

Scedit
Overview :
SCEdit is an efficient generation model fine-tuning framework proposed by Alibaba. It enhances the fine-tuning capability for downstream text-to-image generation tasks and enables fast adaptation to specific generation scenarios. Compared to LoRA, it can save 30%-50% of training memory costs. Moreover, it can be directly extended to controllable image generation tasks, requiring only 7.9% of the parameter amount of ControlNet conditional generation and saving 30% of memory usage. It supports various conditional generation tasks, including edge maps, depth maps, segmentation maps, poses, color maps, and image completion.
Target Users :
Text-to-image generation, controllable image generation, image editing
Use Cases
Use SCEdit for high-quality text-to-image generation
Implement image generation with segmentation map conditional generation based on SCEdit
Generate landscape paintings with color map conditional generation using the SCEdit framework
Features
Efficient text-to-image generation
Supports various conditional image generation tasks
Saves a large amount of memory compared to LoRA
Supports fast adaptation to specific generation scenarios
Open-source code, easy to use
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