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    WAN2.2-14B T2V-T2I Prehistoric <-> Futuristic slider - v1.0 Low noise
    Preview 107412243Preview 107412246Preview 107412242Preview 107417737Preview 107419111Preview 107419674Preview 107469993Preview 107477152Preview 107477150Preview 107477155Preview 107477151Preview 107477153Preview 107477154

    Text slider to travel in time.

    What you must know :
    I didn't use WAN for video generation, but only for image generation, by the way, the High-noise lora was not tested as I only use the low-noise checkpoint with some "turbo" loras(*2) (let me know in the comments if it works well).

    Made with Ostris AI-Toolkit on a "low-end" hardware(*1) just because everybody seems to say it's not possible :).

    I kept 75 steps as it appears to me the best results (I've tested every 25 steps from 25 steps to 300 steps).

    Recommended maximum strength is -7.5 / +7.5, but you can test further, it will depend on other loras and/or prompt.

    At high positive strength, the persons could become like puppets, and at high negative strength, they could become dwarfs.

    Edit : I've added some images testing some concepts, and I'm not totally satisfied by some of them (vehicles in particular, but landscape too, and others...). I'm working on a v2.


    Comments appreciated.

    __________________________________________________________________________________________________________________________

    (*1) : Trained on a laptop with 32Gb of RAM and a mobile RTX4060 with 8Gb of VRAM.

    (*2) FYI : To make T2I I use this specific combination of loras (and all example images were made using this) :
    These are loras for WAN2.1, but I found them working better (at least some time ago when I made my tests).

    Description

    Low noise

    LORA
    Wan Video 2.2 T2V-A14B

    Details

    Downloads
    179
    Platform
    CivitAI
    Platform Status
    Available
    Created
    10/24/2025
    Updated
    11/12/2025
    Deleted
    -

    Files

    WAN2.2-14B_low_noise_futuristic_slider_v1.safetensors