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Implementation "Adaptive Mixture of Low-Rank Factorizations for Compact Neural Modeling" ICLR 2019

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Adaptive Mixture of Low-Rank Factorizations for Compact Neural Modeling

Implementation of "Adaptive Mixture of Low-Rank Factorizations for Compact Neural Modeling" ICLR 2019

Requires:

  • pytorch >= 0.4.1
  • torchvision >= 0.2.1
  • tensorboard >= 1.12.0
  • tensorboardX >= 1.4.0

To do list:

  • Simple Network
  • MLP MNIST
  • MobileNet CIFAR
  • MobileNet CIFAR with Low-Rank Factorization
  • Different datasets support (We need to change the architecture of network)
  • Implement more models with Low-Rank Factorizations
  • Flops measurement

Contributors

Reference

  1. "Adaptive Mixture of Low-Rank Factorizations for Compact Neural Modeling" Ting Chen, Ji Lin, Tian Lin, Song Han, Chong Wang, Dengyong Zhou, ICLR 2019

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