Simone-ZIT-v2.2 / README.md
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metadata
license: creativeml-openrail-m
base_model: black-forest-labs/FLUX.1-dev
tags:
  - lora
  - flux
  - ai-toolkit
  - character-style
  - person
  - z-image-turbo
datasets:
  - simone-v2

Model Card: Simone-ZIT-v2.2 (Z-Image De-Turbo)

This is a specialized character LoRA optimized for Z-Image De-Turbo (De-Distilled). Like the previous versions, it is trained as a Style, meaning the character is embedded into the model's weights without a specific trigger word.

Training Philosophy

The model focuses on high-fidelity character consistency across various environments while maintaining the speed and quality benefits of the Z-Image Turbo architecture.

Caption Strategy:

  • No Trigger Word: The character's name and defining features (hair/eye color) were omitted from captions to bake them directly into the subject weight.
  • Full Environment Decoupling: Meticulous tagging of clothing, backgrounds, and lighting ensures the character remains a constant subject while the scene remains flexible.
  • Flexible Generation: The character manifests automatically when describing a "woman" or "subject."

Usage & Prompting

Describe a woman and her surroundings. The model will automatically apply the Simone character style.

  • Example Prompt: A woman wearing a silk blouse and tailored trousers, sitting in a modern sunlit cafe.
  • LoRA Strength: Recommended 0.7 - 1.0 for character accuracy.
  • Compatibility: Best used with Z-Image Turbo/De-Turbo workflows.

Technical Specifications

Parameter Value
Trigger Word None (Trained as Style)
Model Architecture Z-Image De-Turbo (De-Distilled)
Rank (Dimension) 128
Batch Size 4 (Constant throughout training)
Precision float8
Total Steps 4000
Save Frequency Every 200 steps
Training Hardware NVIDIA H200 Tensor Core GPU
Training Toolkit Ostris - AI Toolkit

Model card generated for the Simone-ZIT series.