In the last couple of years we've seen rapid evolution frontier, massive sized models. Yet at the same time small models have been going through an evolution of their own, using technologies developer for those frontier scaled models. In this talk we'll show how tensor frameworks and autograd made their way into Bayesian models, how massive model development is yielding smaller models, and how both of these are useful for the small data and model developers, and the organizations they support.
talk-data.com
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Speaker
Ravin Kumar
1
talks
Senior Researcher
Google DeepMind
Ravin Kumar applies generative models to real-world problems, with a focus on large language models, trust and safety, and the responsible deployment of AI systems. With more than a decade of experience in mathematics, statistics, and computation, his work spans aerospace, food systems, and open source. He is a core contributor to PyMC and is committed to making complex math accessible and practical.
Bio from: Small Data SF 2025
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