From the mediagoblin.org website:

"MediaGoblin is a free software media publishing platform that anyone can run. You can think of it as a decentralized alternative to Flickr, YouTube, SoundCloud, etc."

Backlog for Mediagoblin is huge. It includes:

  1. Merge GSoC '16 results to master. It was about adding subtitles to videos. This is one of the easiest tasks, because the work done by the student is good.
  2. Merge GSoC '17 results to master. It was about adding multiple video qualities. This tasks requires some work, because not everything was finished by the student.
  3. Set up a mediagoblin instance with 2+ nodes and document how to do it.

Looking for hackers with the skills:

mediagoblin gstreamer python

This project is part of:

Hack Week 17

Activity

  • over 6 years ago: bbobrov added keyword "python" to this project.
  • over 6 years ago: jbrielmaier liked this project.
  • over 6 years ago: bbobrov added keyword "mediagoblin" to this project.
  • over 6 years ago: bbobrov added keyword "gstreamer" to this project.
  • over 6 years ago: bbobrov added keyword "mediagoblin" to this project.
  • over 6 years ago: bbobrov added keyword "gstreamer" to this project.
  • over 6 years ago: bbobrov started this project.
  • over 6 years ago: bbobrov originated this project.

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