Integrating Knowledge Graphs and Vector RAG for Efficient Information Extraction - Reading Group Session
Offered By: MLOps.community via YouTube
Course Description
Overview
Syllabus
[] Hybrid rank combines knowledge graphs, vector retrieval
[] Hybrid drag improves accuracy using knowledge graphs
[] Text preprocessing and graph algorithms improve LLM responses
[] Faithfulness measures the consistency of LLM-generated answers
[] Faithfulness metric should normalize statements' word counts
[] Analyzed Nifty 50 earning calls for hedge fund
[] Construct a knowledge graph and chunk text data
[] Example of earnings extraction illustrating graph advantages
[] Traversing graph to find relevant entities' relationships
[] Highly connected graph; combine vectors, graphs arbitrarily
[] Graph neural networks improve re-ranking and retrieval
[] Comparison methods are unfair due to unequal context size
[] Making larger language models traverse graph structures
[] Consider separating entity attributes from relationships
[] Join discussions on Slack, suggest topics, participate
[] Wrap up
Taught by
MLOps.community
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