CivArchive

    About this version (qwen v2)

    A brushup of the dataset, with better result than V1 for qwen. I will use the same dataset again for zturbo when the base model is released.


    Trigger word: PENISLORA

    What can this lora do?

    This lora can add erect penises to both men or women viewed from the front/side. Other angles such as POV may have a backwards penis head.


    Other things it can now do:
    Side view of the penis

    Cumming / Cumshots

    Blowjobs (its captioned for the words "blowjob" and "deepthroat" )

    What can't it do?

    No penetration in the training data. Also nothing from POV angle, though there is a few images from above and 1 POV video in the training data.

    Sometimes blowjobs with cumming have the penis slip out the closed mouth.

    Recommended Settings

    It works pretty good with the new lightning dyno high model. I'll link to it in my example workflow. I like to use dyno high model (no lightning lora), then for low I use the lightning v2 lora on the regular 2.2 low base model.

    Dataset

    84 images at 512x resolution

    43 videos at 256x resolution

    (I let DP pick the aspect ratio automatically)

    This is the same exact dataset as the 2.2 5B model. I made no changes.

    Training

    I used the default diffusion pipe settings.

    [optimizer]

    type = 'adamw_optimi'

    lr = 2e-5

    betas = [0.9, 0.99]

    weight_decay = 0.01

    eps = 1e-8

    I was baffled why it was taking so long to train the high until I realized after over 60 hours of training that I had put my videos in the images directory which resulted in the high being trained ONLY only on videos and twice (once with a very high resolution). Once I fixed this, I went back and trained from 11K steps up to around 13K with the images in the training data. The high model was fine without to be honest.

    For the low, I trained it properly with videos and images the whole way, around 6K steps in I upped the image resolution from 512 to 1024 actually and didn't get an OOM (it fit around 24GB exactly). I trained it to around 10.5K steps. Also I trained the low on the full timestep range (0 to 1 instead of 0 to 0.85) from some advice, it may switch better over from high to low on the speed up lora with low steps.

    I think I might do another version with more angles such as POV and from the behind to make this work for any situation. In that case I don't think it needs 10K steps per training session, epochs around 5K steps looked fine.

    The results

    I think it was a combination of improved captioning and 2.2 base model being better. But this lora turned out really well.

    Description

    FAQ

    Comments (4)

    psspsspsspssspssOct 2, 2025· 2 reactions
    CivitAI

    lel, I tried the i2v version, and you are right, I don't think it's done/right yet. it just gave me eldritch horrors of compositions, mutated bodies and giant heads lol.

    tsergo062393Oct 3, 2025
    CivitAI

    str recommendations for i2v and t2v?

    Pat3dxOct 3, 2025· 5 reactions
    CivitAI

    Hehehe!!! I don't know how many of you have tested wan 2.5. but, i just tested it, and oO big surprise. Wan 2.5 can natively generate futanari with perfect well defined flaccid or erect penis. I even added jerking off in the prompt, and the other girl was jerking off the futanari penis perfectelly LOL!!!

    tazmannner379
    Author
    Oct 5, 2025· 4 reactions
    CivitAI

    I added a more trained version of the i2v high/low. I recommend to use it at str 1, and also use the t2v of this lora at 0.5 str on both high and low.

    Note: this lora is trained on live action images only. So if its an anime image, it will work only if the penis is already present on screen. I haven't had a lot of time to tweak or trouble shoot this due to not much free time. I think you can play around with the strengths on the t2v and i2v to get i2v working better. All in all this dataset was made for t2v in mind, so its not gonna be ideal i2v. I might work on something better it will probably involve doubling the video dataset which I dont wanna do atm.

    I'm open for feedback though, this might be super over trained tbh. But the tests came out ok. tbh its kinda cool that this was only like 40 something videos only.