Type | |
Stats | 345 |
Reviews | (46) |
Published | Aug 3, 2024 |
Base Model | |
Training | Steps: 4,920 Epochs: 10 |
Usage Tips | Clip Skip: 2 |
Hash | AutoV2 E95F8AD16E |
[UrangDiffusion v2.0 finetuning is sponsored by CagliostroLab, the makers of Animagine XL]
UrangDiffusion v2.0 (oo-raw-ng Diffusion) brings a whole-new training method compared to the v1.4. The model provide more flexibility and brings some updated dataset.
The name “Urang” comes from Sundanese, meaning “We/Our/I.” The history behind the name is to make the model not only suitable for me but also for many people. Another reason is that I use many resources (training scripts, dataset collecting scripts, etc.) from other people. It’s unfair to claim this model as “my sole work.”
Standard Prompting Guidelines
The model is finetuned from Animagine XL 3.1, which is trained with danbooru tags. However, there is a little bit changes on dataset captioning, therefore there is some different default prompt used:
Default prompt:
1girl/1boy, character name, from what series, everything else in any order, best quality, amazing quality, very aesthetic.
Note: The quality tag
masterpiece
has been replaced withbest quality
due to reports that it often caused unwanted side effects. Tests also proven that the anatomy of some generations are broken because of the tag.Default negative prompt:
lowres, (bad), text, error, fewer, extra, missing, worst quality, jpeg artifacts, low quality, watermark, unfinished, displeasing, oldest, early, chromatic aberration, signature, extra digits, artistic error, username, scan, [abstract],
Default configuration: Euler a with around 25-30 steps, CFG 5-7, and ENSD set to 31337. Sweet spot is around 28 steps and CFG 7.
Training Configurations
Finetuned from: Animagine XL 3.1
Pretraining:
Dataset size: 44,393 images
GPU: 1xA100 80GB
Optimizer: AdaFactor
Unet Learning Rate: 3.75e-6
Text Encoder Learning Rate: 1.875e-6
Batch Size: 16
Gradient Accumulation: 3
Warmup steps: 100 steps
Min SNR: 5
Epoch: 10
Random Cropping: True
Loss: Huber
Huber Schedule: SNR
Huber C: 0.1
Finetuning:
Dataset size: 3,140 images
GPU: 1xA100 80GB
Optimizer: AdaFactor
Unet Learning Rate: 3e-6
Text Encoder Learning Rate: - (Train TE set to False)
Batch Size: 16
Gradient Accumulation: 3
Warmup steps: 5%
Min SNR: 5
Epoch: 10 (epoch 9 is used)
Noise Offset: 0.0357
Random Cropping: True
Loss: Huber
Huber Schedule: SNR
Huber C: 0.1
Added/Updated Series and Characters
Series:
zenless zone zero
wuthering waves
sewayaki kitsune no senko-san
Honkai: Star Rail:
firefly
acheron
sparkle
robin
aventurine
black swan
feixiao
yunli
lingsha
march 7th (hunt)
jade
jiaoqiu
gallagher
rappa
misha
Hololive Talents:
hololive indonesia
raora panthera
elizabeth rose bloodflame
gigi murin
cecilia immergreen
Genshin Impact:
arlecchino
clorinde
chiori
mualani
xianyun
sigewinne
kinich
xilonen
emilie
gaming
kachina
sethos
Others:
landscape
several concepts to fix anatomy issue
Special Thanks
CagliostroLab for sponsoring the model finetuning by letting me borrowed the organization’s RunPod account.
My co-workers(?) at CagliostroLab for the insights and feedback.
Nur Hikari and Vanilla Latte for quality control.
Linaqruf, my tutor and role model in AI-generated images, and also the person behind tag ordering.
License
UrangDiffusion falls under the Fair AI Public License 1.0-SD license.