Bayesian inference with probabilistic programming.
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Updated
Aug 8, 2025 - Julia
Bayesian inference with probabilistic programming.
Probabilistic programming via source rewriting
Implementation of robust dynamic Hamiltonian Monte Carlo methods (NUTS) in Julia.
A Bayesian Analysis Toolkit in Julia
Bayesian Statistics using Julia and Turing
Bayesian Generalized Linear models using `@formula` syntax.
WIP successor to Soss.jl
Transformations to contrained variables from ℝⁿ.
Graphical tools for Bayesian inference and posterior predictive checks
Markov Chain Monte Carlo convergence diagnostics in Julia
Bayesian inference on wiring diagrams.
Particle-based and nonparametric variational methods for approximate Bayesian inference and Probabilistic Programming
Metric Gaussian Variational Inference
Toolkit functions and example outputs for Bayesian (Structural) Vector Autoregressive (VAR) models
Statistical analyses for Bayesian workflows
Interface between Turing.jl and MonteCarloMeasurements.jl
Julia package to perform Bayesian clustering of high-dimensional Euclidean data using pairwise dissimilarity information.
A Julia Package for Bayesian Nonparametric Analysis for Machine Learning
Bayesian Integration of functions
BayesBase is a package that serves as an umbrella, defining, exporting, and re-exporting methods essential for Bayesian statistics
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