Chemistrynpj Computational Materials
Machine learning guided high-throughput search of non-oxide garnets
J. Schmidt, H. Wang, et al.
This innovative research, conducted by Jonathan Schmidt, Hai-Chen Wang, Georg Schmidt, and Miguel A. L. Marques, explores the chemical space for new garnet compositions using cutting-edge graph neural networks and high-throughput calculations. Discover the potential of over 600 newly identified ternary garnets related to sulfides, nitrides, and halides, along with their intriguing electronic structures.
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