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Harvard has a problem w/ LLMs and RAG
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Harvard Univ develops a new solution
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The Generate Phase medical triplets
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Review Phase of KGARevion
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Multiple embeddings from LLM and Graphs
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Alignment of all embeddings in common math space
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Dynamic update of the Knowledge graph
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Update LLM with grounded graph knowledge
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Revise phase to correct incomplete triplets
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Answer phase brings it all together
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Summary
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Performance analysis
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All prompts for KGARevion in detail
Description:
Explore a research presentation detailing Harvard's innovative KGARevion system, a knowledge graph-based agent designed to enhance medical AI performance. Learn how this groundbreaking approach addresses the limitations of traditional Retrieval-Augmented Generation (RAG) in medicine by combining Large Language Models' knowledge with structured medical knowledge graphs. Understand the complete workflow from the generation of medical triplets through multiple embedding alignments to dynamic knowledge graph updates. Discover detailed implementation steps, including the review phase, embedding alignment in common mathematical space, and the revision process for incomplete triplets. Examine performance analyses and gain access to detailed prompts used in the KGARevion system, making complex medical AI interactions more accurate and comprehensive. Perfect for both AI practitioners and beginners interested in the intersection of artificial intelligence and medical knowledge systems.

KGARevision: A Knowledge Graph-Based Agent for Medical AI Question Answering

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