multipers : Multiparameter Persistence for Machine Learning
Scikit-style PyTorch-autodiff multiparameter persistent homology python library.
This library aims to provide easy to use and performant strategies for applied multiparameter topology.
Meant to be integrated in the Gudhi library.
Compiled packages
Source
Version
Downloads
Platforms
Quick start
This library allows computing several representations from "geometrical datasets", e.g., point clouds, images, graphs, that have multiple scales.
We provide some nice pictures in the documentation.
A non-exhaustive list of features can be found in the Features section.
This library is available on pip and conda-forge for (reasonably up to date) Linux, macOS and Windows, via
pip install multipers
or
conda install multipers -c conda-forge
Pre-releases are available via
pip install --pre multipers
These release usually contain small bugfixes or unstable new features.
Windows support is experimental, and some core dependencies are not available on Windows.
We hence recommend Windows user to use WSL.
A documentation and building instructions are available
here.
Features, and linked projects
This library features a bunch of different functions and helpers. See below for a non-exhaustive list.
Filled box refers to implemented or interfaced code.
[Multiparameter Module Approximation, JACT] provides the multiparameter simplicial structure, as well as technics for approximating modules, via interval-decomposable modules. It is also very useful for visualization.
[Stable Vectorization of Multiparameter Persistent Homology using Signed Barcodes as Measures, NeurIPS2023] provides fast representations of multiparameter persistence modules, by using their signed barcodes decompositions encoded into signed measures. Implemented decompositions : Euler surfaces, Hilbert function, rank invariant (i.e. rectangles). It also provides representation technics for Machine Learning, i.e., Sliced Wasserstein kernels, and Vectorizations.
Please cite this library when using it in scientific publications;
you can use the following journal bibtex entry
@article{multipers,
title = {Multipers: {{Multiparameter Persistence}} for {{Machine Learning}}},
shorttitle = {Multipers},
author = {Loiseaux, David and Schreiber, Hannah},
year = {2024},
month = nov,
journal = {Journal of Open Source Software},
volume = {9},
number = {103},
pages = {6773},
issn = {2475-9066},
doi = {10.21105/joss.06773},
langid = {english},
}
Contributions
Feel free to contribute, report a bug on a pipeline, or ask for documentation by opening an issue.
In particular, if you have a nice example or application that is not taken care in the documentation (see the ./docs/notebooks/ folder), please contact me to add it there.
Multiparameter Topological Persistence for Machine Learning
We found that multipers demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago.It has 1 open source maintainer collaborating on the project.
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