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nextlevelbuilder/goclaw

GoClaw - GoClaw is OpenClaw rebuilt in Go — with multi-tenant isolation, 5-layer security, and native concurrency. Deploy AI agent teams at scale without compromising on safety.

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What it does

GoClaw is an open-source platform that lets you deploy and manage teams of AI agents across 20+ AI providers and 7 communication channels (like Discord, Telegram, and web) from a single piece of software. It's built with multi-tenant isolation, meaning multiple separate customers or teams can run their own AI agents on the same system without their data or activity touching each other.

Why it matters

As AI agent products move from experiments to production, the hardest problems are safety, scale, and supporting multiple customers — GoClaw packages all three into a ready-to-deploy solution, dramatically cutting time-to-market for teams building AI-powered products. With 2,400+ stars and growing community adoption, it's becoming a credible open-source foundation that could reduce dependency on expensive managed AI orchestration services.

22Active

On the radar — signal detected

Stars
3.3k
Forks
942
Contributors
30
Language
Go

Score updated Apr 11, 2026

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