English

PlayWorld: Learning Robot World Models from Autonomous Play

Robotics 2026-04-07 v3 Artificial Intelligence

Abstract

Action-conditioned video models offer a promising path to building general-purpose robot simulators that can improve directly from data. Yet, despite training on large-scale robot datasets, current state-of-the-art video models still struggle to predict physically consistent robot-object interactions that are crucial in robotic manipulation. To close this gap, we present PlayWorld, a simple, scalable, and fully autonomous pipeline for training high-fidelity video world simulators from interaction experience. In contrast to prior approaches that rely on success-biased human demonstrations, PlayWorld is the first system capable of learning entirely from unsupervised robot self-play, enabling naturally scalable data collection while capturing complex, long-tailed physical interactions essential for modeling realistic object dynamics. Experiments across diverse manipulation tasks show that PlayWorld generates high-quality, physically consistent predictions for contact-rich interactions that are not captured by world models trained on human-collected data. We further demonstrate the versatility of PlayWorld in enabling fine-grained failure prediction and policy evaluation, with up to 40% improvements over human-collected data. Finally, we demonstrate how PlayWorld enables reinforcement learning in the world model, improving policy performance by 65% in success rates when deployed in the real world.

Keywords

Cite

@article{arxiv.2603.09030,
  title  = {PlayWorld: Learning Robot World Models from Autonomous Play},
  author = {Tenny Yin and Zhiting Mei and Zhonghe Zheng and Miyu Yamane and David Wang and Jade Sceats and Samuel M. Bateman and Lihan Zha and Apurva Badithela and Ola Shorinwa and Anirudha Majumdar},
  journal= {arXiv preprint arXiv:2603.09030},
  year   = {2026}
}

Comments

Website: https://robot-playworld.github.io/

R2 v1 2026-07-01T11:11:24.687Z