Today’s clip is from episode 134 of the podcast, with David Kohns.
Alex and David discuss the future of probabilistic programming, focusing on advancements in time series modeling, model selection, and the integration of AI in prior elicitation.
The discussion highlights the importance of setting appropriate priors, the challenges of computational workflows, and the potential of normalizing flows to enhance Bayesian inference.
Get the full discussion here.
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Transcript
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