This podcast episode delves into the innovative intersection of knowledge graphs, generative AI, and enhanced question answering, featuring guest Saurav Joshi who shares his expertise on leveraging Neo4j and Langchain within a Retrieval Augmented Generation (RAG) workflow. Through detailed discussions and code walkthroughs, Saurav illustrates how combining vector search and structured graph databases can address the complexities of information retrieval from diverse datasets, emphasizing the importance of efficient querying and context retention. By advocating for a hybrid approach, he provides actionable insights on constructing knowledge graphs that optimize the performance of language models, ultimately equipping listeners with the tools to enhance their own data-driven applications.
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