CivArchive
    Wan Damme - SINGLE MODEL WAN 2.2 14B T2V/I2V - fp8 UNet - fp8 WAN2.2 14B TI2V U-Net
    NSFW

    This is single-model genuine WAN 2.2 14B, extracted from WAN 2.2 14B S2V. No merges or strange injections inside, just clean model.

    Note 1. You should generate latent with WanSoundImageToVideo node, not WanImageToVideo. Connect source image to ref_image input to make model act as Image-to-video, or leave this input empty to achieve Text-to-video output.

    Note 2. You should use T2V High Noise WAN2.2 Lightning LoRAs, not I2V or Low Noise. Don't ask, it's by design of source S2V model.

    Note 3. Model will generate some warnings about audio encoder during loading, it's okay. Don't try to connect audio to model, audio is totally disabled.

    I didn't test any LoRAs with this model except of lightning. Hope you will give me feedback about your experience and share your generated artworks on this page.

    Description

    Based on WAN 2.2 14B S2V .

    You still need CLIP and VAE to generate something.

    Comments (2)

    JiankaOct 18, 2025· 1 reaction
    CivitAI

    Nice I'll give it a try. Way more convenient than having to load the high and low models.

    rocketjazzOct 18, 2025· 2 reactions
    CivitAI

    Cannot get any motion of it. And that flashing scene background is pretty bad.

    Checkpoint
    Wan Video 2.2 T2V-A14B

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    Details

    Downloads
    41
    Platform
    CivitAI
    Platform Status
    Deleted
    Created
    10/18/2025
    Updated
    4/27/2026
    Deleted
    4/27/2026

    Files

    wanDammeSINGLEMODELWAN22_fp8WAN2214BTI2VUNet.safetensors