Engineering and Technologynpj Computational Materials
Machine learning enabled autonomous microstructural characterization in 3D samples
H. Chan, M. Cherukara, et al.
This groundbreaking research, conducted by Henry Chan, Mathew Cherukara, Troy D. Loeffler, Badri Narayanan, and Subramanian K. R. S. Sankaranarayanan, unveils a novel unsupervised machine learning technique that identifies and characterizes microstructures in 3D samples. With striking efficiency and accuracy, it tackles complex microstructural features affecting material behavior without needing prior descriptions.
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