Emerging computation- and data-driven approaches are particularly useful for rationally designing materials with targeted properties. Generally, these approaches rely on identifying structure-property relationships by learning from a dataset of sufficiently large number of relevant materials. The learned information can then be used to predict the properties of materials not already in the dataset, thus accelerating the materials design. Herein, we develop a dataset of 1,073 polymers and related materials and make it available at http://khazana.uconn.edu/. This dataset is uniformly prepared using first-principles calculations with structures obtained either from other sources or by using structure search methods. Because the immediate targe...
The dataset provides raw data on key properties in the text as well as raw data on the temperature a...
Dielectrics are an important class of materials that are ubiquitous in modern electronic application...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...
Emerging computation- and data-driven approaches are particularly useful for rationally designing ma...
Mining of currently available and evolving materials databases to discover structure–chemistry–prope...
While intuition-driven experiments and serendipity have guided traditional materials discovery, comp...
The recent successes of the Materials Genome Initiative have opened up new opportunities for data-ce...
Polymers offer a nearly infinite variety of material systems with diverse properties. Until recently...
The rapid implementation and improvement of renewable energy technologies require advanced dielectri...
This tarball includes 1073 CIF files, each of them provides the optimized structure and the accompan...
A machine learning strategy is presented for the rapid discovery of new polymeric materials satisfyi...
Polymers have found applications as dielectrics in high energy density capacitors owing to their low...
The field of polymeric materials is one of the most complex that exists. These materials have very h...
Materials processing is challenging because the final structure and properties often depend on the p...
Development of new dielectric materials is of great importance for a wide range of applications for ...
The dataset provides raw data on key properties in the text as well as raw data on the temperature a...
Dielectrics are an important class of materials that are ubiquitous in modern electronic application...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...
Emerging computation- and data-driven approaches are particularly useful for rationally designing ma...
Mining of currently available and evolving materials databases to discover structure–chemistry–prope...
While intuition-driven experiments and serendipity have guided traditional materials discovery, comp...
The recent successes of the Materials Genome Initiative have opened up new opportunities for data-ce...
Polymers offer a nearly infinite variety of material systems with diverse properties. Until recently...
The rapid implementation and improvement of renewable energy technologies require advanced dielectri...
This tarball includes 1073 CIF files, each of them provides the optimized structure and the accompan...
A machine learning strategy is presented for the rapid discovery of new polymeric materials satisfyi...
Polymers have found applications as dielectrics in high energy density capacitors owing to their low...
The field of polymeric materials is one of the most complex that exists. These materials have very h...
Materials processing is challenging because the final structure and properties often depend on the p...
Development of new dielectric materials is of great importance for a wide range of applications for ...
The dataset provides raw data on key properties in the text as well as raw data on the temperature a...
Dielectrics are an important class of materials that are ubiquitous in modern electronic application...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...