Skip to content

A modern, web-based photo management server. Run it on your home server and it will let you find the right photo from your collection on any device. Smart filtering is made possible by object recognition, location awareness, color analysis and other ML algorithms.

License

Notifications You must be signed in to change notification settings

lazee486/photonix

 
 

Repository files navigation

Photonix Photo Manager

This is a photo management application based on web technologies. Run it on your home server and it will let you find what you want from your photo collection using any device. Smart filtering is made possible automatically by object recognition, location awareness, color analysis and other algorithms.

Screenshot of photo list view

This project is currently in development and not feature complete for a version 1.0 yet. If you don't mind putting up with broken parts or want to help out, run the Docker image and give it a go. I'd love for other contributors to get involved.

Community and Social

Please join in the discussion and help us gain visibility by following us on social media. Much appreciated :)

Installing & Running

The easiest way to run it is with Docker Compose using the pre-built image following these steps.

Create a new directory to run inside and download the example Docker Compose file.

mkdir photonix
cd photonix
curl https://raw.githubusercontent.com/photonixapp/photonix/master/docker/docker-compose.example.yml > docker-compose.yml

Make volume directories for data stored outside the container.

mkdir -p  data/photos

Bring up Docker Compose which will pull and run the required Docker images.

docker-compose up

A few seconds after starting you should be able to go to http://localhost:8888/ in your browser.

You'll need to create a username, password and library. Right now this needs to be done on the command-line so run this in a new terminal window. Replace USERNAME with your own username.

docker-compose run photonix python photonix/manage.py createsuperuser --username USERNAME --email [email protected]
docker-compose run photonix python photonix/manage.py create_library USERNAME "My Library"

You can move some photos into the folder data/photos and they should get detected and imported immediately. Once you have finished trying out the system you can edit the volume in the docker-compose.yml file where it says ./data/photos to mount wherever you usually keep photos. System database, thumbnails and other cache data is stored separately from the photos so shouldn't pollute the area. You are responsible for keeping your own backups in case of error.

Upgrading

If you are using the pre-built Docker image you can use kill, pull and bring back up using the following:

# Ctrl-C to kill
docker-compose pull
docker-compose up

Developing

There is a Makefile and separate Docker Compose file docker-compose.dev.yml that you should use if you want to work on the project. Check out the repo and this setup will build the image, mount the code as volumes, hot-reload JS changes to the browser and reload the Python server for most changes.

git clone [email protected]:damianmoore/photonix.git
cd photonix
mkdir -p  data/photos
make build
make start

If you get errors such as Error starting userland proxy: listen tcp 0.0.0.0:5432: bind: address alerady in use then you probably have an existing server such as Postgres listening on the standard port. You can change Photonix's services to use alternative port numbers by editing docker/docker-compose.dev.yml and setting '5432:5432' to be '5433:5432' for example. This is for Postgres but is it a similar solution for Redis or the webserver ports.

If you want to access the Bash or Python shells for development, you can use the following command.

make shell

Testing

PyTest is used as a test runner and for creating fixtures. The easiest way to run the tests is within the Docker container like this:

make test

About

A modern, web-based photo management server. Run it on your home server and it will let you find the right photo from your collection on any device. Smart filtering is made possible by object recognition, location awareness, color analysis and other ML algorithms.

Resources

License

Code of conduct

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 63.0%
  • JavaScript 33.7%
  • CSS 2.5%
  • Other 0.8%