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    Pythonlangchain-classicchainsopenai_functionsextraction
    Moduleā—Since v1.0

    extraction

    Functions

    Classes

    View source on GitHub
    function
    get_llm_kwargs
    deprecatedfunction
    create_extraction_chain
    deprecatedfunction
    create_extraction_chain_pydantic
    class
    Chain
    deprecatedclass
    LLMChain

    Return the kwargs for the LLMChain constructor.

    Creates a chain that extracts information from a passage.

    Creates a chain that extracts information from a passage using Pydantic schema.

    Abstract base class for creating structured sequences of calls to components.

    Chains should be used to encode a sequence of calls to components like models, document retrievers, other chains, etc., and provide a simple interface to this sequence.

    Chain to run queries against LLMs.

    This class is deprecated. See below for an example implementation using LangChain runnables:

    from langchain_core.output_parsers import StrOutputParser
    from langchain_core.prompts import PromptTemplate
    from langchain_openai import OpenAI
    
    prompt_template = "Tell me a {adjective} joke"
    prompt = PromptTemplate(input_variables=["adjective"], template=prompt_template)
    model = OpenAI()
    chain = prompt | model | StrOutputParser()
    
    chain.invoke("your adjective here")