Skip to main content

Simulation-based inference.

Project description

PyPI version Contributions welcome GitHub license codecov Tests

sbi: simulation-based inference

Documentation

sbi is a PyTorch package for simulation-based inference. Simulation-based inference is the process of finding parameters of a simulator from observations.

sbi takes a Bayesian approach and returns a full posterior distribution over the parameters, conditional on the observations. This posterior can be amortized (i.e. useful for any observation) or focused (i.e. tailored to a particular observation), with different computational trade-offs.

sbi offers a simple interface for one-line posterior inference.

from sbi.inference import infer
# import your simulator, define your prior over the parameters
parameter_posterior = infer(simulator, prior, method='SNPE', num_simulations=100)

See below for the available methods of inference, SNPE, SNRE and SNLE.

Installation

sbi requires Python 3.6 or higher. It can be installed using pip:

$ pip install sbi

We recommend to use a conda virtual environment (Miniconda installation instructions). If conda is installed on the system, an environment for installing sbi can be created as follows:

# Create an environment for sbi (indicate Python 3.6 or higher); activate it
$ conda create -n sbi_env python=3.6 && conda activate sbi_env

To test the installation, drop into a python prompt and run

from sbi.examples.minimal import simple
posterior = simple()
print(posterior)

Inference Algorithms

The following algorithms are currently available:

Sequential Neural Posterior Estimation (SNPE)

Sequential Neural Likelihood Estimation (SNLE)

Sequential Neural Ratio Estimation (SNRE)

Feedback and Contributions

We would like to hear how sbi is working for your inference problems as well as receive bug reports, pull requests and other feedback (see contribute).

Acknowledgements

sbi is the successor (using PyTorch) of the delfi package. It was started as a fork of Conor M. Durkan's lfi. sbi runs as a community project; development is coordinated at the mackelab. See also credits.

Support

sbi has been developed in the context of the ADIMEM grant, project A. ADIMEM is a BMBF grant awarded to groups at the Technical University of Munich, University of Tübingen and Research Center caesar of the Max Planck Gesellschaft.

License

Affero General Public License v3 (AGPLv3)

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

sbi-0.12.1.tar.gz (251.1 kB view hashes)

Uploaded Source

Built Distribution

sbi-0.12.1-py2.py3-none-any.whl (128.1 kB view hashes)

Uploaded Python 2 Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page