--- base_model: - Tongyi-MAI/Z-Image base_model_relation: finetune frameworks: PyTorch language: - en - zh license: apache-2.0 pipeline_tag: text-to-image tasks: - text-to-image-synthesis tags: - Z --- ## ZImage DPO “AGILE” Now Uploading 08/03/2026 女神节祝福🌸 On this Day, may every woman feel the strength, grace, and boundless potential that lives within her. Thank you for your courage, your kindness, your resilience, and the countless ways you make the world brighter and better. Here's to equality, empowerment, joy, and endless possibilities—today and every day. Happy International Women's Day🌸 **ZIDistilled FUN “AGILE” Now Released** Special thanks to the VideoXFUN team for releasing the groundbreaking **Zimage Distilled Adapter 2603**. By incorporating this latest update, **AGILE** achieves a refined balance between speed, diversity, and visual richness — unlocking more creative freedom while maintaining exceptional efficiency.  --- **Agility in Motion, Diversity in Depth** The brand-new ZImage FUN “AGILE” is built upon the cutting-edge **ZIB acceleration framework**. We deliberately reduced DPO & Distilled weight to preserve greater stochastic freedom, combined with the most recent training datasets, resulting in dramatically increased output variety, richer content details, and more imaginative compositions without sacrificing core stability. For the first time, **AGILE** reaches a true quality parity challenge against the flagship **“ZImage TURBO”** in terms of overall image fidelity and sharpness — even in complex scenes — while delivering faster iteration and superior responsiveness. **Key highlights:** - **True ZIT-level unlocked:** Photorealistic lighting, textures, and material rendering that now rivals or approaches ZImage TURBO quality, even at standard step counts. - **Enhanced diversity & content richness:** **DPO + Newest datasets** = more varied poses, styles, atmospheres, intricate details, and unexpected creative sparks in every generation. - **ZIB ecosystem ignition:** Exceptional native compatibility with **ZIB-series LoRAs**; your existing and future LoRAs now align faster, reproduce more faithfully, and shine brighter than ever before — officially kicking off the full **ZIB LoRA era**. - **Agile workflows:** Seamless hybrid use with **Klein 9B** for refinement, ensemble boosting, or rapid prototyping; near-instant LoRA response with preserved high-entropy creativity. Every generation is a step toward freer, bolder imagination. --- ## Z-Image-Distilled DPO “Veris” 02/26/2026 **ZImage DPO** “**Veris**” Now Released Special thanks to [@Fok](https://huggingface.co/F16/z-image-turbo-flow-dpo) for providing the **Flow-DPO technical adaptation**. By skillfully integrating the training philosophy of Direct Preference Optimization (DPO) into the distillation weights, the Zimage distilled model achieves a major leap in lighting, color fidelity, and material authenticity — more natural light & shadow, more believable colors, and details that hold up under scrutiny. 特别感谢 [@Fok](https://huggingface.co/F16/z-image-turbo-flow-dpo) 饼儿佬提供了**Flow-DPO**技术适配。通过巧妙地将直接偏好优化(DPO)的技术理念融入蒸馏权重,Zimage 蒸馏模型在光照、色彩保真度和材质真实性方面实现了重大飞跃——更自然的光影效果、更逼真的色彩,以及经得起仔细审查的细节。  **more case** in: RedCraft | 红潮 | RedZDX⚡️Distilled [[Civitai](https://civitai.com/models/958009) ] --- The following example shows a comparison between ZIT and Flow DPO, intended to illustrate the effect of DPO, rather than a direct demonstration of ZIB Distilled   --- **Speed of Truth, Fidelity of Flow** **真实且极速,用忠诚在流动** The all-new **ZI DPO “Veris”** is powered by the latest-generation ZIB acceleration engine. Building on the **RedZDX** training data, we further distilled a more efficient, more refined Zimage-based model. Now — solid, highly realistic generations in just 8 steps.(**Better LoRAs alignment**) 仅需8步即可生成更有层次感、高度逼真的图像。(**LoRa对齐效果更佳**) --- **Key highlights**: Realism-first prototyping — near-zero latency for LoRAs, with lighting and color already very close to final training targets High-entropy stochastic pre-sampling — delivers fast, high-quality realistic initial noise for ZImage pipelines Hybrid realism workflows — seamless integration with Klein 9B for cascaded refinement or ensemble boosting, pushing visual fidelity and consistency even higher **Every step toward truth deserves full commitment.** --- 欢迎体验 **ZI DPO “Veris”** ——您的LoRa训练结果不再只是“相似”,而是真正得到“复现”。 Welcome to experience **ZImage DPO “Veris”** — where your LoRAs generations are no longer just “**similar**”, but **truly are**. 同时,欢迎体验在 **ZImage** 或 **Turbo** 模型上直接加载 **DPO LoRA Adapter**: 抱脸(HF) https://huggingface.co/F16/z-image-turbo-flow-dpo 魔搭(境内) https://modelscope.cn/models/FFFFFFoo/z-image-turbo-flow-dpo --- ## Z-Image-Distilled V3 🟥 Distilled LoRA Adapter 02/19/2026 Additionally, I've exported Redcraft DX3 ZIB Distilled LoRA in Rank-256 format. The LoRA weight can be adjusted to adapt it to various ZIB fine-tune models, fully compatible with the Z-Image(non-turbo) base model. [(Distilled LoRA FP16 (1.06 GB))](https://civitai.com/api/download/models/2680424?type=Model&format=SafeTensor&size=full&fp=fp16) <- 可以通过这里直接下载 LoRA 版本 **Redcraft DX3** ZIB Distilled on [CivitAI](https://civitai.com/models/958009?modelVersionId=2680424) 上面是 Redcraft DX3 ZIB Distilled 导出为 Rank256 的LoRA版本,可以调整权重强度用于各种微调ZIT版本, 适配于 Z-Image(non-turbo) base 基底模型. --- ## Z-Image-Distilled V3 2026/2/15 DF11 Lossless Compression RedZDX V3 came out, learn more: [Dynamic-length Float (DFloat11)](https://huggingface.co/DFloat11) Thanks to [mingyi456/Z-Image-Distilled-DF11-ComfyUI](https://huggingface.co/mingyi456/Z-Image-Distilled-DF11-ComfyUI) --- ## Z-Image-Distilled V3 2026/2/11 Thanks to [Bubbliiiing](https://github.com/bubbliiiing), [VideoX-Fun](https://github.com/aigc-apps/VideoX-Fun)& [Alibaba-PAI](https://help.aliyun.com/zh/pai/) Provided us with a more efficient distillation solution https://huggingface.co/alibaba-pai/Z-Image-Fun-Lora-Distill Speed of Light, Power of Flow: The new ZID v3 "Lucis" is powered by the latest ZIB acceleration. Building on ZID v2 trainning sets, we've distilled a more efficient Zimage-based RedDX3. Now, in just 5 steps, you get solid results. Rapid Prototyping: Test LoRA training hypotheses instantly with 'near-zero' latency. Stochastic Pre-sampling: Serve as a high-speed, high-entropy source for ZiTurbo pipelines. Hybrid Workflows: Pair seamlessly with Klein 9B for cascaded refinement or ensemble generation.