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Simple MCMC

NOASSERTIONJulia

A Julia framework for MCMC sampling and optimization with automatic gradient generation for user-defined models.

GitHubGitHub
12 stars1 forks0 contributors

Overview

basic mcmc sampler implemented in Julia

Quick Stats

Stars12
Forks1
Contributors0
Open Issues1
Last commit13 years ago
CreatedSince 2012

Tags

#julia#gradient-descent#mcmc-sampling#automatic-differentiation#bayesian-inference#hamiltonian-monte-carlo#statistical-modeling#probabilistic-programming

Built With

J
Julia

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