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:
- 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.
- 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.
- Set up a mediagoblin instance with 2+ nodes and document how to do it.
Looking for hackers with the skills:
This project is part of:
Hack Week 17
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