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Theoretical Physics With Generative AI – #101

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Manage episode 524879434 series 2482665
Content provided by Steve Hsu. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Steve Hsu 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://podcastplayer.com/legal.

All but the last 20 minutes of this episode should be comprehensible to non-physicists.

Steve explains where frontier AI models are in understanding frontier theoretical physics. The best analogy is to a “brilliant but unreliable genius colleague”!

He describes a specific example: the use of AI in recent research in quantum field theory (Tomonaga-Schwinger integrability conditions applied to state-dependent modifications of quantum mechanics), work now accepted for publication in Physics Letters B after peer review. Remarkably, the main idea in the paper originated de novo from GPT-5.

Links:

Chapter markers:

  • (00:00) - Intro: AI discussion with specialized physics at the end
  • (03:40) - The current AI landscape for science: frontier models, Co-Scientist, and recent math breakthroughs
  • (11:01) - Why models help and why they fail: errors, deep confabulation, and the research risk
  • (15:54) - The Generator–Verifier workflow: how chaining model inference suppresses mistakes
  • (23:30) - Project origin: testing models on Hsu’s older nonlinear QM/QFT work
  • (30:35) - The “GPT-5 moment”: Tomonaga–Schwinger angle appears and produces the key equation
  • (40:35) - Wild goose chases & a practical heuristic: axiomatic QFT detour; Generator-Verifier convergence
  • (51:44) - Referee-driven test case: Kaplan–Rajendran model, past-lightcone geometry, and verification
  • (55:55) - Tooling & outlook: automation prototype, chaining into “supermodels,” where this is headed
  • (59:39) - Physics slides (advanced): TS integrability, microcausality, and why nonlinearity threatens locality

Steve Hsu is Professor of Theoretical Physics and of Computational Mathematics, Science, and Engineering at Michigan State University. Previously, he was Senior Vice President for Research and Innovation at MSU and Director of the Institute of Theoretical Science at the University of Oregon. Hsu is a startup founder (SuperFocus.ai, SafeWeb, Genomic Prediction, Othram) and advisor to venture capital and other investment firms. He was educated at Caltech and Berkeley, was a Harvard Junior Fellow, and has held faculty positions at Yale, the University of Oregon, and MSU. Please send any questions or suggestions to [email protected] or Steve on X @hsu_steve.

  continue reading

204 episodes

Artwork
iconShare
 
Manage episode 524879434 series 2482665
Content provided by Steve Hsu. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Steve Hsu 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://podcastplayer.com/legal.

All but the last 20 minutes of this episode should be comprehensible to non-physicists.

Steve explains where frontier AI models are in understanding frontier theoretical physics. The best analogy is to a “brilliant but unreliable genius colleague”!

He describes a specific example: the use of AI in recent research in quantum field theory (Tomonaga-Schwinger integrability conditions applied to state-dependent modifications of quantum mechanics), work now accepted for publication in Physics Letters B after peer review. Remarkably, the main idea in the paper originated de novo from GPT-5.

Links:

Chapter markers:

  • (00:00) - Intro: AI discussion with specialized physics at the end
  • (03:40) - The current AI landscape for science: frontier models, Co-Scientist, and recent math breakthroughs
  • (11:01) - Why models help and why they fail: errors, deep confabulation, and the research risk
  • (15:54) - The Generator–Verifier workflow: how chaining model inference suppresses mistakes
  • (23:30) - Project origin: testing models on Hsu’s older nonlinear QM/QFT work
  • (30:35) - The “GPT-5 moment”: Tomonaga–Schwinger angle appears and produces the key equation
  • (40:35) - Wild goose chases & a practical heuristic: axiomatic QFT detour; Generator-Verifier convergence
  • (51:44) - Referee-driven test case: Kaplan–Rajendran model, past-lightcone geometry, and verification
  • (55:55) - Tooling & outlook: automation prototype, chaining into “supermodels,” where this is headed
  • (59:39) - Physics slides (advanced): TS integrability, microcausality, and why nonlinearity threatens locality

Steve Hsu is Professor of Theoretical Physics and of Computational Mathematics, Science, and Engineering at Michigan State University. Previously, he was Senior Vice President for Research and Innovation at MSU and Director of the Institute of Theoretical Science at the University of Oregon. Hsu is a startup founder (SuperFocus.ai, SafeWeb, Genomic Prediction, Othram) and advisor to venture capital and other investment firms. He was educated at Caltech and Berkeley, was a Harvard Junior Fellow, and has held faculty positions at Yale, the University of Oregon, and MSU. Please send any questions or suggestions to [email protected] or Steve on X @hsu_steve.

  continue reading

204 episodes

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