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    General integrations

    LLMs

    You are currently on a page documenting the use of text completion models. Many of the latest and most popular models are chat completion models.Unless you are specifically using more advanced prompting techniques, you are probably looking for this page instead.
    LLMs are language models that takes a string as input and return a string as output.

    ​
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    Replicate

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