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HKUDS/ClawWork

"ClawWork: OpenClaw as Your AI Coworker - 💰 $15K earned in 11 Hours"

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What it does

ClawWork is a platform that puts AI assistants to work on real professional tasks across 44+ job types — from engineering and finance to healthcare and legal — and tracks how much money each AI earns over time, like a leaderboard for AI workers. Think of it as a live experiment where different AI models compete to complete real work and get paid for it, giving you a concrete, dollar-based way to compare how useful each AI actually is.

Why it matters

This project reframes the AI conversation from 'which model scores best on tests' to 'which AI actually earns money doing real work,' which is a much more compelling pitch for enterprise buyers and investors evaluating AI ROI. For product teams building AI-powered features, the profession-by-profession performance data could directly inform which AI model to use for specific use cases — turning an abstract capability debate into a business decision backed by revenue numbers.

39Active

On the radar — signal detected

Stars
8.2k
Forks
1.1k
Contributors
6
Language
Python

Score updated Mar 9, 2026

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