Description

I wrote a household chore tracker named chorazon, which is meant to be deployed as a web application in the household's local network.

It features the ability to set up different (so far only weekly) schedules per task and per person, where tasks may span several days.

There are "tokens", which can be collected by users. Tasks can (and usually will) have rewards configured where they yield a certain amount of tokens. The idea is that they can later be redeemed for (surprise) gifts, but this is not implemented yet. (So right now one needs to edit the DB manually to subtract tokens when they're redeemed.)

Days are not rolled over automatically, to allow for task completion control.

We used it in my household for several months, with mixed success. There are many limitations in the system that would warrant a revisit.

It's written using the Pyramid Python framework with URL traversal, ZODB as the data store and Web Components for the frontend.

Goals

  • Add admin screens for users, tasks and schedules
  • Add models, pages etc. to allow redeeming tokens for gifts/surprises
  • …?

Resources

tbd (Gitlab repo)

Looking for hackers with the skills:

python python3 pyramid zodb webcomponents

This project is part of:

Hack Week 25

Activity

  • 23 days ago: gniebler added keyword "python" to this project.
  • 23 days ago: gniebler added keyword "python3" to this project.
  • 23 days ago: gniebler added keyword "pyramid" to this project.
  • 23 days ago: gniebler added keyword "zodb" to this project.
  • 23 days ago: gniebler added keyword "webcomponents" to this project.
  • 23 days ago: gniebler started this project.
  • 23 days ago: gniebler originated this project.

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