Issue 3, 2018

Machine learning and data science in materials design: a themed collection

Abstract

Guest Editors Andrew Ferguson and Johannes Hachmann introduce this themed collection of papers showcasing the latest research leveraging data science and machine learning approaches to guide the understanding and design of hard, soft, and biological materials with tailored properties, function and behaviour.

Graphical abstract: Machine learning and data science in materials design: a themed collection

Article information

Article type
Editorial
Submitted
27 3 2018
Accepted
27 3 2018
First published
25 4 2018

Mol. Syst. Des. Eng., 2018,3, 429-430

Machine learning and data science in materials design: a themed collection

A. Ferguson and J. Hachmann, Mol. Syst. Des. Eng., 2018, 3, 429 DOI: 10.1039/C8ME90007H

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