The prediction of energetically stable crystal structures formed by a given chemical composition is a central problem in solid-state physics. In principle, the crystalline state of assembled atoms can be determined by optimizing the energy surface, which in turn can be evaluated using first-principles calculations. However, performing the iterative gradient descent on the potential energy surface using first-principles calculations is prohibitively expensive for complex systems, such as those with many atoms per unit cell. Here, we present a unique methodology for crystal structure prediction (CSP) that relies on a machine learning algorithm called metric learning. It is shown that a binary classifier, trained on a large number of already i...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Molecular crystals are a class of materials that are held together by weak van der Waals interaction...
Molecular crystals are a class of materials that are held together by weak van der Waals interaction...
Predicting crystal structure has always been a challenging problem for physical sciences. Recently, ...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
Crystal Structure Prediction (CSP) aims to discover solid crystalline materials by optimizing period...
O nce the crystal structure of a chemical substance is known, many prop-erties can be predicted reli...
Abstract Structural search and feature extraction are a central subject in modern materials design, ...
This thesis develops a machine learning framework for predicting crystal structure and applies it to...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
To assist technology advancements, it is important to continue the search for new materials. The sta...
To assist technology advancements, it is important to continue the search for new materials. The sta...
New crystal structures are frequently derived by performing ionic substitutions on known crystal str...
Predicting crystal structure information is a challenging problem in materials science that clearly ...
Molecular crystals are a class of materials that are held together by weak van der Waals interaction...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Molecular crystals are a class of materials that are held together by weak van der Waals interaction...
Molecular crystals are a class of materials that are held together by weak van der Waals interaction...
Predicting crystal structure has always been a challenging problem for physical sciences. Recently, ...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
Crystal Structure Prediction (CSP) aims to discover solid crystalline materials by optimizing period...
O nce the crystal structure of a chemical substance is known, many prop-erties can be predicted reli...
Abstract Structural search and feature extraction are a central subject in modern materials design, ...
This thesis develops a machine learning framework for predicting crystal structure and applies it to...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
To assist technology advancements, it is important to continue the search for new materials. The sta...
To assist technology advancements, it is important to continue the search for new materials. The sta...
New crystal structures are frequently derived by performing ionic substitutions on known crystal str...
Predicting crystal structure information is a challenging problem in materials science that clearly ...
Molecular crystals are a class of materials that are held together by weak van der Waals interaction...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Molecular crystals are a class of materials that are held together by weak van der Waals interaction...
Molecular crystals are a class of materials that are held together by weak van der Waals interaction...