CHIMIA (Apr 2024)

Solving Intractable Chemical Problems by Tensor Decomposition

  • Nina Glaser,
  • Markus Reiher

DOI
https://doi.org/10.2533/chimia.2024.215
Journal volume & issue
Vol. 78, no. 4

Abstract

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Many complex chemical problems encoded in terms of physics-based models become computationallyintractable for traditional numerical approaches due to their unfavorable scaling with increasing molecular size. Tensor decomposition techniques can overcome such challenges by decomposing unattainably large numerical representations of chemical problems into smaller, tractable ones. In the first two decades of this century, algorithms based on such tensor factorizations have become state-of-the-art methods in various branches of computational chemistry, ranging from molecular quantum dynamics to electronic structure theory and machine learning. Here, we consider the role that tensor decomposition schemes have played in expanding the scope of computational chemistry. We relate some of the most prominent methods to their common underlying tensor network formalisms, providing a unified perspective on leading tensor-based approaches in chemistry and materials science.

Keywords