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Publikation

Shape Your Body: Value Gradients for Multi-Embodiment Robot Design

Nico Bohlinger; Jan Peters
In: Computing Research Repository eprint Journal (CoRR), Vol. abs/2606.00702, Pages 1-27, arXiv, 2026.

Zusammenfassung

We propose to turn generalist multi-embodiment value functions into reusable models for robot design. Instead of running a new reinforcement learn- ing co-design loop for each robot, we first train an embodiment-aware policy and value function across many robot designs. After training, the frozen value function is used as a differentiable surrogate to optimize candidate embodiments through value gradients. We evaluate our approach across different robot design settings, from perturbed single robots to held-out robots across morphology classes, with single models trained on up to 50 robots and design spaces of over 1100 con- tinuous embodiment parameters. Beyond optimizing complete embodiments, we show that value gradients can identify performance-limiting design and control parameters, enabling both the optimization and the analysis of new robot designs.

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