As materials data sets grow in size and scope, the role of data mining and statistical learning methods to analyze these materials data sets and build predictive models is becoming more important. This manuscript introduces matminer, an open-source, Python-based software platform to facilitate data-driven methods of analyzing and predicting materials properties. Matminer provides modules for retrieving large data sets from external databases such as the Materials Project, Citrination, Materials Data Facility, and Materials Platform for Data Science. It also provides implementations for an extensive library of feature extraction routines developed by the materials community, with 47 featurization classes that can generate thousands of indivi...
Experimental data in many domains serves as a basis for predicting useful trends. If the data and an...
Machine learning (ML) from materials data-bases can accelerate the design and discovery of new mater...
Three datasets are intended to be used for exploring machine learning applications in materials scie...
As materials data sets grow in size and scope, the role of data mining and statistical learning meth...
<p>Materials Datasets with 273 compositional and structural features extracted from <a href...
Data mining has revolutionized sectors as diverse as pharmaceutical drug discovery, finance, medicin...
We present a benchmark test suite and an automated machine learning procedure for evaluating supervi...
This Methods/Protocols article is intended for materials scientists interested in performing machine...
In material science, experiments and high-throughput models often consume a large amount of calendar...
Thesis (Ph.D.)--University of Washington, 2022Machine learning and natural language processing techn...
Given the emergence of data science and machine learning throughout all aspects of society, but part...
Various properties of 24,759 bulk and 2D materials computed with the OptB88vdW and TBmBJ functionals...
Material discovery holds the key to technological advancement as materials’ properties dictate the...
Recently, the remarkable capabilities of large language models (LLMs) have been illustrated across a...
Materialtools is a set of modules, objects, and functions to import, export, manipulate, and visuali...
Experimental data in many domains serves as a basis for predicting useful trends. If the data and an...
Machine learning (ML) from materials data-bases can accelerate the design and discovery of new mater...
Three datasets are intended to be used for exploring machine learning applications in materials scie...
As materials data sets grow in size and scope, the role of data mining and statistical learning meth...
<p>Materials Datasets with 273 compositional and structural features extracted from <a href...
Data mining has revolutionized sectors as diverse as pharmaceutical drug discovery, finance, medicin...
We present a benchmark test suite and an automated machine learning procedure for evaluating supervi...
This Methods/Protocols article is intended for materials scientists interested in performing machine...
In material science, experiments and high-throughput models often consume a large amount of calendar...
Thesis (Ph.D.)--University of Washington, 2022Machine learning and natural language processing techn...
Given the emergence of data science and machine learning throughout all aspects of society, but part...
Various properties of 24,759 bulk and 2D materials computed with the OptB88vdW and TBmBJ functionals...
Material discovery holds the key to technological advancement as materials’ properties dictate the...
Recently, the remarkable capabilities of large language models (LLMs) have been illustrated across a...
Materialtools is a set of modules, objects, and functions to import, export, manipulate, and visuali...
Experimental data in many domains serves as a basis for predicting useful trends. If the data and an...
Machine learning (ML) from materials data-bases can accelerate the design and discovery of new mater...
Three datasets are intended to be used for exploring machine learning applications in materials scie...