import torch
from diffusers import DiffusionPipeline
# switch to "mps" for apple devices
pipe = DiffusionPipeline.from_pretrained("RunDiffusion/Juggernaut-Z-Image", dtype=torch.bfloat16, device_map="cuda")
prompt = "Astronaut in a jungle, cold color palette, muted colors, detailed, 8k"
image = pipe(prompt).images[0]
Juggernaut Z by RunDiffusion
A cinematic fine-tune of Z-Image Base β tuned for presentation-ready output.
Juggernaut Z is a fine-tune of Z-Image Base by Team Juggernaut, trained by KandooAI, and released through RunDiffusion. It is tuned for stronger lighting, sharper focus, more refined skin texture, and more cinematic atmosphere β out of the box.
This repository hosts the official RunDiffusion release artifacts: full-precision weights, FP16 and FP8 variants, and a full set of GGUF quantizations.
Highlights
- More dramatic, cinematic lighting out of the box
- Sharper focus and a more deliberate camera feel
- Cleaner portraits with more natural skin texture
- Improved anatomy and structural integrity
- Better representation across ethnicities by default
- Tuned for editorial, concept, and cinematic work
Comparisons
All sets below show Juggernaut Z (left) vs Z-Image Base (right). Source: the RunDiffusion Juggernaut Z announcement.
Lighting
More dramatic, cinematic lighting out of the box.
Skin & Texture
Cleaner, more natural-looking skin β especially in close-up portraits.
Anatomy
Cleaner anatomy and more consistent structural detail across a wide range of subjects.
Composition
Improved subject and object placement within scenes, with further work planned for v2.
Diversity
More balanced results across ethnic backgrounds, with better representation by default.
Architecture
Cleaner structural lines and more coherent material rendering.
Recommended Settings
| Parameter | Default | Range |
|---|---|---|
| CFG | 6 |
6 β 9 |
| Steps | 35 |
25 β 45 |
Good Fit For
- Portraits with cleaner facial detail and stronger focus
- Cinematic scenes with strong lighting and atmosphere
- Concept development and visual exploration
- Editorial and fashion work that benefits from a polished finish
Files In This Repo
| File | Format | Notes |
|---|---|---|
Juggernaut_Z_V1_by_RunDiffusion.safetensors |
safetensors (bf16) | Original release weights |
Juggernaut_Z_V1_by_RunDiffusion_fp16.safetensors |
safetensors (fp16) | Half-precision |
Juggernaut_Z_V1_FP8_e4m3fn.safetensors |
safetensors (fp8 e4m3fn) | Lower VRAM footprint |
Juggernaut_Z_V1_by_RunDiffusion_q8_0.gguf |
GGUF Β· q8_0 | Highest-quality quant |
Juggernaut_Z_V1_by_RunDiffusion_q6_k-004.gguf |
GGUF Β· q6_k | |
Juggernaut_Z_V1_by_RunDiffusion_q5_k_m-003.gguf |
GGUF Β· q5_k_m | |
Juggernaut_Z_V1_by_RunDiffusion_q5_k_s-005.gguf |
GGUF Β· q5_k_s | |
Juggernaut_Z_V1_by_RunDiffusion_q4_k_m-002.gguf |
GGUF Β· q4_k_m | |
Juggernaut_Z_V1_by_RunDiffusion_q4_k_s-001.gguf |
GGUF Β· q4_k_s | Smallest footprint |
diffusers/ (subfolder) |
π€ Diffusers format | Load with DiffusionPipeline.from_pretrained(..., subfolder="diffusers") |
Use the .safetensors variants with the workflow that matches your local inference stack. Use the .gguf variants with a GGUF-compatible runtime. Use the diffusers/ subfolder with the π€ Diffusers library β see below.
Use with π€ Diffusers
The diffusers/ subfolder contains the model in standard π€ Diffusers format (ZImagePipeline) and can be loaded directly:
from diffusers import DiffusionPipeline
import torch
pipe = DiffusionPipeline.from_pretrained(
"RunDiffusion/Juggernaut-Z-Image",
subfolder="diffusers",
torch_dtype=torch.bfloat16,
).to("cuda")
image = pipe(
"a cinematic portrait, dramatic lighting",
guidance_scale=6.0,
num_inference_steps=35,
).images[0]
image.save("output.png")
Requires a version of diffusers that includes ZImagePipeline support (the format was exported against diffusers 0.37.1). Commercial use of the model and its outputs is restricted under CC BY-NC 4.0 β see License & Commercial Use below.
Links
- Run Juggernaut Z on RunDiffusion β rundiffusion.com/juggernaut-z
- Prompt guide β Juggernaut Z Prompt Guide
- Base model β Tongyi-MAI/Z-Image
Attribution
Juggernaut Z is built on Z-Image Base β credit for the upstream base model belongs to the Z-Image team. This fine-tuned release is by Team Juggernaut, with training by KandooAI, published by RunDiffusion.
License & Commercial Use
Juggernaut Z is released under CC BY-NC 4.0:
- BY β attribute RunDiffusion / Team Juggernaut / KandooAI when sharing output.
- NC β non-commercial use only. You may not use the model β or its outputs in a workflow β for commercial purposes without a license.
You are free to fine-tune, merge, build LoRAs, and otherwise modify the model for non-commercial purposes.
For commercial licensing, custom models, business inquiries, or consultation, contact juggernaut@rundiffusion.com.
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