PruneTrain: Fast Neural Network Training by Dynamic Sparse Model Reconfiguration

26 Jan 2019Sangkug LymEsha ChoukseSiavash ZangenehWei WenSujay SanghaviMattan Erez

State-of-the-art convolutional neural networks (CNNs) used in vision applications have large models with numerous weights. Training these models is very compute- and memory-resource intensive... (read more)

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