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@TuringLang

The Turing Language

Bayesian inference with probabilistic programming

Turing.jl is a Julia library for general-purpose probabilistic programming. Turing allows the user to write models using the standard Julia syntax, and provides a wide range of Monte Carlo sampling and optimisation based inference methods for solving problems across probabilistic machine learning, Bayesian statistics and data science. Compared to other probabilistic programming languages, Turing specializes in modularity, and decouples the modelling language (i.e., the compiler) and inference methods. Turing's modular design and the high-level numerical language Julia make Turing remarkably extensible: new model families and inference methods can be easily added.

Current functionalities include:

Citing Turing.jl

If you use Turing for your research, please consider citing the following publication: Hong Ge, Kai Xu, and Zoubin Ghahramani: Turing: a language for flexible probabilistic inference. AISTATS 2018 pdf bibtex

Pinned

  1. Turing.jl Turing.jl Public

    Bayesian inference with probabilistic programming.

    Julia 2k 213

  2. AdvancedHMC.jl AdvancedHMC.jl Public

    Robust, modular and efficient implementation of advanced Hamiltonian Monte Carlo algorithms

    Jupyter Notebook 220 39

  3. AdvancedMH.jl AdvancedMH.jl Public

    Robust implementation for random-walk Metropolis-Hastings algorithms

    Julia 83 17

  4. NestedSamplers.jl NestedSamplers.jl Public

    Implementations of single and multi-ellipsoid nested sampling

    Julia 37 8

  5. MCMCTempering.jl MCMCTempering.jl Public

    Implementations of parallel tempering algorithms to augment samplers with tempering capabilities

    Julia 27 3

  6. JuliaBUGS.jl JuliaBUGS.jl Public

    Implementation of domain specific language (DSL) for probabilistic graphical models

    Julia 19 2

Repositories

Showing 10 of 35 repositories