Use git to clone the repository:
git clone https://github.com/unica-isde/flask-classification-2022-D
And install the requirements with
pip install -r requirements.txt
Additional requirements:
- Redis
- Docker
Configure the service by editing the file config.py
.
It is recommended to pre-download images and models before running the server. This is to avoid unnecessary waits for users.
Run prepare_images.py
and prepare_models.py
. Models will
be stored in your PyTorch cache directory, while the path for
the image directory can be found in the config.py
file.
To run the code without containers, it is sufficient to run
separately the runserver.py
script, and the worker.py
script. The worker will process jobs stored in the queue.
In order for the queue to work, you should have redis
installed and running (specify port in config.py
).