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27:19 The Importance of Variety Clothing, Backgrounds, Angles
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Classroom Contents
Qwen Image Models Training - 0 to Hero Level Tutorial - LoRA and Fine Tuning - Base and Edit Model
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- 1 0:00 Introduction & Tutorial Goals
- 2 0:59 Showcase: Realistic vs. Style Training GTA 5 Example
- 3 1:26 Showcase: High-Quality Product Training
- 4 1:40 Showcase: Qwen Image Edit Model Capabilities
- 5 1:57 Effort & Cost Behind The Tutorial
- 6 2:19 Introducing The Custom Training Application & Presets
- 7 3:09 Power of Qwen Models: High-Quality Results from a Small Dataset
- 8 3:58 Detailed Tutorial Outline & Chapter Flow
- 9 4:36 Part 4: Dataset Preparation Critical Section
- 10 5:05 Part 5: Monitoring Training & Performance
- 11 5:23 Part 6: Generating High-Quality Images with Presets
- 12 5:44 Part 7: Specialized Training Scenarios
- 13 6:07 Why You Should Watch The Entire Tutorial
- 14 7:15 Part 1 Begins: Finding Resources & Downloading The Zip File
- 15 7:50 Mandatory Prerequisites Python, CUDA, FFmpeg
- 16 8:30 Core Application Installation on Windows
- 17 9:47 Part 2: Downloading The Qwen Training Models
- 18 10:28 Features of The Custom Downloader Fast & Resumable
- 19 11:24 Verifying Model Downloads & Hash Check
- 20 12:41 Part 3 Begins: Starting The Application & UI Overview
- 21 13:16 Crucial First Step: Selecting & Loading a Training Preset
- 22 13:43 Understanding The Preset Structure LoRA/Fine-Tune, Epochs, Tiers
- 23 15:01 System & VRAM Preparation: Checking Your Free VRAM
- 24 16:07 How to Minimize VRAM Usage Before Training
- 25 17:06 Setting Checkpoint Save Path & Frequency
- 26 19:05 Saving Your Custom Configuration File
- 27 19:52 Part 4 Begins: Dataset Preparation Introduction
- 28 20:10 Using The Ultimate Batch Image Processing Tool
- 29 20:53 Stage 1: Auto-Cropping & Subject Focusing
- 30 23:37 Stage 2: Resizing Images to Final Training Resolution
- 31 25:49 Critical: Dataset Quality Guidelines & Best Practices
- 32 27:19 The Importance of Variety Clothing, Backgrounds, Angles
- 33 29:10 New Tool: Internal Image Pre-Processing Preview
- 34 31:21 Using The Debug Mode to See Each Processed Image
- 35 32:21 How to Structure The Dataset Folder For Training
- 36 34:31 Pointing The Trainer to Your Dataset Folder
- 37 35:19 Captioning Strategy: Why a Single Trigger Word is Best
- 38 36:30 Optional: Using The Built-in Detailed Image Captioner
- 39 39:56 Finalizing Model Paths & Settings
- 40 40:34 Setting The Base Model, VAE, and Text Encoder Paths
- 41 41:59 Training Settings: How Many Epochs Should You Use?
- 42 43:45 Part 5 Begins: Starting & Monitoring The Training
- 43 46:41 Performance Optimization: How to Improve Training Speed
- 44 48:35 Tip: Overclocking with MSI Afterburner
- 45 49:25 Part 6 Begins: Testing & Finding The Best Checkpoint
- 46 51:35 Using The Grid Generator to Compare Checkpoints
- 47 55:33 Analyzing The Comparison Grid to Find The Best Checkpoint
- 48 57:21 How to Resume an Incomplete LoRA Training
- 49 59:02 Generating Images with Your Best LoRA
- 50 1:00:21 Workflow: Generate Low-Res Previews First, Then Upscale
- 51 1:01:26 The Power of Upscaling: Before and After
- 52 1:02:08 Fixing Faces with Automatic Segmentation Inpainting
- 53 1:04:28 Manual Inpainting for Maximum Control
- 54 1:06:31 Batch Generating Images with Wildcards
- 55 1:08:49 How to Write Excellent Prompts with Google AI Studio Gemini
- 56 1:10:04 Quality Comparison: Tier 1 BF16 vs Tier 2 FP8 Scaled
- 57 1:12:10 Part 7 Begins: Fine-Tuning DreamBooth Explained
- 58 1:13:36 Converting 40GB Fine-Tuned Models to FP8 Scaled
- 59 1:15:15 Testing Fine-Tuned Checkpoints
- 60 1:16:27 Training on The Qwen Image Edit Model
- 61 1:17:39 Using The Trained Edit Model for Prompt-Based Editing
- 62 1:24:22 Advanced: Teaching The Edit Model New Commands Control Images
- 63 1:27:01 Performance Impact of Training with Control Images
- 64 1:31:41 How to Resume an Incomplete Fine-Tuning Training
- 65 1:33:08 Recap: How to Use Your Trained Models
- 66 1:35:36 Using Fine-Tuned Models in SwarmUI
- 67 1:37:16 Specialized Scenario: Style Training
- 68 1:38:20 Style Dataset Guidelines: Consistency & No Repeating Elements
- 69 1:40:25 Generating Prompts for Your Trained Style with Gemini
- 70 1:44:45 Generating Images with Your Trained Style Model
- 71 1:46:41 Specialized Scenario: Product Training
- 72 1:47:34 Product Dataset Guidelines: Proportions & Detail Shots
- 73 1:48:56 Generating Prompts for Your Trained Product with Gemini
- 74 1:50:52 Conclusion & Community Links Discord, GitHub, Reddit