800-Gbit/s/carrier TPS-64QAM WDM Coherent Transmission over 2,400 km Utilizing Low-complexity Separated Pruning DNN-based Nonlinear Equalization
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Bo Liu | Z. Dong | Wen Zhou | Li Zhao | Miao Kong | Kaihui Wang | Yuxuan Tan | Jianjun Yu | Bohan Sang | Bing Ye | X. Xin | Weizhang Chen
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