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Machine learning for polymeric materials: an introduction

Morgan M. Cencer, Jeffrey S. Moore, Rajeev S. Assary

2021Polymer International90 citationsDOIOpen Access PDF

Abstract

Abstract Polymers are incredibly versatile materials and have become ubiquitous. Increasingly, researchers are using data science and polymer informatics to design new materials and understand their structure–property relationships. Polymer informatics is an emerging field. While there are many useful tools and databases available, many are not widely utilized. Herein, we introduce the field of polymer informatics and discuss some of the available databases and tools. We cover how to share polymer data, approaches for preparing a dataset for machine learning and recent applications of machine learning to polymer property prediction and polymer synthesis. © 2021 Society of Industrial Chemistry.

Topics & Concepts

Materials informaticsInformaticsComputer scienceField (mathematics)Data sciencePolymerProperty (philosophy)Cover (algebra)NanotechnologyEngineering informaticsHealth informaticsMaterials scienceEngineeringMechanical engineeringHealth carePure mathematicsMathematicsEpistemologyComposite materialEconomic growthPhilosophyEconomicsElectrical engineeringMachine Learning in Materials ScienceComputational Drug Discovery MethodsMetabolomics and Mass Spectrometry Studies
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