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be0eae9825
* fix(runtime): suppress tool execution when provider safety-terminates with tool_calls When a provider stops generation for safety reasons (OpenAI/Moonshot finish_reason=content_filter, Anthropic stop_reason=refusal, Gemini finish_reason=SAFETY/BLOCKLIST/PROHIBITED_CONTENT/SPII/RECITATION/ IMAGE_SAFETY/...), the response may still carry truncated tool_calls. LangChain's tool router treats any non-empty tool_calls as executable, so partial arguments (e.g. write_file with a half-finished markdown) get dispatched and the agent loops on retry. Add SafetyFinishReasonMiddleware at after_model: detect safety termination via a pluggable detector registry, clear both structured tool_calls and raw additional_kwargs.tool_calls / function_call, preserve response_metadata.finish_reason for downstream observers, stamp additional_kwargs.safety_termination for traces, append a user-facing explanation to message content (list-aware for thinking blocks), and emit a safety_termination custom stream event so SSE consumers can reconcile any "tool starting..." UI. Default detectors cover OpenAI-compatible content_filter, Anthropic refusal, and Gemini safety enums (text + image). Custom providers are added via reflection (same pattern as guardrails). Wired into both lead-agent and subagent runtimes. Closes #3028 * fix(runtime): persist safety_termination as a middleware audit event Address review on #3035: the SSE custom event is great for live consumers but invisible to post-run audit. RunEventStore should carry its own row so operators can answer "which runs were safety-suppressed today?" from a single SQL query without joining the message body. Worker now exposes the run-scoped RunJournal via runtime.context["__run_journal"] (sentinel key, internal channel). SafetyFinishReasonMiddleware calls the previously-unused RunJournal.record_middleware, which emits event_type = "middleware:safety_termination" category = "middleware" content = {name, hook, action, changes={ detector, reason_field, reason_value, suppressed_tool_call_count, suppressed_tool_call_names, suppressed_tool_call_ids, message_id, extras}} Tool *arguments* are deliberately excluded — those are the very content the provider filtered and persisting them would defeat the purpose of the safety filter (per review note in #3035). Graceful skips when journal is absent (subagent runtime, unit tests, no-event-store local dev). Journal exceptions never propagate into the agent loop. Refs #3028 * fix(runtime): satisfy ruff format + address Copilot review - ruff format on safety_finish_reason_config.py and e2e demo (CI lint failed on ruff format --check; backend Makefile lint target runs ruff check AND ruff format --check). - Docstring on SafetyFinishReasonConfig now says resolve_variable to match the actual loader used in from_config (the wording was resolve_class previously; behavior is unchanged — resolve_variable mirrors how guardrails.provider is loaded). - Switch the AIMessage type check in SafetyFinishReasonMiddleware._apply from getattr(last, "type") == "ai" to isinstance(last, AIMessage), matching TokenUsageMiddleware / TodoMiddleware / ViewImageMiddleware / SummarizationMiddleware which are the dominant pattern. Refs #3028
515 lines
21 KiB
Python
515 lines
21 KiB
Python
"""Tests for lead agent runtime model resolution behavior."""
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from __future__ import annotations
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import inspect
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from unittest.mock import MagicMock
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import pytest
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from deerflow.agents.lead_agent import agent as lead_agent_module
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from deerflow.agents.middlewares.loop_detection_middleware import LoopDetectionMiddleware
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from deerflow.config.app_config import AppConfig
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from deerflow.config.loop_detection_config import LoopDetectionConfig
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from deerflow.config.memory_config import MemoryConfig
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from deerflow.config.model_config import ModelConfig
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from deerflow.config.sandbox_config import SandboxConfig
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from deerflow.config.summarization_config import SummarizationConfig
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def _make_app_config(models: list[ModelConfig], loop_detection: LoopDetectionConfig | None = None) -> AppConfig:
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return AppConfig(
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models=models,
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sandbox=SandboxConfig(use="deerflow.sandbox.local:LocalSandboxProvider"),
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loop_detection=loop_detection or LoopDetectionConfig(),
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)
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def _make_model(name: str, *, supports_thinking: bool) -> ModelConfig:
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return ModelConfig(
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name=name,
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display_name=name,
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description=None,
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use="langchain_openai:ChatOpenAI",
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model=name,
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supports_thinking=supports_thinking,
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supports_vision=False,
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)
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def test_make_lead_agent_signature_matches_langgraph_server_factory_abi():
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assert list(inspect.signature(lead_agent_module.make_lead_agent).parameters) == ["config"]
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def test_make_lead_agent_attaches_tracing_callbacks_at_graph_root(monkeypatch):
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"""Regression guard: tracing handlers must be appended to
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``config["callbacks"]`` (graph invocation root), and every in-graph
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``create_chat_model`` call must pass ``attach_tracing=False``.
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Catches future contributors who forget the flag when adding new
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in-graph model creation, which would silently produce duplicate
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spans and break Langfuse session/user propagation.
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"""
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app_config = _make_app_config([_make_model("safe-model", supports_thinking=False)])
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import deerflow.tools as tools_module
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monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
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monkeypatch.setattr(tools_module, "get_available_tools", lambda **kwargs: [])
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monkeypatch.setattr(lead_agent_module, "_build_middlewares", lambda config, model_name, agent_name=None, **kwargs: [])
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sentinel_handler = object()
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monkeypatch.setattr(lead_agent_module, "build_tracing_callbacks", lambda: [sentinel_handler])
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seen_attach_tracing: list[bool] = []
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def _fake_create_chat_model(*, name, thinking_enabled, reasoning_effort=None, app_config=None, attach_tracing=True):
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seen_attach_tracing.append(attach_tracing)
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return object()
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monkeypatch.setattr(lead_agent_module, "create_chat_model", _fake_create_chat_model)
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monkeypatch.setattr(lead_agent_module, "create_agent", lambda **kwargs: kwargs)
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config: dict = {"configurable": {"model_name": "safe-model"}}
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lead_agent_module._make_lead_agent(config, app_config=app_config)
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# Handler must land on the graph invocation config so the Langfuse
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# CallbackHandler fires ``on_chain_start(parent_run_id=None)`` and
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# propagates ``session_id`` / ``user_id`` onto the trace.
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assert sentinel_handler in (config.get("callbacks") or []), "build_tracing_callbacks output must be appended to config['callbacks']"
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# Every in-graph create_chat_model call must opt out of model-level
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# tracing to avoid duplicate spans.
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assert seen_attach_tracing, "_make_lead_agent did not call create_chat_model"
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assert all(flag is False for flag in seen_attach_tracing), f"in-graph create_chat_model must pass attach_tracing=False; got {seen_attach_tracing}"
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def test_internal_make_lead_agent_uses_explicit_app_config(monkeypatch):
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app_config = _make_app_config([_make_model("explicit-model", supports_thinking=False)])
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import deerflow.tools as tools_module
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def _raise_get_app_config():
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raise AssertionError("ambient get_app_config() must not be used when app_config is explicit")
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monkeypatch.setattr(lead_agent_module, "get_app_config", _raise_get_app_config)
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monkeypatch.setattr(tools_module, "get_available_tools", lambda **kwargs: [])
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monkeypatch.setattr(lead_agent_module, "_build_middlewares", lambda config, model_name, agent_name=None, **kwargs: [])
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captured: dict[str, object] = {}
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def _fake_create_chat_model(*, name, thinking_enabled, reasoning_effort=None, app_config=None, attach_tracing=True):
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captured["name"] = name
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captured["app_config"] = app_config
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return object()
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monkeypatch.setattr(lead_agent_module, "create_chat_model", _fake_create_chat_model)
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monkeypatch.setattr(lead_agent_module, "create_agent", lambda **kwargs: kwargs)
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result = lead_agent_module._make_lead_agent(
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{"configurable": {"model_name": "explicit-model"}},
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app_config=app_config,
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)
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assert captured == {
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"name": "explicit-model",
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"app_config": app_config,
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}
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assert result["model"] is not None
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def test_make_lead_agent_uses_runtime_app_config_from_context_without_global_read(monkeypatch):
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app_config = _make_app_config([_make_model("context-model", supports_thinking=False)])
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import deerflow.tools as tools_module
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def _raise_get_app_config():
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raise AssertionError("ambient get_app_config() must not be used when runtime context already carries app_config")
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monkeypatch.setattr(lead_agent_module, "get_app_config", _raise_get_app_config)
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monkeypatch.setattr(tools_module, "get_available_tools", lambda **kwargs: [])
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monkeypatch.setattr(lead_agent_module, "_build_middlewares", lambda config, model_name, agent_name=None, **kwargs: [])
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captured: dict[str, object] = {}
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def _fake_create_chat_model(*, name, thinking_enabled, reasoning_effort=None, app_config=None, attach_tracing=True):
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captured["name"] = name
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captured["app_config"] = app_config
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return object()
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monkeypatch.setattr(lead_agent_module, "create_chat_model", _fake_create_chat_model)
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monkeypatch.setattr(lead_agent_module, "create_agent", lambda **kwargs: kwargs)
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result = lead_agent_module.make_lead_agent(
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{
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"context": {
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"model_name": "context-model",
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"app_config": app_config,
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}
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}
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)
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assert captured == {
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"name": "context-model",
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"app_config": app_config,
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}
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assert result["model"] is not None
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def test_resolve_model_name_falls_back_to_default(monkeypatch, caplog):
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app_config = _make_app_config(
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[
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_make_model("default-model", supports_thinking=False),
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_make_model("other-model", supports_thinking=True),
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]
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)
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monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
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with caplog.at_level("WARNING"):
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resolved = lead_agent_module._resolve_model_name("missing-model")
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assert resolved == "default-model"
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assert "fallback to default model 'default-model'" in caplog.text
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def test_resolve_model_name_uses_default_when_none(monkeypatch):
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app_config = _make_app_config(
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[
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_make_model("default-model", supports_thinking=False),
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_make_model("other-model", supports_thinking=True),
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]
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)
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monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
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resolved = lead_agent_module._resolve_model_name(None)
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assert resolved == "default-model"
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def test_resolve_model_name_raises_when_no_models_configured(monkeypatch):
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app_config = _make_app_config([])
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monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
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with pytest.raises(
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ValueError,
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match="No chat models are configured",
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):
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lead_agent_module._resolve_model_name("missing-model")
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def test_make_lead_agent_disables_thinking_when_model_does_not_support_it(monkeypatch):
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app_config = _make_app_config([_make_model("safe-model", supports_thinking=False)])
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import deerflow.tools as tools_module
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monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
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monkeypatch.setattr(tools_module, "get_available_tools", lambda **kwargs: [])
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monkeypatch.setattr(lead_agent_module, "_build_middlewares", lambda config, model_name, agent_name=None, **kwargs: [])
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captured: dict[str, object] = {}
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def _fake_create_chat_model(*, name, thinking_enabled, reasoning_effort=None, app_config=None, attach_tracing=True):
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captured["name"] = name
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captured["thinking_enabled"] = thinking_enabled
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captured["reasoning_effort"] = reasoning_effort
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captured["app_config"] = app_config
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return object()
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monkeypatch.setattr(lead_agent_module, "create_chat_model", _fake_create_chat_model)
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monkeypatch.setattr(lead_agent_module, "create_agent", lambda **kwargs: kwargs)
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result = lead_agent_module.make_lead_agent(
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{
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"configurable": {
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"model_name": "safe-model",
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"thinking_enabled": True,
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"is_plan_mode": False,
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"subagent_enabled": False,
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}
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}
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)
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assert captured["name"] == "safe-model"
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assert captured["thinking_enabled"] is False
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assert captured["app_config"] is app_config
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assert result["model"] is not None
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def test_make_lead_agent_reads_runtime_options_from_context(monkeypatch):
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app_config = _make_app_config(
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[
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_make_model("default-model", supports_thinking=False),
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_make_model("context-model", supports_thinking=True),
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]
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)
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import deerflow.tools as tools_module
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get_available_tools = MagicMock(return_value=[])
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monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
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monkeypatch.setattr(tools_module, "get_available_tools", get_available_tools)
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monkeypatch.setattr(lead_agent_module, "_build_middlewares", lambda config, model_name, agent_name=None, **kwargs: [])
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captured: dict[str, object] = {}
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def _fake_create_chat_model(*, name, thinking_enabled, reasoning_effort=None, app_config=None, attach_tracing=True):
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captured["name"] = name
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captured["thinking_enabled"] = thinking_enabled
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captured["reasoning_effort"] = reasoning_effort
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captured["app_config"] = app_config
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return object()
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monkeypatch.setattr(lead_agent_module, "create_chat_model", _fake_create_chat_model)
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monkeypatch.setattr(lead_agent_module, "create_agent", lambda **kwargs: kwargs)
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result = lead_agent_module.make_lead_agent(
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{
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"context": {
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"model_name": "context-model",
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"thinking_enabled": False,
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"reasoning_effort": "high",
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"is_plan_mode": True,
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"subagent_enabled": True,
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"max_concurrent_subagents": 7,
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}
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}
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)
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assert captured == {
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"name": "context-model",
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"thinking_enabled": False,
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"reasoning_effort": "high",
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"app_config": app_config,
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}
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get_available_tools.assert_called_once_with(model_name="context-model", groups=None, subagent_enabled=True, app_config=app_config)
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assert result["model"] is not None
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def test_make_lead_agent_rejects_invalid_bootstrap_agent_name(monkeypatch):
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app_config = _make_app_config([_make_model("safe-model", supports_thinking=False)])
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monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
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with pytest.raises(ValueError, match="Invalid agent name"):
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lead_agent_module.make_lead_agent(
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{
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"configurable": {
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"model_name": "safe-model",
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"thinking_enabled": False,
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"is_plan_mode": False,
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"subagent_enabled": False,
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"is_bootstrap": True,
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"agent_name": "../../../tmp/evil",
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}
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}
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)
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def test_build_middlewares_uses_resolved_model_name_for_vision(monkeypatch):
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app_config = _make_app_config(
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[
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_make_model("stale-model", supports_thinking=False),
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ModelConfig(
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name="vision-model",
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display_name="vision-model",
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description=None,
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use="langchain_openai:ChatOpenAI",
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model="vision-model",
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supports_thinking=False,
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supports_vision=True,
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),
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]
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)
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monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
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monkeypatch.setattr(lead_agent_module, "_create_summarization_middleware", lambda **kwargs: None)
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monkeypatch.setattr(lead_agent_module, "_create_todo_list_middleware", lambda is_plan_mode: None)
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middlewares = lead_agent_module._build_middlewares(
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{"configurable": {"model_name": "stale-model", "is_plan_mode": False, "subagent_enabled": False}},
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model_name="vision-model",
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custom_middlewares=[MagicMock()],
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app_config=app_config,
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)
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assert any(isinstance(m, lead_agent_module.ViewImageMiddleware) for m in middlewares)
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# verify the custom middleware is injected correctly.
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# Chain tail order after the custom middleware is:
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# ..., custom, SafetyFinishReasonMiddleware, ClarificationMiddleware
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# so the custom mock sits at index [-3].
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assert len(middlewares) > 0 and isinstance(middlewares[-3], MagicMock)
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def test_build_middlewares_passes_explicit_app_config_to_shared_factory(monkeypatch):
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app_config = _make_app_config([_make_model("safe-model", supports_thinking=False)])
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captured: dict[str, object] = {}
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def _raise_get_app_config():
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raise AssertionError("ambient get_app_config() must not be used when app_config is explicit")
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def _fake_build_lead_runtime_middlewares(*, app_config, lazy_init):
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captured["app_config"] = app_config
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captured["lazy_init"] = lazy_init
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return ["base-middleware"]
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monkeypatch.setattr(lead_agent_module, "get_app_config", _raise_get_app_config)
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monkeypatch.setattr(
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lead_agent_module,
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"build_lead_runtime_middlewares",
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_fake_build_lead_runtime_middlewares,
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)
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monkeypatch.setattr(lead_agent_module, "_create_summarization_middleware", lambda **kwargs: None)
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monkeypatch.setattr(lead_agent_module, "_create_todo_list_middleware", lambda is_plan_mode: None)
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monkeypatch.setattr(
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lead_agent_module,
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"TitleMiddleware",
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lambda *, app_config: captured.setdefault("title_app_config", app_config) or "title-middleware",
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)
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monkeypatch.setattr(
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lead_agent_module,
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"MemoryMiddleware",
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lambda agent_name=None, *, memory_config: captured.setdefault("memory_config", memory_config) or "memory-middleware",
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)
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middlewares = lead_agent_module._build_middlewares(
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{"configurable": {"is_plan_mode": False, "subagent_enabled": False}},
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model_name="safe-model",
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app_config=app_config,
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)
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assert captured == {
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"app_config": app_config,
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"lazy_init": True,
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"title_app_config": app_config,
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"memory_config": app_config.memory,
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}
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assert middlewares[0] == "base-middleware"
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def test_build_middlewares_uses_loop_detection_config(monkeypatch):
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app_config = _make_app_config(
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[_make_model("safe-model", supports_thinking=False)],
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loop_detection=LoopDetectionConfig(
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warn_threshold=7,
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hard_limit=9,
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window_size=30,
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max_tracked_threads=40,
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tool_freq_warn=50,
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tool_freq_hard_limit=60,
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),
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)
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monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
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monkeypatch.setattr(lead_agent_module, "build_lead_runtime_middlewares", lambda *, app_config, lazy_init=True: [])
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monkeypatch.setattr(lead_agent_module, "_create_summarization_middleware", lambda *, app_config=None: None)
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monkeypatch.setattr(lead_agent_module, "_create_todo_list_middleware", lambda is_plan_mode: None)
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middlewares = lead_agent_module._build_middlewares(
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{"configurable": {"is_plan_mode": False, "subagent_enabled": False}},
|
|
model_name="safe-model",
|
|
app_config=app_config,
|
|
)
|
|
|
|
loop_detection = next(m for m in middlewares if isinstance(m, LoopDetectionMiddleware))
|
|
assert loop_detection.warn_threshold == 7
|
|
assert loop_detection.hard_limit == 9
|
|
assert loop_detection.window_size == 30
|
|
assert loop_detection.max_tracked_threads == 40
|
|
assert loop_detection.tool_freq_warn == 50
|
|
assert loop_detection.tool_freq_hard_limit == 60
|
|
|
|
|
|
def test_build_middlewares_omits_loop_detection_when_disabled(monkeypatch):
|
|
app_config = _make_app_config(
|
|
[_make_model("safe-model", supports_thinking=False)],
|
|
loop_detection=LoopDetectionConfig(enabled=False),
|
|
)
|
|
|
|
monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: app_config)
|
|
monkeypatch.setattr(lead_agent_module, "build_lead_runtime_middlewares", lambda *, app_config, lazy_init=True: [])
|
|
monkeypatch.setattr(lead_agent_module, "_create_summarization_middleware", lambda *, app_config=None: None)
|
|
monkeypatch.setattr(lead_agent_module, "_create_todo_list_middleware", lambda is_plan_mode: None)
|
|
|
|
middlewares = lead_agent_module._build_middlewares(
|
|
{"configurable": {"is_plan_mode": False, "subagent_enabled": False}},
|
|
model_name="safe-model",
|
|
app_config=app_config,
|
|
)
|
|
|
|
assert not any(isinstance(m, LoopDetectionMiddleware) for m in middlewares)
|
|
|
|
|
|
def test_create_summarization_middleware_uses_configured_model_alias(monkeypatch):
|
|
app_config = _make_app_config([_make_model("model-masswork", supports_thinking=False)])
|
|
app_config.summarization = SummarizationConfig(enabled=True, model_name="model-masswork")
|
|
app_config.memory = MemoryConfig(enabled=False)
|
|
|
|
from unittest.mock import MagicMock
|
|
|
|
captured: dict[str, object] = {}
|
|
fake_model = MagicMock()
|
|
fake_model.with_config.return_value = fake_model
|
|
|
|
def _fake_create_chat_model(*, name=None, thinking_enabled, reasoning_effort=None, app_config=None, attach_tracing=True):
|
|
captured["name"] = name
|
|
captured["thinking_enabled"] = thinking_enabled
|
|
captured["reasoning_effort"] = reasoning_effort
|
|
captured["app_config"] = app_config
|
|
return fake_model
|
|
|
|
def _raise_get_app_config():
|
|
raise AssertionError("ambient get_app_config() must not be used when app_config is explicit")
|
|
|
|
monkeypatch.setattr(lead_agent_module, "get_app_config", _raise_get_app_config)
|
|
monkeypatch.setattr(lead_agent_module, "create_chat_model", _fake_create_chat_model)
|
|
monkeypatch.setattr(lead_agent_module, "DeerFlowSummarizationMiddleware", lambda **kwargs: kwargs)
|
|
|
|
middleware = lead_agent_module._create_summarization_middleware(app_config=app_config)
|
|
|
|
assert captured["name"] == "model-masswork"
|
|
assert captured["thinking_enabled"] is False
|
|
assert captured["app_config"] is app_config
|
|
assert middleware["model"] is fake_model
|
|
fake_model.with_config.assert_called_once_with(tags=["middleware:summarize"])
|
|
|
|
|
|
def test_create_summarization_middleware_threads_resolved_app_config_to_model(monkeypatch):
|
|
fallback_app_config = _make_app_config([_make_model("fallback-model", supports_thinking=False)])
|
|
fallback_app_config.summarization = SummarizationConfig(enabled=True, model_name="fallback-model")
|
|
fallback_app_config.memory = MemoryConfig(enabled=False)
|
|
|
|
from unittest.mock import MagicMock
|
|
|
|
captured: dict[str, object] = {}
|
|
fake_model = MagicMock()
|
|
fake_model.with_config.return_value = fake_model
|
|
|
|
def _fake_create_chat_model(*, name=None, thinking_enabled, reasoning_effort=None, app_config=None, attach_tracing=True):
|
|
captured["app_config"] = app_config
|
|
return fake_model
|
|
|
|
monkeypatch.setattr(lead_agent_module, "get_app_config", lambda: fallback_app_config)
|
|
monkeypatch.setattr(lead_agent_module, "create_chat_model", _fake_create_chat_model)
|
|
monkeypatch.setattr(lead_agent_module, "DeerFlowSummarizationMiddleware", lambda **kwargs: kwargs)
|
|
|
|
lead_agent_module._create_summarization_middleware()
|
|
|
|
assert captured["app_config"] is fallback_app_config
|
|
|
|
|
|
def test_memory_middleware_uses_explicit_memory_config_without_global_read(monkeypatch):
|
|
from deerflow.agents.middlewares import memory_middleware as memory_middleware_module
|
|
from deerflow.agents.middlewares.memory_middleware import MemoryMiddleware
|
|
|
|
def _raise_get_memory_config():
|
|
raise AssertionError("ambient get_memory_config() must not be used when memory_config is explicit")
|
|
|
|
monkeypatch.setattr(memory_middleware_module, "get_memory_config", _raise_get_memory_config)
|
|
|
|
middleware = MemoryMiddleware(memory_config=MemoryConfig(enabled=False))
|
|
|
|
assert middleware.after_agent({"messages": []}, runtime=MagicMock(context={"thread_id": "thread-1"})) is None
|