Skip to content

s-ilic/zeus

This branch is 3 commits ahead of minaskar/zeus:main.

Folders and files

NameName
Last commit message
Last commit date

Latest commit

2ba9d0b · Nov 7, 2024
Jan 12, 2023
Feb 18, 2024
Jan 12, 2023
Nov 7, 2024
Mar 5, 2021
Jan 12, 2023
Oct 25, 2019
May 13, 2021
Nov 3, 2021
Dec 7, 2019
Jan 12, 2023
Jan 12, 2023
Jan 12, 2023

Repository files navigation

logo

zeus is a Python implementation of the Ensemble Slice Sampling method.

  • Fast & Robust Bayesian Inference,
  • Efficient Markov Chain Monte Carlo (MCMC),
  • Black-box inference, no hand-tuning,
  • Excellent performance in terms of autocorrelation time and convergence rate,
  • Scale to multiple CPUs without any extra effort,
  • Automated Convergence diagnostics.

GitHub arXiv arXiv ascl Build Status License: GPL v3 Documentation Status Downloads

Example

For instance, if you wanted to draw samples from a 10-dimensional Gaussian, you would do something like:

import zeus
import numpy as np

def log_prob(x, ivar):
    return - 0.5 * np.sum(ivar * x**2.0)

nsteps, nwalkers, ndim = 1000, 100, 10
ivar = 1.0 / np.random.rand(ndim)
start = np.random.randn(nwalkers,ndim)

sampler = zeus.EnsembleSampler(nwalkers, ndim, log_prob, args=[ivar])
sampler.run_mcmc(start, nsteps)
chain = sampler.get_chain(flat=True)

Documentation

Read the docs at zeus-mcmc.readthedocs.io

Installation

To install zeus using pip run:

pip install zeus-mcmc

To install zeus in a [Ana]Conda environment use:

conda install -c conda-forge zeus-mcmc

Attribution

Please cite the following papers if you found this code useful in your research:

@article{karamanis2021zeus,
  title={zeus: A Python implementation of Ensemble Slice Sampling for efficient Bayesian parameter inference},
  author={Karamanis, Minas and Beutler, Florian and Peacock, John A},
  journal={arXiv preprint arXiv:2105.03468},
  year={2021}
}

@article{karamanis2020ensemble,
    title = {Ensemble slice sampling: Parallel, black-box and gradient-free inference for correlated & multimodal distributions},
    author = {Karamanis, Minas and Beutler, Florian},
    journal = {arXiv preprint arXiv: 2002.06212},
    year = {2020}
}

Licence

Copyright 2019-2021 Minas Karamanis and contributors.

zeus is free software made available under the GPL-3.0 License. For details see the LICENSE file.

About

⚡️ zeus: Lightning Fast MCMC ⚡️

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%