Predicting charge density distribution of materials using a local-environment-based graph convolutional network
Sheng Gong(Bellevue College), Jeffrey C. Grossman(Massachusetts Institute of Technology), Eric Fadel(Massachusetts Institute of Technology), Taishan Zhu(Massachusetts Institute of Technology), Yawei Li(Nankai University), Shuo Wang(University of Maryland, College Park), Tian Xie(Massachusetts Institute of Technology)
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