Recommended Prompts
masterpiece,PureErosFace_V1,best quality,[highly detailed face:0.1],1girl,a full body portrait of a 21 years old beautiful gorgeous cute busty Korean kpop girl,pink eyes,(jieunc_kor:0.8),long hair,slender body,black hair,detailed face,(grapefruit),perfect anatomy,(temple in background),contrapposto,sitting,Cannon EOS 5D MARK III,kimono,50mm Sigma f/1.4 ZEISS lens,medium breasts,F1.4,light smile,1/800s,arms behind back,ISO 100,photorealistic,trending on instagram
Recommended Negative Prompts
disgusting,worst quality,low quality,logo,text,watermark,username
NG_DeepNegative_V1_75T,(worst quality,worst quality,low quality:1.4),low quality,logo,text,monochrome,nipples,nude
Recommended Parameters
samplers | Euler a | |
steps | 20-40 | |
cfg | 11 | |
resolution | 512×768 |
Tips
- Use embedding with negative prompts like (worst quality, low quality, logo, text, watermark, username).
- For models trained with more than 75 tokens, consider using smaller token versions to avoid errors.
Version Highlights
put it in negative prompts
Creator Sponsors
All sponsors are not affiliates of Diffus. Diffus provides an alternative online Stable Diffusion WebUI experience.
If you use SDXL, recommended this 👉 DeepNegative for SDXL version
This embedding will tell you what is REALLY DISGUSTING🤢🤮
So please put it in negative prompt😜
⚠This model is not trained for SDXL and may bring undesired results when used in SDXL.
TOP Q&A
-
how to use TI model?
https://github.com/AUTOMATIC1111/stable-diffusion-webui/wiki/Textual-Inversion
-
what is negative prompt?
https://github.com/AUTOMATIC1111/stable-diffusion-webui/wiki/Negative-prompt
[Special Reminder] If your webui reports the following errors:
– CUDA: CUDA error: device-side assert triggered
– Assertion -sizes[i] <= index && index < sizes[i] && "index out of bounds" failed
– XXX object has no attribute 'text_cond'
Please try using a model version other than 75T.
> The reason is that many scripts do not handle overly long negative prompt words (greater than 75 tokens) properly, so choosing a smaller token version can improve this situation.
[Update:230120] What does it do?
These embedding learn what disgusting compositions and color patterns are, including faulty human anatomy, offensive color schemes, upside-down spatial structures, and more. Placing it in the negative can go a long way to avoiding these things.
–
What is 2T 4T 16T 32T?
Number of vectors per token
[Update:230120] What is 64T 75T?
64T: Train over 30,000 steps on mixed datasets.
75T: embedding limit maximum size, training 10,000 steps on a special dataset (generated by many different sd models and special reverse processing)
Which one should choose?
-
75T: The most ”easy to use“ embedding, which is trained from its accurate dataset created in a special way with almost no side effects. And it contains enough information to cover various usage scenarios. But for some “good-trained-model” may hard to effect
and, change about may be subtle and not drastic enough.
-
64T: It works for all models, but has side effect. so, some tuning is required to find the best weight. recommend: [( NG_DeepNegative_V1_64T :0.9) :0.1]
-
32T: Useful, but too more
-
16T: Reduces the chance of drawing bad anatomy, but may draw ugly faces. Suitable for raising architecture level.
-
4T: Reduces the chance of drawing bad anatomy, but has a little effect on light and shadow
-
2T: ”easy to use“ like T75, but just a little effect
Suggestion
Because this embedding is learning how to create disgusting concepts, it cannot improve the picture quality accurately, so it is best used with (worst quality, low quality, logo, text, watermark, username) these negative prompts.
Of course, it is completely fine to use with other similar negative embeddings.
More examples and tests
-
draw building: https://imgur.com/5aX9yrP
-
hand fix: https://imgur.com/rDlsrgS
-
portrait (with PureErosFace): https://imgur.com/1Lqq595 https://imgur.com/V5kXBXz
-
fusion body fix:
How is it work?
I tried to make SD learn what is really disgusting with deepdream algorithm, the dataset is imagenet-mini (1000 images chosen randomly from the dataset again)
deepdream is REALLLLLLLLLLLLLLLLLLLLLY disgusting 🤮 and process of training this model really made me experience physical discomfort 😂