Z-Image-GGUF / README.md
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Duplicate from vantagewithai/Z-Image-GGUF
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metadata
license: apache-2.0
language:
  - en
pipeline_tag: text-to-image
library_name: diffusers

Quantized GGUF version of Z-Image.

Original model link: https://huggingface.co/Tongyi-MAI/Z-Image

Watch us at Youtube: @VantageWithAI

⚡️- Image
An Efficient Image Generation Foundation Model with Single-Stream Diffusion Transformer

Official Site  GitHub  Hugging Face  Hugging Face  ModelScope Model  ModelScope Space 

Welcome to the official repository for the Z-Image(造相)project!

🎨 Z-Image

Teaser asethetic diverse negative

Z-Image is the foundation model of the ⚡️- Image family, engineered for good quality, robust generative diversity, broad stylistic coverage, and precise prompt adherence. While Z-Image-Turbo is built for speed, Z-Image is a full-capacity, undistilled transformer designed to be the backbone for creators, researchers, and developers who require the highest level of creative freedom.

z-image

🌟 Key Features

  • Undistilled Foundation: As a non-distilled base model, Z-Image preserves the complete training signal. It supports full Classifier-Free Guidance (CFG), providing the precision required for complex prompt engineering and professional workflows.
  • Aesthetic Versatility: Z-Image masters a vast spectrum of visual languages—from hyper-realistic photography and cinematic digital art to intricate anime and stylized illustrations. It is the ideal engine for scenarios requiring rich, multi-dimensional expression.
  • Enhanced Output Diversity: Built for exploration, Z-Image delivers significantly higher variability in composition, facial identity, and lighting across different seeds, ensuring that multi-person scenes remain distinct and dynamic.
  • Built for Development: The ideal starting point for the community. Its non-distilled nature makes it a good base for LoRA training, structural conditioning (ControlNet) and semantic conditioning.
  • Robust Negative Control: Responds with high fidelity to negative prompting, allowing users to reliably suppress artifacts and adjust compositions.

🆚 Z-Image vs Z-Image-Turbo

Aspect Z-Image Z-Image-Turbo
CFG
Steps 28~50 8
Fintunablity
Negative Prompting
Diversity High Low
Visual Quality High Very High
RL

Recommended Parameters

  • Resolution: 512×512 to 2048×2048 (total pixel area, any aspect ratio)
  • Guidance scale: 3.0 – 5.0
  • Inference steps: 28 – 50

📜 Citation

If you find our work useful in your research, please consider citing:

@article{team2025zimage,
  title={Z-Image: An Efficient Image Generation Foundation Model with Single-Stream Diffusion Transformer},
  author={Z-Image Team},
  journal={arXiv preprint arXiv:2511.22699},
  year={2025}
}