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.
This commit is contained in:
@@ -87,21 +87,21 @@ def reg() -> AgentRegistry:
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class TestClassifyIntent:
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@pytest.mark.asyncio
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async def test_routes_to_known_agent(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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result = await classify_intent("add a task", {}, reg)
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assert result == "task_agent"
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@pytest.mark.asyncio
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async def test_routes_to_calendar_agent(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("calendar_agent")
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result = await classify_intent("schedule a meeting", {}, reg)
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assert result == "calendar_agent"
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@pytest.mark.asyncio
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async def test_falls_back_on_unknown_name(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("nonexistent_agent")
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result = await classify_intent("do something", {}, reg)
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assert result == "task_agent"
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@@ -110,14 +110,14 @@ class TestClassifyIntent:
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async def test_empty_registry_returns_fallback_without_llm_call(self) -> None:
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empty_reg = AgentRegistry()
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# No LLM should be instantiated — early return path
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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result = await classify_intent("anything", {}, empty_reg)
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mock_cls.assert_not_called()
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assert result == "task_agent"
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@pytest.mark.asyncio
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async def test_whitespace_stripped_from_response(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm(" task_agent \n")
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result = await classify_intent("create task", {}, reg)
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assert result == "task_agent"
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@@ -154,7 +154,7 @@ class TestRouteSingle:
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class TestRoutePipeline:
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@pytest.mark.asyncio
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async def test_returns_chat_response(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("synthesized result")
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result = await route_pipeline(
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["task_agent", "calendar_agent"], "plan my week", {}, reg
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@@ -163,7 +163,7 @@ class TestRoutePipeline:
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@pytest.mark.asyncio
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async def test_response_is_synthesis_output(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("synthesized result")
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result = await route_pipeline(
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["task_agent", "calendar_agent"], "plan my week", {}, reg
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@@ -193,7 +193,7 @@ class TestRoutePipeline:
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reg.register(_CapturingAgent)
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("done")
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await route_pipeline(["task_agent", "capture"], "hi", {}, reg)
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@@ -204,7 +204,7 @@ class TestRoutePipeline:
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@pytest.mark.asyncio
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async def test_single_agent_pipeline(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("single result")
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result = await route_pipeline(["task_agent"], "one agent", {}, reg)
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assert result.response == "single result"
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@@ -218,7 +218,7 @@ class TestOrchestrate:
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async def test_direct_mode_returns_chat_response(
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self, reg: AgentRegistry
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) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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request = ChatRequest(message="add a task", execution_mode="direct")
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result = await orchestrate(request, reg)
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@@ -226,7 +226,7 @@ class TestOrchestrate:
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@pytest.mark.asyncio
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async def test_direct_mode_response_content(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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request = ChatRequest(message="add a task", execution_mode="direct")
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result = await orchestrate(request, reg)
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@@ -237,7 +237,7 @@ class TestOrchestrate:
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async def test_plan_mode_returns_execution_plan(
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self, reg: AgentRegistry
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) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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request = ChatRequest(message="plan my tasks", execution_mode="plan")
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result = await orchestrate(request, reg)
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@@ -247,7 +247,7 @@ class TestOrchestrate:
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async def test_plan_mode_agent_matches_classified(
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self, reg: AgentRegistry
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) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("calendar_agent")
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request = ChatRequest(
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message="schedule something", execution_mode="plan"
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@@ -258,7 +258,7 @@ class TestOrchestrate:
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@pytest.mark.asyncio
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async def test_plan_mode_has_steps(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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request = ChatRequest(message="plan tasks", execution_mode="plan")
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result = await orchestrate(request, reg)
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@@ -269,7 +269,7 @@ class TestOrchestrate:
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async def test_plan_mode_template_id_contains_agent_name(
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self, reg: AgentRegistry
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) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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request = ChatRequest(message="plan tasks", execution_mode="plan")
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result = await orchestrate(request, reg)
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@@ -281,7 +281,7 @@ class TestOrchestrate:
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async def test_default_execution_mode_is_direct(
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self, reg: AgentRegistry
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) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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# execution_mode defaults to "direct"
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request = ChatRequest(message="help me")
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@@ -295,7 +295,7 @@ class TestOrchestrate:
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class TestOrchestrateStream:
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@pytest.mark.asyncio
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async def test_yields_at_least_one_chunk(self, reg: AgentRegistry) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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request = ChatRequest(message="add a task", execution_mode="direct")
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chunks = [chunk async for chunk in orchestrate_stream(request, reg)]
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@@ -305,7 +305,7 @@ class TestOrchestrateStream:
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async def test_last_chunk_is_final_json_frame(
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self, reg: AgentRegistry
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) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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request = ChatRequest(message="add a task", execution_mode="direct")
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chunks = [chunk async for chunk in orchestrate_stream(request, reg)]
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@@ -319,7 +319,7 @@ class TestOrchestrateStream:
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async def test_final_frame_response_matches_agent_output(
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self, reg: AgentRegistry
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) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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request = ChatRequest(message="create a task", execution_mode="direct")
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chunks = [chunk async for chunk in orchestrate_stream(request, reg)]
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@@ -331,7 +331,7 @@ class TestOrchestrateStream:
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async def test_text_chunks_before_final_frame(
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self, reg: AgentRegistry
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) -> None:
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with patch("app.core.orchestrator.ChatOpenAI") as mock_cls:
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with patch("app.core.orchestrator._make_llm") as mock_cls:
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mock_cls.return_value = _mock_llm("task_agent")
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request = ChatRequest(
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message="x" * 200, execution_mode="direct"
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