Sonnenhut is a simple Pythong web app that provides basic info useful for planning photographic activities. The current iteration does the job, but it can be improved and extended in a number of ways.

If you are interested in photography and familiar with Python, you are welcome to join and contribute to the project.

Looking for hackers with the skills:

photography python3 python

This project is part of:

Hack Week 15

Activity

  • over 7 years ago: dpopov removed keyword [hw15challenge] from this project.
  • over 7 years ago: dpopov added keyword "[hw15challenge]" to this project.
  • almost 8 years ago: dpopov joined this project.
  • almost 8 years ago: thomas-schraitle started this project.
  • almost 8 years ago: thomas-schraitle liked this project.
  • almost 8 years ago: dpopov added keyword "photography" to this project.
  • almost 8 years ago: dpopov added keyword "python3" to this project.
  • almost 8 years ago: dpopov added keyword "python" to this project.
  • almost 8 years ago: dpopov originated this project.

  • Comments

    • thomas-schraitle
      almost 8 years ago by thomas-schraitle | Reply

      Go Dmitri, go! :-)

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