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ItzCrazyKns/Vane

Vane is an AI-powered answering engine.

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What it does

Vane is an open-source search engine powered by AI that answers questions by pulling results from the web and presenting them with cited sources — similar to how Perplexity works, but designed to run entirely on your own computer or server for complete privacy. It supports a range of AI models, including ones you run locally without an internet connection, and handles text, images, documents, and more.

Why it matters

With over 33,000 stars, Vane signals massive developer appetite for a self-hostable, privacy-first alternative to commercial AI search products like Perplexity — representing a real opportunity for builders who need AI-powered search without sending user data to third parties. For founders and product teams, it's a ready-made foundation to embed intelligent, source-backed search into enterprise tools, internal knowledge bases, or consumer apps where data privacy is a selling point.

38Active

On the radar — signal detected

Stars
35.5k
Forks
3.9k
Contributors
50
Language
TypeScript

Score updated May 14, 2026

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