LewdXL - V-Pred Finetune
Anime-focused SDXL checkpoint finetune using V-Prediction, beware this is my first ever finetune.
🎨 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
⚙️ 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
🧠 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
🔧 Model Components
All major components were actively trained:
UNet: ✅ Trained
Text Encoders (4x): ✅ Trained
VAE: ✅ Trained
Prior: ✅ Trained
EffNet/Decoder/VQGAN: ✅ Trained
Additional Settings
Masked Training: Disabled
Offset Noise Weight:
0.05Perturbation Noise Weight:
0.05Timestep Distribution: Uniform [0.0 → 1.0]
📦 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