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    【Lovelive!】Takami Chika Charecter LoRA(高海·千歌人物模組) - v1.0
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    This is a LoRA for generating images of Lovelive character Takami Chika.

    Making models takes a lot of time and hard work. If you like this LoRA, please click the like button!

    Recommended weights:

    • Recommended weights: 0.5~0.7

      (Note: If the weight is below 0.4, the LoRA may not work effectively.)

    這是一個用於生成Lovelive角色高海·千歌的圖像的LoRA

    製作模型需要花費很多的時間和精力。如果您喜歡這個LoRA,請幫忙按一個“讚”!

    建議權重:

    • 建議權重:0.5〜0.7

      (注意:如果權重低於0.4,則LoRA可能無法生效。)

    Description

    FAQ

    Comments (4)

    KCanHen
    Author
    Mar 28, 2023· 1 reaction
    CivitAI

    I think I used too many pictures for training. It seems that training Lora doesn't require that many pictures. So now I'm considering using fewer pictures to speed up the process.

    However, I'm not sure if using fewer pictures will negatively affect the final result or not.

    523345Mar 28, 2023· 1 reaction

    As a fellow Love Live LoRa trainer, my datasets usually have between 25~30 handpicked images and that's that. What matters is the quality of the images and the tags, so go for it!

    KCanHen
    Author
    Mar 28, 2023· 1 reaction

    Thank you for your reply, your advice is very helpful!
    Previously, I used at least 250 images for training, it seems that I really used too many images. Thank you again!

    277553Mar 29, 2023· 2 reactions

    Yes, I also use around 30 images, that's enough. The most important thing I think is data quality.

    LORA
    SD 1.5

    Details

    Downloads
    1,004
    Platform
    CivitAI
    Platform Status
    Available
    Created
    3/28/2023
    Updated
    5/14/2026
    Deleted
    -

    Files

    Takami Chika.safetensors

    Mirrors

    CivitAI (1 mirrors)

    Available On (1 platform)

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