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arxiv:2203.10494

MicroRacer: a didactic environment for Deep Reinforcement Learning

Published on Mar 20, 2022
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Abstract

MicroRacer is an open-source car racing environment designed for deep reinforcement learning education, offering baseline agents for various algorithms and facilitating experimentation with different methods and settings.

AI-generated summary

MicroRacer is a simple, open source environment inspired by car racing especially meant for the didactics of Deep Reinforcement Learning. The complexity of the environment has been explicitly calibrated to allow users to experiment with many different methods, networks and hyperparameters settings without requiring sophisticated software or the need of exceedingly long training times. Baseline agents for major learning algorithms such as DDPG, PPO, SAC, TD2 and DSAC are provided too, along with a preliminary comparison in terms of training time and performance.

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