Bagatur 9636d899ea feat(core, anthropic, openai): aclose() lifecycle + latched fallbacks
Plumb an explicit resource-lifecycle contract through `BaseChatModel`,
`RunnableWithFallbacks`, and the two largest partner integrations.
Adds an opt-in `FallbackLatch` so `with_fallbacks(...)` can short-circuit
the primary after a failure.

Motivation: provider SDKs (`anthropic`, `openai`) back their clients with
httpx connection pools that the SDKs only release best-effort from
`__del__` — `asyncio.get_running_loop().create_task(self.aclose())` with
a bare `except Exception: pass`. Long-lived workers that construct
chat models per request (multi-tenant LangGraph deployments,
agents-as-services) silently accumulate pools and leak memory + file
descriptors. The fix today requires reaching into private attributes
(`_async_client`, `root_async_client`, ...) on each provider. This PR
makes teardown a first-class part of the chat-model API.

## langchain-core

- `BaseChatModel.close()` / `aclose()` — default no-ops that subclasses
  override. `aclose()` dispatches to `close()` so async teardown works
  for sync-only subclasses. Adds `__enter__`/`__exit__`/`__aenter__`/
  `__aexit__` so models can be used as context managers.
- `RunnableWithFallbacks.close()` / `aclose()` — walks `runnable` and
  `fallbacks`, calling each one's lifecycle method. Per-runnable failures
  are suppressed so one bad close doesn't prevent the others from
  running.
- `FallbackLatch` + `with_fallbacks(..., latch=...)` — opt-in
  circuit-breaker: once the primary raises a handled exception, latch
  trips and subsequent calls (on this wrapper, or any wrapper sharing
  the same latch instance) skip the primary. Useful when a primary
  failure is unlikely to recover within the wrapper's lifetime — wrong
  API key, sustained outage — so the default
  `try-primary-on-every-call` doesn't waste a round-trip on every
  retry. `latch.reset()` re-enables the primary. The latch propagates
  through `__getattr__` rebinds (e.g. `wrapper.bind_tools([...])`) so
  tool-bound and bare wrappers share one circuit.
- Default-latch behaviour is unchanged: passing no `latch` retains the
  existing "retry primary on every call" semantics.

## langchain-anthropic

- `ChatAnthropic.close()` / `aclose()` — closes `_client` (sync) and
  `_async_client` (async). Both are `cached_property` slots; guarded
  via `__dict__` so we don't materialize an uninstantiated cached
  client just to immediately close it. Idempotent.

## langchain-openai

- `BaseChatOpenAI.close()` / `aclose()` — closes `root_client` and
  `root_async_client`, then clears the corresponding `client` /
  `async_client` attributes so the model can't be used after teardown.
  Idempotent. Tolerates the API-key-missing case where one client is
  `None`.

Note: `BaseChatOpenAI`'s eager construction of both sync + async
clients in its `model_validator` (even for async-only use) is a related
inefficiency but not addressed here — it's a fixed per-instance cost
rather than the per-request leak that `aclose()` solves.

## Tests

- 7 new latch + propagation tests in `test_fallbacks.py`
- 4 new lifecycle tests in `test_base.py` for `BaseChatModel`
- 5 new tests in `test_chat_models.py` for `ChatAnthropic`
- 5 new tests in `test_base.py` for `BaseChatOpenAI`

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-27 14:33:08 -04:00
2023-06-16 15:42:14 -07:00
2023-11-28 17:34:27 -08:00
2026-05-05 17:58:15 +02:00

The agent engineering platform.

PyPI - License PyPI - Downloads Version Twitter / X

LangChain is a framework for building agents and LLM-powered applications. It helps you chain together interoperable components and third-party integrations to simplify AI application development — all while future-proofing decisions as the underlying technology evolves.

Tip

Just getting started? Check out Deep Agents — a higher-level package built on LangChain for agents that have built-in capabilites for common usage patterns such as planning, subagents, file system usage, and more.

Quickstart

pip install langchain
# or
uv add langchain
from langchain.chat_models import init_chat_model

model = init_chat_model("openai:gpt-5.4")
result = model.invoke("Hello, world!")

If you're looking for more advanced customization or agent orchestration, check out LangGraph, our framework for building controllable agent workflows.

For an equivalent JS/TS library, check out LangChain.js.

Tip

For developing, debugging, and deploying AI agents and LLM applications, see LangSmith.

LangChain ecosystem

While the LangChain framework can be used standalone, it also integrates seamlessly with any LangChain product, giving developers a full suite of tools when building LLM applications.

  • Deep Agents — Build agents that can plan, use subagents, and leverage file systems for complex tasks
  • LangGraph — Build agents that can reliably handle complex tasks with our low-level agent orchestration framework
  • Integrations — Chat & embedding models, tools & toolkits, and more
  • LangSmith — Agent evals, observability, and debugging for LLM apps
  • LangSmith Deployment — Deploy and scale agents with a purpose-built platform for long-running, stateful workflows

Why use LangChain?

LangChain helps developers build applications powered by LLMs through a standard interface for models, embeddings, vector stores, and more.

  • Real-time data augmentation — Easily connect LLMs to diverse data sources and external/internal systems, drawing from LangChain's vast library of integrations with model providers, tools, vector stores, retrievers, and more
  • Model interoperability — Swap models in and out as your engineering team experiments to find the best choice for your application's needs. As the industry frontier evolves, adapt quickly — LangChain's abstractions keep you moving without losing momentum
  • Rapid prototyping — Quickly build and iterate on LLM applications with LangChain's modular, component-based architecture. Test different approaches and workflows without rebuilding from scratch, accelerating your development cycle
  • Production-ready features — Deploy reliable applications with built-in support for monitoring, evaluation, and debugging through integrations like LangSmith. Scale with confidence using battle-tested patterns and best practices
  • Vibrant community and ecosystem — Leverage a rich ecosystem of integrations, templates, and community-contributed components. Benefit from continuous improvements and stay up-to-date with the latest AI developments through an active open-source community
  • Flexible abstraction layers — Work at the level of abstraction that suits your needs — from high-level chains for quick starts to low-level components for fine-grained control. LangChain grows with your application's complexity

Documentation

Discussions: Visit the LangChain Forum to connect with the community and share all of your technical questions, ideas, and feedback.

Additional resources

  • Contributing Guide Learn how to contribute to LangChain projects and find good first issues.
  • Code of Conduct Our community guidelines and standards for participation.
  • LangChain Academy Comprehensive, free courses on LangChain libraries and products, made by the LangChain team.
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Building applications with LLMs through composability
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