Modern Data Analytics Approach to Predict Creep of High-Temperature Alloys
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Dongwon Shin | Michael P. Brady | Yukinori Yamamoto | Sangkeun Lee | Dongwon Shin | Yukinori Yamamoto | M. Brady | S. Lee | J. Haynes | J. Allen Haynes | Y. Yamamoto | Michael P. Brady | James W. Haynes
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