LGAICVROOct 24, 2023

Finetuning Offline World Models in the Real World

arXiv:2310.16029v142 citationsh-index: 19
Originality Incremental advance
AI Analysis

This work addresses the problem of enabling efficient robot skill learning with minimal real-world interaction, though it is incremental by combining offline and online model-based RL.

The paper tackles the data inefficiency of reinforcement learning on real robots by pretraining a world model with offline data and finetuning it online, achieving few-shot adaptation to seen and unseen tasks even with limited offline data.

Reinforcement Learning (RL) is notoriously data-inefficient, which makes training on a real robot difficult. While model-based RL algorithms (world models) improve data-efficiency to some extent, they still require hours or days of interaction to learn skills. Recently, offline RL has been proposed as a framework for training RL policies on pre-existing datasets without any online interaction. However, constraining an algorithm to a fixed dataset induces a state-action distribution shift between training and inference, and limits its applicability to new tasks. In this work, we seek to get the best of both worlds: we consider the problem of pretraining a world model with offline data collected on a real robot, and then finetuning the model on online data collected by planning with the learned model. To mitigate extrapolation errors during online interaction, we propose to regularize the planner at test-time by balancing estimated returns and (epistemic) model uncertainty. We evaluate our method on a variety of visuo-motor control tasks in simulation and on a real robot, and find that our method enables few-shot finetuning to seen and unseen tasks even when offline data is limited. Videos, code, and data are available at https://yunhaifeng.com/FOWM .

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