Placeholder: women and men from the industry thinking together in front of a complex blueprint with flowcharts, they are considering use cases women and men from the industry thinking together in front of a complex blueprint with flowcharts, they are considering use cases

@generalpha

Prompt

women and men from the industry thinking together in front of a complex blueprint with flowcharts, they are considering use cases

statue, doubles, twins, entangled fingers, Worst Quality, ugly, ugly face, watermarks, undetailed, unrealistic, double limbs, worst hands, worst body, Disfigured, double, twin, dialog, book, multiple fingers, deformed, deformity, ugliness, poorly drawn face, extra_limb, extra limbs, bad hands, wrong hands, poorly drawn hands, messy drawing, cropped head, bad anatomy, lowres, extra digit, fewer digit, worst quality, low quality, jpeg artifacts, watermark, missing fingers, cropped, poorly drawn

1 month ago

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Model

SSD-1B

Guidance Scale

7

Dimensions

1024 × 1024

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