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Microsoft CTO Kevin Scott on How Far Scaling Laws Will Extend

Training Data

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Evolution of AI Models and Computational Hardware

The chapter explores the transformation in AI models from task-specific to versatile large language models, emphasizing efficient scaling, broader application, and improved transfer learning. It discusses advancements in hardware technology for scaling models efficiently and the challenges in power dissipation and networking solutions. The conversation also delves into training data quality, business models for data use, challenges in benchmarking AI models, deployment of Microsoft co-pilots, and the evolution of AI usage in companies.

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