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YC F24's Circlemind is an open-source RAG that uses knowledge graphs and PageRank for more accurate retrieval. Their RAG is up to 3x more accurate than vector databases.

22,927 Aufrufe • vor 1 Jahr •via X (Twitter)

5 Kommentare

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parsavor 1 Jahr

@circlemind_ai

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race-of-slothsvor 1 Jahr

@circlemind_ai Y Combinator continues to drive innovation! At Race of Sloth, we’re excited to see open-source initiatives shaping the future of tech.

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Fahadvor 1 Jahr

@circlemind_ai Can this be deployed on-prem?

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Sankalpvor 1 Jahr

@circlemind_ai is it based on nearest neighbor retrieval

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Alexander Ershovvor 1 Jahr

@circlemind_ai Is it already used in some production use cases?

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