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    This LoRA is designed to capture the distinct look and feel of early 80s fantasy movies.

    The trigger words are ArsMovieStill, 80s Fantasy Movie Still

    Z-IMAGE UPDATE:
    V2 dataset officially became my go-to test dataset when training a model for the first time.
    Experimental!

    Default ComfyUI LoRA Loader Reports Errors, but actually applys the LoRA.


    Recommended usage settings:

    1. Your favourite spot.

    2. Listen to Castle Rat as background.

    3. Enjoy!




    MJ7 UPDATE:
    Building each dataset is a joy, so with the release of MidJourney 7, I naturally started this one again from scratch.

    This version stays true to the original aesthetic but with improved fidelity and an even stronger 80s vibe.

    It’s trained on a fresh, carefully curated set of ~250 images, created by referencing the best results from the previous versions.


    V3 UPDATE:
    The training dataset has been further expanded to 1,000 curated images, pushing it to the limits of Civit’s on-site training capabilities.

    This update include broader selection of fantasy environments, mythical creatures, and epic scenes, enhancing the fidelity to the iconic 80s fantasy aesthetic.

    V2 UPDATE:
    Added to the dataset a huge amount of Fantasy Characters, beasts and scenes.

    Use v1 for stronger effects and v2/v3 for better versatility.

    Description

    This is one of the first Qwen LoRAs I am releasing here on civit and is trained in AI Toolkit.
    It is trained in fp8.
    I wanted to train as much as I can , so in the version here for some prompts you might observe Artefacts (Qwen seems to have quality issues for more detailed concepts).


    To offset this issue I recommend either:
    1. Start with lower strenght ~0.8.

    2. Use it with lighting 4/8 steps LoRA.

    It is based on the V2 Dataset.