Data for: Performance of two complementary machine-learned potentials in modelling chemically complex systems

DOI

Data for the publication "Performance of two complementary machine-learned potentials in modelling chemically complex systems", npj. Comp. Mat.

This data set contains

the datasets of structures in cfg and npz formats INCAR file which was used for VASP calculations python script for reading npz format

These are essentially the 2-, 3-, and 4-component configurations (converted from OUTCARs) used to train families of machine-learning potentials.

Data contains both 0K and finite-T structures of Ta-V-Cr-W subsystems, approx. 6000 configurations in total.

The "in-distribution" data has 10 splits onto training/testing parts (in 80%/20% proportion), for the cross-validation tests.

The "out-of-distribution" data is not split, it is used only for testing the accuracy.

Identifier
DOI https://doi.org/10.18419/darus-3516
Metadata Access https://darus.uni-stuttgart.de/oai?verb=GetRecord&metadataPrefix=oai_datacite&identifier=doi:10.18419/darus-3516
Provenance
Creator Gubaev, Konstantin ORCID logo; Zaverkin, Viktor ORCID logo; Srinivasan, Prashanth ORCID logo; Duff, Andrew ORCID logo; Kästner, Johannes ORCID logo; Grabowski, Blazej ORCID logo
Publisher DaRUS
Contributor Gubaev, Konstantin; Blazej Grabowski
Publication Year 2023
Funding Reference DFG KO 993 5080/3-1 ; DFG GR 3716/6-1 ; DFG 358283783 - SFB 1333
Rights CC BY 4.0; info:eu-repo/semantics/openAccess; http://creativecommons.org/licenses/by/4.0
OpenAccess true
Contact Gubaev, Konstantin (Universität Stuttgart); Blazej Grabowski (Universität Stuttgart)
Representation
Resource Type Atomic configurations with energies, forces, and stresses provided by VASP; Dataset
Format application/zip; text/plain; charset=US-ASCII; text/x-python
Size 74070343; 205818; 517; 158106134; 433097; 238
Version 1.0
Discipline Chemistry; Engineering Sciences; Materials Science; Materials Science and Engineering; Natural Sciences; Physics