From Tabula Rasa to Emergent Abilities: Discovering Robot Skills via Real-World Unsupervised Quality-Diversity
Abstract
Autonomous skill discovery aims to enable robots to acquire diverse be-haviors without explicit supervision. Learning such behaviors directly on physical hardware remains challenging due to safety and data efficiency constraints. Existing methods, including Quality-Diversity Actor-Critic (QDAC), require manually defined skill spaces and carefully tuned heuristics, limiting real-world applicability. We propose Unsupervised Real-world Skill Acquisition (URSA), an extension of QDAC that enables robots to autonomously discover and master diverse, high-performing skills directly in the real world. We demonstrate that URSA successfully discovers diverse locomotion skills on a Unitree A1 quadruped in both simulation and the real world. Our approach supports both heuristic-driven skill discovery and fully unsupervised settings. We also show that the learn skill repertoire can be reused for downstream tasks such as real-world damage adaptation, where URSA outperforms all baselines in 5 out of 9 simulated and 3 out of 5 real-world damage scenarios. Our results establish a new framework for real-world robot learning that enables continuous skill discovery with limited human intervention, representing a significant step toward more autonomous and adaptable robotic systems.
Cite
Text
Grillotti et al. "From Tabula Rasa to Emergent Abilities: Discovering Robot Skills via Real-World Unsupervised Quality-Diversity." Proceedings of The 9th Conference on Robot Learning, 2025.Markdown
[Grillotti et al. "From Tabula Rasa to Emergent Abilities: Discovering Robot Skills via Real-World Unsupervised Quality-Diversity." Proceedings of The 9th Conference on Robot Learning, 2025.](https://mlanthology.org/corl/2025/grillotti2025corl-tabula/)BibTeX
@inproceedings{grillotti2025corl-tabula,
title = {{From Tabula Rasa to Emergent Abilities: Discovering Robot Skills via Real-World Unsupervised Quality-Diversity}},
author = {Grillotti, Luca and Coiffard, Lisa and Pang, Oscar and Faldor, Maxence and Cully, Antoine},
booktitle = {Proceedings of The 9th Conference on Robot Learning},
year = {2025},
pages = {2519-2535},
volume = {305},
url = {https://mlanthology.org/corl/2025/grillotti2025corl-tabula/}
}