Explainable AI With Knowledge Graphs and RAG

30 Minutes

To deliver more accurate, explainable AI, vector search alone doesn’t provide the best results. While that technique improves the probability of a correct response, it still lacks domain-specific context and explainability. 

When you combine knowledge graphs and RAG into GraphRAG, you ground your LLM in precise, domain-specific data to:
  • Easily trace sources
  • Explain retrieval logic
  • Avoid hallucinations 

Learn the difference GraphRAG makes for your GenAI. Join us at our on-demand webinar to see side-by-side examples of LLM responses that compare using vector search alone and then adding in GraphRAG.

In just 30 minutes, you’ll find out:
  • How graphs fit within a RAG architecture
  • The fundamental ways that GraphRAG improves retrieval
  • How using Graph Data Science, a library of algorithms that helps uncover further hidden relationships in data, further enhances GraphRAG
Don’t settle for incomplete answers. Register to see how GraphRAG can improve your results.


SPEAKER

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John Stegeman
Product Specialist, Neo4j

John “Steggy” Stegeman is a Senior Graph Database Product Specialist with Neo4j. Prior to joining Neo4j, he held solution architect and consulting roles at Oracle, DXC, Waterline Data, and Hitachi Vantara. John is a self-avowed technology nerd who loves using technology to solve real-world enterprise challenges.

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