title = {Development of a Surrogate Machine Learning Model for the Acceleration of Density Functional Calculations with the {{Korringa-Kohn-Rostoker}} Method},
author = {Wasmer, Johannes and Berkels, Benjamin and Rüssmann, Philipp and Blügel, Stefan},
abstract = {Density functional theory (DFT) has become an indispensable tool in materials science. Specialized DFT methods like the Korringa-Kohan Rostoker Green Function (KKR) method are predestined to investigate the technologically relevant effects of crystallographic defects on the electronic and magnetic structure of host materials. This thesis lays the groundwork for answering the question of whether surrogate machine learning (ML) models have the potential to accelerate such DFT calculations since their computational complexity severely limits them to systems sizes of about a thousand atoms in practice. To that end, a versatile suite of software tools that facilitates the generation and analysis of high-throughput computing DFT datasets with the JuKKR DFT codes and the AiiDA workflow engine is presented. We demonstrate its use by generating a database of 8,760 converged KKR DFT calculations of single impurity embeddings into elemental crystals with 60 different chemical elements and varying lattice constants and that preserves the full data provenance of each calculation. Finally, we use the single-impurity database to compare the Coulomb Matrix and the Smooth Overlap of Atomic Positions (SOAP) as structural descriptors of the local atomic environment for materials defects. Their potential use in surrogate ML models is showcased in a simple example of host crystal structure prediction that achieves 93 percent accuracy. Wasmer, Johannes; Blügel, Stefan; Rüssmann, Philipp; Berkels, Benjamin},
title = {Development of a Surrogate Machine Learning Model for the Acceleration of Density Functional Calculations with the {{Korringa-Kohn-Rostoker}} Method},
author = {Wasmer, Johannes and Rüssmann, Philipp and Berkels, Benjamin and Blügel, Stefan},
author = {Wasmer, Johannes and Berkels, Benjamin and Rüssmann, Philipp and Blügel, Stefan},
abstract = {Density functional theory (DFT) has become an indispensable tool in materials science. Specialized DFT methods like the Korringa-Kohan Rostoker Green Function (KKR) method are predestined to investigate the technologically relevant effects of crystallographic defects on the electronic and magnetic structure of host materials. This thesis lays the groundwork for answering the question of whether surrogate machine learning (ML) models have the potential to accelerate such DFT calculations since their computational complexity severely limits them to systems sizes of about a thousand atoms in practice. To that end, a versatile suite of software tools that facilitates the generation and analysis of high-throughput computing DFT datasets with the JuKKR DFT codes and the AiiDA workflow engine is presented. We demonstrate its use by generating a database of 8,760 converged KKR DFT calculations of single impurity embeddings into elemental crystals with 60 different chemical elements and varying lattice constants and that preserves the full data provenance of each calculation. Finally, we use the single-impurity database to compare the Coulomb Matrix and the Smooth Overlap of Atomic Positions (SOAP) as structural descriptors of the local atomic environment for materials defects. Their potential use in surrogate ML models is showcased in a simple example of host crystal structure prediction that achieves 93 percent accuracy. Wasmer, Johannes; Blügel, Stefan; Rüssmann, Philipp; Berkels, Benjamin},
langid = {english},
keywords = {/unread,AiiDA,aiida-kkr,AML,database generation,dataset,descriptors,FZJ,HTC,impurity embedding,JuDFT,juKKR,KKR,ML,ML-Density,ML-DFT,periodic table,PGI,PGI-1,prediction of electron potential,RWTH,SOAP,thesis,transition metals,workflows},
file = {/Users/wasmer/Nextcloud/Zotero/Wasmer et al. - 2021 - Development of a surrogate machine learning model for the acceleration of density functional calcula.pdf;/Users/wasmer/Zotero/storage/N3VY83MP/1020053.html}
keywords = {AiiDA,aiida-kkr,AML,database generation,dataset,descriptors,FZJ,HTC,impurity embedding,JuDFT,juKKR,KKR,ML,ML-Density,ML-DFT,periodic table,PGI,PGI-1,prediction of electron potential,RWTH,SOAP,thesis,transition metals,workflows},
file = {/Users/wasmer/Nextcloud/Zotero/Wasmer et al. - 2021 - Development of a surrogate machine learning model for the acceleration of density functional calcula.pdf;/Users/wasmer/Zotero/storage/NTW3FHQ6/1020053.html}