A comprehensive and fair comparison of two neural operators (with practical extensions) based on FAIR data
Lu Lu(Massachusetts Institute of Technology), George Em Karniadakis(Brown University), Somdatta Goswami(John Brown University), Xuhui Meng(John Brown University), Zhiping Mao(Xiamen University), Zhongqiang Zhang(Worcester Polytechnic Institute), Shengze Cai(ZheJiang Institute For Food and Drug Control)
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