Data‐Driven Materials Science: Status, Challenges, and Perspectives
Abstract Data‐driven science is heralded as a new paradigm in materials science. In this field, data is the new resource, and knowledge is extracted from materials datasets that are too big or complex for traditional human reasoning—typically with the intent to discover new or improved materials or...
Main Authors: | , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Wiley
2019-11-01
|
Series: | Advanced Science |
Subjects: | |
Online Access: | https://doi.org/10.1002/advs.201900808 |
id |
doaj-684efadaedc44c268dc22941550a6fff |
---|---|
record_format |
Article |
spelling |
doaj-684efadaedc44c268dc22941550a6fff2020-11-25T01:31:52ZengWileyAdvanced Science2198-38442019-11-01621n/an/a10.1002/advs.201900808Data‐Driven Materials Science: Status, Challenges, and PerspectivesLauri Himanen0Amber Geurts1Adam Stuart Foster2Patrick Rinke3Department of Applied Physics Aalto University P.O. Box 11100 00076 Aalto,Espoo FinlandDepartment of Applied Physics Aalto University P.O. Box 11100 00076 Aalto,Espoo FinlandDepartment of Applied Physics Aalto University P.O. Box 11100 00076 Aalto,Espoo FinlandDepartment of Applied Physics Aalto University P.O. Box 11100 00076 Aalto,Espoo FinlandAbstract Data‐driven science is heralded as a new paradigm in materials science. In this field, data is the new resource, and knowledge is extracted from materials datasets that are too big or complex for traditional human reasoning—typically with the intent to discover new or improved materials or materials phenomena. Multiple factors, including the open science movement, national funding, and progress in information technology, have fueled its development. Such related tools as materials databases, machine learning, and high‐throughput methods are now established as parts of the materials research toolset. However, there are a variety of challenges that impede progress in data‐driven materials science: data veracity, integration of experimental and computational data, data longevity, standardization, and the gap between industrial interests and academic efforts. In this perspective article, the historical development and current state of data‐driven materials science, building from the early evolution of open science to the rapid expansion of materials data infrastructures are discussed. Key successes and challenges so far are also reviewed, providing a perspective on the future development of the field.https://doi.org/10.1002/advs.201900808artificial intelligencedatabasesdata sciencemachine learningmaterialsmaterials science |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lauri Himanen Amber Geurts Adam Stuart Foster Patrick Rinke |
spellingShingle |
Lauri Himanen Amber Geurts Adam Stuart Foster Patrick Rinke Data‐Driven Materials Science: Status, Challenges, and Perspectives Advanced Science artificial intelligence databases data science machine learning materials materials science |
author_facet |
Lauri Himanen Amber Geurts Adam Stuart Foster Patrick Rinke |
author_sort |
Lauri Himanen |
title |
Data‐Driven Materials Science: Status, Challenges, and Perspectives |
title_short |
Data‐Driven Materials Science: Status, Challenges, and Perspectives |
title_full |
Data‐Driven Materials Science: Status, Challenges, and Perspectives |
title_fullStr |
Data‐Driven Materials Science: Status, Challenges, and Perspectives |
title_full_unstemmed |
Data‐Driven Materials Science: Status, Challenges, and Perspectives |
title_sort |
data‐driven materials science: status, challenges, and perspectives |
publisher |
Wiley |
series |
Advanced Science |
issn |
2198-3844 |
publishDate |
2019-11-01 |
description |
Abstract Data‐driven science is heralded as a new paradigm in materials science. In this field, data is the new resource, and knowledge is extracted from materials datasets that are too big or complex for traditional human reasoning—typically with the intent to discover new or improved materials or materials phenomena. Multiple factors, including the open science movement, national funding, and progress in information technology, have fueled its development. Such related tools as materials databases, machine learning, and high‐throughput methods are now established as parts of the materials research toolset. However, there are a variety of challenges that impede progress in data‐driven materials science: data veracity, integration of experimental and computational data, data longevity, standardization, and the gap between industrial interests and academic efforts. In this perspective article, the historical development and current state of data‐driven materials science, building from the early evolution of open science to the rapid expansion of materials data infrastructures are discussed. Key successes and challenges so far are also reviewed, providing a perspective on the future development of the field. |
topic |
artificial intelligence databases data science machine learning materials materials science |
url |
https://doi.org/10.1002/advs.201900808 |
work_keys_str_mv |
AT laurihimanen datadrivenmaterialssciencestatuschallengesandperspectives AT ambergeurts datadrivenmaterialssciencestatuschallengesandperspectives AT adamstuartfoster datadrivenmaterialssciencestatuschallengesandperspectives AT patrickrinke datadrivenmaterialssciencestatuschallengesandperspectives |
_version_ |
1725084837935579136 |