A Review of Compression Methods for Deep Convolutional Neural Networks

A Review of Compression Methods for Deep Convolutional Neural Networks

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Introduction

1 of 27

1 of 27

Introduction

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Classroom Contents

A Review of Compression Methods for Deep Convolutional Neural Networks

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  1. 1 Introduction
  2. 2 Outline
  3. 3 Deep Learning
  4. 4 Problems with Deep Learning
  5. 5 Data Centers and Deep Learning
  6. 6 Layers
  7. 7 Data Sets
  8. 8 Questions
  9. 9 Architectures
  10. 10 Number of operations
  11. 11 Convolutional layers
  12. 12 Comparison of architectures
  13. 13 Comparing architectures
  14. 14 Retraining feature maps
  15. 15 Quantizing parameters
  16. 16 Quantization experiment
  17. 17 Flops rate
  18. 18 Compensation during training
  19. 19 Quantization during training
  20. 20 Quantization for precision
  21. 21 Results
  22. 22 Shift Attention Layers
  23. 23 Clustering weights
  24. 24 Energy consumption
  25. 25 Summary
  26. 26 Conclusion
  27. 27 Questions and Recap

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