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xvirobotics/metabot

Infrastructure for building a supervised, self-improving agent organization. Run Claude Code from Feishu & Telegram with shared memory, agent factory, task scheduling, and an agent communication bus.

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What it does

MetaBot is an open-source system that lets companies run AI agents — specifically Anthropic's Claude — directly through messaging apps like Telegram and the workplace tool Feishu, so teams can assign tasks, manage memory, and coordinate multiple AI agents the way they would manage employees. It was built by a robotics company that uses it internally to operate their business with a small human team supervising a fleet of AI agents that can improve themselves over time.

Why it matters

This is a working blueprint for the 'AI-native company' model that many founders are racing toward — where humans set direction and AI agents handle execution at scale, all without needing dedicated software engineers to wire it together. For investors and founders, it signals that the infrastructure layer for agent-run organizations is maturing fast, and that early movers who adopt these patterns could operate with dramatically leaner teams.

39Active

On the radar — signal detected

Stars
427
Forks
44
Contributors
7
Language
TypeScript
Downloads (7d)
1

npm/metabot

Score updated Mar 14, 2026

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