How can robots acquire skills through interactions with the physical world? An interview with Jiaheng Hu

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One of the key challenges in building robots for household or industrial settings is the need to master the control of high-degree-of-freedom systems such as mobile manipulators. Reinforcement learning has been a promising avenue for acquiring robot control policies, however, scaling to complex systems has proved tricky. In their work SLAC: Simulation-Pretrained Latent Action Space […]

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This article was originally published at AIHub. For the full piece, read the original article.

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