Data-driven glass/ceramic science research: Insights from the glass and ceramic and data science/informatics communities

Eileen De Guire, Laura Bartolo, Ross Brindle, Ram Devanathan, Elizabeth C. Dickey, Justin Fessler, Roger H. French, Ulrich Fotheringham, Martin Harmer, Edgar Lara-Curzio, Sarah Lichtner, Emmanuel Maillet, John Mauro, Mark Mecklenborg, Bryce Meredig, Krishna Rajan, Jeffrey Rickman, Susan Sinnott, Charlie Spahr, Changwon SuhAdama Tandia, Logan Ward, Rick Weber

Research output: Contribution to journalArticlepeer-review

19 Scopus citations

Abstract

Data-driven science and technology have helped achieve meaningful technological advancements in areas such as materials/drug discovery and health care, but efforts to apply high-end data science algorithms to the areas of glass and ceramics are still limited. Many glass and ceramic researchers are interested in enhancing their work by using more data and data analytics to develop better functional materials more efficiently. Simultaneously, the data science community is looking for a way to access materials data resources to test and validate their advanced computational learning algorithms. To address this issue, The American Ceramic Society (ACerS) convened a Glass and Ceramic Data Science Workshop in February 2018, sponsored by the National Institute for Standards and Technology (NIST) Advanced Manufacturing Technologies (AMTech) program. The workshop brought together a select group of leaders in the data science, informatics, and glass and ceramics communities, ACerS, and Nexight Group to identify the greatest opportunities and mechanisms for facilitating increased collaboration and coordination between these communities. This article summarizes workshop discussions about the current challenges that limit interactions and collaboration between the glass and ceramic and data science communities, opportunities for a coordinated approach that leverages existing knowledge in both communities, and a clear path toward the enhanced use of data science technologies for functional glass and ceramic research and development.

Original languageEnglish
Pages (from-to)6385-6406
Number of pages22
JournalJournal of the American Ceramic Society
Volume102
Issue number11
DOIs
StatePublished - Nov 1 2019

Funding

Funding information Organization and award number: NIST AMTech Award No. 70NANB15H073. This workshop and the resulting report were supported by NIST AMTech Award No. 70NANB15H073, Jean-Louis Staudenmann, program officer. E.C. Dickey acknowledges the support of the National Science Foundation under Grant No. DGE-1633587. R. French acknowledges the support of DOE-EERE SETO award DE-EE-000 8172. B. Meredi and S.M. Haile acknowledge the support of ARPA-E under contract DE-AR0000707. Their project is a collaboration between Citrine Informatics and the research group of Sossina M. Haile at Northwestern University.

FundersFunder number
Citrine Informatics
DOE-EERE SETODE-EE-000 8172
National Science FoundationDGE-1633587
National Institute of Standards and Technology70NANB15H073
Advanced Research Projects Agency - EnergyDE-AR0000707
Northwestern University

    Keywords

    • glass
    • modeling/model
    • simulation

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