MicroRacer:深度强化学习的教学环境

A. Asperti, Marco Del Brutto
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引用次数: 0

摘要

MicroRacer是一个简单的开源环境,受赛车的启发,特别适用于深度强化学习的教学。环境的复杂性已经被明确校准,允许用户尝试许多不同的方法、网络和超参数设置,而不需要复杂的软件或超长的培训时间。提供了DDPG、PPO、SAC、TD2、DSAC等主要学习算法的基线代理,并对训练时间和性能进行了初步比较。
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MicroRacer: a didactic environment for Deep Reinforcement Learning
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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