We present a deep-learning framework, CrysXPP, to allow rapid and accurate prediction of electronic, magnetic, and elastic properties of a wide range of materials. CrysXPP lowers the need for large property tagged datasets by intelligently designing an autoencoder, CrysAE. The important structural and chemical properties captured by CrysAE from a large amount of available crystal graphs data helped in achieving low prediction errors. Moreover, we design a feature selector that helps to interpret the model’s prediction. Most notably, when given a small amount of experimental data, CrysXPP is consistently able to outperform conventional DFT. A detailed ablation study establishes the importance of different design steps. We release the large p...
Machine learning has brought great convenience to material property prediction. However, most existi...
Computational prediction of crystal materials properties can help to do large-scale in-silicon scree...
Machine learning has been successfully employed in computer vision, speech processing, and natural l...
In recent years, graph neural network (GNN) based approaches have emerged as a powerful technique to...
Predicting material properties base on micro structure of materials has long been a challenging prob...
Discovery of novel functional materials is playing an increasingly important role in many key indust...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
In the past few decades, the first principles modeling algorithms, especially density functional the...
In the past few decades, the first principles modeling algorithms, especially density functional the...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
In order to make accurate predictions of material properties, current machine-learning approaches ge...
Abstract Structural search and feature extraction are a central subject in modern materials design, ...
Machine learning has brought great convenience to material property prediction. However, most existi...
Computational prediction of crystal materials properties can help to do large-scale in-silicon scree...
Machine learning has been successfully employed in computer vision, speech processing, and natural l...
In recent years, graph neural network (GNN) based approaches have emerged as a powerful technique to...
Predicting material properties base on micro structure of materials has long been a challenging prob...
Discovery of novel functional materials is playing an increasingly important role in many key indust...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
In the past few decades, the first principles modeling algorithms, especially density functional the...
In the past few decades, the first principles modeling algorithms, especially density functional the...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
As an emergent research paradigm, data-driven methods (e.g., machine learning) have recently been ap...
In order to make accurate predictions of material properties, current machine-learning approaches ge...
Abstract Structural search and feature extraction are a central subject in modern materials design, ...
Machine learning has brought great convenience to material property prediction. However, most existi...
Computational prediction of crystal materials properties can help to do large-scale in-silicon scree...
Machine learning has been successfully employed in computer vision, speech processing, and natural l...