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jamiepine/voicebox

The open-source AI voice studio. Clone, dictate, create.

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What it does

Voicebox is a free, open-source desktop application that lets you clone voices, generate realistic speech, and apply audio effects — all running privately on your own computer without sending data to any cloud service. It works as both a standalone studio with a visual interface and as an API that other apps can connect to.

Why it matters

With nearly 20,000 stars, this project signals massive builder demand for voice AI that doesn't require expensive API subscriptions or sharing sensitive audio data with third parties — a serious competitive advantage for products in healthcare, media, or enterprise. Founders building voice-powered features can use this as a free foundation instead of paying per-character fees to services like ElevenLabs, dramatically changing the unit economics of voice-enabled products.

Why it's trending

Privacy concerns around cloud-based voice tools have been building for a while, and Voicebox appears to be hitting a nerve — it nearly doubled its weekly star count this week, jumping from 3,089 to 5,294 new stars as word spreads that you can clone voices and generate speech entirely on your own machine. A single Hacker News mention this week helped surface it to the builder community, and with 49 commits in the last 30 days, the project is clearly under active development rather than coasting on hype. At 22,000+ stars with only 28 contributors, this is still a small team driving outsized attention, which makes it worth watching to see whether the community grows to match the momentum.

43Hot

Gaining traction — heating up

Stars
34.3k
Forks
4.1k
Contributors
28
Language
TypeScript

Score updated Apr 26, 2026

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