Machine Learning Street Talk (MLST) cover image

Machine Learning Street Talk (MLST)

Latest episodes

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Dec 1, 2024 • 1h 46min

Jonas Hübotter (ETH) - Test Time Inference

Jonas Hübotter, a PhD student at ETH Zurich specializing in machine learning, delves into his innovative research on test-time computation. He reveals how smaller models can achieve up to 30x efficiency over larger ones by strategically allocating resources during inference. Drawing parallels to Google Earth's dynamic resolution, he discusses the blend of inductive and transductive learning. Hübotter envisions future AI systems that adapt and learn continuously, advocating for hybrid deployment strategies that prioritize intelligent resource management.
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Nov 25, 2024 • 1h 45min

How AI Could Be A Mathematician's Co-Pilot by 2026 (Prof. Swarat Chaudhuri)

Professor Swarat Chaudhuri, a computer science expert from the University of Texas at Austin and researcher at Google DeepMind, shares fascinating insights into AI's role in mathematics. He discusses his innovative work on COPRA, a GPT-based theorem prover, and emphasizes the significance of neurosymbolic approaches in enhancing AI reasoning. The conversation explores the potential of AI to assist mathematicians in theorem proving and generating conjectures, all while tackling the balance between AI outputs and human interpretability.
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Nov 17, 2024 • 2h 30min

Nora Belrose - AI Development, Safety, and Meaning

Nora Belrose, Head of Interpretability Research at EleutherAI, dives into the complexities of AI development and safety. She explores concept erasure in neural networks and its role in bias mitigation. Challenging doomsday fears about advanced AI, she critiques current alignment methods and highlights the limitations of traditional approaches. The discussion broadens to consider the philosophical implications of AI's evolution, including a fascinating link between Buddhism and the search for meaning in a future shaped by automation.
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Nov 13, 2024 • 2h 9min

Why Your GPUs are underutilised for AI - CentML CEO Explains

Gennady Pekhimenko, CEO of CentML and associate professor at the University of Toronto, dives into the intricacies of AI system optimization. He illuminates the challenges of GPU utilization, revealing why many companies only harness 10% efficiency. The conversation also touches on 'dark silicon,' the competition between open-source and proprietary AI, and the need for strategic refinement in enterprise AI infrastructure. Pekhimenko's insights blend technical depth with practical advice for enhancing machine learning applications in modern businesses.
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Nov 11, 2024 • 4h 19min

Eliezer Yudkowsky and Stephen Wolfram on AI X-risk

Eliezer Yudkowsky, an AI researcher focused on safety, and Stephen Wolfram, the inventor behind Mathematica, tackle the looming existential risks of advanced AI. They debate the challenges of aligning AI goals with human values and ponder the unpredictable nature of AI's evolution. Yudkowsky warns of emergent AI objectives diverging from humanity's best interests, while Wolfram emphasizes understanding AI's computational nature. Their conversation digs deep into ethical implications, consciousness, and the paradox of AI goals.
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Nov 6, 2024 • 2h 43min

Pattern Recognition vs True Intelligence - Francois Chollet

Francois Chollet, a leading AI expert and creator of ARC-AGI, dives into the nature of intelligence and consciousness. He argues that true intelligence is about adapting to new situations, contrasting it with current AI's memory-based processes. Chollet introduces his 'Kaleidoscope Hypothesis,' positing that complex systems stem from simple patterns. He explores the gradual development of consciousness in children and critiques existing AI benchmarks, emphasizing the need for understanding intelligence beyond mere performance metrics.
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Nov 4, 2024 • 1h 53min

The Elegant Math Behind Machine Learning - Anil Ananthaswamy

Anil Ananthaswamy, an award-winning science writer and author of "Why Machines Learn," dives into the intriguing mathematics behind machine learning. He discusses the vital role of linear algebra and calculus in modern AI, tracing its historical roots. Ananthaswamy unpacks the bias-variance tradeoff, the k-nearest neighbors algorithm, and the complexities of human reasoning versus machine learning. He also touches on emergent behaviors in language models and the implications of AI in understanding identity and consciousness, advocating for a deeper societal engagement with these technologies.
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Oct 24, 2024 • 1h 4min

Michael Levin - Why Intelligence Isn't Limited To Brains.

Professor Michael Levin, a prominent figure in developmental biology and cognitive science, discusses the concept of diverse intelligence that transcends just brain power. He reveals how even simple biological systems demonstrate learning and memory through gene regulatory networks. The talk introduces intriguing ideas like 'cognitive light cones' and explores their transformative impact on cancer treatment and biological engineering. Levin challenges traditional views on intelligence, suggesting it’s a spectrum vital for understanding both biological and artificial systems.
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Oct 23, 2024 • 1h 46min

Speechmatics CTO - Next-Generation Speech Recognition

Will Williams, CTO of Speechmatics, shares breakthroughs in speech recognition. He describes a hybrid approach that uses unsupervised learning, requiring 100x less data than traditional methods. The conversation dives into latency-accuracy trade-offs and the complexities of real-time automatic speech recognition, highlighting speaker identification and source separation challenges. Williams also critiques the evolution of deep learning frameworks, emphasizing the critical role of diverse data in training robust systems as Speechmatics navigates innovative growth and ethical considerations in AI.
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Oct 22, 2024 • 2h 46min

Dr. Sanjeev Namjoshi - Active Inference

Dr. Sanjeev Namjoshi, a machine learning engineer and author of a book on Active Inference, dives into its theoretical and practical aspects. He explains how Active Inference utilizes the Free Energy Principle to minimize uncertainty in biological and artificial systems. Namjoshi highlights its potential to revolutionize machine learning, akin to deep learning's early days. He contrasts it with traditional methods, emphasizing its ability to foster exploration and curiosity, and explores the complexities of agency in AI and its implications for future cognitive modeling.

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