In terms of computability, several results have been obtained towards the high-performance parallel computation of topological descriptors, specifically in a shared-memory setup.
Specifically, TORI introduced the first parallel algorithm for data pre-simplification, which paves the way for the interactive multi-scale analysis of large-scale data. Recently, TORI contributed a new algorithm for the high-performance computation of the Morse-Smale segmentation, an advanced analysis capability popular in many fields of science. TORI also contributed a parallel algorithm for the high-performance computation of a topological descriptor called the "Persistence Diagram", which is a central object in Topological Data Analysis. This contribution comes with an extensive performance benchmark which demonstrates clear performance gains over pre-existing approaches. TORI also explored efficient algorithms for the approximation of persistence diagrams with theoretical guarantees.
In terms of collection analysis, TORI contributed several key results.
This includes topology-driven approaches for dimensionality reduction. TORI also developed a complete framework for the statistical analysis of a collection of datasets, based on their representation by an advanced topological descriptor called the "Merge Tree".
Specifically, TORI introduced an efficient metric of acceptable practical stability to compare these objects. This is a foundational result which allowed the development of advanced algorithms for the computation of geodesics, Frechet means or more recently principal geodesic analysis. These tools enable global analysis capabilities, for trend and variability analysis with applications to lossy compression and dimensionality reduction.
In collaboration with domain experts, TORI applied the above contributions to several fields of science, such as quantum chemistry or fluid mechanics, for the description of subtle structural patterns as well as their comparisons in large collections of datasets.
All the algorithms developed by TORI have been integrated within the open-source library "the Topology ToolKit" (TTK,
https://topology-tool-kit.github.io/(öffnet in neuem Fenster)) which is a leading package for Topological Data Analysis. Mini-symposia have been organized at the top visual analysis conference (IEEE VIS) to disseminate these results. Online tutorials have been produced (
https://topology-tool-kit.github.io/examples/(öffnet in neuem Fenster)) to reproduce the data analysis examples provided in TORI's publications.