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    🎌 Z-Anime | Full Anime Fine-Tune on Z-Image Base

    Full Fine-Tune β€’ Rich Aesthetics β€’ Strong Diversity β€’ Full Negative Prompt Support

    BF16 & FP8 & GGUF & AIO β€’ Natural Language Prompts β€’ 8GB VRAM

    πŸ€— Now also on Hugging Face: huggingface.co/SeeSee21/Z-Anime β€” including the full Diffusers folder for ZImagePipeline.from_pretrained() use.


    ✨ What is Z-Anime?

    Z-Anime is a full fine-tune of Alibaba's Z-Image (Base) architecture β€” not a LoRA merge, but a completely retrained model optimized for anime aesthetics from the ground up.

    Built on the S3-DiT (Single-Stream Diffusion Transformer) with 6 billion parameters, Z-Anime inherits everything that makes Z-Image Base special: rich diversity, strong controllability, full negative prompt support and a high ceiling for fine-tuning β€” now fully tuned for anime.

    This page contains the complete Z-Anime family:

    • 🎌 Z-Anime Base β€” Full quality, full control, full creativity

    • ⚑ Z-Anime Distill-8-Step β€” Great results in 8 steps

    • πŸš€ Z-Anime Distill-4-Step β€” Maximum speed, 4 steps

    • πŸ“¦ GGUF Variants β€” Q8_0 + Q4_K_S for low VRAM / CPU / AMD

    • πŸ“¦ AIO Variants β€” All-in-one checkpoints (Base + 4-Step + 8-Step)

    Each main variant is available in BF16 (~12 GB) and FP8 (~6 GB).


    🎯 Key Features

    • βœ… Full fine-tune on Z-Image Base β€” not a LoRA merge

    • βœ… Rich anime aesthetics with strong style diversity

    • βœ… Natural language prompts β€” detailed descriptions, not tag lists

    • βœ… High diversity across characters, poses, compositions and layouts

    • βœ… LoRA training ready β€” perfect base for further fine-tuning

    • βœ… Partially NSFW capable

    • βœ… 8 GB VRAM compatible

    • βœ… All variants supported by the official Z-Anime ComfyUI Workflow


    πŸ—ΊοΈ Z-Anime Roadmap

    βœ… Released

    🎌 Z-Anime Base β€” Full fine-tune on Z-Image Base, BF16 & FP8

    ⚑ Z-Anime Distill-8-Step β€” fast anime generation in 8 steps, CFG 1.0, BF16 & FP8

    πŸš€ Z-Anime Distill-4-Step β€” ultra-fast anime generation in 4 steps, CFG 1.0, BF16 & FP8

    πŸ“¦ GGUF Variants β€” for low VRAM and AMD GPUs. Since CivitAI currently has no dedicated GGUF category, here is what the files represent:

    • Z-Anime-Base-Q8_0 = Pruned Model FP8 (6.73 GB)

    • Z-Anime-Base-Q4_K_S = Pruned Model NF4 (4.2 GB)

    πŸ“¦ AIO Versions β€” All variants with VAE + Text Encoder integrated in a single file:

    • z-anime-base-aio (BF16 + FP8)

    • z-anime-distill-8step-aio (BF16 + FP8)

    • z-anime-distill-4step-aio (BF16 + FP8)

    πŸ”§ Z-Anime ComfyUI Workflow β€” Official workflow, supports all variants (auto-detects Diffusion / GGUF / AIO loaders, optional LoRA, optional 1.5Γ— upscale)

    πŸ€— Hugging Face Repo β€” full mirror including the Diffusers folder for Python users: huggingface.co/SeeSee21/Z-Anime

    More updates coming β€” follow to stay notified! 🎌


    πŸ“¦ Versions Overview

    🟒 BF16 (~12 GB)

    Maximum precision. BFloat16 format, no quality compromise. Best for professional or commercial work and LoRA training. Still runs on 8 GB VRAM.

    🟑 FP8 (~6 GB)

    Recommended for most users. Half the file size, much faster downloads. Excellent quality, barely distinguishable from BF16. Perfect for everyday use and testing.

    πŸ”΅ GGUF

    Optimized for lightweight inference setups, especially useful for low VRAM, CPU inference, or alternative backends.

    🟣 AIO

    All-in-one checkpoints with image model + Text Encoder + VAE integrated into a single file. Single-file convenience, no extra loaders needed.


    🎌 Z-Anime Base

    The foundation of the Z-Anime family. A full fine-tune with the highest quality ceiling, the widest creative range and full negative prompt support.

    Recommended Settings:

    Steps:      28–50
    CFG:        3.0–5.0  (up to 9.0 possible)
    Sampler:    euler_ancestral
    Scheduler:  beta
    Negative:   strongly recommended β€” very responsive!
    

    CFG Guide: 3.0–5.0 is the sweet spot for balanced quality and creativity. 5.0–7.0 gives tighter prompt adherence. 7.0–9.0 is for maximum control β€” watch for over-saturation. Above 9.0 is not recommended.

    Negative prompts have full effect on Z-Anime Base. The official workflow ships with an optimized negative prompt ready to use.


    ⚑ Z-Anime Distill-8-Step

    The sweet spot of the family. Distilled from Z-Anime Base, delivering strong anime results in just 8 steps. Much faster than Base while keeping most of the quality intact.

    Recommended Settings:

    Steps:      8
    CFG:        1.0  (max ~1.5)
    Sampler:    euler_ancestral
    Scheduler:  beta
    Negative:   limited effect
    

    CFG Guide: Runs best at CFG 1.0 by design. Small nudges up to 1.3–1.5 are possible for slightly tighter prompt adherence. Do not go above 1.5 β€” artifacts may appear.

    Negative prompts have limited effect at this distillation level. Use ConditioningZeroOut (included in the workflow) instead of writing a full negative prompt.


    πŸš€ Z-Anime Distill-4-Step

    The fastest Z-Anime variant. Built for maximum throughput β€” rapid prototyping, batch generation and situations where speed matters most.

    Recommended Settings:

    Steps:      4
    CFG:        1.0  (max ~1.5)
    Sampler:    euler_ancestral
    Scheduler:  beta
    Negative:   limited effect
    

    CFG Guide: At 4 steps the model has very little correction room. Stay at CFG 1.0 for the most stable results. Nudging up to 1.3–1.5 is possible but increases instability. Do not go above 1.5.

    Tips for 4-Step: Be specific and front-load the most important details early in your prompt. The optional upscaler (hires fix or SeedVR2) in the workflow is especially useful here to recover fine detail.


    πŸ“ Resolution Guide

    | Use Case | Resolution | |---|---| | ⭐ Portrait / Character art | 832 Γ— 1216 | | Landscape / Scenes / Backgrounds | 1216 Γ— 832 | | Square / General purpose | 1024 Γ— 1024 | | Tall / Full body / Phone wallpaper | 768 Γ— 1344 | | Cinematic / Wide scenes | 1920 Γ— 1088 | | High quality / Detailed portraits | 1024 Γ— 1536 |

    Supported range: 512 Γ— 512 to 2048 Γ— 2048, any aspect ratio. All resolutions run on 8 GB VRAM.


    πŸ’‘ Prompting Guide

    Natural language β€” not tag lists!

    βœ… Good

    A young anime girl with long silver hair and golden eyes, wearing a
    traditional shrine maiden outfit with white haori and red hakama.
    She stands in a sunlit bamboo forest, cherry blossoms falling softly
    around her. Warm afternoon light filtering through the trees,
    detailed fabric shading, expressive face, calm serene expression.
    High quality anime illustration with fine line work.
    

    ❌ Avoid

    anime girl, silver hair, shrine maiden, bamboo, cherry blossom, warm light
    

    Character portraits

    Detailed anime portrait of [character], soft rim lighting,
    expressive eyes with detailed reflections, fine hair strands,
    clean linework, professional anime illustration quality.
    

    Action scenes

    Dynamic anime [scene], dramatic angle, motion energy, speed lines,
    particle effects, cinematic composition, detailed shading,
    high quality anime art.
    

    Backgrounds & landscapes

    Anime [location] at [time of day], [lighting], [atmosphere],
    Studio Ghibli inspired detail level, beautiful background art,
    wallpaper quality.
    

    πŸ”§ Installation

    Step 1 β€” Download your version (BF16, FP8, GGUF or AIO) for the variant you want.

    Step 2 β€” Place the files:

    Standard BF16 / FP8 models:

    ComfyUI/models/diffusion_models/
    β”œβ”€β”€ z-anime-base-bf16.safetensors
    β”œβ”€β”€ z-anime-base-fp8.safetensors
    β”œβ”€β”€ z-anime-distill-8step-bf16.safetensors
    β”œβ”€β”€ z-anime-distill-8step-fp8.safetensors
    β”œβ”€β”€ z-anime-distill-4step-bf16.safetensors
    └── z-anime-distill-4step-fp8.safetensors
    

    GGUF variants:

    ComfyUI/models/unet/
    β”œβ”€β”€ z-anime-base-q8_0.gguf
    └── z-anime-base-q4_k_s.gguf
    

    Text Encoder & VAE (for the non-AIO variants):

    ComfyUI/models/clip/
    └── qwen_3_4b.safetensors
    
    ComfyUI/models/vae/
    └── ae.safetensors
    

    AIO variants β€” single file, no extras needed:

    ComfyUI/models/checkpoints/
    β”œβ”€β”€ z-anime-base-aio-bf16.safetensors
    β”œβ”€β”€ z-anime-base-aio-fp8.safetensors
    β”œβ”€β”€ z-anime-distill-8step-aio-bf16.safetensors
    β”œβ”€β”€ z-anime-distill-8step-aio-fp8.safetensors
    β”œβ”€β”€ z-anime-distill-4step-aio-bf16.safetensors
    └── z-anime-distill-4step-aio-fp8.safetensors
    

    Step 3 β€” Load in ComfyUI:

    • Use the Load Diffusion Model node for the model file, a CLIPLoader for the text encoder and a VAELoader for the VAE.

    • For the GGUF versions: load the GGUF model from the models/unet/ folder, use the same CLIP and VAE files as above.

    • For the AIO versions: just use a standard Checkpoint Loader β€” no extra CLIP or VAE loading required.

    • Or use the official Z-Anime ComfyUI Workflow β€” it handles all variants and precisions with a built-in model switch.


    πŸ“¦ Custom Nodes (for the official workflow)

    • rgthree-comfy

    • ComfyUI-Lora-Manager

    • ComfyUI-GGUF (only for the GGUF variants)

    • ComfyUI-SeedVR2_VideoUpscaler (optional, only for SeedVR2 upscale)


    πŸ€— Hugging Face Repo

    The complete model family is also mirrored on Hugging Face:

    πŸ”— huggingface.co/SeeSee21/Z-Anime

    The HF repo additionally contains:

    • The full Diffusers-format folder (diffusers/) β€” drop-in compatible with ZImagePipeline.from_pretrained() for Python users

    • An alternative Text Encoder by BennyDaBall β€” Engineer V4 (full fine-tune of the Z-Image text encoder with SMART training, drop-in compatible β€” often produces more varied outputs from the same seed)


    πŸ“ˆ Version History

    v1.0 β€” Initial Release

    • Z-Anime Base in BF16 & FP8

    • Z-Anime Distill-8-Step in BF16 & FP8

    • Z-Anime Distill-4-Step in BF16 & FP8

    • GGUF Variants added:

      • Z-Anime-Base-Q8_0 = pruned FP8 model (6.73 GB)

      • Z-Anime-Base-Q4_K_S = pruned Q4_K_S / NF4-style model (4.2 GB)

    • AIO Variants added (all 6):

      • z-anime-base-aio-bf16 / -fp8

      • z-anime-distill-8step-aio-bf16 / -fp8

      • z-anime-distill-4step-aio-bf16 / -fp8

    • Official ComfyUI Workflow included β€” supports all variants

    • Hugging Face mirror with full Diffusers folder for Python users

    • Optimized for euler_ancestral + beta, simple practical use across the family


    πŸ™ Credits


    Z-Anime β€” Anime at its finest, powered by Z-Image Base. 🎌

    Description

    πŸ“¦ GGUF Variants

    Now available for low VRAM and AMD GPUs

    Since CivitAI currently has no dedicated GGUF category, here is what the files represent:

    * Z-Anime-Base-Q8_0 = Pruned Model FP8 (**6.73 GB**)

    * Z-Anime-Base-Q4_K_S = Pruned Model NF4 (**4.2 GB**)

    FAQ

    Checkpoint
    ZImageBase

    Details

    Downloads
    146
    Platform
    CivitAI
    Platform Status
    Available
    Created
    4/11/2026
    Updated
    4/27/2026
    Deleted
    -

    Files

    zAnime_baseGGUF.gguf

    Mirrors

    CivitAI (1 mirrors)

    zAnime_baseGGUF.gguf

    Mirrors

    CivitAI (1 mirrors)