Diffusion Sequence Models for Generative In-Context Meta-Learning of Robot Dynamics

arXiv cs.LG / 4/16/2026

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Key Points

  • The paper frames robot system identification as in-context meta-learning for forward dynamics prediction, targeting both distribution-shift robustness and real-time feasibility for model-based control.
  • It compares a Transformer-based deterministic meta-model baseline against two diffusion-based generative approaches, including inpainting diffusion (Diffuser) and conditioned diffusion models that generate future observations from control inputs.
  • Experiments on large-scale randomized simulations evaluate performance in both in-distribution and out-of-distribution settings while analyzing computational trade-offs that matter for control loops.
  • The results show diffusion models substantially improve robustness under distribution shift, with inpainting diffusion delivering the strongest overall performance in the reported experiments.
  • Warm-started diffusion sampling is shown to meet real-time constraints, supporting the idea of generative meta-models as practical, robust components for robotic dynamics modeling.

Abstract

Accurate modeling of robot dynamics is essential for model-based control, yet remains challenging under distributional shifts and real-time constraints. In this work, we formulate system identification as an in-context meta-learning problem and compare deterministic and generative sequence models for forward dynamics prediction. We take a Transformer-based meta-model, as a strong deterministic baseline, and introduce to this setting two complementary diffusion-based approaches: (i) inpainting diffusion (Diffuser), which learns the joint input-observation distribution, and (ii) conditioned diffusion models (CNN and Transformer), which generate future observations conditioned on control inputs. Through large-scale randomized simulations, we analyze performance across in-distribution and out-of-distribution regimes, as well as computational trade-offs relevant for control. We show that diffusion models significantly improve robustness under distribution shift, with inpainting diffusion achieving the best performance in our experiments. Finally, we demonstrate that warm-started sampling enables diffusion models to operate within real-time constraints, making them viable for control applications. These results highlight generative meta-models as a promising direction for robust system identification in robotics.