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Meet AlphaEvolve: The Autonomous Agent That Discovers Algorithms Better Than Humans With Google DeepMind’s Pushmeet Kohli and Matej Balog

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Manage episode 490964491 series 3444082
Content provided by Conviction. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Conviction or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

Much of the scientific process involves searching. But rather than continue to rely on the luck of discovery, Google DeepMind has engineered a more efficient AI agent that mines complex spaces to facilitate scientific breakthroughs. Sarah Guo speaks with Pushmeet Kohli, VP of Science and Strategic Initiatives, and research scientist Matej Balog at Google DeepMind about AlphaEvolve, an autonomous coding agent they developed that finds new algorithms through evolutionary search. Pushmeet and Matej talk about how AlphaEvolve tackles the problem of matrix multiplication efficiency, scaling and iteration in problem solving, and whether or not this means we are at self-improving AI. Together, they also explore the implications AlphaEvolve has to other sciences beyond mathematics and computer science.

Sign up for new podcasts every week. Email feedback to [email protected]

Follow us on Twitter: @NoPriorsPod | @Saranormous | @EladGil | @pushmeet | @matejbalog

Chapters:

00:00 Pushmeet Kohli and Matej Balog Introduction

0:48 Origin of AlphaEvolve

02:31 AlphaEvolve’s Progression from AlphaGo and AlphaTensor

08:02 The Open Problem of Matrix Multiplication Efficiency

11:18 How AlphaEvolve Evolves Code

14:43 Scaling and Predicting Iterations

16:52 Implications for Coding Agents

19:42 Overcoming Limits of Automated Evaluators

25:21 Are We At Self-Improving AI?

28:10 Effects on Scientific Discovery and Mathematics

31:50 Role of Human Scientists with AlphaEvolve

38:30 Making AlphaEvolve Broadly Accessible

40:18 Applying AlphaEvolve Within Google

41:39 Conclusion

  continue reading

121 episodes

Artwork
iconShare
 
Manage episode 490964491 series 3444082
Content provided by Conviction. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Conviction or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

Much of the scientific process involves searching. But rather than continue to rely on the luck of discovery, Google DeepMind has engineered a more efficient AI agent that mines complex spaces to facilitate scientific breakthroughs. Sarah Guo speaks with Pushmeet Kohli, VP of Science and Strategic Initiatives, and research scientist Matej Balog at Google DeepMind about AlphaEvolve, an autonomous coding agent they developed that finds new algorithms through evolutionary search. Pushmeet and Matej talk about how AlphaEvolve tackles the problem of matrix multiplication efficiency, scaling and iteration in problem solving, and whether or not this means we are at self-improving AI. Together, they also explore the implications AlphaEvolve has to other sciences beyond mathematics and computer science.

Sign up for new podcasts every week. Email feedback to [email protected]

Follow us on Twitter: @NoPriorsPod | @Saranormous | @EladGil | @pushmeet | @matejbalog

Chapters:

00:00 Pushmeet Kohli and Matej Balog Introduction

0:48 Origin of AlphaEvolve

02:31 AlphaEvolve’s Progression from AlphaGo and AlphaTensor

08:02 The Open Problem of Matrix Multiplication Efficiency

11:18 How AlphaEvolve Evolves Code

14:43 Scaling and Predicting Iterations

16:52 Implications for Coding Agents

19:42 Overcoming Limits of Automated Evaluators

25:21 Are We At Self-Improving AI?

28:10 Effects on Scientific Discovery and Mathematics

31:50 Role of Human Scientists with AlphaEvolve

38:30 Making AlphaEvolve Broadly Accessible

40:18 Applying AlphaEvolve Within Google

41:39 Conclusion

  continue reading

121 episodes

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