Multimodal Machine Learning for Materials Science: Discovery of Novel Li-Ion Solid Electrolytes
Shuo Wang(University of Maryland, College Park), Yang Shao‐Horn(Massachusetts Institute of Technology), Sheng Gong(Bellevue College), Daniele Vivona(Massachusetts Institute of Technology), Wolfgang G. Zeier(University of Southern California), Thorben Böger(University of Münster), Kiarash Gordiz(Massachusetts Institute of Technology), Jon A. Newnham(University of Münster), Jeffrey C. Grossman(Massachusetts Institute of Technology), Taishan Zhu(Massachusetts Institute of Technology), Muy Sokseiha(Massachusetts Institute of Technology), Abhishek Aggarwal(Massachusetts Institute of Technology)
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