RLCard: A Platform for Reinforcement Learning in Card Games
RLCard: A Platform for Reinforcement Learning in Card Games
Daochen Zha, Kwei-Herng Lai, Songyi Huang, Yuanpu Cao, Keerthana Reddy, Juan Vargas, Alex Nguyen, Ruzhe Wei, Junyu Guo, Xia Hu
Proceedings of the Twenty-Ninth International Joint Conference on Artificial Intelligence
Demos. Pages 5264-5266.
https://doi.org/10.24963/ijcai.2020/764
We present RLCard, a Python platform for reinforcement learning research and development in card games. RLCard supports various card environments and several baseline algorithms with unified easy-to-use interfaces, aiming at bridging reinforcement learning and imperfect information games. The platform provides flexible configurations of state representation, action encoding, and reward design. RLCard also supports visualizations for algorithm debugging. In this demo, we showcase two representative environments and their visualization results. We conclude this demo with challenges and research opportunities brought by RLCard. A video is available on YouTube.
Keywords:
Game Playing: general
Multi-agent Systems: general
Machine Learning: general