Gurobi Machine Learning is an open-source python package to embed trained regression models in a gurobipy
model to be solved with the Gurobi solver.
The package currently supports various scikit-learn objects. It has limited support for the Keras API of TensorFlow and PyTorch. Only neural networks with ReLU activation can be used with these two packages.
The latest user manual is available on readthedocs.
For questions related to using Gurobi Machine Learning please use Gurobi's Forum.
For reporting bugs, issues and feature request please open an issue.
If you encounter issues with Gurobi or gurobipy
please contact
Gurobi Support
gurobi-machinelearning
requires the following:
The current version supports the following ML package versions:
torch
== 1.12.1scikit-learn
== 1.1.2tensorflow
== 2.10.0
Installing these package is only required if the predictor you want to insert uses them
(i.e. to insert a Keras based predictor you need to have tensorflow
installed).
The easiest way to install gurobi-machinelearning
is using pip
in a virtual environment:
(.venv) pip install gurobi-machinelearning
This will also install the numpy
, scipy
and gurobipy
dependencies.
Please note that gurobipy
is commercial software and requires a license. When installed via pip or conda,
gurobipy
ships with a free license which is only for testing and can only solve models of limited size.
Alternatively to the bundled limited license, there are licenses that can handle models of all sizes.
As a student or staff member of an academic institution you qualify for a free, full product license. For more information, see:
For a commercial evaluation, you can request an evaluation license.
Other useful resources to get started:
We value any level of experience in using Gurobi Machine Learning and would like to encourage you to contribute directly to this project. Please see the Contributing Guide for more information.
You can clone the latest sources with the command:
git clone [email protected]:Gurobi/gurobi-machinelearning.git
After cloning the project, you can run the tests by invoking tox
. For this, you will need to create a virtual
environment and activate it:
python3.10 -m venv .venv
. .venv/bin/activate
Then, you can install tox
(>= 3.26.0) and run a few basic tests:
(.venv) pip install tox
(.venv) tox -e py310,pre-commit,docs
tox
will install, among others, the aforementioned ML packages into a separate venv
. These packages can be quite
large, so this might take a while.
In the above command, we only ran a subset of tests. Running the full set of tests requires having a Gurobi license
installed, and is done by running just the tox
command without the -e
parameter:
(.venv) pip install tox
(.venv) tox
If you don't have a Gurobi license, you can still run the subset of tests, open a PR, and Github Actions will run the tests with a full Gurobi license.
Before opening a Pull Request, have a look at the full Contributing page to make sure your code complies with our guidelines.