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Diffusion Model Predictive Control

7 October 2024
Guangyao Zhou
Sivaramakrishnan Swaminathan
Rajkumar Vasudeva Raju
J. S. Guntupalli
Wolfgang Lehrach
Joseph Ortiz
Antoine Dedieu
Miguel Lázaro-Gredilla
Kevin P. Murphy
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Abstract

We propose Diffusion Model Predictive Control (D-MPC), a novel MPC approach that learns a multi-step action proposal and a multi-step dynamics model, both using diffusion models, and combines them for use in online MPC. On the popular D4RL benchmark, we show performance that is significantly better than existing model-based offline planning methods using MPC and competitive with state-of-the-art (SOTA) model-based and model-free reinforcement learning methods. We additionally illustrate D-MPC's ability to optimize novel reward functions at run time and adapt to novel dynamics, and highlight its advantages compared to existing diffusion-based planning baselines.

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