Stable diffusion for real-time music generation
Go to file
Seth Forsgren 387b4da8ff updating mask image directory 2022-12-13 17:07:49 -08:00
riffusion updating mask image directory 2022-12-13 17:07:49 -08:00
seed_images Revert "Create chill_soul_1.png" 2022-12-12 21:47:38 -08:00
.gitignore Create .gitignore 2022-11-25 13:20:10 -08:00
LICENSE Add license 2022-12-13 02:47:48 +00:00
README.md make server work 2022-12-13 06:43:46 +00:00
dev_requirements.txt Support masks 2022-11-26 06:48:52 +00:00
requirements.txt Add requirements 2022-11-26 00:13:12 +00:00

README.md

Riffusion Inference Server

Riffusion is an app for real-time music generation with stable diffusion.

Read about it at https://www.riffusion.com/about and try it at https://www.riffusion.com/.

This repository contains the Python backend does the model inference and audio processing, including:

  • a diffusers pipeline that performs prompt interpolation combined with image conditioning
  • a module for (approximately) converting between spectrograms and waveforms
  • a flask server to provide model inference via API to the next.js app
  • a model template titled baseten.py for deploying as a Truss

Install

Tested with Python 3.9 and diffusers 0.9.0

conda create --name riffusion-inference python=3.9
conda activate riffusion-inference
python -m pip install -r requirements.txt

Run

Start the Flask server:

python -m riffusion.server --port 3013 --host 127.0.0.1

You can specify --checkpoint with your own directory or huggingface ID in diffusers format.

The model endpoint is now available at http://127.0.0.1:3013/run_inference via POST request.

Example input (see InferenceInput for the API):

{
  alpha: 0.75,
  num_inference_steps: 50,
  seed_image_id: "og_beat",

  start: {
    prompt: "church bells on sunday",
    seed: 42,
    denoising: 0.75,
    guidance: 7.0,
  },

  end: {
    prompt: "jazz with piano",
    seed: 123,
    denoising: 0.75,
    guidance: 7.0,
  },
}

Example output (see InferenceOutput for the API):

{
  image: "< base64 encoded JPEG image >",
  audio: "< base64 encoded MP3 clip >",,
}