LewdXL - V-Pred Finetune
Anime-focused SDXL checkpoint finetune using V-Prediction, beware this is my first ever finetune.
๐จ Artist Training Dataset (as of v0.2)
This model is an experimental anime-style finetune trained on curated datasets inspired by the following artists:
kuto_(kuroto)
shiomi_(lowrise)
deadpurity (AI Artist)
rolua
Pluvium_grandis
murai-renji / range murata
baifeidaiwang
chen_bin
hanozuku
8rk9
narue
akifn
hatena (nazequestion)
dor_m
gagaimo
sweetonedollar
popepopo999
Model is intended for creative and artistic use. Please refer to the base SDXL license for usage terms.
Description
Artists:
rolua
deadpurity (AI Artist)
Pluvium_grandis
murai-renji / range murata
baifeidaiwang
chen_bin
hanozuku
8rk9
narue
akifn
hatena (nazequestion)
dor_m
gagaimo
sweetonedollar
popepopo999
โ๏ธ Training Configuration
Core Parameters
Base Model: Zeronansv9 (Noobai based)/Stable Diffusion XL (SDXL)
Prediction Mode: V-Prediction (
force_v_prediction: true)Training Epochs: 50
Training Steps: 10150
Batch Size: 8
Learning Rate:
6e-6Text Encoder LR:
2e-6Resolution:
1024x1024
Optimization Settings
Scheduler: 1-cycle cosine
Warmup Steps: 100
Min LR Factor: 0.1
Gradient Accumulation: 1
Gradient Norm Clipping: 1.0
Dropout: 0.05
Precision: BF16
Loss Configuration
MSE Loss:
1.0MAE Loss:
0.1CosH/VB Loss:
0.0Constant Loss Weight:
2.0
๐ง Infrastructure & Training Setup
Trainer Framework: OneTrainer
Platform: RunPod (Community Cloud)
Hardware: L40S GPU
Device: CUDA
EMA: Enabled (
decay: 0.999,update_interval: 5)Sync Method: SCP (native file sync)
Autocast Caching: Enabled
๐ง Model Components
All major components were actively trained:
UNet: โ Trained
Text Encoders (4x): โ Trained
VAE: โ Trained
Prior: โ Trained
EffNet/Decoder/VQGAN: โ Trained
Additional Settings
Masked Training: Disabled
Offset Noise Weight:
0.05Perturbation Noise Weight:
0.05Timestep Distribution: Uniform [0.0 โ 1.0]
๐ฆ Release Notes
This is the initial alpha release (v0.1) of LewdXL, focused on establishing baseline anime style reproduction with V-Prediction architecture. This experimental checkpoint tests core functionality and artistic style transfer capabilities.
Expected Improvements in Future Versions:
Enhanced prompt adherence and control
Improved image coherency and consistency
Greater output diversity and variation
Refined artist style blending
More artists, concepts and characters
FAQ
Comments (7)
Hope you will get 1 million downloads
Please don't give up on this one - beautiful results!
thank you and thank you for the imgs in the gallery :) Do you have any artists or concepts you want to see trained which already doesnt work great?
I really hope you continue to train this, its so amazing!!!
I'll try! V0.2 is done, and i'm training V0.3 right now. I wasn't completely happy with v0.2, but I might release it later today anyway











