Big data and machine learning for materials science

被引:51
|
作者
Jose F. Rodrigues
Larisa Florea
Maria C. F. de Oliveira
Dermot Diamond
Osvaldo N. Oliveira
机构
[1] University of São Paulo (USP),Institute of Mathematical Sciences and Computing
[2] The University of Dublin,SFI Research Centre for Advanced Materials and BioEngineering Research Trinity College Dublin
[3] National Centre for Sensor Research,Insight Centre for Data Analytics
[4] Dublin City University,São Carlos Institute of Physics
[5] University of São Paulo (USP),undefined
来源
Discover Materials | / 1卷 / 1期
关键词
Materials discovery; Big data; Machine learning; Deep learning; Evolutionary algorithms; Chemical sensors; Internet of Things;
D O I
10.1007/s43939-021-00012-0
中图分类号
学科分类号
摘要
Herein, we review aspects of leading-edge research and innovation in materials science that exploit big data and machine learning (ML), two computer science concepts that combine to yield computational intelligence. ML can accelerate the solution of intricate chemical problems and even solve problems that otherwise would not be tractable. However, the potential benefits of ML come at the cost of big data production; that is, the algorithms demand large volumes of data of various natures and from different sources, from material properties to sensor data. In the survey, we propose a roadmap for future developments with emphasis on computer-aided discovery of new materials and analysis of chemical sensing compounds, both prominent research fields for ML in the context of materials science. In addition to providing an overview of recent advances, we elaborate upon the conceptual and practical limitations of big data and ML applied to materials science, outlining processes, discussing pitfalls, and reviewing cases of success and failure.
引用
收藏
相关论文
共 50 条
  • [21] Legal and Regulatory Issues on Artificial Intelligence, Machine Learning, Data Science, and Big Data
    Wan, Wai Yee
    Tsimplis, Michael
    Siau, Keng L.
    Yue, Wei T.
    Nah, Fiona Fui-Hoon
    Yu, Gabriel M.
    [J]. HCI INTERNATIONAL 2022 - LATE BREAKING PAPERS: INTERACTING WITH EXTENDED REALITY AND ARTIFICIAL INTELLIGENCE, 2022, 13518 : 558 - 567
  • [22] Machine learning in materials science
    Wei, Jing
    Chu, Xuan
    Sun, Xiang-Yu
    Xu, Kun
    Deng, Hui-Xiong
    Chen, Jigen
    Wei, Zhongming
    Lei, Ming
    [J]. INFOMAT, 2019, 1 (03) : 338 - 358
  • [23] Machine learning for big data analytics
    [J]. Oja, E. (erkki.oja@aalto.fi), 1600, Springer Verlag (384):
  • [24] Big data and machine learning in health
    Carvalho, D.
    Cruz, R.
    [J]. EUROPEAN JOURNAL OF PUBLIC HEALTH, 2020, 30 : 10 - 11
  • [25] Machine learning and big scientific data
    Hey, Tony
    Butler, Keith
    Jackson, Sam
    Thiyagalingam, Jeyarajan
    [J]. PHILOSOPHICAL TRANSACTIONS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES, 2020, 378 (2166):
  • [26] Machine learning, big data, and neuroscience
    Pillow, Jonathan
    Sahani, Maneesh
    [J]. CURRENT OPINION IN NEUROBIOLOGY, 2019, 55 : III - IV
  • [27] Machine Learning under Big Data
    Shi, Chunhe
    Wu, Chengdong
    Han, Xiaowei
    Xie, Yinghong
    Li, Zhen
    [J]. PROCEEDINGS OF THE 6TH INTERNATIONAL CONFERENCE ON ELECTRONIC, MECHANICAL, INFORMATION AND MANAGEMENT SOCIETY (EMIM), 2016, 40 : 301 - 305
  • [28] Advancement of machine learning in materials science
    Rajendra, P.
    Girisha, A.
    Naidu, T. Gunavardhana
    [J]. MATERIALS TODAY-PROCEEDINGS, 2022, 62 : 5503 - 5507
  • [29] Editorial: Machine Learning in Materials Science
    Merz, Kenneth M.
    Choong, Yee Siew
    Cournia, Zoe
    Isayev, Olexandr
    Soares, Thereza A.
    Wei, Guo-Wei
    Zhu, Feng
    [J]. JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2024, 64 (10) : 3959 - 3960
  • [30] Machine learning for molecular and materials science
    Keith T. Butler
    Daniel W. Davies
    Hugh Cartwright
    Olexandr Isayev
    Aron Walsh
    [J]. Nature, 2018, 559 : 547 - 555