DS1 spectrogram: FootsiesGym: A Fighting Game Benchmark for Two-Player Zero-Sum Imperfect-Information Games

FootsiesGym: A Fighting Game Benchmark for Two-Player Zero-Sum Imperfect-Information Games

2607.06514

Authors

Chase McDonald,Nathan Tsang,Wesley N. Kerr

Abstract

We present FootsiesGym, an open-source environment for learning in a non-trivial two-player, zero-sum, imperfect-information game. Built on HiFight's minimalist 2D fighting game Footsies, it isolates the cyclic, non-transitive strategic interactions of fighting game neutral play while remaining simple enough for efficient analysis.

We provide a vectorized simulator that enables high-throughput training on standard hardware, making the environment accessible and reproducible. We describe the design of the environment, benchmark several reinforcement learning algorithms, and discuss open research directions it enables.

The code is available at https://github.com/como-research/FootsiesGym.

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