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Mintplex-Labs/anything-llm

The all-in-one AI productivity accelerator. On device and privacy first with no annoying setup or configuration.

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What it does

AnythingLLM is an all-in-one AI chat application that lets you connect your own documents, websites, and content to popular AI models — so the AI can answer questions specifically about your data, not just general knowledge. It runs locally on your computer (Mac, Windows, or Linux), supports multiple users with different permission levels, and works with virtually any AI model or storage backend you choose.

Why it matters

With nearly 56,000 stars, this project signals massive demand for private, self-hosted AI assistants that businesses can customize without sending sensitive data to third-party cloud services. For founders and product teams, it represents both a ready-made foundation to build AI-powered products on top of and a clear signal that 'bring your own data' AI tools are a strong market category.

39Active

On the radar — signal detected

Stars
57.6k
Forks
6.2k
Contributors
185
Language
JavaScript

Score updated Apr 4, 2026

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