mirror of
https://github.com/hwchase17/langchain.git
synced 2026-06-09 10:17:00 +00:00
669 lines
22 KiB
Python
669 lines
22 KiB
Python
"""Wrapper around xAI's Chat Completions API."""
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from __future__ import annotations
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from typing import TYPE_CHECKING, Any, Literal, TypeAlias
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import openai
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from langchain_core.messages import AIMessageChunk
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from langchain_core.utils import secret_from_env
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from langchain_openai.chat_models.base import BaseChatOpenAI
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from pydantic import BaseModel, ConfigDict, Field, SecretStr, model_validator
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from typing_extensions import Self
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if TYPE_CHECKING:
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from langchain_core.language_models.chat_models import (
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LangSmithParams,
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LanguageModelInput,
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)
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from langchain_core.outputs import ChatGenerationChunk, ChatResult
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from langchain_core.runnables import Runnable
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_DictOrPydanticClass: TypeAlias = dict[str, Any] | type[BaseModel] | type
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_DictOrPydantic: TypeAlias = dict | BaseModel
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class ChatXAI(BaseChatOpenAI): # type: ignore[override]
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r"""ChatXAI chat model.
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Refer to [xAI's documentation](https://docs.x.ai/docs/api-reference#chat-completions)
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for more nuanced details on the API's behavior and supported parameters.
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Setup:
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Install `langchain-xai` and set environment variable `XAI_API_KEY`.
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```bash
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pip install -U langchain-xai
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export XAI_API_KEY="your-api-key"
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```
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Key init args — completion params:
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model:
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Name of model to use.
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temperature:
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Sampling temperature between `0` and `2`. Higher values mean more random completions,
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while lower values (like `0.2`) mean more focused and deterministic completions.
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(Default: `1`.)
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max_tokens:
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Max number of tokens to generate. Refer to your [model's documentation](https://docs.x.ai/docs/models#model-pricing)
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for the maximum number of tokens it can generate.
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logprobs:
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Whether to return logprobs.
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Key init args — client params:
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timeout:
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Timeout for requests.
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max_retries:
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Max number of retries.
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api_key:
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xAI API key. If not passed in will be read from env var `XAI_API_KEY`.
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Instantiate:
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```python
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from langchain_xai import ChatXAI
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model = ChatXAI(
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model="grok-4",
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temperature=0,
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max_tokens=None,
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timeout=None,
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max_retries=2,
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# api_key="...",
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# other params...
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)
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```
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Invoke:
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```python
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messages = [
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(
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"system",
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"You are a helpful translator. Translate the user sentence to French.",
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),
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("human", "I love programming."),
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]
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model.invoke(messages)
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```
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```python
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AIMessage(
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content="J'adore la programmation.",
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response_metadata={
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"token_usage": {
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"completion_tokens": 9,
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"prompt_tokens": 32,
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"total_tokens": 41,
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},
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"model_name": "grok-4",
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"system_fingerprint": None,
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"finish_reason": "stop",
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"logprobs": None,
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},
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id="run-168dceca-3b8b-4283-94e3-4c739dbc1525-0",
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usage_metadata={
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"input_tokens": 32,
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"output_tokens": 9,
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"total_tokens": 41,
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},
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)
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```
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Stream:
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```python
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for chunk in model.stream(messages):
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print(chunk.text, end="")
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```
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```python
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content='J' id='run-1bc996b5-293f-4114-96a1-e0f755c05eb9'
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content="'" id='run-1bc996b5-293f-4114-96a1-e0f755c05eb9'
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content='ad' id='run-1bc996b5-293f-4114-96a1-e0f755c05eb9'
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content='ore' id='run-1bc996b5-293f-4114-96a1-e0f755c05eb9'
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content=' la' id='run-1bc996b5-293f-4114-96a1-e0f755c05eb9'
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content=' programm' id='run-1bc996b5-293f-4114-96a1-e0f755c05eb9'
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content='ation' id='run-1bc996b5-293f-4114-96a1-e0f755c05eb9'
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content='.' id='run-1bc996b5-293f-4114-96a1-e0f755c05eb9'
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content='' response_metadata={'finish_reason': 'stop', 'model_name': 'grok-4'} id='run-1bc996b5-293f-4114-96a1-e0f755c05eb9'
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```
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Async:
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```python
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await model.ainvoke(messages)
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# stream:
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# async for chunk in (await model.astream(messages))
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# batch:
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# await model.abatch([messages])
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```
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```python
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AIMessage(
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content="J'adore la programmation.",
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response_metadata={
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"token_usage": {
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"completion_tokens": 9,
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"prompt_tokens": 32,
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"total_tokens": 41,
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},
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"model_name": "grok-4",
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"system_fingerprint": None,
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"finish_reason": "stop",
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"logprobs": None,
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},
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id="run-09371a11-7f72-4c53-8e7c-9de5c238b34c-0",
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usage_metadata={
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"input_tokens": 32,
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"output_tokens": 9,
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"total_tokens": 41,
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},
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)
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```
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Reasoning:
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[Certain xAI models](https://docs.x.ai/docs/models#model-pricing) support reasoning,
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which allows the model to provide reasoning content along with the response.
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If provided, reasoning content is returned under the `additional_kwargs` field of the
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`AIMessage` or `AIMessageChunk`.
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If supported, reasoning effort can be specified in the model constructor's `extra_body`
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argument, which will control the amount of reasoning the model does. The value can be one of
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`'low'` or `'high'`.
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```python
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model = ChatXAI(
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model="grok-3-mini",
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extra_body={"reasoning_effort": "high"},
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)
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```
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!!! note
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As of 2025-07-10, `reasoning_content` is only returned in Grok 3 models, such as
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[Grok 3 Mini](https://docs.x.ai/docs/models/grok-3-mini).
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!!! note
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Note that in [Grok 4](https://docs.x.ai/docs/models/grok-4-0709), as of 2025-07-10,
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reasoning is not exposed in `reasoning_content` (other than initial `'Thinking...'` text),
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reasoning cannot be disabled, and the `reasoning_effort` cannot be specified.
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Tool calling / function calling:
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```python
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from pydantic import BaseModel, Field
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model = ChatXAI(model="grok-4")
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class GetWeather(BaseModel):
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'''Get the current weather in a given location'''
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location: str = Field(..., description="The city and state, e.g. San Francisco, CA")
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class GetPopulation(BaseModel):
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'''Get the current population in a given location'''
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location: str = Field(..., description="The city and state, e.g. San Francisco, CA")
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model_with_tools = model.bind_tools([GetWeather, GetPopulation])
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ai_msg = model_with_tools.invoke("Which city is bigger: LA or NY?")
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ai_msg.tool_calls
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```
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```python
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[
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{
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"name": "GetPopulation",
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"args": {"location": "NY"},
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"id": "call_m5tstyn2004pre9bfuxvom8x",
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"type": "tool_call",
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},
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{
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"name": "GetPopulation",
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"args": {"location": "LA"},
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"id": "call_0vjgq455gq1av5sp9eb1pw6a",
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"type": "tool_call",
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},
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]
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```
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!!! note
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With stream response, the tool / function call will be returned in whole in a
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single chunk, instead of being streamed across chunks.
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Tool choice can be controlled by setting the `tool_choice` parameter in the model
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constructor's `extra_body` argument. For example, to disable tool / function calling:
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```python
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model = ChatXAI(model="grok-4", extra_body={"tool_choice": "none"})
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```
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To require that the model always calls a tool / function, set `tool_choice` to `'required'`:
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```python
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model = ChatXAI(model="grok-4", extra_body={"tool_choice": "required"})
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```
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To specify a tool / function to call, set `tool_choice` to the name of the tool / function:
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```python
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from pydantic import BaseModel, Field
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model = ChatXAI(
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model="grok-4",
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extra_body={
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"tool_choice": {"type": "function", "function": {"name": "GetWeather"}}
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},
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)
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class GetWeather(BaseModel):
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\"\"\"Get the current weather in a given location\"\"\"
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location: str = Field(..., description='The city and state, e.g. San Francisco, CA')
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class GetPopulation(BaseModel):
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\"\"\"Get the current population in a given location\"\"\"
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location: str = Field(..., description='The city and state, e.g. San Francisco, CA')
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model_with_tools = model.bind_tools([GetWeather, GetPopulation])
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ai_msg = model_with_tools.invoke(
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"Which city is bigger: LA or NY?",
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)
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ai_msg.tool_calls
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```
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The resulting tool call would be:
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```python
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[
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{
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"name": "GetWeather",
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"args": {"location": "Los Angeles, CA"},
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"id": "call_81668711",
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"type": "tool_call",
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}
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]
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```
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Parallel tool calling / parallel function calling:
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By default, parallel tool / function calling is enabled, so you can process
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multiple function calls in one request/response cycle. When two or more tool calls
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are required, all of the tool call requests will be included in the response body.
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Structured output:
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```python
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from typing import Optional
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from pydantic import BaseModel, Field
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class Joke(BaseModel):
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'''Joke to tell user.'''
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setup: str = Field(description="The setup of the joke")
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punchline: str = Field(description="The punchline to the joke")
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rating: int | None = Field(description="How funny the joke is, from 1 to 10")
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structured_model = model.with_structured_output(Joke)
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structured_model.invoke("Tell me a joke about cats")
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```
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```python
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Joke(
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setup="Why was the cat sitting on the computer?",
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punchline="To keep an eye on the mouse!",
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rating=7,
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)
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```
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Live Search:
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xAI supports a [Live Search](https://docs.x.ai/docs/guides/live-search)
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feature that enables Grok to ground its answers using results from web searches.
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```python
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from langchain_xai import ChatXAI
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model = ChatXAI(
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model="grok-4",
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search_parameters={
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"mode": "auto",
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# Example optional parameters below:
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"max_search_results": 3,
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"from_date": "2025-05-26",
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"to_date": "2025-05-27",
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},
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)
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model.invoke("Provide me a digest of world news in the last 24 hours.")
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```
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!!! note
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[Citations](https://docs.x.ai/docs/guides/live-search#returning-citations)
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are only available in [Grok 3](https://docs.x.ai/docs/models/grok-3).
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Token usage:
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```python
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ai_msg = model.invoke(messages)
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ai_msg.usage_metadata
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```
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```python
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{"input_tokens": 37, "output_tokens": 6, "total_tokens": 43}
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```
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Logprobs:
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```python
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logprobs_model = model.bind(logprobs=True)
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messages = [("human", "Say Hello World! Do not return anything else.")]
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ai_msg = logprobs_model.invoke(messages)
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ai_msg.response_metadata["logprobs"]
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```
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```python
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{
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"content": None,
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"token_ids": [22557, 3304, 28808, 2],
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"tokens": [" Hello", " World", "!", "</s>"],
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"token_logprobs": [-4.7683716e-06, -5.9604645e-07, 0, -0.057373047],
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}
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```
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Response metadata:
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```python
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ai_msg = model.invoke(messages)
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ai_msg.response_metadata
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```
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```python
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{
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"token_usage": {
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"completion_tokens": 4,
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"prompt_tokens": 19,
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"total_tokens": 23,
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},
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"model_name": "grok-4",
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"system_fingerprint": None,
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"finish_reason": "stop",
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"logprobs": None,
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}
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```
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""" # noqa: E501
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model_name: str = Field(default="grok-4", alias="model")
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"""Model name to use."""
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xai_api_key: SecretStr | None = Field(
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alias="api_key",
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default_factory=secret_from_env("XAI_API_KEY", default=None),
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)
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"""xAI API key.
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Automatically read from env variable `XAI_API_KEY` if not provided.
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"""
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xai_api_base: str = Field(default="https://api.x.ai/v1/")
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"""Base URL path for API requests."""
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search_parameters: dict[str, Any] | None = None
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"""Parameters for search requests. Example: `{"mode": "auto"}`."""
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openai_api_key: SecretStr | None = None
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openai_api_base: str | None = None
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model_config = ConfigDict(
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populate_by_name=True,
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)
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@property
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def lc_secrets(self) -> dict[str, str]:
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"""A map of constructor argument names to secret ids.
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For example, `{"xai_api_key": "XAI_API_KEY"}`
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"""
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return {"xai_api_key": "XAI_API_KEY"}
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@classmethod
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def get_lc_namespace(cls) -> list[str]:
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"""Get the namespace of the LangChain object.
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Returns:
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`["langchain_xai", "chat_models"]`
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"""
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return ["langchain_xai", "chat_models"]
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@property
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def lc_attributes(self) -> dict[str, Any]:
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"""List of attribute names that should be included in the serialized kwargs.
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These attributes must be accepted by the constructor.
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"""
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attributes: dict[str, Any] = {}
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if self.xai_api_base:
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attributes["xai_api_base"] = self.xai_api_base
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return attributes
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@classmethod
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def is_lc_serializable(cls) -> bool:
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"""Return whether this model can be serialized by LangChain."""
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return True
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@property
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def _llm_type(self) -> str:
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"""Return type of chat model."""
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return "xai-chat"
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def _get_ls_params(
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self,
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stop: list[str] | None = None,
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**kwargs: Any, # noqa: ANN401
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) -> LangSmithParams:
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"""Get the parameters used to invoke the model."""
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params = super()._get_ls_params(stop=stop, **kwargs)
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params["ls_provider"] = "xai"
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return params
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@model_validator(mode="after")
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def validate_environment(self) -> Self:
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"""Validate that api key and python package exists in environment."""
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if self.n is not None and self.n < 1:
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msg = "n must be at least 1."
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raise ValueError(msg)
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if self.n is not None and self.n > 1 and self.streaming:
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msg = "n must be 1 when streaming."
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raise ValueError(msg)
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client_params: dict = {
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"api_key": (
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self.xai_api_key.get_secret_value() if self.xai_api_key else None
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),
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"base_url": self.xai_api_base,
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"timeout": self.request_timeout,
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"default_headers": self.default_headers,
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"default_query": self.default_query,
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}
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if self.max_retries is not None:
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client_params["max_retries"] = self.max_retries
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if client_params["api_key"] is None:
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msg = (
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"xAI API key is not set. Please set it in the `xai_api_key` field or "
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"in the `XAI_API_KEY` environment variable."
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)
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raise ValueError(msg)
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if not (self.client or None):
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sync_specific: dict = {"http_client": self.http_client}
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self.client = openai.OpenAI(
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**client_params, **sync_specific
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).chat.completions
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self.root_client = openai.OpenAI(**client_params, **sync_specific)
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if not (self.async_client or None):
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async_specific: dict = {"http_client": self.http_async_client}
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self.async_client = openai.AsyncOpenAI(
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**client_params, **async_specific
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).chat.completions
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self.root_async_client = openai.AsyncOpenAI(
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**client_params,
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**async_specific,
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)
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return self
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|
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@property
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def _default_params(self) -> dict[str, Any]:
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"""Get default parameters."""
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params = super()._default_params
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if self.search_parameters:
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if "extra_body" in params:
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params["extra_body"]["search_parameters"] = self.search_parameters
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else:
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params["extra_body"] = {"search_parameters": self.search_parameters}
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return params
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def _create_chat_result(
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self,
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response: dict | openai.BaseModel,
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generation_info: dict | None = None,
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) -> ChatResult:
|
|
rtn = super()._create_chat_result(response, generation_info)
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|
|
for generation in rtn.generations:
|
|
generation.message.response_metadata["model_provider"] = "xai"
|
|
|
|
if not isinstance(response, openai.BaseModel):
|
|
return rtn
|
|
|
|
if hasattr(response.choices[0].message, "reasoning_content"): # type: ignore[attr-defined]
|
|
rtn.generations[0].message.additional_kwargs["reasoning_content"] = (
|
|
response.choices[0].message.reasoning_content # type: ignore[attr-defined]
|
|
)
|
|
|
|
if hasattr(response, "citations"):
|
|
rtn.generations[0].message.additional_kwargs["citations"] = (
|
|
response.citations
|
|
)
|
|
|
|
return rtn
|
|
|
|
def _convert_chunk_to_generation_chunk(
|
|
self,
|
|
chunk: dict,
|
|
default_chunk_class: type,
|
|
base_generation_info: dict | None,
|
|
) -> ChatGenerationChunk | None:
|
|
generation_chunk = super()._convert_chunk_to_generation_chunk(
|
|
chunk,
|
|
default_chunk_class,
|
|
base_generation_info,
|
|
)
|
|
|
|
if generation_chunk:
|
|
generation_chunk.message.response_metadata["model_provider"] = "xai"
|
|
|
|
if (choices := chunk.get("choices")) and generation_chunk:
|
|
top = choices[0]
|
|
if isinstance(generation_chunk.message, AIMessageChunk) and (
|
|
reasoning_content := top.get("delta", {}).get("reasoning_content")
|
|
):
|
|
generation_chunk.message.additional_kwargs["reasoning_content"] = (
|
|
reasoning_content
|
|
)
|
|
|
|
if (
|
|
(citations := chunk.get("citations"))
|
|
and generation_chunk
|
|
and isinstance(generation_chunk.message, AIMessageChunk)
|
|
):
|
|
generation_chunk.message.additional_kwargs["citations"] = citations
|
|
|
|
return generation_chunk
|
|
|
|
def with_structured_output(
|
|
self,
|
|
schema: _DictOrPydanticClass | None = None,
|
|
*,
|
|
method: Literal[
|
|
"function_calling", "json_mode", "json_schema"
|
|
] = "function_calling",
|
|
include_raw: bool = False,
|
|
strict: bool | None = None,
|
|
**kwargs: Any, # noqa: ANN401
|
|
) -> Runnable[LanguageModelInput, _DictOrPydantic]:
|
|
"""Model wrapper that returns outputs formatted to match the given schema.
|
|
|
|
Args:
|
|
schema: The output schema. Can be passed in as:
|
|
|
|
- an OpenAI function/tool schema,
|
|
- a JSON Schema,
|
|
- a `TypedDict` class,
|
|
- or a Pydantic class.
|
|
|
|
If `schema` is a Pydantic class then the model output will be a
|
|
Pydantic instance of that class, and the model-generated fields will be
|
|
validated by the Pydantic class. Otherwise the model output will be a
|
|
dict and will not be validated.
|
|
|
|
See `langchain_core.utils.function_calling.convert_to_openai_tool` for
|
|
more on how to properly specify types and descriptions of schema fields
|
|
when specifying a Pydantic or `TypedDict` class.
|
|
|
|
method: The method for steering model generation, one of:
|
|
|
|
- `'function_calling'`:
|
|
Uses xAI's [tool-calling features](https://docs.x.ai/docs/guides/function-calling).
|
|
- `'json_schema'`:
|
|
Uses xAI's [structured output feature](https://docs.x.ai/docs/guides/structured-outputs).
|
|
- `'json_mode'`:
|
|
Uses xAI's JSON mode feature.
|
|
|
|
include_raw:
|
|
If `False` then only the parsed structured output is returned. If
|
|
an error occurs during model output parsing it will be raised. If `True`
|
|
then both the raw model response (a `BaseMessage`) and the parsed model
|
|
response will be returned. If an error occurs during output parsing it
|
|
will be caught and returned as well.
|
|
|
|
The final output is always a `dict` with keys `'raw'`, `'parsed'`, and
|
|
`'parsing_error'`.
|
|
|
|
strict:
|
|
- `True`:
|
|
Model output is guaranteed to exactly match the schema.
|
|
The input schema will also be validated according to the [supported schemas](https://platform.openai.com/docs/guides/structured-outputs/supported-schemas?api-mode=responses#supported-schemas).
|
|
- `False`:
|
|
Input schema will not be validated and model output will not be
|
|
validated.
|
|
- `None`:
|
|
`strict` argument will not be passed to the model.
|
|
|
|
kwargs: Additional keyword args aren't supported.
|
|
|
|
Returns:
|
|
A `Runnable` that takes same inputs as a
|
|
`langchain_core.language_models.chat.BaseChatModel`. If `include_raw` is
|
|
`False` and `schema` is a Pydantic class, `Runnable` outputs an instance
|
|
of `schema` (i.e., a Pydantic object). Otherwise, if `include_raw` is
|
|
`False` then `Runnable` outputs a `dict`.
|
|
|
|
If `include_raw` is `True`, then `Runnable` outputs a `dict` with keys:
|
|
|
|
- `'raw'`: `BaseMessage`
|
|
- `'parsed'`: `None` if there was a parsing error, otherwise the type
|
|
depends on the `schema` as described above.
|
|
- `'parsing_error'`: `BaseException | None`
|
|
"""
|
|
# Some applications require that incompatible parameters (e.g., unsupported
|
|
# methods) be handled.
|
|
if method == "function_calling" and strict:
|
|
strict = None
|
|
return super().with_structured_output(
|
|
schema, method=method, include_raw=include_raw, strict=strict, **kwargs
|
|
)
|