Published Dec 18, 2017
Integrative Learning for Robotic Systems with Aaron Ames - #87
Join Aaron Ames, Caltech professor, as he delves into the frontier of robotics learning integration, examining how unifying reactive and learned behaviors can overcome current limitations in robotic systems and enhance their interaction with real-world environments. Discover the transformative mathematics and computational advancements that are driving dynamic robotic movement and real-time capabilities.

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