FAIR data enabling new horizons for materials research

被引:0
|
作者
Matthias Scheffler
Martin Aeschlimann
Martin Albrecht
Tristan Bereau
Hans-Joachim Bungartz
Claudia Felser
Mark Greiner
Axel Groß
Christoph T. Koch
Kurt Kremer
Wolfgang E. Nagel
Markus Scheidgen
Christof Wöll
Claudia Draxl
机构
[1] Humboldt-Universität zu Berlin, Physics Department and IRIS Adlershof
[2] The NOMAD Laboratory at the Fritz Haber Institute of the Max Planck Society,Department of Physics and Research Center OPTIMAS
[3] University of Kaiserslautern,Department of Informatics
[4] Leibniz-Institut für Kristallzüchtung,Institute of Theoretical Chemistry
[5] Max-Planck-Institut für Polymerforschung,Computer Science Department
[6] Technical University of Munich,Institute of Functional Interfaces
[7] Max Planck Institute for Chemical Physics of Solids,undefined
[8] Max Planck Institute for Chemical Energy Conversion,undefined
[9] Ulm University and Helmholtz-Institute Ulm,undefined
[10] Technical University Dresden,undefined
[11] Karlsruhe Institute of Technology,undefined
来源
Nature | 2022年 / 604卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
The prosperity and lifestyle of our society are very much governed by achievements in condensed matter physics, chemistry and materials science, because new products for sectors such as energy, the environment, health, mobility and information technology (IT) rely largely on improved or even new materials. Examples include solid-state lighting, touchscreens, batteries, implants, drug delivery and many more. The enormous amount of research data produced every day in these fields represents a gold mine of the twenty-first century. This gold mine is, however, of little value if these data are not comprehensively characterized and made available. How can we refine this feedstock; that is, turn data into knowledge and value? For this, a FAIR (findable, accessible, interoperable and reusable) data infrastructure is a must. Only then can data be readily shared and explored using data analytics and artificial intelligence (AI) methods. Making data 'findable and AI ready' (a forward-looking interpretation of the acronym) will change the way in which science is carried out today. In this Perspective, we discuss how we can prepare to make this happen for the field of materials science.
引用
收藏
页码:635 / 642
页数:7
相关论文
共 50 条