Robot Drummer: Learning Rhythmic Skills for Humanoid Drumming

Abstract

Humanoid robots have seen remarkable advances in dexterity, balance, and locomotion, yet their role in expressive domains such as music performance remains largely unexplored. Musical tasks, like drumming, present unique challenges such as split-second timing, rapid contacts, and multi-limb coordination over performances lasting minutes. In this work, we introduce Robot Drummer, a simulation framework for humanoid drumming across a diverse repertoire of songs. We formulate humanoid drumming as the realization of timed contact events encoded as a Rhythmic Contact Chain. To handle the long-horizon nature of musical performance, we decompose each track into fixed-length segments and train a single policy across all segments in parallel using reinforcement learning. Through extensive experiments on over thirty popular tracks, our results demonstrate that Robot Drummer consistently achieves high F1 scores and enables efficient learning of long-horizon musical performances. The learned behaviors exhibit emergent human-like drumming strategies, such as cross-arm strikes, and adaptive stick assignments, demonstrating the potential of reinforcement learning to bring humanoid robots into the domain of creative musical performance.

Architecture of robot drummer

Humanoid Drumming Performance

Performance of specialist RL policies in playing various songs.
Full performances are available on YouTube channel

BibTeX

@article{shahid2025drummer,
  title={Robot Drummer: Learning Rhythmic Skills for Humanoid Drumming},
  author={Shahid, Asad Ali and Braghin, Francesco and Roveda Loris},
  journal={arXiv preprint arXiv:2507.11498},
  year={2025}
}