Predicting the compressive strength of concrete incorporating waste powders exposed to elevated temperatures utilizing machine learning
Islam N. Fathy(Higher Institute of Engineering), Hala Emad Elden Fouad(Misr University for Science and Technology), Mohammed K. Alkharisi(Qassim University), Hany A. Dahish(Qassim University), Alaa Mahmoud(October High Institute For Enginnering and Technology)
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