A curated list of Topological Data Analysis (TDA) tools and resources.
If you know of any other tools or resources, read Contribution Guidelines and feel free to fork/PR or open a new issue.
- Chunk
- Mapper (brief summary)
- PHrow
- Twist
- Vineyards
- Zigzag persistent homology
- Zigzag Persistent Cohomology
-
A Short Course in Computational Geometry and Topology - Edelsbrunner, Herbert.
-
Computational Homology (Applied Mathematical Sciences) - Kaczynski, Mischaikow, Mrozek.
-
Computational Topology: An Introduction - Herbert Edelsbrunner, John L Harer.
-
Elementary Applied Topology - Robert Ghrist.
-
Fundamentals of Brain Network Analysis - Fundamentals of Brain Network Analysis.
-
Geometric and Topological Inference - Boissonnat, Chazal, Yvinec.
-
Persistence Theory: From Quiver Representations to Data Analysis - Steve Y Oudot.
-
Topological and Statistical Methods for Complex Data: Tackling Large-Scale, High-Dimensional, and Multivariate Data Spaces - Bennett, Janine, Vivodtzev, Fabien, Pascucci, Valerio.
-
Topological Based Machine Learning Methods - Alex Georges.
-
Topological Data Analysis for Genomics and Evolution: Topology in Biology - Raul Rabadan, Andrew J Blumberg.
-
Topological Data Analysis for Scientific Visualization - Tierny, Julien.
-
Topology for Computing - AFRA J ZOMORODIAN.
-
Topological Methods in Data Analysis and Visualization: Theory, Algorithms, and Applications
-
Topological Methods in Data Analysis and Visualization: Theory, Algorithms, and Applications II
-
Topological Methods in Data Analysis and Visualization: Theory, Algorithms, and Applications III
-
Topological Methods in Data Analysis and Visualization: Theory, Algorithms, and Applications IV
-
Topology-based Methods in Visualization - Hauser, Helwig, Hagen, Hans, Theisel, Holger (Eds.)
-
A Fuzzy Clustering Algorithm for the Mode Seeking Framework - Bonis, Oudot.
-
A topological data analysis based classification method for multiple measurements - Riihimäki, Chachólski, Theorell, Hillert, Ramanujam.
-
A User's Guide to Topological Data Analysis - Elizabeth Munch.
-
An introduction to Topological Data Analysis: fundamental and practical aspects for data scientists - Chazal, Michel.
-
Barcodes: The Persistent Topology of Data - Robert Ghrist.
-
Computing Persistent Homology (Discrete and Computational Geometry) - Zomorodian, Carlsson.
-
Deep Learning with Topological Signatures - Hofer, Kwitt, Niethammer, Uhl.
-
Designing machine learning workflows with an application to topological data analysis - Cawi, La Rosa, Nehorai.
-
Introduction to the R package TDA - Fasy, Jisu Kim, Lecci, Clément Maria, Millman, Rouvreau.
-
Homological Algebra and Data - Robert Ghrist.
-
Large Scale computation of Means and Clusters for Persistence Diagrams using Optimal Transport - Lacombe, Cuturi, OUDOT.
-
Sampling real algebraic varieties for topological data analysis - Dufresne, Edwards, Harrington, Hauenstein.
-
Stratifying Multiparmeter Persistent Homology - Harriington, Otter, Schenck, Tillmann.
-
Text Mining using Topological Data Analysis. An introduction - Carrazana, Chong.
-
Topology and Data - Gunnar Carlsson.
-
Topological Data Analysis - Larry Wasserman.
-
Topological Data Analysis and Its Application to Time-Series Data Analysis - Umeda, Kaneko, Kikuchi.
-
Topological Data Analysis and Machine Learning Theory - Carlsson , Jardine, Feichtner-Kozlov, Morozov.
-
Topological Data Analysis for Object Data - Patrangenaru, Bubenik, Paige, Osborne .
-
Two-Tier Mapper: a user-independent clustering method for global gene expression analysis based on topology - Jeitziner, Carrière, Rougemont, Oudot, Hess, Brisken.
-
Why Topology for Machine Learning and Knowledge Extraction? - Massimo Ferri.
-
Computational Topology and Data Analysis - Course is not active, but the course notes are useful.
-
Topological Data Analysis - Course is not active, but the course notes are useful.
-
Topics in topology: Scientific and engineering applications of algebraic topology - 2013 lecture series.
-
Ctl - (C++11 library) A set of generic tools for Building Neighborhood Graphs and Cellular Complexes, Computing (persistent) homology over finite fields, Parallel algorithms for homology. an be used with c++, Python, MATLAB and R.
-
Knotter - Implementation of Mapper algorithm for TDA.
-
RIVET - For the visualization and analysis of two-parameter persistent homology with Python API.
-
TdaToolbox - Some tools that may be applied to data science in general.
-
TTk - Topological data analysis in scientific visualization. Can be used with C++, python.
-
Dionysus - Computing persistent (co)homology, Implementation of the Persistent (co)homology computation, Vineyards, Zigzag persistent homology algorithms.
-
GUDHI - Geometry Understanding in Higher Dimensional with a Python interface.
-
PHAT - Persistent Homology Algorithm Toolbox.
- TDA - Some methods are provided for gridded data (images).
- JavaPlex - The JavaPlex library implements persistent homology and related techniques. It designed for ease of use from Matlab and java-based systems.
- Eirene.jl - For homological persistence.
- TDA.jl - This package provides Persistence Diagram & Barcode, Nerve, Mapper tools for topological data analysis.
- Clique Top - Doing topological analysis of symmetric matrices.
-
GDA Public - Several fundamental tools by Geometric Data Analytics Inc. geomdata
-
KeplerMapper - TDA Mapper algorithm for visualization of high-dimensional data. it can make use of Scikit-Learn API compatible cluster and scaling algorithms.
-
Kohonen - Kohonen-style vector quantizers: Self-Organizing Map (SOM), Neural Gas, and Growing Neural Gas.
-
Mapper Implementation - Topological Data Analysis for high dimensional dataset exploration.
-
MoguTDA - Numerical calculation of algebraic topology in an application to topological data analysis: implicial complex, and the estimation of homology and Betti numbers.
-
Python Mapper - Mapper algorithm implementation + graphical user interface.
-
Qsv - Data structure visualizer.
-
Scikit-TDA - For non-topologists.
-
Giotto-TDA - A
scikit-learn
- compatible library for end-to-end topological machine learning including Mapper, persistent homology, vectorization methods for persistence diagrams, and preprocessing components for time series, graphs, images, and point clouds (paper). -
ScTDA - It includes tools for the preprocessing, analysis, and exploration of single-cell RNA-seq data based on topological representations.
-
TMAP - Population-scale microbiome data analysis.
-
TDA - Tools for the statistical analysis of persistent homology and for density clustering.
-
TDAmapper - An R package for using discrete Morse theory to analyze a data set using the Mapper algorithm described in G. Singh, F. Memoli, G. Carlsson (2007).
-
TDAstats - Computing persistent homology.
-
Spark Mapper - Estimating a lower dimensional simplicial complex from a dataset.
-
Spark TDA - Scalable topological data analysis package.
-
An algebraic topological method for multimodal brain networks comparisons
-
Complex Brain Network Analysis and Its Applications to Brain Disorders: A Survey
-
Applied Topological Data Analysis to Deep Learning? Hands-on Arrhythmia Classification!
-
From Topological Data Analysis to Deep Learning: No Pain No Gain
-
On Characterizing the Capacity of Neural Networks Using Algebraic Topology
-
Using Topological Data Analysis to Understand the Behavior of Convolutional Neural Networks