Skip to content

All of the Civitai models inside Automatic 1111 Stable Diffusion Web UI

Notifications You must be signed in to change notification settings

Metamorphart/sd_civitai_extension

 
 

Repository files navigation

Civitai Extension for Automatic 1111 Stable Diffusion Web UI

Bringing together the power of Civitai and Automatic 1111

⚠️ This is a work in progress and not something you can use yet.

Features

  • Automatically download preview images for all models, LORAs, hypernetworks, and embeds
  • Automatically download a model based on the model hash upon applying pasted generation params
  • Resources in Metadata: Include the SHA256 hash of all resources used in an image to be able to automatically link to corresponding resources on Civitai
  • Flexible Resource Naming in Metadata: Hashify the names of resources in prompts to avoid issues with resource renaming and make prompts more portable
  • Civitai Link: Optional websocket connection to be able to add/remove resources and more in your SD instance while browsing Civitai or other Civitai Link enabled sites.

Installation

Through the Extensions UI (Recommended)

  1. Open the Extensions Tab in Automatic1111 SD Web UI
  2. In the Extension Tab Open the "Instal from URL" tab
  3. Paste https://github.com/civitai/sd_civitai_extension.git into the URL input
  4. Press install and wait for it to complete
  5. Restart Automatic1111 (Reloading the UI will not install the necessary requirements)

Manually

  1. Download the repo using any method (zip download or cloning)
git clone https://github.com/civitai/sd_civitai_extension.git
  1. After downloading the repo, open a command prompt in that location
cd C:\path\to\sd_civitai_extension
  1. Then run the included install.py script
py install.py
# OR
python install.py

Here to help?

Hop into the development channel in our Discord server and let's chat!

About

All of the Civitai models inside Automatic 1111 Stable Diffusion Web UI

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 89.3%
  • JavaScript 7.4%
  • CSS 3.3%