

SDXS
Overview :
SDXS is a novel diffusion model that significantly reduces model latency through model miniaturization and a reduction in sampling steps. It utilizes knowledge distillation to simplify the U-Net and image decoder architectures and introduces a novel single-step DM training technique employing feature matching and score distillation. The SDXS-512 and SDXS-1024 models achieve inference speeds of approximately 100 FPS and 30 FPS on a single GPU, respectively, which is 30 to 60 times faster than previous models. Furthermore, this training method holds potential applications in image-condition controlled generation, enabling efficient image-to-image translation.
Target Users :
Can be used for quick generation of high-quality images, image-to-image translation, image coloring, and other image processing tasks.
Use Cases
Use SDXS-512 to generate a landscape image.
Utilize SDXS to color and reconstruct a sketch image.
Automatically colorize old black-and-white photographs using SDXS.
Features
High-speed Image Generation
Image-Condition Controlled Generation
Single-step Training
Knowledge Distillation
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