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Enhancing RAG-based application accuracy by constructing and leveraging knowledge graphs
March 15, 2024, 6:01 p.m. | LangChain
LangChain blog.langchain.dev
A practical guide to constructing and retrieving information from knowledge graphs in RAG applications with Neo4j and LangChain
Editor's Note: the following is a guest blog post from Tomaz Bratanic, who focuses on Graph ML and GenAI research at Neo4j. Neo4j is a graph database and analytics
accuracy analytics application applications blog database genai graph graph database graphs guide information knowledge knowledge graphs neo4j practical rag research
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