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Panniantong/Agent-Reach

Give your AI agent eyes to see the entire internet. Read & search Twitter, Reddit, YouTube, GitHub, Bilibili, XiaoHongShu — one CLI, zero API fees.

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What it does

Agent Reach is a free, open-source tool that gives AI assistants (like Claude or Cursor) the ability to browse and search the real internet — reading Twitter posts, YouTube transcripts, Reddit threads, GitHub repos, and Chinese platforms like Bilibili and XiaoHongShu — without paying for expensive API access. It acts as a universal plug-in that removes the barriers preventing AI tools from gathering live information from the web.

Why it matters

As AI assistants become core to how teams work, the ability to pull real-time information from social media and the web is a major competitive advantage — and this project makes that capability free and accessible to anyone, undercutting paid data providers. With nearly 1,800 stars and growing, it signals strong market demand for 'internet-connected AI' tooling, which is a space investors and product teams should watch closely.

12Active

On the radar — signal detected

Stars
10.8k
Forks
790
Contributors
10
Language
Python

Score updated Mar 25, 2026

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