We use graph convolutional neural networks (GCNNs) to produce fast and accurate predictions of the total energy of solid solution binary alloys. GCNNs allow us to abstract the lattice structure of a solid material as a graph, whereby atoms are modeled as nodes and metallic bonds as edges. This representation naturally incorporates information about the structure of the material, thereby eliminating the need for computationally expensive data pre-processing which would be required with standard neural network (NN) approaches. We train GCNNs on ab-initio density functional theory (DFT) for copper-gold (CuAu) and iron-platinum (FePt) data that has been generated by running the LSMS-3 code, which implements a locally self-consistent multiple sc...
Predicting the stability of crystals is one of the central problems in materials science. Today, den...
We significantly improve the physical models underlying atomistic Monte Carlo (MC) simulations, thro...
The electron charge density distribution of materials is one of the key quantities in computational ...
We use graph convolutional neural networks (GCNNs) to produce fast and accurate predictions of the t...
We use graph convolutional neural networks (GCNNs) to produce fast and accurate predictions of the t...
We use graph convolutional neural networks (GCNNs) to produce fast and accurate predictions of the t...
We introduce a multi-tasking graph convolutional neural network, HydraGNN, to simultaneously predict...
Efficient prediction of sampling-intensive thermodynamic properties is needed to evaluate material p...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
There has been a recent surge of interest in using machine learning to approximate density functiona...
There has been a recent surge of interest in using machine learning to approximate density functiona...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
The free energy of a system is central to many material models. Although free energy data is not gen...
Predicting the stability of crystals is one of the central problems in materials science. Today, den...
Predicting the stability of crystals is one of the central problems in materials science. Today, den...
We significantly improve the physical models underlying atomistic Monte Carlo (MC) simulations, thro...
The electron charge density distribution of materials is one of the key quantities in computational ...
We use graph convolutional neural networks (GCNNs) to produce fast and accurate predictions of the t...
We use graph convolutional neural networks (GCNNs) to produce fast and accurate predictions of the t...
We use graph convolutional neural networks (GCNNs) to produce fast and accurate predictions of the t...
We introduce a multi-tasking graph convolutional neural network, HydraGNN, to simultaneously predict...
Efficient prediction of sampling-intensive thermodynamic properties is needed to evaluate material p...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
There has been a recent surge of interest in using machine learning to approximate density functiona...
There has been a recent surge of interest in using machine learning to approximate density functiona...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
The free energy of a system is central to many material models. Although free energy data is not gen...
Predicting the stability of crystals is one of the central problems in materials science. Today, den...
Predicting the stability of crystals is one of the central problems in materials science. Today, den...
We significantly improve the physical models underlying atomistic Monte Carlo (MC) simulations, thro...
The electron charge density distribution of materials is one of the key quantities in computational ...