Skip to content

RevanthGundala/zeus

 
 

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

 
 
 

Languages

  • Python 99.9%
  • Dockerfile 0.1%