197: TZ Interview - Peter Stone / Robot Soccer and Multiagent Learning episode artwork

EPISODE · Jul 19, 2012 · 1H 1M

197: TZ Interview - Peter Stone / Robot Soccer and Multiagent Learning

from TechZing

Jason talks with Peter Stone, director of the Learning Agents Research Group at UT Austin, whose team, UT Austin Villa, won both the standard platform league and the 3D simulation league of the RoboCup 2012 competition. They discuss why robot soccer is a good motivating application domain for machine learning, how the RoboCup competition got started and the kinds of teams that participate, the offshoot competition RoboCup Jr, why the machine learning technique known as reinforcement learning works so well in complex, dynamic environments, the role played by game theory in multiagents systems, Peter's involvement in developing autonomous driving vehicles and what it's like to run an artificial intelligence laboratory.

Episode metadata supplied by the publisher feed · Published Jul 19, 2012

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197: TZ Interview - Peter Stone / Robot Soccer and Multiagent Learning

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Jason talks with Peter Stone, director of the Learning Agents Research Group at UT Austin, whose team, UT Austin Villa, won both the standard platform league and the 3D simulation league of the RoboCup 2012 competition. They discuss why robot soccer...

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