Collection 

Machine learning for materials chemistry

Machine learning has huge potential as a tool to investigate new materials and new applications of existing materials, as well as to streamline and focus future experimentation through rapid screening. This Collection Explores the use of machine learning in all aspects of materials chemistry, from discovering and designing new materials to modelling and optimising their performance, defining structure-property relationships and identifying new applications.

Abstract vector illustration of a network consisting of blue and purple lines

Editors

  • Ting Liao

    Queensland University of Technology, Australia

  • Taylor Sparks

    University of Utah, USA

  • Hao Yu

    Southern University of Science and Technology, China

Articles