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#110 Unpacking Bayesian Methods in AI with Sam Duffield

Learning Bayesian Statistics

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Exploring Thermodynamic Computing and Innovative Hardware for Accelerating AI

The chapter discusses thermodynamic computing, utilizing physical hardware for simulating Stochastic Differential Equations (SDEs) for scientific computations like statistics and machine learning. It explores the benefits of noise-aware SDEs for computations over classical analog methods and the acceleration of computing hardware for optimized AI components. Additionally, it covers topics like open source project contributions, challenges in learning from textbooks, advancements in Bayesian inference for machine learning, and the scalability of patient inference to big data with the use of posteriors.

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