April 17, 2023, 12:30 p.m. | Ksenia Se

TheSequence thesequence.substack.com

In this guest post, Filip Haltmayer, a Software Engineer at Zilliz, explains how LangChain and Milvus can enhance the usefulness of Large Language Models (LLMs) by allowing for the storage and retrieval of relevant documents. By integrating Milvus, a vector database, with LangChain, LLMs can process more tokens and improve their conversational abilities.

database documents engineer guest post langchain language language models large language models llms milvus process retrieval software software engineer storage tokens vector vector database zilliz

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