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arxiv: 1907.11180 · v2 · pith:Y2N72ZATnew · submitted 2019-07-25 · 💻 cs.LG · stat.ML

Google Research Football: A Novel Reinforcement Learning Environment

classification 💻 cs.LG stat.ML
keywords footballenvironmentlearningreinforcementresearchalgorithmsgooglenovel
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Recent progress in the field of reinforcement learning has been accelerated by virtual learning environments such as video games, where novel algorithms and ideas can be quickly tested in a safe and reproducible manner. We introduce the Google Research Football Environment, a new reinforcement learning environment where agents are trained to play football in an advanced, physics-based 3D simulator. The resulting environment is challenging, easy to use and customize, and it is available under a permissive open-source license. In addition, it provides support for multiplayer and multi-agent experiments. We propose three full-game scenarios of varying difficulty with the Football Benchmarks and report baseline results for three commonly used reinforcement algorithms (IMPALA, PPO, and Ape-X DQN). We also provide a diverse set of simpler scenarios with the Football Academy and showcase several promising research directions.

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