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Features and benefits

Features

This solution supports the cloud-based operations of the following 3 projects.

Project Supported Version Note
Stable Diffusion WebUI V 1.8.0 The default supported native/third-party extensions are listed in the table below.
ComfyUI 605e64f6d3da44235498bf9103d7aab1c95ef211 The custom nodes that require cloud-based inference support can be packaged and uploaded to the cloud in one click using the template publishing feature provided by this solution. Therefore, this solution does not include built-in support for custom nodes; users can flexibly choose to install and package them for upload.
Kohya_ss V0.8.3 Support LoRa model training based on SD 1.5 and SDXL.

Below please find the native features/third-party extensions supported by this solution for Stable Diffusion WebUI. Other extensions can be supported through BYOC (Bring Your Own Container).

Feature Supported Version Note
Stable Diffusion WebUI V1.8.0 Support LCM as official sampler, SDXL-Inpaint, etc
img2img V1.8.0 Support all features except batch
txt2img V1.8.0
LoRa V1.2.1
ControlNet V1.1.410 Support SDXL + ControlNet Inference
Tiled Diffusion & VAE f9f8073e64f4e682838f255215039ba7884553bf
ReActor for Stable Diffusion 0.6.1
Extras V1.8.0 API
rembg 3d9eedbbf0d585207f97d5b21e42f32c0042df70 API
kohya_ss

Benefits

  • Convenient Installation: This solution leverages CloudFormation for easy deployment of AWS middleware. Combined with the installation of the native Stable Diffusion WebUI (WebUI) features and third-party extensions, users can quickly utilize Amazon SageMaker's cloud resources for inference, training and finetuning tasks.

  • Community Native: This solution is implemented as an extension, allowing users to seamlessly use their existing WebUI without any changes. Additionally, the solution's code is open source and follows a non-intrusive design, enabling users to keep up with community-related feature iterations, such as popular plugins like ControlNet, and LoRa.

  • High Scalability: This solution decouples the WebUI interface from the backend, allowing the WebUI to launch on supported terminals without GPU restrictions. Existing training, inference, and other tasks can be migrated to Amazon SageMaker through the provided extension functionalities, providing users with elastic computing resources, cost reduction, flexibility, and scalability.