Spaces:
Running
title: DALL·E mini
emoji: 🥑
colorFrom: red
colorTo: purple
sdk: streamlit
app_file: app/app.py
pinned: false
DALL·E Mini
Generate images from a text prompt
Our logo was generated with DALL·E mini using the prompt "logo of an armchair in the shape of an avocado".
You can create your own pictures with the demo (temporarily in beta on Huging Face Spaces but soon to be open to all).
How does it work?
Refer to our report.
Where does the logo come from?
The "armchair in the shape of an avocado" was used by OpenAI when releasing DALL·E to illustrate the model's capabilities. Having successful predictions on this prompt represents a big milestone to us.
Development
This section is for the adventurous people wanting to look into the code.
Dependencies Installation
The root folder and associated requirements.txt
is only for the app.
You will find necessary requirements in each sub-section.
You should create a new python virtual environment and install the project dependencies inside the virtual env. You need to use the -f
(--find-links
) option for pip
to be able to find the appropriate libtpu
required for the TPU hardware.
Adapt the installation to your own hardware and follow library installation instructions.
$ pip install -r requirements.txt -f https://storage.googleapis.com/jax-releases/libtpu_releases.html
If you use conda
, you can create the virtual env and install everything using: conda env update -f environments.yaml
Training of VQGAN
The VQGAN was trained using taming-transformers.
We recommend using the latest version available.
Conversion of VQGAN to JAX
Training of Seq2Seq
Refer to dev/seq2seq
folder.
You can also adjust the sweep configuration file if you need to perform a hyperparameter search.
Inference
Refer to dev/notebooks/demo
.
Authors
- Boris Dayma
- Suraj Patil
- Pedro Cuenca
- Khalid Saifullah
- Tanishq Abraham
- Phúc Lê Khắc
- Luke Melas
- Ritobrata Ghosh
Acknowledgements
- 🤗 Hugging Face for organizing the FLAX/JAX community week
- Google Cloud team for providing access to TPU's