Predicting formation energies of crystals is a common but computationally expensive task. In this work, it is therefore investigated how a neural network can be used as a tool for predicting formation energies with less computational cost compared to conventional methods. The investigated model shows promising results in predicting formation energies, reaching below a mean absolute error of 0.05 eV/atom with less than 4000 training datapoints. The model also shows great transferability, being able to reach below an MAE of 0.1 eV/atom with less than 100 training points when transferring from a pre-trained model. A drawback of the model is however that it is relying on descriptions of the crystal structures that include interatomic distances....
Predicting crystal structure has always been a challenging problem for physical sciences. Recently, ...
We introduce and evaluate a set of feature vector representations of crystal structures for machine ...
Graph neural networks for crystal structures typically use the atomic positions and the atomic speci...
Predicting formation energies of crystals is a common but computationally expensive task. In this wo...
To assist technology advancements, it is important to continue the search for new materials. The sta...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
To assist technology advancements, it is important to continue the search for new materials. The sta...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
pySIPFENN Documentation: pysipfenn.org pySIPFENN GitHub: git.pysipfenn.org Original SIPFENN Paper:...
Efficient prediction of sampling-intensive thermodynamic properties is needed to evaluate material p...
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...
International audienceMachine learning (ML) methods are becoming the state-of-the-art in numerous do...
Availability of affordable and widely applicable interatomic potentials is the key needed to unlock ...
Predicting crystal structure has always been a challenging problem for physical sciences. Recently, ...
We introduce and evaluate a set of feature vector representations of crystal structures for machine ...
Graph neural networks for crystal structures typically use the atomic positions and the atomic speci...
Predicting formation energies of crystals is a common but computationally expensive task. In this wo...
To assist technology advancements, it is important to continue the search for new materials. The sta...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
To assist technology advancements, it is important to continue the search for new materials. The sta...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
pySIPFENN Documentation: pysipfenn.org pySIPFENN GitHub: git.pysipfenn.org Original SIPFENN Paper:...
Efficient prediction of sampling-intensive thermodynamic properties is needed to evaluate material p...
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...
International audienceMachine learning (ML) methods are becoming the state-of-the-art in numerous do...
Availability of affordable and widely applicable interatomic potentials is the key needed to unlock ...
Predicting crystal structure has always been a challenging problem for physical sciences. Recently, ...
We introduce and evaluate a set of feature vector representations of crystal structures for machine ...
Graph neural networks for crystal structures typically use the atomic positions and the atomic speci...