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    Retro Ad Flux - v1.0
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    Retro Ad Flux

    Retro Ad Flux is a Flux LoRA trained on mid-century print advertisements, blending elements of iconic photorealistic illustrations and nostalgic photographs. I used 216 images 3 repeats 15 epochs and 0.0001 learning rate. These were all captioned using Joy Caption Batch.

    When prompting use natural language describing the ad layout, you can specify things like headlines, subheadings and image styles and for the most part it works as expected. Be creative, it's possible to create many different styles, the model appears to be receptive to mentioning stylized font faces and other attributes.

    I used very similar settings as I have with my previous LoRAs so I won't go into detail for the sake of my time and brevity, low learning rates with less repeats and good data work best for simple styles.

    I'll post a v2 version of this LoRA soon with a focus on the cropped images particular, excluding the text. This should help capture the style of imagery without the ad layouts.

    If you enjoy this resource please send BUZZ ⚡️so I can keep experimenting and sharing. Please share your images in the gallery after downloading them, by sharing them in the gallery the system gives creators buzz to help with generating and training.

    Trigger keyword: 'm1dc3ntury' 'vintage advertisement'

    Recommended strengths: 0.7 - 0.9

    Description

    FAQ

    Comments (1)

    cutetodeath78409597Feb 27, 2025· 1 reaction
    CivitAI

    very nice! thank you.

    LORA
    Flux.1 D

    Details

    Downloads
    856
    Platform
    CivitAI
    Platform Status
    Available
    Created
    10/5/2024
    Updated
    5/13/2026
    Deleted
    -
    Trigger Words:
    m1dc3ntury
    vintage advertisement

    Available On (2 platforms)

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