106. Yang Gao - Sample-efficient AI - a podcast by The TDS team

from 2021-12-08T15:26:47

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Historically, AI systems have been slow learners. For example, a computer vision model often needs to see tens of thousands of hand-written digits before it can tell a 1 apart from a 3. Even game-playing AIs like DeepMind’s AlphaGo, or its more recent descendant MuZero, need far more experience than humans do to master a given game.


So when someone develops an algorithm that can reach human-level performance at anything as fast as a human can, it’s a big deal. And that’s exactly why I asked Yang Gao to join me on this episode of the podcast. Yang is an AI researcher with affiliations at Berkeley and Tsinghua University, who recently co-authored a paper introducing EfficientZero: a reinforcement learning system that learned to play Atari games at the human-level after just two hours of in-game experience. It’s a tremendous breakthrough in sample-efficiency, and a major milestone in the development of more general and flexible AI systems.


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Intro music:


➞ Artist: Ron Gelinas


➞ Track Title: Daybreak Chill Blend (original mix)


➞ Link to Track: https://youtu.be/d8Y2sKIgFWc


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Chapters: 


- 0:00 Intro


- 1:50 Yang’s background


- 6:00 MuZero’s activity


- 13:25 MuZero to EfficiantZero


- 19:00 Sample efficiency comparison


- 23:40 Leveraging algorithmic tweaks


- 27:10 Importance of evolution to human brains and AI systems


- 35:10 Human-level sample efficiency


- 38:28 Existential risk from AI in China


- 47:30 Evolution and language


- 49:40 Wrap-up

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