CivArchive
    Anya Taylor-Joy - ANAT0J3
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    This is Anya Taylor-Joy 3 vector embedding for version 1.5 of stable diffusion.

    This model was made with a dataset of 28 images, a learning rate of 0.5:50,0.05:100,0.005:400, a batch size of 7 and a Gradient accumulation steps of 4. I modified the filewords created by Blip in order to have a more precise description to increase the flexibility of the model. I used a textural inversion template with only [name], [filewords] inside.

    The trigger name of the template is ANAT0J3 , but it can be changed to whatever you want by changing the file name.

    The example images were made using these two models:

    https://civarchive.com/models/4201/realistic-vision-v12

    https://civarchive.com/models/3666/protogen-x34-photorealism-official-release

    This is my first embedding, I hope you like it. I would be glad to see your creations if you want to share them. I would also like to thanks seedspiller for the information he provided in the description of his models which allowed me to create the one I am presenting here.

    Description

    FAQ

    Comments (4)

    3418Jan 15, 2023
    CivitAI

    Cool stuff! That actress is awesome!

    dm1Jan 16, 2023
    CivitAI

    very good

    loncowerkenJan 26, 2023
    CivitAI

    hi one question. what its your hardware for doing this ?

    darutobiMar 16, 2023
    CivitAI

    thank you for sharing the parameters, it worked really well

    TextualInversion
    SD 1.5

    Details

    Downloads
    2,855
    Platform
    CivitAI
    Platform Status
    Deleted
    Created
    1/15/2023
    Updated
    5/7/2026
    Deleted
    5/23/2025
    Trigger Words:
    ANAT0J3

    Files

    ANAT0J3.pt

    Mirrors

    HuggingFace (2 mirrors)
    CivitAI (1 mirrors)

    Available On (1 platform)

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