Dataset

mlearn_Ge_train




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Name mlearn_Ge_train
Extended ID mlearn_Ge_train__Zuo-Chen-Li-Deng-Chen-Behler-Csanyi-Shapeev-Thompson-Wood-Ong__DS_ot3m0rxle8fs_0
Description A comprehensive DFT data set was generated for six elements - Li, Mo, Ni, Cu, Si, and Ge. These elements were chosen to span a variety of chemistries (main group metal, transition metal, and semiconductor), crystal structures (bcc, fcc, and diamond) and bonding types (metallic and covalent). This dataset comprises only the Ge configurations
Authors Yunxing Zuo
Chi Chen
Xiangguo Li
Zhi Deng
Yiming Chen
Jörg Behler
Gábor Csányi
Alexander V. Shapeev
Aidan P. Thompson
Mitchell A. Wood
Shyue Ping Ong
DOI 10.60732/4552d3fd
https://commons.datacite.org/doi.org/10.60732/4552d3fd
https://doi.datacite.org/dois/10.60732%2F4552d3fd
https://doi.org/10.60732/4552d3fd

Cite as: Zuo, Y., Chen, C., Li, X., Deng, Z., Chen, Y., Behler, J., Csányi, G., Shapeev, A. V., Thompson, A. P., Wood, M. A., and Ong, S. P. "mlearn Ge train." ColabFit, 2023. https://doi.org/10.60732/4552d3fd.
For other citation formats, see the DataCite Fabrica page for this dataset.
Calculated Property Types atomic_forces
cauchy_stress
energy
Elements
Ge (100.0%)
Number of Configurations 228
Number of Atoms 14,072
Publication Link https://doi.org/10.1021/acs.jpca.9b08723
Data Source Link https://github.com/materialsvirtuallab/mlearn/tree/master/data
Configuration Sets by Name
Configuration Sets by ID
ColabFit ID DS_ot3m0rxle8fs_0
Downloads 10
Files colabfitspec.json

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