gsurma/deep_traffic
MIT DeepTraffic top 2% solution (75.01 mph) 🚗.
This project offers a highly effective strategy for navigating simulated traffic using artificial intelligence. It takes in traffic conditions and vehicle behaviors within a simulated environment and produces optimal driving decisions to achieve high speeds without collisions. This would be used by researchers or students exploring advanced AI for autonomous vehicle control or traffic management.
No commits in the last 6 months.
Not ideal if you need a real-world, deployable solution for self-driving cars, as this is a simulation-based competition entry.
Stars
55
Forks
11
Language
JavaScript
License
MIT
Category
Last pushed
Jul 09, 2021
Commits (30d)
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