We present our latest advancements of machine-learned potentials (MLPs) based on the neuroevolution potential (NEP) framework introduced in [Fan et al., Phys. Rev. B 104, 104309 (2021)] and their implementation in the open-source package GPUMD. We increase the accuracy of NEP models both by improving the radial functions in the atomic-environment descriptor using a linear combination of Chebyshev basis functions and by extending the angular descriptor with some four-body and five-body contributions as in the atomic cluster expansion approach. We also detail our efficient implementation of the NEP approach in graphics processing units as well as our workflow for the construction of NEP models, and we demonstrate their application in large-sc...
We present the GPU version of DeePMD-kit, which, upon training a deep neural network model using ab ...
Solving electronic structure problems represents a promising field of application for quantum comput...
Machine learning approaches have the potential to approximate Density Functional Theory (DFT) for at...
We present our latest advancements of machine-learned potentials (MLPs) based on the neuroevolution ...
We develop a neuroevolution-potential (NEP) framework for generating neural network-based machine-le...
Major changes compared to GPUMD-v2.6: Improved the accuracy of the NEP potential for multi-componen...
Advances in machine learning (ML) techniques have enabled the development of interatomic potentials ...
Machine-learning potentials (MLPs) trained on data from quantum-mechanics based first-principles met...
In recent years, machine learned potentials (MLPs) have seen tremendous progress and rapid adoption ...
Electronic structure calculations, such as those employing Kohn–Sham density functional theory or ab...
Removed Removed a few empirical potentials (Vashishta, SW, REBO-LJ, and Buckingham-Coulomb) and remo...
Machine learning (ML) approaches enable large-scale atomistic simulations with near-quantum-mechanic...
Machine learning potentials (MLPs) have become an indispensable tool for large-scale atomistic simul...
Molecular dynamics simulations have emerged as a potent tool for investigating the physical properti...
Machine-learned interatomic potentials are fast becoming an indispensable tool in computational mate...
We present the GPU version of DeePMD-kit, which, upon training a deep neural network model using ab ...
Solving electronic structure problems represents a promising field of application for quantum comput...
Machine learning approaches have the potential to approximate Density Functional Theory (DFT) for at...
We present our latest advancements of machine-learned potentials (MLPs) based on the neuroevolution ...
We develop a neuroevolution-potential (NEP) framework for generating neural network-based machine-le...
Major changes compared to GPUMD-v2.6: Improved the accuracy of the NEP potential for multi-componen...
Advances in machine learning (ML) techniques have enabled the development of interatomic potentials ...
Machine-learning potentials (MLPs) trained on data from quantum-mechanics based first-principles met...
In recent years, machine learned potentials (MLPs) have seen tremendous progress and rapid adoption ...
Electronic structure calculations, such as those employing Kohn–Sham density functional theory or ab...
Removed Removed a few empirical potentials (Vashishta, SW, REBO-LJ, and Buckingham-Coulomb) and remo...
Machine learning (ML) approaches enable large-scale atomistic simulations with near-quantum-mechanic...
Machine learning potentials (MLPs) have become an indispensable tool for large-scale atomistic simul...
Molecular dynamics simulations have emerged as a potent tool for investigating the physical properti...
Machine-learned interatomic potentials are fast becoming an indispensable tool in computational mate...
We present the GPU version of DeePMD-kit, which, upon training a deep neural network model using ab ...
Solving electronic structure problems represents a promising field of application for quantum comput...
Machine learning approaches have the potential to approximate Density Functional Theory (DFT) for at...