> [!IMPORTANT]
> **Behavior change on upgrade — minor bump (`1.1.16` → `1.2.0`).**
>
> Streaming calls now raise `StreamChunkTimeoutError` (a `TimeoutError`
subclass — existing `except TimeoutError:` / `except
asyncio.TimeoutError:` handlers catch it) after 120s of content silence
instead of hanging forever. Opt out with `stream_chunk_timeout=None` or
`LANGCHAIN_OPENAI_STREAM_CHUNK_TIMEOUT_S=0`.
>
> Kernel-level TCP keepalive / `TCP_USER_TIMEOUT` are applied via a
custom `httpx` transport. `httpx` disables its env-proxy auto-detection
(`HTTP_PROXY` / `HTTPS_PROXY` / `ALL_PROXY` / `NO_PROXY` and
macOS/Windows system proxy) whenever a transport is supplied, so to
avoid silently breaking enterprise proxy users, `ChatOpenAI` now detects
the "proxy-env-shadow" shape at construction and **skips the custom
transport entirely** when **all** of these hold:
>
> - `http_socket_options` left at default (`None`)
> - No `http_client` or `http_async_client` supplied
> - No `openai_proxy` supplied
> - A proxy env var / system proxy is visible to httpx
>
> On that shape the instance falls back to pre-PR behavior and env-proxy
auto-detection still applies. A one-time `INFO` records the bypass.
>
> Users who explicitly set `http_socket_options=[...]` alongside an env
proxy still get the shadowed behavior with a one-time `WARNING` log —
they opted in. Full opt-outs below.
---
Streaming chat completions can hang forever when the underlying TCP
connection silently dies mid-stream (idle NAT/LB timeouts, sandboxed
runtimes killing long-lived connections, peer gone without a FIN or
RST). httpx's read timeout doesn't help here because it's reset by any
bytes arriving on the socket, including OpenAI's SSE keepalive comments,
so a stream that's quiet on content but still producing keepalives looks
alive forever.
This PR adds two knobs to `ChatOpenAI`, both on by default with
opt-outs:
- `stream_chunk_timeout` (default 120s): wraps the async streaming
iterator in `asyncio.wait_for` per chunk. Measures the gap between
*parsed* SSE chunks, so keepalives don't reset it. Fires on genuine
content silence and raises `StreamChunkTimeoutError` — a `TimeoutError`
subclass carrying `timeout_s`, `model_name`, and `chunks_received` as
structured attributes (mirrored in the WARNING log's `extra=`) for
alerting without message-regex. Override with the kwarg or
`LANGCHAIN_OPENAI_STREAM_CHUNK_TIMEOUT_S`.
- `http_socket_options`: applies `SO_KEEPALIVE` + `TCP_KEEPIDLE` /
`TCP_KEEPINTVL` / `TCP_KEEPCNT` + `TCP_USER_TIMEOUT` on Linux (macOS
equivalents where available). On platforms missing some options, they're
dropped silently and the remaining set still does useful work.
Pool limits are set explicitly on the custom transport to mirror the
`openai` SDK — without that, passing `transport=` to `httpx.AsyncClient`
silently shrinks the connection pool.
## Behavior change
The default-shape proxy-env bypass (above) covers the common enterprise
case. Beyond that:
- Connections that would previously have hung forever will now error out
via `StreamChunkTimeoutError`.
- Users who explicitly opt into `http_socket_options` while also relying
on env proxies will see a one-time `WARNING` and lose env-proxy
auto-detection — the custom transport shadows it. This is the original
shipped behavior, retained for anyone who *wants* socket tuning on top
of an env-proxied setup.
Full opt-outs:
- `stream_chunk_timeout=None` or
`LANGCHAIN_OPENAI_STREAM_CHUNK_TIMEOUT_S=0`
- `http_socket_options=()` or `LANGCHAIN_OPENAI_TCP_KEEPALIVE=0`
- Supply your own `http_client` **and** `http_async_client`.
`http_socket_options` is applied per side: passing only one still leaves
the other side's default builder getting socket options. Supply both (or
combine with `http_socket_options=()`) to take full control.
Unparseable or negative values for the `LANGCHAIN_OPENAI_*` env vars
fall back to the default with a `WARNING` log rather than silently being
accepted, so a misconfigured environment still boots but the fallback is
discoverable.
---------
Co-authored-by: Mason Daugherty <github@mdrxy.com>
Co-authored-by: Mason Daugherty <mason@langchain.dev>
Python's `or` operator treats `0` as falsy, so
`token_usage.get("total_tokens") or fallback` silently replaces a
provider-reported `total_tokens=0` with the computed sum of input +
output tokens. Providers can legitimately report zero tokens (e.g.,
cached responses, empty completions).
The same pattern exists in the dual-key lookups for
`input_tokens`/`output_tokens` in Groq and OpenRouter. While current
APIs don't return both key formats simultaneously (making the `or`-chain
functionally correct today), the semantics are still wrong; `0` should
not fall through to a fallback.
## Changes
- Replace `x.get(key) or fallback` with explicit `is not None` checks in
`_create_usage_metadata` across `langchain-openai`, `langchain-groq`,
and `langchain-openrouter` for `input_tokens`, `output_tokens`, and
`total_tokens`
- Fix a concrete bug in the `total_tokens` path: a provider-reported `0`
was silently replaced by the computed sum
- Harden dual-key lookups in Groq and OpenRouter to correctly preserve
zero values from the preferred key, should both key formats ever coexist
- Update OpenAI's single-key extraction for consistency — the old `or 0`
pattern happened to produce correct results (`0 or 0 == 0`) but was
semantically wrong
Fixed a bug where GPT-5 temperature validation was case-sensitive,
causing issues when users
specified Azure deployment names or model names in uppercase (e.g.,
`"GPT-5-2025-01-01"`, `"GPT-5-NANO"`). The validation now correctly
handles model names regardless of case.
Changes made:
- Updated `validate_temperature()` method in `BaseChatOpenAI` to perform
case-insensitive
model name comparisons
- Updated `_get_encoding_model()` method to use case-insensitive checks
for tiktoken encoder
selection
- Added comprehensive unit tests to verify case-insensitive behavior
with various case
combinations
**Issue:** Fixes#34003
**Dependencies:** None
**Test Coverage:**
- All existing tests pass
- New test `test_gpt_5_temperature_case_insensitive` covers uppercase,
lowercase, and
mixed-case model names
- Tests verify both non-chat GPT-5 models (temperature removed) and chat
models (temperature
preserved)
- Lint and format checks pass (`make lint`, `make format`)
---------
Co-authored-by: Mason Daugherty <github@mdrxy.com>
Now returns (`_iter`, `tokens`, `indices`, token_counts`). The
`token_counts` are calculated directly during tokenization, which is
more accurate and efficient than splitting strings later.
## Description
Fixes#31227 - Resolves the issue where `OpenAIEmbeddings` exceeds
OpenAI's 300,000 token per request limit, causing 400 BadRequest errors.
## Problem
When embedding large document sets, LangChain would send batches
containing more than 300,000 tokens in a single API request, causing
this error:
```
openai.BadRequestError: Error code: 400 - {'error': {'message': 'Requested 673477 tokens, max 300000 tokens per request'}}
```
The issue occurred because:
- The code chunks texts by `embedding_ctx_length` (8191 tokens per
chunk)
- Then batches chunks by `chunk_size` (default 1000 chunks per request)
- **But didn't check**: Total tokens per batch against OpenAI's 300k
limit
- Result: `1000 chunks × 8191 tokens = 8,191,000 tokens` → Exceeds
limit!
## Solution
This PR implements dynamic batching that respects the 300k token limit:
1. **Added constant**: `MAX_TOKENS_PER_REQUEST = 300000`
2. **Track token counts**: Calculate actual tokens for each chunk
3. **Dynamic batching**: Instead of fixed `chunk_size` batches,
accumulate chunks until approaching the 300k limit
4. **Applied to both sync and async**: Fixed both
`_get_len_safe_embeddings` and `_aget_len_safe_embeddings`
## Changes
- Modified `langchain_openai/embeddings/base.py`:
- Added `MAX_TOKENS_PER_REQUEST` constant
- Replaced fixed-size batching with token-aware dynamic batching
- Applied to both sync (line ~478) and async (line ~527) methods
- Added test in `tests/unit_tests/embeddings/test_base.py`:
- `test_embeddings_respects_token_limit()` - Verifies large document
sets are properly batched
## Testing
All existing tests pass (280 passed, 4 xfailed, 1 xpassed).
New test verifies:
- Large document sets (500 texts × 1000 tokens = 500k tokens) are split
into multiple API calls
- Each API call respects the 300k token limit
## Usage
After this fix, users can embed large document sets without errors:
```python
from langchain_openai import OpenAIEmbeddings
from langchain_chroma import Chroma
from langchain_text_splitters import CharacterTextSplitter
# This will now work without exceeding token limits
embeddings = OpenAIEmbeddings()
documents = CharacterTextSplitter().split_documents(large_documents)
Chroma.from_documents(documents, embeddings)
```
Resolves#31227
---------
Co-authored-by: Kaparthy Reddy <kaparthyreddy@Kaparthys-MacBook-Air.local>
Co-authored-by: Chester Curme <chester.curme@gmail.com>
Co-authored-by: Mason Daugherty <mason@langchain.dev>
Co-authored-by: Mason Daugherty <github@mdrxy.com>