IRIM Seminar Series: "Do We Really Need all that Data?"
Description:
Explore a thought-provoking seminar on data efficiency in robotic manipulation presented by Michael Posa, Assistant Professor of Mechanical Engineering & Applied Mechanics at the University of Pennsylvania. Delve into the challenges of adapting robots to new environments and tasks without extensive pre-training. Examine the clash between contact-driven aspects of manipulation and standard learning methods' inductive biases. Discover how contact-inspired implicit learning and convex optimization can reshape loss landscapes, leading to more accurate training and better generalization. Learn about the latest developments in deploying learned models through real-time multi-contact Model Predictive Control (MPC) for robotic manipulation. Gain insights into the potential for robots to gather information quickly and accomplish complex tasks in novel situations.
Do We Really Need All That Data? Learning and Control for Contact-rich Manipulation