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N3LDG: A Lightweight Neural Network Library for Natural Language Processing
WANG Qiansheng, YU Nan, ZHANG Meishan, HAN Zijia, FU Guohong
Acta Scientiarum Naturalium Universitatis Pekinensis    2019, 55 (1): 113-119.   DOI: 10.13209/j.0479-8023.2018.065
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The authors propose a neural network library N3LDG for natural language processing. N3LDG supports constructing computation graphs dynamically, and organizing executions into batches automatically. Experiments show that N3LDG can efficiently construct and execute computation graphs when training CNN, Bi-LSTM, and Tree-LSTM. When using CPU to train above models, the training speed of N3LDG is better than that of PyTorch. When using GPU to train CNN and Tree-LSTM, N3LDG is better than PyTorch.

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