Warning: This model is NOT suitable for use by minors. The model can/will generate X-rated/NFSW content.
E621 Rising V2: A Stable Diffusion 2.1 Model [epoch 29]
- Guaranteed NSFW or your money back
- Fine-tuned from Stable Diffusion v2-1-base
- Training continued from E621 Rising V1
- 10 additional epochs of 250,000 images each, collected from E621
- Trained with 6,246 tags
512x512px
- Compatible with π€
diffusers
- Compatible with
stable-diffusion-webui
- Compatible with anything that accepts
.ckpt
and.yaml
files
Getting Started
Examples
More examples and prompts here
Versions
Precision | CKPT | Safetensors | YAML | Notes |
---|---|---|---|---|
FP16 |
Download | Download | Download | Use this by default |
FP32 |
Download | Download | Download | |
BF16 |
Download | Download | Download |
Changes From E621
See a complete list of tags here.
- Symbols have been prefixed with
symbol:
, e.g.symbol:<3
- All categories except
general
have been prefixed with the category name, e.g.copyright:somename
. The categories are:artist
copyright
character
species
invalid
meta
lore
- Tag names are all lowercase and only contain
a-z
,0-9
,/
, and_
letters :
is used to separate the category name from the tag
Additional Tags
- Image rating
rating:explicit
rating:questionable
rating:safe
Training Procedure
- 204-272 images per batch (epoch variant)
512x512px
image size- Adam optimizer
- Beta1 =
0.9
- Beta2 =
0.999
- Weight decay =
1e-2
- Epsilon =
1e-08
- Beta1 =
- Constant learning rate
4e-6
bf16
mixed precision- 8 epochs of V1 dataset samples stretched to
512x512px
(ignore aspect ratio) - 9 epochs of V1 dataset samples resized to
512xH
orWx512px
with center crop (maintain aspect ratio) - 2 epochs of V1 dataset samples resized to
< 512x512px
(maintain aspect ratio) - 10 epochs of V2 dataset samples resized to
< 512x512px
(maintain aspect ratio) - Tags for each sample are shuffled for each epoch, starting from epoch 16
- Downloads last month
- 108
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social
visibility and check back later, or deploy to Inference Endpoints (dedicated)
instead.