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Additional Downloads:
When clicking the arrow to the right of the primary download, you can choose between pruned and unpruned versions. I recommend the unpruned version when merging with other models. You can also find the inpainting model as a separate version below.
Example Images:
None of the sample images were altered, upscaled, etc. All can be reproduced using the metadata via the unpruned model (however the pruned model should now have the same results).
Xformers: Off
ETA Seed Noise Delta: 0
ClipSkip: 1
Prompting help:
If you notice that it’s not doing what it should do, be extremely light with the negative prompt. Example: ((blurry)), animated, cartoon, duplicate, child, childish
And then I re-use the same seed and add more words when needed.
Just like any NSFW merge that contains merges with Stable Diffusion 1.5, it is important to use negatives to avoid combining people of all ages with NSFW. This is sadly unavoidable without adding negative prompts, until there is an embedding or the like that can help automate this process. Here are a few things that I generally do to avoid such imagery (and will start representing this change in future version examples):
I avoid using the term "girl" or "boy" in the positive prompt and instead opt for "woman" or "man". The only exception is when I am specifying how many women should appear in a scene, which I would then use "1girl" or "2girls".
In the negative prompt I use: child, childish.
This has helped me prevent any kind of accidental imagery. I know a lot of us are used to using the term "girl" for "women", but AI can't understand the difference.
Merge Recipe:
As an open source advocate it is important for me to help provide the "source code" with everything I do. You can find the merge recipes to the right of every version below.
If you'd like to support my efforts and have access to early and bleeding edge builds, please think about joining my Patreon: https://www.patreon.com/uber_realistic_porn_merge
Uber Realistic Porn Merge (URPM) is a highly specialized Image generation AI Model of type Safetensors / Checkpoint AI Model created by AI community user saftle. Derived from the powerful Stable Diffusion (SD 1.5) model, Uber Realistic Porn Merge (URPM) has undergone an extensive fine-tuning process, leveraging the power of a dataset consisting of images generated by other AI models or user-contributed data. This fine-tuning process ensures that Uber Realistic Porn Merge (URPM) is capable of generating images that are highly relevant to the specific use-cases it was designed for, such as character, girl, person.
With a rating of 4.9 and over 363 ratings, Uber Realistic Porn Merge (URPM) is a popular choice among users for generating high-quality images from text prompts.
Yes! You can download the latest version of Uber Realistic Porn Merge (URPM) from here.
To use Uber Realistic Porn Merge (URPM), download the model checkpoint file and set up an UI for running Stable Diffusion models (for example, AUTOMATIC1111). Then, provide the model with a detailed text prompt to generate an image. Experiment with different prompts and settings to achieve the desired results. If this sounds a bit complicated, check out our initial guide to Stable Diffusion – it might be of help. And if you really want to dive deep into AI image generation and understand how set up AUTOMATIC1111 to use Safetensors / Checkpoint AI Models like Uber Realistic Porn Merge (URPM), check out our crash course in AI image generation.
Pruned the model. Reduced the size to 1.6gb from 8gb. Not bad. (Unpruned Version also available (best used for merging))
Rather than using Weighted Sum Merges, I instead merged via Add Difference with the Model A always being used as the tertiary model. This allowed always removing any duplicate data that existed in other merges I was merging with.
By doing the above, it actually fixed problems more frequently in regards to fused limbs, wrong limbs, etc.
Merge Recipe:
4 Add Difference merges in total (with Model A always in the Tertiary position as well):
1st Merge:
izumi
sxd-berrymix-merge at 35%
2nd Merge:
^above
ZombiMix-v7 at 15%
3rd Merge:
^above
3DKX_1.0b at 15%
4th Merge:
^above
RealEldenApocalypse_AnalogSexKnoll_4CandyPureSimp+FEET at 25%
Go ahead and upload yours!
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