Data science and material informatics in physical metallurgy and material science: An overview of milestones and limitations

Results in Materials - Tập 19 - Trang 100455 - 2023
D.E.P. Klenam1,2, T.K. Asumadu2,3, M. Vandadi4, N. Rahbar2,4, F. McBagonluri5, W.O. Soboyejo2
1Academic Development Unit & School of Chemical and Metallurgical Engineering, University of the Witwatersrand, 1 Jan Smuts Avenue, WITS, 2001, Johannesburg, South Africa
2Department of Mechanical Engineering, Worcester Polytechnic Institute, 100 Institute Road, Worcester, M.A., 06109, USA
3Department of Materials Engineering, Sunyani Technical University, Box 206, Sunyani, Ghana
4Department of Civil Engineering, Worcester Polytechnic Institute, 100 Institute Road, Worcester, M.A., 06109, USA
5Department of Mechanical Engineering, Academic City University College, Haatso, Accra, Ghana

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