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    UltraSharpCC - Wan T2V 14b v2.0
    NSFW

    🧬 UltraSharpCC – Viral-Style Sharpness & Color Correction LoRA

    Model: Wan T2V 14B
    Compatibility: VACE (Kijai Version) – Image2Video, First Frame to Video, Mask to Video (Wan2_1-T2V-14B_fp8_e4m3fn.safetensors · Kijai/WanVideo_comfy at main) + (Wan2_1-VACE_module_14B_fp8_e4m3fn.safetensors · Kijai/WanVideo_comfy at main)

    If you want to use it with I2V you can use the Wan T2V + the VACE module extracted by Kijai.

    Workflow Wan T2V 14b + VACE Module


    Optimized for: Use with CausVid (8–10 steps fast generation)(Wan21_CausVid_14B_T2V_lora_rank32_v2.safetensors · Kijai/WanVideo_comfy at main)

    or Lightx2v (4 - 10 steps fast generation using LCM) (Wan21_T2V_14B_lightx2v_cfg_step_distill_lora_rank32.safetensors · Kijai/WanVideo_comfy at main)


    UltraSharpCC is a visual enhancement LoRA designed for video generation using Wan T2V 14B. It simulates the viral video look popularized on TikTok, where perceived image quality is boosted through sharpness, high dynamic range glow, and bold color grading—often reminiscent of Topaz filters and fake-4K aesthetics.

    This LoRA enhances clarity, contrast, and surface detail without altering the original artistic style, making it ideal for transforming regular image or video prompts into cinematic clips that look dramatically upscale.

    It is fully compatible with the VACE system, especially in the following modes:

    • Image2Video

    • First Frame to Video

    • Mask to Video

    UltraSharpCC also works seamlessly with CausVid, enabling ultra-fast video generation in just 8 to 10 steps with minimal quality loss, making it perfect for workflows that prioritize speed and efficiency.


    🧪 Training Details:

    V1

    • Framework: Diffusion Pipe

    • Epochs: 26

    • Batch Size: 1

    • Rank: 64

    • Optimizer: automagic

    • Resolution:
      – Videos at 512px
      – Images at 1024px

    • Dataset:
      – 99 short videos
      – 100 high-resolution images

    • Captions: Generated using a custom LLM (gemma3:12b) prompt focused on visual quality (see below).

    V2

    • Framework: Diffusion Pipe

    • Epochs: 76

    • Batch Size: 4

    • Rank: 64

    • Optimizer: automagic

    • Resolution:
      – Videos at [512, 288]

    • Dataset:
      – 99 short videos

    • Captions: Generated using a custom LLM (gemma3:12b) prompt focused on visual quality (see below).


    💬 Prompt Template Used for Captions (LLM-friendly):

    Analyze the content of this video frame sequence and return a single-paragraph description that includes the following: sh4rpn3ss followed by a detailed explanation of the visual quality enhancements applied to the video (e.g., increased sharpness, 4k, 8k, HDR glow, crisp outlines), and a focused description of the main character (if present), including their appearance and the visual style of the video (e.g., anime, cartoon, CGI, live-action). The description must be concise and capture both the enhancement effects and the artistic style. Do not include any formatting, metadata, or comments—only output a single paragraph starting with sh4rpn3ss.

    You can use this prompt with any LLM (like Gemini, GPT, Mistral, or Qwen) to generate captions for your own dataset or to describe generated videos in a consistent, quality-focused format.


    ✅ Usage Tips:

    • Add the trigger word sh4rpn3ss to your prompt to activate the LoRA’s effects

    • Works best with portraits, stylized characters, and cinematic lighting

    • Ideal for viral short videos, AI-generated live wallpapers, and motion-enhanced artworks

    • Combine with CausVid for high-speed rendering (8–10 steps) with impressive visual fidelity

    Description

    Use this model with Lightx2v or Causvid v2

    FAQ

    Comments (6)

    SynnyrJun 26, 2025· 1 reaction
    CivitAI

    Huge thanks for including the details you used when generating the loras! As I work to debug my diffusion pipe setup, stuff like this is invaluable.

    4331997Jul 10, 2025· 2 reactions
    CivitAI

    There seems to be an issue with artifacts in the first few frames when using with Wan 2.1 14B FusionX T2V (Q8 GGUF). I get grdding patterns and level shifts.

    Dimensions=1168x896

    Sampler=DPMPP_2M_SDE

    Schedular=Beta

    Steps=10

    CFG=1

    ModelSamplingSD3=8

    NRDX
    Author
    Jul 10, 2025· 1 reaction

    The first thing is that FusionX is not a base model, but a merged model, a model that has been merged with several other LoRa models, and therefore it is not my test target when I train LoRas for WAN, so you may end up having problems, and honestly, I don't know how I could help you in that case. If anyone out there who used this LoRa had the same problem and managed to solve it, please comment the solution here.

    recilurnJul 17, 2025· 1 reaction
    CivitAI

    I cannot add this resource to my posts, no clue.

    NRDX
    Author
    Jul 17, 2025

    strange, civitai has been all buggy lately.

    phexitolSep 6, 2025· 2 reactions
    CivitAI

    This LoRa, when set to -0.5, adds a vintage look to videos, making it doubly useful.

    LORA
    Wan Video 14B t2v
    by NRDX

    Details

    Downloads
    1,460
    Platform
    CivitAI
    Platform Status
    Available
    Created
    6/21/2025
    Updated
    5/16/2026
    Deleted
    -
    Trigger Words:
    sh4rpn3ss 4k HDR

    Available On (2 platforms)

    Same model published on other platforms. May have additional downloads or version variants.