Materials Knowledge Systems in Python—a Data Science Framework for Accelerated Development of Hierarchical Materials

被引:0
|
作者
David B Brough
Daniel Wheeler
Surya R. Kalidindi
机构
[1] Georgia Institute of Technology,School of Computational Science and Engineering
[2] National Institute of Standards and Technology,Materials Science and Engineering Division, Material Measurement Laboratory
[3] Georgia Institute of Technology,George W. Woodruff School of Mechanical Engineering
关键词
Materials knowledge systems; Hierarchical materials; Multiscale materials; Python; Scikit-learn; NumPy; SciPy; Machine learning;
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学科分类号
摘要
There is a critical need for customized analytics that take into account the stochastic nature of the internal structure of materials at multiple length scales in order to extract relevant and transferable knowledge. Data-driven process-structure-property (PSP) linkages provide a systemic, modular, and hierarchical framework for community-driven curation of materials knowledge, and its transference to design and manufacturing experts. The Materials Knowledge Systems in Python project (PyMKS) is the first open-source materials data science framework that can be used to create high-value PSP linkages for hierarchical materials that can be leveraged by experts in materials science and engineering, manufacturing, machine learning, and data science communities. This paper describes the main functions available from this repository, along with illustrations of how these can be accessed, utilized, and potentially further refined by the broader community of researchers.
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页码:36 / 53
页数:17
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