Physical Problem-Solving in Minds and Machines
Offered By: Simons Institute via YouTube
Course Description
Overview
Explore the fascinating intersection of AI, psychology, and neuroscience in this 46-minute talk by Kelsey Allen from DeepMind. Delve into the structured nature of the world and how cognitive and machine models can achieve remarkable efficiency and generalization by respecting these structures. Examine the factorization of objects, relations, and physics to support flexible physical problem-solving in both minds and machines. Discover how these elements can explain complex cognitive phenomena, such as effortless learning of new tool use in humans, and complex behaviors in machines like highly realistic simulation and tool innovation. Learn how leveraging problem structure, combined with general-purpose methods for statistical learning, can lead to the development of more robust and data-efficient machine agents while also shedding light on how natural intelligence learns so much from so little.
Syllabus
Physical problem-solving in minds and machines
Taught by
Simons Institute
Related Courses
The Brain-Targeted Teaching® Model for 21st Century SchoolsJohns Hopkins University via Coursera Chinese Thought: Ancient Wisdom Meets Modern Science
The University of British Columbia via edX Language and society
Indian Institute of Technology Madras via Swayam Minds and Machines
Massachusetts Institute of Technology via edX 人とロボットが共生する未来社会 (ga018)
Osaka University via gacco