We introduce RoboMorph, an automated approach for generating and optimizing modular robot designs using large language models (LLMs) and evolutionary algorithms. In this framework, we represent each robot design as a grammar and leverage the capabilities of LLMs to navigate the extensive robot design space, which is traditionally time-consuming and computationally demanding. By introducing a best-shot prompting technique and a reinforcement learning-based control algorithm, RoboMorph iteratively improves robot designs through feedback loops. Experimental results demonstrate that RoboMorph successfully generates nontrivial robots optimized for different terrains while showcasing improvements in robot morphology over successive evolutions. Our approach highlights the potential of using LLMs for data-driven, modular robot design, providing a promising methodology that can be extended to other domains with similar design frameworks.
View on arXiv@article{qiu2025_2407.08626, title={ RoboMorph: Evolving Robot Morphology using Large Language Models }, author={ Kevin Qiu and Władysław Pałucki and Krzysztof Ciebiera and Paweł Fijałkowski and Marek Cygan and Łukasz Kuciński }, journal={arXiv preprint arXiv:2407.08626}, year={ 2025 } }