עקוב אחר
Gabor Csanyi
Gabor Csanyi
Professor of Molecular Modelling, Engineering Laboratory, University of Cambridge
כתובת אימייל מאומתת בדומיין cam.ac.uk
כותרת
צוטט על ידי
צוטט על ידי
שנה
Gaussian approximation potentials: The accuracy of quantum mechanics, without the electrons
AP Bartók, MC Payne, R Kondor, G Csányi
Physical review letters 104 (13), 136403, 2010
24852010
On representing chemical environments
AP Bartók, R Kondor, G Csányi
Physical Review B 87 (18), 184115, 2013
21922013
Reinforcement of single-walled carbon nanotube bundles by intertube bridging
A Kis, G Csanyi, JP Salvetat, TN Lee, E Couteau, AJ Kulik, W Benoit, ...
Nature materials 3 (3), 153-157, 2004
7472004
Comparing molecules and solids across structural and alchemical space
S De, AP Bartók, G Csányi, M Ceriotti
Physical Chemistry Chemical Physics 18 (20), 13754-13769, 2016
6832016
Machine learning unifies the modeling of materials and molecules
AP Bartók, S De, C Poelking, N Bernstein, JR Kermode, G Csányi, ...
Science advances 3 (12), e1701816, 2017
6472017
Edge-functionalized and substitutionally doped graphene nanoribbons: Electronic and spin properties
F Cervantes-Sodi, G Csányi, S Piscanec, AC Ferrari
Physical Review B 77 (16), 165427, 2008
6192008
Performance and cost assessment of machine learning interatomic potentials
Y Zuo, C Chen, X Li, Z Deng, Y Chen, J Behler, G Csányi, AV Shapeev, ...
The Journal of Physical Chemistry A 124 (4), 731-745, 2020
5872020
G aussian approximation potentials: A brief tutorial introduction
AP Bartók, G Csányi
International Journal of Quantum Chemistry 115 (16), 1051-1057, 2015
5872015
Machine learning based interatomic potential for amorphous carbon
VL Deringer, G Csányi
Physical Review B 95 (9), 094203, 2017
5842017
Gaussian process regression for materials and molecules
VL Deringer, AP Bartók, N Bernstein, DM Wilkins, M Ceriotti, G Csányi
Chemical Reviews 121 (16), 10073-10141, 2021
5672021
Machine learning interatomic potentials as emerging tools for materials science
VL Deringer, MA Caro, G Csányi
Advanced Materials 31 (46), 1902765, 2019
5562019
Surface diffusion: the low activation energy path for nanotube growth
S Hofmann, G Csanyi, AC Ferrari, MC Payne, J Robertson
Physical review letters 95 (3), 036101, 2005
5482005
Machine learning a general-purpose interatomic potential for silicon
AP Bartók, J Kermode, N Bernstein, G Csányi
Physical Review X 8 (4), 041048, 2018
5352018
Modeling molecular interactions in water: From pairwise to many-body potential energy functions
GA Cisneros, KT Wikfeldt, L Ojamäe, J Lu, Y Xu, H Torabifard, AP Bartók, ...
Chemical reviews 116 (13), 7501-7528, 2016
4072016
Physics-inspired structural representations for molecules and materials
F Musil, A Grisafi, AP Bartók, C Ortner, G Csányi, M Ceriotti
Chemical Reviews 121 (16), 9759-9815, 2021
3582021
“Learn on the fly”: A hybrid classical and quantum-mechanical molecular dynamics simulation
G Csányi, T Albaret, MC Payne, A De Vita
Physical review letters 93 (17), 175503, 2004
3542004
The role of the interlayer state in the electronic structure of superconducting graphite intercalated compounds
G Csányi, PB Littlewood, AH Nevidomskyy, CJ Pickard, BD Simons
Nature Physics 1 (1), 42-45, 2005
3432005
Accuracy and transferability of Gaussian approximation potential models for tungsten
WJ Szlachta, AP Bartók, G Csányi
Physical Review B 90 (10), 104108, 2014
3012014
Chemically active substitutional nitrogen impurity in carbon nanotubes
AH Nevidomskyy, G Csányi, MC Payne
Physical review letters 91 (10), 105502, 2003
2962003
Achieving DFT accuracy with a machine-learning interatomic potential: Thermomechanics and defects in bcc ferromagnetic iron
D Dragoni, TD Daff, G Csányi, N Marzari
Physical Review Materials 2 (1), 013808, 2018
2642018
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מאמרים 1–20