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The shared AsyncPostgresSaver caches DB connections in a module-level pool. Cached connections are bound to the asyncio loop that opened them, but `run_async_celery_task` discards the loop on each task's exit — so after the first task the pool holds connections pointing to a dead loop, and the next automation hangs 30s before failing with `PoolTimeout: couldn't get a connection after 30.00 sec`. Swap agent_task to `InMemorySaver`; automation runs only need state within one Celery task, so nothing is lost. Site-local TODO tracks the proper future fix (dispose the checkpointer pool around each Celery task, mirroring `_dispose_shared_db_engine`).
75 lines
2.7 KiB
Python
75 lines
2.7 KiB
Python
"""Build the per-invocation dependencies the multi_agent_chat factory needs."""
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from __future__ import annotations
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from dataclasses import dataclass
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from typing import Any
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from langgraph.checkpoint.memory import InMemorySaver
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from sqlalchemy.ext.asyncio import AsyncSession
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from app.tasks.chat.streaming.flows.shared.llm_bundle import load_llm_bundle
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from app.tasks.chat.streaming.flows.shared.pre_stream_setup import (
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setup_connector_and_firecrawl,
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)
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class DependencyError(Exception):
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"""An external dependency (LLM config, connector service, ...) refused to load."""
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@dataclass(frozen=True, slots=True)
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class AgentDependencies:
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"""Everything ``create_multi_agent_chat_deep_agent`` needs from the environment."""
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llm: Any
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agent_config: Any
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connector_service: Any
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firecrawl_api_key: str | None
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checkpointer: Any
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async def build_dependencies(
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*,
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session: AsyncSession,
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search_space_id: int,
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) -> AgentDependencies:
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"""Load the LLM bundle, connector service, and a per-invoke in-memory checkpointer.
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Uses the search space's default LLM config (``config_id=-1``). Per-step
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model overrides land in a future iteration alongside the ``model`` param.
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"""
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llm, agent_config, err = await load_llm_bundle(
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session, config_id=-1, search_space_id=search_space_id
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)
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if err is not None or llm is None:
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raise DependencyError(err or "failed to load default LLM config")
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connector_service, firecrawl_api_key = await setup_connector_and_firecrawl(
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session, search_space_id=search_space_id
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)
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# Quick fix: use an in-memory checkpointer for automation runs.
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#
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# The shared Postgres checkpointer caches DB connections in a
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# module-level pool. Each cached connection is bound to the asyncio
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# loop that opened it. Celery throws away the loop after every task,
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# so the pool ends up full of connections pointing to a dead loop,
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# and the next Celery task (running on a fresh loop) can't use any
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# of them — it hangs 30s and fails with
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# `PoolTimeout: couldn't get a connection after 30.00 sec`.
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#
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# InMemorySaver has no cached connections, no loop binding — each
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# Celery task creates one and drops it on exit.
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#
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# TODO(checkpointer): proper fix is to dispose the checkpointer
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# pool around each Celery task in `run_async_celery_task`, the same
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# way `_dispose_shared_db_engine` already does for the SQLAlchemy
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# pool. Then this site can switch back to the shared checkpointer.
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checkpointer = InMemorySaver()
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return AgentDependencies(
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llm=llm,
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agent_config=agent_config,
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connector_service=connector_service,
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firecrawl_api_key=firecrawl_api_key,
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checkpointer=checkpointer,
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)
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