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simstudioai/sim

Build, deploy, and orchestrate AI agents. Sim is the central intelligence layer for your AI workforce.

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What it does

Sim Studio is an open-source workspace that lets teams build and manage AI agents — software that can take actions and make decisions automatically — without needing to write much code. You can connect it to over 1,000 apps and services and use any major AI model, building workflows either by chatting, dragging and dropping visually, or writing code.

Why it matters

With nearly 29,000 stars on GitHub, this project signals massive demand for a flexible, self-hosted alternative to expensive proprietary AI automation platforms like Zapier AI or Microsoft Copilot Studio — giving companies full control over their AI workforce without vendor lock-in. For founders and product teams, it represents a fast path to automating real business operations using AI, with the credibility of a large open-source community already validating the approach.

13Active

On the radar — signal detected

Stars
28.9k
Forks
3.7k
Contributors
56
Language
TypeScript

Score updated Jun 26, 2026

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