CivArchive
    image_qwen_Image_25121 - v1.0
    Preview 119892607

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    **Workflow Title:** image_qwen_Image_2512

    **Workflow Description:** This workflow utilizes the Qwen-Image-2512 Nunchaku version, providing a foundational image processing setup.

    **Media Type:** Image (.jpg)

    **Node Count:** 12 Nodes

    **Key Node Types:**

    - **CLIPLoader:** Efficiently loads images for processing.

    - **VAELoader:** Imports Variational Autoencoder models for enhanced image generation.

    - **NunchakuQwenImageLoraStackV3:** Implements Lora-based enhancements for improved image quality.

    - **VAEDecode:** Decodes images using the Variational Autoencoder for output generation.

    - **CFGNorm:** Normalizes configurations for consistent output.

    - **ModelSamplingAuraFlow:** Samples from the model's output flow, generating diverse results.

    - **KSampler:** Utilizes K-Sampling methods for refined image generation.

    - **SaveImage:** Saves the processed images to the specified format and location.

    - **CLIPTextEncode:** Encodes text prompts for guiding the image generation process.

    - **NunchakuQwenImageDiTLoader:** Loads DiT models for advanced image processing capabilities.

    **Quick Usage Guide:**

    1. Start with **CLIPLoader** to upload your .jpg images.

    2. Use **VAELoader** to bring in your VAE models.

    3. Apply **NunchakuQwenImageLoraStackV3** to enhance image detail.

    4. Process images through **VAEDecode** to obtain initial outputs.

    5. Adjust parameters with **CFGNorm** to maintain output consistency.

    6. Utilize **ModelSamplingAuraFlow** for varied image samples.

    7. Implement **KSampler** for high-quality random sampling results.

    8. Save your final images using **SaveImage**.

    9. For text-guided generation, employ **CLIPTextEncode** with relevant prompts.

    10. Finally, explore additional options with **NunchakuQwenImageDiTLoader** for further refinements.

    **Link to Workflow:** [RunningHub Workflow]()

    This workflow is designed for seamless integration and efficient image processing.

    **Workflow Title:** image_qwen_Image_2512

    **Workflow Description:** This workflow utilizes the Qwen-Image-2512 Nunchaku version, providing a foundational image processing setup.

    **Media Type:** Image (.jpg)

    **Node Count:** 12 Nodes

    **Key Node Types:**
    - **CLIPLoader:** Efficiently loads images for processing.
    - **VAELoader:** Imports Variational Autoencoder models for enhanced image generation.
    - **NunchakuQwenImageLoraStackV3:** Implements Lora-based enhancements for improved image quality.
    - **VAEDecode:** Decodes images using the Variational Autoencoder for output generation.
    - **CFGNorm:** Normalizes configurations for consistent output.
    - **ModelSamplingAuraFlow:** Samples from the model's output flow, generating diverse results.
    - **KSampler:** Utilizes K-Sampling methods for refined image generation.
    - **SaveImage:** Saves the processed images to the specified format and location.
    - **CLIPTextEncode:** Encodes text prompts for guiding the image generation process.
    - **NunchakuQwenImageDiTLoader:** Loads DiT models for advanced image processing capabilities.

    **Quick Usage Guide:**
    1. Start with **CLIPLoader** to upload your .jpg images.
    2. Use **VAELoader** to bring in your VAE models.
    3. Apply **NunchakuQwenImageLoraStackV3** to enhance image detail.
    4. Process images through **VAEDecode** to obtain initial outputs.
    5. Adjust parameters with **CFGNorm** to maintain output consistency.
    6. Utilize **ModelSamplingAuraFlow** for varied image samples.
    7. Implement **KSampler** for high-quality random sampling results.
    8. Save your final images using **SaveImage**.
    9. For text-guided generation, employ **CLIPTextEncode** with relevant prompts.
    10. Finally, explore additional options with **NunchakuQwenImageDiTLoader** for further refinements.

    **Link to Workflow:** [RunningHub Workflow]()

    This workflow is designed for seamless integration and efficient image processing.

    Description

    Workflows
    Qwen

    Details

    Downloads
    16
    Platform
    CivitAI
    Platform Status
    Deleted
    Created
    2/4/2026
    Updated
    2/6/2026
    Deleted
    2/5/2026

    Files

    imageQwenImage25121_v10.zip

    Mirrors

    Huggingface (1 mirrors)
    CivitAI (1 mirrors)