PyMC3 is a Python package for Bayesian statistical modeling and Probabilistic Machine Learning focusing on advanced Markov chain Monte Carlo (MCMC) and variational inference (VI) algorithms. Its flexibility and extensibility make it applicable to a large suite of problems.
Check out the getting started guide, or interact with live examples using Binder! For questions on PyMC3, head on over to our PyMC Discourse forum.
There have been many questions and uncertainty around the future of PyMC3 since Theano stopped getting developed by the original authors, and we started experiments with PyMC4.
We are happy to announce that PyMC3 on Theano (which we are developing further) with a new JAX backend is the future. PyMC4 will not be developed further.
See the full announcement for more details.
- Intuitive model specification syntax, for example,
x ~ N(0,1)
translates tox = Normal('x',0,1)
- Powerful sampling algorithms, such as the No U-Turn Sampler, allow complex models with thousands of parameters with little specialized knowledge of fitting algorithms.
- Variational inference: ADVI for fast approximate posterior estimation as well as mini-batch ADVI for large data sets.
- Relies on Theano-PyMC which provides:
- Computation optimization and dynamic C or JAX compilation
- Numpy broadcasting and advanced indexing
- Linear algebra operators
- Simple extensibility
- Transparent support for missing value imputation
- Probabilistic Programming and Bayesian Methods for Hackers: Fantastic book with many applied code examples.
- PyMC3 port of the book "Doing Bayesian Data Analysis" by John Kruschke as well as the second edition: Principled introduction to Bayesian data analysis.
- PyMC3 port of the book "Statistical Rethinking A Bayesian Course with Examples in R and Stan" by Richard McElreath
- PyMC3 port of the book "Bayesian Cognitive Modeling" by Michael Lee and EJ Wagenmakers: Focused on using Bayesian statistics in cognitive modeling.
- Bayesian Analysis with Python (second edition) by Osvaldo Martin: Great introductory book. (code and errata).
There are also several talks on PyMC3 which are gathered in this YouTube playlist and as part of PyMCon 2020
The latest release of PyMC3 can be installed from PyPI using pip
:
pip install pymc3
Note: Running pip install pymc
will install PyMC 2.3, not PyMC3,
from PyPI.
Or via conda-forge:
conda install -c conda-forge pymc3
Plotting is done using ArviZ - if you follow the installation instructions above, then it will be installed alongside PyMC3
.
The current development branch of PyMC3 can be installed from GitHub, also using pip
:
pip install git+https://github.com/pymc-devs/pymc3
To ensure the development branch of Theano is installed alongside PyMC3
(recommended), you can install PyMC3 using the requirements.txt
file. This requires cloning the repository to your computer:
git clone https://github.com/pymc-devs/pymc3 cd pymc3 pip install -r requirements.txt
However, if a recent version of Theano has already been installed on your system, you can install PyMC3 directly from GitHub.
Another option is to clone the repository and install PyMC3 using
python setup.py install
or python setup.py develop
.
PyMC3 is tested on Python 3.6, 3.7, and 3.8 and depends on Theano-PyMC, NumPy, SciPy, and pandas (see requirements.txt for version information).
In addtion to the above dependencies, the GLM submodule relies on Patsy.
Salvatier J., Wiecki T.V., Fonnesbeck C. (2016) Probabilistic programming in Python using PyMC3. PeerJ Computer Science 2:e55 DOI: 10.7717/peerj-cs.55.
We are using discourse.pymc.io as our main communication channel. You can also follow us on Twitter @pymc_devs for updates and other announcements.
To ask a question regarding modeling or usage of PyMC3 we encourage posting to our Discourse forum under the “Questions” Category. You can also suggest feature in the “Development” Category.
To report an issue with PyMC3 please use the issue tracker.
Finally, if you need to get in touch for non-technical information about the project, send us an e-mail.
- Exoplanet: a toolkit for modeling of transit and/or radial velocity observations of exoplanets and other astronomical time series.
- Bambi: BAyesian Model-Building Interface (BAMBI) in Python.
- pymc3_models: Custom PyMC3 models built on top of the scikit-learn API.
- PMProphet: PyMC3 port of Facebook's Prophet model for timeseries modeling
- webmc3: A web interface for exploring PyMC3 traces
- sampled: Decorator for PyMC3 models.
- NiPyMC: Bayesian mixed-effects modeling of fMRI data in Python.
- beat: Bayesian Earthquake Analysis Tool.
- pymc-learn: Custom PyMC models built on top of pymc3_models/scikit-learn API
- fenics-pymc3: Differentiable interface to FEniCS, a library for solving partial differential equations.
- cell2location: Comprehensive mapping of tissue cell architecture via integrated single cell and spatial transcriptomics.
Please contact us if your software is not listed here.
See Google Scholar for a continuously updated list.
See the GitHub contributor page. Also read our Code of Conduct guidelines for a better contributing experience.
PyMC3 is a non-profit project under NumFOCUS umbrella. If you want to support PyMC3 financially, you can donate here.
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