An improved tandem neural network for the inverse design of nanophotonics devices
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Xiaopeng Xu | Chonglei Sun | Yu Li | Jia Zhao | Junlei Han | Wei-Ping Huang | Jia Zhao | Yu Li | Weiping Huang | Chonglei Sun | Xiaopeng Xu | Junlei Han
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