Client Side Deep Learning Optimization with PyTorch

Client Side Deep Learning Optimization with PyTorch

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Running Arbitrary Models

13 of 22

13 of 22

Running Arbitrary Models

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Client Side Deep Learning Optimization with PyTorch

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  1. 1 Intro
  2. 2 Who are we?
  3. 3 Why PyTorch?
  4. 4 Advantages of Eager Execution
  5. 5 Optimization necessitates looking under the hood
  6. 6 Axes of Optimization
  7. 7 Production Considerations
  8. 8 Scripting Handes control flow and other arbitrary
  9. 9 Scripting + Tracing
  10. 10 Intermediate Representations in Pytorch
  11. 11 Running in C++
  12. 12 Speed tips
  13. 13 Running Arbitrary Models
  14. 14 Lite Interpreter
  15. 15 What is Quantization?
  16. 16 Quantization in PyTorch
  17. 17 Eager Mode Quantization
  18. 18 Dynamk Quantization
  19. 19 Quantized Aware Training
  20. 20 Experimental Results
  21. 21 Channel Last Format
  22. 22 Addendum

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