Machine learning for alloys

GLW Hart, T Mueller, C Toher, S Curtarolo - Nature Reviews Materials, 2021 - nature.com
Alloy modelling has a history of machine-learning-like approaches, preceding the tide of
data-science-inspired work. The dawn of computational databases has made the integration …

Emerging materials intelligence ecosystems propelled by machine learning

R Batra, L Song, R Ramprasad - Nature Reviews Materials, 2021 - nature.com
The age of cognitive computing and artificial intelligence (AI) is just dawning. Inspired by its
successes and promises, several AI ecosystems are blossoming, many of them within the …

Machine learning in materials informatics: recent applications and prospects

R Ramprasad, R Batra, G Pilania… - npj Computational …, 2017 - nature.com
Propelled partly by the Materials Genome Initiative, and partly by the algorithmic
developments and the resounding successes of data-driven efforts in other domains …

[HTML][HTML] Materials discovery and design using machine learning

Y Liu, T Zhao, W Ju, S Shi - Journal of Materiomics, 2017 - Elsevier
The screening of novel materials with good performance and the modelling of quantitative
structure-activity relationships (QSARs), among other issues, are hot topics in the field of …

Invited review: Machine learning for materials developments in metals additive manufacturing

NS Johnson, PS Vulimiri, AC To, X Zhang, CA Brice… - Additive …, 2020 - Elsevier
In metals additive manufacturing (AM), materials and components are concurrently made in
a single process as layers of metal are fabricated on top of each other in the near-final …

On-the-fly closed-loop materials discovery via Bayesian active learning

AG Kusne, H Yu, C Wu, H Zhang… - Nature …, 2020 - nature.com
Active learning—the field of machine learning (ML) dedicated to optimal experiment design—
has played a part in science as far back as the 18th century when Laplace used it to guide …

Active learning in materials science with emphasis on adaptive sampling using uncertainties for targeted design

T Lookman, PV Balachandran, D Xue… - npj Computational …, 2019 - nature.com
One of the main challenges in materials discovery is efficiently exploring the vast search
space for targeted properties as approaches that rely on trial-and-error are impractical. We …

ElemNet: Deep Learning the Chemistry of Materials From Only Elemental Composition

D Jha, L Ward, A Paul, W Liao, A Choudhary… - Scientific reports, 2018 - nature.com
Conventional machine learning approaches for predicting material properties from
elemental compositions have emphasized the importance of leveraging domain knowledge …

The 2021 quantum materials roadmap

F Giustino, JH Lee, F Trier, M Bibes… - Journal of Physics …, 2021 - iopscience.iop.org
In recent years, the notion of'Quantum Materials' has emerged as a powerful unifying
concept across diverse fields of science and engineering, from condensed-matter and …

Machine learning phases of matter

J Carrasquilla, RG Melko - Nature Physics, 2017 - nature.com
Condensed-matter physics is the study of the collective behaviour of infinitely complex
assemblies of electrons, nuclei, magnetic moments, atoms or qubits. This complexity is …