Submatrix and GPU-accelerated implementation of density matrix tight-binding

A. Katbashev, R. Schade, M. Laß, M. Müller, S. Grimme, A. Hansen, T. Kühne, The Journal of Chemical Physics 163 (2025).

Download
No fulltext has been uploaded.
Journal Article | Published | English
Author
Katbashev, Abylay; Schade, RobertLibreCat ; Laß, MichaelLibreCat ; Müller, Marcel; Grimme, Stefan; Hansen, Andreas; Kühne, ThomasLibreCat
Abstract
Effective single-particle theories, such as Hartree–Fock, density functional theory, and tight-binding, are limited by the computational cost of the self-consistent field (SCF) procedure, which typically scales cubically with the system size. This makes large-scale applications impractical without specialized algorithms and hardware. Here, we present the submatrix and graphical processing unit (GPU)-accelerated software implementation of the PTB tight-binding potential, realized in the open-source ptb codebase [M. Mueller, A. Katbashev, and S. Ehlert (2025). “grimme-lab/ptb: v3.8.1,” Zenodo. https://zenodo.org/records/17015872]. We first benchmark a traditional diagonalization-based SCF solver against density-matrix-based purification approaches, systematically varying both system size and computer hardware. Our findings show that the usage of GPUs permits shifting the boundaries to much larger systems than previously thought feasible, achieving an overall 10–15-fold performance speedup. Second, we introduce the implementation of a decomposition-type submatrix method, specifically designed for efficient operation on mid- to large-sized systems, to address the computational overhead associated with full-system diagonalization. We demonstrate that, from a certain dimension (≈104 basis functions) on, our submatrix method reduces the overall computational cost while maintaining acceptable numerical accuracy. Our study demonstrates the significance of the interplay between modern hardware, algorithmic considerations, and novel tight-binding methods, paving the way for further development in this direction.
Publishing Year
Journal Title
The Journal of Chemical Physics
Volume
163
Issue
13
Article Number
132501
LibreCat-ID

Cite this

Katbashev A, Schade R, Laß M, et al. Submatrix and GPU-accelerated implementation of density matrix tight-binding. The Journal of Chemical Physics. 2025;163(13). doi:10.1063/5.0271379
Katbashev, A., Schade, R., Laß, M., Müller, M., Grimme, S., Hansen, A., & Kühne, T. (2025). Submatrix and GPU-accelerated implementation of density matrix tight-binding. The Journal of Chemical Physics, 163(13), Article 132501. https://doi.org/10.1063/5.0271379
@article{Katbashev_Schade_Laß_Müller_Grimme_Hansen_Kühne_2025, title={Submatrix and GPU-accelerated implementation of density matrix tight-binding}, volume={163}, DOI={10.1063/5.0271379}, number={13132501}, journal={The Journal of Chemical Physics}, publisher={AIP Publishing}, author={Katbashev, Abylay and Schade, Robert and Laß, Michael and Müller, Marcel and Grimme, Stefan and Hansen, Andreas and Kühne, Thomas}, year={2025} }
Katbashev, Abylay, Robert Schade, Michael Laß, Marcel Müller, Stefan Grimme, Andreas Hansen, and Thomas Kühne. “Submatrix and GPU-Accelerated Implementation of Density Matrix Tight-Binding.” The Journal of Chemical Physics 163, no. 13 (2025). https://doi.org/10.1063/5.0271379.
A. Katbashev et al., “Submatrix and GPU-accelerated implementation of density matrix tight-binding,” The Journal of Chemical Physics, vol. 163, no. 13, Art. no. 132501, 2025, doi: 10.1063/5.0271379.
Katbashev, Abylay, et al. “Submatrix and GPU-Accelerated Implementation of Density Matrix Tight-Binding.” The Journal of Chemical Physics, vol. 163, no. 13, 132501, AIP Publishing, 2025, doi:10.1063/5.0271379.

Export

Marked Publications

Open Data LibreCat

Search this title in

Google Scholar