Bayesian inference with probabilistic programming.
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Updated
Dec 22, 2024 - Julia
Bayesian inference with probabilistic programming.
Solve and estimate Dynamic Stochastic General Equilibrium models (including the New York Fed DSGE)
Probabilistic programming via source rewriting
"Distributions" that might not add to one.
Probabilistic Programming with Gaussian processes in Julia
Implementation of robust dynamic Hamiltonian Monte Carlo methods (NUTS) in Julia.
Implementation of normalising flows and constrained random variable transformations
A domain-specific probabilistic programming language for scalable Bayesian data cleaning
A Bayesian Analysis Toolkit in Julia
A Julia framework for invertible neural networks
Fast inference for Gaussian processes in problems involving time. Partly built on results from https://proceedings.mlr.press/v161/tebbutt21a.html
Extension functionality which uses Stan.jl, DynamicHMC.jl, and Turing.jl to estimate the parameters to differential equations and perform Bayesian probabilistic scientific machine learning
State estimation, smoothing and parameter estimation using Kalman and particle filters.
High-performance reactive message-passing based Bayesian inference engine
Sleek implementations of the ZigZag, Boomerang and other assorted piecewise deterministic Markov processes for Markov Chain Monte Carlo including Sticky PDMPs for variable selection
A Julia rewrite of Dynare: solving, simulating and estimating DSGE models.
Sampling from intractable distributions, with support for distributed and parallel methods
Preheat your MCMC
WIP successor to Soss.jl
Sequential Monte Carlo algorithm for approximation of posterior distributions.
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