A high-performance topological machine learning toolbox in Python
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Updated
Jun 18, 2024 - Python
A high-performance topological machine learning toolbox in Python
Ripser: efficient computation of Vietoris–Rips persistence barcodes
A standalone version of Urban Pulse
High performance implementation of Vietoris-Rips persistence.
Python code to directly compute persistence images (PIs) from data (time-series or images) using deep learning.
Julia library providing functionality for modeling Simplicial Complexes and Cochains over them. Its main feature is a clean interface to calculate Betti numbers and Hodge decompositions.
Computing Betti numbers from simplicial complexes.
Matlab and Python code to compute perturbed topological signatures (PTS), an efficient topological representation that lies on the Grassmann manifold.
Recon - A fast algorithm to compute Reeb graphs
Topological Data Analysis using Contour Trees
Python bindings and API for the flagser C++ library (https://github.com/luetge/flagser).
Computation of persistence Steenrod barcodes
Simple Ripser wrapper in Julia
Python implementation of polygon-inclusion algorithm based on the winding number
Maurer-Cartan-Lie frame connections ∇ Grassmann.jl TensorField derivations
A Testing Framework for Decision-Optimization Model Learning Algorithms
Computes a Witness Complex for a given set of landmarks and witnesses.
A fork to optimize interval matching in the bootstrap case; also extends to data with arbitrary (precomputed) distance metrics.
This project uses topological methods to track evasion paths in mobile sensor networks.
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