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paperclipai/paperclip

The open-source app everyone uses to manage agents at work

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What it does

Paperclip is an open-source dashboard that lets you run a team of AI agents like a company — you set a business goal, assign roles like CEO or engineer to different AI bots, approve a budget, and then monitor their work from one place. It sits on top of whatever AI agents you already use and adds the management layer: org charts, task tracking, cost controls, and the ability to step in and redirect when needed.

Why it matters

As AI agents become capable of doing real work, the bottleneck is shifting from 'can AI do this task' to 'how do I manage dozens of AI agents working simultaneously without losing control or overspending' — Paperclip is an early bet on that coordination layer becoming its own product category. With 71,000+ stars, it signals strong market appetite for tools that treat AI agents as a workforce to be managed, not just features to be integrated.

40Hot

Gaining traction — heating up

Stars
71.6k
Forks
13.3k
Contributors
88
Language
TypeScript

Score updated Jun 27, 2026

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