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README.md
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## Usage:
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This model can be used via the 🧨 Diffusers library.
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- Image resolution: 1024
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- Mixed-precision: fp16
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### Speed Comparison
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Segmind-Vega has demonstrated an impressive 100% speedup compared to the Base SDXL Model. Below is a comparison on an A100 80GB.
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Below are the speed-up metrics on an RTX 4090 GPU.
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### Model Sources
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## Speed Comparison (Segmind-Vega vs SD-1.5 vs SDXL)
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## Parameters Comparison (Segmind-Vega vs SD-1.5 vs SDXL)
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## Usage:
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This model can be used via the 🧨 Diffusers library.
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- Image resolution: 1024
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- Mixed-precision: fp16
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### Model Sources
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