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Python recommendation toolkit

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Python recommendation tools

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LensKit is a set of Python tools for experimenting with and studying recommender systems. It provides support for training, running, and evaluating recommender algorithms in a flexible fashion suitable for research and education.

LensKit for Python (LKPY) is the successor to the Java-based LensKit project.

[!IMPORTANT] If you use LensKit for Python in published research, please cite:

Michael D. Ekstrand. 2020. LensKit for Python: Next-Generation Software for Recommender Systems Experiments. In Proceedings of the 29th ACM International Conference on Information and Knowledge Management (CIKM '20). DOI:10.1145/3340531.3412778. arXiv:1809.03125 [cs.IR].

[!WARNING] This is the main branch of LensKit, following new development in preparation for the 2024 release. It will be changing frequently and incompatibly. You probably want to use a stable release

Installing

To install the current release with Anaconda (recommended):

conda install -c conda-forge lenskit

Or you can use pip:

pip install lenskit

To use the latest development version, install directly from GitHub:

pip install -U git+https://github.com/lenskit/lkpy

Then see Getting Started

Developing

To contribute to LensKit, clone or fork the repository, get to work, and submit a pull request. We welcome contributions from anyone; if you are looking for a place to get started, see the [issue tracker][].

Our development workflow is documented in the wiki; the wiki also contains other information on developing LensKit. User-facing documentation is at https://lkpy.lenskit.org.

We recommend using an Anaconda environment for developing LensKit. We don't maintain the Conda environment specification directly - instead, we maintain information in pyproject.toml to be able to generate it, so that we define dependencies and versions in one place.

conda-lock can help you set up the environment; the LensKit build tools automate this.

# install bootstrap enviroinment
conda env create -n lkboot -f https://raw.githubusercontent.com/lenskit/lkbuild/main/boot-env.yml
# create the lock file for Python 3.10
conda run -n lkboot --no-capture lkbuild dev-lock -v 3.10
# create the environment
conda env create -n lkpy -f conda-linux-64.lock

This will create a Conda environment called lkpy with the packages required to develop and test LensKit.

Testing Changes

You should always test your changes by running the LensKit test suite:

python -m pytest

If you want to use your changes in a LensKit experiment, you can locally install your modified LensKit into your experiment's environment. We recommend using separate environments for LensKit development and for each experiment; you will need to install the modified LensKit into your experiment's repository:

conda activate my-exp
conda install -c conda-forge flit
cd /path/to/lkpy
flit install --pth-file --deps none

You may need to first uninstall LensKit from your experiment repo; make sure that LensKit's dependencies are all still installed.

Once you have pushed your code to a GitHub branch, you can use a Git repository as a Pip dependency in an environment.yml for your experiment, to keep using the correct modified version of LensKit until your changes make it in to a release.

Resources

Acknowledgements

This material is based upon work supported by the National Science Foundation under Grant No. IIS 17-51278. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the National Science Foundation.

Open Source Agenda is not affiliated with "Lkpy" Project. README Source: lenskit/lkpy
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