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Classroom Contents
How to Do Stable Diffusion LORA Training by Using Web UI on Different Models
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- 1 Introduction speech
- 2 How to install the LoRA extension to the Stable Diffusion Web UI
- 3 Preparation of training set images by properly sized cropping
- 4 How to crop images using Paint .NET, an open-source image editing software
- 5 What is Low-Rank Adaptation LoRA
- 6 Starting preparation for training using the DreamBooth tab - LoRA
- 7 Explanation of all training parameters, settings, and options
- 8 How many training steps equal one epoch
- 9 Save checkpoints frequency
- 10 Save a preview of training images after certain steps or epochs
- 11 What is batch size in training settings
- 12 Where to set LoRA training in SD Web UI
- 13 Explanation of Concepts tab in training section of SD Web UI
- 14 How to set the path for training images
- 15 Classification Dataset Directory
- 16 Training prompt - how to set what to teach the model
- 17 What is Class and Sample Image Prompt in SD training
- 18 What is Image Generation settings and why we need classification image generation in SD training
- 19 Starting the training process
- 20 How and why to tune your Class Prompt generating generic training images
- 21 Why we generate regularization generic images by class prompt
- 22 Recap of the setting up process for training parameters, options, and settings
- 23 How much GPU, CPU, and RAM the class regularization image generation uses
- 24 Training process starts after class image generation completed
- 25 Displaying the generated class regularization images folder for SD 2.1
- 26 The speed of the training process - how many seconds per iteration on an RTX 3060 GPU
- 27 Where LoRA training checkpoints weights are saved
- 28 Where training preview images are saved and our first training preview image
- 29 When we will decide to stop training
- 30 How to resume training after training has crashed or you close it down
- 31 Lifetime vs. session training steps
- 32 After 30 epochs, resembling images start to appear in the preview folder
- 33 The command line printed messages are incorrect in some cases
- 34 Training step speed, a certain number of seconds per iteration IT
- 35 How I'm picking a checkpoint to generate a full model .ckpt file
- 36 How to generate a full model .ckpt file from a LoRA checkpoint .pt file
- 37 Generated/saved file name is incorrect, but it is generated from the correct selected .pt file
- 38 Doing inference generating new images using the text2img tab with our newly trained and generated model
- 39 The results of SD 2.1 Version 768 pixel model after training with the LoRA method and teaching a human face
- 40 Setting up the training parameters/options for SD version 1.5 this time
- 41 Re-generating class regularization images since SD 1.5 uses 512 pixel resolution
- 42 Displaying the generated class regularization images folder for SD 1.5
- 43 Training of Stable Diffusion 1.5 using the LoRA methodology and teaching a face has been completed and the results are displayed
- 44 The inference text2img results with SD 1.5 training
- 45 You have to do more inference with LoRA since it has less precision than DreamBooth
- 46 How to give more attention/emphasis to certain keywords in the SD Web UI
- 47 How to generate more than 100 images
- 48 How to check PNG info to see used prompts and settings
- 49 How to upscale using AI models
- 50 Fixing face image quality, especially eyes, with GFPGAN visibility
- 51 How to batch post-process
- 52 Where batch-generated images are saved