Webinar Alert: Combining Bayes and Graph-based Causal Inference
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Date: Wednesday, November 29, 2023 Time: 17:00 UTC / 9am PT / 12pm ET / 6pm Berlin Speaker: Robert Ness, Researcher at Microsoft Research Host: Dr. Thomas Wiecki, CEO & Founder of PyMC Labs Register for the Zoom link: Graphical causal inference and probabilistic programming share much history. For example, directed probabilistic graphical models were early versions of causal models, and d-separation (graphical criteria for conditional independence) provided the fundamentals for the do-c
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