Data-driven design of inorganic materials with the Automatic Flow Framework for Materials Discovery

Journal Article (Journal Article)

The expansion of programmatically accessible materials data has cultivated opportunities for data-driven approaches. Workflows such as the Automatic Flow Framework for Materials Discovery not only manage the generation, storage, and dissemination of materials data, but also leverage the information for thermodynamic formability modeling, such as the prediction of phase diagrams and properties of disordered materials. In combination with standardized parameter sets, the wealth of data is ideal for training machine-learning algorithms, which have already been employed for property prediction, descriptor development, design rule discovery, and the identification of candidate functional materials. These methods promise to revolutionize the path to synthesis, and ultimately transform the practice of traditional materials discovery to one of rational and autonomous materials design.

Full Text

Duke Authors

Cited Authors

  • Oses, C; Toher, C; Curtarolo, S

Published Date

  • September 1, 2018

Published In

Volume / Issue

  • 43 / 9

Start / End Page

  • 670 - 675

International Standard Serial Number (ISSN)

  • 0883-7694

Digital Object Identifier (DOI)

  • 10.1557/mrs.2018.207

Citation Source

  • Scopus