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Breaking Math Podcast

by Gabriel Hesch

Hosted by Gabriel Hesch and Autumn Phaneuf, who have advanced degrees in EE and industrial engineering/operations research respectively, come together to discuss mathematics as a pure field al in its own as well as how it describes the language of science, engineering, and even creativity.  

Breaking Math brings you the absolute best in interdisciplinary science discussions -  bringing together experts in varying fields including artificial intelligence, neuroscience, evolutionary biology, physics, chemistry and materials-science, and more -  to discuss where humanity is headed.

website:  breakingmath.io 

linktree:  linktree.com/breakingmathmedia

email:  [email protected]

Copyright: Copyright Breaking Math

Episodes

What's the Use? Interview with Professor Ian Stewart

44m · Published 14 May 10:00

Welcome to another engaging episode of the Breaking Math Podcast! Today's episode, titled "What is the Use?," features a fascinating conversation with the renowned mathematician and author, Professor Ian Stewart. As Professor Stewart discusses his latest book "What's the Use? How Mathematics Shapes Everyday Life," we dive deep into the real-world applications of mathematics that often go unnoticed in our daily technologies, like smartphones, and their unpredictable implications in various fields.

We'll explore the history of quaternions, invented by William Rowan Hamilton, which now play a critical role in computer graphics, gaming, and particle physics. Professor Stewart will also shed light on the non-commutative nature of quaternions, mirroring the complexities of spatial rotations, and how these mathematical principles find their correspondence in the natural world.

Furthermore, our discussion will encompass the interconnectivity within mathematics, touching upon how algebra, geometry, and trigonometry converge to paint a broader picture of this unified field. We also discuss the intriguing concept of "Fearful Symmetry" and how symmetrical and asymmetrical patterns govern everything from tiger stripes to sand dunes.

With references to his other works, including "Professor Stewart's Cabinet of Mathematical Curiosities" and "The Science of Discworld," Professor Stewart brings an element of surprise and entertainment to the profound impact of mathematics on our understanding of the world.

So stay tuned as we unlock the mysteries and the omnipresent nature of math in this thought-provoking episode with Professor Ian Stewart!

95: Baye's Theorem Explains It All: An Interview with Tom Chivers

49m · Published 07 May 10:26

Summary

Tom Chivers discusses his book 'Everything is Predictable: How Bayesian Statistics Explain Our World' and the applications of Bayesian statistics in various fields. He explains how Bayesian reasoning can be used to make predictions and evaluate the likelihood of hypotheses. Chivers also touches on the intersection of AI and ethics, particularly in relation to AI-generated art. The conversation explores the history of Bayes' theorem and its role in science, law, and medicine. Overall, the discussion highlights the power and implications of Bayesian statistics in understanding and navigating the world. 

The conversation explores the role of AI in prediction and the importance of Bayesian thinking. It discusses the progress of AI in image classification and the challenges it still faces, such as accurately depicting fine details like hands. The conversation also delves into the topic of predictions going wrong, particularly in the context of conspiracy theories. It highlights the Bayesian nature of human beliefs and the influence of prior probabilities on updating beliefs with new evidence. The conversation concludes with a discussion on the relevance of Bayesian statistics in various fields and the need for beliefs to have probabilities and predictions attached to them.

  • Takeaways
  • Bayesian statistics can be used to make predictions and evaluate the likelihood of hypotheses.
  • Bayes' theorem has applications in various fields, including science, law, and medicine.
  • The intersection of AI and ethics raises complex questions about AI-generated art and the predictability of human behavior.
  • Understanding Bayesian reasoning can enhance decision-making and critical thinking skills. AI has made significant progress in image classification, but still faces challenges in accurately depicting fine details.
  • Predictions can go wrong due to the influence of prior beliefs and the interpretation of new evidence.
  • Beliefs should have probabilities and predictions attached to them, allowing for updates with new information.
  • Bayesian thinking is crucial in various fields, including AI, pharmaceuticals, and decision-making.
  • The importance of defining predictions and probabilities when engaging in debates and discussions.

94. Interview with Steve Nadis, Co-author of 'Gravity of Math'

52m · Published 30 Apr 10:00

Summary

**Tensor Poster - If you are interested in the Breaking Math Tensor Poster on the mathematics of General Relativity, email us at [email protected]

In this episode, Gabriel Hesch and Autumn Fanoff interview Steve Nadis, the author of the book 'The Gravity of Math.' They discuss the mathematics of gravity, including the work of Isaac Newton and Albert Einstein, gravitational waves, black holes, and recent developments in the field. Nadis shares his collaboration with Shing-Tung Yau and their journey in writing the book. They also talk about their shared experience at Hampshire College and the importance of independent thinking in education.  In this conversation, Steve Nadis discusses the mathematical foundations of general relativity and the contributions of mathematicians to the theory. He explains how Einstein was introduced to the concept of gravity by Bernhard Riemann and learned about tensor calculus from Gregorio Ricci and Tullio Levi-Civita. Nadis also explores Einstein's discovery of the equivalence principle and his realization that a theory of gravity would require accelerated motion. He describes the development of the equations of general relativity and their significance in understanding the curvature of spacetime. Nadis highlights the ongoing research in general relativity, including the detection of gravitational waves and the exploration of higher dimensions and black holes. He also discusses the contributions of mathematician Emmy Noether to the conservation laws in physics. Finally, Nadis explains Einstein's cosmological constant and its connection to dark energy.

Chapters

00:00 Introduction and Book Overview

08:09 Collaboration and Writing Process

25:48 Interest in Black Holes and Recent Developments

35:30 The Mathematical Foundations of General Relativity

44:55 The Curvature of Spacetime and the Equations of General Relativity

56:06 Recent Discoveries in General Relativity

01:06:46 Emmy Noether's Contributions to Conservation Laws

01:13:48 Einstein's Cosmological Constant and Dark Energy

93. The 10,000 Year Problem (feat. David Gibson of Ray Kitty Creation Workship)

34m · Published 23 Apr 10:00

Summary:  The episode discusses the 10,000 year dilemma, which is a thought experiment on how to deal with nuclear waste in the future.  Today's episode is hosted by guest host David Gibson, who is the founder of the Ray Kitty Creation Workshop. (Find out more about the Ray Kitty Creation Workshop by clicking here).  

Gabriel and Autumn are out this week, but will be returning in short order with 3 separate interviews with authors of some fantastic popular science and math books including:

  • The Gravity of Math:  How Geometry Rules the Universe by Dr. Shing-Tung Yau and Steve Nadis.    This book is all about the history of our understanding of gravity from the theories of Isaac Newton to Albert Einstein and beyond, including gravitational waves, black holes, as well as some of the current uncertainties regarding a precise definition of mass.  On sale now!  
  • EVERYTHING IS PREDICTABLE: How Bayesian Statistics Explain Our World by Tom Chivers.  Published by Simon and Schuster.   This book explains the importance of Baye's Theorem in helping us to understand why  highly accurate screening tests can lead to false positives, a phenomenon we saw during the Covid-19 pandemic; How a failure to account for Bayes’ Theorem has put innocent people in jail; How military strategists using the theorem can predict where an enemy will strike next, and how Baye's Theorem is helping us to understang machine learning processes - a critical skillset to have in the 21st century.
    Available 05/07/2024
  • A CITY ON MARS: Can we settle space, should we settle space, and have we really thought this through?  by authors Dr. Kelly and Zach Weinersmith.  Zach Weinersmith is the artist and creator of the famous cartoon strip Saturday Morning Breaking Cereal!  

    We've got a lot of great episodes coming up!  Stay tuned.  

92. The Mathematical Heart of Games Explored with Prof. du Sautoy

1h 14m · Published 16 Apr 11:00

An interview with Prof. Marcus du Sautoy about his book Around the Wold in Eighty Games . . . .a Mathematician Unlocks the Secrets of the World's Greatest Games.  

Topics covered in Today's Episode: 

1. Introduction to Professor Marcus du Sautoy and the Role of Games

- Impact of games on culture, strategy, and learning

- The educational importance of games throughout history

2. Differences in gaming cultures across regions like India and China

3. Creative Aspects of Mathematics

4. The surprising historical elements and banned games by Buddha

5. Historical and geographical narratives of games rather than rules

6. Game Theory and Education

7.  Unknowable questions like thermodynamics and universe's infinity

8. Professor du Sautoy's Former Books and Collections

9.  A preview of his previous books and their themes

10. Gaming Cultures and NFTs in Blockchain

11. Gamification in Education

12. The Role of AI in Gaming

13. Testing machine learning in mastering games like Go

14. Alphago's surprising move and its impact on Go strategies

15 . The future of AI in developing video game characters, plots, and environments

16. Conclusion and Giveaway Announcement

*Free Book Giveaway of Around The World in 88 Games . . .  by Professor Marcus Du Sautory!  Follow us on our socials for details:  

Follow us on X:  @BreakingMathPod

Follow us on Instagram:  @Breaking Math Media

Email us:  [email protected] 

91. Brain Organelles, AI, and Other Scary Science - An Interview with GT (Part 2)

31m · Published 04 Apr 12:58

Summary

Brain Organelles, A.I. and Defining Intelligence in  Nature- 

In this episode, we continue our fascinating interview with GT, a science content creator on TikTok and YouTube known for their captivating - and sometimes disturbing science content.

GT can be found on the handle ‘@bearBaitOfficial’ on most social media channels.  

In this episode, we resume our discussion on Brain Organelles -  which are grown from human stem cells - how they are being used to learn about disease, how they may be integrated in A.I.  as well as eithical concerns with them.

We also ponder what constitutes intelligence in nature, and even touch on the potential risks of AI behaving nefariously.

You won't want to miss this thought-provoking and engaging discussion.

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90. LEAN Theorem Provers used to model Physics and Chemistry

47m · Published 16 Mar 23:42

This episode is inspired by a correspondence the Breaking Math Podcast had with the editors of Digital Discovery, a journal by the Royal Society of Chemistry.  In this episode the hosts review a paper about how the Lean Interactive Theorem Prover, which is usually used as a tool in creating mathemtics proofs, can be used to create rigorous and robust models in physics and chemistry.  

Also -  we have a brand new member of the Breaking Math Team!  This episode is the debut episode for Autumn, CEO of Cosmo Labs, occasional co-host / host of the Breaking Math Podcast, and overall contributor who has been working behind the scenes on the podcast on branding and content for the last several months. Welcome Autumn!  

Autumn and Gabe discuss how the paper explores the use of interactive theorem provers to ensure the accuracy of scientific theories and make them machine-readable. The episode discusses the limitations and potential of interactive theorem provers and highlights the themes of precision and formal verification in scientific knowledge.  This episode also provide resources (listed below) for listeners interested in learning more about working with the LEAN interactive theorem prover.  

Takeaways

  • Interactive theorem provers can revolutionize the way scientific theories are formulated and verified, ensuring mathematical certainty and minimizing errors.
  • Interactive theorem provers require a high level of mathematical knowledge and may not be accessible to all scientists and engineers.
  • Formal verification using interactive theorem provers can eliminate human error and hidden assumptions, leading to more confident and reliable scientific findings.
  • Interactive theorem provers promote clear communication and collaboration across disciplines by forcing explicit definitions and minimizing ambiguities in scientific language. Lean Theorem Provers enable scientists to construct modular and reusable proofs, accelerating the pace of knowledge acquisition.
  • Formal verification presents challenges in terms of transforming informal proofs into a formal language and bridging the reality gap.
  • Integration of theorem provers and machine learning has the potential to enhance creativity, verification, and usefulness of machine learning models.
  • The limitations and variables in formal verification require rigorous validation against experimental data to ensure real-world accuracy.
  • Lean Theorem Provers have the potential to provide unwavering trust, accelerate innovation, and increase accessibility in scientific research.
  • AI as a scientific partner can automate the formalization of informal theories and suggest new conjectures, revolutionizing scientific exploration.
  • The impact of Lean Theorem Provers on humanity includes a shift in scientific validity, rapid scientific breakthroughs, and democratization of science. 

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89. Brain Organelles, AI, and the Other Scary Science - An Interview with GT (Part I)

30m · Published 05 Mar 11:00

This conversation explores the topic of brain organoids and their integration with robots. The discussion covers the development and capabilities of brain organoids, the ethical implications of their use, and the differences between sentience and consciousness. The conversation also delves into the efficiency of human neural networks compared to artificial neural networks, the presence of sleep in brain organoids, and the potential for genetic memories in these structures. The episode concludes with an invitation to part two of the interview and a mention of the podcast's Patreon offering a commercial-free version of the episode.

Takeaways

  • Brain organoids are capable of firing neural signals and forming structures similar to those in the human brain during development.
  • The ethical implications of using brain organoids in research and integrating them with robots raise important questions about sentience and consciousness.
  • Human neural networks are more efficient than artificial neural networks, but the reasons for this efficiency are still unknown.
  • Brain organoids exhibit sleep-like patterns and can undergo dendrite growth, potentially indicating learning capabilities.
  • Collaboration between scientists with different thinking skill sets is crucial for advancing research in brain organoids and related fields.

Chapters

  1. 00:00 Introduction: Brain Organoids and Robots
  2. 00:39 Brain Organoids and Development
  3. 01:21 Ethical Implications of Brain Organoids
  4. 03:14 Summary and Introduction to Guest
  5. 03:41 Sentience and Consciousness in Brain Organoids
  6. 04:10 Neuron Count and Pain Receptors in Brain Organoids
  7. 05:00 Unanswered Questions and Discomfort
  8. 05:25 Psychological Discomfort in Brain Organoids
  9. 06:21 Early Videos and Brain Organoid Learning
  10. 07:20 Efficiency of Human Neural Networks
  11. 08:12 Sleep in Brain Organoids
  12. 09:13 Delta Brainwaves and Brain Organoids
  13. 10:11 Creating Brain Organoids with Specific Components
  14. 11:10 Genetic Memories in Brain Organoids
  15. 12:07 Efficiency and Learning in Human Brains
  16. 13:00 Sequential Memory and Chimpanzees
  17. 14:18 Different Thinking Skill Sets and Collaboration
  18. 16:13 ADHD and Hyperfocusing
  19. 18:01 Ethical Considerations in Brain Research
  20. 19:23 Understanding Genetic Mutations
  21. 20:51 Brain Organoids in Rat Bodies
  22. 22:14 Dendrite Growth in Brain Organoids
  23. 23:11 Duration of Dendrite Growth
  24. 24:26 Genetic Memory Transfer in Brain Organoids
  25. 25:19 Social Media Presence of Brain Organoid Companies
  26. 26:15 Brain Organoids Controlling Robot Spiders
  27. 27:14 Conclusion and Invitation to Part 2

References:

Muotri Labs (Brain Organelle piloting Spider Robot)

Cortical Labs (Brain Organelle's trained to play Pong)

*For a copy of the episode transcript, email us at [email protected] 

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Summary:

88. Can OpenAi's SORA learn and model real-world physics? (Part 1 of n)

34m · Published 27 Feb 17:14

This is a follow up on our previous episode on OpenAi's SORA. We attempt to answer the question, "Can OpenAi's SORA model real-world physics?" 

We go over the details of the technical report, we discuss some controversial opinoins by experts in the field at Nvdia and Google's Deep Mind. 

The transcript for episode is avialable below upon request.


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87. OpenAi SORA, Physics-Informed ML, and a.i. Fraud- Oh My!

36m · Published 20 Feb 22:43

OpenAI's Sora, a text-to-video model, has the ability to generate realistic and imaginative scenes based on text prompts. This conversation explores the capabilities, limitations, and safety concerns of Sora. It showcases various examples of videos generated by Sora, including pirate ships battling in a cup of coffee, woolly mammoths in a snowy meadow, and golden retriever puppies playing in the snow. The conversation also discusses the technical details of Sora, such as its use of diffusion and transformer models. Additionally, it highlights the potential risks of AI fraud and impersonation. The episode concludes with a look at the future of physics-informed modeling and a call to action for listeners to engage with Breaking Math content.

Takeaways

  • OpenAI's Sora is a groundbreaking text-to-video model that can generate realistic and imaginative scenes based on text prompts.
  • Sora has the potential to revolutionize various industries, including entertainment, advertising, and education.
  • While Sora's capabilities are impressive, there are limitations and safety concerns, such as the potential for misuse and the need for robust verification methods.
  • The conversation highlights the importance of understanding the ethical implications of AI and the need for ongoing research and development in the field.

Chapters

00:00 Introduction to OpenAI's Sora

04:22 Overview of Sora's Capabilities

07:08 Exploring Prompts and Generated Videos

12:20 Technical Details of Sora

16:33 Limitations and Safety Concerns

23:10 Examples of Glitches in Generated Videos

26:04 Impressive Videos Generated by Sora

29:09 AI Fraud and Impersonation

35:41 Future of Physics-Informed Modeling

36:25 Conclusion and Call to Action

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Contact us at [email protected]

Summary

#OpenAiSora #

Breaking Math Podcast has 129 episodes in total of non- explicit content. Total playtime is 90:05:40. The language of the podcast is English. This podcast has been added on February 22nd 2023. It might contain more episodes than the ones shown here. It was last updated on May 17th, 2024 20:10.

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