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Python-based Derivative-Free Optimizer for Least-Squares
=================================================== DFO-LS: Derivative-Free Optimizer for Least-Squares
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DFO-LS is a flexible package for solving nonlinear least-squares minimization, without requiring derivatives of the objective. It is particularly useful when evaluations of the objective function are expensive and/or noisy. DFO-LS is more flexible version of DFO-GN <https://github.com/numericalalgorithmsgroup/dfogn>_.
This is an implementation of the algorithm from our paper: C. Cartis, J. Fiala, B. Marteau and L. Roberts, Improving the Flexibility and Robustness of Model-Based Derivative-Free Optimization Solvers <https://doi.org/10.1145/3338517>, ACM Transactions on Mathematical Software, 45:3 (2019), pp. 32:1-32:41 [preprint <https://arxiv.org/abs/1804.00154>]. For reproducibility of all figures in this paper, please feel free to contact the authors.
If you are interested in solving general optimization problems (without a least-squares structure), you may wish to try Py-BOBYQA <https://github.com/numericalalgorithmsgroup/pybobyqa>_, which has many of the same features as DFO-LS.
Documentation
See manual.pdf or here <https://numericalalgorithmsgroup.github.io/dfols/>_.
Citation
If you use DFO-LS in a paper, please cite:
Cartis, C., Fiala, J., Marteau, B. and Roberts, L., Improving the Flexibility and Robustness of Model-Based Derivative-Free Optimization Solvers <https://doi.org/10.1145/3338517>_, ACM Transactions on Mathematical Software, 45:3 (2019), pp. 32:1-32:41.
If you use DFO-LS for problems with constraints, including bound constraints, please also cite:
Hough, M. and Roberts, L., Model-Based Derivative-Free Methods for Convex-Constrained Optimization <https://doi.org/10.1137/21M1460971>_, SIAM Journal on Optimization, 21:4 (2022), pp. 2552-2579.
Requirements
DFO-LS requires the following software to be installed:
- Python 3.9 or higher (http://www.python.org/)
Additionally, the following python packages should be installed (these will be installed automatically if using pip, see Installation using pip_):
- NumPy (http://www.numpy.org/)
- SciPy version 1.11 or higher (http://www.scipy.org/)
- Pandas (http://pandas.pydata.org/)
Optional package: DFO-LS versions 1.2 and higher also support the trustregion <https://github.com/lindonroberts/trust-region>_ package for fast trust-region subproblem solutions. To install this, make sure you have a Fortran compiler (e.g. gfortran <https://gcc.gnu.org/wiki/GFortran>_) and NumPy installed, then run :code:pip install trustregion. You do not have to have trustregion installed for DFO-LS to work, and it is not installed by default.
Installation using conda
DFO-LS can be directly installed in Anaconda environments using conda-forge <https://anaconda.org/conda-forge/dfo-ls>_:
.. code-block:: bash
$ conda install -c conda-forge dfo-ls
Installation using pip
For easy installation, use pip <http://www.pip-installer.org/>_ as root:
.. code-block:: bash
$ [sudo] pip install DFO-LS
or alternatively easy_install:
.. code-block:: bash
$ [sudo] easy_install DFO-LS
If you do not have root privileges or you want to install DFO-LS for your private use, you can use:
.. code-block:: bash
$ pip install --user DFO-LS
which will install DFO-LS in your home directory.
Note that if an older install of DFO-LS is present on your system you can use:
.. code-block:: bash
$ [sudo] pip install --upgrade DFO-LS
to upgrade DFO-LS to the latest version.
Manual installation
Alternatively, you can download the source code from Github <https://github.com/numericalalgorithmsgroup/dfols>_ and unpack as follows:
.. code-block:: bash
$ git clone https://github.com/numericalalgorithmsgroup/dfols
$ cd dfols
DFO-LS is written in pure Python and requires no compilation. It can be installed using:
.. code-block:: bash
$ [sudo] pip install .
If you do not have root privileges or you want to install DFO-LS for your private use, you can use:
.. code-block:: bash
$ pip install --user .
instead.
To upgrade DFO-LS to the latest version, navigate to the top-level directory (i.e. the one containing :code:pyproject.toml) and rerun the installation using :code:pip, as above:
.. code-block:: bash
$ git pull
$ [sudo] pip install . # with admin privileges
Testing
If you installed DFO-LS manually, you can test your installation using the pytest package:
.. code-block:: bash
$ pip install pytest
$ python -m pytest --pyargs dfols
Alternatively, the HTML documentation provides some simple examples of how to run DFO-LS.
Examples
Examples of how to run DFO-LS are given in the documentation <https://numericalalgorithmsgroup.github.io/dfols/>, and the examples <https://github.com/numericalalgorithmsgroup/dfols/tree/master/examples> directory in Github.
Uninstallation
If DFO-LS was installed using pip you can uninstall as follows:
.. code-block:: bash
$ [sudo] pip uninstall DFO-LS
If DFO-LS was installed manually you have to remove the installed files by hand (located in your python site-packages directory).
Bugs
Please report any bugs using GitHub's issue tracker <https://github.com/numericalalgorithmsgroup/dfols/issues>_.
License
This algorithm is released under the GNU GPL license. Please contact NAG <http://www.nag.com/content/worldwide-contact-information>_ for alternative licensing.