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hyperfusion SDXL DoRA 600k images

#Breasts

#Pregnant

#Inflation

#Fat

#Soft Belly

#Blob

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13.04.2026, 03:43
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Beschreibung

https://civitai.com/models/655844/hyperfusion-sdxl-dora-600k-images

This DoRA was trained on 600k images of hyper sized anime characters. It focus mainly on breasts/ass/belly/thighs/fat. This dataset is a subset of the larger hyperfusion dataset, but filtered down to body shape/size related images only. The full dataset would have taken more than a year to train on SDXL, lol.

Recomendations:

Dora/LoRA strength: 1.0 (DoRA's work in most WebUI's by now)

Resolution: ~1024px

samplers: any sampler PonyXL supports

in v10 you can push the lora weight more than in v9, so do that if your concepts are not working as well as you like.

Uploaded 1.4 million custom tags used in hyperfusion here for integrating into your own datasets

v10 Noob_vpred Release 2025/07/29:

Did you guys think I disappeared? Nope, just hopelessly training a model with a frozen text encoder for 7 months.

This new DoRA has the same concepts you are used to by now, but with a few new concepts as usual. Also 200k more images than v9.

This version is trained on NoobAI_Vpred, so there is no guarantee it will work with anything else. Especially not on non-v_pred models.

Wanted to try training with the Text Encoder frozen one last time. Also decided to stick to it no matter how long it took. And now I can definitively say I will be including TE in future models just for the sake of time. It works, but its way too slow for my setup.

Use the tag list in v9 for now, until I get around to building the new one with the small number of new concepts.

This one should handle concepts a little better than v9_sdxl, and is less prone to exploding gradients as well.

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