Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Zhang, Wei
Mazzarello, Riccardo
and
Ma, Evan
2019.
Phase-change materials in electronics and photonics.
MRS Bulletin,
Vol. 44,
Issue. 09,
p.
686.
Zhang, Wei
and
Ma, Evan
2020.
Unveiling the structural origin to control resistance drift in phase-change memory materials.
Materials Today,
Vol. 41,
Issue. ,
p.
156.
Selvaratnam, Balaranjan
Koodali, Ranjit T.
and
Miró, Pere
2020.
Prediction of optoelectronic properties of Cu2O using neural network potential.
Physical Chemistry Chemical Physics,
Vol. 22,
Issue. 26,
p.
14910.
Dral, Pavlo O.
2020.
Quantum Chemistry in the Age of Machine Learning.
The Journal of Physical Chemistry Letters,
Vol. 11,
Issue. 6,
p.
2336.
Dral, Pavlo O.
Owens, Alec
Dral, Alexey
and
Csányi, Gábor
2020.
Hierarchical machine learning of potential energy surfaces.
The Journal of Chemical Physics,
Vol. 152,
Issue. 20,
Kersting, Benedikt
Sarwat, Syed Ghazi
Le Gallo, Manuel
Brew, Kevin
Walfort, Sebastian
Saulnier, Nicole
Salinga, Martin
and
Sebastian, Abu
2021.
Measurement of Onset of Structural Relaxation in Melt‐Quenched Phase Change Materials.
Advanced Functional Materials,
Vol. 31,
Issue. 37,
Deringer, Volker L.
Bartók, Albert P.
Bernstein, Noam
Wilkins, David M.
Ceriotti, Michele
and
Csányi, Gábor
2021.
Gaussian Process Regression for Materials and Molecules.
Chemical Reviews,
Vol. 121,
Issue. 16,
p.
10073.
Blow, Katarina E.
Quigley, David
and
Sosso, Gabriele C.
2021.
The seven deadly sins: When computing crystal nucleation rates, the devil is
in the details.
The Journal of Chemical Physics,
Vol. 155,
Issue. 4,
Yu, Wei
Ji, Chaoyue
Wan, Xuhao
Zhang, Zhaofu
Robertson, John
Liu, Sheng
and
Guo, Yuzheng
2021.
Machine‐learning‐based interatomic potentials for advanced manufacturing.
International Journal of Mechanical System Dynamics,
Vol. 1,
Issue. 2,
p.
159.
Zhou, Yu-Xing
Zhang, Han-Yi
Deringer, Volker L.
and
Zhang, Wei
2021.
Structure and Dynamics of Supercooled Liquid Ge2Sb2Te5 from Machine‐Learning‐Driven Simulations.
physica status solidi (RRL) – Rapid Research Letters,
Vol. 15,
Issue. 3,
Wang, Xudong
Wu, Yue
Zhou, Yuxing
Deringer, Volker L.
and
Zhang, Wei
2021.
Bonding nature and optical contrast of TiTe2/Sb2Te3 phase-change heterostructure.
Materials Science in Semiconductor Processing,
Vol. 135,
Issue. ,
p.
106080.
Fiedler, L.
Shah, K.
Bussmann, M.
and
Cangi, A.
2022.
Deep dive into machine learning density functional theory for materials science and chemistry.
Physical Review Materials,
Vol. 6,
Issue. 4,
Xu, Meng
Xu, Ming
and
Miao, Xiangshui
2022.
Deep machine learning unravels the structural origin of mid‐gap states in chalcogenide glass for high‐density memory integration.
InfoMat,
Vol. 4,
Issue. 6,
Li, Man
Dai, Lingyun
and
Hu, Yongjie
2022.
Machine Learning for Harnessing Thermal Energy: From Materials Discovery to System Optimization.
ACS Energy Letters,
Vol. 7,
Issue. 10,
p.
3204.
Espinosa, Ricardo
Ponce, Hiram
and
Ortiz-Medina, Josue
2022.
A 3D orthogonal vision-based band-gap prediction using deep learning: A proof of concept.
Computational Materials Science,
Vol. 202,
Issue. ,
p.
110967.
Wang, Danian
Zhao, Lin
Yu, Siyu
Shen, Xueyang
Wang, Jiang-Jing
Hu, Chaoquan
Zhou, Wen
and
Zhang, Wei
2023.
Non-volatile tunable optics by design: From chalcogenide phase-change materials to device structures.
Materials Today,
Vol. 68,
Issue. ,
p.
334.
Fiedler, Lenz
Shah, Karan
and
Cangi, Attila
2023.
Machine Learning in Molecular Sciences.
Vol. 36,
Issue. ,
p.
113.
Khan, Asad
Tayara, Hilal
and
Chong, Kil To
2023.
Prediction of organic material band gaps using graph attention network.
Computational Materials Science,
Vol. 220,
Issue. ,
p.
112063.
Fasano, Matteo
2023.
MODELLING HEAT AND MASS TRANSFER PHENOMENA IN NANOSTRUCTURED MATERIALS FOR THERMAL APPLICATIONS
.
p.
14.
Hu, Yiwen
and
Buehler, Markus J.
2023.
Deep language models for interpretative and predictive materials science.
APL Machine Learning,
Vol. 1,
Issue. 1,