Flux.1-Dev-Realtime-Toon-Mix

Maintained By
prithivMLmods

Flux.1-Dev-Realtime-Toon-Mix

PropertyValue
LicenseCreativeML OpenRAIL-M
Base Modelblack-forest-labs/FLUX.1-dev
Training Images29
Network ArchitectureLoRA (64 dimensions, 32 alpha)

What is Flux.1-Dev-Realtime-Toon-Mix?

Flux.1-Dev-Realtime-Toon-Mix is a specialized LoRA model designed for generating toon-style images. Built on the FLUX.1-dev base model, it implements a carefully tuned architecture optimized for artistic renditions with a distinct cartoon aesthetic. The model is currently in training phase, utilizing a dataset of 29 images with comprehensive English natural language labeling.

Implementation Details

The model employs advanced training parameters including AdamW optimizer with constant learning rate scheduling, featuring a noise offset of 0.03 and multires noise iterations set to 10. The training process spans 15 epochs with checkpoints saved every epoch, utilizing 2900 steps with 17 repeats.

  • Network Configuration: 64 dimensions with 32 alpha
  • Optimal Dimensions: 768x1024 (Best) and 1024x1024 (Default)
  • Noise Parameters: 0.03 offset with 0.1 discount
  • Training Duration: 15 epochs with regular checkpointing

Core Capabilities

  • Toon-style image generation with consistent aesthetic
  • Support for diverse character poses and scenes
  • Optimal performance at 768x1024 resolution
  • Seamless integration with FLUX.1-dev pipeline

Frequently Asked Questions

Q: What makes this model unique?

The model combines specialized toon-style generation with real-time capabilities, utilizing a carefully curated training dataset and optimized hyperparameters for consistent results.

Q: What are the recommended use cases?

This model excels at generating toon-style character illustrations, particularly effective for creating stylized portraits and scene compositions when using the trigger word "toon mix".

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