7 Commits

Author SHA1 Message Date
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
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
8 changed files with 536 additions and 1 deletions

View File

@@ -42,8 +42,9 @@ from sqlalchemy import update
from app.api.routes.agent_setup import handle_journey_message, handle_journey_start from app.api.routes.agent_setup import handle_journey_message, handle_journey_start
from app.config.settings import settings from app.config.settings import settings
from app.core.agent_runner import trigger_pending_runs from app.core.agent_runner import trigger_pending_runs
from app.core.agent_session_buffer import session_buffer
from app.core.brief_agent import run_home_brief, run_project_brief from app.core.brief_agent import run_home_brief, run_project_brief
from app.core.deep_agent import run_floating_stream, run_home_stream, run_task_brief_research_stream from app.core.deep_agent import run_contextual_stream, run_floating_stream, run_home_stream, run_task_brief_research_stream
from app.core.output_formatter import extract_canvas_block from app.core.output_formatter import extract_canvas_block
from app.core.device_manager import device_manager from app.core.device_manager import device_manager
from app.core.memory_middleware import MemoryMiddleware from app.core.memory_middleware import MemoryMiddleware
@@ -52,6 +53,7 @@ from app.core.ws_context import clear_client_executor, set_client_executor
from app.db import async_session from app.db import async_session
from app.models import AgentRunLog from app.models import AgentRunLog
from app.schemas import WsFrameType, WsStreamEnd from app.schemas import WsFrameType, WsStreamEnd
from app.schemas.contextual import ContextualScope, render_scope_block
logger = logging.getLogger(__name__) logger = logging.getLogger(__name__)
@@ -197,6 +199,16 @@ async def _message_loop(websocket: WebSocket, user_id: str) -> None:
elif frame_type == WsFrameType.index_session_cancel: elif frame_type == WsFrameType.index_session_cancel:
await _handle_index_session_cancel(websocket, frame) 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 == "pong": elif frame_type == "pong":
# Heartbeat ack — nothing to do, connection is alive. # Heartbeat ack — nothing to do, connection is alive.
pass pass
@@ -359,6 +371,122 @@ async def _handle_floating_request(
) )
# ── 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.agent_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( async def _handle_brief_request(
websocket: WebSocket, websocket: WebSocket,
user_id: str, user_id: str,

View File

@@ -54,6 +54,43 @@ class _SessionBuffer:
with self._lock: with self._lock:
self._store.pop((user_id, session_id), None) 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 # Module-level singleton — same pattern as _pending_states in api/app/api/routes/auth.py
session_buffer = _SessionBuffer() session_buffer = _SessionBuffer()

View File

@@ -392,6 +392,26 @@ For specific dates not listed, compute local-midnight in the user timezone and c
{request_context}\ {request_context}\
""" """
_CONTEXTUAL_SYSTEM_PROMPT = """You are adiuvAI's contextual assistant. The user is working inside the app and has opened a side chat anchored to a specific view ("current view"). Help them act on that view: recap, plan, create entities, answer questions.
Rules:
1. Base context (current view summary) is provided every turn. Treat it as ground truth for ids and names; never invent them.
2. ALL reads go through `get_page_details`. The legacy tools `list_projects`, `get_project`, `list_tasks`, `get_task`, `list_notes`, `get_note` are NOT available in this channel — do not attempt to call them. To find an entity by name, call `get_page_details({entityType: 'projects_all' | 'tasks_all' | 'timeline_all'})` to list, then `get_page_details({entityType: '<type>', entityId})` for the full snapshot.
3. When the user requests an action that creates or updates an entity:
- If the current view is a project and no project is specified, use the current project automatically.
- If the current view is the global Tasks / Projects / Timeline list and no project is specified, ASK before attaching to any project. Don't silently create orphan entities.
4. The current view can change mid-conversation (user navigates). When you see a system message "User navigated to ...", treat the new view as the active context. Prior turns remain visible but the active scope shifts.
5. Notes: you can read note bodies via `get_page_details({entityType:'note'})`. You CANNOT edit, summarize-to-replace, or append. Tell the user "note editing is coming in a later release" if asked.
6. Be concise. Default to 1-3 short paragraphs. Bullet lists fine. Don't restate the user's request.
7. Never expose ids in prose. Use names. Ids only travel through tool calls.
# Date context
{date_context}
# Language
{language_instruction}
"""
_TASK_BRIEF_RESEARCH_SYSTEM_PROMPT = """\ _TASK_BRIEF_RESEARCH_SYSTEM_PROMPT = """\
You are an executive assistant preparing a briefing dossier for your principal before they act on a specific task. You are an executive assistant preparing a briefing dossier for your principal before they act on a specific task.
Your job: gather all relevant context, synthesize it into a tight actionable dossier, and — if the task requires writing (email, message, document) — produce a ready-to-use draft.{user_identity} Your job: gather all relevant context, synthesize it into a tight actionable dossier, and — if the task requires writing (email, message, document) — produce a ready-to-use draft.{user_identity}
@@ -556,6 +576,55 @@ def _all_tools() -> list[Any]:
return [*TASK_TOOLS, *PROJECT_TOOLS, *NOTE_TOOLS, *TIMELINE_TOOLS] return [*TASK_TOOLS, *PROJECT_TOOLS, *NOTE_TOOLS, *TIMELINE_TOOLS]
# ── Contextual sidebar tools ──────────────────────────────────────────
@tool
async def get_page_details(
entity_type: str = "",
entity_id: str = "",
) -> str:
"""Fetch full details for the entity currently in view.
entity_type: one of 'project' | 'task' | 'note' | 'timeline_event' |
'tasks_all' | 'projects_all' | 'timeline_all'.
entity_id: UUID of the entity for singular entity views. Omit for list views.
The Electron drizzle-executor fulfils this op against local SQLite and
returns the row(s) as a JSON tool result.
"""
result = await execute_on_client(
action="get_page_details",
table=entity_type or "unknown",
data={"entityId": entity_id or None},
)
if not result:
return "No details found."
return str(result)
def _contextual_tools(user_id: str, trace_id: str | None) -> list[Any]:
"""Return the tool palette for the contextual sidebar agent.
Read ops go through get_page_details only — legacy list_*/get_* tools
return shallow snapshots and cause the agent to under-answer (see
smoke trace 0b46841484ba7d024ed9f8d5ac8b1df0). Writes are limited
to entity creation + task update; note edits are next-sprint.
"""
from app.agents.note_agent import create_note # noqa: PLC0415
from app.agents.task_agent import create_task, update_task # noqa: PLC0415
from app.agents.timeline_agent import create_timeline # noqa: PLC0415
return [
get_page_details,
create_task,
update_task,
create_note,
create_timeline,
*_memory_tools(user_id, trace_id),
]
def _trace_id_from_context(context: dict[str, Any]) -> str | None: def _trace_id_from_context(context: dict[str, Any]) -> str | None:
debug = context.get("_debug") debug = context.get("_debug")
if isinstance(debug, dict): if isinstance(debug, dict):
@@ -1522,6 +1591,49 @@ async def run_floating_stream(
yield "token", _fallback_from_raw_floating_text("".join(raw_chunks)) yield "token", _fallback_from_raw_floating_text("".join(raw_chunks))
async def run_contextual_stream(
user_id: str,
message: str,
context: dict[str, Any],
scope: "ContextualScope", # type: ignore[name-defined]
) -> AsyncGenerator[tuple[str, Any], None]:
"""Run the contextual agent for a single user turn.
Mirrors run_floating_stream's plumbing but injects the rendered scope
block into the system prompt and exposes the contextual tool set.
Note-edit tools (propose_note_edit) are intentionally excluded.
*context contract*: callers MUST include ``context["_debug"]["session_id"]``
(a non-empty str) so that ``_session_id_from_context`` can extract it for
tracing and episode storage downstream. The WS handler in device_ws.py
satisfies this by always populating ``_debug`` before calling this function.
"""
from app.schemas.contextual import ContextualScope, render_scope_block # noqa: PLC0415
prepared_context = await _prepare_context(message, context)
trace_id = _trace_id_from_context(prepared_context)
system_prompt, langfuse_prompt = _build_system_prompt(
"contextual_system", _CONTEXTUAL_SYSTEM_PROMPT, prepared_context,
)
scope_block = render_scope_block(scope)
system_prompt = system_prompt + f"\n\n## Current view\n{scope_block}"
tools = _contextual_tools(user_id, trace_id)
async for event in _run_single_agent_stream(
user_id=user_id,
system_prompt=system_prompt,
message=message,
context=prepared_context,
langfuse_prompt=langfuse_prompt,
agent_name="contextual-agent",
tools=tools,
conversation_history=context.get("conversation_history"),
):
yield event
async def run_task_brief_research_stream( async def run_task_brief_research_stream(
user_id: str, user_id: str,
task_id: str, task_id: str,

View File

@@ -96,6 +96,10 @@ class WsFrameType(str, Enum):
index_file_result = "index_file_result" index_file_result = "index_file_result"
index_session_progress = "index_session_progress" index_session_progress = "index_session_progress"
index_session_done = "index_session_done" 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"
class WsToolCall(BaseModel): class WsToolCall(BaseModel):

73
app/schemas/contextual.py Normal file
View File

@@ -0,0 +1,73 @@
"""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}."

View File

@@ -0,0 +1,52 @@
import pytest
from app.schemas.contextual import ContextualScope, render_scope_block
def test_render_project_scope():
scope = ContextualScope(
page="project",
entity_type="project",
entity_id="p1",
entity_name="Acme Q3 launch",
counts={"tasks": 12, "notes": 4, "milestones": 3},
)
block = render_scope_block(scope)
assert "Acme Q3 launch" in block
assert "12 tasks" in block
assert "4 notes" in block
assert "3 milestones" in block
assert "p1" not in block
def test_render_list_scope_no_entity():
scope = ContextualScope(page="tasks", entity_type=None)
block = render_scope_block(scope)
assert "tasks" in block.lower()
assert "None" not in block
def test_render_note_scope_includes_char_count():
scope = ContextualScope(
page="note",
entity_type="note",
entity_id="n1",
entity_name="Meeting 14 May",
project_id="p1",
char_count=4280,
)
block = render_scope_block(scope)
assert "Meeting 14 May" in block
assert "4280" in block or "4,280" in block
def test_parses_camelcase_payload_from_renderer():
payload = {
"page": "project",
"entityType": "project",
"entityId": "p1",
"entityName": "Acme",
"counts": {"tasks": 5, "notes": 1, "milestones": 2},
}
scope = ContextualScope.model_validate(payload)
assert scope.entity_id == "p1"
assert scope.entity_name == "Acme"

View File

@@ -0,0 +1,44 @@
"""Tests for contextual WS frame handlers.
These tests only exercise the new handler functions in device_ws.py and do
not depend on litellm or the full deep_agent import chain. They monkeypatch
run_contextual_stream so no LLM call is made.
"""
import pytest
from unittest.mock import AsyncMock, MagicMock, patch
@pytest.mark.asyncio
async def test_handle_contextual_scope_update_appends_system_message_no_llm(monkeypatch):
"""_handle_contextual_scope_update must:
- call append_system_message on the session buffer
- send a contextual_scope_ack back on the socket
- make no LLM call
"""
from app.api.routes import device_ws
ws = AsyncMock()
buffer = MagicMock()
buffer.append_system_message = MagicMock()
payload = {
"type": "contextual_scope_update",
"session_id": "s1",
"scope": {
"page": "project",
"entityType": "project",
"entityId": "p1",
"entityName": "Acme",
"counts": {"tasks": 1, "notes": 0, "milestones": 0},
},
}
monkeypatch.setattr(device_ws, "get_session_buffer", lambda *a, **kw: buffer)
await device_ws._handle_contextual_scope_update(ws, "user1", payload)
ws.send_text.assert_awaited_once()
import json
sent = json.loads(ws.send_text.await_args.args[0])
assert sent["type"] == "contextual_scope_ack"
assert sent["session_id"] == "s1"
buffer.append_system_message.assert_called_once()

View File

@@ -0,0 +1,85 @@
"""Tests for run_contextual_stream.
These tests monkeypatch _run_single_agent_stream (the actual internal runner)
rather than the plan's fictional _run_agent_loop, matching the real
deep_agent.py architecture.
"""
import pytest
from unittest.mock import AsyncMock, MagicMock, patch
from app.schemas.contextual import ContextualScope
@pytest.mark.asyncio
async def test_run_contextual_stream_includes_scope_block(monkeypatch):
"""run_contextual_stream must inject the scope block into the system prompt
and include get_page_details in the tool list while excluding note-edit tools."""
import app.core.deep_agent as deep_agent
captured = {}
async def fake_stream(
*,
user_id,
system_prompt,
message,
context,
agent_name="agent",
tools=None,
conversation_history=None,
**kwargs,
):
captured["sys"] = system_prompt
captured["tool_names"] = [getattr(t, "name", str(t)) for t in (tools or [])]
captured["agent_name"] = agent_name
# Async generator that yields nothing — still satisfies the protocol.
if False:
yield # pragma: no cover
monkeypatch.setattr(deep_agent, "_run_single_agent_stream", fake_stream)
scope = ContextualScope(
page="project",
entity_type="project",
entity_id="p1",
entity_name="Acme",
counts={"tasks": 1, "notes": 0, "milestones": 0},
)
context = {
"conversation_history": [],
"_debug": {"session_id": "s1"},
}
results = []
async for item in deep_agent.run_contextual_stream(
user_id="user1",
message="hi",
context=context,
scope=scope,
):
results.append(item)
assert "Acme" in captured["sys"], "scope block must appear in system prompt"
assert "Current view" in captured["sys"], "section header must be present"
names = captured["tool_names"]
assert "get_page_details" in names, "get_page_details tool must be included"
# Entity-create tools: at least one of these must be present.
assert any(n in names for n in ("create_task", "create_note", "update_task")), (
"at least one entity-create tool must be present"
)
assert "create_timeline" in names, "create_timeline tool must be included"
# Note edit tools must NOT be exposed.
assert "propose_note_edit" not in names, "propose_note_edit must be excluded"
# Legacy read tools must be excluded — they return shallow snapshots and
# cause the agent to under-answer (see trace 0b46841484ba7d024ed9f8d5ac8b1df0).
assert "list_projects" not in names, "list_projects must be excluded (legacy read)"
assert "get_project" not in names, "get_project must be excluded (legacy read)"
assert "list_tasks" not in names, "list_tasks must be excluded (legacy read)"
assert "get_task" not in names, "get_task must be excluded (legacy read)"
assert "list_notes" not in names, "list_notes must be excluded (legacy read)"
assert "get_note" not in names, "get_note must be excluded (legacy read)"