Taaseen-Ali/OpenAI-Gym-Car-Race
A self-driving car OpenAI Gym environment
This project helps developers working on self-driving car algorithms. It provides a simulated race track environment where you can train and test different AI models for autonomous navigation. You input your car's control logic, and it outputs how well your virtual car performs on various custom-designed tracks.
No commits in the last 6 months.
Use this if you are developing or experimenting with reinforcement learning algorithms for autonomous vehicle control in a customizable, simulated environment.
Not ideal if you are looking for a high-fidelity physics simulator for advanced automotive engineering or real-world autonomous driving system testing.
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Language
Python
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Last pushed
Apr 30, 2021
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