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#87 Unlocking the Power of Bayesian Causal Inference, with Ben Vincent

Learning Bayesian Statistics

CHAPTER

PyMC: The Future of Probabilistic Programming

I'm really excited about what it becomes possible in a probabilistic programming language when you have a language like Julia. In order for packages to do Bayesian inference, we need gradient information and PyMC calculates that by having a graph. The other thing I'm interested in is doing operations on the graphs - so all PPLs basically give you a log probability and hopefully gradient information. But not all of them have kind of like an underlying explicit graph structure. We've talked about one clear example of that with the do operator where you can go in and replace a random variable with a constant,. And cut nodes into this thing that you're intervening on. Other applications of this would be graph

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