Building Neo4j-Powered Applications with LLMs: A Book on Knowledge Graphs and RAG for Search & Recommendations
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A book description for "Building Neo4j-Powered Applications with LLMs" by Ravindranatha Anthapu and Siddhant Agarwal. The book is a guide to building generative AI applications using Neo4j knowledge graphs, vector search, and Retrieval-Augmented Generation (RAG). It covers frameworks like Haystack, Spring AI, and LangChain4j as alternatives to LangChain, targeting developers interested in combining graph databases with LLMs for search and recommendation systems.
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· 3 pulledA comprehensive guide to building cutting-edge generative AI applications using Neo4j's knowledge graphs and vector search capabilities
Embark on an expert-led journey into building LLM-powered applications using Retrieval-Augmented Generation (RAG) and Neo4j knowledge graphs
Written by Ravindranatha Anthapu, Principal Consultant at Neo4j, and Siddhant Agrawal, a Google Developer Expert in GenAI
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