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autowarefoundation/autoware

Autoware - the world's leading open-source software project for autonomous driving

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What it does

Autoware is a free, open-source software platform that gives self-driving vehicles everything they need to operate — from figuring out where they are on a map and spotting obstacles, to planning routes and controlling the car. Think of it as a complete operating system for autonomous vehicles that any company or researcher can use and build on without starting from scratch.

Why it matters

With over 11,000 stars and 3,600 forks, Autoware has become the de facto open standard for autonomous driving software, meaning startups and enterprises building in this space can avoid years of foundational R&D by building on top of it. For investors and founders, this signals a maturing ecosystem where competitive advantage shifts from building core driving software to the applications, data, and hardware built around it.

41Hot

Gaining traction — heating up

Stars
11.8k
Forks
3.7k
Contributors
83
Language
Dockerfile

Score updated May 3, 2026

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