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    Inspiration

    💃 This is a reimagining of the fictional character Manuela Vicious, by Tower13Studios:

    Manuela is 20yo and from Belfast Northern Ireland and a proud member of the gigantic Vicious family. They are nice people and gave birth to a lot of pretty daughters, the best about them is... they are entirely fictional.


    Krea 2

    • Diffusion Model: Krea 2; try the Raw model paired with the Turbo LoRA set to 0.5–1

    • LoRA strength: 0.8–1.5

    • Sampler: euler, euler_ancestral, or er_sde

    • Scheduler: simple or beta

    • Steps: 8–12 for Raw paired with Turbo LoRA —or try about 6–8 steps on a first sampler and 2–3 on a second sampler with 0.1–0.4 denoise

    • CFG Scale: 1 with Turbo model

    • Trigger word (for superior results): ATRX_MANUELA_KREA2

    Flux.2 Klein 9B

    • Diffusion Model: Flux.2 Klein 9B

    • LoRA strength: 0.8–1.6

    • Sampler: euler, euler_ancestral, res_multistep, or dpmpp_2s_ancestral

    • Scheduler: simple or beta

    • Steps: 4–12; 30–50 for base model

    • CFG Scale: 1, or try 1.2–3; 2–5 for base model

    • Trigger word (for superior results): ATRX_MANUELA_FLUX2KLEIN9B

    Z-Image —Turbo

    • Diffusion Model: Z-Image Turbo, or try Z-Image [Base] —or try a finetuned model, with very good results paired with CyberRealistic Z-Image Turbo v3.0

    • LoRA strength: 1–1.6

    • Sampler: dpmpp_2s_ancestral

    • Scheduler: simple or beta

    • Steps: 4–12

    • CFG Scale: 1, or try 1.2–3; CFG Norm: 1–1.12

    • Shift: 7 (first sampler) and 0.6 (second sampler)

    • Trigger word (for superior results): ATRX_MANUELA_ZIMAGE

    • Negative prompt (as needed): "Asian woman, black hair"

    Qwen-Image 2512

    • Diffusion Model: Qwen-Image 2512

    • LoRA strength: 0.8–1

    • Sampler: res_multistep

    • Scheduler: simple

    • Steps: 20+, or 4–8 with lightning LoRA

    • CFG Scale: 2–5, or 1 with lightning LoRA; CFG Norm: 0.94–0.98

    • Shift: 3.1

    • Trigger word (strictly required!): ATRX_MANUELA_QWEN2512

    Qwen-Image

    • Diffusion Model: Qwen-Image

    • LoRA strength: 0.75–1

    • Sampler: euler

    • Scheduler: simple

    • Steps: 15+, but 20+ is better, or 4–8 with lightning LoRA

    • CFG Scale: 2–5, or 1 with lightning LoRA; CFG Norm: 0.8–0.9

    • Shift: 3.1

    • IMG-2-IMG denoise: 0.2–0.6

    Flux.1

    • Diffusion Model: Flux.Dev 1.0

    • LoRA strength: 0.8–1.4

    • Sampler: deis or euler

    • Scheduler: beta or simple (or ddim_uniform for different look, but add steps)

    • Steps: 15+, but 20+ is better, or 8–12 with turbo LoRA

    • CFG Scale: 2–5

    • IMG-2-IMG denoise: 0.65–0.85

    Pony

    • Checkpoint: Real Dream SDXL Pony 12

    • LoRA strength: 0.6–1

    • Sampler: DPM++ SDE or euler

    • Scheduler: turbo or simple

    • Steps: 20–30+, or 8–12 with turbo LoRA

    • CFG Scale: 2–5

    • ADetailer recommended

    Description

    Character likeness may be helped by including the trigger word: ATRX_MANUELA_KREA2. Can produce artistic nudes pretty well on its own, but may be further assisted when paired with a NSFW LoRA. With structured prompting, other characters described in the scene can retain most of their own distinctive features without too much bleed over.

    The dataset for training consisted of 75 high-quality photorealistic images AI-generated in Google Flow using Imagen 4 [sadly now sunsetted across all platforms]. References were pulled from previously rendered images of the same character. SeedVR2 in ComfyUI was used to upscale images from 1024x1024 to 1280x1248. Most captioning was initially produced by Qwen Chat for previous datasets with several updates for this model, including additional human curation.

    No known reference to any real person was included in any part of the training.

    FAQ