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Turab Lookman

Showing results (11-20 of 47) with videos related to

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Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|August 25, 2004
Viscoelastic properties of dynamically asymmetric binary fluids under shear flowVinay Dwivedi, Rajeev Ahluwalia, Turab Lookman, et al.
Physical Review Letters|April 7, 2010
Thermally induced local failures in quasi-one-dimensional systems: collapse in carbon nanotubes, necking in nanowires, and opening of bubbles in DNACristiano Nisoli, Douglas Abraham, Turab Lookman, et al.
Nature Communications|April 28, 2018
Experimental search for high-temperature ferroelectric perovskites guided by two-step machine learningPrasanna V Balachandran, Benjamin Kowalski, Alp Sehirlioglu, et al.
Acta Crystallographica Section B, Structural Science, Crystal Engineering and Materials|October 6, 2017
Predicting displacements of octahedral cations in ferroelectric perovskites using machine learningPrasanna V Balachandran, Toby Shearman, James Theiler, et al.
Journal of Chemical Information and Modeling|November 8, 2019
Machine-Learning-Based Predictive Modeling of Glass Transition Temperatures: A Case of Polyhydroxyalkanoate Homopolymers and CopolymersGhanshyam Pilania, Carl N Iverson, Turab Lookman, et al.
Physical Review Letters|October 10, 2006
Hydrodynamic self-consistent field theory for inhomogeneous polymer meltsDavid M Hall, Turab Lookman, Glenn H Fredrickson, et al.
Nature Communications|February 18, 2017
Learning from data to design functional materials without inversion symmetryPrasanna V Balachandran, Joshua Young, Turab Lookman, et al.
Scientific Reports|April 27, 2016
Optimisation of GaN LEDs and the reduction of efficiency droop using active machine learningBertrand Rouet-Leduc, Kipton Barros, Turab Lookman, et al.
Scientific Reports|August 26, 2015
Materials Prediction via Classification LearningPrasanna V Balachandran, James Theiler, James M Rondinelli, et al.
Nanoscale|January 4, 2014
Direct observation of hierarchical nucleation of martensite and size-dependent superelasticity in shape memory alloysLifeng Liu, Xiangdong Ding, Ju Li, et al.
Pageof 5

Showing results (11-20 of 47) with videos related to

Sort By:
Pageof 5
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|August 25, 2004
Viscoelastic properties of dynamically asymmetric binary fluids under shear flowVinay Dwivedi, Rajeev Ahluwalia, Turab Lookman, et al.
Physical Review Letters|April 7, 2010
Thermally induced local failures in quasi-one-dimensional systems: collapse in carbon nanotubes, necking in nanowires, and opening of bubbles in DNACristiano Nisoli, Douglas Abraham, Turab Lookman, et al.
Nature Communications|April 28, 2018
Experimental search for high-temperature ferroelectric perovskites guided by two-step machine learningPrasanna V Balachandran, Benjamin Kowalski, Alp Sehirlioglu, et al.
Acta Crystallographica Section B, Structural Science, Crystal Engineering and Materials|October 6, 2017
Predicting displacements of octahedral cations in ferroelectric perovskites using machine learningPrasanna V Balachandran, Toby Shearman, James Theiler, et al.
Journal of Chemical Information and Modeling|November 8, 2019
Machine-Learning-Based Predictive Modeling of Glass Transition Temperatures: A Case of Polyhydroxyalkanoate Homopolymers and CopolymersGhanshyam Pilania, Carl N Iverson, Turab Lookman, et al.
Physical Review Letters|October 10, 2006
Hydrodynamic self-consistent field theory for inhomogeneous polymer meltsDavid M Hall, Turab Lookman, Glenn H Fredrickson, et al.
Nature Communications|February 18, 2017
Learning from data to design functional materials without inversion symmetryPrasanna V Balachandran, Joshua Young, Turab Lookman, et al.
Scientific Reports|April 27, 2016
Optimisation of GaN LEDs and the reduction of efficiency droop using active machine learningBertrand Rouet-Leduc, Kipton Barros, Turab Lookman, et al.
Scientific Reports|August 26, 2015
Materials Prediction via Classification LearningPrasanna V Balachandran, James Theiler, James M Rondinelli, et al.
Nanoscale|January 4, 2014
Direct observation of hierarchical nucleation of martensite and size-dependent superelasticity in shape memory alloysLifeng Liu, Xiangdong Ding, Ju Li, et al.
Pageof 5