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MetaMorph: Learning Universal Controllers with Transformers

Machine Learning 2022-03-23 v1 Neural and Evolutionary Computing Robotics

Abstract

Multiple domains like vision, natural language, and audio are witnessing tremendous progress by leveraging Transformers for large scale pre-training followed by task specific fine tuning. In contrast, in robotics we primarily train a single robot for a single task. However, modular robot systems now allow for the flexible combination of general-purpose building blocks into task optimized morphologies. However, given the exponentially large number of possible robot morphologies, training a controller for each new design is impractical. In this work, we propose MetaMorph, a Transformer based approach to learn a universal controller over a modular robot design space. MetaMorph is based on the insight that robot morphology is just another modality on which we can condition the output of a Transformer. Through extensive experiments we demonstrate that large scale pre-training on a variety of robot morphologies results in policies with combinatorial generalization capabilities, including zero shot generalization to unseen robot morphologies. We further demonstrate that our pre-trained policy can be used for sample-efficient transfer to completely new robot morphologies and tasks.

Keywords

Cite

@article{arxiv.2203.11931,
  title  = {MetaMorph: Learning Universal Controllers with Transformers},
  author = {Agrim Gupta and Linxi Fan and Surya Ganguli and Li Fei-Fei},
  journal= {arXiv preprint arXiv:2203.11931},
  year   = {2022}
}

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ICLR 2022