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Welcome to our comprehensive guide on Zero Shot Sim To Real Robot Learning A Dexterous Manipulation Study On Reactive Catching. Kejia Ren, Gaotian Wang, Andrew S. Morgan, and Kaiyu Hang Paper available at: https://arxiv.org/abs/2605.09789.
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Authors: Eugene Valassakis, Zihan Ding, and Edward Johns. Institution: The Supplementary video for BC-Z (CoRL '21) With Kushal Kedia and Tyler Lum https://robopapers.substack.com/p/ep82-simtooreal-an-object-centric?utm_source=youtube.
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