The Nebius for Startups Podcast
What if AI’s next breakthrough isn’t a larger model, but a different way of thinking about intelligence? In this episode, Markiesha Patrice, Head of Startup Platform & Community at Nebius, sits down with Sudip Roy, co-founder and CTO of Adaption. After helping build AI infrastructure during the scaling era at Google and Cohere, Sudip now argues that the industry’s future won’t be defined by ever-larger models alone. He explains why leading foundation models are converging, why enterprises should think in terms of AI systems instead of individual models, and how continuous adaptation could become the next major shift in artificial intelligence. 0:00 - Intro teaser: The days of monolithic AI are over 0:47 - Challenging scaling laws: how Adaption Labs started 3:18 - The three pillars: data, continual learning, interfaces 6:52 - Adaptation is all you need: the future of AI models 8:40 - Proportional compute and the AI energy gap 11:00 - Solving the 5% reliability gap for enterprises 11:57 - Advice for builders: take contrarian positions 14:36 - Adaptive Data: synthetic data in 240+ languages 15:19 - Outro What You'll Learn: -Why leading foundation models are beginning to converge and what that means for the future of AI. -Why thinking about tasks instead of models changes how enterprises should build AI systems. -Why enterprise data remains AI’s biggest untapped resource.-How continuous learning closes the 5% enterprise reliability gap caused by domain-specific organizational data. -Why challenging industry consensus can create breakthrough startup opportunities. Learn more at: https://nebius.com/startups/podcast
22 episodes
Comments
0Be the first to comment
Sign up now and become a member of the The Nebius for Startups Podcast community!