Artificial Intelligence for Science in Quantum, Atomistic, and Continuum Systems
Xuan Zhang(Hebei North University), Stefano Ermon, Ameya Daigavane, Yuanqi Du(Microsoft (United States)), Aria Mansouri Tehrani, Carl N. Edwards, Michael M. Bronstein(University of Oxford), Anima Anandkumar(California Institute of Technology), Nicholas Gao, Minkai Xu, Hongyi Ling, Shenglong Xu, Simon V. Mathis, Youzhi Luo, Kamyar Azizzadenesheli, Chaitanya K. Joshi, Keqiang Yan, Elyssa F. Hofgard, Qian Huang, Adriana Ladera, Keir Adams, Hannah R. Lawrence, Xiang Fu, Alán Aspuru‐Guzik(Harvard University), Shurui Gui(Texas A&M University), Marinka Žitnik(Broad Institute), Xiner Li, H. Stärk, Alex Strasser, Maurice Weiler, Jacob Helwig, Jerry Kurtin, Rui Wang, Montgomery Bohde, Yi Liu(Jilin University), Yucheng Wang, Xu Zhao(Texas A&M University), Meng Liu, Limei Wang, Yuchao Lin, Yuqing Xie, Yaochen Xie(Texas A&M University), Haiyang Yu(Beihang University), Tailin Wu, Ada Fang, Alexandra Saxton, Cong Fu, Erik J. Bekkers(Eindhoven University of Technology), Tuong Phung, Tianfan Fu(Georgia Institute of Technology)
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