We present a physically-motivated topology of a deep neural network that can efficiently infer extensive parameters (such as energy, entropy, or number of particles) of arbitrarily large systems, doing so with O(N) scaling. We use a form of domain decomposition for training and inference, where each sub-domain (tile) is comprised of a non-overlapping focus region surrounded by an overlapping context region. The size of these regions is motivated by the physical interaction length scales of the problem. We demonstrate the application of EDNNs to three physical systems: the Ising model and two hexagonal/graphene-like datasets. In the latter, an EDNN was able to make total energy predictions of a 60 atoms system, with comparable accuracy to de...
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...
15 pagesInternational audienceDetermining phase diagrams and phase transitions semiautomatically usi...
The free energy of a system is central to many material models. Although free energy data is not gen...
Supervised machine learning is emerging as a powerful computational tool to predict the properties o...
Supervised machine learning is emerging as a powerful computational tool to predict the properties o...
We demonstrate the capability of a convolutional deep neural network in predicting the nearest-neigh...
We demonstrate that a committee of deep neural networks is capable of predicting the ground-state an...
International audienceWe demonstrate that a committee of deep neural networks is capable of predicti...
International audienceWe demonstrate that a committee of deep neural networks is capable of predicti...
Despite the ever-increasing computer power, accurate ab initio calculations for large systems (thous...
This work maps deep neural networks to classical Ising spin models, allowing them to be described us...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
Manipulation of physical and chemical properties of materials via precise doping affords an extensiv...
International audienceWe explore different strategies to integrate prior domain knowledge into the d...
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...
15 pagesInternational audienceDetermining phase diagrams and phase transitions semiautomatically usi...
The free energy of a system is central to many material models. Although free energy data is not gen...
Supervised machine learning is emerging as a powerful computational tool to predict the properties o...
Supervised machine learning is emerging as a powerful computational tool to predict the properties o...
We demonstrate the capability of a convolutional deep neural network in predicting the nearest-neigh...
We demonstrate that a committee of deep neural networks is capable of predicting the ground-state an...
International audienceWe demonstrate that a committee of deep neural networks is capable of predicti...
International audienceWe demonstrate that a committee of deep neural networks is capable of predicti...
Despite the ever-increasing computer power, accurate ab initio calculations for large systems (thous...
This work maps deep neural networks to classical Ising spin models, allowing them to be described us...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
Manipulation of physical and chemical properties of materials via precise doping affords an extensiv...
International audienceWe explore different strategies to integrate prior domain knowledge into the d...
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...
15 pagesInternational audienceDetermining phase diagrams and phase transitions semiautomatically usi...