PhysicsCommunications Materials
Machine learning autonomous identification of magnetic alloys beyond the Slater-Pauling limit
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Discover a groundbreaking magnetic alloy that surpasses the known limits of magnetization, achieved through advanced machine learning and ab-initio calculations by authors Yuma Iwasaki, Ryohto Sawada, Eiji Saitoh, and Masahiko Ishida. The inclusion of Ir and Pt impurities has unveiled unprecedented magnetization properties, confirmed through experimental synthesis.
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