Chat Models#
- pydantic model langchain.chat_models.AzureChatOpenAI[source]#
Wrapper around Azure OpenAI Chat Completion API. To use this class you must have a deployed model on Azure OpenAI. Use deployment_name in the constructor to refer to the “Model deployment name” in the Azure portal.
In addition, you should have the
openaipython package installed, and the following environment variables set or passed in constructor in lower case: -OPENAI_API_TYPE(default:azure) -OPENAI_API_KEY-OPENAI_API_BASE-OPENAI_API_VERSIONFor exmaple, if you have gpt-35-turbo deployed, with the deployment name 35-turbo-dev, the constructor should look like:
Be aware the API version may change.
Any parameters that are valid to be passed to the openai.create call can be passed in, even if not explicitly saved on this class.
- Validators
build_extra»all fieldsset_callback_manager»callback_managervalidate_environment»all fields
- field deployment_name: str = ''#
- field openai_api_base: str = ''#
- field openai_api_key: str = ''#
- field openai_api_type: str = 'azure'#
- field openai_api_version: str = ''#
- field openai_organization: str = ''#
- pydantic model langchain.chat_models.ChatAnthropic[source]#
Wrapper around Anthropic’s large language model.
To use, you should have the
anthropicpython package installed, and the environment variableANTHROPIC_API_KEYset with your API key, or pass it as a named parameter to the constructor.Example
- Validators
set_callback_manager»callback_managervalidate_environment»all fields
- field callback_manager: langchain.callbacks.base.BaseCallbackManager [Optional]#
- field verbose: bool [Optional]#
Whether to print out response text.
- pydantic model langchain.chat_models.ChatOpenAI[source]#
Wrapper around OpenAI Chat large language models.
To use, you should have the
openaipython package installed, and the environment variableOPENAI_API_KEYset with your API key.Any parameters that are valid to be passed to the openai.create call can be passed in, even if not explicitly saved on this class.
Example
from langchain.chat_models import ChatOpenAI openai = ChatOpenAI(model_name="gpt-3.5-turbo")
- Validators
build_extra»all fieldsset_callback_manager»callback_managervalidate_environment»all fields
- field max_retries: int = 6#
Maximum number of retries to make when generating.
- field max_tokens: Optional[int] = None#
Maximum number of tokens to generate.
- field model_kwargs: Dict[str, Any] [Optional]#
Holds any model parameters valid for create call not explicitly specified.
- field model_name: str = 'gpt-3.5-turbo'#
Model name to use.
- field n: int = 1#
Number of chat completions to generate for each prompt.
- field openai_api_key: Optional[str] = None#
- field openai_organization: Optional[str] = None#
- field request_timeout: int = 60#
Timeout in seconds for the OpenAPI request.
- field streaming: bool = False#
Whether to stream the results or not.
- field temperature: float = 0.7#
What sampling temperature to use.
- get_num_tokens_from_messages(messages: List[langchain.schema.BaseMessage]) int[source]#
Calculate num tokens for gpt-3.5-turbo and gpt-4 with tiktoken package.
Official documentation: openai/openai-cookbook main/examples/How_to_format_inputs_to_ChatGPT_models.ipynb
- pydantic model langchain.chat_models.PromptLayerChatOpenAI[source]#
Wrapper around OpenAI Chat large language models and PromptLayer.
To use, you should have the
openaiandpromptlayerpython package installed, and the environment variableOPENAI_API_KEYandPROMPTLAYER_API_KEYset with your openAI API key and promptlayer key respectively.All parameters that can be passed to the OpenAI LLM can also be passed here. The PromptLayerChatOpenAI adds to optional :param
pl_tags: List of strings to tag the request with. :paramreturn_pl_id: If True, the PromptLayer request ID will bereturned in the
generation_infofield of theGenerationobject.Example
from langchain.chat_models import PromptLayerChatOpenAI openai = PromptLayerChatOpenAI(model_name="gpt-3.5-turbo")
- Validators
build_extra»all fieldsset_callback_manager»callback_managervalidate_environment»all fields
- field pl_tags: Optional[List[str]] = None#
- field return_pl_id: Optional[bool] = False#