Topological Data Analysis
Topological Data Analysis (TDA) is a rapidly growing field that applies concepts from topology—the mathematical study of shape and space—to uncover the underlying structure in complex datasets. By focusing on features like connected components, loops, and voids, TDA provides robust, multi-scale insights that are often resilient to noise and deformations in data. In our group, we are considering a reformulation of TDA as a fermionic many-body problem. In this perspective, the combinatorial structure of data (e.g., simplicial complexes) is mapped to the Hilbert space of fermionic states. This connection allows tools from many-body quantum physics like
tensor networks to be applied to problems in data analysis, opening up new computational strategies and theoretical insights.