Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

YouTube

Stable Diffusion DreamBooth Guide - Optimal Classification Images Count Comparison Test

Software Engineering Courses - SE Courses via YouTube

Overview

This course introduces the best settings for DreamBooth training experiment. You will learn how to close Web UI instance on RunPod stable diffusion template, which RunPod machine you should pick for DreamBooth training and why, and the used versions including Automatic1111 version, xformers version, DreamBooth version. You will also become familiar with best DreamBooth settings for 0 classification images, used command line arguments, used extension list and how to continue DreamBooth training from the particular checkpoint. Furthermore, tutorial will cover starting to set parameters, best training setup parameters, calculation of number of steps for each epoch, comparing sample and sanity sample images, analysis of different classification samples and grids, usage of x/y/z plot to check different training checkpoints, and much more. Finally, course will provide summary of the experiment and important speech part.

Syllabus

Introduction to Best Settings of DreamBooth training experiment
How to close initially started Web UI instance on RunPod Stable Diffusion template
Which RunPod machine you should pick for DreamBooth training and why
The used versions in this experiment such as Automatic1111 version, xformers version, DreamBooth version
Best DreamBooth settings for 0 classification images
How to continue DreamBooth training from a certain checkpoint
Used command line arguments for best DreamBooth training
Used extensions list for best DreamBooth training
Starting to set parameters for 0 classification images - equal to fine tuning
Used training dataset and what dataset features you need
Setting concepts tab of DreamBooth training
When you should use FileWords and why you should use for fine tuning and how to do fine tuning
Best training setup parameters for DreamBooth training when using classification images
How to calculate number of steps for each epoch
All trainings are completed
Comparison of sample and sanity sample images generated during training
Analysis of 0x classification samples
Analysis of 1x classification samples
Analysis of 2x classification samples
Analysis of 5x classification samples
Analysis of 10x classification samples
Analysis of 25x classification samples
Analysis of 50x classification samples
Analysis of 100x classification samples
Analysis of 100x classification samples
Comparing each checkpoint in all of the trained models
How to use x/y/z plot to check different training checkpoints
All grids are generated and how did i download them
Analysis of 0x classification x/y/z grid images
Analysis of 1x classification x/y/z grid images
Analysis of 2x classification x/y/z grid images
Analysis of 5x classification x/y/z grid images
Analysis of 10x classification x/y/z grid images
Analysis of 25x classification x/y/z grid images
Analysis of 50x classification x/y/z grid images
Analysis of 100x classification x/y/z grid images
Analysis of 100x classification x/y/z grid images
Summary of the experiment
Very important speech part

Taught by

Software Engineering Courses - SE Courses

Reviews

Start your review of Stable Diffusion DreamBooth Guide - Optimal Classification Images Count Comparison Test

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.