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Berk Onat

Showing results (1-10 of 7) with videos related to

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Journal of Physics. Condensed Matter : an Institute of Physics Journal|December 20, 2013
An optimized interatomic potential for Cu-Ni alloys with the embedded-atom methodBerk Onat, Sondan Durukanoğlu
The Journal of Chemical Physics|October 22, 2020
Sensitivity and dimensionality of atomic environment representations used for machine learning interatomic potentialsBerk Onat, Christoph Ortner, James R Kermode
Nanotechnology|May 7, 2009
Energetics and atomic relaxations of Cu nanowires: the effect of local strain and cross-sectional areaBerk Onat, Mine Konuk, Sondan Durukanoğlu, et al.
The Journal of Physical Chemistry. B|February 8, 2020
Insights into the Emerging Networks of Voids in Simulated Supercooled WaterNarjes Ansari, Berk Onat, Gabriele C Sosso, et al.
The Journal of Chemical Physics|July 17, 2017
Representations in neural network based empirical potentialsEkin D Cubuk, Brad D Malone, Berk Onat, et al.
The Journal of Chemical Physics|July 3, 2024
Integrated workflows and interfaces for data-driven semi-empirical electronic structure calculationsPavel Stishenko, Adam McSloy, Berk Onat, et al.
Scientific Data|September 14, 2023
Shared metadata for data-centric materials scienceLuca M Ghiringhelli, Carsten Baldauf, Tristan Bereau, et al.
Pageof 1

Showing results (1-10 of 7) with videos related to

Sort By:
Pageof 1
Journal of Physics. Condensed Matter : an Institute of Physics Journal|December 20, 2013
An optimized interatomic potential for Cu-Ni alloys with the embedded-atom methodBerk Onat, Sondan Durukanoğlu
The Journal of Chemical Physics|October 22, 2020
Sensitivity and dimensionality of atomic environment representations used for machine learning interatomic potentialsBerk Onat, Christoph Ortner, James R Kermode
Nanotechnology|May 7, 2009
Energetics and atomic relaxations of Cu nanowires: the effect of local strain and cross-sectional areaBerk Onat, Mine Konuk, Sondan Durukanoğlu, et al.
The Journal of Physical Chemistry. B|February 8, 2020
Insights into the Emerging Networks of Voids in Simulated Supercooled WaterNarjes Ansari, Berk Onat, Gabriele C Sosso, et al.
The Journal of Chemical Physics|July 17, 2017
Representations in neural network based empirical potentialsEkin D Cubuk, Brad D Malone, Berk Onat, et al.
The Journal of Chemical Physics|July 3, 2024
Integrated workflows and interfaces for data-driven semi-empirical electronic structure calculationsPavel Stishenko, Adam McSloy, Berk Onat, et al.
Scientific Data|September 14, 2023
Shared metadata for data-centric materials scienceLuca M Ghiringhelli, Carsten Baldauf, Tristan Bereau, et al.
Pageof 1