I thought it would be time to learn a new programming language. I decided to go with python, as it's an all-rounder and I have some basic knowledge on that.

The idea is to go through the Flask how-to and from there on start to implement my own homepage. This will introduce me to Python and web development at the same time.

Looking for hackers with the skills:

python django

This project is part of:

Hack Week 17 Hack Week 20

Activity

  • almost 4 years ago: bchou liked this project.
  • almost 4 years ago: pdamle left this project.
  • almost 4 years ago: pdamle started this project.
  • almost 4 years ago: mbrugger left this project.
  • over 6 years ago: thomas-schraitle liked this project.
  • over 6 years ago: kbaikov liked this project.
  • over 6 years ago: mbrugger started this project.
  • over 6 years ago: mbrugger added keyword "python" to this project.
  • over 6 years ago: mbrugger added keyword "django" to this project.
  • over 6 years ago: mbrugger originated this project.

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