Version: pro
Input
Output
![https://files.tungsten.run/uploads/ba8d421f607641c7aaa7783a2167fb32/00000-1012566128.webp](https://files.tungsten.run/uploads/ba8d421f607641c7aaa7783a2167fb32/00000-1012566128.webp)
![https://files.tungsten.run/uploads/889450df26a4463bab6e1fe18197fd86/00001-1012566129.webp](https://files.tungsten.run/uploads/889450df26a4463bab6e1fe18197fd86/00001-1012566129.webp)
![https://files.tungsten.run/uploads/c830990f3f614030b13dd112ccb2ff98/00002-1012566130.webp](https://files.tungsten.run/uploads/c830990f3f614030b13dd112ccb2ff98/00002-1012566130.webp)
![https://files.tungsten.run/uploads/4ee1d066c4964e0791a1eea6767be158/00003-1012566131.webp](https://files.tungsten.run/uploads/4ee1d066c4964e0791a1eea6767be158/00003-1012566131.webp)
This example was created by brentlynch
Finished in 77.4 seconds
Setting up the model...
Preparing inputs...
Processing...
Loading VAE weight: models/VAE/vae-ft-mse-840000-ema-pruned_fp16.safetensors
Full prompt: 1930s female gangster, age 25, 1 girl, (brunette hair :1.4), (skinny, slim, slender, toned upper body:1.4), very tall Tik Tok Model, (tanned, with very long toned legs, toned upper body, and abs, (slim), skinny and slender (narrow waist:1.3), 1930s female gangster clothes, tommy gun,at a restaurant:1.4), realistic, real photo, realistic skin texture, skin imperfections, skin pores, sharp details, bright light, 8k, HDR, f.1/2, 70mm lens, Kodak, Analog style, epiCPhoto, epiC35mm, <lora:epiC35mm:1>,
Full negative prompt: (CLEAVAGE:1.5), (NSFW:1.5), (deformed, distorted, disfigured:1.3), poorly drawn, bad anatomy, wrong anatomy, extra limb, missing limb, floating limbs, (mutated hands and fingers:1.4), disconnected limbs, mutation, mutated, ugly, disgusting, blurry, amputation, (piercing:1.3) (hands:1.35), epiCNegative, realisticvision-negative-embedding
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Decoding latents in cuda:0...
done in 0.96s
Move latents to cpu...
done in 0.01s
![https://files.tungsten.run/uploads/ba8d421f607641c7aaa7783a2167fb32/00000-1012566128.webp](https://files.tungsten.run/uploads/ba8d421f607641c7aaa7783a2167fb32/00000-1012566128.webp)
![https://files.tungsten.run/uploads/889450df26a4463bab6e1fe18197fd86/00001-1012566129.webp](https://files.tungsten.run/uploads/889450df26a4463bab6e1fe18197fd86/00001-1012566129.webp)
![https://files.tungsten.run/uploads/c830990f3f614030b13dd112ccb2ff98/00002-1012566130.webp](https://files.tungsten.run/uploads/c830990f3f614030b13dd112ccb2ff98/00002-1012566130.webp)
![https://files.tungsten.run/uploads/4ee1d066c4964e0791a1eea6767be158/00003-1012566131.webp](https://files.tungsten.run/uploads/4ee1d066c4964e0791a1eea6767be158/00003-1012566131.webp)
This example was created by brentlynch
Finished in 77.4 seconds
Setting up the model...
Preparing inputs...
Processing...
Loading VAE weight: models/VAE/vae-ft-mse-840000-ema-pruned_fp16.safetensors
Full prompt: 1930s female gangster, age 25, 1 girl, (brunette hair :1.4), (skinny, slim, slender, toned upper body:1.4), very tall Tik Tok Model, (tanned, with very long toned legs, toned upper body, and abs, (slim), skinny and slender (narrow waist:1.3), 1930s female gangster clothes, tommy gun,at a restaurant:1.4), realistic, real photo, realistic skin texture, skin imperfections, skin pores, sharp details, bright light, 8k, HDR, f.1/2, 70mm lens, Kodak, Analog style, epiCPhoto, epiC35mm, <lora:epiC35mm:1>,
Full negative prompt: (CLEAVAGE:1.5), (NSFW:1.5), (deformed, distorted, disfigured:1.3), poorly drawn, bad anatomy, wrong anatomy, extra limb, missing limb, floating limbs, (mutated hands and fingers:1.4), disconnected limbs, mutation, mutated, ugly, disgusting, blurry, amputation, (piercing:1.3) (hands:1.35), epiCNegative, realisticvision-negative-embedding
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Decoding latents in cuda:0...
done in 0.96s
Move latents to cpu...
done in 0.01s