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Bayesian statistics / Monte Carlo software / OpenBUGS / Programming paradigms / Programming language / Prolog / Bayesian inference / Imperative programming / Probability / Statistics / Software engineering / Computing
Date: 2013-01-15 17:03:35
Bayesian statistics
Monte Carlo software
OpenBUGS
Programming paradigms
Programming language
Prolog
Bayesian inference
Imperative programming
Probability
Statistics
Software engineering
Computing

An Intro to Probabilistic Programming using JAGS John Myles White December 27, 2012

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