Christopher Fonnesbeck - Bayesian Non-parametric Models for Data Science using PyMC3 - PyCon 2018

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Speaker: Christopher Fonnesbeck

Nowadays, there are many ways of building data science models using Python, including statistical and machine learning methods. I will introduce probabilistic models, which use Bayesian statistical methods to quantify all aspects of uncertainty relevant to your problem, and provide inferences in simple, interpretable terms using probabilities. A particularly flexible form of probabilistic models uses Bayesian *non-parametric* methods, which allow models to vary in complexity depending on how much data are available. In doing so, they avoid the over-fitting that is common in machine learning and statistical modeling. I will demonstrate the basics of Bayesian non-parametric modeling in Python, using the PyMC3 package. Specifically, I will introduce two common types, Gaussian processes and Dirichlet processes, and show how they can be applied easily to real-world problems using two examples.

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Talk starts around 1:22 (speaker introduction around 0:50)

bloodgain
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Hi - Those links for the slides don't work. Would you mind fixing it?

sidravi
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Is it just me, or do all these Bayesian PyMC3 talks get to "draw the rest of the owl" really quickly?

FinallyAFreeUsername
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fathi medos fez aziza 1 said thank you so much

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