Machine-learning potentials (MLPs) trained on data from quantum-mechanics based first-principles methods can approach the accuracy of the reference method at a fraction of the computational cost. To facilitate efficient MLP-based molecular dynamics and Monte Carlo simulations, an integration of the MLPs with sampling software is needed. Here, we develop two interfaces that link the atomic energy network (ænet) MLP package with the popular sampling packages TINKER and LAMMPS. The three packages, ænet, TINKER, and LAMMPS, are free and open-source software that enable, in combination, accurate simulations of large and complex systems with low computational cost that scales linearly with the number of atoms. Scaling tests show that the parallel...
Machine learning potentials (MLPs) have become an indispensable tool for large-scale atomistic simul...
Thesis (Master's)--University of Washington, 2021Understanding molecules and molecular interactions ...
Machine learning approaches have the potential to approximate Density Functional Theory (DFT) for at...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
In recent years, machine learned potentials (MLPs) have seen tremendous progress and rapid adoption ...
In this thesis, we extend the scope of atomistic simulations through a combination of machine learni...
We develop a neuroevolution-potential (NEP) framework for generating neural network-based machine-le...
Electronic structure calculations, such as those employing Kohn–Sham density functional theory or ab...
Recent advances in quantum mechanical (QM)-based molecular dynamics (MD) simulations have used machi...
We present the GPU version of DeePMD-kit, which, upon training a deep neural network model using ab ...
Quantum mechanics/molecular mechanics (QM/MM) molecular dynamics (MD) simulations have been develope...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...
Photoelectrochemical (PEC) water splitting cells, used to create hydrogen from solar energy, are cru...
We present our latest advancements of machine-learned potentials (MLPs) based on the neuroevolution ...
Parametric and non-parametric machine learning potentials have emerged recently as a way to improve ...
Machine learning potentials (MLPs) have become an indispensable tool for large-scale atomistic simul...
Thesis (Master's)--University of Washington, 2021Understanding molecules and molecular interactions ...
Machine learning approaches have the potential to approximate Density Functional Theory (DFT) for at...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
In recent years, machine learned potentials (MLPs) have seen tremendous progress and rapid adoption ...
In this thesis, we extend the scope of atomistic simulations through a combination of machine learni...
We develop a neuroevolution-potential (NEP) framework for generating neural network-based machine-le...
Electronic structure calculations, such as those employing Kohn–Sham density functional theory or ab...
Recent advances in quantum mechanical (QM)-based molecular dynamics (MD) simulations have used machi...
We present the GPU version of DeePMD-kit, which, upon training a deep neural network model using ab ...
Quantum mechanics/molecular mechanics (QM/MM) molecular dynamics (MD) simulations have been develope...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...
Photoelectrochemical (PEC) water splitting cells, used to create hydrogen from solar energy, are cru...
We present our latest advancements of machine-learned potentials (MLPs) based on the neuroevolution ...
Parametric and non-parametric machine learning potentials have emerged recently as a way to improve ...
Machine learning potentials (MLPs) have become an indispensable tool for large-scale atomistic simul...
Thesis (Master's)--University of Washington, 2021Understanding molecules and molecular interactions ...
Machine learning approaches have the potential to approximate Density Functional Theory (DFT) for at...