Z-Image-Turbo_clear
About this model
Z-Image-Turbo_clear
Guide (External site): English | Japanese
Hugging Face
VAE: Z-Image_clear_vae
Compare to Z-Image-Turbo (Original)
Z-Image-Turbo_clear | Z-Image-Turbo
The Z-Image-Turbo_clear model is a fine-tuned version of Z-Image-Turbo that improves details compared to the original.
For better results, please use it with the dedicated VAE, Z-Image_clear_vae.
Which Precision Should I Use?
+----------+------+----------+----------+--------------------+-----------+
| Format | Sign | Exponent | Mantissa | Significant Digits | Precision |
+----------+------+----------+----------+--------------------+-----------+
| FP32 | 1bit | 8bit | 23bit | 7–8 digits | ✅ |
| BF16 | 1bit | 8bit | 7bit | 2–3 digits | 👍 |
| FP16 | 1bit | 5bit | 10bit | 3–4 digits | 👍 |
| FP8(e5m2)| 1bit | 5bit | 2bit | 1–2 digits | ⚠️ |
| FP8(e4m3)| 1bit | 4bit | 3bit | 1–2 digits | ⚠️ |
+----------+------+----------+----------+--------------------+-----------+Exponent: Stability
Mantissa: Quality
Anime Illustration Comparison
Hand Close-up
FP32: Highest precision, high VRAM usage
BF16: Most popular in Z-Image-Turbo model, good for LoRA compatibility
FP16: Slightly better precision than BF16, less performance degradation on pre-RTX 2000 or non-NVIDIA GPUs
FP8(e4m3): Lower precision, low VRAM usage, accelerated on RTX 4000 series and later
If you are unsure which precision to use, it is safest to choose the BF16 format.
Recomended Settings
Sampler:
euler
res_multistep
Scheduler: beta
Steps: 9
ModelSamplingAuraFlow: shift 7.5 (3-9)
Upscaler
your choice, examples:
4x-SwinIR-L_GAN
4x_NMKD-Superscale-SP_178000_G
Tips (External Sites)
ComfyUI VRAM management: English | Japanese
Steps and Scheduler: English | Japanese
Color Correct custom nodes in ComfyUI: English | Japanese
License
Apache-2.0
Related Models
Similar AI models you may like
Juggernaut XL
Pony Diffusion V6 XL
CyberRealistic Pony
CyberRealistic
epiCRealism XL
Nova Anime XL
Realism By Stable Yogi (Pony)