Towards High Performance Relativistic Electronic Structure Modelling:
The EXP-T Program Package
- URL: http://arxiv.org/abs/2004.03682v1
- Date: Tue, 7 Apr 2020 20:08:30 GMT
- Title: Towards High Performance Relativistic Electronic Structure Modelling:
The EXP-T Program Package
- Authors: Alexander V. Oleynichenko, Andr\'ei Zaitsevskii, Ephraim Eliav
- Abstract summary: We present a new implementation of the FS-RCC method designed for modern parallel computers.
The performance and scaling features of the implementation are analyzed.
The software developed allows to achieve a completely new level of accuracy for prediction of properties of atoms and molecules containing heavy and superheavy nuclei.
- Score: 68.8204255655161
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Modern challenges arising in the fields of theoretical and experimental
physics require new powerful tools for high-precision electronic structure
modelling; one of the most perspective tools is the relativistic Fock space
coupled cluster method (FS-RCC). Here we present a new extensible
implementation of the FS-RCC method designed for modern parallel computers. The
underlying theoretical model, algorithms and data structures are discussed. The
performance and scaling features of the implementation are analyzed. The
software developed allows to achieve a completely new level of accuracy for
prediction of properties of atoms and molecules containing heavy and superheavy
nuclei.
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