Stable Diffusion DreamBooth Guide - Optimal Classification Images Count Comparison Test

Stable Diffusion DreamBooth Guide - Optimal Classification Images Count Comparison Test

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Summary of the experiment

38 of 39

38 of 39

Summary of the experiment

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Stable Diffusion DreamBooth Guide - Optimal Classification Images Count Comparison Test

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  1. 1 Introduction to Best Settings of DreamBooth training experiment
  2. 2 How to close initially started Web UI instance on RunPod Stable Diffusion template
  3. 3 Which RunPod machine you should pick for DreamBooth training and why
  4. 4 The used versions in this experiment such as Automatic1111 version, xformers version, DreamBooth version
  5. 5 Best DreamBooth settings for 0 classification images
  6. 6 How to continue DreamBooth training from a certain checkpoint
  7. 7 Used command line arguments for best DreamBooth training
  8. 8 Used extensions list for best DreamBooth training
  9. 9 Starting to set parameters for 0 classification images - equal to fine tuning
  10. 10 Used training dataset and what dataset features you need
  11. 11 Setting concepts tab of DreamBooth training
  12. 12 When you should use FileWords and why you should use for fine tuning and how to do fine tuning
  13. 13 Best training setup parameters for DreamBooth training when using classification images
  14. 14 How to calculate number of steps for each epoch
  15. 15 All trainings are completed
  16. 16 Comparison of sample and sanity sample images generated during training
  17. 17 Analysis of 0x classification samples
  18. 18 Analysis of 1x classification samples
  19. 19 Analysis of 2x classification samples
  20. 20 Analysis of 5x classification samples
  21. 21 Analysis of 10x classification samples
  22. 22 Analysis of 25x classification samples
  23. 23 Analysis of 50x classification samples
  24. 24 Analysis of 100x classification samples
  25. 25 Analysis of 100x classification samples
  26. 26 Comparing each checkpoint in all of the trained models
  27. 27 How to use x/y/z plot to check different training checkpoints
  28. 28 All grids are generated and how did i download them
  29. 29 Analysis of 0x classification x/y/z grid images
  30. 30 Analysis of 1x classification x/y/z grid images
  31. 31 Analysis of 2x classification x/y/z grid images
  32. 32 Analysis of 5x classification x/y/z grid images
  33. 33 Analysis of 10x classification x/y/z grid images
  34. 34 Analysis of 25x classification x/y/z grid images
  35. 35 Analysis of 50x classification x/y/z grid images
  36. 36 Analysis of 100x classification x/y/z grid images
  37. 37 Analysis of 100x classification x/y/z grid images
  38. 38 Summary of the experiment
  39. 39 Very important speech part

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