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Machine Learning Street Talk (MLST)

Latest episodes

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53 snips
May 26, 2025 • 51min

"Blurring Reality" - Chai's Social AI Platform (SPONSORED)

William Beauchamp, founder of Chai, and engineer Tom Lu explore the fascinating realm of social AI. They discuss how Chai developed one of the largest AI companion ecosystems, revealing the surprising demand for AI companionship. The duo delves into innovative techniques like reinforcement learning from human feedback and model blending. They also examine the ethical challenges of user engagement, emphasizing the importance of responsible AI interactions amidst rapid advancements in conversational technology.
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259 snips
May 14, 2025 • 1h 14min

Google AlphaEvolve - Discovering new science (exclusive interview)

Matej Balog and Alexander Novikov from Google DeepMind unveil their groundbreaking work on AlphaEvolve, an AI coding agent designed for advanced algorithm discovery. They discuss its ability to outperform established algorithms like Strassen's for matrix multiplication and adapt to varying problem complexities. The duo explores how AlphaEvolve employs evolutionary processes for continuous improvement in algorithm development, navigating challenges such as the halting problem while emphasizing the necessity of blending AI capabilities with human insights for innovative solutions.
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123 snips
Apr 23, 2025 • 35min

Prof. Randall Balestriero - LLMs without pretraining and SSL

Randall Balestriero, an AI researcher renowned for his work on self-supervised learning and geographic bias, explores fascinating findings in AI training. He reveals that large language models can perform well even without extensive pre-training. Randall also highlights the similarities between self-supervised and supervised learning, emphasizing their potential for improvement. Additionally, he discusses biases in climate models, demonstrating the risks of relying on their predictions, particularly for vulnerable regions, which has significant policy implications.
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239 snips
Apr 8, 2025 • 1h 17min

How Machines Learn to Ignore the Noise (Kevin Ellis + Zenna Tavares)

Prof. Kevin Ellis, an AI and cognitive science expert at Cornell University, and Dr. Zenna Tavares, co-founder of BASIS, explore how AI can learn like humans. They discuss how machines can generate knowledge from minimal data through exploration and experimentation. The duo highlights the importance of compositionality, building complex ideas from simple ones, and the need for AI to grasp abstraction without getting lost in details. By blending different learning methods, they envision smarter AI that can tackle real-world challenges more intuitively.
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268 snips
Apr 2, 2025 • 1h 36min

Eiso Kant (CTO poolside) - Superhuman Coding Is Coming!

Eiso Kant, the CTO of Poolside AI, shares his insights on the future of AI-driven coding. He highlights how their unique approach of reinforcement learning is set to revolutionize software development, aiming for human-level AI in just 18-36 months. Kant discusses the balance between model scaling and effective customization for enterprises. He emphasizes the importance of accessibility in coding and predicts a shift in how developers interact with AI, making coding more intuitive and collaborative for everyone.
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110 snips
Mar 30, 2025 • 1h 37min

The Compendium - Connor Leahy and Gabriel Alfour

Connor Leahy and Gabriel Alfour, AI researchers from Conjecture, dive deep into the critical issues of Artificial Superintelligence (ASI) safety. They discuss the existential risks of uncontrolled AI advancements, warning that a superintelligent AI could dominate humanity as humans do less intelligent species. The conversation also touches on the need for robust institutional support and ethical governance to navigate the complexities of AI alignment with human values while critiquing prevailing ideologies like techno-feudalism.
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162 snips
Mar 24, 2025 • 54min

ARC Prize v2 Launch! (Francois Chollet and Mike Knoop)

Francois Chollet, an AI researcher known for Keras and the ARC challenge, joins Mike Knoop, collaborator on the ARC challenge, to launch the new version of the ARC prize. They discuss how ARC v2 integrates human calibration and adversarial selection, ensuring that even top LLMs struggle against it. The conversation highlights the evolution from ARC v1 to v2, the complexities of AI task design, and the urgent need for rigorous testing methods to bridge the gap between human and AI intelligence in the quest for artificial general intelligence.
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180 snips
Mar 22, 2025 • 1h 4min

Test-Time Adaptation: the key to reasoning with DL (Mohamed Osman)

Mohamed Osman, an AI researcher at Tufa Labs in Zurich, discusses the groundbreaking strategies behind his team’s success in the ARC challenge 2024. He highlights the concept of test-time fine-tuning, emphasizing its role in enhancing model performance. The conversation dives into the balance of flexibility and correctness in neural networks, as well as innovative techniques like synthetic data and novel voting mechanisms. Osman also critiques current compute strategies and explores the need for adaptability in AI models, shedding light on the future of machine learning.
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140 snips
Mar 19, 2025 • 1h 11min

GSMSymbolic paper - Iman Mirzadeh (Apple)

Iman Mirzadeh, an AI researcher at Apple, presents fresh insights from his GSM-Symbolic paper. He distinguishes between intelligence and achievement in AI, emphasizing that current methodologies fall short. The conversation explores the limitations of Large Language Models in genuine reasoning and the impact of integrating tools for improved AI performance. Mirzadeh advocates for rethinking benchmarks to capture true intelligence and discusses the importance of active engagement in learning processes, suggesting a paradigm shift is essential for future advancements.
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348 snips
Mar 18, 2025 • 1h 23min

Reasoning, Robustness, and Human Feedback in AI - Max Bartolo (Cohere)

Max Bartolo, a researcher at Cohere, dives into the world of machine learning, focusing on model reasoning and robustness. He highlights the DynaBench platform's role in dynamic benchmarking and the complex challenges of evaluating AI performance. The conversation reveals the limitations of human feedback in training AI and the surprising reliance on distributed knowledge. Bartolo discusses the impact of adversarial examples on model reliability and emphasizes the need for tailored approaches to enhance AI systems, ensuring they align with human values.

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