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@seventhoce56019: In one day, the project's stars went from 2k to 2400. Author, if you see this tweet, how about giving me a like?

X AI KOLs Timeline · 2d ago Cached

Shared an open-source project called reverse-skill, which uses a routing.md file to guide AI in automatically handling reverse engineering and security tasks, covering over 20 sub-skill areas. The tweet mentioned that the project's stars increased from 2000 to 2400 in one day.

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#github-star

@laobaishare: Awesome, Obsidian founder steps in. Turned the entire note repository into an AI agent. GitHub reached 36k stars in a few days. What exactly did they do?

X AI KOLs Timeline · 3d ago Cached

Obsidian founder personally turned the entire note vault into an AI agent. The project quickly gained 36k stars on GitHub.

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#github-star

@DivyanshT91162: A grad student with just 32 followers built one of the most important AI developer tools of 2026. Yuxiang Lin's project…

X AI KOLs Timeline · 2026-06-11 Cached

Yuxiang Lin, a graduate student with minimal following, built an open-source tool that converts codebases into interactive knowledge graphs, gaining massive adoption across AI coding assistants like Claude Code and GitHub Copilot.

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#github-star

@sitinme: GitHub 30k stars, do RAG without vector databases and with higher accuracy! Anyone doing RAG has probably experienced this: the vector database returns content that "looks relevant" but isn't the answer you're looking for. Especially with long documents like contracts, financial reports, technical manuals, when you ask "What was Q3 revenue?", it returns a paragraph about "company business overview." Similarity ≠ relevance—this is the fundamental problem with vector retrieval. PageIndex's solution is straightforward and brute-force: skip vectors, use reasoning.

X AI KOLs Timeline · 2026-05-13

Introduces an open-source project with 30k stars on GitHub that achieves RAG through reasoning instead of vector databases, claiming higher accuracy and solving the problem of similarity not equating to relevance.

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