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Benchmarking optimization solvers

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🌐 Website: www.optprof.com

Python

Install OptiProfiler from PyPI:

pip install optiprofiler

You can also install OptiProfiler from conda-forge:

conda install conda-forge::optiprofiler

MATLAB

  1. Clone the repository using the following command:

git clone https://github.com/optiprofiler/optiprofiler.git
  1. In MATLAB, navigate to the folder where the source code is located, and you will see a file named setup.m. Run the following command in the MATLAB command window:

setup

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