Article Open access Published: 16 March 2026 Basant Kumar1,2, Shashi Kant Gupta1,3, Rashmi Dwivedi4,5, Deema Mohammed Alsekai6, Diaa Salama AbdElminaam7,8 & … Ozlem Kilickaya9 Scientific Reports , Article number: (2026) Cite this article We are providing an unedited version of this manuscript to give early access to its findings. Before final publication, the manuscript will undergo
AI-driven sustainable strength prediction and experimental evaluation of high-performance fiber-reinforced concrete incorporating metakaolin – Scientific Reports
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