Linus Torvalds has started vibe coding, just not on Linux

TechSpotTuesday, January 13, 2026 at 3:33:00 PM
Linus Torvalds has started vibe coding, just not on Linux
  • Linus Torvalds has initiated a new project named AudioNoise, which focuses on digital audio effects and signal processing, and is available on his GitHub. This project stems from his previous hardware experiment, GuitarPedal, where he created homemade guitar effects pedals to deepen his understanding of audio technology.
  • This development highlights Torvalds' continued innovation beyond Linux, showcasing his interest in audio programming and digital effects, which may attract attention from both developers and audio enthusiasts.
  • The emergence of AudioNoise reflects a broader trend in the tech community where established figures explore diverse fields, such as artificial intelligence, which Torvalds believes can enhance code maintenance for Linux, albeit with caution against overstating its revolutionary potential.
— via World Pulse Now AI Editorial System

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