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ApolloRL: a Reinforcement Learning Platform for Autonomous Driving

29 January 2022
Fei Gao
Peng Geng
Jiaqi Guo
YuanQiang Liu
Dingfeng Guo
Yabo Su
Jie Zhou
Xiao Wei
Jin Li
Xu Liu
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Abstract

We introduce ApolloRL, an open platform for research in reinforcement learning for autonomous driving. The platform provides a complete closed-loop pipeline with training, simulation, and evaluation components. It comes with 300 hours of real-world data in driving scenarios and popular baselines such as Proximal Policy Optimization (PPO) and Soft Actor-Critic (SAC) agents. We elaborate in this paper on the architecture and the environment defined in the platform. In addition, we discuss the performance of the baseline agents in the ApolloRL environment.

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