Exploring Austin Rochford Variational Inference In Python

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  • www.pydata.org When Bayesian modeling scales up to large datasets, traditional MCMC methods can become impractical due to ...
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  • Filmed at PyData London 2017 Description Recent improvements in Probabilistic Programming have led to a new method called ...

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PyData DC 2016 Jupyter notebook: https://nbviewer.jupyter.org/gist/AustinRochford/91cabfd2e1eecf9049774ce529ba4c16 ... Update: ETE is back for 2021! Get your tickets for $89 at https://2021.phillyemergingtech.com. In the last ten years, there have ... In real-world applications, the posterior over the latent variables Z given some data D is usually intractable. But we can use a ... Variational

VI attempts to find an optimal surrogate posterior by maximizing the Evidence Lower Bound (=ELBO). The surrogate posterior acts ...

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