PySCIPOpt-ML is a python interface to automatically formulate Machine Learning (ML) models into Mixed-Integer Programs (MIPs). PySCIPOPT-ML allows users to easily optimise MIPs with embedded ML constraints.
The package currently supports various ML objects from Scikit-Learn, XGBoost, LightGBM, PyTorch, Keras, and ONNX.
The latest user manual is available on readthedocs.
For reporting bugs, issues and feature requests please open an issue.
pyscipopt-ml
requires the following:
The current version supports the following ML packages:
Installing these packages is only required if the predictor you want to insert uses them
(i.e. to insert a XGBoost based predictor you need to have xgboost
installed).
The easiest way to install PySCIPOpt-ML
is using pip
.
It is recommended to always install packages in a virtual environment:
(venv) pip install pyscipopt-ml
This will also install the numpy
and pyscipopt
dependencies.
An alternative way to install PySCIPOpt-ML
is from source. First this repository
needs to be cloned. This can be achieved via HTTPS with:
git clone https://github.com/Opt-Mucca/PySCIPOpt-ML/
and SHH with
git clone [email protected]:Opt-Mucca/PySCIPOpt-ML.git
After cloning the repository entering the directory where it was cloned, one can run the command:
(venv) python -m pip install .
This project is completely open to any contributions. Feel free to implement your own functionalities.
Before committing anything, please install pytest, pre-commit, and all ML frameworks:
pip install pytest
pip install scikit-learn
pip install torch
pip install tensorflow
pip install xgboost
pip install lightgbm
pip install onnx
pip install onnxruntime
pip install pre-commit
pre-commit install
You can clone the latest sources with the command:
git clone [email protected]:Opt-Mucca/PySCIPOpt-ML.git
You can build the documentation locally with the command
pip install -r docs/requirements.txt
sphinx-build docs docs/_build
Às the documentation requires additional python packages, one should run the following command before building the documentation for the first time:
(venv) pip install -r docs/requirements.txt
After cloning the project, you can run the tests by invoking pytest
. For this, you will need to create a virtual
environment and activate it. Please also make sure to append your python path:
python -m venv venv
source venv/bin/activate
export PYTHONPATH="$(pwd):${PYTHONPATH}"
Then, you can install pytest
and run a few basic tests:
(venv) pip install pytest
(venv) pytest
If this software was used for academic purposes, please cite our paper with the below information:
@article{turner2023pyscipopt,
title={PySCIPOpt-ML: Embedding Trained Machine Learning Models into Mixed-Integer Programs},
author={Turner, Mark and Chmiela, Antonia and Koch, Thorsten and Winkler, Michael},
journal={arXiv preprint arXiv:2312.08074},
year={2023}
}
The work for this article has been conducted in the Research Campus MODAL funded by the German Federal Ministry of Education and Research (BMBF) (fund numbers 05M14ZAM, 05M20ZBM).