
[30] Dustin Tran - Probabilistic Programming for Deep Learning
The Thesis Review
Navigating Probabilistic Programming and Inference
This chapter explores the intricate relationship between model building and systems engineering in the realm of probabilistic programming. It discusses the evolution from Edward to Edward 2.0, emphasizing the importance of inference methods and collaborative design. Additionally, the chapter addresses the challenges of creating user-friendly yet detailed programming tools that cater to a diverse audience of researchers and practitioners.
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