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Description
This package provides a Python implementation of the ElPiGraph algorithm with cpu and gpu support. A self-contained description of the algorithm is available here or in the paper
It replicates the R implementation, coded by Luca Albergante and should return exactly the same results. Please open an issue if you do notice different output. Differences between the two versions are detailed in differences.md. This package extends initial work by Louis Faure and Alexis Martin.
A native MATLAB implementation of the algorithm (coded by Andrei Zinovyev and Evgeny Mirkes) is also available
Citation
When using this package, please cite our paper:
Albergante, L. et al . Robust and Scalable Learning of Complex Intrinsic Dataset Geometry via ElPiGraph (2020)
Requirements
This code was tested with Python 3.7.1, and requires the following packages:
- pandas
- scipy
- numba
- numpy
- python-igraph
- scikit-learn
In addition, to enable gpu support:
The requirements.txt file provides the versions this package has been tested with
Installation
git clone https://github.com/j-bac/elpigraph-python.git
cd elpigraph
pip install .
or
pip install git+https://github.com/j-bac/elpigraph-python.git
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