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    Portrait Engine FLUX1. D, Detailed Skin - [LORA] - V 2.0
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    This is the definitive portrait LoRA for FLUX. I've trained this model meticulously on a curated dataset of 150+ images to be your one-stop solution for generating stunning, high-fidelity, and emotionally resonant portraits with detailed Skin texture. Stop fighting with prompts and let the model do the heavy lifting for photorealistic detail.
    As of now am still testing, try it out and let me know your thoughts about it.

    Portrait Engine FLUX - Lora

    Training Configuration:

    • GPU: RTX 4090

    • Dataset Size: 150+ images

    • Batch Size: 1

    • Optimizer: AdamW

    • Learning Rate: 1e-04

    • Total training steps: 4.5k

    • Training Duration: 4h+

    Recommended Parameter :

    • Sampler : euler

    • Steps : 20+

    • CFG : 3.5

    Recomanded weight is 0.5 - 0.1

    trigger word :- close-up, portrait, detailed skin

    How to Use:
    For the best results, use this lora with charecter lora and the trigger words to activate the LoRA's core training. Then, describe the subject you want to create.

    Example Prompt: photo of a rugged man with a beard, thoughtful expression, cinematic lighting, close-up, portrait, detailed skin

    If you like my model and want to support my work, send me some buzz.

    Please post your pictures directly on the model card...that also helps me to continue my work.

    Description

    enhanced portrait and skin details

    FAQ

    LORA
    Flux.1 D

    Details

    Downloads
    1,053
    Platform
    CivitAI
    Platform Status
    Deleted
    Created
    8/20/2025
    Updated
    10/9/2025
    Deleted
    10/9/2025
    Trigger Words:
    detailled skin
    close-up
    portrait

    Files

    portrait Engine V2.0.safetensors

    Mirrors

    Available On (1 platform)

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