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#139 Efficient Bayesian Optimization in PyTorch, with Max Balandat

Learning Bayesian Statistics

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Exploring Botorch for Bayesian Optimization

This chapter provides an in-depth look at Botorch, a PyTorch-based library for Bayesian optimization, emphasizing its modularity and flexibility for both researchers and practitioners. It discusses the challenges and solutions of integrating complex probabilistic programming models while navigating the trade-offs in gradient access for optimization tasks. Additionally, the importance of Gaussian processes and the incorporation of informative priors in model performance are highlighted, ensuring a comprehensive understanding of the library's practical applications.

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