Skip to content
Snippets Groups Projects
user avatar
kohlhaasrebecca authored
6a1eb14e
History

BayesValidRox

bayesvalidrox logo

An open-source, object-oriented Python package for surrogate-assisted Bayesain Validation of computational models. This framework provides an automated workflow for surrogate-based sensitivity analysis, Bayesian calibration, and validation of computational models with a modular structure.

Authors

Installation

The best practive is to create a virtual environment and install the package inside it.

To create and activate the virtual environment run the following command in the terminal:

  python3 -m venv bayes_env
  cd bayes_env
  source bin/activate

You can replace bayes_env with your preferred name. For more information on virtual environments see this link.

Now, you can install the latest release of the package on PyPI inside the venv with:

  pip install bayesvalidrox

and installing the version on the master branch can be done by cloning this repo and installing:

  git clone https://git.iws.uni-stuttgart.de/inversemodeling/bayesvalidrox.git
  cd bayesvalidrox
  pip install .

Features

  • Surrogate modeling with Polynomial Chaos Expansion
  • Global sensitivity analysis using Sobol Indices
  • Bayesian calibration with MCMC using emcee package
  • Bayesian validation with model weights for multi-model setting

Requirements

  • numpy==1.22.1
  • pandas==1.2.4
  • joblib==1.0.1
  • matplotlib==3.4.2
  • seaborn==0.11.1
  • scikit-learn==0.24.2
  • tqdm==4.61.1
  • chaospy==4.3.3
  • emcee==3.0.2
  • corner==2.2.1
  • h5py==3.2.1
  • statsmodels==0.13.2

TexLive for Plotting with matplotlib

Here you need super user rights

sudo apt-get install dvipng texlive-latex-extra texlive-fonts-recommended cm-super