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  Machine learning in materials informatics: recent applications and prospects

Ramprasad, R., Batra, R., Pilania, G., Mannodi-Kanakkithodi, A., & Kim, C. (2017). Machine learning in materials informatics: recent applications and prospects. npj Computational Materials, 3: 54. doi:10.1038/s41524-017-0056-5.

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Ramprasad, Rampi1, Author
Batra, Rohit1, Author
Pilania, Ghanshyam2, 3, Author           
Mannodi-Kanakkithodi, Arun1, 4, Author
Kim, Chiho1, Author
Affiliations:
1Department of Materials Science & Engineering and Institute of Materials Science, University of Connecticut, 97 North Eagleville Rd., Unit 3136, Storrs, CT, 06269-3136, USA, ou_persistent22              
2Theory, Fritz Haber Institute, Max Planck Society, ou_634547              
3Materials Science and Technology Division, Los Alamos National Laboratory, Los Alamos, NM, 87545, USA, ou_persistent22              
4Center for Nanoscale Materials, Lamont National Laboratory, 9700 S. Cass Ave., Lemont, IL, 60439, USA, ou_persistent22              

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 Abstract: Propelled partly by the Materials Genome Initiative, and partly by the algorithmic developments and the resounding successes of data-driven efforts in other domains, informatics strategies are beginning to take shape within materials science. These approaches lead to surrogate machine learning models that enable rapid predictions based purely on past data rather than by direct experimentation or by computations/simulations in which fundamental equations are explicitly solved. Data-centric informatics methods are becoming useful to determine material properties that are hard to measure or compute using traditional methods—due to the cost, time or effort involved—but for which reliable data either already exists or can be generated for at least a subset of the critical cases. Predictions are typically interpolative, involving fingerprinting a material numerically first, and then following a mapping (established via a learning algorithm) between the fingerprint and the property of interest. Fingerprints, also referred to as “descriptors”, may be of many types and scales, as dictated by the application domain and needs. Predictions may also be extrapolative—extending into new materials spaces—provided prediction uncertainties are properly taken into account. This article attempts to provide an overview of some of the recent successful data-driven “materials informatics” strategies undertaken in the last decade, with particular emphasis on the fingerprint or descriptor choices. The review also identifies some challenges the community is facing and those that should be overcome in the near future.

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Language(s): eng - English
 Dates: 2017-11-132017-07-192017-11-172017-12-13
 Publication Status: Published online
 Pages: 13
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 Table of Contents: -
 Rev. Type: Peer
 Identifiers: DOI: 10.1038/s41524-017-0056-5
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Title: npj Computational Materials
Source Genre: Journal
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Publ. Info: London : Springer Nature
Pages: 13 Volume / Issue: 3 Sequence Number: 54 Start / End Page: - Identifier: ISSN: 2057-3960
CoNE: https://pure.mpg.de/cone/journals/resource/2057-3960