Overview

πŸ€— Diffusers provides a collection of training scripts for you to train your own diffusion models. You can find all of our training scripts in diffusers/examples.

Each training script is:

Our current collection of training scripts include:

Training SDXL-support LoRA-support Flax-support
unconditional image generation Open In Colab
text-to-image πŸ‘ πŸ‘ πŸ‘
textual inversion Open In Colab πŸ‘
DreamBooth Open In Colab πŸ‘ πŸ‘ πŸ‘
ControlNet πŸ‘ πŸ‘
InstructPix2Pix πŸ‘
Custom Diffusion
T2I-Adapters πŸ‘
Kandinsky 2.2 πŸ‘
Wuerstchen πŸ‘

These examples are actively maintained, so please feel free to open an issue if they aren’t working as expected. If you feel like another training example should be included, you’re more than welcome to start a Feature Request to discuss your feature idea with us and whether it meets our criteria of being self-contained, easy-to-tweak, beginner-friendly, and single-purpose.

Install

Make sure you can successfully run the latest versions of the example scripts by installing the library from source in a new virtual environment:

git clone https://github.com/huggingface/diffusers
cd diffusers
pip install .

Then navigate to the folder of the training script (for example, DreamBooth) and install the requirements.txt file. Some training scripts have a specific requirement file for SDXL, LoRA or Flax. If you’re using one of these scripts, make sure you install its corresponding requirements file.

cd examples/dreambooth
pip install -r requirements.txt
# to train SDXL with DreamBooth
pip install -r requirements_sdxl.txt

To speedup training and reduce memory-usage, we recommend:

< > Update on GitHub