Welcome to another OpenAI Langchain video. In this one, we are going to take a look at how we can use selectors to limit the number of examples fed into a large language model (LLM). This will save you money as it limits the number of tokens used when running a model.
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Негізгі бет Ғылым және технология Unlocking the Power of Selectors in LangChain and OpenAI (Large Language Models)
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