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#100 Reactive Message Passing & Automated Inference in Julia, with Dmitry Bagaev

Learning Bayesian Statistics

CHAPTER

Reactive Message Passing and Bayesian Inference Toolbox in Probabilistic Modeling

The chapter explores the concept of reactive message passing in probabilistic modeling, emphasizing its application in vision models and real-time data handling with unknown structures. It discusses the necessity for a Bayesian inference toolbox that is scalable, adaptive, and efficient, with a focus on the advantages of using Julia for such tasks. The speaker highlights how the dynamic multiple dispatch feature of Julia aids in implementing reactive message passing and efficient message updating rules in graphical models.

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