
Bridging the Sim2real Gap in Robotics with Marius Memmel - #695
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
Harnessing Fisher Information in Robotics
This chapter explores how robotic systems adapt policies using Fisher Information to learn from physical interactions. It emphasizes the significance of exploration versus exploitation phases and how robots can effectively gather data to improve task performance. The discussion highlights a novel framework for identifying physics parameters through actions, underlining its advantages in reducing the sim-to-real gap and enhancing safety in real-world applications.
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