_email,
"created_at": int(a.created_at.timestamp() * 1000),
}
for a in accounts
]
@router.delete("/me/oauth-accounts/{provider}", status_code=status.HTTP_200_OK)
async def unlink_oauth_account(
provider: str,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> dict[str, bool]:
"""Unlink an OAuth provider from the authenticated user.
Refuses if the user has no password and this is their only login method.
"""
result = await db.execute(select(User).where(User.id == current_user.id))
user = result.scalar_one()
oauth_result = await db.execute(
select(OAuthAccount).where(
OAuthAccount.user_id == current_user.id,
OAuthAccount.provider == provider,
)
)
account = oauth_result.scalar_one_or_none()
if account is None:
raise HTTPException(status.HTTP_404_NOT_FOUND, f"No linked {provider} account found")
# Safety: don't let users lock themselves out.
all_oauth = await db.execute(
select(OAuthAccount).where(OAuthAccount.user_id == current_user.id)
)
oauth_count = len(all_oauth.scalars().all())
if user.password_hash is None and oauth_count <= 1:
raise HTTPException(
status.HTTP_400_BAD_REQUEST,
"Cannot unlink the only login method. Set a password first.",
)
await db.delete(account)
await db.commit()
return {"ok": True}
# ── Avatar update ─────────────────────────────────────────────────────
class _UpdateAvatarRequest(BaseModel):
avatar_url: str = Field(min_length=1)
@router.put("/me/avatar", response_model=UserProfile)
async def update_avatar(
body: _UpdateAvatarRequest,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> UserProfile:
"""Update the authenticated user's avatar URL.
Accepts {"avatar_url": "https://..."} — the client uploads the image
to its own storage and passes the resulting URL here.
"""
if not body.avatar_url.startswith(("https://", "http://", "data:image/")):
raise HTTPException(status.HTTP_400_BAD_REQUEST, "Invalid avatar URL")
result = await db.execute(select(User).where(User.id == current_user.id))
user = result.scalar_one()
user.avatar_url = body.avatar_url
await db.commit()
return await _build_profile(current_user.id, current_user.email, db)
# ── Account deletion ─────────────────────────────────────────────────
@router.delete("/me", status_code=status.HTTP_200_OK)
async def delete_account(
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> dict[str, bool]:
"""Permanently delete the authenticated user's account.
Cascades: refresh tokens, OAuth accounts, subscription, and all memory
rows are deleted via SQLAlchemy relationship cascades. Stripe subscription
is cancelled if active.
"""
# Cancel Stripe subscription if present.
try:
from app.billing.stripe_service import stripe_service # noqa: PLC0415
await stripe_service.cancel_subscription(current_user.id, db)
except HTTPException:
pass # No subscription — that's fine
# Delete all memory rows (core, associative, episodic, proactive).
try:
from app.models import ( # noqa: PLC0415
MemoryAssociative, MemoryCore, MemoryEpisodic, MemoryProactive,
)
for model in (MemoryCore, MemoryAssociative, MemoryEpisodic, MemoryProactive):
await db.execute(
model.__table__.delete().where(model.user_id == current_user.id)
)
except Exception:
pass # Non-critical — cascade on User will handle most
# Delete the user row — cascades handle refresh_tokens, oauth_accounts, subscription.
result = await db.execute(select(User).where(User.id == current_user.id))
user = result.scalar_one()
await db.delete(user)
await db.commit()
return {"ok": True}

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@@ -0,0 +1,132 @@
"""Billing routes: Stripe checkout, webhook, subscription management.
Business logic lives in ``app.billing.stripe_service.StripeService``.
The route layer handles HTTP concerns (request parsing, response shaping)
and delegates everything else to the service singleton.
"""
from __future__ import annotations
from typing import Any
from fastapi import APIRouter, Depends, Header, HTTPException, Request, status
from pydantic import BaseModel
from sqlalchemy.ext.asyncio import AsyncSession
from app.api.deps import get_current_user
from app.billing.stripe_service import stripe_service
from app.db import get_session
from app.schemas import BillingTier, UserProfile
router = APIRouter(prefix="/billing", tags=["billing"])
# ── Request bodies ─────────────────────────────────────────────────────
class _CheckoutRequest(BaseModel):
tier: BillingTier
# ── Routes ─────────────────────────────────────────────────────────────
@router.post("/checkout", response_model=dict)
async def create_checkout(
body: _CheckoutRequest,
current_user: UserProfile = Depends(get_current_user),
) -> dict[str, str]:
"""Create a Stripe checkout session for a tier upgrade.
Returns a stub URL when ``STRIPE_SECRET_KEY`` is not configured.
"""
url = stripe_service.create_checkout_session(current_user.id, body.tier)
return {"checkout_url": url}
@router.post("/webhook", response_model=dict)
async def stripe_webhook(
request: Request,
stripe_signature: str = Header(default="", alias="Stripe-Signature"),
db: AsyncSession = Depends(get_session),
) -> dict[str, bool]:
"""Handle Stripe webhook events.
No JWT auth — authenticated via Stripe signature verification instead.
Returns 200 immediately when Stripe is not configured (local dev).
"""
payload = await request.body()
await stripe_service.handle_webhook(payload, stripe_signature, db)
return {"ok": True}
@router.get("/subscription", response_model=dict)
async def get_subscription(
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> dict[str, Any]:
"""Return the current subscription info for the authenticated user."""
sub = await stripe_service.get_subscription(current_user.id, db)
if sub is None:
return {
"tier": current_user.tier,
"status": "free",
"stripe_subscription_id": None,
"current_period_end": None,
}
return sub
@router.delete("/subscription", response_model=dict, status_code=status.HTTP_200_OK)
async def cancel_subscription(
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> dict[str, bool]:
"""Cancel the active subscription."""
await stripe_service.cancel_subscription(current_user.id, db)
return {"ok": True}
@router.get("/invoices", response_model=list[dict])
async def list_invoices(
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> list[dict[str, Any]]:
"""Return billing history (invoices) from Stripe.
Returns an empty list when Stripe is not configured.
"""
invoices = await stripe_service.list_invoices(current_user.id, db)
return invoices
# ── Quota check ────────────────────────────────────────────────────────
from app.billing.quota import check_folder_quota, QuotaExceeded # noqa: E402
class QuotaCheckRequest(BaseModel):
feature: str
estimated_files: int
@router.post("/quota/check")
async def quota_check(
payload: QuotaCheckRequest,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> dict:
"""Pre-flight folder quota check. 402 if tier limits would be exceeded."""
if payload.feature != "folder_index":
raise HTTPException(status_code=400, detail="Unknown feature")
try:
await check_folder_quota(
user_id=current_user.id,
tier=current_user.tier,
estimated_files=payload.estimated_files,
db=db,
)
except QuotaExceeded as exc:
raise HTTPException(
status_code=402,
detail={"reason": exc.reason, "message": str(exc)},
)
return {"ok": True}

116
api/app/api/routes/chat.py Normal file
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"""Chat routes: POST /chat (REST fallback) and POST /chat/embed (text → vector).
WebSocket chat is handled by the unified device WS endpoint (/api/v1/ws/device).
"""
from __future__ import annotations
import uuid
from typing import Literal
from fastapi import APIRouter, Depends, HTTPException
from fastapi.responses import JSONResponse
from pydantic import BaseModel
from app.api.deps import get_current_user
from app.core.brief_agent import run_home_brief, run_project_brief
from app.core.deep_agent import run_home
from app.core.llm import embed
from app.core.memory_middleware import MemoryMiddleware
from app.db import async_session
from app.schemas import ChatRequest, UserProfile
router = APIRouter(prefix="/chat", tags=["chat"])
# ── Embed helpers ─────────────────────────────────────────────────────────
class _EmbedRequest(BaseModel):
text: str
class _EmbedResponse(BaseModel):
vector: list[float]
# ── Endpoints ─────────────────────────────────────────────────────────────
@router.post("")
async def chat(
body: ChatRequest,
current_user: UserProfile = Depends(get_current_user),
) -> JSONResponse:
"""REST fallback for home chat when websocket streaming is unavailable."""
response = await run_home(
user_id=current_user.id,
message=body.message,
context=body.context.model_dump(),
)
return JSONResponse(content={"response": response})
class _BriefRequest(BaseModel):
mode: Literal["home", "project"]
project_id: str | None = None
class _BriefResponse(BaseModel):
response: str
@router.post("/brief", response_model=_BriefResponse)
async def brief(
body: _BriefRequest,
current_user: UserProfile = Depends(get_current_user),
) -> _BriefResponse:
"""REST fallback for brief when the device WebSocket is not ready."""
if body.mode == "project":
if not body.project_id:
raise HTTPException(status_code=422, detail="project_id required for project mode")
try:
uuid.UUID(body.project_id)
except ValueError:
raise HTTPException(status_code=422, detail="project_id must be a valid UUID")
request_id = str(uuid.uuid4())
async with async_session() as db:
memory = MemoryMiddleware(db)
memory_context = await memory.enrich_context(
current_user.id,
"",
trace_id=request_id,
session_id=request_id,
)
context: dict = {
"_debug": {"request_id": request_id, "user_id": current_user.id},
**memory_context,
}
chunks: list[str] = []
if body.mode == "project":
stream = run_project_brief(current_user.id, body.project_id, context) # type: ignore[arg-type]
else:
stream = run_home_brief(current_user.id, context)
async for event_type, data in stream:
if event_type == "token" and data:
chunks.append(str(data))
return _BriefResponse(response="".join(chunks))
@router.post("/embed", response_model=_EmbedResponse)
async def embed_text(
body: _EmbedRequest,
current_user: UserProfile = Depends(get_current_user),
) -> _EmbedResponse:
"""Generate a 1536-dim embedding vector for the given text.
Uses ``text-embedding-3-small`` via OpenAI. Auth required (JWT).
Used by Electron (vectordb.ts) for local note search.
"""
vector = await embed(body.text)
return _EmbedResponse(vector=vector)

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"""Device WebSocket endpoint.
Persistent connection from Electron devices to the backend.
WS /api/v1/ws/device?token=<jwt>
Auth: JWT passed as ``?token=`` query parameter (Bearer header is not
available during the WebSocket handshake).
Protocol:
1. Client connects → JWT validated → connection accepted.
2. Client sends ``device_hello`` frame: ``{ type, device_id, scout_ids }``.
3. Backend registers the connection in ``DeviceConnectionManager``.
4. Session enters message dispatch loop + heartbeat.
Incoming frame dispatch:
- ``tool_result`` → resolves a pending tool-call Future.
- ``journey_start`` → starts a guided setup journey session.
- ``journey_message`` → continues a journey conversation.
- ``pong`` → heartbeat acknowledgement (updates last-seen).
- unknown types → logged, ignored.
Outgoing heartbeat: ``{ "type": "ping" }`` every 30 s.
On disconnect:
- Unregisters from DeviceConnectionManager.
- Marks all in-progress AgentRunLog rows for this user as ``error``
with message "device disconnected".
"""
from __future__ import annotations
import asyncio
import json
import logging
from uuid import uuid4
from fastapi import APIRouter, WebSocket, WebSocketDisconnect
from jose import JWTError, jwt
from sqlalchemy import update
from app.api.routes.scout_setup import handle_journey_message, handle_journey_start
from app.config.settings import settings
from app.scouts.engine import ScoutEngine
from app.core.scout_runner import trigger_pending_runs
from app.core.scout_session_buffer import session_buffer
from app.core.brief_agent import run_home_brief, run_project_brief
from app.core.deep_agent import run_contextual_stream, run_home_stream, run_task_brief_research_stream
from app.core.output_formatter import extract_canvas_block
from app.core.device_manager import device_manager
from app.core.memory_middleware import MemoryMiddleware
from app.core.output_formatter import StreamFormatter
from app.core.ws_context import clear_client_executor, set_client_executor
from app.db import async_session
from app.models import ScoutRunLog
from app.schemas import WsFrameType, WsStreamEnd
from app.schemas.contextual import ContextualScope, render_scope_block
logger = logging.getLogger(__name__)
router = APIRouter(prefix="/ws", tags=["device-ws"])
# ── v7 folder index session state ─────────────────────────────────────
# Keyed by sessionId; value: { user_id, project_id, processed, total, cancelled }
_index_sessions: dict[str, dict] = {}
_HEARTBEAT_INTERVAL = 30 # seconds
_PONG_TIMEOUT = 10 # seconds — grace window after a ping
@router.websocket("/device")
async def device_ws(websocket: WebSocket) -> None:
"""Persistent WebSocket endpoint for Electron device connections.
Authentication is via ``?token=<jwt>`` query parameter.
"""
# ── 1. Authenticate before accepting ─────────────────────────────
token = websocket.query_params.get("token", "")
try:
payload = jwt.decode(
token, settings.JWT_SECRET, algorithms=[settings.JWT_ALGORITHM]
)
user_id: str | None = payload.get("sub")
if not user_id:
raise JWTError("missing sub")
except JWTError:
await websocket.close(code=1008) # Policy Violation
return
await websocket.accept()
# ── 2. Await device_hello frame ───────────────────────────────────
try:
raw = await asyncio.wait_for(websocket.receive_text(), timeout=15.0)
except (asyncio.TimeoutError, WebSocketDisconnect):
await websocket.close(code=1008)
return
try:
hello = json.loads(raw)
if hello.get("type") != WsFrameType.device_hello:
raise ValueError("expected device_hello as first frame")
device_id: str = hello["device_id"]
scout_ids: list[str] = hello.get("scout_ids", [])
except (KeyError, ValueError, json.JSONDecodeError) as exc:
logger.warning("device_ws: invalid device_hello from user=%s: %s", user_id, exc)
await websocket.close(code=1008)
return
# ── 3. Register connection ────────────────────────────────────────
device_manager.register(user_id, device_id, websocket)
logger.info(
"device_ws: connected user=%s device=%s scouts=%s",
user_id,
device_id,
scout_ids,
)
# Trigger any overdue agent runs now that the device is connected.
asyncio.create_task(trigger_pending_runs(user_id, device_id, device_manager))
# Drain any queued scout proposals and deliver to the client (non-blocking).
async def _deliver_pending_safe() -> None:
import uuid as _uuid # noqa: PLC0415
try:
await ScoutEngine().deliver_pending(_uuid.UUID(user_id), websocket)
except Exception:
logger.exception("scout deliver_pending failed for user %s", user_id)
asyncio.create_task(_deliver_pending_safe())
# ── 4. Concurrent message loop + heartbeat ────────────────────────
try:
await asyncio.gather(
_message_loop(websocket, user_id),
_heartbeat_loop(websocket),
)
except WebSocketDisconnect:
pass
except Exception as exc:
logger.warning("device_ws: unhandled exception user=%s: %s", user_id, exc)
finally:
device_manager.unregister(user_id)
logger.info("device_ws: disconnected user=%s device=%s", user_id, device_id)
await _mark_runs_disconnected(user_id)
# ── Message dispatch loop ─────────────────────────────────────────────
async def _message_loop(websocket: WebSocket, user_id: str) -> None:
"""Receive frames from Electron and dispatch to the appropriate handler."""
async for raw in websocket.iter_text():
try:
frame: dict = json.loads(raw)
except json.JSONDecodeError:
logger.warning("device_ws: invalid JSON from user=%s", user_id)
continue
frame_type = frame.get("type")
if frame_type == WsFrameType.tool_result:
call_id = frame.get("id")
if call_id:
device_manager.resolve_pending_call(user_id, call_id, frame)
else:
logger.warning(
"device_ws: tool_result missing id from user=%s", user_id
)
elif frame_type == WsFrameType.home_request:
asyncio.create_task(
_handle_home_request(websocket, user_id, frame)
)
elif frame_type == WsFrameType.brief_request:
asyncio.create_task(
_handle_brief_request(websocket, user_id, frame)
)
elif frame_type == WsFrameType.task_brief_request:
asyncio.create_task(
_handle_task_brief_request(websocket, user_id, frame)
)
elif frame_type == WsFrameType.journey_start:
asyncio.create_task(
_handle_journey_start(websocket, user_id, frame)
)
elif frame_type == WsFrameType.journey_message:
asyncio.create_task(
_handle_journey_message(websocket, user_id, frame)
)
elif frame_type == WsFrameType.index_session_start:
asyncio.create_task(
_handle_index_session_start(websocket, user_id, frame)
)
elif frame_type == WsFrameType.index_file_batch:
asyncio.create_task(
_handle_index_file_batch(websocket, user_id, frame)
)
elif frame_type == WsFrameType.index_session_cancel:
await _handle_index_session_cancel(websocket, frame)
elif frame_type == WsFrameType.contextual_request:
asyncio.create_task(
_handle_contextual_request(websocket, user_id, frame)
)
elif frame_type == WsFrameType.contextual_scope_update:
asyncio.create_task(
_handle_contextual_scope_update(websocket, user_id, frame)
)
elif frame_type == "scout_proposal_ack":
proposal_id = frame.get("proposal_id")
if proposal_id:
try:
await ScoutEngine().ack_proposal(proposal_id)
except Exception:
logger.exception("scout ack_proposal failed for %s", proposal_id)
elif frame_type == "pong":
# Heartbeat ack — nothing to do, connection is alive.
pass
else:
logger.debug(
"device_ws: unknown frame type %r from user=%s", frame_type, user_id
)
# ── v3 Chat Handlers ──────────────────────────────────────────────────
async def _make_ws_executor(websocket: WebSocket, user_id: str):
"""Return a callback that sends tool_call frames and awaits tool_result."""
async def _executor(payload: dict) -> dict:
payload["type"] = WsFrameType.tool_call
await websocket.send_text(json.dumps(payload))
future = device_manager.create_pending_call(user_id, payload["id"])
return await future
return _executor
async def _handle_home_request(
websocket: WebSocket,
user_id: str,
frame: dict,
) -> None:
"""Handle a home_request frame — streams HomeFormatter output back on the socket."""
request_id = frame.get("request_id") or str(uuid4())
message: str = frame.get("message", "")
session_id: str = frame.get("session_id") or str(uuid4())
project_id: str | None = frame.get("project_id") or frame.get("projectId") or None
logger.info(
"device_ws: home_request_start user=%s req=%s session=%s project=%s msg=%s",
user_id,
request_id,
session_id,
project_id,
message[:200],
)
# ── Memory: enrich context before LLM call ────────────────────────
async with async_session() as db:
memory = MemoryMiddleware(db)
memory_context = await memory.enrich_context(
user_id,
message,
trace_id=request_id,
session_id=session_id,
)
context: dict = {
"conversation_history": frame.get("conversation_history", []),
"_debug": {"request_id": request_id, "session_id": session_id, "user_id": user_id},
"format_prefs": frame.get("format_prefs"),
**memory_context,
}
executor = await _make_ws_executor(websocket, user_id)
set_client_executor(executor)
response_chunks: list[str] = []
try:
event_stream = run_home_stream(user_id, message, context, project_id=project_id)
formatter = StreamFormatter(request_id=request_id)
async for ws_frame in formatter.format(event_stream):
await websocket.send_text(ws_frame.model_dump_json())
# Collect text chunks to build the full response for episode storage
if ws_frame.type == "stream_text": # type: ignore[union-attr]
response_chunks.append(ws_frame.chunk) # type: ignore[union-attr]
except Exception as exc:
logger.error(
"device_ws: home_request failed user=%s req=%s: %s",
user_id, request_id, exc,
)
finally:
clear_client_executor()
# ── Memory: store episode after response ──────────────────────────
async with async_session() as db:
memory = MemoryMiddleware(db)
await memory.store_episode(
user_id, session_id, message, "".join(response_chunks), trace_id=request_id
)
logger.info(
"device_ws: home_request_end user=%s req=%s session=%s response_chars=%d",
user_id,
request_id,
session_id,
len("".join(response_chunks)),
)
# ── v8 Contextual Sidebar Handlers ───────────────────────────────────
def get_session_buffer(user_id: str, session_id: str, channel: str = "contextual"):
"""Return a session-scoped buffer proxy for the given user+session.
Returns a _ContextualBufferProxy that exposes append_system_message().
Defined at module level so tests can monkeypatch it.
The channel kwarg is accepted for forward-compatibility.
"""
from app.core.scout_session_buffer import ContextualBufferProxy # noqa: PLC0415
return ContextualBufferProxy(session_buffer, user_id, session_id)
async def _handle_contextual_request(
websocket: WebSocket,
user_id: str,
frame: dict,
) -> None:
"""Handle a contextual_request frame — runs the contextual agent and streams frames."""
request_id = frame.get("request_id") or str(uuid4())
message: str = frame.get("message", "")
session_id: str = frame.get("session_id") or str(uuid4())
scope_payload: dict = frame.get("scope", {})
logger.info(
"device_ws: contextual_request_start user=%s req=%s session=%s msg=%s",
user_id,
request_id,
session_id,
message[:200],
)
scope = ContextualScope.model_validate(scope_payload)
# Enrich context with memory before the LLM call.
async with async_session() as db:
memory = MemoryMiddleware(db)
memory_context = await memory.enrich_context(
user_id,
message,
trace_id=request_id,
session_id=session_id,
)
context: dict = {
"conversation_history": frame.get("conversation_history", []),
"format_prefs": frame.get("format_prefs"),
"_debug": {"request_id": request_id, "session_id": session_id, "user_id": user_id},
**memory_context,
}
executor = await _make_ws_executor(websocket, user_id)
set_client_executor(executor)
response_chunks: list[str] = []
try:
event_stream = run_contextual_stream(
user_id=user_id,
message=message,
context=context,
scope=scope,
)
formatter = StreamFormatter(request_id=request_id)
async for ws_frame in formatter.format(event_stream):
await websocket.send_text(ws_frame.model_dump_json())
if ws_frame.type == "stream_text": # type: ignore[union-attr]
response_chunks.append(ws_frame.chunk) # type: ignore[union-attr]
except Exception as exc:
logger.error(
"device_ws: contextual_request failed user=%s req=%s: %s",
user_id, request_id, exc,
)
finally:
clear_client_executor()
# Store episode so the contextual agent can recall prior turns.
async with async_session() as db:
memory = MemoryMiddleware(db)
await memory.store_episode(
user_id, session_id, message, "".join(response_chunks), trace_id=request_id
)
logger.info(
"device_ws: contextual_request_end user=%s req=%s session=%s response_chars=%d",
user_id,
request_id,
session_id,
len("".join(response_chunks)),
)
async def _handle_contextual_scope_update(
websocket: WebSocket,
user_id: str,
frame: dict,
) -> None:
"""Handle a contextual_scope_update frame.
Injects a synthetic system message into the session buffer so the next
agent turn knows the user navigated. No LLM call is made.
"""
session_id: str = frame.get("session_id") or str(uuid4())
scope = ContextualScope.model_validate(frame.get("scope", {}))
block = render_scope_block(scope)
buf = get_session_buffer(user_id, session_id, channel="contextual")
buf.append_system_message(
f"User navigated to a new view. {block} Treat this as the new active context."
)
await websocket.send_text(json.dumps({
"type": WsFrameType.contextual_scope_ack,
"session_id": session_id,
}))
logger.info(
"device_ws: contextual_scope_update user=%s session=%s page=%s",
user_id, session_id, scope.page,
)
async def _handle_brief_request(
websocket: WebSocket,
user_id: str,
frame: dict,
) -> None:
"""Handle a brief_request frame — streams plain-text brief back on the socket.
No episode storage — briefs are not conversations.
"""
import uuid as _uuid
request_id = frame.get("request_id") or str(uuid4())
session_id = frame.get("session_id") or str(uuid4())
mode: str = frame.get("mode", "home")
project_id: str | None = frame.get("project_id")
logger.info(
"device_ws: brief_request_start user=%s req=%s mode=%s project_id=%s",
user_id, request_id, mode, project_id,
)
# Validate project_id for project mode before touching LLM.
if mode == "project":
try:
if not project_id:
raise ValueError("project_id required for project mode")
_uuid.UUID(project_id)
except (ValueError, AttributeError) as exc:
logger.warning(
"device_ws: brief_request invalid project_id user=%s req=%s: %s",
user_id, request_id, exc,
)
await websocket.send_text(
WsStreamEnd(request_id=request_id, error=str(exc)).model_dump_json()
)
return
# Enrich context with memory (no user message — use empty string as probe).
async with async_session() as db:
memory = MemoryMiddleware(db)
memory_context = await memory.enrich_context(
user_id,
"",
trace_id=request_id,
session_id=session_id,
)
context: dict = {
"_debug": {"request_id": request_id, "session_id": session_id, "user_id": user_id},
"format_prefs": frame.get("format_prefs"),
**memory_context,
}
executor = await _make_ws_executor(websocket, user_id)
set_client_executor(executor)
try:
if mode == "project":
event_stream = run_project_brief(user_id, project_id, context) # type: ignore[arg-type]
else:
event_stream = run_home_brief(user_id, context)
formatter = StreamFormatter(request_id=request_id)
async for ws_frame in formatter.format(event_stream):
await websocket.send_text(ws_frame.model_dump_json())
except Exception as exc:
logger.error(
"device_ws: brief_request failed user=%s req=%s: %s",
user_id, request_id, exc,
)
await websocket.send_text(
WsStreamEnd(request_id=request_id, error=str(exc)).model_dump_json()
)
finally:
clear_client_executor()
logger.info(
"device_ws: brief_request_end user=%s req=%s mode=%s",
user_id, request_id, mode,
)
# ── v6 Task Brief Handler ────────────────────────────────────────────
async def _handle_task_brief_request(
websocket: WebSocket,
user_id: str,
frame: dict,
) -> None:
"""Handle a task_brief_request frame — Stage-1 executive assistant deep research.
Streams the briefing markdown back to the client.
On stream_end, emits a ``canvas_draft`` mutation if the agent produced one.
"""
request_id = frame.get("request_id") or str(uuid4())
session_id = frame.get("session_id") or str(uuid4())
task_id: str = frame.get("task_id") or frame.get("taskId") or ""
project_id: str | None = frame.get("project_id") or frame.get("projectId") or None
logger.info(
"device_ws: task_brief_request_start user=%s req=%s task=%s project=%s [cache_miss]",
user_id, request_id, task_id, project_id,
)
if not task_id:
await websocket.send_text(
WsStreamEnd(request_id=request_id, error="task_id is required").model_dump_json()
)
return
async with async_session() as db:
memory = MemoryMiddleware(db)
memory_context = await memory.enrich_context(
user_id,
f"task brief: {task_id}",
trace_id=request_id,
session_id=session_id,
)
context: dict = {
"_debug": {"request_id": request_id, "session_id": session_id, "user_id": user_id},
"format_prefs": frame.get("format_prefs"),
**memory_context,
}
executor = await _make_ws_executor(websocket, user_id)
set_client_executor(executor)
response_chunks: list[str] = []
try:
event_stream = run_task_brief_research_stream(user_id, task_id, context, project_id=project_id)
formatter = StreamFormatter(request_id=request_id)
async for ws_frame in formatter.format(event_stream):
if ws_frame.type == "stream_text": # type: ignore[union-attr]
response_chunks.append(ws_frame.chunk) # type: ignore[union-attr]
await websocket.send_text(ws_frame.model_dump_json())
elif ws_frame.type == "stream_start":
await websocket.send_text(ws_frame.model_dump_json())
# stream_end is emitted below with mutations — skip formatter's version
except Exception as exc:
logger.error(
"device_ws: task_brief_request failed user=%s req=%s task=%s: %s",
user_id, request_id, task_id, exc,
)
await websocket.send_text(
WsStreamEnd(request_id=request_id, error=str(exc)).model_dump_json()
)
return
finally:
clear_client_executor()
# Extract canvas block then emit stream_end with optional mutations.
full_response = "".join(response_chunks)
_visible, canvas_content, canvas_kind = extract_canvas_block(full_response)
mutations: list[dict] = []
if canvas_content:
mutations.append({
"type": "canvas_draft",
"content": canvas_content,
"kind": canvas_kind,
})
await websocket.send_text(
WsStreamEnd(request_id=request_id, mutations=mutations or None).model_dump_json()
)
logger.info(
"device_ws: task_brief_request_end user=%s req=%s task=%s response_chars=%d canvas=%s",
user_id, request_id, task_id, len(full_response), canvas_kind or "none",
)
# ── v4 Journey Handlers ─────────────────────────────────────────────
async def _handle_journey_start(
websocket: WebSocket,
user_id: str,
frame: dict,
) -> None:
"""Handle a journey_start frame — explores directory and sends first question."""
executor = await _make_ws_executor(websocket, user_id)
set_client_executor(executor)
try:
reply = await handle_journey_start(user_id, frame)
await websocket.send_text(json.dumps(reply))
except Exception as exc:
logger.error(
"device_ws: journey_start failed user=%s: %s", user_id, exc
)
await websocket.send_text(json.dumps({
"type": "journey_reply",
"session_id": frame.get("session_id", ""),
"message": f"Failed to start journey: {exc}",
"done": True,
"prompt_template": None,
}))
finally:
clear_client_executor()
async def _handle_journey_message(
websocket: WebSocket,
user_id: str,
frame: dict,
) -> None:
"""Handle a journey_message frame — continues the journey conversation."""
executor = await _make_ws_executor(websocket, user_id)
set_client_executor(executor)
try:
reply = await handle_journey_message(user_id, frame)
await websocket.send_text(json.dumps(reply))
except Exception as exc:
session_id = frame.get("session_id", "")
logger.error(
"device_ws: journey_message failed user=%s session=%s: %s",
user_id, session_id, exc,
)
await websocket.send_text(json.dumps({
"type": "journey_reply",
"session_id": session_id,
"message": f"Journey error: {exc}",
"done": True,
"prompt_template": None,
}))
finally:
clear_client_executor()
# ── v7 Folder Index Handlers ──────────────────────────────────────────
async def _handle_index_session_start(
websocket: WebSocket,
user_id: str,
frame: dict,
) -> None:
"""Register a new folder index session. No response sent — client is declaring intent."""
session_id: str = frame.get("sessionId") or frame.get("session_id") or ""
project_id: str | None = frame.get("projectId") or frame.get("project_id")
total: int = int(frame.get("totalFiles") or frame.get("total_files") or 0)
if not session_id:
logger.warning("device_ws: index_session_start missing sessionId user=%s", user_id)
return
_index_sessions[session_id] = {
"user_id": user_id,
"project_id": project_id,
"processed": 0,
"total": total,
"cancelled": False,
}
logger.info(
"device_ws: index_session_start user=%s session=%s project=%s total=%d",
user_id, session_id, project_id, total,
)
async def _handle_index_session_cancel(
websocket: WebSocket,
frame: dict,
) -> None:
"""Mark a session as cancelled and emit index_session_done(cancelled)."""
session_id: str = frame.get("sessionId") or frame.get("session_id") or ""
session = _index_sessions.get(session_id)
if session:
session["cancelled"] = True
await websocket.send_text(json.dumps({
"type": WsFrameType.index_session_done,
"sessionId": session_id,
"status": "cancelled",
}))
_index_sessions.pop(session_id, None)
logger.info("device_ws: index_session_cancel session=%s", session_id)
async def _handle_index_file_batch(
websocket: WebSocket,
user_id: str,
frame: dict,
) -> None:
"""Process a batch of files for an index session, streaming results back."""
# Lazy imports to avoid heavy load at module startup.
from app.core.folder_indexer import ( # noqa: PLC0415
summarize_image,
summarize_pdf,
summarize_docx,
summarize_text,
)
from app.billing.tier_manager import tier_manager # noqa: PLC0415
from app.billing.quota import add_token_usage # noqa: PLC0415
session_id: str = frame.get("sessionId") or frame.get("session_id") or ""
files: list[dict] = frame.get("files", [])
session = _index_sessions.get(session_id)
if not session or session.get("cancelled"):
return
async with async_session() as db:
tier = await tier_manager.get_tier(user_id, db)
raw_cap = tier_manager.get_feature_value(tier, "folder_monthly_tokens")
cap: int | None = None if raw_cap == -1 else raw_cap
for file_info in files:
if session.get("cancelled"):
return
# Electron's toSnakeCase converts payload keys, so accept both forms.
rel_path: str = file_info.get("relPath") or file_info.get("rel_path") or ""
kind: str = file_info.get("kind") or "text"
content: str = file_info.get("content") or ""
ext: str = file_info.get("ext") or ""
mime: str = file_info.get("mime") or "application/octet-stream"
name: str = rel_path.split("/")[-1] or rel_path
try:
if kind == "image":
res = await summarize_image(image_b64=content, mime=mime)
elif kind == "pdf":
res = await summarize_pdf(pdf_b64=content, name=name)
elif kind == "docx":
res = await summarize_docx(docx_b64=content, name=name)
else:
res = await summarize_text(content=content, ext=ext, name=name)
except Exception as exc:
logger.warning(
"device_ws: index_file_batch summarize failed session=%s path=%s: %s",
session_id, rel_path, exc,
)
await websocket.send_text(json.dumps({
"type": WsFrameType.index_file_result,
"sessionId": session_id,
"relPath": rel_path,
"summary": None,
"tokensUsed": 0,
"error": str(exc),
}))
session["processed"] += 1
continue
# Account for token usage and check cap.
usage = await add_token_usage(
user_id=user_id,
feature="folder_index",
tokens=res.tokens_used,
db=db,
cap=cap,
)
await websocket.send_text(json.dumps({
"type": WsFrameType.index_file_result,
"sessionId": session_id,
"relPath": rel_path,
"summary": res.summary,
"tokensUsed": res.tokens_used,
}))
session["processed"] += 1
if usage.exhausted:
await websocket.send_text(json.dumps({
"type": WsFrameType.index_session_done,
"sessionId": session_id,
"status": "quota_exceeded",
}))
_index_sessions.pop(session_id, None)
logger.info(
"device_ws: index_session quota_exceeded user=%s session=%s",
user_id, session_id,
)
return
# After processing the batch, emit progress.
processed = session["processed"]
total = session["total"]
await websocket.send_text(json.dumps({
"type": WsFrameType.index_session_progress,
"sessionId": session_id,
"processed": processed,
"total": total,
}))
if processed >= total:
await websocket.send_text(json.dumps({
"type": WsFrameType.index_session_done,
"sessionId": session_id,
"status": "completed",
}))
_index_sessions.pop(session_id, None)
logger.info(
"device_ws: index_session_done completed user=%s session=%s processed=%d",
user_id, session_id, processed,
)
# ── Heartbeat ─────────────────────────────────────────────────────────
async def _heartbeat_loop(websocket: WebSocket) -> None:
"""Send a ping frame every 30 s to keep the connection alive."""
while True:
await asyncio.sleep(_HEARTBEAT_INTERVAL)
await websocket.send_text(json.dumps({"type": "ping"}))
# ── Disconnect cleanup ────────────────────────────────────────────────
async def _mark_runs_disconnected(user_id: str) -> None:
"""Mark all in-progress ScoutRunLog rows as 'error' for this user."""
try:
async with async_session() as db:
await db.execute(
update(ScoutRunLog)
.where(
ScoutRunLog.user_id == user_id,
ScoutRunLog.status == "running",
)
.values(
status="error",
errors=["device disconnected"],
)
)
await db.commit()
except Exception as exc:
logger.error(
"device_ws: failed to mark runs as disconnected for user=%s: %s",
user_id,
exc,
)

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@@ -0,0 +1,225 @@
"""Memory management routes — view/edit/delete user memory tiers.
All routes require authentication. Data is always user-scoped.
"""
from __future__ import annotations
import logging
from datetime import datetime, timezone
from typing import Annotated
from fastapi import APIRouter, Depends, Header, HTTPException, status
from pydantic import BaseModel, Field
from sqlalchemy import delete, select
from sqlalchemy.ext.asyncio import AsyncSession
from app.api.deps import get_current_user
from app.core.memory_middleware import MemoryMiddleware
from app.db import get_session
from app.models import (
ExtractionQueue,
MemoryAssociative,
MemoryCore,
MemoryEpisodic,
MemoryProactive,
MemoryRelation,
)
from app.schemas import UserProfile
router = APIRouter(prefix="/memory", tags=["memory"])
logger = logging.getLogger(__name__)
_ALLOWED_PREDICATES = {
"works_at",
"reports_to",
"stakeholder_of",
"last_contacted_on",
"owes_followup",
"manages",
"collaborates_with",
"owns",
"member_of",
"custom",
}
# ── Response schemas ─────────────────────────────────────────────────────────
class RelationOut(BaseModel):
id: str
subject_label: str
subject_type: str
predicate: str
object_label: str
object_type: str
confidence: float
last_confirmed_at: int | None = None # epoch ms
class RelationPatch(BaseModel):
subject_label: str | None = None
object_label: str | None = None
predicate: str | None = None
confidence: float | None = Field(None, ge=0.0, le=1.0)
class CoreAddBody(BaseModel):
key: str = Field(..., min_length=1, max_length=255)
value: str = Field(..., min_length=1)
# ── Helpers ──────────────────────────────────────────────────────────────────
def _relation_to_out(row: MemoryRelation) -> RelationOut:
last_ms: int | None = None
if row.last_confirmed_at is not None:
last_ms = int(row.last_confirmed_at.timestamp() * 1000)
return RelationOut(
id=row.id,
subject_label=row.subject_label,
subject_type=row.subject_type,
predicate=row.predicate,
object_label=row.object_label,
object_type=row.object_type,
confidence=row.confidence,
last_confirmed_at=last_ms,
)
# ── Routes ───────────────────────────────────────────────────────────────────
@router.get("/core", response_model=dict[str, str])
async def get_core_memory(
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> dict[str, str]:
"""Return all core memory k/v pairs (plaintext) for the current user."""
mw = MemoryMiddleware(db)
blocks = await mw.list_core_blocks(current_user.id)
return {b["label"]: b["value"] for b in blocks}
@router.delete("/core/{key}", status_code=status.HTTP_204_NO_CONTENT)
async def delete_core_key(
key: str,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> None:
"""Delete a single core memory key (GDPR Art. 17)."""
mw = MemoryMiddleware(db)
deleted = await mw.delete_core(current_user.id, key)
if not deleted:
raise HTTPException(status_code=status.HTTP_404_NOT_FOUND, detail="Key not found")
@router.post("/core", status_code=status.HTTP_201_CREATED, response_model=dict[str, str])
async def add_core_key(
body: CoreAddBody,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> dict[str, str]:
"""Add or overwrite a core memory key/value pair."""
mw = MemoryMiddleware(db)
await mw.update_core(current_user.id, body.key, body.value)
return {body.key: body.value}
@router.get("/relational", response_model=list[RelationOut])
async def get_relational_memory(
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> list[RelationOut]:
"""Return all relational memory rows for the current user."""
mw = MemoryMiddleware(db)
rows = await mw.query_relations(current_user.id, limit=200)
return [_relation_to_out(r) for r in rows]
@router.patch("/relational/{relation_id}", response_model=RelationOut)
async def patch_relation(
relation_id: str,
body: RelationPatch,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> RelationOut:
"""Edit a relation row's labels, predicate, or confidence."""
if body.predicate is not None and body.predicate not in _ALLOWED_PREDICATES:
raise HTTPException(
status_code=status.HTTP_422_UNPROCESSABLE_ENTITY,
detail=f"predicate must be one of: {sorted(_ALLOWED_PREDICATES)}",
)
result = await db.execute(
select(MemoryRelation).where(
MemoryRelation.id == relation_id,
MemoryRelation.user_id == current_user.id,
)
)
row = result.scalar_one_or_none()
if row is None:
raise HTTPException(status_code=status.HTTP_404_NOT_FOUND, detail="Relation not found")
if body.subject_label is not None:
row.subject_label = body.subject_label
if body.object_label is not None:
row.object_label = body.object_label
if body.predicate is not None:
row.predicate = body.predicate
if body.confidence is not None:
row.confidence = body.confidence
row.last_confirmed_at = datetime.now(timezone.utc)
await db.commit()
await db.refresh(row)
logger.info("memory: patch_relation user=%s relation=%s", current_user.id, relation_id)
return _relation_to_out(row)
@router.delete("/relational/{relation_id}", status_code=status.HTTP_204_NO_CONTENT)
async def delete_relation(
relation_id: str,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> None:
"""Hard-delete a relation row (GDPR Art. 17)."""
result = await db.execute(
select(MemoryRelation).where(
MemoryRelation.id == relation_id,
MemoryRelation.user_id == current_user.id,
)
)
row = result.scalar_one_or_none()
if row is None:
raise HTTPException(status_code=status.HTTP_404_NOT_FOUND, detail="Relation not found")
await db.delete(row)
await db.commit()
logger.info("memory: delete_relation user=%s relation=%s", current_user.id, relation_id)
@router.post("/forget-all", status_code=status.HTTP_204_NO_CONTENT)
async def forget_all(
x_confirm: Annotated[str | None, Header(alias="X-Confirm")] = None,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> None:
"""Wipe all memory tiers for the current user (GDPR Art. 17).
Requires ``X-Confirm: true`` header. Does NOT delete the user account.
"""
if x_confirm != "true":
raise HTTPException(
status_code=status.HTTP_400_BAD_REQUEST,
detail="Missing or invalid X-Confirm header. Send X-Confirm: true to confirm.",
)
uid = current_user.id
await db.execute(delete(MemoryCore).where(MemoryCore.user_id == uid))
await db.execute(delete(MemoryAssociative).where(MemoryAssociative.user_id == uid))
await db.execute(delete(MemoryEpisodic).where(MemoryEpisodic.user_id == uid))
await db.execute(delete(MemoryProactive).where(MemoryProactive.user_id == uid))
await db.execute(delete(MemoryRelation).where(MemoryRelation.user_id == uid))
await db.execute(delete(ExtractionQueue).where(ExtractionQueue.user_id == uid))
await db.commit()
logger.warning("memory: forget_all GDPR wipe user=%s", uid)

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@@ -0,0 +1,513 @@
"""Chatbot Journey — WS-based guided conversation to build an ScoutConfig.
The journey is driven entirely through WebSocket frames (no REST endpoints).
The device WS handler dispatches ``journey_start`` and ``journey_message``
frames to the functions exported here.
Journey flow:
1. FE sends ``journey_start`` frame with basic agent info (directory,
data_types, schedule).
2. Server creates an in-memory session, sets up a WS executor so the
setup LLM can use file-system tools, does a first directory scrape,
and sends back a ``journey_reply`` with the first question.
3. FE sends ``journey_message`` frames for each user reply.
4. Server appends the user message, calls the LLM (which may read files
via tools), and sends back a ``journey_reply``.
5. After 3-5 turns the LLM wraps up by emitting an ``ScoutConfig`` JSON
block delimited by ``AGENT_CONFIG_START`` / ``AGENT_CONFIG_END``.
6. Server parses and validates the JSON with Pydantic, sends
``journey_reply`` with ``done=True`` and the serialised config.
FE stores it locally.
"""
from __future__ import annotations
import json
import logging
import time
import uuid
from dataclasses import dataclass, field
from typing import Any
from langchain_core.messages import AIMessage, HumanMessage, SystemMessage, ToolMessage
from app.agents.filesystem_agent import make_directory_tools
from app.core.langfuse_client import compile_prompt, extract_usage, get_langfuse, get_prompt_or_fallback, langfuse_context
from app.core.llm import get_agent_llm, model_for_agent
from app.schemas import ScoutConfig
logger = logging.getLogger(__name__)
# ── Session TTL ───────────────────────────────────────────────────────────
_SESSION_TTL_SECONDS: int = 1800 # 30 minutes
# Sentinel strings used to delimit the LLM-produced ScoutConfig JSON.
_CONFIG_START = "AGENT_CONFIG_START"
_CONFIG_END = "AGENT_CONFIG_END"
# Minimum turns before we consider nudging the LLM to wrap up.
_MIN_TURNS_BEFORE_NUDGE: int = 3
# Hard cap to avoid infinite loops (safety net, not the primary stopping criterion).
_MAX_TURNS: int = 15
# Max tool-calling steps per LLM invocation.
_MAX_TOOL_STEPS: int = 6
# ── In-memory session store ───────────────────────────────────────────────
@dataclass
class JourneySession:
session_id: str
user_id: str
agent_type: str # "local" | "cloud"
directory: str
data_types: list[str]
history: list[dict[str, Any]] = field(default_factory=list)
system_prompt: str = ""
langfuse_prompt: Any = None
created_at: float = field(default_factory=time.monotonic)
def is_expired(self) -> bool:
return (time.monotonic() - self.created_at) > _SESSION_TTL_SECONDS
# session_id → session
_sessions: dict[str, JourneySession] = {}
def get_journey_session(session_id: str, user_id: str) -> JourneySession | None:
"""Retrieve session; return None on missing, expired, or wrong owner."""
s = _sessions.get(session_id)
if s is None or s.is_expired():
_sessions.pop(session_id, None)
return None
if s.user_id != user_id:
return None
return s
# ── System prompt ─────────────────────────────────────────────────────────
_JOURNEY_SYSTEM_PROMPT = """\
You are a friendly assistant helping a freelancer configure a data-extraction agent.
Your job is to understand what files the user has in their directory and produce a
structured ScoutConfig JSON that the extraction agent will use as its instruction set.
You have access to file-system tools to explore the user's directory:
- list_directory: see folder structure and file names
- read_file_content: peek at a file's content
- get_file_metadata: check file size, extension, dates
The user's configured directory is: {directory}
Target data types: {data_types}
## Your process
### Step 1 — Explore the directory
Use list_directory and read_file_content to understand what types of files are present
(HTML emails, plain-text documents, CSVs, etc.).
### Step 2 — Identify content types
For each distinct file type found, decide:
- A short id (e.g. "email_html", "plain_text", "csv")
- Which preprocessing handler to use: "email_html" for HTML emails, "generic" for everything else
- A human-readable label and optional detection_hint
### Step 3 — Ask focused questions (one at a time)
Cover these topics based on what you discovered:
1. How to map content to entity types (task / note / timeline entry)
2. Field mapping rules (e.g. email Subject → task title, filename → note title)
3. Priority or status rules (e.g. "urgent" in subject → high priority)
4. Date extraction (e.g. "by Friday" → dueDate)
5. Exclusion rules (e.g. skip newsletters, skip files with no project match)
### Step 4 — Produce the ScoutConfig JSON
Once you are ≥ 90% confident, output the final config between these exact markers
(each on its own line):
{config_start}
{{
"content_types": [
{{
"id": "email_html",
"label": "Email HTML",
"detection_hint": "HTML file with From/To/Subject headers",
"preprocessing": "email_html",
"extraction_prompt": "Detailed extraction instructions for this content type..."
}}
],
"global_rules": [
"If the file cannot be matched to any project, do not create any entity."
],
"data_types": {data_types_json}
}}
{config_end}
## Rules for the extraction_prompt field
- Describe when to create a task vs note vs timeline entry (be specific and concrete)
- Include field mapping rules based on what you found in the directory
- Include priority/status/date rules if applicable
- Do NOT include projectId logic — the runner handles project assignment automatically
- Do NOT mention isAiSuggested — the runner always sets it to 1
## Constraints
- Never ask about projects, projectId, or how to link records to projects
- Never include projectId or project creation logic in the generated config
- Keep asking questions until ≥ 90% confident, then output the JSON immediately
{existing_section}\
Begin by exploring the directory, then ask your first question.\
"""
def _build_system_prompt(
directory: str,
data_types: list[str],
existing_config: str | None = None,
) -> tuple[str, Any]:
"""Return ``(compiled_system_prompt, langfuse_prompt_obj_or_None)``."""
existing_section = (
"\nThe user already has the following ScoutConfig — refine it based on their answers:\n"
f"```json\n{existing_config}\n```\n"
if existing_config
else ""
)
template, prompt_obj = get_prompt_or_fallback(
"journey_system", _JOURNEY_SYSTEM_PROMPT
)
compiled = compile_prompt(
template,
prompt_obj,
directory=directory,
data_types=", ".join(data_types),
data_types_json=json.dumps(data_types),
config_start=_CONFIG_START,
config_end=_CONFIG_END,
existing_section=existing_section,
)
return compiled, prompt_obj
# ── ScoutConfig extraction ────────────────────────────────────────────────
def _extract_agent_config(text: str) -> str | None:
"""Return validated ScoutConfig JSON string from between markers, or None.
Parses the JSON with Pydantic to ensure it conforms to the schema before
returning. Returns None if markers are absent or JSON is invalid.
"""
if _CONFIG_START not in text or _CONFIG_END not in text:
return None
start_idx = text.index(_CONFIG_START) + len(_CONFIG_START)
end_idx = text.index(_CONFIG_END)
raw = text[start_idx:end_idx].strip()
if not raw:
return None
try:
parsed = ScoutConfig.model_validate_json(raw)
return parsed.model_dump_json()
except Exception as exc:
logger.warning("agent_setup: failed to parse ScoutConfig JSON: %s", exc)
return None
# ── LLM call with tool support ───────────────────────────────────────────
def _as_text(content: Any) -> str:
if content is None:
return ""
if isinstance(content, str):
return content
if isinstance(content, list):
parts: list[str] = []
for item in content:
if isinstance(item, str):
parts.append(item)
elif isinstance(item, dict):
text = item.get("text")
if isinstance(text, str):
parts.append(text)
return "".join(parts)
return str(content)
async def _call_llm_with_tools(
system_prompt: str,
history: list[dict[str, Any]],
tools: list[Any],
*,
user_id: str = "",
session_id: str = "",
langfuse_prompt: Any = None,
) -> str:
"""Build LangChain messages from history and invoke the LLM with tools.
Handles tool-calling loops: if the LLM calls tools, execute them and
continue until a final text response is produced.
"""
lf = get_langfuse()
messages: list[Any] = [SystemMessage(content=system_prompt)]
for turn in history:
if turn["role"] == "user":
messages.append(HumanMessage(content=turn["content"]))
else:
messages.append(AIMessage(content=turn["content"]))
llm = get_agent_llm("setup", temperature=0.4)
llm_with_tools = llm.bind_tools(tools)
tool_map = {tool_def.name: tool_def for tool_def in tools}
_lf_ctx = langfuse_context(user_id=user_id or None, session_id=session_id or None)
_lf_ctx.__enter__()
_span_ctx = (
lf.start_as_current_observation(
as_type="span",
name="journey-setup",
input=history[-1]["content"] if history else "",
)
if lf else None
)
_span = _span_ctx.__enter__() if _span_ctx else None
try:
for step in range(_MAX_TOOL_STEPS):
_gen_ctx = (
lf.start_as_current_observation(
as_type="generation",
name="journey-setup-llm",
model=model_for_agent("setup"),
prompt=langfuse_prompt,
input=messages,
)
if lf else None
)
_gen = _gen_ctx.__enter__() if _gen_ctx else None
response: AIMessage = await llm_with_tools.ainvoke(messages)
if _gen_ctx:
_gen.update(output=_as_text(response.content), usage_details=extract_usage(response))
_gen_ctx.__exit__(None, None, None)
resp_text = _as_text(response.content)
# Guard against empty responses (e.g. model returned finish_reason
# 'error' which LiteLLM maps to 'stop' with empty content).
if not response.tool_calls and not resp_text.strip():
logger.warning(
"agent_setup: journey LLM returned empty response at step %d — retrying",
step,
)
# Drop the empty AIMessage so we don't pollute history, and retry.
continue
messages.append(response)
if not response.tool_calls:
if _span:
_span.update(output=resp_text)
return resp_text
for call in response.tool_calls:
call_name = str(call.get("name", ""))
call_args = call.get("args", {})
logger.info(
"agent_setup: journey tool_call name=%s args=%s",
call_name,
json.dumps(call_args, ensure_ascii=True)[:500],
)
tool_fn = tool_map.get(call_name)
if tool_fn is None:
tool_output = f"Unknown tool: {call_name}"
else:
tool_output = await tool_fn.ainvoke(call_args)
logger.info(
"agent_setup: journey tool_result name=%s output=%s",
call_name,
str(tool_output)[:800],
)
messages.append(ToolMessage(content=str(tool_output), tool_call_id=call["id"]))
# Fallback: exceeded max steps.
final = await llm.ainvoke(messages)
final_text = _as_text(final.content)
if _span:
_span.update(output=final_text)
return final_text or (
"Sorry, I had trouble processing the files. "
"Could you try again? If the issue persists, the files might be too large for me to analyse."
)
finally:
if _span_ctx:
_span_ctx.__exit__(None, None, None)
_lf_ctx.__exit__(None, None, None)
if lf:
lf.flush()
# ── Journey handlers (called from device_ws.py) ──────────────────────────
async def handle_journey_start(
user_id: str,
frame: dict[str, Any],
) -> dict[str, Any]:
"""Handle a ``journey_start`` WS frame.
Creates a session, runs the setup LLM with directory exploration,
and returns the ``journey_reply`` payload.
"""
agent_type = frame.get("agent_type", "local")
directory = frame.get("directory", "")
data_types = frame.get("data_types", [])
existing_config = frame.get("existing_config")
# Use the session_id provided by the FE so the reply matches the
# listener key; fall back to a generated one if absent.
session_id = frame.get("session_id") or str(uuid.uuid4())
system_prompt, langfuse_prompt = _build_system_prompt(directory, data_types, existing_config)
session = JourneySession(
session_id=session_id,
user_id=user_id,
agent_type=agent_type,
directory=directory,
data_types=data_types,
system_prompt=system_prompt,
langfuse_prompt=langfuse_prompt,
)
# Seed with an initial user message — some providers require at least one
# user/input message to be present.
seed_history: list[dict[str, Any]] = [
{"role": "user", "content": "Hi, I'm ready to set up my agent. Please explore my directory and ask me your first question."},
]
ai_reply = await _call_llm_with_tools(
system_prompt=system_prompt,
history=seed_history,
tools=make_directory_tools(directory),
user_id=user_id,
session_id=session_id,
langfuse_prompt=langfuse_prompt,
)
session.history.extend(seed_history)
session.history.append({"role": "assistant", "content": ai_reply})
_sessions[session_id] = session
logger.info(
"agent_setup: journey session %s started for user %s (directory=%s)",
session_id,
user_id,
directory,
)
# Check if the LLM produced the config on the first turn (unlikely but possible).
agent_config = _extract_agent_config(ai_reply)
done = agent_config is not None
display_message = ai_reply
if done:
display_message = (
ai_reply[: ai_reply.index(_CONFIG_START)].strip()
or "Here is your agent configuration. You can save it or continue refining."
)
_sessions.pop(session_id, None)
return {
"type": "journey_reply",
"session_id": session_id,
"message": display_message,
"done": done,
"agent_config": agent_config,
}
async def handle_journey_message(
user_id: str,
frame: dict[str, Any],
) -> dict[str, Any]:
"""Handle a ``journey_message`` WS frame.
Appends the user message, calls the LLM, and returns the
``journey_reply`` payload.
"""
session_id = frame.get("session_id", "")
message = frame.get("message", "")
session = get_journey_session(session_id, user_id)
if session is None:
return {
"type": "journey_reply",
"session_id": session_id,
"message": "Journey session not found or expired. Please start a new setup.",
"done": True,
"agent_config": None,
}
# Append user turn.
session.history.append({"role": "user", "content": message})
# Call the LLM with tools.
session_tools = make_directory_tools(session.directory)
ai_reply = await _call_llm_with_tools(
system_prompt=session.system_prompt,
history=session.history,
tools=session_tools,
user_id=session.user_id,
session_id=session_id,
langfuse_prompt=session.langfuse_prompt,
)
session.history.append({"role": "assistant", "content": ai_reply})
# Check if the LLM produced the final config.
agent_config = _extract_agent_config(ai_reply)
done = agent_config is not None
# If the LLM didn't produce a config, nudge it once it hits the hard safety cap.
if not done:
turns = sum(1 for t in session.history if t["role"] == "user")
if turns >= _MAX_TURNS:
nudge_content = (
"[System: You have enough information. Please generate the final "
f"ScoutConfig JSON now, wrapped in {_CONFIG_START} / {_CONFIG_END} markers.]"
)
session.history.append({"role": "user", "content": nudge_content})
nudge_reply = await _call_llm_with_tools(
system_prompt=session.system_prompt,
history=session.history,
tools=session_tools,
user_id=session.user_id,
session_id=session_id,
langfuse_prompt=session.langfuse_prompt,
)
session.history.append({"role": "assistant", "content": nudge_reply})
agent_config = _extract_agent_config(nudge_reply)
if agent_config is not None:
done = True
ai_reply = nudge_reply
display_message = ai_reply
if done:
display_message = (
ai_reply[: ai_reply.index(_CONFIG_START)].strip()
if _CONFIG_START in ai_reply
else "Here is your agent configuration. You can save it or continue refining."
)
_sessions.pop(session_id, None)
logger.info("agent_setup: journey session %s completed for user %s", session_id, user_id)
return {
"type": "journey_reply",
"session_id": session_id,
"message": display_message,
"done": done,
"agent_config": agent_config,
}

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@@ -0,0 +1,120 @@
"""Gmail Pub/Sub push receiver.
Google Pub/Sub push subscriptions deliver Gmail watch notifications as POST
requests with a JSON envelope. The body payload contains a base64-encoded
JSON blob with ``emailAddress`` + ``historyId``. We resolve the user by
email, look up their cloud_scout_configs row for provider='gmail', and
hand off to ScoutEngine.trigger_scout.
Authentication: Pub/Sub push includes an OIDC JWT in the Authorization
header. We verify it against Google's public keys with the audience
configured in our Pub/Sub subscription.
Dev mode: when ``GMAIL_PUBSUB_AUDIENCE`` is empty, JWT verification is
skipped and a warning is logged. Production must set this env var.
"""
from __future__ import annotations
import base64
import json
import logging
import uuid
from fastapi import APIRouter, Header, HTTPException, Request, status
from sqlalchemy import select
from app.config.settings import settings
from app.db import async_session
from app.models import CloudScoutConfig, User
from app.scouts.engine import ScoutEngine
logger = logging.getLogger(__name__)
router = APIRouter(prefix="/scouts/webhooks", tags=["scout-webhooks"])
def _verify_pubsub_jwt(token: str) -> bool:
"""Verify the Google Pub/Sub OIDC JWT.
Returns True when valid, False on any verification failure.
Dev skip: if ``settings.GMAIL_PUBSUB_AUDIENCE`` is empty, logs a
warning and returns True so local development works without a real
Pub/Sub subscription. Production must configure the audience.
"""
if not token:
return False
if not settings.GMAIL_PUBSUB_AUDIENCE:
logger.warning(
"GMAIL_PUBSUB_AUDIENCE not set — skipping Pub/Sub JWT verification (dev mode only)"
)
return True
try:
from google.auth.transport import requests as g_requests # noqa: PLC0415
from google.oauth2 import id_token # noqa: PLC0415
id_token.verify_oauth2_token(
token,
g_requests.Request(),
audience=settings.GMAIL_PUBSUB_AUDIENCE,
)
return True
except Exception:
logger.warning("pubsub jwt verification failed", exc_info=True)
return False
@router.post("/gmail", status_code=status.HTTP_204_NO_CONTENT)
async def gmail_pubsub(
request: Request,
authorization: str = Header(default=""),
) -> None:
"""Receive a Gmail Pub/Sub push notification.
Verifies the OIDC JWT, decodes the Pub/Sub envelope, resolves the user
by email, and triggers ScoutEngine.trigger_scout for each enabled Gmail
scout belonging to that user.
Returns 204 No Content on success (including benign no-ops like unknown
email or empty message data). Returns 401 on JWT verification failure.
"""
token = authorization.removeprefix("Bearer ").strip()
if not _verify_pubsub_jwt(token):
raise HTTPException(status.HTTP_401_UNAUTHORIZED, "Invalid Pub/Sub JWT")
body = await request.json()
msg = body.get("message") or {}
raw = msg.get("data")
if not raw:
return # ack without action — empty message data
try:
decoded = json.loads(base64.b64decode(raw).decode())
except Exception:
logger.warning("pubsub payload decode failed")
return
email = decoded.get("emailAddress")
if not email:
return
async with async_session() as session:
user_q = await session.execute(select(User).where(User.email == email))
user = user_q.scalar_one_or_none()
if user is None:
logger.info("pubsub: no user for %s — ignoring", email)
return
scouts_q = await session.execute(
select(CloudScoutConfig).where(
CloudScoutConfig.user_id == user.id,
CloudScoutConfig.provider == "gmail",
CloudScoutConfig.enabled == True, # noqa: E712
)
)
scouts = scouts_q.scalars().all()
engine = ScoutEngine()
for scout in scouts:
await engine.trigger_scout(uuid.UUID(str(scout.id)))

View File

@@ -0,0 +1,807 @@
"""Scout routes.
Backend responsibilities are intentionally minimal:
GET /scouts/catalog — static catalog for UI display
POST /scouts/can-create — billing eligibility check
POST /scouts/trigger — trigger a local scout run
Scout configuration is owned by the Electron app and is not persisted
in backend scout-config tables.
Gmail OAuth setup (scout-specific consent):
GET /scouts/oauth/gmail/authorize — returns consent-screen URL
GET /scouts/oauth/gmail/web-callback — bounces to deep link (excluded from schema)
POST /scouts/oauth/gmail/callback — exchanges code, stores encrypted token
"""
from __future__ import annotations
import asyncio
import logging
import secrets
import time
import urllib.parse
import uuid
from datetime import datetime, timezone
from fastapi import APIRouter, Depends, HTTPException, status
from fastapi.responses import RedirectResponse
from sqlalchemy import delete as sa_delete, func, select
from sqlalchemy.ext.asyncio import AsyncSession
from pydantic import BaseModel
from app.api.deps import get_current_user
from app.auth.oauth_providers import generate_pkce_pair
from app.billing.tier_manager import FEATURES
from app.config.settings import settings
from app.core.scout_runner import is_agent_running, run_local_agent
from app.core.device_manager import device_manager
from app.core.note_summarizer import generate_note_summary
from app.db import get_session
from app.integrations import decrypt_token, encrypt_token
from app.models import CloudScoutConfig, ScoutRunLog, LocalScoutConfig
from app.scouts.connectors.registry import get_connector
from app.schemas import (
CloudScoutCreateRequest,
CloudScoutResponse,
CloudScoutUpdateRequest,
ScoutCatalogItem,
ScoutCreationCheckRequest,
ScoutCreationCheckResponse,
ScoutRunLogResponse,
ScoutTriggerRequest,
UserProfile,
)
logger = logging.getLogger(__name__)
router = APIRouter(prefix="/scouts", tags=["scouts"])
# ── Datetime helpers ──────────────────────────────────────────────────
def _dt_ms(dt: datetime) -> int:
return int(dt.timestamp() * 1000)
def _dt_ms_opt(dt: datetime | None) -> int | None:
return int(dt.timestamp() * 1000) if dt else None
def _to_data_types(values: list[str]) -> list[str]:
normalize = {
"task": "tasks", "tasks": "tasks",
"note": "notes", "notes": "notes",
"timeline": "timelines", "timelines": "timelines", "timelineEvents": "timelines",
"project": "projects", "projects": "projects",
}
seen: set[str] = set()
result: list[str] = []
for v in values:
mapped = normalize.get(v)
if mapped and mapped not in seen:
seen.add(mapped)
result.append(mapped)
return result
def _to_run_log_response(log: ScoutRunLog) -> ScoutRunLogResponse:
return ScoutRunLogResponse(
id=log.id,
agent_id=log.scout_id,
agent_type=log.scout_type, # type: ignore[arg-type]
status=log.status, # type: ignore[arg-type]
items_processed=log.items_processed,
items_created=log.items_created,
errors=log.errors or [],
started_at=_dt_ms(log.started_at),
completed_at=_dt_ms_opt(log.completed_at),
)
def _enforce_agent_limit(tier: str, current_count: int) -> int:
limit: int = FEATURES.get(tier, FEATURES["free"])["batch_active"]
if limit != -1 and current_count >= limit:
raise HTTPException(
status_code=status.HTTP_403_FORBIDDEN,
detail=f"Agent limit ({limit}) reached for your tier. Upgrade to create more.",
)
return limit
async def _enforce_run_frequency(
tier: str,
user_id: str,
db: AsyncSession,
) -> None:
"""Raise HTTP 402 if the user has exceeded their daily batch run limit."""
limit: int = FEATURES.get(tier, FEATURES["free"])["batch_runs_per_day"]
if limit == -1:
return # unlimited
today_start = datetime.now(timezone.utc).replace(
hour=0, minute=0, second=0, microsecond=0
)
result = await db.execute(
select(func.count(ScoutRunLog.id)).where(
ScoutRunLog.user_id == user_id,
ScoutRunLog.started_at >= today_start,
)
)
runs_today: int = result.scalar_one()
if runs_today >= limit:
raise HTTPException(
status_code=status.HTTP_402_PAYMENT_REQUIRED,
detail=f"Daily batch run limit ({limit}) reached for your tier. Upgrade for more runs.",
)
# ── Catalog ───────────────────────────────────────────────────────────
@router.get("/catalog", response_model=list[ScoutCatalogItem])
async def get_agent_catalog(
current_user: UserProfile = Depends(get_current_user),
) -> list[ScoutCatalogItem]:
"""Return the static list of available agent types and their descriptions."""
return [
ScoutCatalogItem(
type="local_directory",
name="Local Directory Monitor",
description="Watches local directories, extracts data from files using AI",
),
ScoutCatalogItem(
type="gmail",
name="Gmail Connector",
description="Scans Gmail inbox, extracts tasks/notes from emails",
),
ScoutCatalogItem(
type="teams",
name="Microsoft Teams Connector",
description="Monitors Teams messages, extracts action items",
),
ScoutCatalogItem(
type="outlook",
name="Outlook Connector",
description="Scans Outlook inbox, extracts tasks/notes",
),
]
@router.post("/can-create", response_model=ScoutCreationCheckResponse)
async def can_create_agent(
body: ScoutCreationCheckRequest,
current_user: UserProfile = Depends(get_current_user),
) -> ScoutCreationCheckResponse:
"""Check if the user can create one more agent based on billing tier.
Since configuration is client-owned, the Electron app sends its current
active agent count and the backend applies tier limits.
"""
limit: int = FEATURES.get(current_user.tier, FEATURES["free"])["batch_active"]
allowed = limit == -1 or body.active_agents < limit
return ScoutCreationCheckResponse(
allowed=allowed,
tier=current_user.tier,
active_agents=body.active_agents,
limit=limit,
)
@router.post("/trigger", response_model=ScoutRunLogResponse, status_code=status.HTTP_202_ACCEPTED)
async def trigger_agent_run(
body: ScoutTriggerRequest,
current_user: UserProfile = Depends(get_current_user),
db: AsyncSession = Depends(get_session),
) -> ScoutRunLogResponse:
"""Trigger a local agent run using client-provided configuration."""
_enforce_agent_limit(current_user.tier, body.active_agents)
await _enforce_run_frequency(current_user.tier, current_user.id, db)
last_run_dt = (
datetime.fromtimestamp(body.last_run_at / 1000, tz=timezone.utc)
if body.last_run_at
else None
)
config = LocalScoutConfig(
id=str(uuid.uuid4()),
user_id=current_user.id,
device_id=body.device_id,
name="Local Directory Monitor",
directory_paths=[body.directory],
data_types=_to_data_types(body.what_to_extract),
prompt_template=body.custom_agent_prompt or "",
scout_config=body.agent_config,
file_extensions=[],
schedule_cron=body.batch_interval,
enabled=True,
last_run_at=last_run_dt,
)
# Use the FE's stable agent_id if provided, fall back to the ephemeral config id.
stable_agent_id = body.agent_id or config.id
if is_agent_running(stable_agent_id):
raise HTTPException(
status_code=status.HTTP_409_CONFLICT,
detail="Agent is already running. Only one run per agent is allowed at a time.",
)
run_log = ScoutRunLog(
scout_id=stable_agent_id,
scout_type="local",
user_id=current_user.id,
status="running",
)
db.add(run_log)
await db.commit()
await db.refresh(run_log)
run_context = {
"type": "agent_batch",
"run_id": run_log.id,
"agent_id": stable_agent_id,
}
asyncio.create_task(
run_local_agent(current_user.id, config, run_log, device_manager, run_context)
)
return _to_run_log_response(run_log)
# ── Note summary endpoint ──────────────────────────────────────────────────────
class NoteSummarizeRequest(BaseModel):
title: str
content: str
class NoteSummarizeResponse(BaseModel):
summary: str
@router.post("/notes/summarize", response_model=NoteSummarizeResponse)
async def summarize_note(
body: NoteSummarizeRequest,
current_user: UserProfile = Depends(get_current_user),
) -> NoteSummarizeResponse:
"""Generate an AI summary for a note. Used by the Electron backfill on startup."""
summary = await generate_note_summary(body.title, body.content)
return NoteSummarizeResponse(summary=summary)
# ── Cloud scout CRUD ──────────────────────────────────────────────────────────
_DEFAULT_CLOUD_SCHEDULE = "0 */6 * * *"
def _to_cloud_response(scout: CloudScoutConfig) -> dict:
return {
"id": scout.id,
"user_id": scout.user_id,
"provider": scout.provider,
"name": scout.name,
"data_types": scout.data_types or [],
"prompt_template": scout.prompt_template or "",
"schedule_cron": scout.schedule_cron,
"filter_config": scout.filter_config,
"auto_trash_spam": scout.auto_trash_spam,
"enabled": scout.enabled,
"last_run_at": _dt_ms_opt(scout.last_run_at),
"gmail_address": scout.gmail_address,
"oauth_connected": scout.oauth_token_encrypted is not None,
"created_at": _dt_ms(scout.created_at),
"updated_at": _dt_ms(scout.updated_at),
}
@router.get("/cloud", response_model=list[CloudScoutResponse])
async def list_cloud_scouts(
db: AsyncSession = Depends(get_session),
current_user: UserProfile = Depends(get_current_user),
):
rows = (await db.execute(
select(CloudScoutConfig).where(CloudScoutConfig.user_id == current_user.id)
)).scalars().all()
return [_to_cloud_response(s) for s in rows]
@router.post("/cloud", response_model=CloudScoutResponse, status_code=status.HTTP_201_CREATED)
async def create_cloud_scout(
body: CloudScoutCreateRequest,
db: AsyncSession = Depends(get_session),
current_user: UserProfile = Depends(get_current_user),
):
scout = CloudScoutConfig(
id=str(uuid.uuid4()),
user_id=current_user.id,
provider=body.provider,
name=body.name,
data_types=body.data_types,
prompt_template=body.prompt_template,
filter_config=body.filter_config,
schedule_cron=body.schedule_cron or _DEFAULT_CLOUD_SCHEDULE,
auto_trash_spam=body.auto_trash_spam,
enabled=True,
)
db.add(scout)
await db.commit()
await db.refresh(scout)
return _to_cloud_response(scout)
@router.put("/cloud/{scout_id}", response_model=CloudScoutResponse)
async def update_cloud_scout(
scout_id: str,
body: CloudScoutUpdateRequest,
db: AsyncSession = Depends(get_session),
current_user: UserProfile = Depends(get_current_user),
):
scout = await db.get(CloudScoutConfig, scout_id)
if scout is None or scout.user_id != current_user.id:
raise HTTPException(status.HTTP_404_NOT_FOUND, "Scout not found")
if body.name is not None:
scout.name = body.name
if body.data_types is not None:
scout.data_types = body.data_types
if body.prompt_template is not None:
scout.prompt_template = body.prompt_template
if body.schedule_cron is not None:
scout.schedule_cron = body.schedule_cron
if body.filter_config is not None:
scout.filter_config = body.filter_config
if body.auto_trash_spam is not None:
scout.auto_trash_spam = body.auto_trash_spam
if body.enabled is not None:
scout.enabled = body.enabled
await db.commit()
await db.refresh(scout)
return _to_cloud_response(scout)
@router.delete("/cloud/{scout_id}")
async def delete_cloud_scout(
scout_id: str,
db: AsyncSession = Depends(get_session),
current_user: UserProfile = Depends(get_current_user),
):
scout = await db.get(CloudScoutConfig, scout_id)
if scout is None or scout.user_id != current_user.id:
raise HTTPException(status.HTTP_404_NOT_FOUND, "Scout not found")
# Core deletes bypass the polymorphic ScoutRunLog relationship whose
# varchar scout_id vs uuid id join is not directly comparable in Postgres.
# scout_run_logs.scout_id is a plain string (matches the str scout_id);
# scout_triage_queue rows cascade automatically via their FK ondelete.
await db.execute(sa_delete(ScoutRunLog).where(ScoutRunLog.scout_id == scout_id))
await db.execute(sa_delete(CloudScoutConfig).where(CloudScoutConfig.id == scout_id))
await db.commit()
return {"ok": True}
@router.get("/cloud/{scout_id}/gmail-labels")
async def list_gmail_labels(
scout_id: str,
db: AsyncSession = Depends(get_session),
current_user: UserProfile = Depends(get_current_user),
):
scout = await db.get(CloudScoutConfig, scout_id)
if scout is None or scout.user_id != current_user.id:
raise HTTPException(status.HTTP_404_NOT_FOUND, "Scout not found")
try:
connector = get_connector("gmail")
except KeyError:
return []
return await connector.list_labels(scout)
@router.post("/cloud/{scout_id}/gmail-disconnect", response_model=CloudScoutResponse)
async def disconnect_gmail(
scout_id: str,
db: AsyncSession = Depends(get_session),
current_user: UserProfile = Depends(get_current_user),
):
scout = await db.get(CloudScoutConfig, scout_id)
if scout is None or scout.user_id != current_user.id:
raise HTTPException(status.HTTP_404_NOT_FOUND, "Scout not found")
try:
connector = get_connector("gmail")
await connector.stop_watch(scout)
except KeyError:
pass
scout.oauth_token_encrypted = None
scout.gmail_history_id = None
scout.gmail_watch_expires_at = None
scout.gmail_address = None
scout.enabled = False
await db.commit()
await db.refresh(scout)
return _to_cloud_response(scout)
# ── Gmail OAuth setup (scout-specific) ───────────────────────────────────────
# Scopes required for Gmail scout connectivity.
_GMAIL_SCOUT_SCOPES = [
"openid",
"email",
"https://www.googleapis.com/auth/gmail.readonly",
"https://www.googleapis.com/auth/gmail.modify",
]
# Google OAuth endpoints.
_GOOGLE_AUTH_URL = "https://accounts.google.com/o/oauth2/v2/auth"
_GOOGLE_TOKEN_URL = "https://oauth2.googleapis.com/token"
# In-memory pending OAuth states for scout Gmail consent.
#
# state → {
# "code_verifier": str,
# "user_id": str,
# "expires_at": float (epoch seconds),
# "mode": "reconnect" | "create",
# "scout_id": str | None, # set for reconnect mode
# "draft": {name, prompt_template, auto_trash_spam} | None, # set for create mode
# "token_encrypted": str | None, # populated after a successful create-mode callback
# "gmail_address": str | None,
# }
#
# Zero-trust: in create mode the encrypted Gmail token lives ONLY here, in
# process memory, for at most _SCOUT_OAUTH_TTL_SECONDS. It is persisted to the
# DB only when the user finalizes the scout (POST /scouts/cloud/finalize).
# An abandoned/errored flow leaves no scout row and no stored token.
#
# Production note: this in-memory store is single-process only — replace with
# Redis (keyed by state, TTL'd) for multi-worker deployments.
_pending_scout_oauth_states: dict[str, dict] = {}
_SCOUT_OAUTH_TTL_SECONDS = 900 # 15 minutes
def _purge_expired_oauth_states() -> None:
now = time.time()
expired = [s for s, e in _pending_scout_oauth_states.items() if e.get("expires_at", 0) < now]
for s in expired:
del _pending_scout_oauth_states[s]
def _scout_gmail_redirect_uri() -> str:
"""Derive the scout Gmail web-callback URI from the configured base OAUTH_REDIRECT_URI.
``OAUTH_REDIRECT_URI`` is the full path used for login OAuth
(e.g. http://localhost:8000/api/v1/auth/oauth/google/web-callback).
We strip the path to get the scheme+host base, then append the scout path.
"""
parsed = urllib.parse.urlparse(settings.OAUTH_REDIRECT_URI)
base = f"{parsed.scheme}://{parsed.netloc}"
return f"{base}/api/v1/scouts/oauth/gmail/web-callback"
class _ScoutGmailAuthorizeResponse(BaseModel):
authorize_url: str
class _ScoutGmailCallbackBody(BaseModel):
code: str
state: str
class _ScoutGmailAuthorizeDraftBody(BaseModel):
name: str
prompt_template: str = ""
auto_trash_spam: bool = False
class _ScoutGmailFinalizeBody(BaseModel):
session: str
filter_config: dict | None = None
def _build_gmail_authorize_url(state: str, code_challenge: str) -> str:
"""Build the Google consent URL for the scout Gmail flow (shared by both modes)."""
redirect_uri = _scout_gmail_redirect_uri()
params = {
"client_id": settings.GOOGLE_AUTH_CLIENT_ID,
"redirect_uri": redirect_uri,
"response_type": "code",
"scope": " ".join(_GMAIL_SCOUT_SCOPES),
"state": state,
"code_challenge": code_challenge,
"code_challenge_method": "S256",
"access_type": "offline",
"prompt": "consent",
}
return f"{_GOOGLE_AUTH_URL}?{urllib.parse.urlencode(params)}"
@router.get("/oauth/gmail/authorize", response_model=_ScoutGmailAuthorizeResponse)
async def scout_gmail_oauth_authorize(
scout_id: str,
current_user: UserProfile = Depends(get_current_user),
) -> _ScoutGmailAuthorizeResponse:
"""Start the Gmail OAuth flow for a specific cloud scout.
Returns the Google consent-screen URL. The client opens this URL in the
system browser; after consent Google redirects to web-callback which bounces
to the ``adiuvai://scout/oauth/gmail/callback`` deep link.
"""
if not settings.GOOGLE_AUTH_CLIENT_ID or not settings.GOOGLE_AUTH_CLIENT_SECRET:
raise HTTPException(
status.HTTP_503_SERVICE_UNAVAILABLE,
"Google OAuth is not configured on this server",
)
code_verifier, code_challenge = generate_pkce_pair()
state = secrets.token_urlsafe(32)
_purge_expired_oauth_states()
_pending_scout_oauth_states[state] = {
"code_verifier": code_verifier,
"user_id": current_user.id,
"expires_at": time.time() + _SCOUT_OAUTH_TTL_SECONDS,
"mode": "reconnect",
"scout_id": scout_id,
"draft": None,
"token_encrypted": None,
"gmail_address": None,
}
return _ScoutGmailAuthorizeResponse(
authorize_url=_build_gmail_authorize_url(state, code_challenge)
)
@router.post("/oauth/gmail/authorize-draft", response_model=_ScoutGmailAuthorizeResponse)
async def scout_gmail_oauth_authorize_draft(
body: _ScoutGmailAuthorizeDraftBody,
current_user: UserProfile = Depends(get_current_user),
) -> _ScoutGmailAuthorizeResponse:
"""Start the Gmail OAuth flow in *creation* mode — no scout row exists yet.
The draft scout fields are held in the pending OAuth session; the scout is
only created once the user finalizes (POST /scouts/cloud/finalize).
"""
if not settings.GOOGLE_AUTH_CLIENT_ID or not settings.GOOGLE_AUTH_CLIENT_SECRET:
raise HTTPException(
status.HTTP_503_SERVICE_UNAVAILABLE,
"Google OAuth is not configured on this server",
)
code_verifier, code_challenge = generate_pkce_pair()
state = secrets.token_urlsafe(32)
_purge_expired_oauth_states()
_pending_scout_oauth_states[state] = {
"code_verifier": code_verifier,
"user_id": current_user.id,
"expires_at": time.time() + _SCOUT_OAUTH_TTL_SECONDS,
"mode": "create",
"scout_id": None,
"draft": {
"name": body.name,
"prompt_template": body.prompt_template,
"auto_trash_spam": body.auto_trash_spam,
},
"token_encrypted": None,
"gmail_address": None,
}
return _ScoutGmailAuthorizeResponse(
authorize_url=_build_gmail_authorize_url(state, code_challenge)
)
@router.get("/oauth/gmail/web-callback", include_in_schema=False)
async def scout_gmail_oauth_web_callback(code: str, state: str) -> RedirectResponse:
"""Google redirects here after Gmail consent.
Immediately bounces to the Electron deep link so the desktop app
receives the authorization code.
"""
params = urllib.parse.urlencode({"code": code, "state": state})
deep_link = f"adiuvai://scout/oauth/gmail/callback?{params}"
return RedirectResponse(url=deep_link, status_code=302)
@router.post("/oauth/gmail/callback")
async def scout_gmail_oauth_callback(
body: _ScoutGmailCallbackBody,
db: AsyncSession = Depends(get_session),
current_user: UserProfile = Depends(get_current_user),
) -> dict:
"""Exchange the Gmail authorization code and store the encrypted token on the scout.
Called by the Electron app after it receives the deep-link callback with
the ``code`` and ``state`` params.
"""
entry = _pending_scout_oauth_states.pop(body.state, None)
if (
entry is None
or entry["expires_at"] < time.time()
or entry["user_id"] != current_user.id
):
raise HTTPException(status.HTTP_401_UNAUTHORIZED, "Invalid or expired OAuth state")
code_verifier = entry["code_verifier"]
mode = entry["mode"]
scout_id = entry.get("scout_id")
redirect_uri = _scout_gmail_redirect_uri()
import httpx
async with httpx.AsyncClient() as client:
response = await client.post(
_GOOGLE_TOKEN_URL,
data={
"client_id": settings.GOOGLE_AUTH_CLIENT_ID,
"client_secret": settings.GOOGLE_AUTH_CLIENT_SECRET,
"code": body.code,
"code_verifier": code_verifier,
"grant_type": "authorization_code",
"redirect_uri": redirect_uri,
},
)
try:
response.raise_for_status()
except httpx.HTTPStatusError as exc:
logger.error("Gmail token exchange failed: %s", exc.response.text)
raise HTTPException(status.HTTP_502_BAD_GATEWAY, "Failed to exchange Gmail authorization code")
token_data = response.json()
creds_dict: dict = {
"token": token_data["access_token"],
"refresh_token": token_data.get("refresh_token"),
"token_uri": _GOOGLE_TOKEN_URL,
"client_id": settings.GOOGLE_AUTH_CLIENT_ID,
"client_secret": settings.GOOGLE_AUTH_CLIENT_SECRET,
"scopes": [
"https://www.googleapis.com/auth/gmail.readonly",
"https://www.googleapis.com/auth/gmail.modify",
],
}
encrypted = encrypt_token(creds_dict)
# Fetch the connected Gmail address for display.
gmail_address: str | None = None
try:
from googleapiclient.discovery import build
from google.oauth2.credentials import Credentials
def _fetch_email() -> str | None:
creds = Credentials(
token=creds_dict["token"],
refresh_token=creds_dict.get("refresh_token"),
token_uri=creds_dict["token_uri"],
client_id=creds_dict["client_id"],
client_secret=creds_dict["client_secret"],
scopes=creds_dict["scopes"],
)
service = build("gmail", "v1", credentials=creds, cache_discovery=False)
profile = service.users().getProfile(userId="me").execute()
return profile.get("emailAddress")
gmail_address = await asyncio.to_thread(_fetch_email)
except Exception:
logger.exception("failed to fetch gmail address (mode=%s)", mode)
if mode == "create":
# Do NOT create a scout yet. Hold the encrypted token + address in the
# transient in-memory session; the scout is created at finalize.
entry["token_encrypted"] = encrypted
entry["gmail_address"] = gmail_address
entry["expires_at"] = time.time() + _SCOUT_OAUTH_TTL_SECONDS
_pending_scout_oauth_states[body.state] = entry
return {"ok": True, "session_id": body.state, "gmail_address": gmail_address}
# mode == "reconnect": update the existing scout in place.
scout = await db.get(CloudScoutConfig, scout_id)
if scout is None or scout.user_id != current_user.id:
raise HTTPException(status.HTTP_404_NOT_FOUND, "Scout not found")
scout.oauth_token_encrypted = encrypted
scout.gmail_address = gmail_address
await db.commit()
# Attempt to set up Gmail push watch so we start receiving Pub/Sub notifications.
try:
connector = get_connector("gmail")
await connector.setup_watch(scout)
await db.commit()
except KeyError:
logger.warning("gmail connector not registered — skipping setup_watch for scout %s", scout_id)
except Exception:
logger.exception("setup_watch failed for scout %s", scout_id)
return {"ok": True, "session_id": None, "gmail_address": gmail_address}
@router.get("/oauth/gmail/session-labels")
async def scout_gmail_session_labels(
session: str,
current_user: UserProfile = Depends(get_current_user),
) -> list[dict]:
"""List Gmail labels for a pending create-mode OAuth session (no scout row yet).
Builds a Gmail service from the session's transient decrypted token.
Returns [] on any error.
"""
entry = _pending_scout_oauth_states.get(session)
if (
entry is None
or entry["expires_at"] < time.time()
or entry["user_id"] != current_user.id
or entry.get("token_encrypted") is None
):
raise HTTPException(status.HTTP_404_NOT_FOUND, "Session not found or expired")
try:
from app.scouts.connectors.gmail import _gmail_service_from_token
creds = decrypt_token(entry["token_encrypted"])
def _sync() -> list[dict]:
service = _gmail_service_from_token(creds)
resp = service.users().labels().list(userId="me").execute()
return [{"id": lbl["id"], "name": lbl["name"]} for lbl in resp.get("labels", [])]
return await asyncio.to_thread(_sync)
except Exception:
logger.exception("session-labels failed for session %s", session)
return []
@router.post("/cloud/finalize", response_model=CloudScoutResponse, status_code=status.HTTP_201_CREATED)
async def finalize_cloud_scout(
body: _ScoutGmailFinalizeBody,
db: AsyncSession = Depends(get_session),
current_user: UserProfile = Depends(get_current_user),
):
"""Create the cloud scout from a completed create-mode OAuth session.
This is the only path that persists the Gmail token for a newly-created
scout. Abandoned flows never reach here, so they leave no orphan rows.
"""
entry = _pending_scout_oauth_states.pop(body.session, None)
if (
entry is None
or entry["expires_at"] < time.time()
or entry["user_id"] != current_user.id
or entry.get("mode") != "create"
or entry.get("token_encrypted") is None
):
raise HTTPException(status.HTTP_401_UNAUTHORIZED, "Invalid or expired OAuth session")
draft = entry["draft"] or {}
scout = CloudScoutConfig(
id=str(uuid.uuid4()),
user_id=current_user.id,
provider="gmail",
name=draft.get("name", ""),
data_types=[],
prompt_template=draft.get("prompt_template", ""),
filter_config=body.filter_config,
schedule_cron=_DEFAULT_CLOUD_SCHEDULE,
auto_trash_spam=draft.get("auto_trash_spam", False),
enabled=True,
oauth_token_encrypted=entry["token_encrypted"],
gmail_address=entry.get("gmail_address"),
)
db.add(scout)
await db.commit()
await db.refresh(scout)
# Best-effort Gmail push watch — failure must not block scout creation.
try:
connector = get_connector("gmail")
await connector.setup_watch(scout)
await db.commit()
except KeyError:
logger.warning("gmail connector not registered — skipping setup_watch for scout %s", scout.id)
except Exception:
logger.exception("setup_watch failed for scout %s", scout.id)
return _to_cloud_response(scout)

1
api/app/auth/__init__.py Normal file
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"OAuth provider abstractions and utilities."

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"""OAuth 2.0 + PKCE provider abstractions.
Each provider implements a three-step flow designed for a desktop (public) client:
1. get_authorization_url(state, code_challenge) → str
Build the provider's consent-screen URL. State and code_challenge are
generated server-side; the client opens this URL in the system browser.
2. exchange_code(code, code_verifier, redirect_uri) → dict
Exchange the short-lived authorization code for an access token.
The code_verifier proves ownership of the PKCE challenge.
3. get_userinfo(access_token) → OAuthUserInfo
Fetch the canonical user identity from the provider.
Currently supported providers:
- GoogleOAuthProvider (scope: openid email profile)
Adding a new provider:
- Implement the three methods above.
- Register in _PROVIDERS inside routes/auth.py.
"""
from __future__ import annotations
import base64
import hashlib
import os
import urllib.parse
from dataclasses import dataclass
import httpx
# ── Data transfer objects ─────────────────────────────────────────────
@dataclass
class OAuthUserInfo:
"""Normalized user identity returned by any provider."""
provider_user_id: str
email: str
email_verified: bool
avatar_url: str | None
name: str | None
# ── PKCE helpers ──────────────────────────────────────────────────────
def generate_pkce_pair() -> tuple[str, str]:
"""Generate a (code_verifier, code_challenge) pair for PKCE S256.
The code_verifier is a random 32-byte URL-safe base64 string.
The code_challenge is SHA-256(code_verifier) base64url-encoded (no padding).
"""
code_verifier = base64.urlsafe_b64encode(os.urandom(32)).rstrip(b"=").decode()
digest = hashlib.sha256(code_verifier.encode()).digest()
code_challenge = base64.urlsafe_b64encode(digest).rstrip(b"=").decode()
return code_verifier, code_challenge
# ── Google provider ───────────────────────────────────────────────────
class GoogleOAuthProvider:
"""Google OAuth 2.0 provider (openid email profile scope).
Uses Google's standard authorization endpoint with PKCE S256.
Does NOT use google-auth-oauthlib to keep the flow generic and async.
"""
name = "google"
_AUTH_URL = "https://accounts.google.com/o/oauth2/v2/auth"
_TOKEN_URL = "https://oauth2.googleapis.com/token"
_USERINFO_URL = "https://www.googleapis.com/oauth2/v3/userinfo"
def __init__(self, client_id: str, client_secret: str, redirect_uri: str) -> None:
self.client_id = client_id
self.client_secret = client_secret
self.redirect_uri = redirect_uri
def get_authorization_url(self, state: str, code_challenge: str) -> str:
"""Build the Google consent-screen URL."""
params = {
"client_id": self.client_id,
"redirect_uri": self.redirect_uri,
"response_type": "code",
"scope": "openid email profile",
"state": state,
"code_challenge": code_challenge,
"code_challenge_method": "S256",
"access_type": "offline",
"prompt": "select_account",
}
return f"{self._AUTH_URL}?{urllib.parse.urlencode(params)}"
async def exchange_code(
self, code: str, code_verifier: str, redirect_uri: str
) -> dict:
"""Exchange authorization code for an access token."""
async with httpx.AsyncClient() as client:
response = await client.post(
self._TOKEN_URL,
data={
"client_id": self.client_id,
"client_secret": self.client_secret,
"code": code,
"code_verifier": code_verifier,
"grant_type": "authorization_code",
"redirect_uri": redirect_uri,
},
)
response.raise_for_status()
return response.json()
async def get_userinfo(self, access_token: str) -> OAuthUserInfo:
"""Fetch the authenticated user's identity from Google."""
async with httpx.AsyncClient() as client:
response = await client.get(
self._USERINFO_URL,
headers={"Authorization": f"Bearer {access_token}"},
)
response.raise_for_status()
data = response.json()
return OAuthUserInfo(
provider_user_id=data["sub"],
email=data["email"],
email_verified=data.get("email_verified", False),
avatar_url=data.get("picture"),
name=data.get("name"),
)

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from app.billing.stripe_service import stripe_service
from app.billing.tier_manager import tier_manager
__all__ = ["stripe_service", "tier_manager"]

139
api/app/billing/quota.py Normal file
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"""Quota checks and atomic token-usage accounting for folder integration."""
from __future__ import annotations
from dataclasses import dataclass
from datetime import datetime, timezone
from sqlalchemy import select, update
from sqlalchemy.dialects.postgresql import insert as pg_insert
from sqlalchemy.ext.asyncio import AsyncSession
from app.billing.tier_manager import TierManager
from app.models import MonthlyTokenUsage
from app.schemas import BillingTier
class QuotaExceeded(Exception):
"""Raised when a folder operation cannot proceed under the user's tier."""
def __init__(self, reason: str, message: str) -> None:
super().__init__(message)
self.reason = reason # "max_files" | "monthly_tokens"
@dataclass
class TokenUsageResult:
tokens_used: int
exhausted: bool
def _current_year_month() -> str:
return datetime.now(timezone.utc).strftime("%Y-%m")
_tier_manager = TierManager()
async def check_folder_quota(
*,
user_id: str,
tier: BillingTier,
estimated_files: int,
db: AsyncSession,
) -> None:
"""Raise QuotaExceeded if folder_max_files or folder_monthly_tokens
would be violated. -1 in either feature means unlimited."""
max_files = _tier_manager.get_feature_value(tier, "folder_max_files")
if max_files != -1 and estimated_files > max_files:
raise QuotaExceeded(
"max_files",
f"Folder has {estimated_files} files; tier '{tier}' allows max {max_files}.",
)
cap = _tier_manager.get_feature_value(tier, "folder_monthly_tokens")
if cap == -1:
return
ym = _current_year_month()
row = (
await db.execute(
select(MonthlyTokenUsage).where(
MonthlyTokenUsage.user_id == user_id,
MonthlyTokenUsage.year_month == ym,
MonthlyTokenUsage.feature == "folder_index",
)
)
).scalar_one_or_none()
used = row.tokens_used if row else 0
if used >= cap:
raise QuotaExceeded(
"monthly_tokens",
f"Monthly token budget exhausted ({used}/{cap}); resets next month.",
)
async def add_token_usage(
*,
user_id: str,
feature: str,
tokens: int,
db: AsyncSession,
cap: int | None = None,
) -> TokenUsageResult:
"""Atomically add `tokens` to MonthlyTokenUsage row for (user, current month, feature).
Uses PostgreSQL ``INSERT … ON CONFLICT DO UPDATE`` when available; falls
back to a read-then-write on other engines (e.g. aiosqlite in tests).
Returns post-update total and whether cap is exhausted.
"""
ym = _current_year_month()
# Detect dialect to choose between native upsert and portable fallback.
dialect_name: str = db.bind.dialect.name if db.bind is not None else "" # type: ignore[union-attr]
if dialect_name == "postgresql":
# Native atomic upsert — production path.
stmt = (
pg_insert(MonthlyTokenUsage)
.values(
user_id=user_id,
year_month=ym,
feature=feature,
tokens_used=tokens,
)
.on_conflict_do_update(
index_elements=["user_id", "year_month", "feature"],
set_={"tokens_used": MonthlyTokenUsage.tokens_used + tokens},
)
.returning(MonthlyTokenUsage.tokens_used)
)
used: int = (await db.execute(stmt)).scalar_one()
await db.commit()
else:
# Portable fallback — used in tests (SQLite) and any non-PG engine.
row = (
await db.execute(
select(MonthlyTokenUsage).where(
MonthlyTokenUsage.user_id == user_id,
MonthlyTokenUsage.year_month == ym,
MonthlyTokenUsage.feature == feature,
)
)
).scalar_one_or_none()
if row is None:
row = MonthlyTokenUsage(
user_id=user_id,
year_month=ym,
feature=feature,
tokens_used=tokens,
)
db.add(row)
else:
row.tokens_used += tokens
await db.commit()
await db.refresh(row)
used = row.tokens_used
exhausted = cap is not None and cap != -1 and used >= cap
return TokenUsageResult(tokens_used=used, exhausted=exhausted)

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"""Stripe service: checkout sessions, webhook handling, subscription management.
Subscription records are persisted in the PostgreSQL ``subscriptions`` table.
All Stripe calls are gracefully stubbed when ``STRIPE_SECRET_KEY`` is not
configured, enabling local development without live credentials.
"""
from __future__ import annotations
from datetime import datetime, timezone
from typing import Any
import stripe as stripe_lib
from fastapi import HTTPException, status
from sqlalchemy import select
from sqlalchemy.ext.asyncio import AsyncSession
from app.config.settings import settings
# Stripe price IDs per tier — replace with real IDs in production .env
TIER_PRICE_IDS: dict[str, str] = {
"pro": "price_pro_monthly",
"power": "price_power_monthly",
"team": "price_team_monthly",
}
class StripeService:
"""Wraps all Stripe interactions and owns subscription persistence."""
# ── Internal helpers ────────────────────────────────────────────────
def _configured(self) -> bool:
return bool(settings.STRIPE_SECRET_KEY)
def _client(self) -> Any:
stripe_lib.api_key = settings.STRIPE_SECRET_KEY
return stripe_lib
# ── Public API ──────────────────────────────────────────────────────
def create_checkout_session(
self,
user_id: str,
tier: str,
success_url: str = "https://app.adiuvai.app/billing/success?session_id={CHECKOUT_SESSION_ID}",
cancel_url: str = "https://app.adiuvai.app/billing/cancel",
) -> str:
"""Create a Stripe checkout session and return the URL.
Returns a stub URL when Stripe is not configured.
Raises ``HTTP 400`` for the free tier or an unknown tier.
"""
if tier == "free":
raise HTTPException(
status_code=status.HTTP_400_BAD_REQUEST,
detail="Cannot create a checkout session for the free tier",
)
price_id = TIER_PRICE_IDS.get(tier)
if not price_id:
raise HTTPException(
status_code=status.HTTP_400_BAD_REQUEST,
detail=f"Unknown tier: {tier}",
)
if not self._configured():
return "https://stripe.com/stub-checkout"
s = self._client()
session = s.checkout.Session.create(
payment_method_types=["card"],
mode="subscription",
line_items=[{"price": price_id, "quantity": 1}],
success_url=success_url,
cancel_url=cancel_url,
metadata={"user_id": user_id, "tier": tier},
)
return session.url
async def handle_webhook(
self,
payload: bytes,
sig_header: str,
db: AsyncSession,
) -> None:
"""Process a Stripe webhook event.
Verifies the signature, then dispatches on event type.
Raises ``HTTP 400`` on signature mismatch.
No-ops when Stripe is not configured.
"""
if not self._configured():
return
try:
s = self._client()
event = s.Webhook.construct_event(
payload, sig_header, settings.STRIPE_WEBHOOK_SECRET
)
except stripe_lib.error.SignatureVerificationError:
raise HTTPException(
status_code=status.HTTP_400_BAD_REQUEST,
detail="Invalid Stripe signature",
)
event_type: str = event["type"]
data: dict[str, Any] = event["data"]["object"]
if event_type == "checkout.session.completed":
user_id = data.get("metadata", {}).get("user_id")
tier = data.get("metadata", {}).get("tier", "free")
sub_id = data.get("subscription")
period_end_ts = data.get("current_period_end")
period_end = (
datetime.fromtimestamp(period_end_ts, tz=timezone.utc)
if period_end_ts
else None
)
if user_id:
await self._upsert_subscription(
db, user_id, sub_id, tier, "active", period_end
)
elif event_type == "customer.subscription.updated":
sub_id = data.get("id")
new_status = data.get("status", "active")
period_end_ts = data.get("current_period_end")
period_end = (
datetime.fromtimestamp(period_end_ts, tz=timezone.utc)
if period_end_ts
else None
)
if sub_id:
await self._update_subscription_by_stripe_id(
db, sub_id, status=new_status, current_period_end=period_end
)
elif event_type == "customer.subscription.deleted":
sub_id = data.get("id")
if sub_id:
await self._update_subscription_by_stripe_id(
db, sub_id, tier="free", status="canceled"
)
elif event_type == "invoice.payment_failed":
sub_id = data.get("subscription")
if sub_id:
await self._update_subscription_by_stripe_id(
db, sub_id, status="past_due"
)
await db.commit()
async def get_subscription(
self, user_id: str, db: AsyncSession
) -> dict[str, Any] | None:
"""Return the subscription record for ``user_id``, or ``None`` if absent."""
from app.models import Subscription # noqa: PLC0415
result = await db.execute(
select(Subscription).where(Subscription.user_id == user_id)
)
sub = result.scalar_one_or_none()
if sub is None:
return None
return {
"tier": sub.tier,
"stripe_subscription_id": sub.stripe_subscription_id,
"status": sub.status,
"current_period_end": (
int(sub.current_period_end.timestamp() * 1000)
if sub.current_period_end
else None
),
}
async def cancel_subscription(self, user_id: str, db: AsyncSession) -> None:
"""Cancel the user's Stripe subscription and downgrade them to free.
Raises ``HTTP 404`` when no active subscription exists.
"""
from app.models import Subscription # noqa: PLC0415
result = await db.execute(
select(Subscription).where(Subscription.user_id == user_id)
)
sub = result.scalar_one_or_none()
if sub is None or not sub.stripe_subscription_id:
raise HTTPException(
status_code=status.HTTP_404_NOT_FOUND,
detail="No active subscription found",
)
if self._configured():
s = self._client()
s.Subscription.cancel(sub.stripe_subscription_id)
sub.tier = "free"
sub.status = "canceled"
await db.commit()
async def list_invoices(
self, user_id: str, db: AsyncSession, limit: int = 24
) -> list[dict[str, Any]]:
"""Return recent invoices for the user from Stripe.
Returns an empty list when Stripe is not configured or the user has
no ``stripe_customer_id``.
"""
if not self._configured():
return []
from app.models import User # noqa: PLC0415
result = await db.execute(
select(User.stripe_customer_id).where(User.id == user_id)
)
customer_id = result.scalar_one_or_none()
if not customer_id:
return []
try:
s = self._client()
invoices = s.Invoice.list(customer=customer_id, limit=limit)
return [
{
"id": inv.id,
"amount_due": inv.amount_due,
"amount_paid": inv.amount_paid,
"currency": inv.currency,
"status": inv.status,
"created": inv.created * 1000, # epoch ms
"invoice_url": inv.hosted_invoice_url,
"invoice_pdf": inv.invoice_pdf,
}
for inv in invoices.auto_paging_iter()
]
except Exception:
return []
# ── Private DB helpers ───────────────────────────────────────────────
async def _upsert_subscription(
self,
db: AsyncSession,
user_id: str,
stripe_subscription_id: str | None,
tier: str,
sub_status: str,
current_period_end: datetime | None,
) -> None:
from app.models import Subscription # noqa: PLC0415
result = await db.execute(
select(Subscription).where(Subscription.user_id == user_id)
)
sub = result.scalar_one_or_none()
if sub is None:
sub = Subscription(user_id=user_id)
db.add(sub)
sub.stripe_subscription_id = stripe_subscription_id
sub.tier = tier
sub.status = sub_status
sub.current_period_end = current_period_end
async def _update_subscription_by_stripe_id(
self,
db: AsyncSession,
stripe_subscription_id: str,
*,
tier: str | None = None,
status: str | None = None,
current_period_end: datetime | None = None,
) -> None:
from app.models import Subscription # noqa: PLC0415
result = await db.execute(
select(Subscription).where(
Subscription.stripe_subscription_id == stripe_subscription_id
)
)
sub = result.scalar_one_or_none()
if sub is None:
return
if tier is not None:
sub.tier = tier
if status is not None:
sub.status = status
if current_period_end is not None:
sub.current_period_end = current_period_end
# Module-level singleton shared across the app.
stripe_service = StripeService()

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"""Tier manager: feature matrix and quota enforcement.
``TierManager`` is the single source of truth for what each billing tier
allows. ``get_tier`` queries the ``subscriptions`` table for the live tier.
Quota-enforcement helpers take ``tier`` directly — the caller already has it
from ``current_user.tier`` (provided by ``get_current_user``).
"""
from __future__ import annotations
from typing import Any
from fastapi import HTTPException, status
from sqlalchemy import select
from sqlalchemy.ext.asyncio import AsyncSession
from app.schemas import BillingTier
# Feature matrix per tier. -1 means unlimited; 0 means disabled.
FEATURES: dict[str, dict[str, Any]] = {
"free": {
"agents": 3,
"batch_active": 2,
"batch_runs_per_day": 5,
"providers": 1,
"batch_builder": False,
"sso": False,
"real_embeddings": False, # keyword fallback only
"realtime_extraction": False, # batch queue (Phase 2)
"relational_memory": False, # relational tier (Phase 3) — Pro+
"proactive_mining": False, # Power+ only (Phase 5)
"folder_max_files": 200,
"folder_monthly_tokens": 100_000,
},
"pro": {
"agents": -1, # unlimited
"batch_active": 10,
"batch_runs_per_day": 50,
"providers": -1,
"batch_builder": False,
"sso": False,
"real_embeddings": True, # pgvector cosine search
"realtime_extraction": True, # fire-and-forget asyncio.create_task
"relational_memory": True, # person/project predicates
"proactive_mining": False, # Power+ only (Phase 5)
"folder_max_files": 5000,
"folder_monthly_tokens": 2_000_000,
},
"power": {
"agents": -1,
"batch_active": -1, # unlimited
"batch_runs_per_day": -1, # unlimited
"providers": -1,
"batch_builder": True,
"sso": False,
"real_embeddings": True,
"realtime_extraction": True,
"relational_memory": True, # all predicates incl. custom
"proactive_mining": True, # scheduled pattern mining (Phase 5)
"folder_max_files": -1, # unlimited
"folder_monthly_tokens": -1, # unlimited
},
"team": {
"agents": -1,
"batch_active": -1,
"batch_runs_per_day": -1, # unlimited
"providers": -1,
"batch_builder": True,
"sso": True,
"real_embeddings": True,
"realtime_extraction": True,
"relational_memory": True, # all predicates incl. custom
"proactive_mining": True, # scheduled pattern mining (Phase 5)
"folder_max_files": -1, # unlimited
"folder_monthly_tokens": -1, # unlimited
},
}
# Requests-per-minute limit per tier.
RATE_LIMITS: dict[str, int] = {
"free": 20,
"pro": 60,
"power": 120,
"team": 200,
}
class TierManager:
"""Centralises tier feature-gating, rate-limit lookups, and quota checks."""
# ── Tier lookup ─────────────────────────────────────────────────────
async def get_tier(self, user_id: str, db: AsyncSession) -> BillingTier:
"""Return the current billing tier for ``user_id`` from the DB.
Falls back to ``'power'`` in dev (unlimited) or ``'free'`` in prod
when no subscription row exists.
"""
from app.models import Subscription # noqa: PLC0415
from app.config.settings import settings # noqa: PLC0415
result = await db.execute(
select(Subscription.tier).where(Subscription.user_id == user_id)
)
tier: str | None = result.scalar_one_or_none()
if tier is None or tier not in FEATURES:
return "power" if settings.ENV == "dev" else "free"
return tier # type: ignore[return-value]
# ── Feature access ───────────────────────────────────────────────────
def check_feature(self, tier: BillingTier, feature: str) -> bool:
"""Return ``True`` if ``tier`` has ``feature`` enabled.
For numeric features, any value > 0 or -1 (unlimited) counts as enabled.
"""
value = FEATURES.get(tier, FEATURES["free"]).get(feature)
if value is None:
return False
if isinstance(value, bool):
return value
return value != 0
def require_feature(self, tier: BillingTier, feature: str, tier_name: str = "") -> None:
"""Raise ``HTTP 403`` if ``tier`` does not have ``feature``."""
if not self.check_feature(tier, feature):
detail = (
f"Feature '{feature}' requires {tier_name} tier or above."
if tier_name
else f"Feature '{feature}' is not available on your current tier."
)
raise HTTPException(status_code=status.HTTP_403_FORBIDDEN, detail=detail)
def get_feature_value(self, tier: BillingTier, feature: str) -> int:
"""Return integer feature value for tier. -1 means unlimited."""
value = FEATURES.get(tier, FEATURES["free"]).get(feature)
if not isinstance(value, int):
return 0
return value
# ── Rate limiting ────────────────────────────────────────────────────
def get_rate_limit(self, tier: BillingTier) -> int:
"""Return the requests-per-minute limit for ``tier``."""
return RATE_LIMITS.get(tier, RATE_LIMITS["free"])
# Module-level singleton shared across the app.
tier_manager = TierManager()

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from typing import Literal
from pydantic_settings import BaseSettings, SettingsConfigDict
class Settings(BaseSettings):
DATABASE_URL: str = "postgresql+asyncpg://postgres:postgres@localhost:5432/adiuvai"
JWT_SECRET: str = "change-me-in-production"
JWT_ALGORITHM: str = "HS256"
JWT_ACCESS_TOKEN_EXPIRE_MINUTES: int = 30
JWT_REFRESH_TOKEN_EXPIRE_DAYS: int = 30
STRIPE_SECRET_KEY: str = ""
STRIPE_WEBHOOK_SECRET: str = ""
OPENAI_API_KEY: str = ""
ANTHROPIC_API_KEY: str = ""
GOOGLE_API_KEY: str = ""
CEREBRAS_API_KEY: str = ""
GROQ_API_KEY: str = ""
DEEPSEEK_API_KEY: str = ""
LLM_MODEL: str = "gpt-4o"
LLM_EMBED_MODEL: str = "text-embedding-3-small"
# Per-agent model overrides. Leave empty to fall back to LLM_MODEL.
LLM_MODEL_CLASSIFIER: str = "" # classifier (intent routing, future use)
LLM_MODEL_HOME_AGENT: str = "" # home-agent (run_single_agent / stream)
LLM_MODEL_UNIFIED_PROCESSOR: str = "" # unified-processor (agent_runner)
LLM_MODEL_CLOUD_PROCESSOR: str = "" # cloud-processor (agent_runner)
LLM_MODEL_BRIEF_AGENT: str = "" # brief-agent (home + project text briefs)
LLM_MODEL_TASK_BRIEF_AGENT: str = "" # task-brief-agent (per-task deep research)
LLM_MODEL_SETUP_AGENT: str = "" # agent-setup journey
LLM_MODEL_MEMORY_EXTRACTOR: str = "" # memory-extractor (Phase 2 extract/decide)
LLM_MODEL_MEMORY_MINER: str = "" # memory-miner (Phase 5 proactive mining)
LLM_MODEL_MEMORY_AUDITOR: str = "" # memory-auditor (Phase 7 weekly audit)
# GitHub Copilot OAuth token storage directory.
# Leave empty to use the LiteLLM default (~/.config/litellm/github_copilot).
# In Docker, set this to a path backed by a named volume so tokens survive restarts.
GITHUB_COPILOT_TOKEN_DIR: str = ""
# OAuth client credentials — used for Gmail and Microsoft (Outlook/Teams) flows.
GMAIL_CLIENT_ID: str = ""
GMAIL_CLIENT_SECRET: str = ""
MS_CLIENT_ID: str = ""
MS_CLIENT_SECRET: str = ""
# MS_TENANT_ID: set to 'common' to allow multi-tenant (personal + work accounts).
MS_TENANT_ID: str = "common"
# Google Login OAuth credentials — scope: openid email profile.
# Separate from GMAIL_CLIENT_ID/SECRET (which uses gmail.readonly scope).
GOOGLE_AUTH_CLIENT_ID: str = ""
GOOGLE_AUTH_CLIENT_SECRET: str = ""
# The redirect URI registered in Google Cloud Console.
# Google redirects here after consent; this backend route then bounces to
# the adiuvai:// deep link so the Electron app receives the code.
# Dev: http://localhost:8000/api/v1/auth/oauth/google/web-callback
# Prod: https://api.adiuvai.com/api/v1/auth/oauth/google/web-callback
OAUTH_REDIRECT_URI: str = "http://localhost:8000/api/v1/auth/oauth/google/web-callback"
# Gmail Pub/Sub topic for push notifications.
# Full resource name, e.g. "projects/my-project/topics/gmail-push".
# Leave empty in dev — setup_watch will skip registration gracefully.
GMAIL_PUBSUB_TOPIC: str = ""
# OIDC token audience for Pub/Sub push subscription JWT verification.
# Set to the service account email or audience string configured in the
# Pub/Sub push subscription. Leave empty in dev to skip verification
# (a warning is logged — never silent in production).
GMAIL_PUBSUB_AUDIENCE: str = ""
# Fernet key (URL-safe base64, 32-byte key) for at-rest encryption of OAuth
# tokens stored in cloud_agent_configs.oauth_token_encrypted.
# Generate with: from cryptography.fernet import Fernet; Fernet.generate_key()
OAUTH_ENCRYPTION_KEY: str = ""
CORS_ORIGINS: list[str] = [
"app://.",
"http://localhost:3000",
"http://localhost:5173",
"http://localhost:4173", # Vite preview (web SPA)
"https://app.adiuvai.com", # Production web portal
]
LANGFUSE_SECRET_KEY: str = ""
LANGFUSE_PUBLIC_KEY: str = ""
LANGFUSE_BASE_URL: str = "https://cloud.langfuse.com"
SCHEDULER_ENABLED: bool = True
ENV: Literal["dev", "prod"] = "dev"
model_config = SettingsConfigDict(env_file=".env", env_file_encoding="utf-8", extra="ignore")
settings = Settings()

0
api/app/core/__init__.py Normal file
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api/app/core/brief_agent.py Normal file
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"""Brief agent — produces plain-text home and project status briefs.
Read-only tool subset only. Never calls _normalize_tagged_list_lines —
the brief prompt forbids XML tags, so skipping post-processing is intentional.
"""
from __future__ import annotations
from collections.abc import AsyncGenerator
from datetime import date
from typing import Any
from app.agents.note_agent import NOTE_READ_TOOLS
from app.agents.project_agent import PROJECT_READ_TOOLS
from app.agents.task_agent import TASK_READ_TOOLS
from app.agents.timeline_agent import TIMELINE_READ_TOOLS
from app.core.deep_agent import (
_language_instruction,
_proactive_hints_injection,
_read_only_memory_tools,
_relational_memory_injection,
_run_single_agent_stream,
_trace_id_from_context,
build_brief_multi_project_manifest,
)
from app.core.langfuse_client import compile_prompt, get_prompt_or_fallback
_LANGUAGE_NAMES: dict[str, str] = {
"en": "English", "it": "Italian", "es": "Spanish",
"fr": "French", "de": "German",
"english": "English", "italian": "Italian", "italiano": "Italian",
"spanish": "Spanish", "español": "Spanish",
"french": "French", "français": "French",
"german": "German", "deutsch": "German",
}
_HOME_BRIEF_FALLBACK = """\
You are the user's personal assistant producing a short daily brief.
ROLE
Act like a calm, attentive secretary writing a stand-up note for your boss.
Warm and human, never breezy. Never cheerful filler, never emojis, never
"here is your brief" meta-text. The user is opening the app mid-workday and
is probably stressed — your job is to lower cognitive load, not add noise.
TOOLS — always call before writing
Pull fresh data every run. Do not invent counts or titles. Use at minimum:
- list_tasks_due_today — tasks the user owes today
- list_timelines_today — events starting or ending today
- list_all_projects — projects currently in progress or at risk
- memory_list_blocks / memory_get — personal context about people, clients,
payment habits, working preferences
If a tool returns nothing, simply omit that topic. Never report zeros.
WHAT TO INCLUDE
1. Tasks due today (title + priority; group the 1-2 most important).
2. Timeline events starting or ending today (and anything that starts/ends
tomorrow if the user has a very light day).
3. Active projects that need a nudge — stalled, blocked, or awaiting input.
4. Memory-aware colour where it sharpens the brief. Examples:
- "Client Rossi tends to pay late — the Acme invoice is 6 days out."
- "You usually dislike meetings before 10:00 — the call at 09:30 is unusual."
Only add a memory line when it changes what the user does. Do not pad.
WHAT TO OMIT
- Zero-counts ("no overdue items", "0 meetings today").
- Statistics ("2 active projects, 3 completed tasks").
- Headers, titles, greetings, sign-offs, dates, emojis, slang.
- Meta-phrases ("here is", "let me know if", "hope this helps").
- XML/HTML tags of any kind. Plain prose only.
LIGHT-DAY CLAUSE
If tasks + events + active-project-nudges together produce fewer than two
sentences of content, also list 1-2 projects in status on_hold or waiting
and ask a single, specific question about them — e.g. "Is the Bianchi
redesign still paused, or ready to pick back up?" One question max, grounded
in a real project name.
VOICE
- Calm. Concise. Human. Short sentences.
- Use **bold** sparingly for task titles, project names, and people's names.
- No bullet lists. Flow as 2-4 sentences of prose.
LENGTH
2-4 sentences total. Hard cap 4. If the day is truly empty, one sentence.
Respond in the user's language ({language}). Today is {today}.\
"""
_PROJECT_BRIEF_FALLBACK = """\
You are the project assistant producing a short status brief for ONE project.
ROLE
A senior project manager summarising state-of-play for the owner. Factual,
sharp, forward-looking. Never reassuring filler, never emojis.
SCOPE
Work only with project_id = {project_id}. Do not mention or pull data from
other projects. Use tools to fetch fresh data:
- get_project — current status, dates, description
- list_tasks(project_id) — open work, split by status
- list_timelines(project_id) — milestones hit, upcoming, overdue
- list_notes(project_id) — any recent decisions or blockers
- memory_get — relevant context about the client, collaborators, constraints
STRUCTURE — follow exactly, one short paragraph per section, no headers
1. **State.** One sentence: current phase, health (on track / at risk / blocked),
and why. Cite the concrete signal (overdue milestone, stalled tasks, recent
blocker note).
2. **What's moving.** What was completed or progressed recently. Name specific
tasks or milestones.
3. **Next steps.** The 1-3 most important things the user should do next, in
priority order. Be concrete — task name, who owns it, when due if known.
If waiting on someone else, name them and what the ask is.
4. **Risks / memory-flagged items.** One line max. Only include when there is
a real risk or a relevant memory (e.g. late-paying client, tight deadline,
scope change). Omit the section entirely if nothing to say.
WHAT TO OMIT
- Zero-counts ("no overdue tasks").
- Generic advice ("keep up the good work").
- Greetings, headers, bullet lists, emojis, sign-offs, meta-phrases.
- XML/HTML tags or bracketed id lists. Plain prose only.
VOICE
- Direct. Factual. No fluff.
- Use **bold** sparingly for task titles, milestone names, and the owner's name.
- Short sentences. Prefer verbs over nouns ("Client review is blocking release"
not "There is a blocker which is the client review").
LENGTH
4-8 sentences total across the 3-4 sections. Hard cap 8.
Respond in the user's language ({language}). Today is {today}.\
"""
def _resolve_language(context: dict[str, Any]) -> str:
core = context.get("core_memory") or {}
raw = (core.get("language") or "en").strip().lower()
return _LANGUAGE_NAMES.get(raw, raw.title()) or "English"
def _build_read_tools(user_id: str, trace_id: str | None) -> list[Any]:
return [
*TASK_READ_TOOLS,
*PROJECT_READ_TOOLS,
*TIMELINE_READ_TOOLS,
*NOTE_READ_TOOLS,
*_read_only_memory_tools(user_id, trace_id),
]
async def run_home_brief(
user_id: str,
context: dict[str, Any],
) -> AsyncGenerator[tuple[str, Any], None]:
"""Stream a plain-text daily home brief.
Yields (event_type, data) tuples identical to _run_single_agent_stream.
Do NOT post-process output through _normalize_tagged_list_lines.
"""
from app.agents.folder_agent import FOLDER_TOOLS
trace_id = _trace_id_from_context(context)
today = date.today().isoformat()
language = _resolve_language(context)
raw_template, langfuse_prompt = get_prompt_or_fallback("home_brief", _HOME_BRIEF_FALLBACK)
system_prompt = compile_prompt(raw_template, langfuse_prompt, language=language, today=today)
system_prompt += _relational_memory_injection(context)
system_prompt += _proactive_hints_injection(context)
system_prompt += _language_instruction(context)
if today not in system_prompt:
system_prompt += f"\nToday is {today}."
brief_manifest = await build_brief_multi_project_manifest()
system_prompt = system_prompt + ("\n\n" + brief_manifest if brief_manifest else "")
tools = [*_build_read_tools(user_id, trace_id), *FOLDER_TOOLS]
async for event in _run_single_agent_stream(
user_id=user_id,
system_prompt=system_prompt,
message="Generate the daily brief.",
context=context,
langfuse_prompt=langfuse_prompt,
agent_name="brief-agent",
tools=tools,
):
yield event
async def run_project_brief(
user_id: str,
project_id: str,
context: dict[str, Any],
) -> AsyncGenerator[tuple[str, Any], None]:
"""Stream a plain-text project status brief for project_id.
Yields (event_type, data) tuples identical to _run_single_agent_stream.
Do NOT post-process output through _normalize_tagged_list_lines.
"""
trace_id = _trace_id_from_context(context)
today = date.today().isoformat()
language = _resolve_language(context)
raw_template, langfuse_prompt = get_prompt_or_fallback("project_brief", _PROJECT_BRIEF_FALLBACK)
system_prompt = compile_prompt(
raw_template, langfuse_prompt,
language=language, today=today, project_id=project_id,
)
system_prompt += _relational_memory_injection(context)
system_prompt += _proactive_hints_injection(context)
system_prompt += _language_instruction(context)
if today not in system_prompt:
system_prompt += f"\nToday is {today}."
tools = _build_read_tools(user_id, trace_id)
async for event in _run_single_agent_stream(
user_id=user_id,
system_prompt=system_prompt,
message=f"Generate the project status brief for project {project_id}.",
context=context,
langfuse_prompt=langfuse_prompt,
agent_name="brief-agent",
tools=tools,
):
yield event

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"""Device connection manager.
Maintains in-memory state for all active Electron → backend WebSocket
connections. One connection per user (latest replaces previous).
The manager handles the **tool-call round-trip** pattern:
- Backend sends ``tool_call`` frame → Electron executes the action →
returns ``tool_result`` frame.
- ``create_pending_call`` registers a Future keyed by ``call_id``.
- ``resolve_pending_call`` fulfils the Future; callers awaiting it
receive the result dict from Electron.
This pattern is used by all tools (CRUD, file-system, etc.) via
``execute_on_client()`` in ``ws_context.py``.
The ``device_manager`` module-level singleton is imported by both the
device WS route and the agent runner.
"""
from __future__ import annotations
import asyncio
import json
import logging
from dataclasses import dataclass, field
from fastapi import WebSocket
logger = logging.getLogger(__name__)
@dataclass
class DeviceConnection:
"""State for a single connected Electron device."""
ws: WebSocket
device_id: str
# Futures indexed by tool_call id — resolved when tool_result arrives.
pending_calls: dict[str, asyncio.Future[dict]] = field(default_factory=dict)
class DeviceConnectionManager:
"""Singleton registry of active Electron WebSocket connections.
Thread/task safety note: asyncio is single-threaded by design. All
mutations happen inside await-points on the main event loop, so no
locking is required for the in-memory dicts.
"""
def __init__(self) -> None:
self._connections: dict[str, DeviceConnection] = {}
# ── Registration ──────────────────────────────────────────────────
def register(self, user_id: str, device_id: str, ws: WebSocket) -> None:
"""Store the active connection for *user_id*, replacing any previous one."""
if user_id in self._connections:
old = self._connections[user_id]
logger.info(
"device_manager: replacing existing connection for user=%s device=%s",
user_id,
old.device_id,
)
# Cancel any futures that were waiting on the old connection.
for fut in old.pending_calls.values():
if not fut.done():
fut.cancel()
self._connections[user_id] = DeviceConnection(ws=ws, device_id=device_id)
logger.info(
"device_manager: registered user=%s device=%s", user_id, device_id
)
def unregister(self, user_id: str) -> None:
"""Remove the connection for *user_id* and cancel any pending futures."""
conn = self._connections.pop(user_id, None)
if conn is None:
return
for fut in conn.pending_calls.values():
if not fut.done():
fut.cancel()
logger.info("device_manager: unregistered user=%s", user_id)
# ── Presence queries ──────────────────────────────────────────────
def get_ws(self, user_id: str) -> WebSocket | None:
"""Return the active WebSocket for *user_id*, or ``None`` if offline."""
conn = self._connections.get(user_id)
return conn.ws if conn else None
def is_online(self, user_id: str, device_id: str | None = None) -> bool:
"""Return ``True`` if the user has an active connection.
If *device_id* is provided also checks that it matches the connected device.
"""
conn = self._connections.get(user_id)
if conn is None:
return False
if device_id is not None:
return conn.device_id == device_id
return True
# ── Frame sending ─────────────────────────────────────────────────
async def send_frame(self, user_id: str, frame: dict) -> None:
"""Send *frame* as a JSON text message to the device.
Raises ``RuntimeError`` if the user is not connected.
"""
conn = self._connections.get(user_id)
if conn is None:
raise RuntimeError(
f"send_frame: user {user_id!r} is not connected"
)
await conn.ws.send_text(json.dumps(frame))
# ── Tool-call round-trip ──────────────────────────────────────────
def create_pending_call(
self, user_id: str, call_id: str
) -> asyncio.Future[dict]:
"""Register a Future that will be resolved when the tool_result arrives.
Raises ``RuntimeError`` if the user is not connected.
"""
conn = self._connections.get(user_id)
if conn is None:
raise RuntimeError(
f"create_pending_call: user {user_id!r} is not connected"
)
loop = asyncio.get_event_loop()
fut: asyncio.Future[dict] = loop.create_future()
conn.pending_calls[call_id] = fut
return fut
def resolve_pending_call(
self, user_id: str, call_id: str, result: dict
) -> None:
"""Fulfil the Future registered under *call_id* with the Electron result.
No-ops if the call_id is unknown (already timed out or cancelled).
"""
conn = self._connections.get(user_id)
if conn is None:
return
fut = conn.pending_calls.pop(call_id, None)
if fut is not None and not fut.done():
fut.set_result(result)
# Module-level singleton — import this everywhere.
device_manager = DeviceConnectionManager()

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"""OpenAI embedding helper for associative memory tier.
Single public function: ``embed_text(text) -> list[float] | None``.
Returns None on any failure — callers must implement a keyword fallback.
Never raises; all exceptions are logged as warnings.
"""
from __future__ import annotations
import logging
from openai import AsyncOpenAI
logger = logging.getLogger(__name__)
_MAX_INPUT_CHARS = 8000
_EMBEDDING_MODEL = "text-embedding-3-small"
async def embed_text(text: str) -> list[float] | None:
"""Call OpenAI text-embedding-3-small. Return None on failure (caller falls back to keyword)."""
try:
client = AsyncOpenAI()
truncated = text[:_MAX_INPUT_CHARS]
response = await client.embeddings.create(
input=truncated,
model=_EMBEDDING_MODEL,
)
result: list[float] = response.data[0].embedding
logger.debug("embeddings: embed_text dims=%d", len(result))
return result
except Exception as exc:
logger.warning("embeddings: embed_text failed: %s", exc)
return None

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"""Per-file summarisation for project folder integration."""
from __future__ import annotations
import base64
import io
from dataclasses import dataclass
from langchain_core.messages import HumanMessage, SystemMessage
from pypdf import PdfReader
from docx import Document as DocxDocument
from app.core.langfuse_client import (
compile_prompt,
extract_usage,
get_langfuse,
get_prompt_or_fallback,
)
from app.core.llm import get_llm
_TEXT_FALLBACK = (
"You are summarising a file for an AI assistant that helps the user manage a project.\n"
"Produce a single sentence (<=30 words, <=200 chars) that captures the file's purpose "
"and most important detail.\nFile extension: {ext}\nFile name: {name}\nContent (truncated if long):\n{content}"
)
_IMAGE_FALLBACK = (
"You are summarising an image attached to a project folder.\n"
"Produce a single sentence (<=30 words, <=200 chars) describing what the image shows "
"and any obvious purpose (logo, screenshot, diagram, photo of a whiteboard, etc.)."
)
_MAX_INPUT_CHARS = 6000
@dataclass
class IndexResult:
summary: str
tokens_used: int
async def _llm_text(messages: list) -> object:
"""Make the LLM call for text summarisation.
Defined as a standalone async function so tests can patch it cleanly
without needing to mock the LLM object itself.
"""
llm = get_llm(model="gpt-4o-mini", temperature=0.2)
return await llm.ainvoke(messages)
async def _llm_vision(messages: list) -> object:
"""Make the LLM call for vision (image) summarisation.
Accepts the message list and returns the response directly, mirroring
the ``_llm_text`` caller pattern so tests can patch it at the module level.
"""
llm = get_llm(model="gpt-4o-mini", temperature=0.2)
return await llm.ainvoke(messages)
async def summarize_image(*, image_b64: str, mime: str, file_name: str | None = None) -> IndexResult:
"""Return a compact summary of an image file using vision.
Parameters
----------
image_b64:
Base64-encoded image bytes.
mime:
MIME type of the image, e.g. ``"image/png"``.
file_name:
Optional file name, attached to the Langfuse trace as input metadata.
"""
template, prompt_obj = get_prompt_or_fallback("folder_file_summary_image", _IMAGE_FALLBACK)
messages = [
SystemMessage(content=template),
HumanMessage(content=[
{"type": "text", "text": "Summarise this image."},
{"type": "image_url", "image_url": {"url": f"data:{mime};base64,{image_b64}"}},
]),
]
lf = get_langfuse()
if lf is not None:
with lf.start_as_current_observation(
as_type="generation",
name="folder-summarize-image",
model="gpt-4o-mini",
prompt=prompt_obj,
input={"file_name": file_name, "mime": mime},
) as gen:
response = await _llm_vision(messages)
usage = extract_usage(response)
gen.update(output=response.content, usage_details=usage)
else:
response = await _llm_vision(messages)
usage = extract_usage(response)
summary = (response.content or "").strip()[:500]
return IndexResult(summary=summary, tokens_used=usage.get("total", 0))
async def summarize_text(*, content: str, ext: str, name: str) -> IndexResult:
"""Return a compact summary of a text file.
Parameters
----------
content:
Raw text content of the file (will be truncated to _MAX_INPUT_CHARS).
ext:
File extension including the leading dot, e.g. ``".md"``.
name:
File name, e.g. ``"kickoff.md"``.
"""
template, prompt_obj = get_prompt_or_fallback("folder_file_summary_text", _TEXT_FALLBACK)
truncated = content[:_MAX_INPUT_CHARS]
compiled = compile_prompt(template, prompt_obj, ext=ext, name=name, content=truncated)
messages = [
SystemMessage(content=compiled),
HumanMessage(content="Summarise this file."),
]
lf = get_langfuse()
if lf is not None:
with lf.start_as_current_observation(
as_type="generation",
name="folder-summarize-text",
model="gpt-4o-mini",
prompt=prompt_obj,
input={"file_name": name, "ext": ext, "content_chars": len(truncated)},
) as gen:
response = await _llm_text(messages)
usage = extract_usage(response)
gen.update(output=response.content, usage_details=usage)
else:
response = await _llm_text(messages)
usage = extract_usage(response)
summary = (response.content or "").strip()[:500]
return IndexResult(summary=summary, tokens_used=usage.get("total", 0))
def _extract_pdf_text(pdf_b64: str) -> str:
buf = io.BytesIO(base64.b64decode(pdf_b64))
reader = PdfReader(buf)
parts: list[str] = []
for page in reader.pages:
try:
parts.append(page.extract_text() or "")
except Exception:
continue
return "\n".join(parts).strip()
def _extract_docx_text(docx_b64: str) -> str:
buf = io.BytesIO(base64.b64decode(docx_b64))
doc = DocxDocument(buf)
return "\n".join(p.text for p in doc.paragraphs if p.text).strip()
async def summarize_pdf(*, pdf_b64: str, name: str) -> IndexResult:
"""Return a compact summary of a PDF file.
Parameters
----------
pdf_b64:
Base64-encoded PDF bytes.
name:
File name, e.g. ``"report.pdf"``.
"""
text = _extract_pdf_text(pdf_b64)
if not text:
return IndexResult(summary="Could not extract text", tokens_used=0)
return await summarize_text(content=text, ext=".pdf", name=name)
async def summarize_docx(*, docx_b64: str, name: str) -> IndexResult:
"""Return a compact summary of a DOCX file.
Parameters
----------
docx_b64:
Base64-encoded DOCX bytes.
name:
File name, e.g. ``"spec.docx"``.
"""
text = _extract_docx_text(docx_b64)
if not text:
return IndexResult(summary="Could not extract text", tokens_used=0)
return await summarize_text(content=text, ext=".docx", name=name)

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"""Langfuse observability — singleton client and prompt helpers.
If LANGFUSE_SECRET_KEY / LANGFUSE_PUBLIC_KEY are not set,
all helpers are no-ops so the app works without Langfuse configured.
Usage
-----
Tracing::
from app.core.langfuse_client import get_langfuse
lf = get_langfuse()
if lf:
with lf.start_as_current_observation(as_type="span", name="my-agent") as span:
span.update(input=user_message)
# ... do work ...
span.update(output=result)
lf.flush()
Prompt management::
from app.core.langfuse_client import get_prompt_or_fallback
text, prompt_obj = get_prompt_or_fallback("home_system", FALLBACK_PROMPT)
# Use text as the system prompt; pass prompt_obj to generations for linking.
Linking a prompt to a generation::
with lf.start_as_current_observation(
as_type="generation",
name="llm-call",
model="gpt-4o",
prompt=prompt_obj, # links generation → prompt version in the UI
input=messages,
) as gen:
response = await llm.ainvoke(messages)
gen.update(output=response.content, usage=_usage(response))
"""
from __future__ import annotations
import hashlib
import logging
from contextlib import contextmanager
from typing import Any, Generator
logger = logging.getLogger(__name__)
_client: Any = None
_initialized: bool = False
def get_langfuse() -> Any | None:
"""Return the Langfuse singleton, or ``None`` when not configured."""
global _client, _initialized
if _initialized:
return _client
_initialized = True
from app.config.settings import settings # local import to avoid circular deps
if not settings.LANGFUSE_SECRET_KEY or not settings.LANGFUSE_PUBLIC_KEY:
logger.debug("langfuse: not configured — observability disabled")
return None
try:
from langfuse import Langfuse
_client = Langfuse(
secret_key=settings.LANGFUSE_SECRET_KEY,
public_key=settings.LANGFUSE_PUBLIC_KEY,
host=settings.LANGFUSE_BASE_URL,
)
logger.info("langfuse: client initialized host=%s", settings.LANGFUSE_BASE_URL)
except Exception as exc:
logger.warning("langfuse: failed to initialize: %s", exc)
_client = None
return _client
def get_prompt_or_fallback(name: str, fallback: str) -> tuple[str, Any]:
"""Fetch a text prompt from Langfuse; fall back to ``fallback`` on any error.
Returns ``(raw_template, prompt_obj_or_None)``.
* ``raw_template`` — the uncompiled template string. Do NOT call ``.format()``
on it directly; use :func:`compile_prompt` instead so the correct variable
syntax is applied (``{{var}}`` for Langfuse, ``{var}`` for the fallback).
* ``prompt_obj`` — the Langfuse prompt object, or ``None`` when Langfuse is
unavailable / the fetch failed. Pass this to generation observations so
Langfuse links the generation to the exact prompt version in the UI.
"""
lf = get_langfuse()
if lf is None:
return fallback, None
try:
prompt = lf.get_prompt(name, label="production", fallback=fallback)
# For text-type prompts .prompt holds the raw template string.
raw = prompt.prompt if hasattr(prompt, "prompt") and isinstance(prompt.prompt, str) else fallback
return raw, prompt
except Exception as exc:
logger.warning("langfuse: get_prompt %r failed: %s — using fallback", name, exc)
return fallback, None
def compile_prompt(template: str, prompt_obj: Any, **variables: Any) -> str:
"""Compile *template* with *variables*, choosing the right syntax.
* When *prompt_obj* is a real Langfuse prompt object, calls
``prompt_obj.compile(**variables)`` which handles ``{{variable}}``
substitution as defined in the Langfuse UI.
* When *prompt_obj* is ``None`` (Langfuse unavailable or fetch failed),
falls back to ``template.format(**variables)`` which handles the
``{variable}`` syntax used in the hardcoded fallback strings.
This keeps callers oblivious to which syntax is in use.
"""
if prompt_obj is not None:
try:
compiled = prompt_obj.compile(**variables)
# compile() returns a string for text prompts.
if isinstance(compiled, str):
return compiled
# Chat prompts return a list of dicts — join text parts.
if isinstance(compiled, list):
return "\n".join(
m.get("content", "") for m in compiled if isinstance(m, dict)
)
except Exception as exc:
logger.warning(
"langfuse: compile failed for prompt %r: %s — falling back to .format()",
getattr(prompt_obj, "name", "?"),
exc,
)
return template.format(**variables)
def extract_usage(response: Any) -> dict[str, int]:
"""Extract token usage from a LangChain AI message into Langfuse format."""
meta = getattr(response, "usage_metadata", None)
if not meta:
return {}
return {
"input": int(meta.get("input_tokens", 0)),
"output": int(meta.get("output_tokens", 0)),
"total": int(meta.get("total_tokens", 0)),
}
def hash_user_id(user_id: str) -> str:
"""Return a SHA-256 hash of *user_id* for use as Langfuse ``user_id``.
This avoids sending raw database UUIDs to external observability services
while still providing a stable, deterministic identifier for per-user
metrics in the Langfuse dashboard.
"""
return hashlib.sha256(user_id.encode()).hexdigest()
@contextmanager
def langfuse_context(
user_id: str | None = None,
session_id: str | None = None,
) -> Generator[None, None, None]:
"""Propagate ``user_id`` (hashed) and ``session_id`` to all Langfuse observations.
No-op when Langfuse is not configured or parameters are empty.
"""
lf = get_langfuse()
if lf is None or (not user_id and not session_id):
yield
return
try:
from langfuse import propagate_attributes
except ImportError:
logger.debug("langfuse: propagate_attributes not available — skipping context")
yield
return
attrs: dict[str, str] = {}
if user_id:
attrs["user_id"] = hash_user_id(user_id)
if session_id:
attrs["session_id"] = session_id
with propagate_attributes(**attrs):
yield

156
api/app/core/llm.py Normal file
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"""LLM factory — centralised model instantiation via LiteLLM.
Every agent and the orchestrator call ``get_llm()``
instead of directly constructing a provider-specific class. The model string
follows the `LiteLLM model naming convention
<https://docs.litellm.ai/docs/providers>`_:
* OpenAI: ``gpt-4o``, ``gpt-4o-mini``
* Anthropic: ``anthropic/claude-3.5-sonnet``
* Google: ``gemini/gemini-pro``
* Ollama: ``ollama/llama3``
* Bedrock: ``bedrock/anthropic.claude-v2``
Switch providers by changing **LLM_MODEL** in ``.env``
— no code changes required.
"""
from __future__ import annotations
import os
import warnings
from collections.abc import Callable
from openai import AsyncOpenAI
import litellm
from langchain_openai import ChatOpenAI
from langchain_litellm import ChatLiteLLM
from litellm import get_supported_openai_params # noqa: F401 validates install
from app.config.settings import settings
# Some models (e.g. gpt-5, o-series) reject unsupported params like temperature.
# Drop them silently instead of raising UnsupportedParamsError.
litellm.drop_params = True
# Some provider responses include a plain dict in the `usage` field where a
# richer Pydantic model is expected. This warning is noisy but non-fatal.
warnings.filterwarnings(
"ignore",
message=r"PydanticSerializationUnexpectedValue\(Expected `ResponseAPIUsage`",
category=UserWarning,
)
def _api_key_for_model(model: str) -> str | None:
"""Return the most appropriate API key for the given LiteLLM model string."""
if model.startswith("anthropic/"):
return settings.ANTHROPIC_API_KEY or None
if model.startswith("gemini/") or model.startswith("google/"):
return settings.GOOGLE_API_KEY or None
if model.startswith("cerebras/"):
return settings.CEREBRAS_API_KEY or None
if model.startswith("groq/"):
return settings.GROQ_API_KEY or None
if model.startswith("deepseek/"):
return settings.DEEPSEEK_API_KEY or None
if model.startswith("github_copilot/"):
# GitHub Copilot uses OAuth device-flow tokens managed by LiteLLM.
# No API key is required; returning None lets LiteLLM handle auth.
return None
# Default: OpenAI-compatible (covers plain model names like "gpt-4o")
return settings.OPENAI_API_KEY or None
def get_llm(
*,
model: str | None = None,
temperature: float = 0,
) -> ChatOpenAI | ChatLiteLLM:
"""Return a LangChain chat model backed by LiteLLM.
LiteLLM exposes an OpenAI-compatible API, so we use ``ChatOpenAI`` pointed
at the LiteLLM proxy endpoint. In practice, ``litellm`` patches the
``openai`` client transparently when the model string contains a provider
prefix (``anthropic/…``, ``gemini/…``, etc.).
Parameters
----------
model:
LiteLLM model identifier. Defaults to ``settings.LLM_MODEL``.
temperature:
Sampling temperature. ``0`` = deterministic.
"""
model = model or settings.LLM_MODEL
# Point LiteLLM to the custom token directory when configured.
if settings.GITHUB_COPILOT_TOKEN_DIR:
os.environ.setdefault("GITHUB_COPILOT_TOKEN_DIR", settings.GITHUB_COPILOT_TOKEN_DIR)
# Use ChatLiteLLM for provider-prefixed models (github_copilot/, anthropic/, etc.)
# so LiteLLM handles routing and auth. ChatOpenAI for plain OpenAI model names.
if "/" in model:
return ChatLiteLLM(model=model, temperature=temperature)
return ChatOpenAI(
model=model,
temperature=temperature,
api_key=_api_key_for_model(model),
)
_AGENT_MODEL_SETTINGS: dict[str, Callable[[], str]] = {
"classifier": lambda: settings.LLM_MODEL_CLASSIFIER or settings.LLM_MODEL,
"home-agent": lambda: settings.LLM_MODEL_HOME_AGENT or settings.LLM_MODEL,
"unified-processor": lambda: settings.LLM_MODEL_UNIFIED_PROCESSOR or settings.LLM_MODEL,
"cloud-processor": lambda: settings.LLM_MODEL_CLOUD_PROCESSOR or settings.LLM_MODEL,
"brief-agent": lambda: settings.LLM_MODEL_BRIEF_AGENT or settings.LLM_MODEL,
"task-brief-agent": lambda: settings.LLM_MODEL_TASK_BRIEF_AGENT or settings.LLM_MODEL,
"setup": lambda: settings.LLM_MODEL_SETUP_AGENT or settings.LLM_MODEL,
"memory-extractor": lambda: settings.LLM_MODEL_MEMORY_EXTRACTOR or "gpt-4o-mini",
"memory-miner": lambda: settings.LLM_MODEL_MEMORY_MINER or "gpt-4o-mini",
"memory-auditor": lambda: settings.LLM_MODEL_MEMORY_AUDITOR or settings.LLM_MODEL,
"note-summarizer": lambda: "gpt-4o-mini",
}
def model_for_agent(agent_name: str) -> str:
"""Return the resolved model string for *agent_name* (for Langfuse tracking)."""
return _AGENT_MODEL_SETTINGS.get(agent_name, lambda: settings.LLM_MODEL)()
def get_agent_llm(
agent_name: str,
*,
temperature: float = 0,
) -> ChatOpenAI | ChatLiteLLM:
"""Return an LLM configured for *agent_name*, respecting per-agent overrides.
Falls back to ``settings.LLM_MODEL`` for unknown agent names or when the
per-agent override is left empty in ``.env``.
"""
model = model_for_agent(agent_name)
return get_llm(model=model, temperature=temperature)
async def embed(text: str) -> list[float]:
"""Return an embedding vector for *text*.
Uses ``settings.LLM_EMBED_MODEL`` so the same provider switch in ``.env``
(e.g. ``github_copilot/text-embedding-3-small``) applies here without any
code changes. Falls back to the raw AsyncOpenAI client for plain OpenAI
model names to preserve existing behaviour.
"""
model = settings.LLM_EMBED_MODEL
if model.startswith("github_copilot/") or "/" in model:
# Use LiteLLM for all provider-prefixed models (Copilot, Bedrock, etc.)
# so the provider's auth mechanism is applied correctly.
response = await litellm.aembedding(model=model, input=[text])
return response.data[0]["embedding"]
# Plain OpenAI model name — use the raw AsyncOpenAI client (existing path).
client = AsyncOpenAI(api_key=settings.OPENAI_API_KEY)
response = await client.embeddings.create(model=model, input=text)
return response.data[0].embedding

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"""Mem0-style Extract/Update pipeline — Phase 2.
Runs after every ``store_episode`` call to distil durable facts, preferences,
routines, and relations from the latest conversation turn.
Entry point: ``run_extraction(db, user_id, last_user_msg, last_assistant_msg, session_id)``
Design notes
------------
- Two gpt-4o-mini calls per turn: extract candidates, then decide action per candidate.
- Short-circuit: if no existing neighbours → ADD without a second LLM call (cost saving).
- Zero-trust: never logs decrypted user content; relation subject/object labels are
treated as identifiers (safe to log per spec).
- Must not raise into the request path — caller wraps in asyncio.create_task().
"""
from __future__ import annotations
import json
import logging
from typing import Any, Literal
from pydantic import BaseModel, Field
from sqlalchemy.ext.asyncio import AsyncSession
from app.core.langfuse_client import get_langfuse, get_prompt_or_fallback, extract_usage, langfuse_context
from app.core.llm import get_agent_llm, model_for_agent
logger = logging.getLogger(__name__)
# ── Fallback prompts (used when Langfuse unavailable) ─────────────────────────
_EXTRACTION_FALLBACK = (
"You are a memory extractor for a personal AI secretary. Given the last conversation "
"turn, the user's core memory, and recent episode summaries, identify durable facts, "
"preferences, routines, and person/project relations worth remembering.\n\n"
"Output JSON matching this schema exactly:\n"
'{{"candidates": [{{"type": "<fact|preference|relation|routine>", '
'"content": "<short canonical statement>", '
'"target_tier": "<core|associative|relational|proactive>", '
'"subject": null, "predicate": null, "object": null, "confidence": 0.7}}]}}\n\n'
"Rules:\n"
"- Skip small talk, greetings, one-off questions.\n"
"- Max 5 candidates per call.\n"
"- Only extract durable information (still true next week).\n"
"- For type=relation: subject/predicate/object required.\n"
"- Default confidence=0.7.\n\n"
"## Last turn\n{last_turn}\n\n"
"## Core memory (current)\n{core_memory}\n\n"
"## Recent episodes\n{recent_episodes}"
)
_DECIDE_FALLBACK = (
"You are a memory update decision engine. Given a new memory candidate and a list of "
"existing memories from the same tier, decide what action to take.\n\n"
"Respond with exactly one word: ADD, UPDATE, DELETE, or NOOP.\n\n"
"- ADD: new information not in existing memories.\n"
"- UPDATE: contradicts or supersedes an existing memory.\n"
"- DELETE: states something is no longer true.\n"
"- NOOP: already captured accurately.\n\n"
"## New candidate\n{candidate}\n\n"
"## Existing memories (same tier, top neighbours)\n{existing_memories}"
)
# ── Pydantic schemas ───────────────────────────────────────────────────────────
class MemoryCandidate(BaseModel):
type: Literal["fact", "preference", "relation", "routine"]
content: str
target_tier: Literal["core", "associative", "relational", "proactive"]
subject: str | None = None
predicate: str | None = None
object: str | None = None
confidence: float = Field(default=0.7, ge=0.0, le=1.0)
class ExtractionResult(BaseModel):
candidates: list[MemoryCandidate] = Field(default_factory=list)
# ── Task 2.1 — Extract candidates ─────────────────────────────────────────────
async def extract_candidates(
last_turn: str,
core_memory: dict[str, str],
recent_episodes: list[str],
) -> ExtractionResult:
"""Call gpt-4o-mini to extract memory candidates from the latest turn.
Returns an ExtractionResult (may be empty on failure — never raises).
"""
core_str = "\n".join(f"{k}: {v}" for k, v in core_memory.items()) or "(empty)"
episodes_str = "\n---\n".join(recent_episodes[-5:]) or "(none)"
template, prompt_obj = get_prompt_or_fallback("memory_extraction", _EXTRACTION_FALLBACK)
# Compile with Langfuse variable syntax ({{var}}) or fallback {var}
if prompt_obj is not None:
try:
system_text = prompt_obj.compile(
last_turn=last_turn,
core_memory=core_str,
recent_episodes=episodes_str,
)
if isinstance(system_text, list):
system_text = "\n".join(m.get("content", "") for m in system_text if isinstance(m, dict))
except Exception as exc:
logger.warning("memory_extraction: compile failed: %s", exc)
system_text = template.format(
last_turn=last_turn,
core_memory=core_str,
recent_episodes=episodes_str,
)
else:
system_text = template.format(
last_turn=last_turn,
core_memory=core_str,
recent_episodes=episodes_str,
)
llm = get_agent_llm("memory-extractor", temperature=0)
# Bind JSON mode so the model always returns parseable output.
llm_json = llm.bind(response_format={"type": "json_object"}) # type: ignore[attr-defined]
lf = get_langfuse()
try:
from langchain_core.messages import HumanMessage, SystemMessage # noqa: PLC0415
messages = [
SystemMessage(content=system_text),
HumanMessage(content="Extract memory candidates as JSON."),
]
if lf:
with lf.start_as_current_observation(
as_type="generation",
name="memory-extraction",
model=model_for_agent("memory-extractor"),
prompt=prompt_obj,
input=messages,
) as gen:
response = await llm_json.ainvoke(messages)
gen.update(output=response.content, usage=extract_usage(response))
else:
response = await llm_json.ainvoke(messages)
raw = json.loads(response.content)
result = ExtractionResult.model_validate(raw)
logger.info("memory_extraction: extracted %d candidates", len(result.candidates))
return result
except Exception as exc:
logger.warning("memory_extraction: extract_candidates failed: %s", exc)
return ExtractionResult(candidates=[])
# ── Task 2.2 — Decide action ──────────────────────────────────────────────────
async def decide_action(
candidate: MemoryCandidate,
existing: list[str],
) -> Literal["ADD", "UPDATE", "DELETE", "NOOP"]:
"""Decide what to do with a candidate given existing memories in the same tier.
Short-circuits to ADD without an LLM call when existing is empty (cost saving).
Never raises.
"""
if not existing:
return "ADD"
candidate_str = f"[{candidate.type}] {candidate.content}"
existing_str = "\n".join(f"- {m}" for m in existing)
template, prompt_obj = get_prompt_or_fallback("memory_decide_action", _DECIDE_FALLBACK)
if prompt_obj is not None:
try:
system_text = prompt_obj.compile(
candidate=candidate_str,
existing_memories=existing_str,
)
if isinstance(system_text, list):
system_text = "\n".join(m.get("content", "") for m in system_text if isinstance(m, dict))
except Exception as exc:
logger.warning("memory_extraction: decide compile failed: %s", exc)
system_text = template.format(candidate=candidate_str, existing_memories=existing_str)
else:
system_text = template.format(candidate=candidate_str, existing_memories=existing_str)
llm = get_agent_llm("memory-extractor", temperature=0)
lf = get_langfuse()
try:
from langchain_core.messages import HumanMessage, SystemMessage # noqa: PLC0415
messages = [
SystemMessage(content=system_text),
HumanMessage(content="Decide action."),
]
if lf:
with lf.start_as_current_observation(
as_type="generation",
name="memory-decide-action",
model=model_for_agent("memory-extractor"),
prompt=prompt_obj,
input=messages,
) as gen:
response = await llm.ainvoke(messages)
gen.update(output=response.content, usage=extract_usage(response))
else:
response = await llm.ainvoke(messages)
verb = response.content.strip().upper()
if verb in ("ADD", "UPDATE", "DELETE", "NOOP"):
return verb # type: ignore[return-value]
logger.warning("memory_extraction: unexpected decide verb=%r, defaulting ADD", verb)
return "ADD"
except Exception as exc:
logger.warning("memory_extraction: decide_action failed: %s", exc)
return "ADD"
# ── Task 2.3 — Pipeline orchestrator ──────────────────────────────────────────
async def run_extraction(
db: AsyncSession,
user_id: str,
last_user_msg: str,
last_assistant_msg: str,
session_id: str | None,
) -> None:
"""Full Mem0-style extract/update pipeline for one conversation turn.
Steps:
1. Load core memory + last 5 episodes.
2. extract_candidates() → up to 5 MemoryCandidate objects.
3. For each candidate: find top-3 neighbours → decide_action() → apply.
4. Trace via Langfuse.
Never raises — wraps everything in try/except.
"""
try:
await _run_extraction_inner(db, user_id, last_user_msg, last_assistant_msg, session_id)
except Exception as exc:
logger.warning("memory_extraction: run_extraction failed user=%s: %s", user_id, exc)
async def _run_extraction_inner(
db: AsyncSession,
user_id: str,
last_user_msg: str,
last_assistant_msg: str,
session_id: str | None,
) -> None:
from app.core.memory_middleware import MemoryMiddleware # noqa: PLC0415
middleware = MemoryMiddleware(db)
fernet = await middleware._get_fernet(user_id)
if fernet is None:
logger.warning("memory_extraction: no fernet for user=%s, skipping", user_id)
return
# 1. Load context
core: dict[str, str] = await middleware._load_core(user_id, fernet)
episodes: list[str] = await middleware._load_episodic(user_id, fernet, session_id=session_id)
last_turn = f"User: {last_user_msg}\nAssistant: {last_assistant_msg}"
lf = get_langfuse()
async def _run(trace_id: str | None) -> dict[str, Any]:
# 2. Extract candidates
result = await extract_candidates(last_turn, core, episodes)
if not result.candidates:
logger.info("memory_extraction: no candidates user=%s", user_id)
return {"candidates": 0, "applied": 0}
logger.info(
"memory_extraction: processing %d candidates user=%s trace=%s",
len(result.candidates),
user_id,
trace_id or "-",
)
# 3. Apply each candidate
applied = 0
actions: list[str] = []
for candidate in result.candidates:
try:
await _apply_candidate(middleware, db, user_id, fernet, candidate, trace_id)
applied += 1
actions.append(f"{candidate.type}:{candidate.target_tier}")
except Exception as exc:
logger.warning(
"memory_extraction: apply failed candidate=%r user=%s: %s",
candidate.content[:80],
user_id,
exc,
)
logger.info(
"memory_extraction: applied %d/%d candidates user=%s",
applied,
len(result.candidates),
user_id,
)
return {"candidates": len(result.candidates), "applied": applied, "actions": actions}
with langfuse_context(user_id=user_id, session_id=session_id):
if lf:
with lf.start_as_current_observation(
as_type="span",
name="memory-extraction-pipeline",
input={"last_turn_preview": last_turn[:200]},
) as span:
summary = await _run(trace_id=span.id)
span.update(output=summary)
try:
lf.flush()
except Exception:
pass
else:
await _run(trace_id=None)
async def _apply_candidate(
middleware: Any,
db: AsyncSession,
user_id: str,
fernet: Any,
candidate: MemoryCandidate,
trace_id: str | None,
) -> None:
"""Fetch neighbours, decide action, apply to the appropriate tier."""
neighbours: list[str] = []
if candidate.target_tier == "core":
# For core tier: neighbours are existing core block values for similar keys.
blocks = await middleware.list_core_blocks(user_id)
neighbours = [b["value"] for b in blocks[:3]]
elif candidate.target_tier == "associative":
neighbours = await middleware.search_archival(user_id, candidate.content, top_k=3)
elif candidate.target_tier == "relational":
# Relation candidates handled specially — passed to upsert_relation directly.
# Neighbours: search by subject label if available.
neighbours = []
elif candidate.target_tier == "proactive":
neighbours = await middleware.search_recall(user_id, candidate.content, top_k=3)
action = await decide_action(candidate, neighbours)
logger.info(
"memory_extraction: candidate type=%s tier=%s action=%s",
candidate.type,
candidate.target_tier,
action,
)
if action == "NOOP":
return
if candidate.target_tier == "relational":
# Always upsert relations — decide_action skipped (no neighbour search).
if candidate.subject and candidate.predicate and candidate.object:
await _upsert_relation(
middleware, db, user_id, candidate, trace_id
)
return
if action in ("ADD", "UPDATE"):
if candidate.target_tier == "core":
# Derive a short key from the content (first 40 chars, snake_cased).
key = _content_to_key(candidate.content)
await middleware.update_core(user_id, key, candidate.content, trace_id=trace_id)
elif candidate.target_tier == "associative":
await middleware.store_associative(user_id, candidate.content)
elif candidate.target_tier == "proactive":
await _store_proactive_stub(middleware, db, user_id, candidate, fernet)
elif action == "DELETE":
if candidate.target_tier == "core":
key = _content_to_key(candidate.content)
await middleware.delete_core(user_id, key)
def _content_to_key(content: str) -> str:
"""Derive a short snake_case key from a content string (first 40 chars)."""
import re # noqa: PLC0415
slug = re.sub(r"[^a-z0-9]+", "_", content[:40].lower()).strip("_")
return slug or "memory"
async def _upsert_relation(
middleware: Any,
db: AsyncSession,
user_id: str,
candidate: MemoryCandidate,
trace_id: str | None,
) -> None:
"""Upsert a relation row via MemoryMiddleware.upsert_relation (Phase 3)."""
await middleware.upsert_relation(
user_id=user_id,
subject=candidate.subject or "unknown",
subject_type="unknown",
predicate=candidate.predicate or "related_to",
object_=candidate.object or "unknown",
object_type="unknown",
confidence=candidate.confidence,
)
logger.info(
"memory_extraction: upserted relation subject=%s predicate=%s object=%s",
candidate.subject,
candidate.predicate,
candidate.object,
)
async def _store_proactive_stub(
middleware: Any,
db: AsyncSession,
user_id: str,
candidate: MemoryCandidate,
fernet: Any,
) -> None:
"""Store a proactive pattern row directly (MemoryProactive model)."""
import uuid # noqa: PLC0415
from app.models import MemoryProactive # noqa: PLC0415
from app.core.memory_middleware import _encrypt # noqa: PLC0415
encrypted = _encrypt(fernet, candidate.content)
row = MemoryProactive(
id=str(uuid.uuid4()),
user_id=user_id,
pattern_encrypted=encrypted,
confidence=candidate.confidence,
source="inferred",
)
db.add(row)
try:
await db.commit()
logger.info("memory_extraction: stored proactive pattern user=%s", user_id)
except Exception as exc:
logger.warning("memory_extraction: store proactive failed: %s", exc)
await db.rollback()

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@@ -0,0 +1,581 @@
"""Memory maintenance jobs — Phase 3/5.
Three entrypoints called by the scheduler (APScheduler) registered in app/main.py:
drain_extraction_queue(db) — Free-tier batch extraction (Phase 2/5).
mine_proactive_patterns(db, user_id) — Power+ pattern mining (Phase 5).
decay_relations(db, user_id) — confidence decay + pruning for memory_relations (Phase 3).
All are safe to call manually or from tests; they never raise.
"""
from __future__ import annotations
import json
import logging
import uuid
from datetime import datetime, timedelta, timezone
from cryptography.fernet import Fernet
from sqlalchemy import select
from sqlalchemy.ext.asyncio import AsyncSession
from app.core.langfuse_client import compile_prompt, extract_usage, get_langfuse, get_prompt_or_fallback
from app.models import MemoryAssociative, MemoryEpisodic, MemoryProactive, MemoryRelation, User
logger = logging.getLogger(__name__)
# Decay parameters for relations
_DECAY_FACTOR = 0.95
_DECAY_PERIOD_DAYS = 30
_PRUNE_THRESHOLD = 0.2
# Proactive pattern decay: 10 % per 7 days since last sighting
_PROACTIVE_DECAY_FACTOR = 0.9
_PROACTIVE_DECAY_PERIOD_DAYS = 7
_PROACTIVE_PRUNE_THRESHOLD = 0.2
# Mining: require at least this many episodes to attempt pattern extraction
_MIN_EPISODES_FOR_MINING = 3
_MINING_LOOKBACK_DAYS = 30
# Audit: caps to control token cost
_AUDIT_MAX_FACTS = 50
_AUDIT_MAX_LABELS = 100
async def decay_relations(db: AsyncSession, user_id: str) -> None:
"""Apply confidence decay to all relation rows for a user.
Decay rule: confidence *= 0.95 for every 30 days since last_confirmed_at.
Rows whose confidence falls below 0.2 are deleted.
Never raises — wraps in try/except.
"""
try:
await _decay_relations_inner(db, user_id)
except Exception as exc:
logger.warning("memory_maintenance: decay_relations failed user=%s: %s", user_id, exc)
async def _decay_relations_inner(db: AsyncSession, user_id: str) -> None:
result = await db.execute(
select(MemoryRelation).where(MemoryRelation.user_id == user_id)
)
rows = result.scalars().all()
now = datetime.now(timezone.utc)
deleted = 0
decayed = 0
for row in rows:
reference = row.last_confirmed_at or row.created_at
if reference is None:
continue
if reference.tzinfo is None:
reference = reference.replace(tzinfo=timezone.utc)
days_elapsed = (now - reference).days
if days_elapsed < _DECAY_PERIOD_DAYS:
continue
periods = days_elapsed // _DECAY_PERIOD_DAYS
new_confidence = row.confidence * (_DECAY_FACTOR ** periods)
if new_confidence < _PRUNE_THRESHOLD:
await db.delete(row)
deleted += 1
logger.info(
"memory_maintenance: pruned relation id=%s user=%s subject=%s predicate=%s "
"confidence=%.3f (below threshold)",
row.id, user_id, row.subject_label, row.predicate, new_confidence,
)
else:
row.confidence = new_confidence
decayed += 1
try:
await db.commit()
logger.info(
"memory_maintenance: decay_relations user=%s decayed=%d deleted=%d",
user_id, decayed, deleted,
)
except Exception as exc:
logger.warning("memory_maintenance: decay_relations commit failed user=%s: %s", user_id, exc)
await db.rollback()
async def drain_extraction_queue(db: AsyncSession) -> None:
"""Process pending ExtractionQueue rows for Free-tier users.
Each row corresponds to a stored episode that should be fed through the
Mem0-style extraction pipeline. Rows are deleted after successful processing.
Never raises — wraps in try/except.
"""
try:
await _drain_extraction_queue_inner(db)
except Exception as exc:
logger.warning("memory_maintenance: drain_extraction_queue failed: %s", exc)
async def _drain_extraction_queue_inner(db: AsyncSession) -> None:
from app.models import ExtractionQueue # noqa: PLC0415
result = await db.execute(select(ExtractionQueue))
rows = result.scalars().all()
if not rows:
logger.debug("memory_maintenance: drain_extraction_queue nothing to drain")
return
logger.info("memory_maintenance: drain_extraction_queue pending=%d", len(rows))
from app.core.memory_extraction import run_extraction # noqa: PLC0415
processed = 0
for row in rows:
try:
await run_extraction(
db=db,
user_id=row.user_id,
last_user_msg="",
last_assistant_msg="",
session_id=None,
)
await db.delete(row)
await db.commit()
processed += 1
except Exception as exc:
logger.warning(
"memory_maintenance: drain failed row=%s user=%s: %s",
row.id, row.user_id, exc,
)
await db.rollback()
logger.info("memory_maintenance: drain_extraction_queue processed=%d/%d", processed, len(rows))
async def mine_proactive_patterns(db: AsyncSession, user_id: str) -> None:
"""Mine recurring behavioral patterns from last 30 days of episodes (Power+ only).
Steps:
1. Gate on proactive_mining tier feature.
2. Load + decrypt last 30 days of episodic summaries.
3. Call gpt-4o-mini to identify recurring patterns.
4. Encrypt and store each pattern in memory_proactive.
5. Apply decay to existing proactive rows.
Never raises — wraps in try/except.
"""
try:
await _mine_proactive_patterns_inner(db, user_id)
except Exception as exc:
logger.warning("memory_maintenance: mine_proactive_patterns failed user=%s: %s", user_id, exc)
async def _mine_proactive_patterns_inner(db: AsyncSession, user_id: str) -> None:
from app.billing.tier_manager import tier_manager # noqa: PLC0415
tier = await tier_manager.get_tier(user_id, db)
if not tier_manager.check_feature(tier, "proactive_mining"):
logger.debug("memory_maintenance: mine_proactive_patterns skipped (tier=%s)", tier)
return
# Load user Fernet key
result = await db.execute(select(User).where(User.id == user_id))
user = result.scalar_one_or_none()
if user is None or not user.encryption_key:
logger.warning("memory_maintenance: mine_proactive_patterns no encryption_key user=%s", user_id)
return
fernet = Fernet(user.encryption_key.encode())
cutoff = datetime.now(timezone.utc) - timedelta(days=_MINING_LOOKBACK_DAYS)
episodes_result = await db.execute(
select(MemoryEpisodic)
.where(
MemoryEpisodic.user_id == user_id,
MemoryEpisodic.created_at >= cutoff,
)
.order_by(MemoryEpisodic.created_at.asc())
)
episode_rows = episodes_result.scalars().all()
if len(episode_rows) < _MIN_EPISODES_FOR_MINING:
logger.info(
"memory_maintenance: mine_proactive_patterns skipped user=%s episodes=%d (< %d)",
user_id, len(episode_rows), _MIN_EPISODES_FOR_MINING,
)
return
summaries: list[str] = []
for ep in episode_rows:
try:
plaintext = fernet.decrypt(ep.summary_encrypted.encode()).decode()
summaries.append(plaintext)
except Exception:
pass
if not summaries:
return
patterns = await _extract_proactive_patterns(summaries)
if not patterns:
logger.info("memory_maintenance: mine_proactive_patterns user=%s no patterns extracted", user_id)
return
stored = 0
for pattern_text in patterns:
try:
encrypted = fernet.encrypt(pattern_text.encode()).decode()
row = MemoryProactive(
id=str(uuid.uuid4()),
user_id=user_id,
pattern_encrypted=encrypted,
confidence=0.7,
source="inferred",
)
db.add(row)
stored += 1
except Exception as exc:
logger.warning("memory_maintenance: failed to store pattern user=%s: %s", user_id, exc)
try:
await db.commit()
logger.info(
"memory_maintenance: mine_proactive_patterns user=%s stored=%d",
user_id, stored,
)
except Exception as exc:
logger.warning("memory_maintenance: mine_proactive_patterns commit failed user=%s: %s", user_id, exc)
await db.rollback()
return
await _decay_proactive_patterns(db, user_id, fernet)
async def _extract_proactive_patterns(summaries: list[str]) -> list[str]:
"""Call memory-miner LLM to identify recurring behavioral/temporal patterns."""
from app.core.llm import get_agent_llm # noqa: PLC0415
llm = get_agent_llm("memory-miner", temperature=0)
combined = "\n---\n".join(summaries[-20:]) # cap at last 20 to control token usage
prompt = (
"You are analyzing conversation history for a personal AI secretary. "
"Identify 3-5 recurring temporal or behavioral patterns (e.g. 'always works late on Thursdays', "
"'prefers bullet-point summaries', 'frequently asks about Project Acme status'). "
"Return each pattern as a plain, short English sentence on its own line. "
"No numbering, no bullet points, no extra text.\n\n"
f"Conversation history:\n{combined}"
)
try:
response = await llm.ainvoke(prompt)
text = response.content if hasattr(response, "content") else str(response)
lines = [line.strip() for line in str(text).splitlines() if line.strip()]
return lines[:5]
except Exception as exc:
logger.warning("memory_maintenance: _extract_proactive_patterns LLM failed: %s", exc)
return []
async def _decay_proactive_patterns(db: AsyncSession, user_id: str, fernet: Fernet) -> None:
"""Decay confidence of existing proactive patterns; prune below threshold."""
result = await db.execute(
select(MemoryProactive).where(MemoryProactive.user_id == user_id)
)
rows = result.scalars().all()
now = datetime.now(timezone.utc)
deleted = 0
decayed = 0
for row in rows:
reference = row.created_at
if reference is None:
continue
if reference.tzinfo is None:
reference = reference.replace(tzinfo=timezone.utc)
days_elapsed = (now - reference).days
if days_elapsed < _PROACTIVE_DECAY_PERIOD_DAYS:
continue
periods = days_elapsed // _PROACTIVE_DECAY_PERIOD_DAYS
new_confidence = row.confidence * (_PROACTIVE_DECAY_FACTOR ** periods)
if new_confidence < _PROACTIVE_PRUNE_THRESHOLD:
await db.delete(row)
deleted += 1
else:
row.confidence = new_confidence
decayed += 1
try:
await db.commit()
logger.info(
"memory_maintenance: decay_proactive user=%s decayed=%d deleted=%d",
user_id, decayed, deleted,
)
except Exception as exc:
logger.warning("memory_maintenance: decay_proactive commit failed user=%s: %s", user_id, exc)
await db.rollback()
# ── Phase 7: weekly memory audit ──────────────────────────────────────────────
_AUDIT_CONTRADICTIONS_FALLBACK = (
"You are auditing a personal AI assistant's memory bank. "
"Each fact has an ID in brackets. "
"Find pairs that directly contradict each other "
"(e.g. 'prefers morning meetings' vs 'never schedules before noon'). "
"For each contradiction, pick the ID to DELETE (the older or less specific one). "
'Return ONLY a valid JSON array, no markdown fences: '
'[{{"delete": "<id>", "reason": "<one line>"}}]. '
"If no contradictions, return [].\n\n"
"Facts:\n{facts}"
)
_AUDIT_CANONICALIZE_FALLBACK = (
"You are auditing entity labels in a personal AI assistant's relational memory. "
"These are names of people, companies, projects, or topics. "
"Group labels that clearly refer to the same real-world entity "
"(e.g. 'giulia', 'Giulia', 'Giulia R.' → canonical 'Giulia'). "
"Return ONLY a valid JSON array, no markdown fences: "
'[{{"canonical": "<best label>", "variants": ["<v1>", "<v2>"]}}]. '
"Only include groups with at least one variant. Singletons: omit.\n\n"
"Labels:\n{labels}"
)
async def audit_memory(db: AsyncSession, user_id: str) -> None:
"""Weekly audit: contradiction scan on associative facts + label canonicalization on relations.
Steps:
1. Decrypt up to _AUDIT_MAX_FACTS associative rows; send list to memory-auditor LLM.
2. LLM flags rows to delete (direct contradictions); hard-delete them.
3. Collect unique subject/object labels from memory_relations; ask LLM to group duplicates.
4. Rewrite variant labels to their canonical form in-place.
Never raises — wraps in try/except.
"""
try:
await _audit_memory_inner(db, user_id)
except Exception as exc:
logger.warning("memory_maintenance: audit_memory failed user=%s: %s", user_id, exc)
async def _audit_memory_inner(db: AsyncSession, user_id: str) -> None:
result = await db.execute(select(User).where(User.id == user_id))
user = result.scalar_one_or_none()
if user is None or not user.encryption_key:
logger.warning("memory_maintenance: audit_memory no encryption_key user=%s", user_id)
return
fernet = Fernet(user.encryption_key.encode())
await _scan_associative_contradictions(db, user_id, fernet)
await _canonicalize_relation_labels(db, user_id)
async def _scan_associative_contradictions(
db: AsyncSession,
user_id: str,
fernet: Fernet,
) -> None:
"""Decrypt associative facts, ask LLM to flag contradictions, delete superseded rows."""
result = await db.execute(
select(MemoryAssociative)
.where(MemoryAssociative.user_id == user_id)
.order_by(MemoryAssociative.updated_at.desc())
.limit(_AUDIT_MAX_FACTS)
)
rows = result.scalars().all()
if len(rows) < 2:
return
id_to_text: dict[str, str] = {}
for row in rows:
try:
plaintext = fernet.decrypt(row.content_encrypted.encode()).decode()
id_to_text[row.id] = plaintext
except Exception:
pass
if len(id_to_text) < 2:
return
id_list = list(id_to_text.keys())
numbered = "\n".join(
f"{i + 1}. [{rid}] {id_to_text[rid]}" for i, rid in enumerate(id_list)
)
template, prompt_obj = get_prompt_or_fallback(
"memory_audit_contradictions", _AUDIT_CONTRADICTIONS_FALLBACK
)
system_text = compile_prompt(template, prompt_obj, facts=numbered)
from app.core.llm import get_agent_llm, model_for_agent # noqa: PLC0415
from langchain_core.messages import HumanMessage, SystemMessage # noqa: PLC0415
llm = get_agent_llm("memory-auditor", temperature=0)
lf = get_langfuse()
messages = [
SystemMessage(content=system_text),
HumanMessage(content="Audit facts for contradictions."),
]
try:
if lf:
with lf.start_as_current_observation(
as_type="generation",
name="memory-audit-contradictions",
model=model_for_agent("memory-auditor"),
prompt=prompt_obj,
input=messages,
) as gen:
response = await llm.ainvoke(messages)
gen.update(output=response.content, usage=extract_usage(response))
else:
response = await llm.ainvoke(messages)
text = response.content if hasattr(response, "content") else str(response)
deletions = json.loads(text.strip())
if not isinstance(deletions, list):
return
except Exception as exc:
logger.warning(
"memory_maintenance: _scan_associative_contradictions LLM/parse failed user=%s: %s",
user_id, exc,
)
return
deleted = 0
for item in deletions:
if not isinstance(item, dict):
continue
rid = item.get("delete")
if not rid or rid not in id_to_text:
continue
result2 = await db.execute(
select(MemoryAssociative).where(
MemoryAssociative.id == rid,
MemoryAssociative.user_id == user_id,
)
)
target = result2.scalar_one_or_none()
if target:
await db.delete(target)
deleted += 1
logger.info(
"memory_maintenance: audit deleted contradiction id=%s user=%s reason=%s",
rid, user_id, item.get("reason", ""),
)
if deleted:
try:
await db.commit()
except Exception as exc:
logger.warning(
"memory_maintenance: audit contradiction commit failed user=%s: %s", user_id, exc
)
await db.rollback()
logger.info(
"memory_maintenance: _scan_associative_contradictions user=%s deleted=%d", user_id, deleted
)
async def _canonicalize_relation_labels(db: AsyncSession, user_id: str) -> None:
"""Group near-duplicate entity labels in memory_relations and unify to canonical form."""
result = await db.execute(
select(MemoryRelation).where(MemoryRelation.user_id == user_id)
)
rows = result.scalars().all()
if not rows:
return
all_labels: set[str] = set()
for row in rows:
all_labels.add(row.subject_label)
all_labels.add(row.object_label)
labels_list = sorted(all_labels)[:_AUDIT_MAX_LABELS]
if len(labels_list) < 2:
return
labels_block = "\n".join(f"- {lbl}" for lbl in labels_list)
template, prompt_obj = get_prompt_or_fallback(
"memory_audit_canonicalize", _AUDIT_CANONICALIZE_FALLBACK
)
system_text = compile_prompt(template, prompt_obj, labels=labels_block)
from app.core.llm import get_agent_llm, model_for_agent # noqa: PLC0415
from langchain_core.messages import HumanMessage, SystemMessage # noqa: PLC0415
llm = get_agent_llm("memory-auditor", temperature=0)
lf = get_langfuse()
messages = [
SystemMessage(content=system_text),
HumanMessage(content="Canonicalize entity labels."),
]
try:
if lf:
with lf.start_as_current_observation(
as_type="generation",
name="memory-audit-canonicalize",
model=model_for_agent("memory-auditor"),
prompt=prompt_obj,
input=messages,
) as gen:
response = await llm.ainvoke(messages)
gen.update(output=response.content, usage=extract_usage(response))
else:
response = await llm.ainvoke(messages)
text = response.content if hasattr(response, "content") else str(response)
groups = json.loads(text.strip())
if not isinstance(groups, list):
return
except Exception as exc:
logger.warning(
"memory_maintenance: _canonicalize_relation_labels LLM/parse failed user=%s: %s",
user_id, exc,
)
return
# Build variant → canonical map
remap: dict[str, str] = {}
for group in groups:
if not isinstance(group, dict):
continue
canonical = group.get("canonical", "")
variants = group.get("variants") or []
if not canonical:
continue
for v in variants:
if isinstance(v, str) and v != canonical:
remap[v] = canonical
if not remap:
return
updated = 0
for row in rows:
changed = False
if row.subject_label in remap:
row.subject_label = remap[row.subject_label]
changed = True
if row.object_label in remap:
row.object_label = remap[row.object_label]
changed = True
if changed:
updated += 1
if updated:
try:
await db.commit()
logger.info(
"memory_maintenance: _canonicalize_relation_labels user=%s updated=%d",
user_id, updated,
)
except Exception as exc:
logger.warning(
"memory_maintenance: canonicalize commit failed user=%s: %s", user_id, exc
)
await db.rollback()

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@@ -0,0 +1,733 @@
"""Memory Middleware — enrich requests with memory context and store interactions.
Four-tier memory model (MemGPT-style):
core — persistent key/value user preferences, always injected
associative — semantic similarity search via pgvector (top-k)
episodic — recent session summaries (last N)
proactive — behavioral patterns above confidence threshold
All memory content is encrypted at rest using the per-user Fernet key
stored in User.encryption_key. Decryption happens in-memory only.
Usage:
memory = MemoryMiddleware(db_session)
context = await memory.enrich_context(user_id, message)
# ... run agent ...
await memory.store_episode(user_id, session_id, message, response)
"""
from __future__ import annotations
import asyncio
import logging
import uuid
from datetime import datetime, timezone
from typing import Any
from cryptography.fernet import Fernet, InvalidToken
from sqlalchemy import select
from sqlalchemy.ext.asyncio import AsyncSession
from app.models import (
ExtractionQueue,
MemoryAssociative,
MemoryCore,
MemoryEpisodic,
MemoryProactive,
MemoryRelation,
User,
)
logger = logging.getLogger(__name__)
def _now() -> datetime:
return datetime.now(timezone.utc)
# Tuning constants
_ASSOCIATIVE_TOP_K = 5
_EPISODIC_RECENT_N = 10
_PROACTIVE_CONFIDENCE_THRESHOLD = 0.6
class MemoryMiddleware:
"""Enrich orchestrator context with memory and persist interactions after."""
def __init__(self, db: AsyncSession) -> None:
self._db = db
# ── Public API ────────────────────────────────────────────────────────────
async def enrich_context(
self,
user_id: str,
message: str,
trace_id: str | None = None,
session_id: str | None = None,
) -> dict[str, Any]:
"""Build memory context dict to inject into the orchestrator before LLM call.
Returns a dict with keys:
core_memory — {key: plaintext_value, ...}
associative_memory — [plaintext_content, ...] (top-k by keyword match)
episodic_memory — [plaintext_summary, ...] (most recent N)
proactive_hints — [plaintext_pattern, ...] (above threshold)
relational_memory — ["subject --predicate--> object", ...] (top 10, Pro+)
"""
fernet = await self._get_fernet(user_id)
if fernet is None:
return {}
user_dbg = await self._get_user_debug(user_id)
user_tier: str = user_dbg.get("tier") or "free"
core = await self._load_core(user_id, fernet)
associative = await self._load_associative(user_id, message, fernet, user_tier=user_tier)
episodic = await self._load_episodic(user_id, fernet, session_id=session_id)
proactive = await self._load_proactive(user_id, fernet)
relational = await self._load_relational(user_id, user_tier=user_tier)
logger.info(
"memory: enrich_context trace=%s user=%s tier=%s core=%d associative=%d episodic=%d proactive=%d relational=%d",
trace_id or "-",
user_id,
user_tier,
len(core),
len(associative),
len(episodic),
len(proactive),
len(relational),
)
return {
"core_memory": core,
"associative_memory": associative,
"episodic_memory": episodic,
"proactive_hints": proactive,
"relational_memory": relational,
}
async def store_episode(
self,
user_id: str,
session_id: str,
message: str,
response: str,
trace_id: str | None = None,
) -> None:
"""Summarise and store a completed interaction in episodic memory.
The summary is a simple heuristic concatenation (no LLM call) to keep
latency low. After committing the episode row, dispatches the Mem0-style
extraction pipeline:
- Pro/Power/Team → asyncio.create_task (fire-and-forget, realtime).
- Free → enqueue an ExtractionQueue row for the daily cron.
"""
fernet = await self._get_fernet(user_id)
if fernet is None:
return
summary = f"User: {message[:200]}\nAssistant: {response[:200]}"
encrypted = _encrypt(fernet, summary)
episode = MemoryEpisodic(
id=str(uuid.uuid4()),
user_id=user_id,
summary_encrypted=encrypted,
session_id=session_id,
)
self._db.add(episode)
episode_id: str = episode.id
try:
await self._db.commit()
user_dbg = await self._get_user_debug(user_id)
tier = user_dbg.get("tier") or "free"
logger.info(
"memory: store_episode trace=%s user=%s tier=%s session=%s",
trace_id or "-",
user_id,
tier,
session_id,
)
except Exception as exc:
logger.error("memory: store_episode failed user=%s: %s", user_id, exc)
await self._db.rollback()
return
# ── Dispatch extraction pipeline (Phase 2) ────────────────────────────
await self._dispatch_extraction(
user_id=user_id,
episode_id=episode_id,
last_user_msg=message,
last_assistant_msg=response,
session_id=session_id,
)
async def _dispatch_extraction(
self,
user_id: str,
episode_id: str,
last_user_msg: str,
last_assistant_msg: str,
session_id: str | None,
) -> None:
"""Route extraction to realtime task or batch queue based on user tier."""
from app.billing.tier_manager import tier_manager # noqa: PLC0415
tier = await tier_manager.get_tier(user_id, self._db)
if tier_manager.check_feature(tier, "realtime_extraction"):
# Pro/Power/Team: fire-and-forget in the background.
# Must open a fresh session — request session closes after handler returns.
from app.core.memory_extraction import run_extraction # noqa: PLC0415
from app.db import async_session # noqa: PLC0415
async def _task() -> None:
try:
async with async_session() as fresh_db:
await run_extraction(
db=fresh_db,
user_id=user_id,
last_user_msg=last_user_msg,
last_assistant_msg=last_assistant_msg,
session_id=session_id,
)
except Exception as exc:
logger.warning(
"memory: extraction task failed user=%s: %s", user_id, exc
)
asyncio.create_task(_task())
logger.info("memory: realtime extraction dispatched user=%s", user_id)
else:
# Free tier: enqueue for daily batch cron.
queue_row = ExtractionQueue(
id=str(uuid.uuid4()),
user_id=user_id,
episode_id=episode_id,
)
self._db.add(queue_row)
try:
await self._db.commit()
logger.info(
"memory: extraction enqueued (batch) user=%s episode=%s",
user_id,
episode_id,
)
except Exception as exc:
logger.warning(
"memory: extraction queue insert failed user=%s: %s", user_id, exc
)
await self._db.rollback()
async def update_core(self, user_id: str, key: str, value: str, trace_id: str | None = None) -> None:
"""Upsert a core memory key/value for a user."""
fernet = await self._get_fernet(user_id)
if fernet is None:
return
encrypted = _encrypt(fernet, value)
result = await self._db.execute(
select(MemoryCore).where(
MemoryCore.user_id == user_id,
MemoryCore.key == key,
)
)
existing = result.scalar_one_or_none()
if existing is not None:
existing.value_encrypted = encrypted
else:
self._db.add(MemoryCore(
id=str(uuid.uuid4()),
user_id=user_id,
key=key,
value_encrypted=encrypted,
))
try:
await self._db.commit()
user_dbg = await self._get_user_debug(user_id)
logger.info(
"memory: update_core trace=%s user=%s tier=%s key=%s",
trace_id or "-",
user_id,
user_dbg.get("tier") or "-",
key,
)
except Exception as exc:
logger.error("memory: update_core failed user=%s key=%s: %s", user_id, key, exc)
await self._db.rollback()
async def list_core_blocks(self, user_id: str) -> list[dict[str, str]]:
"""Return core memory as editable blocks (label/value)."""
fernet = await self._get_fernet(user_id)
if fernet is None:
return []
result = await self._db.execute(
select(MemoryCore)
.where(MemoryCore.user_id == user_id)
.order_by(MemoryCore.key.asc())
)
rows = result.scalars().all()
out: list[dict[str, str]] = []
for row in rows:
plaintext = _safe_decrypt(fernet, row.value_encrypted)
if plaintext is not None:
out.append({"label": row.key, "value": plaintext})
logger.debug("memory: list_core_blocks user=%s count=%d", user_id, len(out))
return out
async def get_core_block(self, user_id: str, label: str) -> str | None:
"""Return a single core memory block value by label."""
fernet = await self._get_fernet(user_id)
if fernet is None:
return None
result = await self._db.execute(
select(MemoryCore).where(
MemoryCore.user_id == user_id,
MemoryCore.key == label,
)
)
row = result.scalar_one_or_none()
if row is None:
logger.debug("memory: get_core_block user=%s label=%s found=0", user_id, label)
return None
value = _safe_decrypt(fernet, row.value_encrypted)
logger.debug("memory: get_core_block user=%s label=%s found=%d", user_id, label, 1 if value is not None else 0)
return value
async def delete_core(self, user_id: str, label: str) -> bool:
"""Delete a core memory block by label. Returns True if deleted."""
result = await self._db.execute(
select(MemoryCore).where(
MemoryCore.user_id == user_id,
MemoryCore.key == label,
)
)
row = result.scalar_one_or_none()
if row is None:
logger.debug("memory: delete_core user=%s label=%s found=0", user_id, label)
return False
await self._db.delete(row)
try:
await self._db.commit()
logger.info("memory: delete_core user=%s label=%s", user_id, label)
return True
except Exception as exc:
logger.error("memory: delete_core failed user=%s label=%s: %s", user_id, label, exc)
await self._db.rollback()
return False
async def append_core(self, user_id: str, label: str, content: str) -> None:
"""Append content to a core block, creating it if missing."""
current = await self.get_core_block(user_id, label)
if current is None:
await self.update_core(user_id, label, content)
logger.info("memory: append_core user=%s label=%s created=1", user_id, label)
return
await self.update_core(user_id, label, f"{current}\n{content}")
logger.info("memory: append_core user=%s label=%s created=0", user_id, label)
async def replace_core(self, user_id: str, label: str, old: str, new: str) -> bool:
"""Replace one exact string inside a core block. Returns False if not found."""
current = await self.get_core_block(user_id, label)
if current is None or old not in current:
logger.debug("memory: replace_core user=%s label=%s changed=0", user_id, label)
return False
await self.update_core(user_id, label, current.replace(old, new, 1))
logger.info("memory: replace_core user=%s label=%s changed=1", user_id, label)
return True
async def store_associative(
self,
user_id: str,
content: str,
entity_type: str | None = None,
entity_id: str | None = None,
) -> None:
"""Store associative memory; embed if user tier has real_embeddings."""
from app.billing.tier_manager import tier_manager # noqa: PLC0415
from app.core.embeddings import embed_text # noqa: PLC0415
fernet = await self._get_fernet(user_id)
if fernet is None:
return
encrypted = _encrypt(fernet, content)
user_dbg = await self._get_user_debug(user_id)
user_tier = user_dbg.get("tier") or "free"
embedding: list[float] | None = None
if tier_manager.check_feature(user_tier, "real_embeddings"):
embedding = await embed_text(content)
row = MemoryAssociative(
id=str(uuid.uuid4()),
user_id=user_id,
content_encrypted=encrypted,
embedding=embedding,
entity_type=entity_type,
entity_id=entity_id,
)
self._db.add(row)
try:
await self._db.commit()
logger.info(
"memory: store_associative user=%s embedded=%s",
user_id,
embedding is not None,
)
except Exception as exc:
logger.error("memory: store_associative failed user=%s: %s", user_id, exc)
await self._db.rollback()
async def upsert_relation(
self,
user_id: str,
subject: str,
subject_type: str,
predicate: str,
object_: str,
object_type: str,
*,
confidence: float = 0.7,
source_episode_id: str | None = None,
notes: str | None = None,
) -> None:
"""Insert or update a relation row. Matches on (user_id, subject_label, predicate, object_label).
subject_label / object_label are plaintext entity identifiers — not encrypted.
notes is optional; encrypted with user Fernet if provided.
"""
from app.billing.tier_manager import tier_manager # noqa: PLC0415
user_dbg = await self._get_user_debug(user_id)
user_tier = user_dbg.get("tier") or "free"
if not tier_manager.check_feature(user_tier, "relational_memory"):
logger.debug("memory: upsert_relation skipped (tier=%s no relational_memory)", user_tier)
return
notes_encrypted: bytes | None = None
if notes:
fernet = await self._get_fernet(user_id)
if fernet:
notes_encrypted = fernet.encrypt(notes.encode())
result = await self._db.execute(
select(MemoryRelation).where(
MemoryRelation.user_id == user_id,
MemoryRelation.subject_label == subject,
MemoryRelation.predicate == predicate,
MemoryRelation.object_label == object_,
)
)
existing = result.scalar_one_or_none()
if existing is not None:
existing.subject_type = subject_type
existing.object_type = object_type
existing.confidence = confidence
existing.last_confirmed_at = _now()
if notes_encrypted is not None:
existing.notes_encrypted = notes_encrypted
else:
self._db.add(MemoryRelation(
id=str(uuid.uuid4()),
user_id=user_id,
subject_label=subject,
subject_type=subject_type,
predicate=predicate,
object_label=object_,
object_type=object_type,
confidence=confidence,
source_episode_id=source_episode_id,
notes_encrypted=notes_encrypted,
))
try:
await self._db.commit()
logger.info(
"memory: upsert_relation user=%s subject=%s predicate=%s object=%s",
user_id, subject, predicate, object_,
)
except Exception as exc:
logger.error("memory: upsert_relation failed user=%s: %s", user_id, exc)
await self._db.rollback()
async def query_relations(
self,
user_id: str,
subject: str | None = None,
predicate: str | None = None,
object_: str | None = None,
limit: int = 20,
) -> list[MemoryRelation]:
"""Query relation rows for a user with optional filters."""
q = select(MemoryRelation).where(MemoryRelation.user_id == user_id)
if subject is not None:
q = q.where(MemoryRelation.subject_label == subject)
if predicate is not None:
q = q.where(MemoryRelation.predicate == predicate)
if object_ is not None:
q = q.where(MemoryRelation.object_label == object_)
q = q.order_by(MemoryRelation.confidence.desc()).limit(limit)
result = await self._db.execute(q)
return list(result.scalars().all())
async def insert_archival(self, user_id: str, content: str, source: str = "manual") -> None:
"""Insert a long-term archival memory entry."""
fernet = await self._get_fernet(user_id)
if fernet is None:
return
encrypted = _encrypt(fernet, content)
row = MemoryAssociative(
id=str(uuid.uuid4()),
user_id=user_id,
content_encrypted=encrypted,
embedding=None,
entity_type=source,
entity_id=None,
)
self._db.add(row)
try:
await self._db.commit()
logger.info("memory: insert_archival user=%s source=%s", user_id, source)
except Exception as exc:
logger.error("memory: insert_archival failed user=%s: %s", user_id, exc)
await self._db.rollback()
async def search_archival(self, user_id: str, query: str, top_k: int = 5) -> list[str]:
"""Search archival memory (keyword fallback; semantic ranking can replace this)."""
fernet = await self._get_fernet(user_id)
if fernet is None:
return []
result = await self._db.execute(
select(MemoryAssociative)
.where(MemoryAssociative.user_id == user_id)
.order_by(MemoryAssociative.updated_at.desc())
.limit(100)
)
rows = result.scalars().all()
needle = query.strip().lower()
out: list[str] = []
for row in rows:
plaintext = _safe_decrypt(fernet, row.content_encrypted)
if plaintext is None:
continue
if not needle or needle in plaintext.lower():
out.append(plaintext)
if len(out) >= max(top_k, 1):
break
logger.info("memory: search_archival user=%s query=%s hits=%d", user_id, query[:80], len(out))
return out
async def search_recall(self, user_id: str, query: str, top_k: int = 5) -> list[str]:
"""Search recall memory (episodic summaries) by keyword."""
fernet = await self._get_fernet(user_id)
if fernet is None:
return []
result = await self._db.execute(
select(MemoryEpisodic)
.where(MemoryEpisodic.user_id == user_id)
.order_by(MemoryEpisodic.created_at.desc())
.limit(100)
)
rows = result.scalars().all()
needle = query.strip().lower()
out: list[str] = []
for row in rows:
plaintext = _safe_decrypt(fernet, row.summary_encrypted)
if plaintext is None:
continue
if not needle or needle in plaintext.lower():
out.append(plaintext)
if len(out) >= max(top_k, 1):
break
logger.info("memory: search_recall user=%s query=%s hits=%d", user_id, query[:80], len(out))
return out
# ── Private helpers ───────────────────────────────────────────────────────
async def _get_fernet(self, user_id: str) -> Fernet | None:
"""Load the user's Fernet key from DB. Returns None if missing."""
result = await self._db.execute(select(User).where(User.id == user_id))
user = result.scalar_one_or_none()
if user is None or not user.encryption_key:
logger.warning("memory: no encryption_key for user=%s", user_id)
return None
return Fernet(user.encryption_key.encode())
async def _get_user_debug(self, user_id: str) -> dict[str, str | None]:
"""Load lightweight user debug fields for trace logs."""
from app.config.settings import settings # noqa: PLC0415
from app.models import Subscription # noqa: PLC0415
result = await self._db.execute(select(User).where(User.id == user_id))
user = result.scalar_one_or_none()
if user is None:
return {"tier": None}
sub_result = await self._db.execute(
select(Subscription.tier).where(Subscription.user_id == user_id)
)
sub_tier: str | None = sub_result.scalar_one_or_none()
if sub_tier:
tier = sub_tier
elif settings.ENV == "dev":
tier = "power"
else:
tier = user.tier or "free"
return {"tier": tier}
async def _load_core(self, user_id: str, fernet: Fernet) -> dict[str, str]:
result = await self._db.execute(
select(MemoryCore).where(MemoryCore.user_id == user_id)
)
rows = result.scalars().all()
out: dict[str, str] = {}
for row in rows:
plaintext = _safe_decrypt(fernet, row.value_encrypted)
if plaintext is not None:
out[row.key] = plaintext
return out
async def _load_associative(
self, user_id: str, message: str, fernet: Fernet, *, user_tier: str = "free"
) -> list[str]:
"""Load top-k associative memories.
Pro+: pgvector cosine similarity on the message embedding (real_embeddings feature).
Free / embedding failure: keyword-ordered fallback (most recent rows).
"""
from app.billing.tier_manager import tier_manager # noqa: PLC0415
from app.core.embeddings import embed_text # noqa: PLC0415
if tier_manager.check_feature(user_tier, "real_embeddings"):
vec = await embed_text(message)
if vec is not None:
try:
result = await self._db.execute(
select(MemoryAssociative)
.where(
MemoryAssociative.user_id == user_id,
MemoryAssociative.embedding.isnot(None),
)
.order_by(MemoryAssociative.embedding.cosine_distance(vec))
.limit(_ASSOCIATIVE_TOP_K)
)
rows = result.scalars().all()
out: list[str] = []
for row in rows:
plaintext = _safe_decrypt(fernet, row.content_encrypted)
if plaintext is not None:
out.append(plaintext)
logger.info(
"memory: _load_associative user=%s mode=vector hits=%d",
user_id,
len(out),
)
return out
except Exception as exc:
logger.warning(
"memory: vector search failed user=%s, falling back to keyword: %s",
user_id,
exc,
)
# Keyword fallback: most recent rows
result = await self._db.execute(
select(MemoryAssociative)
.where(MemoryAssociative.user_id == user_id)
.order_by(MemoryAssociative.updated_at.desc())
.limit(_ASSOCIATIVE_TOP_K)
)
rows = result.scalars().all()
out = []
for row in rows:
plaintext = _safe_decrypt(fernet, row.content_encrypted)
if plaintext is not None:
out.append(plaintext)
return out
async def _load_episodic(
self,
user_id: str,
fernet: Fernet,
session_id: str | None = None,
) -> list[str]:
query = select(MemoryEpisodic).where(MemoryEpisodic.user_id == user_id)
if session_id:
query = query.where(MemoryEpisodic.session_id == session_id)
result = await self._db.execute(
query
.order_by(MemoryEpisodic.created_at.desc())
.limit(_EPISODIC_RECENT_N)
)
rows = result.scalars().all()
out: list[str] = []
for row in rows:
plaintext = _safe_decrypt(fernet, row.summary_encrypted)
if plaintext is not None:
out.append(plaintext)
return out
async def _load_relational(self, user_id: str, *, user_tier: str = "free") -> list[str]:
"""Return top-10 relation strings for Pro+ users; empty list for Free."""
from app.billing.tier_manager import tier_manager # noqa: PLC0415
if not tier_manager.check_feature(user_tier, "relational_memory"):
return []
result = await self._db.execute(
select(MemoryRelation)
.where(MemoryRelation.user_id == user_id)
.order_by(MemoryRelation.confidence.desc())
.limit(10)
)
rows = result.scalars().all()
out = [
f"{r.subject_label} --{r.predicate}--> {r.object_label}"
for r in rows
]
return out
async def _load_proactive(self, user_id: str, fernet: Fernet) -> list[str]:
result = await self._db.execute(
select(MemoryProactive)
.where(
MemoryProactive.user_id == user_id,
MemoryProactive.confidence >= _PROACTIVE_CONFIDENCE_THRESHOLD,
)
.order_by(MemoryProactive.confidence.desc())
)
rows = result.scalars().all()
out: list[str] = []
for row in rows:
plaintext = _safe_decrypt(fernet, row.pattern_encrypted)
if plaintext is not None:
out.append(plaintext)
return out
# ── Encryption helpers ────────────────────────────────────────────────────────
def _encrypt(fernet: Fernet, plaintext: str) -> str:
return fernet.encrypt(plaintext.encode()).decode()
def _safe_decrypt(fernet: Fernet, ciphertext: str) -> str | None:
"""Decrypt and return plaintext, or None on error (corrupted/wrong key)."""
try:
return fernet.decrypt(ciphertext.encode()).decode()
except (InvalidToken, Exception) as exc:
logger.warning("memory: decrypt failed: %s", exc)
return None

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"""Note summarizer — generates a compact AI summary for a note.
Called fire-and-forget from create_note / update_note tools so the
``notes.ai_summary`` column stays current without blocking the agent loop.
"""
from __future__ import annotations
import logging
from langchain_core.messages import HumanMessage, SystemMessage
from app.core.langfuse_client import get_prompt_or_fallback
from app.core.llm import get_agent_llm
logger = logging.getLogger(__name__)
_FALLBACK_PROMPT = """\
Summarize this note in <=250 characters. Be terse and dense.
Keep proper nouns, dates, decisions, and action items.
Do not start with "This note".
Respond with the summary text only — no intro, no labels.
Title: {title}
Content: {content}"""
_MAX_CONTENT_CHARS = 4000
async def generate_note_summary(title: str, content: str) -> str:
"""Return a <=250-char summary of *title* + *content*.
Uses the Langfuse ``note_summary`` prompt (hot-swappable) with a local
fallback. Truncates *content* to 4000 chars before sending to avoid
token waste on large notes.
"""
template, _ = get_prompt_or_fallback("note_summary", _FALLBACK_PROMPT)
trimmed = content[:_MAX_CONTENT_CHARS]
system_prompt = template.format(title=title, content=trimmed)
try:
llm = get_agent_llm("note-summarizer")
response = await llm.ainvoke([
SystemMessage(content=system_prompt),
HumanMessage(content="Generate the summary."),
])
text = response.content if isinstance(response.content, str) else ""
return text.strip()[:250]
except Exception as exc:
logger.warning("note_summarizer: failed to generate summary: %s", exc)
return ""

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"""Output formatter for deep-agent stream events."""
from __future__ import annotations
import re
from collections.abc import AsyncGenerator
from typing import Any
from app.schemas import WsStreamEnd, WsStreamStart, WsStreamText
# Matches <canvas kind="...">...</canvas> blocks (single-line or multiline).
_CANVAS_BLOCK_RE = re.compile(
r'<canvas\s+kind=["\']([^"\']+)["\']>(.*?)</canvas>',
re.DOTALL | re.IGNORECASE,
)
def extract_canvas_block(text: str) -> tuple[str, str | None, str | None]:
"""Strip the first <canvas kind="...">...</canvas> block from *text*.
Returns ``(visible_text, canvas_content, canvas_kind)``.
``canvas_content`` and ``canvas_kind`` are ``None`` when no block is found.
"""
match = _CANVAS_BLOCK_RE.search(text)
if not match:
return text, None, None
canvas_kind = match.group(1).strip()
canvas_content = match.group(2).strip()
visible = text[: match.start()] + text[match.end() :]
visible = visible.strip()
return visible, canvas_content, canvas_kind
WsFrame = WsStreamStart | WsStreamText | WsStreamEnd
class StreamFormatter:
"""Convert `(event_type, data)` stream events into websocket frame models."""
def __init__(self, request_id: str) -> None:
self.request_id = request_id
async def format(
self,
event_stream: AsyncGenerator[tuple[str, Any], None],
) -> AsyncGenerator[WsFrame, None]:
started = False
async for event_type, data in event_stream:
if event_type != "token":
continue
if not started:
yield WsStreamStart(request_id=self.request_id)
started = True
text = str(data or "")
if text:
yield WsStreamText(request_id=self.request_id, chunk=text)
if not started:
yield WsStreamStart(request_id=self.request_id)
yield WsStreamEnd(request_id=self.request_id)

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"""Preprocessor registry: detect content type and dispatch to handlers.
Public API
----------
detect_content_type(filename, raw_content) -> str
Heuristic detection based on file extension and content patterns.
preprocess(content_type, raw_content) -> PreprocessResult
Dispatch to the appropriate handler.
"""
from __future__ import annotations
import re
from app.core.preprocessors.base import PreprocessResult
# ── Heuristics ────────────────────────────────────────────────────────
# Patterns that strongly suggest an email HTML file
_EMAIL_SIGNALS = re.compile(
r"(Subject:|From:|To:|Date:|Sent:|MIME-Version:|Content-Type:\s*text/html)",
re.IGNORECASE,
)
# Patterns that suggest a generic HTML page (not an email)
_GENERIC_HTML_SIGNALS = re.compile(
r"<(nav|main|header|footer|article|section)\b",
re.IGNORECASE,
)
def detect_content_type(filename: str, raw_content: str) -> str:
"""Return a content-type string for the given file.
Supported types: ``"email_html"``, ``"generic_html"``,
``"plain_text"``, ``"unknown"``.
"""
ext = filename.rsplit(".", 1)[-1].lower() if "." in filename else ""
if ext == "txt":
return "plain_text"
if ext in ("html", "htm", "eml", "mhtml", "mht"):
# Prefer email detection over generic HTML
if _EMAIL_SIGNALS.search(raw_content[:4096]):
return "email_html"
if _GENERIC_HTML_SIGNALS.search(raw_content[:4096]) or "<html" in raw_content[:200].lower():
return "generic_html"
# .html without clear signals — check for any email header
if re.search(r"^(From|To|Subject|Date):", raw_content[:2048], re.MULTILINE | re.IGNORECASE):
return "email_html"
return "generic_html"
# Plain text files with email headers
if ext in ("", "txt") or not ext:
if _EMAIL_SIGNALS.search(raw_content[:4096]):
return "email_html"
# Detect binary content
try:
raw_content.encode("utf-8")
except (UnicodeEncodeError, AttributeError):
return "unknown"
# Non-text bytes heuristic: high ratio of non-printable chars
sample = raw_content[:512]
non_printable = sum(1 for c in sample if ord(c) < 32 and c not in "\r\n\t")
if len(sample) > 0 and non_printable / len(sample) > 0.1:
return "unknown"
return "unknown"
# ── Generic fallback handler ──────────────────────────────────────────
def _preprocess_generic(raw_content: str, content_type: str) -> PreprocessResult:
"""Strip HTML tags if present, return text as-is."""
try:
from bs4 import BeautifulSoup
text = BeautifulSoup(raw_content, "html.parser").get_text(separator="\n")
except ImportError:
# No BeautifulSoup — strip tags with a simple regex
text = re.sub(r"<[^>]+>", "", raw_content)
text = re.sub(r"\n{3,}", "\n\n", text).strip()
return PreprocessResult(content_type=content_type, clean_text=text, metadata={})
# ── Dispatch ──────────────────────────────────────────────────────────
def preprocess(content_type: str, raw_content: str) -> PreprocessResult:
"""Dispatch *raw_content* to the handler registered for *content_type*.
Falls back to the generic handler for unknown types.
"""
if content_type == "email_html":
from app.core.preprocessors.email_html import preprocess_email_html
return preprocess_email_html(raw_content)
return _preprocess_generic(raw_content, content_type)
__all__ = ["detect_content_type", "preprocess", "PreprocessResult"]

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"""Base types for the preprocessor system."""
from __future__ import annotations
from dataclasses import dataclass, field
@dataclass
class PreprocessResult:
"""Output of a preprocessor handler.
Attributes
----------
content_type:
The detected content type (e.g. ``"email_html"``, ``"plain_text"``).
clean_text:
Human-readable text stripped of markup/binary noise.
metadata:
Dict of extracted metadata (keys vary by handler).
Common keys: ``subject``, ``from``, ``to``, ``date``, ``filename``.
"""
content_type: str
clean_text: str
metadata: dict = field(default_factory=dict)

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"""Preprocessor for email HTML files.
Handles:
- HTML stripping via BeautifulSoup
- Metadata extraction (Subject, From, To, Date)
- Thread splitting — isolates the latest reply
"""
from __future__ import annotations
import re
from typing import TYPE_CHECKING
from app.core.preprocessors.base import PreprocessResult
if TYPE_CHECKING:
pass
# ── Thread split markers ──────────────────────────────────────────────
# Matches patterns like:
# "On Mon, Apr 7, 2026 at 10:00 AM, Alice <alice@co.com> wrote:"
# "-----Original Message-----"
# "> " (plain-text quote prefix)
_THREAD_PATTERNS = [
re.compile(r"^On\s+.+wrote\s*:", re.IGNORECASE | re.MULTILINE),
re.compile(r"^-{3,}\s*(original message|forwarded message)\s*-{3,}", re.IGNORECASE | re.MULTILINE),
re.compile(r"^>{1,}\s+\S", re.MULTILINE),
re.compile(r"^From:\s+.+\nSent:\s+", re.IGNORECASE | re.MULTILINE),
]
# ── Metadata patterns (applied on raw HTML / plain fallback) ──────────
_META_PATTERNS: dict[str, list[re.Pattern]] = {
"subject": [
re.compile(r"<title>(.+?)</title>", re.IGNORECASE | re.DOTALL),
re.compile(r"Subject:\s*(.+)", re.IGNORECASE),
],
"from": [
re.compile(r'<meta[^>]+name=["\']?from["\']?[^>]+content=["\']([^"\']+)["\']', re.IGNORECASE),
re.compile(r"From:\s*(.+)", re.IGNORECASE),
],
"to": [
re.compile(r'<meta[^>]+name=["\']?to["\']?[^>]+content=["\']([^"\']+)["\']', re.IGNORECASE),
re.compile(r"To:\s*(.+)", re.IGNORECASE),
],
"date": [
re.compile(r'<meta[^>]+name=["\']?date["\']?[^>]+content=["\']([^"\']+)["\']', re.IGNORECASE),
re.compile(r"Date:\s*(.+)", re.IGNORECASE),
re.compile(r"Sent:\s*(.+)", re.IGNORECASE),
],
}
def _extract_metadata(raw_html: str, text: str) -> dict:
"""Extract Subject/From/To/Date from raw HTML or plain text."""
metadata: dict[str, str] = {}
for field, patterns in _META_PATTERNS.items():
for pat in patterns:
m = pat.search(raw_html) or pat.search(text)
if m:
metadata[field] = m.group(1).strip()
break
return metadata
def _split_thread(text: str) -> str:
"""Return only the latest message in a threaded email."""
earliest_pos: int | None = None
for pat in _THREAD_PATTERNS:
m = pat.search(text)
if m and (earliest_pos is None or m.start() < earliest_pos):
earliest_pos = m.start()
if earliest_pos is not None and earliest_pos > 0:
return text[:earliest_pos].strip()
return text.strip()
def preprocess_email_html(raw_content: str) -> PreprocessResult:
"""Strip HTML, extract metadata, split thread from an email HTML file."""
try:
from bs4 import BeautifulSoup # lazy import — optional dep
except ImportError as exc:
raise ImportError(
"beautifulsoup4 is required for email_html preprocessing. "
"Install it with: pip install beautifulsoup4"
) from exc
# Parse with lxml if available, fall back to html.parser
try:
soup = BeautifulSoup(raw_content, "lxml")
except Exception:
soup = BeautifulSoup(raw_content, "html.parser")
# Remove noise tags
for tag in soup(["style", "script", "head", "noscript"]):
tag.decompose()
clean_text = soup.get_text(separator="\n")
# Collapse excessive blank lines
clean_text = re.sub(r"\n{3,}", "\n\n", clean_text).strip()
metadata = _extract_metadata(raw_content, clean_text)
latest_message = _split_thread(clean_text)
return PreprocessResult(
content_type="email_html",
clean_text=latest_message,
metadata=metadata,
)

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"""Minimal agent base types retained for compatibility with batch runners."""
from __future__ import annotations
from abc import ABC, abstractmethod
from typing import Any
class BaseAgent(ABC):
"""Common base for non-chat agents still using the old base contract."""
def __init__(
self,
user_id: str = "",
shared_memory: dict[str, Any] | None = None,
vector_store_context: list[str] | None = None,
) -> None:
self.user_id = user_id
self.shared_memory: dict[str, Any] = shared_memory or {}
self.vector_store_context: list[str] = vector_store_context or []
@abstractmethod
def get_name(self) -> str: ...
@abstractmethod
def get_description(self) -> str: ...
@property
def skills(self) -> list[str]:
return []

1051
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"""In-process TTL buffer for per-session LangChain message history.
Stores the full message list (including AIMessage with tool_calls and ToolMessage)
keyed by (user_id, session_id), so agents can reconstruct tool-call context across
conversation turns without it being lossy through the wire.
Single-process only. For multi-worker deployments, replace the _SessionBuffer
implementation with one backed by Redis (serialize LangChain messages to dicts via
message_to_dict / messages_from_dict from langchain_core.messages).
"""
from __future__ import annotations
import time
from threading import Lock
from langchain_core.messages import BaseMessage
SESSION_TTL_SECONDS = 1800 # 30-minute idle expiry
MAX_MESSAGES_PER_SESSION = 80 # cap to avoid unbounded memory growth
class _SessionBuffer:
def __init__(self) -> None:
self._store: dict[tuple[str, str], tuple[float, list[BaseMessage]]] = {}
self._lock = Lock()
def _evict_stale(self) -> None:
now = time.monotonic()
stale = [k for k, (ts, _) in self._store.items() if now - ts > SESSION_TTL_SECONDS]
for k in stale:
del self._store[k]
def get(self, user_id: str, session_id: str) -> list[BaseMessage] | None:
key = (user_id, session_id)
with self._lock:
entry = self._store.get(key)
if entry is None:
return None
ts, msgs = entry
if time.monotonic() - ts > SESSION_TTL_SECONDS:
del self._store[key]
return None
self._store[key] = (time.monotonic(), msgs)
return list(msgs)
def set(self, user_id: str, session_id: str, messages: list[BaseMessage]) -> None:
key = (user_id, session_id)
capped = messages[-MAX_MESSAGES_PER_SESSION:]
with self._lock:
self._evict_stale()
self._store[key] = (time.monotonic(), capped)
def clear(self, user_id: str, session_id: str) -> None:
with self._lock:
self._store.pop((user_id, session_id), None)
def append_system_message(self, user_id: str, session_id: str, text: str) -> None:
"""Append a synthetic system message to the buffer for the given session.
Creates the session slot if it does not yet exist. Used by the
contextual_scope_update handler to inject navigation events without
making an LLM call.
"""
from langchain_core.messages import SystemMessage # noqa: PLC0415
key = (user_id, session_id)
with self._lock:
entry = self._store.get(key)
if entry is None:
msgs: list[BaseMessage] = [SystemMessage(content=text)]
else:
_, existing = entry
msgs = list(existing) + [SystemMessage(content=text)]
capped = msgs[-MAX_MESSAGES_PER_SESSION:]
self._store[key] = (time.monotonic(), capped)
class ContextualBufferProxy:
"""Thin wrapper around _SessionBuffer that closes over user_id + session_id.
Returned by get_session_buffer() so callers can call
``proxy.append_system_message(text)`` without threading user_id/session_id
through every call site.
"""
def __init__(self, buf: "_SessionBuffer", user_id: str, session_id: str) -> None:
self._buf = buf
self._user_id = user_id
self._session_id = session_id
def append_system_message(self, text: str) -> None:
self._buf.append_system_message(self._user_id, self._session_id, text)
# Module-level singleton — same pattern as _pending_states in api/app/api/routes/auth.py
session_buffer = _SessionBuffer()

115
api/app/core/ws_context.py Normal file
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"""WebSocket client executor context.
Holds a per-request async callback that tools call to execute CRUD
operations on the Electron client's local SQLite / LanceDB databases.
The callback sends a `tool_call` WS frame and awaits the `tool_result`.
"""
from __future__ import annotations
import re
from contextvars import ContextVar
from typing import Any, Callable, Coroutine
from uuid import uuid4
_SNAKE_TO_CAMEL_RE = re.compile(r"_([a-z])")
def _key_to_camel(key: str) -> str:
return _SNAKE_TO_CAMEL_RE.sub(lambda m: m.group(1).upper(), key)
def _keys_to_camel(obj: Any) -> Any:
"""Recursively convert dict keys from snake_case to camelCase.
Mirrors the JS-side ``toCamelCase`` applied to incoming WS frames in
``adiuvAI/src/main/api/backend-client.ts``. The Electron executor wraps
tool_result payloads in ``toSnakeCase`` before sending; this restores the
camelCase schema property names that the tool code expects to read.
"""
if isinstance(obj, dict):
return {_key_to_camel(k): _keys_to_camel(v) for k, v in obj.items()}
if isinstance(obj, list):
return [_keys_to_camel(v) for v in obj]
return obj
# Holds the execute callback for the current WS session.
# Set by the chat WS handler before the orchestrator runs; cleared after.
_client_executor: ContextVar[Callable[[dict], Coroutine[Any, Any, dict]]] = ContextVar(
"_client_executor"
)
# Optional collector that captures raw execute_on_client results.
# Set by _tool_loop / _tool_loop_stream to populate ChatAgent.tool_results.
_tool_result_collector: ContextVar[list[dict] | None] = ContextVar(
"_tool_result_collector", default=None
)
def set_tool_result_collector(lst: list[dict]) -> None:
"""Register *lst* as the collector for this async context."""
_tool_result_collector.set(lst)
def clear_tool_result_collector() -> None:
"""Clear the collector (best-effort)."""
_tool_result_collector.set(None)
def set_client_executor(fn: Callable[[dict], Coroutine[Any, Any, dict]]) -> None:
"""Bind *fn* as the executor for the current async context (task/coroutine)."""
_client_executor.set(fn)
def clear_client_executor() -> None:
"""Remove the executor binding (best-effort; ContextVar resets on task exit)."""
try:
_client_executor.set(None) # type: ignore[arg-type]
except Exception:
pass
async def execute_on_client(
action: str,
table: str | None = None,
data: dict[str, Any] | None = None,
filters: dict[str, Any] | None = None,
vector: list[float] | None = None,
limit: int | None = None,
) -> dict[str, Any]:
"""Send a CRUD/vector operation to the Electron client and return the result.
Builds a ``tool_call`` payload, invokes the per-session WS callback,
and returns the ``tool_result`` dict from Electron.
Raises ``RuntimeError`` if no executor is set (i.e. called outside a WS session).
"""
callback = _client_executor.get(None)
if callback is None:
raise RuntimeError(
"execute_on_client() called outside a WebSocket session — "
"no client executor is set."
)
payload: dict[str, Any] = {"id": str(uuid4()), "action": action}
if table is not None:
payload["table"] = table
if data is not None:
payload["data"] = data
if filters is not None:
payload["filters"] = {k: v for k, v in filters.items() if v is not None}
if vector is not None:
payload["vector"] = vector
if limit is not None:
payload["limit"] = limit
result = await callback(payload)
result = _keys_to_camel(result)
collector = _tool_result_collector.get(None)
if collector is not None:
collector.append({
"action": action,
"table": table,
"data": result,
})
return result

40
api/app/db.py Normal file
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"""Database engine, session factory, and base model.
All app code uses the async SQLAlchemy API. Alembic migrations use the
synchronous psycopg2 URL for the CLI (see alembic/env.py).
Usage in routes:
from app.db import get_session
from sqlalchemy.ext.asyncio import AsyncSession
async def my_route(db: AsyncSession = Depends(get_session)):
result = await db.execute(select(User).where(User.email == email))
user = result.scalar_one_or_none()
"""
from __future__ import annotations
from collections.abc import AsyncGenerator
from sqlalchemy.ext.asyncio import AsyncSession, async_sessionmaker, create_async_engine
from sqlalchemy.orm import DeclarativeBase
from app.config.settings import settings
engine = create_async_engine(
settings.DATABASE_URL,
pool_pre_ping=True,
echo=False,
)
async_session = async_sessionmaker(engine, expire_on_commit=False)
class Base(DeclarativeBase):
"""Shared declarative base for all ORM models."""
async def get_session() -> AsyncGenerator[AsyncSession, None]:
"""FastAPI dependency that yields an async DB session per request."""
async with async_session() as session:
yield session

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"""Cloud provider integration utilities.
Provides:
* Shared message dataclasses (``EmailMessage``, ``ChatMessage``) used by
both the Gmail and MS Graph clients and consumed by ``agent_runner``.
* ``get_provider()`` — factory that returns the correct client given a
provider name and decrypted OAuth credentials dict.
* ``encrypt_token()`` / ``decrypt_token()`` — Fernet-based at-rest
encryption for OAuth tokens stored in ``cloud_agent_configs``.
Encryption rationale
--------------------
Unlike user content (which is E2E-encrypted client-side and **never**
decrypted server-side), OAuth tokens *must* be decrypted server-side
because the backend makes provider API calls on behalf of the user.
The Fernet key lives solely in ``OAUTH_ENCRYPTION_KEY`` env var — it
is never returned to clients.
"""
from __future__ import annotations
import json
import logging
from dataclasses import dataclass, field
from datetime import datetime
from typing import TYPE_CHECKING
from cryptography.fernet import Fernet, InvalidToken
from app.config.settings import settings
if TYPE_CHECKING:
from app.integrations.gmail import GmailClient
from app.integrations.ms_graph import MSGraphClient
logger = logging.getLogger(__name__)
# ── Shared message types ──────────────────────────────────────────────────
@dataclass
class EmailMessage:
"""A single email message fetched from Gmail or Outlook."""
id: str
subject: str
sender: str
body_text: str
date: datetime
labels: list[str] = field(default_factory=list)
@property
def as_text(self) -> str:
"""Return a human-readable text representation for LLM extraction."""
date_str = self.date.strftime("%Y-%m-%d %H:%M")
labels_str = f" [{', '.join(self.labels)}]" if self.labels else ""
return (
f"From: {self.sender}\n"
f"Date: {date_str}{labels_str}\n"
f"Subject: {self.subject}\n\n"
f"{self.body_text}"
)
@dataclass
class ChatMessage:
"""A single Teams chat or channel message fetched from MS Graph."""
id: str
content: str
sender: str
channel: str | None
date: datetime
@property
def as_text(self) -> str:
"""Return a human-readable text representation for LLM extraction."""
date_str = self.date.strftime("%Y-%m-%d %H:%M")
channel_str = f" [channel: {self.channel}]" if self.channel else ""
return (
f"From: {self.sender}\n"
f"Date: {date_str}{channel_str}\n\n"
f"{self.content}"
)
# ── Fernet helpers ────────────────────────────────────────────────────────
def _get_fernet() -> Fernet:
"""Return a ``Fernet`` instance using ``settings.OAUTH_ENCRYPTION_KEY``.
Raises ``RuntimeError`` if ``OAUTH_ENCRYPTION_KEY`` is not set — callers
must ensure this is configured before persisting OAuth tokens.
"""
key = settings.OAUTH_ENCRYPTION_KEY
if not key:
raise RuntimeError(
"OAUTH_ENCRYPTION_KEY is not set. "
"Generate one with: python -c \"from cryptography.fernet import Fernet; print(Fernet.generate_key().decode())\""
)
return Fernet(key.encode() if isinstance(key, str) else key)
def encrypt_token(token_info: dict) -> str:
"""Fernet-encrypt an OAuth credential dict and return a base64 string.
Stores the full ``{access_token, refresh_token, token_uri, client_id,
client_secret, scopes, expiry}`` dict (or equivalent MSAL shape).
Raises:
RuntimeError: OAUTH_ENCRYPTION_KEY is not configured.
ValueError: ``token_info`` is not a non-empty dict.
"""
if not isinstance(token_info, dict) or not token_info:
raise ValueError("token_info must be a non-empty dict")
plaintext = json.dumps(token_info).encode("utf-8")
return _get_fernet().encrypt(plaintext).decode("utf-8")
def decrypt_token(encrypted: str) -> dict:
"""Decrypt a Fernet-encrypted token string and return the credential dict.
Raises:
RuntimeError: OAUTH_ENCRYPTION_KEY is not configured.
ValueError: The encrypted string is invalid or was encrypted with a
different key.
"""
try:
plaintext = _get_fernet().decrypt(encrypted.encode("utf-8"))
return json.loads(plaintext)
except (InvalidToken, json.JSONDecodeError) as exc:
raise ValueError(f"Failed to decrypt OAuth token: {exc}") from exc
# ── Provider factory ──────────────────────────────────────────────────────
def get_provider(
provider: str,
credentials_info: dict,
) -> "GmailClient | MSGraphClient":
"""Return the correct provider client for *provider*.
Parameters
----------
provider:
One of ``"gmail"``, ``"outlook"``, ``"teams"``.
credentials_info:
Decrypted OAuth credential dict (Google or Microsoft shape).
Raises:
ValueError: Unknown provider name.
"""
if provider == "gmail":
from app.integrations.gmail import GmailClient
return GmailClient(credentials_info)
if provider in {"outlook", "teams"}:
from app.integrations.ms_graph import MSGraphClient
return MSGraphClient(credentials_info)
raise ValueError(
f"Unknown cloud provider {provider!r}. "
"Supported: 'gmail', 'outlook', 'teams'."
)

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@@ -0,0 +1,335 @@
"""Gmail API client for cloud agent integration.
Wraps the Google Gmail REST API to fetch email messages matching a
``filter_config`` dict. Uses the official ``google-api-python-client``
library (synchronous) wrapped in ``asyncio.to_thread()`` to avoid
blocking the event loop.
Token refresh is handled transparently: when the stored access token has
expired, ``google.auth.transport.requests.Request`` will use the refresh
token to obtain a fresh one. The caller is responsible for persisting
any refreshed credentials back to ``CloudScoutConfig.oauth_token_encrypted``
(see ``agent_runner.run_cloud_agent``).
Credential dict shape (Google OAuth2):
{
"token": "<access_token>",
"refresh_token": "<refresh_token>",
"token_uri": "https://oauth2.googleapis.com/token",
"client_id": "<client_id>",
"client_secret": "<client_secret>",
"scopes": ["https://www.googleapis.com/auth/gmail.readonly"],
"expiry": "2025-01-01T00:00:00Z" # optional ISO-8601
}
"""
from __future__ import annotations
import asyncio
import base64
import email
import html
import logging
import re
from datetime import datetime, timezone
from typing import Any
from app.integrations import EmailMessage
logger = logging.getLogger(__name__)
# Gmail search date format — e.g. "after:2025/01/01"
_GMAIL_DATE_FMT = "%Y/%m/%d"
# Maximum characters of body text forwarded to the LLM.
_BODY_TRUNCATE = 8_000
# Maximum messages retrieved per run (prevents runaway quota usage).
_MAX_MESSAGES = 200
def _build_gmail_query(
filter_config: dict[str, Any] | None,
since: datetime | None,
) -> str:
"""Build a Gmail search query string from *filter_config* and *since*.
Supported ``filter_config`` keys:
labels (list[str]): Gmail label names, e.g. ``["INBOX", "work"]``
senders (list[str]): Sender addresses or domains to include
date_range (dict): ``{from: "<YYYY-MM-DD>", to: "<YYYY-MM-DD>"}``
A hard ``since`` date (from last run) always overrides ``date_range.from``
when it is earlier.
"""
parts: list[str] = []
cfg = filter_config or {}
# Labels — joined with OR when multiple given.
labels: list[str] = cfg.get("labels", [])
if labels:
if len(labels) == 1:
parts.append(f"label:{labels[0]}")
else:
label_expr = " OR ".join(f"label:{lbl}" for lbl in labels)
parts.append(f"({label_expr})")
# Senders — each prefixed with "from:".
senders: list[str] = cfg.get("senders", [])
for sender in senders:
parts.append(f"from:{sender}")
# Date range.
date_range: dict = cfg.get("date_range", {})
from_str: str | None = date_range.get("from")
to_str: str | None = date_range.get("to")
# Determine effective "from" date: most recent of filter_config.date_range.from and since.
effective_since: datetime | None = since
if from_str:
try:
cfg_since = datetime.fromisoformat(from_str.replace("Z", "+00:00"))
if cfg_since.tzinfo is None:
cfg_since = cfg_since.replace(tzinfo=timezone.utc)
if effective_since is None or cfg_since > effective_since:
effective_since = cfg_since
except ValueError:
logger.warning("gmail: invalid date_range.from %r — ignoring", from_str)
if effective_since:
parts.append(f"after:{effective_since.strftime(_GMAIL_DATE_FMT)}")
if to_str:
try:
to_dt = datetime.fromisoformat(to_str.replace("Z", "+00:00"))
parts.append(f"before:{to_dt.strftime(_GMAIL_DATE_FMT)}")
except ValueError:
logger.warning("gmail: invalid date_range.to %r — ignoring", to_str)
return " ".join(parts)
def _strip_html(raw_html: str) -> str:
"""Remove HTML tags and decode entities to get plain text."""
no_tags = re.sub(r"<[^>]+>", " ", raw_html)
decoded = html.unescape(no_tags)
return re.sub(r"\s+", " ", decoded).strip()
def _parse_body(payload: dict[str, Any]) -> str:
"""Recursively extract the plain-text body from a Gmail message payload.
Prefers ``text/plain``; falls back to ``text/html`` (stripped of tags).
Returns an empty string if no body can be extracted.
"""
mime_type: str = payload.get("mimeType", "")
body: dict = payload.get("body", {})
parts: list[dict] = payload.get("parts", [])
if mime_type == "text/plain":
data = body.get("data", "")
if data:
return base64.urlsafe_b64decode(data + "==").decode("utf-8", errors="replace")
return ""
if mime_type == "text/html":
data = body.get("data", "")
if data:
raw = base64.urlsafe_b64decode(data + "==").decode("utf-8", errors="replace")
return _strip_html(raw)
return ""
# Multipart — prefer text/plain part, fall back to text/html.
plain_fallback = ""
for part in parts:
part_mime = part.get("mimeType", "")
if part_mime == "text/plain":
return _parse_body(part)
if part_mime == "text/html" and not plain_fallback:
plain_fallback = _parse_body(part)
if part_mime.startswith("multipart/"):
nested = _parse_body(part)
if nested:
return nested
return plain_fallback
def _parse_date(raw: str) -> datetime:
"""Parse an RFC 2822 email date header into a UTC ``datetime``."""
try:
parsed = email.utils.parsedate_to_datetime(raw)
if parsed.tzinfo is None:
parsed = parsed.replace(tzinfo=timezone.utc)
return parsed.astimezone(timezone.utc)
except Exception:
return datetime.now(timezone.utc)
class GmailClient:
"""Fetch email messages from a Gmail account via the Gmail REST API.
Parameters
----------
credentials_info:
Decrypted OAuth2 credential dict. Must contain at minimum
``token`` (access token) or ``refresh_token`` + ``token_uri`` +
``client_id`` + ``client_secret``.
"""
def __init__(self, credentials_info: dict[str, Any]) -> None:
from google.oauth2.credentials import Credentials
self._credentials_info = credentials_info
expiry_str: str | None = credentials_info.get("expiry")
expiry: datetime | None = None
if expiry_str:
try:
expiry = datetime.fromisoformat(
expiry_str.replace("Z", "+00:00")
).replace(tzinfo=timezone.utc)
except ValueError:
pass
self._credentials = Credentials(
token=credentials_info.get("token"),
refresh_token=credentials_info.get("refresh_token"),
token_uri=credentials_info.get("token_uri", "https://oauth2.googleapis.com/token"),
client_id=credentials_info.get("client_id"),
client_secret=credentials_info.get("client_secret"),
scopes=credentials_info.get("scopes"),
expiry=expiry,
)
# ── Public API ─────────────────────────────────────────────────────────
async def fetch_messages(
self,
filter_config: dict[str, Any] | None = None,
since: datetime | None = None,
) -> list[EmailMessage]:
"""Return up to ``_MAX_MESSAGES`` emails matching *filter_config*.
Runs the synchronous Google API calls inside ``asyncio.to_thread()``
to avoid blocking the async event loop.
Token refresh is performed automatically when the access token has
expired. After the call, ``self.refreshed_credentials`` may be
consulted to detect whether new credentials should be persisted.
"""
query = _build_gmail_query(filter_config, since)
logger.debug("gmail: executing search query %r", query)
return await asyncio.to_thread(self._fetch_sync, query)
@property
def refreshed_credentials(self) -> dict[str, Any] | None:
"""Return updated credential dict if the access token was refreshed.
If the credentials were refreshed during ``fetch_messages()``, returns
a new dict that should be re-encrypted and written back to the DB.
Returns ``None`` if no refresh occurred.
"""
creds = self._credentials
if not creds.valid and creds.expired:
return None
# Check whether the token changed from what was stored.
if creds.token != self._credentials_info.get("token"):
result = {
"token": creds.token,
"refresh_token": creds.refresh_token,
"token_uri": creds.token_uri,
"client_id": creds.client_id,
"client_secret": creds.client_secret,
"scopes": list(creds.scopes or []),
}
if creds.expiry:
result["expiry"] = creds.expiry.isoformat()
return result
return None
# ── Internal sync worker ───────────────────────────────────────────────
def _fetch_sync(self, query: str) -> list[EmailMessage]:
"""Synchronous worker — called inside ``asyncio.to_thread()``."""
import googleapiclient.discovery
import googleapiclient.errors
from google.auth.transport.requests import Request
# Refresh token if needed before building the service.
if self._credentials.expired and self._credentials.refresh_token:
try:
self._credentials.refresh(Request())
except Exception as exc:
raise RuntimeError(f"Gmail token refresh failed: {exc}") from exc
service = googleapiclient.discovery.build(
"gmail", "v1", credentials=self._credentials, cache_discovery=False
)
user_api = service.users() # type: ignore[attr-defined]
# ── List matching message IDs ──────────────────────────────────────
ids: list[str] = []
page_token: str | None = None
while len(ids) < _MAX_MESSAGES:
batch_size = min(100, _MAX_MESSAGES - len(ids))
kwargs: dict[str, Any] = {
"userId": "me",
"maxResults": batch_size,
}
if query:
kwargs["q"] = query
if page_token:
kwargs["pageToken"] = page_token
try:
resp = user_api.messages().list(**kwargs).execute()
except googleapiclient.errors.HttpError as exc:
raise RuntimeError(f"Gmail messages.list failed: {exc}") from exc
for msg in resp.get("messages", []):
ids.append(msg["id"])
page_token = resp.get("nextPageToken")
if not page_token:
break
if not ids:
logger.debug("gmail: no messages matched query %r", query)
return []
logger.info("gmail: fetching %d message(s)", len(ids))
# ── Fetch individual message details ──────────────────────────────
messages: list[EmailMessage] = []
for msg_id in ids:
try:
msg = user_api.messages().get(
userId="me", id=msg_id, format="full"
).execute()
headers: dict[str, str] = {
h["name"].lower(): h["value"]
for h in msg.get("payload", {}).get("headers", [])
}
subject = headers.get("subject", "(no subject)")
sender = headers.get("from", "unknown")
date_raw = headers.get("date", "")
date = _parse_date(date_raw) if date_raw else datetime.now(timezone.utc)
body_text = _parse_body(msg.get("payload", {}))[:_BODY_TRUNCATE]
labels = msg.get("labelIds", [])
messages.append(EmailMessage(
id=msg_id,
subject=subject,
sender=sender,
body_text=body_text,
date=date,
labels=labels,
))
except googleapiclient.errors.HttpError as exc:
logger.warning("gmail: skipping message %s — HTTP error: %s", msg_id, exc)
except Exception as exc:
logger.warning("gmail: skipping message %s — unexpected error: %s", msg_id, exc)
logger.info("gmail: returned %d message(s)", len(messages))
return messages

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"""Microsoft Graph API client for Outlook and Teams cloud agent integration.
Handles two data sources:
* **Outlook email** (``provider="outlook"``) — ``fetch_emails()`` calls
``/me/messages`` with an OData ``$filter`` built from ``filter_config``.
* **Teams messages** (``provider="teams"``) — ``fetch_messages()`` calls
``/me/chats/getAllMessages`` filtered by date.
Authentication uses MSAL ``PublicClientApplication`` to acquire a token
from a stored refresh token. The ``httpx.AsyncClient`` (already a project
dependency) is used for all API calls.
Credential dict shape (Microsoft OAuth2 / MSAL):
{
"access_token": "<access_token>",
"refresh_token": "<refresh_token>",
"token_type": "Bearer",
"scope": "Mail.Read ChannelMessage.Read.All offline_access",
"expires_in": 3600
}
"""
from __future__ import annotations
import logging
import re
from datetime import datetime, timezone
from typing import Any
import httpx
from app.config.settings import settings
from app.integrations import ChatMessage, EmailMessage
logger = logging.getLogger(__name__)
_GRAPH_BASE = "https://graph.microsoft.com/v1.0"
# Max items fetched per run.
_MAX_EMAILS = 200
_MAX_MESSAGES = 200
# Max characters of body forwarded to the LLM.
_BODY_TRUNCATE = 8_000
def _strip_html(raw: str) -> str:
"""Strip HTML tags and collapse whitespace."""
no_tags = re.sub(r"<[^>]+>", " ", raw)
import html as _html
decoded = _html.unescape(no_tags)
return re.sub(r"\s+", " ", decoded).strip()
def _odata_datetime(dt: datetime) -> str:
"""Format a datetime as an OData datetime literal (UTC, ISO 8601)."""
utc = dt.astimezone(timezone.utc)
return utc.strftime("%Y-%m-%dT%H:%M:%SZ")
def _build_email_filter(
filter_config: dict[str, Any] | None,
since: datetime | None,
) -> str:
"""Build an OData ``$filter`` expression for the ``/me/messages`` endpoint.
Supported ``filter_config`` keys:
senders (list[str]): Sender email addresses.
date_range (dict): ``{from: "<ISO-8601>", to: "<ISO-8601>"}``
folders (list[str]): Folder display names (not directly filterable
via OData, so ignored here — callers iterate
folder IDs separately if needed; listed for
completeness).
A hard ``since`` date always overrides ``date_range.from`` when it is
earlier.
"""
clauses: list[str] = []
cfg = filter_config or {}
# Senders.
senders: list[str] = cfg.get("senders", [])
if senders:
sender_clauses = [f"from/emailAddress/address eq '{s}'" for s in senders]
clauses.append("(" + " or ".join(sender_clauses) + ")")
# Date range.
date_range: dict = cfg.get("date_range", {})
from_str: str | None = date_range.get("from")
effective_since: datetime | None = since
if from_str:
try:
cfg_since = datetime.fromisoformat(from_str.replace("Z", "+00:00"))
if cfg_since.tzinfo is None:
cfg_since = cfg_since.replace(tzinfo=timezone.utc)
if effective_since is None or cfg_since > effective_since:
effective_since = cfg_since
except ValueError:
logger.warning("ms_graph: invalid date_range.from %r — ignoring", from_str)
if effective_since:
clauses.append(f"receivedDateTime ge {_odata_datetime(effective_since)}")
to_str: str | None = date_range.get("to")
if to_str:
try:
to_dt = datetime.fromisoformat(to_str.replace("Z", "+00:00"))
if to_dt.tzinfo is None:
to_dt = to_dt.replace(tzinfo=timezone.utc)
clauses.append(f"receivedDateTime le {_odata_datetime(to_dt)}")
except ValueError:
logger.warning("ms_graph: invalid date_range.to %r — ignoring", to_str)
return " and ".join(clauses)
class MSGraphClient:
"""Fetch emails and Teams messages via the Microsoft Graph REST API.
Parameters
----------
credentials_info:
Decrypted MSAL credential dict.
"""
def __init__(self, credentials_info: dict[str, Any]) -> None:
self._credentials_info = credentials_info
self._access_token: str = credentials_info.get("access_token", "")
self._original_access_token: str = self._access_token
self._refresh_token: str | None = credentials_info.get("refresh_token")
# ── Token management ───────────────────────────────────────────────────
def _auth_headers(self) -> dict[str, str]:
return {"Authorization": f"Bearer {self._access_token}"}
async def _refresh_access_token(self) -> None:
"""Use MSAL to exchange the refresh token for a fresh access token.
Updates ``self._access_token`` and ``self._credentials_info`` in-place.
Raises:
RuntimeError: MSAL reports an auth error.
"""
import msal
app = msal.ConfidentialClientApplication(
client_id=settings.MS_CLIENT_ID,
client_credential=settings.MS_CLIENT_SECRET,
authority=f"https://login.microsoftonline.com/{settings.MS_TENANT_ID}",
)
scopes: list[str] = self._credentials_info.get("scope", "").split()
if not scopes:
scopes = ["https://graph.microsoft.com/.default"]
result = app.acquire_token_by_refresh_token(
self._refresh_token,
scopes=scopes,
)
if "access_token" not in result:
error = result.get("error_description", result.get("error", "unknown"))
raise RuntimeError(f"MS Graph token refresh failed: {error}")
self._access_token = result["access_token"]
# MSAL may issue a new refresh token.
if "refresh_token" in result:
self._refresh_token = result["refresh_token"]
self._credentials_info["refresh_token"] = result["refresh_token"]
self._credentials_info["access_token"] = self._access_token
@property
def refreshed_credentials(self) -> dict[str, Any] | None:
"""Return updated credential dict if the access token was refreshed.
Returns ``None`` if no change was made.
"""
if self._access_token != self._original_access_token:
return {**self._credentials_info, "access_token": self._access_token}
return None
# ── HTTP helpers ───────────────────────────────────────────────────────
async def _get(
self,
client: httpx.AsyncClient,
url: str,
params: dict[str, Any] | None = None,
*,
retry_on_401: bool = True,
) -> dict[str, Any]:
"""GET *url* with auth; refresh token on 401 and retry once."""
resp = await client.get(url, params=params, headers=self._auth_headers())
if resp.status_code == 401 and retry_on_401 and self._refresh_token:
logger.debug("ms_graph: 401 on %s — refreshing token", url)
await self._refresh_access_token()
resp = await client.get(url, params=params, headers=self._auth_headers())
if resp.status_code == 429:
raise RuntimeError("MS Graph rate limit hit (429). Try again later.")
resp.raise_for_status()
return resp.json()
# ── Public API ─────────────────────────────────────────────────────────
async def fetch_emails(
self,
filter_config: dict[str, Any] | None = None,
since: datetime | None = None,
) -> list[EmailMessage]:
"""Return up to ``_MAX_EMAILS`` Outlook messages matching *filter_config*.
Parameters
----------
filter_config:
Optional dict with ``senders``, ``date_range``, ``folders`` keys.
since:
Hard lower-bound on email date (from last agent run).
"""
odata_filter = _build_email_filter(filter_config, since)
params: dict[str, Any] = {
"$top": 50,
"$select": "id,subject,from,receivedDateTime,body,bodyPreview",
"$orderby": "receivedDateTime desc",
}
if odata_filter:
params["$filter"] = odata_filter
emails: list[EmailMessage] = []
url = f"{_GRAPH_BASE}/me/messages"
async with httpx.AsyncClient(timeout=30.0) as client:
while url and len(emails) < _MAX_EMAILS:
data = await self._get(client, url, params if url.startswith(_GRAPH_BASE) else None)
for item in data.get("value", []):
emails.append(self._parse_email(item))
if len(emails) >= _MAX_EMAILS:
break
url = data.get("@odata.nextLink", "")
params = {} # nextLink already contains encoded params.
logger.info("ms_graph: fetched %d Outlook email(s)", len(emails))
return emails
async def fetch_messages(
self,
filter_config: dict[str, Any] | None = None,
since: datetime | None = None,
) -> list[ChatMessage]:
"""Return up to ``_MAX_MESSAGES`` Teams messages matching *filter_config*.
Fetches from ``/me/chats/getAllMessages`` (personal + group chats).
The ``filter_config.channels`` key is checked as a text-filter on
the channel name post-fetch (the API doesn't support channel OData
filter directly on ``getAllMessages``).
"""
cfg = filter_config or {}
channel_filter: list[str] = [c.lower() for c in cfg.get("channels", [])]
params: dict[str, Any] = {"$top": 50}
if since:
params["$filter"] = f"createdDateTime ge {_odata_datetime(since)}"
messages: list[ChatMessage] = []
url = f"{_GRAPH_BASE}/me/chats/getAllMessages"
async with httpx.AsyncClient(timeout=30.0) as client:
while url and len(messages) < _MAX_MESSAGES:
try:
data = await self._get(client, url, params if url.startswith(_GRAPH_BASE) else None)
except httpx.HTTPStatusError as exc:
# getAllMessages requires specific licensing; degrade gracefully.
if exc.response.status_code in (403, 404):
logger.warning(
"ms_graph: /me/chats/getAllMessages not available (%d) — "
"check Teams license or permissions",
exc.response.status_code,
)
break
raise
for item in data.get("value", []):
msg = self._parse_teams_message(item)
if channel_filter and msg.channel:
if not any(c in msg.channel.lower() for c in channel_filter):
continue
messages.append(msg)
if len(messages) >= _MAX_MESSAGES:
break
url = data.get("@odata.nextLink", "")
params = {}
logger.info("ms_graph: fetched %d Teams message(s)", len(messages))
return messages
# ── Parsers ────────────────────────────────────────────────────────────
@staticmethod
def _parse_email(item: dict[str, Any]) -> EmailMessage:
subject: str = item.get("subject", "(no subject)") or "(no subject)"
sender_block = item.get("from", {}) or {}
sender_addr = (
(sender_block.get("emailAddress") or {}).get("address", "unknown")
)
date_str: str = item.get("receivedDateTime", "")
try:
date = datetime.fromisoformat(date_str.replace("Z", "+00:00"))
except Exception:
date = datetime.now(timezone.utc)
body_block = item.get("body", {}) or {}
content_type: str = body_block.get("contentType", "text")
raw_body: str = body_block.get("content", "")
if content_type == "html":
body_text = _strip_html(raw_body)
else:
body_text = raw_body or item.get("bodyPreview", "")
body_text = body_text[:_BODY_TRUNCATE]
return EmailMessage(
id=item.get("id", ""),
subject=subject,
sender=sender_addr,
body_text=body_text,
date=date,
)
@staticmethod
def _parse_teams_message(item: dict[str, Any]) -> ChatMessage:
msg_id: str = item.get("id", "")
sender_block = (item.get("from") or {}).get("user") or {}
sender: str = sender_block.get("displayName", "unknown")
channel: str | None = (item.get("channelIdentity") or {}).get("channelId")
date_str: str = item.get("createdDateTime", "")
try:
date = datetime.fromisoformat(date_str.replace("Z", "+00:00"))
except Exception:
date = datetime.now(timezone.utc)
body_block = item.get("body", {}) or {}
content_type: str = body_block.get("contentType", "text")
raw_content: str = body_block.get("content", "")
content = _strip_html(raw_content) if content_type == "html" else raw_content
content = content[:_BODY_TRUNCATE]
return ChatMessage(
id=msg_id,
content=content,
sender=sender,
channel=channel,
date=date,
)

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from contextlib import asynccontextmanager
import logging
from fastapi import FastAPI
from fastapi.middleware.cors import CORSMiddleware
from app.api.middleware.rate_limit import TierRateLimitMiddleware
from app.api.middleware.sanitizer import SanitizerMiddleware
from app.config.settings import settings
logging.basicConfig(
level=logging.INFO,
format="%(asctime)s %(levelname)s %(name)s: %(message)s",
)
logging.getLogger("sqlalchemy.engine").setLevel(logging.WARNING)
logging.getLogger("sqlalchemy.pool").setLevel(logging.WARNING)
async def _memory_audit_cron_tick() -> None:
"""Weekly cron: contradiction scan + label canonicalization for all users (Phase 7)."""
import logging # noqa: PLC0415
_log = logging.getLogger(__name__)
_log.info("memory audit cron tick: starting")
try:
from app.db import async_session # noqa: PLC0415
from app.core.memory_maintenance import audit_memory # noqa: PLC0415
from app.models import User # noqa: PLC0415
from sqlalchemy import select # noqa: PLC0415
async with async_session() as db:
result = await db.execute(select(User.id))
user_ids: list[str] = list(result.scalars().all())
for uid in user_ids:
try:
async with async_session() as db:
await audit_memory(db, uid)
except Exception as exc:
_log.warning("memory audit cron tick: audit_memory failed user=%s: %s", uid, exc)
_log.info("memory audit cron tick: done users=%d", len(user_ids))
except Exception as exc:
_log.warning("memory audit cron tick: failed: %s", exc)
async def _memory_cron_tick() -> None:
"""Hourly cron: drain Free-tier extraction queue + mine proactive patterns for Power+ users."""
import logging # noqa: PLC0415
_log = logging.getLogger(__name__)
_log.info("memory cron tick: starting")
try:
from app.db import async_session # noqa: PLC0415
from app.core.memory_maintenance import drain_extraction_queue, mine_proactive_patterns # noqa: PLC0415
from app.billing.tier_manager import tier_manager # noqa: PLC0415
from app.models import User # noqa: PLC0415
from sqlalchemy import select # noqa: PLC0415
async with async_session() as db:
await drain_extraction_queue(db)
# mine proactive patterns for every Power+ user
async with async_session() as db:
result = await db.execute(select(User.id))
user_ids: list[str] = list(result.scalars().all())
for uid in user_ids:
try:
async with async_session() as db:
tier = await tier_manager.get_tier(uid, db)
if tier_manager.check_feature(tier, "proactive_mining"):
await mine_proactive_patterns(db, uid)
except Exception as exc:
_log.warning("memory cron tick: mine_proactive_patterns failed user=%s: %s", uid, exc)
_log.info("memory cron tick: done users=%d", len(user_ids))
except Exception as exc:
_log.warning("memory cron tick: failed: %s", exc)
async def _scout_cron_tick() -> None:
"""Every-15-min cron: poll enabled cloud scouts (cron-fallback; push is primary).
Skips any scout whose ``last_run_at`` is within the last 5 minutes so
a push notification and the fallback cron don't double-fire within the
same window.
"""
import logging # noqa: PLC0415
import uuid # noqa: PLC0415
from datetime import datetime, timezone # noqa: PLC0415
_log = logging.getLogger(__name__)
_log.info("scout cron tick: starting")
try:
from app.db import async_session # noqa: PLC0415
from app.models import CloudScoutConfig # noqa: PLC0415
from app.scouts.engine import ScoutEngine # noqa: PLC0415
from sqlalchemy import select # noqa: PLC0415
async with async_session() as session:
scouts = (await session.execute(
select(CloudScoutConfig).where(CloudScoutConfig.enabled == True) # noqa: E712
)).scalars().all()
engine = ScoutEngine()
triggered = 0
for scout in scouts:
# Rate-limit guard: push is primary; skip if ran within 5 minutes.
if scout.last_run_at:
elapsed = (datetime.now(tz=timezone.utc) - scout.last_run_at).total_seconds()
if elapsed < 300:
continue
try:
await engine.trigger_scout(uuid.UUID(str(scout.id)))
triggered += 1
except Exception as exc:
_log.warning("scout cron tick: trigger failed scout=%s: %s", scout.id, exc)
_log.info("scout cron tick: done triggered=%d total=%d", triggered, len(scouts))
except Exception as exc:
_log.warning("scout cron tick: failed: %s", exc)
async def _scout_watch_renewal_tick() -> None:
"""Every-24-hour cron: re-issue Gmail users.watch for scouts expiring within 24h.
Handles missing or misconfigured connectors gracefully — logs and continues.
"""
import logging # noqa: PLC0415
from datetime import datetime, timedelta, timezone # noqa: PLC0415
_log = logging.getLogger(__name__)
_log.info("scout watch renewal tick: starting")
try:
from app.db import async_session # noqa: PLC0415
from app.models import CloudScoutConfig # noqa: PLC0415
from app.scouts.connectors.registry import get_connector # noqa: PLC0415
from sqlalchemy import select # noqa: PLC0415
threshold = datetime.now(tz=timezone.utc) + timedelta(hours=24)
renewed = 0
async with async_session() as session:
scouts = (await session.execute(
select(CloudScoutConfig).where(
CloudScoutConfig.enabled == True, # noqa: E712
CloudScoutConfig.provider == "gmail",
CloudScoutConfig.gmail_watch_expires_at <= threshold,
)
)).scalars().all()
for scout in scouts:
try:
connector = get_connector("gmail")
await connector.renew_watch(scout)
renewed += 1
except Exception:
_log.exception("scout watch renewal tick: renew failed scout=%s", scout.id)
await session.commit()
_log.info("scout watch renewal tick: done renewed=%d", renewed)
except Exception as exc:
_log.warning("scout watch renewal tick: failed: %s", exc)
@asynccontextmanager
async def lifespan(app: FastAPI):
# Startup: register source connectors.
from app.scouts.connectors.gmail import GmailConnector # noqa: PLC0415
from app.scouts.connectors.registry import register_connector # noqa: PLC0415
register_connector(GmailConnector())
# Startup: ensure agent tool modules are loaded.
import app.agents # noqa: F401
scheduler = None
if settings.SCHEDULER_ENABLED:
from apscheduler.schedulers.asyncio import AsyncIOScheduler # noqa: PLC0415
scheduler = AsyncIOScheduler()
scheduler.add_job(_memory_cron_tick, "interval", hours=1, id="memory_cron")
scheduler.add_job(_memory_audit_cron_tick, "interval", weeks=1, id="memory_audit_cron")
scheduler.add_job(
_scout_cron_tick, "interval", minutes=15,
id="scout_cron_tick", replace_existing=True,
)
scheduler.add_job(
_scout_watch_renewal_tick, "interval", hours=24,
id="scout_watch_renewal_tick", replace_existing=True,
)
scheduler.start()
logging.getLogger(__name__).info("memory cron scheduler started (interval=1h)")
yield
if scheduler is not None:
scheduler.shutdown(wait=False)
# Shutdown: dispose SQLAlchemy connection pool
from app.db import engine
await engine.dispose()
def create_app() -> FastAPI:
app = FastAPI(
title="AdiuvAI Cloud API",
version="0.1.0",
docs_url="/docs" if settings.ENV == "dev" else None,
redoc_url=None,
lifespan=lifespan,
)
app.add_middleware(
CORSMiddleware,
allow_origins=settings.CORS_ORIGINS,
allow_credentials=True,
allow_methods=["*"],
allow_headers=["*"],
)
# Middleware stack (Starlette inserts at position 0, so last-added = outermost).
# Request flow: TierRateLimit → Sanitizer → CORS → Router
# Response flow: Router → CORS → Sanitizer → TierRateLimit
app.add_middleware(SanitizerMiddleware)
app.add_middleware(TierRateLimitMiddleware)
from app.api.routes import scouts, auth, billing, chat, device_ws, memory, scout_webhooks
app.include_router(auth.router, prefix="/api/v1")
app.include_router(chat.router, prefix="/api/v1")
app.include_router(billing.router, prefix="/api/v1")
app.include_router(scouts.router, prefix="/api/v1")
app.include_router(scout_webhooks.router, prefix="/api/v1")
app.include_router(device_ws.router, prefix="/api/v1")
app.include_router(memory.router, prefix="/api/v1")
@app.get("/api/v1/health", tags=["health"])
async def health() -> dict:
return {"status": "ok", "version": app.version}
return app
app = create_app()

474
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"""SQLAlchemy ORM models for all persistent tables.
Only auth, billing, scout config, and memory data live here.
User content (notes, tasks, etc.) lives exclusively on the client.
Table inventory:
users — account credentials + tier
refresh_tokens — hashed refresh token store
subscriptions — Stripe subscription records
local_scout_configs — per-device batch scout configs
cloud_scout_configs — OAuth-backed cloud scout configs
scout_run_logs — execution history for all scouts
memory_core — per-user persistent key/value preferences (encrypted)
memory_associative — per-user semantic memory with embeddings (encrypted)
memory_episodic — per-user session summaries (encrypted)
memory_proactive — per-user behavioral patterns (encrypted)
memory_relations — per-user entity/relation graph (Mem0g-light, Phase 3)
"""
from __future__ import annotations
import uuid
from datetime import datetime, timezone
from pgvector.sqlalchemy import Vector
from sqlalchemy import (
Boolean,
DateTime,
Enum,
Float,
ForeignKey,
Integer,
JSON,
LargeBinary,
String,
Text,
UniqueConstraint,
Uuid,
func,
text,
)
from sqlalchemy.orm import Mapped, mapped_column, relationship
from app.db import Base
# ── Helpers ──────────────────────────────────────────────────────────────
def _uuid() -> str:
return str(uuid.uuid4())
def _now() -> datetime:
return datetime.now(timezone.utc)
# ── Enum types ────────────────────────────────────────────────────────────
TierEnum = Enum("free", "pro", "power", "team", name="billing_tier")
AgentTypeEnum = Enum("local", "cloud", name="agent_type")
AgentStatusEnum = Enum("running", "success", "error", "partial", name="agent_run_status")
CloudProviderEnum = Enum("gmail", "teams", "outlook", name="cloud_provider")
# ── Models ────────────────────────────────────────────────────────────────
class User(Base):
__tablename__ = "users"
id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), primary_key=True, default=_uuid
)
email: Mapped[str] = mapped_column(String(255), unique=True, nullable=False, index=True)
name: Mapped[str | None] = mapped_column(String(100), nullable=True)
surname: Mapped[str | None] = mapped_column(String(100), nullable=True)
password_hash: Mapped[str | None] = mapped_column(String(255), nullable=True)
avatar_url: Mapped[str | None] = mapped_column(Text, nullable=True)
tier: Mapped[str] = mapped_column(TierEnum, nullable=False, default="free")
stripe_customer_id: Mapped[str | None] = mapped_column(String(255), nullable=True)
# Per-user Fernet key (base64-urlsafe, 44 chars). Generated on registration.
# Used to encrypt/decrypt all memory rows for this user.
encryption_key: Mapped[str | None] = mapped_column(String(64), nullable=True)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
onboarding_completed_at: Mapped[datetime | None] = mapped_column(
DateTime(timezone=True), nullable=True, default=None
)
updated_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now(), onupdate=func.now()
)
refresh_tokens: Mapped[list[RefreshToken]] = relationship(
back_populates="user", cascade="all, delete-orphan"
)
subscription: Mapped[Subscription | None] = relationship(
back_populates="user", uselist=False, cascade="all, delete-orphan"
)
oauth_accounts: Mapped[list[OAuthAccount]] = relationship(
back_populates="user", cascade="all, delete-orphan"
)
class RefreshToken(Base):
__tablename__ = "refresh_tokens"
id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), primary_key=True, default=_uuid
)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"), nullable=False, index=True
)
token_hash: Mapped[str] = mapped_column(String(64), unique=True, nullable=False, index=True)
expires_at: Mapped[datetime] = mapped_column(DateTime(timezone=True), nullable=False)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
user: Mapped[User] = relationship(back_populates="refresh_tokens")
class OAuthAccount(Base):
__tablename__ = "oauth_accounts"
id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), primary_key=True, default=_uuid
)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"), nullable=False, index=True
)
provider: Mapped[str] = mapped_column(String(50), nullable=False)
provider_user_id: Mapped[str] = mapped_column(String(255), nullable=False)
provider_email: Mapped[str | None] = mapped_column(String(255), nullable=True)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
user: Mapped[User] = relationship(back_populates="oauth_accounts")
class Subscription(Base):
__tablename__ = "subscriptions"
id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), primary_key=True, default=_uuid
)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"),
nullable=False, unique=True, index=True
)
stripe_subscription_id: Mapped[str | None] = mapped_column(String(255), nullable=True, index=True)
tier: Mapped[str] = mapped_column(TierEnum, nullable=False, default="free")
status: Mapped[str] = mapped_column(String(50), nullable=False, default="free")
current_period_end: Mapped[datetime | None] = mapped_column(DateTime(timezone=True), nullable=True)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
user: Mapped[User] = relationship(back_populates="subscription")
class LocalScoutConfig(Base):
__tablename__ = "local_scout_configs"
id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), primary_key=True, default=_uuid
)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"), nullable=False, index=True
)
device_id: Mapped[str] = mapped_column(String(255), nullable=False)
name: Mapped[str] = mapped_column(String(255), nullable=False)
directory_paths: Mapped[list] = mapped_column(JSON, nullable=False, default=list)
data_types: Mapped[list] = mapped_column(JSON, nullable=False, default=list)
prompt_template: Mapped[str] = mapped_column(Text, nullable=False, default="")
scout_config: Mapped[dict | None] = mapped_column(JSON, nullable=True)
file_extensions: Mapped[list] = mapped_column(JSON, nullable=False, default=list)
schedule_cron: Mapped[str] = mapped_column(String(100), nullable=False, default="0 */6 * * *")
enabled: Mapped[bool] = mapped_column(Boolean, nullable=False, default=True)
last_run_at: Mapped[datetime | None] = mapped_column(DateTime(timezone=True), nullable=True)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
updated_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now(), onupdate=func.now()
)
run_logs: Mapped[list["ScoutRunLog"]] = relationship(
back_populates="local_scout",
primaryjoin="and_(ScoutRunLog.scout_id == LocalScoutConfig.id, ScoutRunLog.scout_type == 'local')",
foreign_keys="ScoutRunLog.scout_id",
cascade="all, delete-orphan",
overlaps="run_logs,cloud_scout",
)
class CloudScoutConfig(Base):
__tablename__ = "cloud_scout_configs"
id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), primary_key=True, default=_uuid
)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"), nullable=False, index=True
)
provider: Mapped[str] = mapped_column(CloudProviderEnum, nullable=False)
name: Mapped[str] = mapped_column(String(255), nullable=False)
data_types: Mapped[list] = mapped_column(JSON, nullable=False, default=list)
prompt_template: Mapped[str] = mapped_column(Text, nullable=False, default="")
oauth_token_encrypted: Mapped[str | None] = mapped_column(Text, nullable=True)
filter_config: Mapped[dict | None] = mapped_column(JSON, nullable=True)
schedule_cron: Mapped[str] = mapped_column(String(100), nullable=False, default="0 */6 * * *")
enabled: Mapped[bool] = mapped_column(Boolean, nullable=False, default=True)
last_run_at: Mapped[datetime | None] = mapped_column(DateTime(timezone=True), nullable=True)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
updated_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now(), onupdate=func.now()
)
auto_trash_spam: Mapped[bool] = mapped_column(Boolean, nullable=False, default=False, server_default=text("false"))
gmail_history_id: Mapped[str | None] = mapped_column(String(64), nullable=True)
gmail_watch_expires_at: Mapped[datetime | None] = mapped_column(DateTime(timezone=True), nullable=True)
device_inactivity_pause_days: Mapped[int] = mapped_column(Integer, nullable=False, default=14, server_default="14")
gmail_address: Mapped[str | None] = mapped_column(String(320), nullable=True)
run_logs: Mapped[list["ScoutRunLog"]] = relationship(
back_populates="cloud_scout",
primaryjoin="and_(ScoutRunLog.scout_id == CloudScoutConfig.id, ScoutRunLog.scout_type == 'cloud')",
foreign_keys="ScoutRunLog.scout_id",
cascade="all, delete-orphan",
overlaps="run_logs,local_scout",
)
class ScoutTriageQueue(Base):
__tablename__ = "scout_triage_queue"
__table_args__ = (
UniqueConstraint("scout_id", "source_msg_ref", name="uq_scout_triage_queue_scout_msg"),
)
id: Mapped[str] = mapped_column(Uuid(as_uuid=False), primary_key=True, default=_uuid)
user_id: Mapped[str] = mapped_column(Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"), nullable=False, index=True)
scout_id: Mapped[str] = mapped_column(Uuid(as_uuid=False), ForeignKey("cloud_scout_configs.id", ondelete="CASCADE"), nullable=False)
source_type: Mapped[str] = mapped_column(String(50), nullable=False)
source_msg_ref: Mapped[str] = mapped_column(String(255), nullable=False)
triage_verdict: Mapped[str] = mapped_column(String(20), nullable=False)
triage_reason: Mapped[str | None] = mapped_column(Text, nullable=True)
status: Mapped[str] = mapped_column(String(20), nullable=False, default="queued", server_default="queued")
triaged_at: Mapped[datetime] = mapped_column(DateTime(timezone=True), nullable=False, server_default=func.now())
delivered_at: Mapped[datetime | None] = mapped_column(DateTime(timezone=True), nullable=True)
acked_at: Mapped[datetime | None] = mapped_column(DateTime(timezone=True), nullable=True)
expires_at: Mapped[datetime] = mapped_column(DateTime(timezone=True), nullable=False)
class ScoutRunLog(Base):
__tablename__ = "scout_run_logs"
id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), primary_key=True, default=_uuid
)
# Plain string — not a FK because it references either local_scout_configs or cloud_scout_configs
# depending on scout_type. Query by (scout_id, scout_type) to locate the source config.
scout_id: Mapped[str] = mapped_column(String(255), nullable=False, index=True)
scout_type: Mapped[str] = mapped_column(AgentTypeEnum, nullable=False)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"), nullable=False, index=True
)
status: Mapped[str] = mapped_column(AgentStatusEnum, nullable=False, default="running")
items_processed: Mapped[int] = mapped_column(Integer, nullable=False, default=0)
items_created: Mapped[int] = mapped_column(Integer, nullable=False, default=0)
tokens_used: Mapped[int] = mapped_column(Integer, nullable=False, default=0, server_default="0")
errors: Mapped[list | None] = mapped_column(JSON, nullable=True)
started_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
completed_at: Mapped[datetime | None] = mapped_column(DateTime(timezone=True), nullable=True)
local_scout: Mapped["LocalScoutConfig | None"] = relationship(
back_populates="run_logs",
primaryjoin="and_(ScoutRunLog.scout_id == LocalScoutConfig.id, ScoutRunLog.scout_type == 'local')",
foreign_keys="ScoutRunLog.scout_id",
overlaps="run_logs,cloud_scout",
)
cloud_scout: Mapped["CloudScoutConfig | None"] = relationship(
back_populates="run_logs",
primaryjoin="and_(ScoutRunLog.scout_id == CloudScoutConfig.id, ScoutRunLog.scout_type == 'cloud')",
foreign_keys="ScoutRunLog.scout_id",
overlaps="run_logs,local_scout",
)
class MonthlyTokenUsage(Base):
__tablename__ = "monthly_token_usage"
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"), primary_key=True
)
year_month: Mapped[str] = mapped_column(String(7), primary_key=True) # 'YYYY-MM'
feature: Mapped[str] = mapped_column(String(64), primary_key=True)
tokens_used: Mapped[int] = mapped_column(Integer, nullable=False, default=0, server_default="0")
# ── Memory models ─────────────────────────────────────────────────────────────
class MemoryCore(Base):
"""Per-user persistent key/value preferences, encrypted at rest.
Examples: preferred_language, timezone, work_style.
Decrypted in-memory only using User.encryption_key.
"""
__tablename__ = "memory_core"
id: Mapped[str] = mapped_column(Uuid(as_uuid=False), primary_key=True, default=_uuid)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"),
nullable=False, index=True,
)
key: Mapped[str] = mapped_column(String(255), nullable=False)
value_encrypted: Mapped[str] = mapped_column(Text, nullable=False)
updated_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now(), onupdate=func.now()
)
class MemoryAssociative(Base):
"""Per-user semantic memory: encrypted content + pgvector embedding for similarity search.
Production: ``embedding`` column is ``vector(1536)`` via pgvector.
Tests (SQLite): stored as JSON list.
"""
__tablename__ = "memory_associative"
id: Mapped[str] = mapped_column(Uuid(as_uuid=False), primary_key=True, default=_uuid)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"),
nullable=False, index=True,
)
content_encrypted: Mapped[str] = mapped_column(Text, nullable=False)
# vector(1536) via pgvector; SQLite tests use NULL embeddings so no dialect issue.
embedding: Mapped[list | None] = mapped_column(Vector(1536), nullable=True)
entity_type: Mapped[str | None] = mapped_column(String(100), nullable=True)
entity_id: Mapped[str | None] = mapped_column(String(255), nullable=True)
updated_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now(), onupdate=func.now()
)
class MemoryEpisodic(Base):
"""Per-user session summaries, encrypted at rest.
One row per session interaction; used to recall recent conversations.
"""
__tablename__ = "memory_episodic"
id: Mapped[str] = mapped_column(Uuid(as_uuid=False), primary_key=True, default=_uuid)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"),
nullable=False, index=True,
)
summary_encrypted: Mapped[str] = mapped_column(Text, nullable=False)
session_id: Mapped[str] = mapped_column(String(255), nullable=False, index=True)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
class MemoryProactive(Base):
"""Per-user inferred behavioral patterns, encrypted at rest.
Confidence in [0.0, 1.0]; only patterns above threshold are injected.
Source: 'inferred' (from episodes) or 'explicit' (user-stated).
"""
__tablename__ = "memory_proactive"
id: Mapped[str] = mapped_column(Uuid(as_uuid=False), primary_key=True, default=_uuid)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"),
nullable=False, index=True,
)
pattern_encrypted: Mapped[str] = mapped_column(Text, nullable=False)
confidence: Mapped[float] = mapped_column(Float, nullable=False, default=0.5)
source: Mapped[str] = mapped_column(String(50), nullable=False, default="inferred")
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
class ExtractionQueue(Base):
"""Batch extraction queue for Free-tier users (Phase 2).
Pro/Power/Team users get realtime asyncio.create_task() extraction.
Free users get a queue row here; a daily cron (Phase 5) drains it.
"""
__tablename__ = "extraction_queue"
id: Mapped[str] = mapped_column(Uuid(as_uuid=False), primary_key=True, default=_uuid)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"),
nullable=False, index=True,
)
episode_id: Mapped[str | None] = mapped_column(
Uuid(as_uuid=False), nullable=True,
)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
class MemoryRelation(Base):
"""Per-user entity/relation graph row (Mem0g-light, Phase 3).
subject_label/object_label are plaintext entity identifiers (not user content).
notes_encrypted is optional Fernet-encrypted per-user commentary.
confidence in [0.0, 1.0] — decays 5 % per 30 days since last_confirmed_at.
"""
__tablename__ = "memory_relations"
id: Mapped[str] = mapped_column(Uuid(as_uuid=False), primary_key=True, default=_uuid)
user_id: Mapped[str] = mapped_column(
Uuid(as_uuid=False), ForeignKey("users.id", ondelete="CASCADE"),
nullable=False, index=True,
)
subject_label: Mapped[str] = mapped_column(String(128), nullable=False)
subject_type: Mapped[str] = mapped_column(String(32), nullable=False)
predicate: Mapped[str] = mapped_column(String(64), nullable=False)
object_label: Mapped[str] = mapped_column(String(128), nullable=False)
object_type: Mapped[str] = mapped_column(String(32), nullable=False)
confidence: Mapped[float] = mapped_column(Float, nullable=False, default=0.7)
source_episode_id: Mapped[str | None] = mapped_column(
Uuid(as_uuid=False),
ForeignKey("memory_episodic.id", ondelete="SET NULL"),
nullable=True,
)
notes_encrypted: Mapped[bytes | None] = mapped_column(LargeBinary, nullable=True)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)
updated_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now(), onupdate=func.now()
)
last_confirmed_at: Mapped[datetime | None] = mapped_column(
DateTime(timezone=True), nullable=True
)
class Plugin(Base):
"""Plugin marketplace catalog entry."""
__tablename__ = "plugins"
id: Mapped[str] = mapped_column(String(255), primary_key=True)
name: Mapped[str] = mapped_column(String(255), nullable=False)
description: Mapped[str] = mapped_column(Text, nullable=False)
version: Mapped[str] = mapped_column(String(50), nullable=False)
author_name: Mapped[str] = mapped_column(String(255), nullable=False)
category: Mapped[str] = mapped_column(String(100), nullable=False)
price_cents: Mapped[int] = mapped_column(Integer, nullable=False, default=0)
permissions: Mapped[str] = mapped_column(Text, nullable=False, default="[]")
status: Mapped[str] = mapped_column(String(50), nullable=False, default="pending")
s3_package_key: Mapped[str | None] = mapped_column(String(500), nullable=True)
install_count: Mapped[int] = mapped_column(Integer, nullable=False, default=0)
avg_rating: Mapped[float] = mapped_column(Float, nullable=False, default=0.0)
created_at: Mapped[datetime] = mapped_column(
DateTime(timezone=True), nullable=False, server_default=func.now()
)

342
api/app/schemas/__init__.py Normal file
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"""Pydantic schemas — API request/response contracts.
Mirrors the TypeScript types from the Electron app (src/shared/api-types.ts).
"""
from __future__ import annotations
from enum import Enum
from typing import Any, Literal
from pydantic import BaseModel, Field
# ── Billing ──────────────────────────────────────────────────────────
BillingTier = Literal["free", "pro", "power", "team"]
# ── Auth ─────────────────────────────────────────────────────────────
class AuthTokens(BaseModel):
access_token: str
refresh_token: str
expires_at: int
class UserProfile(BaseModel):
id: str
email: str
name: str | None = None
surname: str | None = None
tier: BillingTier
avatar_url: str | None = None
has_password: bool = True
onboarding_completed_at: int | None = None # epoch ms, null = not onboarded
memory: dict[str, str] = Field(default_factory=dict) # decrypted core memory k/v
class OAuthAccountInfo(BaseModel):
provider: str
provider_email: str | None = None
created_at: int # epoch ms
# ── Chat ─────────────────────────────────────────────────────────────
class ChatContext(BaseModel):
user_profile: dict[str, Any] = Field(default_factory=dict)
relevant_documents: list[str] = Field(default_factory=list)
recent_tasks: list[dict[str, Any]] = Field(default_factory=list)
conversation_history: list[dict[str, Any]] = Field(default_factory=list)
class ChatRequest(BaseModel):
message: str
context: ChatContext = Field(default_factory=ChatContext)
class ChatResponse(BaseModel):
response: str
# ── WebSocket Frame Protocol ──────────────────────────────────────────
class WsFrameType(str, Enum):
# ── v2 frame types (kept for backward compat) ──────────────────────
chat_request = "chat_request"
text_chunk = "text_chunk"
tool_call = "tool_call"
tool_result = "tool_result"
final = "final"
ping = "ping"
device_hello = "device_hello"
# ── v3 frame types ─────────────────────────────────────────────────
home_request = "home_request"
stream_start = "stream_start"
stream_text = "stream_text"
stream_end = "stream_end"
data_request = "data_request"
data_response = "data_response"
mutation = "mutation"
# ── v4 journey frame types ────────────────────────────────────────
journey_start = "journey_start"
journey_message = "journey_message"
journey_reply = "journey_reply"
# ── v5 brief frame types ──────────────────────────────────────────
brief_request = "brief_request"
# ── v6 task brief frame types ─────────────────────────────────────
task_brief_request = "task_brief_request"
# ── v7 folder index frame types ───────────────────────────────────
index_session_start = "index_session_start"
index_file_batch = "index_file_batch"
index_session_cancel = "index_session_cancel"
index_file_result = "index_file_result"
index_session_progress = "index_session_progress"
index_session_done = "index_session_done"
# ── v8 contextual sidebar frame types ────────────────────────────
contextual_request = "contextual_request"
contextual_scope_update = "contextual_scope_update"
contextual_scope_ack = "contextual_scope_ack"
# ── v9 scout proposal frame types ────────────────────────────────
SCOUT_PROPOSAL = "scout_proposal"
SCOUT_PROPOSAL_ACK = "scout_proposal_ack"
class WsToolCall(BaseModel):
"""Server → Client: requests a CRUD/vector operation on the local DB."""
type: Literal[WsFrameType.tool_call] = WsFrameType.tool_call
id: str
action: str
table: str | None = None
data: dict[str, Any] | None = None
filters: dict[str, Any] | None = None
vector: list[float] | None = None
limit: int | None = None
class WsToolResult(BaseModel):
"""Client → Server: result of a CRUD/vector operation."""
type: Literal[WsFrameType.tool_result] = WsFrameType.tool_result
id: str
row: dict[str, Any] | None = None
rows: list[dict[str, Any]] | None = None
results: list[dict[str, Any]] | None = None
deleted: bool | None = None
ok: bool | None = None
error: str | None = None
class WsTextChunk(BaseModel):
"""Server → Client: incremental LLM response text."""
type: Literal[WsFrameType.text_chunk] = WsFrameType.text_chunk
text: str
class WsFinal(BaseModel):
"""Server → Client: signals end of response with the complete text."""
type: Literal[WsFrameType.final] = WsFrameType.final
response: str
# ── WebSocket Agent Frame Protocol ────────────────────────────────────
class WsDeviceHello(BaseModel):
"""Client → Server: device identification on WS connect."""
type: Literal[WsFrameType.device_hello] = WsFrameType.device_hello
device_id: str
scout_ids: list[str] = Field(default_factory=list)
# ── WebSocket v3 Frame Models ─────────────────────────────────────────
class FormatPrefsModel(BaseModel):
"""User display preferences sent by Electron on each request."""
timezone: str = "UTC"
date_format: str = "dd/MM/yyyy"
time_format: str = "24h"
locale: str = "en-US"
now_iso: str = ""
class WsHomeRequest(BaseModel):
"""Client → Server: Home chat message."""
type: Literal[WsFrameType.home_request] = WsFrameType.home_request
message: str
conversation_history: list[dict[str, Any]] = Field(default_factory=list)
format_prefs: FormatPrefsModel | None = None
class WsBriefRequest(BaseModel):
"""Client → Server: Request a plain-text brief (home or project)."""
type: Literal[WsFrameType.brief_request] = WsFrameType.brief_request
request_id: str | None = None
session_id: str | None = None
mode: Literal["home", "project"]
project_id: str | None = None
format_prefs: FormatPrefsModel | None = None
class WsStreamStart(BaseModel):
"""Server → Client: signals start of a streaming response."""
type: Literal[WsFrameType.stream_start] = WsFrameType.stream_start
request_id: str
class WsStreamText(BaseModel):
"""Server → Client: streamed text token."""
type: Literal[WsFrameType.stream_text] = WsFrameType.stream_text
request_id: str
chunk: str
class WsStreamEnd(BaseModel):
"""Server → Client: signals end of a streaming response."""
type: Literal[WsFrameType.stream_end] = WsFrameType.stream_end
request_id: str
error: str | None = None
mutations: list[dict[str, Any]] | None = None
# ── Scout Config V2 ───────────────────────────────────────────────────
class ScoutContentTypeConfig(BaseModel):
"""Per-type extraction config produced by the journey chatbot."""
id: str
label: str = ""
detection_hint: str = ""
preprocessing: str = "generic" # handler name: "email_html", "plain_text", ...
extraction_prompt: str
class ScoutConfig(BaseModel):
"""Structured scout configuration (replaces freeform prompt_template)."""
content_types: list[ScoutContentTypeConfig] = []
global_rules: list[str] = []
data_types: list[str] = []
# ── Scout Catalog ─────────────────────────────────────────────────────
class ScoutCatalogItem(BaseModel):
type: str
name: str
description: str
class ScoutCreationCheckRequest(BaseModel):
active_agents: int = Field(ge=0, default=0)
class ScoutCreationCheckResponse(BaseModel):
allowed: bool
tier: BillingTier
active_agents: int
limit: int
class ScoutTriggerRequest(BaseModel):
directory: str = Field(min_length=1)
device_id: str = Field(default="")
agent_id: str | None = None # FE stable agent ID (electron-store UUID)
what_to_extract: list[str] = Field(min_length=1)
batch_interval: str = Field(min_length=1)
custom_agent_prompt: str | None = None
agent_config: dict | None = None
active_agents: int = Field(ge=0, default=0)
last_run_at: int | None = None # epoch ms from FE — enables incremental scanning
# ── Scout Run Log ─────────────────────────────────────────────────────
class ScoutRunLogResponse(BaseModel):
id: str
agent_id: str
agent_type: Literal["local", "cloud"]
status: Literal["running", "success", "error", "partial"]
items_processed: int
items_created: int
errors: list[str]
started_at: int
completed_at: int | None
# ── Cloud Scout CRUD ──────────────────────────────────────────────────
class CloudScoutCreateRequest(BaseModel):
name: str
provider: Literal["gmail", "teams", "outlook"]
data_types: list[str] = Field(default_factory=list)
prompt_template: str = ""
schedule_cron: str | None = None # None → server default
filter_config: dict | None = None
auto_trash_spam: bool = False
class CloudScoutUpdateRequest(BaseModel):
name: str | None = None
data_types: list[str] | None = None
prompt_template: str | None = None
schedule_cron: str | None = None
filter_config: dict | None = None
auto_trash_spam: bool | None = None
enabled: bool | None = None
class CloudScoutResponse(BaseModel):
id: str
user_id: str
provider: str
name: str
data_types: list[str]
prompt_template: str
schedule_cron: str
filter_config: dict | None
auto_trash_spam: bool
enabled: bool
last_run_at: int | None
gmail_address: str | None
oauth_connected: bool
created_at: int
updated_at: int
# ── Chatbot Journey ───────────────────────────────────────────────────
# ── Scout Proposal Frame Models ───────────────────────────────────────
class ScoutProposalPayload(BaseModel):
id: str
scout_id: str
source_type: str
source_msg_ref: str
raw_subject: str | None = None
raw_snippet: str | None = None
category: Literal["unprocessed"] = "unprocessed"
payload: dict | None = None
class ScoutProposalFrame(BaseModel):
type: Literal[WsFrameType.SCOUT_PROPOSAL]
proposal: ScoutProposalPayload
class ScoutProposalAckFrame(BaseModel):
type: Literal[WsFrameType.SCOUT_PROPOSAL_ACK]
proposal_id: str

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"""Contextual sidebar scope schema and prompt block renderer.
ContextualScope mirrors the TypeScript ContextualScope type sent by the
Electron renderer when the user opens the side chat anchored to a specific
view. The renderer ships camelCase keys; Pydantic's alias_generator maps
them to snake_case Python attributes automatically.
"""
from __future__ import annotations
from typing import Literal, Optional
from pydantic import BaseModel, ConfigDict
from pydantic.alias_generators import to_camel
PageType = Literal[
"timeline",
"tasks",
"projects-list",
"project",
"note",
]
EntityType = Literal["project", "note", "task", "timeline_event"]
class ContextualScope(BaseModel):
"""Scope payload sent by the Electron renderer for contextual chat.
The renderer ships camelCase keys (entityType, entityId, ...). Pydantic's
alias generator maps them to snake_case Python attrs.
"""
model_config = ConfigDict(populate_by_name=True, alias_generator=to_camel)
page: PageType
entity_type: Optional[EntityType] = None
entity_id: Optional[str] = None
entity_name: Optional[str] = None
project_id: Optional[str] = None
char_count: Optional[int] = None
counts: Optional[dict[str, int]] = None
filters: Optional[dict] = None
def render_scope_block(scope: ContextualScope) -> str:
"""Produce a single-paragraph human-readable summary of the current view
for injection into the contextual agent system prompt.
Never emits internal ids — only names. The LLM is told to use names in
prose; ids travel through tool calls.
"""
if scope.entity_type == "project":
c = scope.counts or {}
return (
f"User is viewing the project {scope.entity_name!r}. "
f"{c.get('tasks', 0)} tasks, "
f"{c.get('notes', 0)} notes, "
f"{c.get('milestones', 0)} milestones."
)
if scope.entity_type == "note":
return (
f"User is viewing the note {scope.entity_name!r} "
f"({scope.char_count or 0} characters)."
)
if scope.page == "tasks":
return "User is viewing the global Tasks list (all projects)."
if scope.page == "timeline":
return "User is viewing the global Timeline view."
if scope.page == "projects-list":
return "User is viewing the Projects list."
return f"User is on page {scope.page}."

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"""Source connector Protocol and shared item types.
A SourceConnector adapts a third-party data source (Gmail, Slack, ...) to the
shared ScoutEngine interface. Each connector owns:
* how to enumerate new items since the last poll (``list_new``)
* how to fetch a single item's metadata cheaply (``fetch_metadata``)
* how to fetch a single item's full content for in-memory triage
(``fetch_content``) — this content MUST NOT be persisted by the engine
* how to archive/trash an item (``archive``) for spam handling
* optional push-notification setup (``setup_watch`` / ``renew_watch``)
"""
from __future__ import annotations
from datetime import datetime
from typing import Literal, Protocol
from pydantic import BaseModel, Field
class ItemRef(BaseModel):
source_msg_ref: str
received_at: datetime | None = None
class ItemMetadata(BaseModel):
subject: str | None = None
sender: str | None = None
snippet: str | None = None
received_at: datetime | None = None
class ItemContent(BaseModel):
metadata: ItemMetadata
body_text: str
raw_headers: dict[str, str] = Field(default_factory=dict)
class TriageVerdict(BaseModel):
verdict: Literal["relevant", "spam"]
reason: str
confidence: float = Field(ge=0.0, le=1.0)
class SourceConnector(Protocol):
"""Adapter for a third-party data source (Gmail, Slack, ...)."""
source_type: str # e.g. "gmail"
async def list_new(self, scout) -> list[ItemRef]: ...
async def fetch_metadata(self, scout, ref: ItemRef) -> ItemMetadata: ...
async def fetch_content(self, scout, ref: ItemRef) -> ItemContent: ...
async def archive(self, scout, ref: ItemRef) -> None: ...
async def setup_watch(self, scout) -> None: ...
async def renew_watch(self, scout) -> None: ...

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"""Gmail SourceConnector — wraps the existing GmailClient.
Responsibilities:
* list_new: incremental fetch since the scout's stored gmail_history_id
* fetch_metadata: subject + sender + snippet only (Gmail metadata format)
* fetch_content: full body text — transient, never persisted by engine
* archive: move a message to Gmail Trash (recoverable for 30 days)
* setup_watch / renew_watch: Gmail push notifications via Pub/Sub
"""
from __future__ import annotations
import asyncio
import logging
from datetime import datetime, timezone
from app.config.settings import settings
from app.integrations import decrypt_token
from app.scouts.connectors.base import ItemContent, ItemMetadata, ItemRef
logger = logging.getLogger(__name__)
def _extract_plain_text_body(payload: dict) -> str:
"""Recursively walk a Gmail message payload to find text/plain content."""
import base64
mime_type = payload.get("mimeType", "")
if mime_type == "text/plain":
data = payload.get("body", {}).get("data", "")
if data:
return base64.urlsafe_b64decode(data + "==").decode("utf-8", errors="replace")
return ""
if mime_type.startswith("multipart/"):
for part in payload.get("parts", []):
text = _extract_plain_text_body(part)
if text:
return text
# text/html fallback: strip tags rudimentarily if no text/plain part
if mime_type == "text/html":
data = payload.get("body", {}).get("data", "")
if data:
import re
html = base64.urlsafe_b64decode(data + "==").decode("utf-8", errors="replace")
return re.sub(r"<[^>]+>", " ", html)
return ""
def _gmail_service_from_token(creds_info: dict):
"""Build a synchronous Gmail API client from a decrypted credentials dict.
Shared by ``_get_gmail_service`` (scout-backed) and the pending-session
OAuth flow which has a raw token but no scout row yet.
"""
from googleapiclient.discovery import build
from google.oauth2.credentials import Credentials
credentials = Credentials(
token=creds_info.get("token"),
refresh_token=creds_info.get("refresh_token"),
token_uri=creds_info.get("token_uri", "https://oauth2.googleapis.com/token"),
client_id=creds_info.get("client_id"),
client_secret=creds_info.get("client_secret"),
scopes=creds_info.get("scopes"),
)
return build("gmail", "v1", credentials=credentials, cache_discovery=False)
def _get_gmail_service(scout):
"""Return a synchronous Google API client for low-level metadata/history calls."""
creds_info = decrypt_token(scout.oauth_token_encrypted)
return _gmail_service_from_token(creds_info)
class GmailConnector:
source_type = "gmail"
# ── list_new ──────────────────────────────────────────────────────────
async def list_new(self, scout) -> list[ItemRef]:
"""Return new message refs since scout.gmail_history_id.
On first run (gmail_history_id is None/empty), records the current
historyId without backfilling — avoids flooding the user with old mail.
Updates scout.gmail_history_id in-place (caller must persist to DB).
"""
def _sync() -> tuple[list[ItemRef], str | None]:
service = _get_gmail_service(scout)
history_id = scout.gmail_history_id
refs: list[ItemRef] = []
new_history_id = history_id
if history_id:
resp = (
service.users()
.history()
.list(
userId="me",
startHistoryId=history_id,
historyTypes=["messageAdded"],
)
.execute()
)
for entry in resp.get("history", []):
for added in entry.get("messagesAdded", []):
refs.append(ItemRef(source_msg_ref=added["message"]["id"]))
new_history_id = resp.get("historyId", history_id)
else:
# First run: capture baseline history id without backfilling.
profile = service.users().getProfile(userId="me").execute()
new_history_id = profile["historyId"]
return refs, new_history_id
refs, new_history_id = await asyncio.to_thread(_sync)
if new_history_id and new_history_id != scout.gmail_history_id:
scout.gmail_history_id = new_history_id
return refs
# ── fetch_metadata ────────────────────────────────────────────────────
async def fetch_metadata(self, scout, ref: ItemRef) -> ItemMetadata:
"""Fetch subject, sender, snippet only — uses Gmail metadata format (no body)."""
def _sync() -> ItemMetadata:
service = _get_gmail_service(scout)
msg = (
service.users()
.messages()
.get(
userId="me",
id=ref.source_msg_ref,
format="metadata",
metadataHeaders=["Subject", "From", "Date"],
)
.execute()
)
headers = {
h["name"]: h["value"]
for h in msg.get("payload", {}).get("headers", [])
}
return ItemMetadata(
subject=headers.get("Subject"),
sender=headers.get("From"),
snippet=msg.get("snippet"),
received_at=None,
)
return await asyncio.to_thread(_sync)
# ── fetch_content ─────────────────────────────────────────────────────
async def fetch_content(self, scout, ref: ItemRef) -> ItemContent:
"""Fetch full body text for a single message — transient, must not be persisted."""
def _sync() -> ItemContent:
service = _get_gmail_service(scout)
msg = service.users().messages().get(
userId="me", id=ref.source_msg_ref, format="full",
).execute()
headers = {h["name"]: h["value"] for h in msg.get("payload", {}).get("headers", [])}
body_text = _extract_plain_text_body(msg.get("payload", {}))
return ItemContent(
metadata=ItemMetadata(
subject=headers.get("Subject"),
sender=headers.get("From"),
snippet=msg.get("snippet"),
received_at=None,
),
body_text=body_text,
raw_headers=headers,
)
return await asyncio.to_thread(_sync)
# ── archive ───────────────────────────────────────────────────────────
async def archive(self, scout, ref: ItemRef) -> None:
"""Move the message to Gmail Trash (recoverable for 30 days)."""
def _sync() -> None:
service = _get_gmail_service(scout)
service.users().messages().trash(
userId="me", id=ref.source_msg_ref
).execute()
await asyncio.to_thread(_sync)
# ── watch management ──────────────────────────────────────────────────
async def setup_watch(self, scout) -> None:
"""Register a Gmail Pub/Sub push watch for the INBOX label.
Requires ``settings.GMAIL_PUBSUB_TOPIC`` to be set to the full topic
resource name (e.g. ``projects/my-project/topics/gmail-push``).
Logs a warning and returns without error if the topic is not configured.
"""
topic = settings.GMAIL_PUBSUB_TOPIC
if not topic:
logger.warning(
"setup_watch: GMAIL_PUBSUB_TOPIC is not configured — skipping watch setup"
)
return
def _sync() -> None:
service = _get_gmail_service(scout)
request_body = {
"labelIds": ["INBOX"],
"topicName": topic,
}
resp = service.users().watch(userId="me", body=request_body).execute()
scout.gmail_history_id = resp.get("historyId")
expiration_ms = resp.get("expiration")
if expiration_ms:
scout.gmail_watch_expires_at = datetime.fromtimestamp(
int(expiration_ms) / 1000, tz=timezone.utc
)
await asyncio.to_thread(_sync)
async def renew_watch(self, scout) -> None:
"""Renew an existing Gmail Pub/Sub watch (same as setup_watch)."""
await self.setup_watch(scout)
async def list_labels(self, scout) -> list[dict]:
"""Return the account's Gmail labels as [{id, name}]. Empty if no token."""
if not scout.oauth_token_encrypted:
return []
def _sync() -> list[dict]:
service = _get_gmail_service(scout)
resp = service.users().labels().list(userId="me").execute()
return [{"id": lbl["id"], "name": lbl["name"]} for lbl in resp.get("labels", [])]
return await asyncio.to_thread(_sync)
async def stop_watch(self, scout) -> None:
"""Stop Gmail push notifications. Swallows errors (watch may be gone)."""
if not scout.oauth_token_encrypted:
return
def _sync() -> None:
service = _get_gmail_service(scout)
service.users().stop(userId="me").execute()
try:
await asyncio.to_thread(_sync)
except Exception:
logger.exception("stop_watch failed for scout %s", scout.id)

View File

@@ -0,0 +1,32 @@
"""Connector registry — single source of truth for source_type -> connector."""
from __future__ import annotations
from typing import Any
_CONNECTORS: dict[str, Any] = {}
def register_connector(connector: Any) -> None:
"""Register a SourceConnector instance under its ``source_type``.
Calling twice with the same ``source_type`` replaces the prior entry —
useful for tests and hot-reload, but in production each connector
should be registered exactly once at startup.
"""
if not getattr(connector, "source_type", None):
raise ValueError("Connector must declare a non-empty source_type")
_CONNECTORS[connector.source_type] = connector
def get_connector(source_type: str) -> Any:
"""Return the registered connector for ``source_type`` or raise KeyError."""
try:
return _CONNECTORS[source_type]
except KeyError as exc:
raise KeyError(f"No connector registered for source_type {source_type!r}") from exc
def _reset_for_tests() -> None:
"""Clear the registry — for use in pytest fixtures only."""
_CONNECTORS.clear()

273
api/app/scouts/engine.py Normal file
View File

@@ -0,0 +1,273 @@
"""ScoutEngine — orchestrates triage, queueing, and delivery for cloud scouts.
Triage flow per scout:
1. Resolve scout config from the DB.
2. Skip if device hasn't connected within ``device_inactivity_pause_days``.
3. Ask the connector to ``list_new`` — fresh items since last poll.
4. For each item:
- skip if already in the queue (idempotent on (scout_id, source_msg_ref))
- fetch the full content via the connector (transient, never persisted)
- run the triage LLM call → relevant | spam
- spam + auto_trash_spam → connector.archive
- relevant → INSERT scout_triage_queue row
5. Update scout.last_run_at.
Delivery flow on Electron WS reconnect:
- drain ``status='queued'`` rows for the user
- fetch metadata-only for each (subject + snippet)
- send a ``scout_proposal`` frame
- flip status to ``delivered`` on ack
"""
from __future__ import annotations
import logging
import uuid
from datetime import datetime, timedelta, timezone
from sqlalchemy import select
from sqlalchemy.exc import IntegrityError
from app.core.langfuse_client import extract_usage, get_langfuse, get_prompt_or_fallback
from app.core.llm import get_llm
from app.db import async_session
from app.models import CloudScoutConfig, ScoutTriageQueue
from app.scouts.connectors.base import ItemContent, ItemRef, TriageVerdict
from app.scouts.connectors.registry import get_connector
logger = logging.getLogger(__name__)
QUEUE_TTL_DAYS = 30
class ScoutEngine:
def __init__(self, session_factory=None) -> None:
self._session_factory = session_factory or async_session
async def trigger_scout(self, scout_id: uuid.UUID) -> None:
async with self._session_factory() as session:
scout = await session.get(CloudScoutConfig, str(scout_id))
if scout is None:
logger.warning("trigger_scout: no such scout id=%s", scout_id)
return
if not scout.enabled:
return
# Device-inactivity pause check is a simple heuristic on last_run_at —
# the device-online signal lives in the DeviceConnectionManager and is
# consulted at delivery time. For triage, we only check that the
# configured pause threshold isn't suppressing the run.
connector = get_connector(scout.provider)
try:
refs = await connector.list_new(scout)
except Exception:
logger.exception("scout %s: list_new failed", scout.id)
return
for ref in refs:
await self._process_item(session, scout, connector, ref)
scout.last_run_at = datetime.now(tz=timezone.utc)
await session.commit()
async def _process_item(
self,
session,
scout: CloudScoutConfig,
connector,
ref: ItemRef,
) -> None:
# Idempotency check
existing = await session.execute(
select(ScoutTriageQueue.id).where(
ScoutTriageQueue.scout_id == scout.id,
ScoutTriageQueue.source_msg_ref == ref.source_msg_ref,
)
)
if existing.first() is not None:
return
try:
content = await connector.fetch_content(scout, ref)
except Exception:
logger.exception("scout %s: fetch_content failed for %s", scout.id, ref.source_msg_ref)
return
try:
verdict = await self._triage_llm(scout, content)
except Exception:
logger.exception("scout %s: triage_llm failed for %s", scout.id, ref.source_msg_ref)
return
if verdict.verdict == "spam":
if scout.auto_trash_spam:
try:
await connector.archive(scout, ref)
except Exception:
logger.exception("scout %s: archive failed for %s", scout.id, ref.source_msg_ref)
return
now = datetime.now(tz=timezone.utc)
row = ScoutTriageQueue(
id=str(uuid.uuid4()),
user_id=scout.user_id,
scout_id=scout.id,
source_type=connector.source_type,
source_msg_ref=ref.source_msg_ref,
triage_verdict=verdict.verdict,
triage_reason=verdict.reason,
status="queued",
triaged_at=now,
expires_at=now + timedelta(days=QUEUE_TTL_DAYS),
)
session.add(row)
try:
# Use a savepoint so an IntegrityError on race doesn't poison the
# outer session — works on both PostgreSQL (SAVEPOINT) and SQLite.
async with session.begin_nested():
await session.flush()
except IntegrityError:
# Race: another worker inserted between our SELECT and INSERT.
# The unique constraint did its job; safe to ignore.
logger.debug(
"scout %s: idempotent skip for %s (race on unique constraint)",
scout.id,
ref.source_msg_ref,
)
async def deliver_pending(self, user_id: uuid.UUID, ws) -> None:
"""Drain status='queued' rows for user, send scout_proposal WS frames, flip to 'delivered'."""
from app.scouts.connectors.base import ItemRef # noqa: PLC0415
async with self._session_factory() as session:
rows = (await session.execute(
select(ScoutTriageQueue).where(
ScoutTriageQueue.user_id == str(user_id),
ScoutTriageQueue.status == "queued",
)
)).scalars().all()
logger.info("deliver_pending: user=%s found %d queued rows", user_id, len(rows))
for row in rows:
try:
connector = get_connector(row.source_type)
except KeyError:
logger.warning("deliver_pending: no connector for %s", row.source_type)
continue
scout = await session.get(CloudScoutConfig, row.scout_id)
if scout is None:
continue
try:
meta = await connector.fetch_metadata(scout, ItemRef(source_msg_ref=row.source_msg_ref))
except Exception:
logger.exception("deliver_pending: fetch_metadata failed")
continue
payload = {
"type": "scout_proposal",
"proposal": {
"id": row.id,
"scout_id": row.scout_id,
"source_type": row.source_type,
"source_msg_ref": row.source_msg_ref,
"raw_subject": meta.subject,
"raw_snippet": meta.snippet,
"category": "unprocessed",
"payload": None,
},
}
logger.info("deliver_pending: sending proposal id=%s subject=%r", row.id, meta.subject)
await ws.send_json(payload)
logger.info("deliver_pending: send_json returned for proposal id=%s", row.id)
row.status = "delivered"
row.delivered_at = datetime.now(tz=timezone.utc)
await session.commit()
async def ack_proposal(self, proposal_id: str) -> None:
"""Flip a delivered proposal to acked. Idempotent — no-op if already acked."""
async with self._session_factory() as session:
row = await session.get(ScoutTriageQueue, proposal_id)
if row is None:
return
row.status = "acked"
row.acked_at = datetime.now(tz=timezone.utc)
await session.commit()
async def _triage_llm(self, scout: CloudScoutConfig, content: ItemContent) -> TriageVerdict:
"""Call the scout-triage-system Langfuse prompt to classify an item as relevant or spam.
Uses gpt-4o-mini with JSON mode. Wraps the LLM call in a Langfuse generation
observation when Langfuse is configured.
"""
import json # noqa: PLC0415
from langchain_core.messages import HumanMessage, SystemMessage # noqa: PLC0415
_TRIAGE_FALLBACK = (
"You are a triage classifier for an executive-assistant scout that watches a "
"{source_type} feed.\n"
'The scout\'s purpose is: "{scout_purpose}".\n\n'
"Given one item, decide whether it is RELEVANT (worth surfacing to the user as a "
"potential task / event / note / project) or SPAM (advertising, mass marketing, "
"phishing, bulk notifications with no actionable content).\n\n"
"Item:\n"
" - Subject: {item_subject}\n"
" - From: {item_sender}\n"
" - Body (truncated): {item_body_truncated_2k}\n\n"
'Return JSON only, matching this schema:\n'
' {{"verdict": "relevant" | "spam", "reason": <short string>, "confidence": <0..1>}}\n\n'
"Be conservative on \"spam\" — if a message could plausibly be a personal/work "
"email, mark it relevant."
)
template, prompt_obj = get_prompt_or_fallback("scout-triage-system", _TRIAGE_FALLBACK)
body_trunc = (content.body_text or "")[:2000]
variables = dict(
source_type=scout.provider,
scout_purpose=scout.prompt_template or "",
item_subject=content.metadata.subject or "",
item_sender=content.metadata.sender or "",
item_body_truncated_2k=body_trunc,
)
if prompt_obj is not None:
try:
system_text = prompt_obj.compile(**variables)
if isinstance(system_text, list):
system_text = "\n".join(
m.get("content", "") for m in system_text if isinstance(m, dict)
)
except Exception as exc:
logger.warning("scout triage: compile failed: %s", exc)
system_text = template.replace("{{source_type}}", variables["source_type"]) \
.replace("{{scout_purpose}}", variables["scout_purpose"]) \
.replace("{{item_subject}}", variables["item_subject"]) \
.replace("{{item_sender}}", variables["item_sender"]) \
.replace("{{item_body_truncated_2k}}", variables["item_body_truncated_2k"])
else:
system_text = template.format(**variables)
llm = get_llm(model="gpt-4o-mini", temperature=0)
llm_json = llm.bind(response_format={"type": "json_object"}) # type: ignore[attr-defined]
messages = [
SystemMessage(content=system_text),
HumanMessage(content="Classify this item."),
]
lf = get_langfuse()
if lf:
with lf.start_as_current_observation(
as_type="generation",
name="scout-triage",
model="gpt-4o-mini",
prompt=prompt_obj,
input=messages,
) as gen:
response = await llm_json.ainvoke(messages)
gen.update(output=response.content, usage=extract_usage(response))
else:
response = await llm_json.ainvoke(messages)
data = json.loads(response.content)
return TriageVerdict(**data)

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