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

Learning Bayesian Statistics

CHAPTER

Reactive Message Passing for Scalable Vision Inference

The chapter explores the use of reactive message passing for scalable and efficient vision inference, focusing on reducing complexity through factor graphs, message passing, and variational inference. It discusses the practical applications of this technology in teaching, research, and potential industrial use, highlighting the need for faster inference speed for real-world tasks. The chapter also delves into the trade-offs involved in patient inference architecture on edge devices and the future developments for enhancing automated patient inference in complex models.

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