Qwen Image 2512 and 2511 Training Results - Next Level Quality with 33 ComfyUI Presets for Image and Video Generation

Qwen Image 2512 and 2511 Training Results - Next Level Quality with 33 ComfyUI Presets for Image and Video Generation

Software Engineering Courses - SE Courses via YouTube Direct link

Introduction to Qwen Image Base & 2512 Model Training Findings plus Qwen Image Edit 2509 & 2511 News

1 of 30

1 of 30

Introduction to Qwen Image Base & 2512 Model Training Findings plus Qwen Image Edit 2509 & 2511 News

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Qwen Image 2512 and 2511 Training Results - Next Level Quality with 33 ComfyUI Presets for Image and Video Generation

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Introduction to Qwen Image Base & 2512 Model Training Findings plus Qwen Image Edit 2509 & 2511 News
  2. 2 Announcement of Training Support for Qwen Image Edit Models & Upcoming Training Guide Overview
  3. 3 New FP8 Quantization Feature in SECourses Musubi Tuner & Full ComfyUI Preset Support Announcement
  4. 4 Converting All SwarmUI Presets into Drag-and-Drop ComfyUI Workflows & HTML Helper File Introduction
  5. 5 How to Use the New HTML File to Identify and Download Necessary Model Bundles via SwarmUI Downloader
  6. 6 Qwen Image Base Model Training Analysis: Observing Overfitting and Quality Degradation at 240 Epochs
  7. 7 Qwen Image 2512 Model Training Results: Massive Quality Boost & Reduced Noise Compared to Base Model
  8. 8 Showcasing New Qwen Image 2512 UHD Realism Presets Available in Both ComfyUI and SwarmUI
  9. 9 Visual Comparison: The Massive Leap in Realism Quality Between Previous Models and New 2512 Model
  10. 10 Instructions on Updating the Training Application via Bat File to Unlock New Qwen Model Support
  11. 11 Selecting Specific Model Versions in the Trainer: Text-to-Image vs Image Edit Plus 2509/2511 Variants
  12. 12 Using the Updated Model Downloader Application to Fetch New Qwen 2512 & 2511 Checkpoints Automatically
  13. 13 Wan 2.2 Training Tutorial Reference & Overview of Recently Updated High-Quality Presets for All Models
  14. 14 Training Dataset Configuration: Using Medium Quality Settings & OHWX Caption Strategy for Best Results
  15. 15 Testing Qwen Image Edit 2509 vs 2511 Models with GTA 5 Style Transfer Training on 120 and 180 Epochs
  16. 16 Analyzing GTA 5 Style Reproduction Accuracy on Both Edit Models Without Using Any Control Images
  17. 17 Style Transfer Experiment: Converting Input Image to Learned Style Using Edit Models Without Image-to-Image
  18. 18 Critical Findings on Edit Models: Lower Epoch Requirements & How Overtraining Alters Input Image Fidelity
  19. 19 Resolution Limitations for Style Transfer: Why 1328x1328 is the Optimal Sweet Spot for Editing Tasks
  20. 20 Reviewing Specific Presets Used for Qwen Image Edit Text-to-Image Generation vs Image Editing Tasks
  21. 21 How to Install and Update ComfyUI with the Latest Standalone Installer Script & Overwriting Old Files
  22. 22 Downloading Model Bundles for ComfyUI Presets Using the SwarmUI Downloader Tool & HTML Guide
  23. 23 Navigating the HTML Guide to Select Correct Model Bundles like Flux 2, Z Image Turbo or Qwen Core
  24. 24 Understanding Preset Limitations: Why Inpainting & Outpainting Workflows Require SwarmUI Editing Tab
  25. 25 Live Demonstration: Dragging and Dropping Flux SRPO Preset into ComfyUI Interface for Instant Setup
  26. 26 Configuring the Model Downloader to Target Your Specific ComfyUI Installation Path for Direct Downloads
  27. 27 Handling Potential VAE Subfolder Issues & Verifying High-Speed Downloads with 100% Hash Verification
  28. 28 Generating Images in ComfyUI: Python 3.10-3.13 Support, RTX 5000/4000/3000 Compatibility & Speed
  29. 29 Recommendation to Use SwarmUI with ComfyUI Backend for Best Experience & Access to All Features
  30. 30 Upcoming Tutorials Teaser: Trellis 2 3D Models & Video/Image Upscaler Guides Coming Soon

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.