Machine Learning Street Talk (MLST)

Machine Learning Street Talk (MLST)
undefined
24 snips
Dec 27, 2025 • 1h 37min

The 3 Laws of Knowledge (That Explain Everything) [César Hidalgo]

In this engaging discussion, César Hidalgo, Director of the Center for Collective Learning, explores the intricate nature of knowledge. He argues that knowledge is not just information that can be copied, but a dynamic entity that thrives in collaborative environments. César explains the three laws of knowledge, highlights the challenges of transferring expertise, and illustrates how organizations learn collectively. He also shares fascinating stories, like the fall of Polaroid, to showcase the fragility of knowledge in the face of neglect.
undefined
57 snips
Dec 24, 2025 • 2h 56min

"I Desperately Want To Live In The Matrix" - Dr. Mike Israetel

Dr. Mike Israetel, a sports scientist and co-founder of RP Strength, joins Jared Feather, an IFBB Pro bodybuilder and exercise physiologist, for a thought-provoking discussion on AI. They dive into the timeline for artificial superintelligence and debate if machines can truly 'understand' anything. The conversation heats up with the simulation theory, exploring the implications of existing in a simulated reality. They also tackle the effects of AI on jobs, purpose, and the philosophical nuances of suffering in relation to meaning. A lively chat that merges fitness, science, and the future of intelligence!
undefined
134 snips
Dec 22, 2025 • 44min

Making deep learning perform real algorithms with Category Theory (Andrew Dudzik, Petar Velichkovich, Taco Cohen, Bruno Gavranović, Paul Lessard)

This discussion features Andrew Dudzik, a mathematician specializing in category theory; Taco Cohen, a researcher in geometric deep learning; and Petar Veličković, an expert in graph neural networks. They delve into why LLMs struggle with basic math by highlighting their pattern recognition flaws. The conversation proposes category theory as a framework to transition AI from trial-and-error towards a scientific approach. They explore concepts like equivariance, compositional structures, and the potential for unifying diverse machine learning perspectives.
undefined
57 snips
Dec 20, 2025 • 16min

Are AI Benchmarks Telling The Full Story? [SPONSORED] (Andrew Gordon and Nora Petrova - Prolific)

Join Andrew Gordon, a behavioral science researcher at Prolific, and AI expert Nora Petrova as they delve into the flaws of current AI benchmarking. They challenge the notion that high scores mean better models, using a Formula 1 car as an analogy. The discussion touches on critical issues like AI safety, especially in sensitive contexts like mental health, and critiques the biases in popular ranking systems. Discover how Prolific's innovative HUMAINE framework and TrueSkill methodology aim to create a more human-centered evaluation of AI.
undefined
184 snips
Dec 13, 2025 • 1h 39min

The Mathematical Foundations of Intelligence [Professor Yi Ma]

In a captivating discussion, Professor Yi Ma, a pioneer in deep learning and computer vision, challenges our perceptions of AI. He explains how language models primarily memorize rather than understand, and he distinguishes between 3D reconstruction and true comprehension. Yi introduces the principles of parsimony and self-consistency as crucial to intelligence. The conversation touches on the evolution of knowledge, the limitations of current AI models in achieving abstraction, and the potential of coding rate reduction to enhance learning mechanisms.
undefined
147 snips
Dec 8, 2025 • 1h 28min

Pedro Domingos: Tensor Logic Unifies AI Paradigms

Pedro Domingos, a leading computer science professor at the University of Washington and author of The Master Algorithm, unveils his groundbreaking concept, TensorLogic. He discusses how this innovative programming language could unify the fragmented worlds of Deep Learning and Symbolic AI. Pedro reveals TensorLogic's capabilities in logical reasoning and learning from data, emphasizing its potential to prevent AI hallucinations. He also shares insights on how TensorLogic can express complex systems and improve AI education, paving the way for a more integrated future in artificial intelligence.
undefined
341 snips
Nov 23, 2025 • 1h 13min

He Co-Invented the Transformer. Now: Continuous Thought Machines - Llion Jones and Luke Darlow [Sakana AI]

In this engaging discussion, Llion Jones, co-founder of Sakana AI and co-author of the Transformer architecture, shares insights on the need for innovation beyond Transformers in AI research. Joined by Luke Darlow, a specialist in biologically inspired models, they explore the limitations of current AI paradigms and introduce the Continuous Thought Machine (CTM). This novel model emphasizes internal reasoning and adaptive computation, aiming to enhance how AI processes information. Expect fascinating analogies and thought-provoking concepts that challenge the status quo!
undefined
77 snips
Nov 3, 2025 • 24min

Why Humans Are Still Powering AI [Sponsored]

Phelim Bradley, Co-founder and CEO of Prolific, discusses the vital role humans play in AI development. He explains how human intelligence and data train models, emphasizing quality over quantity. Phelim reveals the challenges of matching the right experts to specific tasks and highlights how Prolific fosters long-term relationships to improve data quality. He also addresses the geopolitical concerns surrounding AI centralization and the evolving future of work, where expert judgment will be increasingly in demand as AI continues to grow.
undefined
48 snips
Oct 25, 2025 • 41min

The Universal Hierarchy of Life - Prof. Chris Kempes [SFI]

In this engaging discussion, Prof. Chris Kempes, a quantitative biophysicist at the Santa Fe Institute, explores the search for a universal theory of life that transcends Earth-bound definitions. He introduces a three-level hierarchy: Materials, Constraints, and Principles, highlighting how different life forms could emerge from diverse substrates. Chris delves into the convergence of evolution, using the eye as a compelling example, and raises thought-provoking questions about whether concepts like culture and AI can also be considered forms of life.
undefined
133 snips
Oct 21, 2025 • 60min

Google Researcher Shows Life "Emerges From Code" - Blaise Agüera y Arcas

Blaise Agüera y Arcas, a pioneering scientist and author of "What Is Intelligence?", shares revolutionary ideas on the relationship between life and intelligence. He argues that DNA functions as a computer program, proposing that evolution's complexity comes from merging systems rather than just mutations. Blaise also discusses his BFF experiment, showing how self-replicating programs can emerge from randomness. He explores how both AI and human intelligence are part of a larger collective, reshaping our understanding of purpose and consciousness.

The AI-powered Podcast Player

Save insights by tapping your headphones, chat with episodes, discover the best highlights - and more!
App store bannerPlay store banner
Get the app