Which model do you guys use for NSFW image generation ?
Hey there, little explorer! 🚀
Imagine you have a magic drawing robot! 🤖 This robot can make all sorts of cool pictures, like a superhero flying or a funny monster dancing.
Someone on the internet was asking other grown-ups, "Which magic drawing robot do you use to make your special pictures?" ✨ They also asked if the robot can make little movies too! 🎬
They want to teach their own robot to draw, like you teach your teddy bear new tricks. And they want to know how to make sure their superhero always looks the same in every picture, like your favorite toy always looks like itself! 🦸♂️
It's like they're trying to learn the best way to play with their magic drawing robot! Isn't that neat? 😊
I am new to this field and exploring the different models to generate NSFW images. What are your top models to do that ? Can I also generate NSFW videos ? I am planning to self host the model so ideally would want open source model suggestions. How do you maintain consistency across characters ? Do you use LORA or some other technique ? Just curious and keen to know what the community uses in order to get things going for me. submitted by /u/ElectricalVariety641 [link] [comments]
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New model, old risks: sociodemographic bias and adversarial hallucinations vulnerability in GPT-5
npj Digital Medicine, Published online: 04 April 2026; doi:10.1038/s41746-026-02584-8 We re-evaluated GPT-5 using our published pipelines: 500 emergency vignettes across 32 sociodemographic labels for bias, and adversarial prompts with fabricated details. GPT-5 showed no measurable improvement over GPT-4o in sociodemographic-linked decision variation, with several LGBTQIA+ groups flagged for mental-health screening in 100% of cases. Adversarial hallucination rates were higher (65% vs 53% for GPT-4o); a mitigation prompt reduced this to 7.67%.
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