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    Pythonlangchain-classicagentsagentAgentfrom_llm_and_tools
    Method●Since v1.0

    from_llm_and_tools

    Construct an agent from an LLM and tools.

    Copy
    from_llm_and_tools(
      cls,
      llm: BaseLanguageModel,
      tools: Sequence[BaseTool],
      callback_manager: BaseCallbackManager | None = None,
      output_parser: AgentOutputParser | None = None,
      **kwargs: Any = {}
    ) -> Agent

    Parameters

    NameTypeDescription
    llm*BaseLanguageModel

    Language model to use.

    tools*Sequence[BaseTool]

    Tools to use.

    callback_managerBaseCallbackManager | None
    Default:None

    Callback manager to use.

    output_parserAgentOutputParser | None
    Default:None

    Output parser to use.

    kwargsAny
    Default:{}

    Additional arguments.

    View source on GitHub