For example, I have a blog based on Django and I already have several functions for users: loginedit_profileshare.

But now I need to implement a mission system.

  1. User logins, reward 10 score per day
  2. User completes his profile, reward 20 score
  3. User shares my blogs, reward 30 score

I don't want to mix reward code with normal functions code. So I decide to use message queue. Pseudo code may look like:

def edit_profile(request):
    user = request.user
    nickname = ...
    desc = ...
    action.send(sender='edit_profile', payload={'user_id': user.id})
    return Response(...)

And the reward can subscribe this action

def edit_profile_reward(payload):
    user_id = payload['user_id']
    user = User.objects.get(id=user_id)
    mission, created = Mission.objects.get_or_create(user=user, type='complete_profile')
    if created:
         user.score += 20

But I don't know if this is the right way. If so, what message queue should I use? django-channel / django-q or something else? If not, what is the best practice?

  • Your sender/receiver method seems like a good idea. Probably easier to implement than the method I would use (i.e., database trigger coupled to and handled by a separate service). Have you tried to implement the method you've described? If so, what were the results?
    – tommy
    Nov 21, 2018 at 17:50
  • No I haven't. I'm still thinking about an appropriate approach, lol.
    – Yriuns
    Nov 22, 2018 at 16:22
  • Have you considered Django Signals? You can use post_save to run your score logic after profile is updated. Otherwise I would start a monitoring thread upon app start (perhaps with a middleware) which would consume messages put in a queue. I would use Python's built in Queue and put messages in it in my view function.
    – mehdix
    Nov 23, 2018 at 8:48
  • Yes, I know signal. But it is synchronous and that is why I mentioned django-q.
    – Yriuns
    Nov 23, 2018 at 9:07

3 Answers 3


If you are looking for Async queue, you will need a combo of Redis and workers.

One of the most common libraries, and simplest, out there for this is RQ Workers

Implementation is simple, but you will need to run the rq-workers as a separate app.

It also allows you to implement different queues with different priorities. I use these for things like sending emails or things that need to be updated without making the user wait (logs, etc...)

Django-Q is another good solution with the advantage of being able to use your current database as the queue - but also works with Redis et al...

Finally, Celery is the grandaddy of them all. You can have scheduled jobs with Celeray as well as async jobs. A bit more complex but good solution.

Hope this helps...


What you are seeking to do is fairly normal when it comes to cuing tasks with Django or any Python framework for that matter. While there is no "right" way to do this, I personally would recommend going with Redis. Considering that you would have many users receiving points this would make your querying really fast.

You can naturally makes this up with Celery to make your own Stack. Everything will be done in RAM, which will be helpful for such repetitive tasks.

You can take a look at Redis for Django over here.

You would essentially need to include this as a caching server in your settings.

In whichever file you implement cuing, remember to add the following:

from django.core.cache.backends.base import DEFAULT_TIMEOUT
from django.views.decorators.cache import cache_page

I would agree that initially setting this up seems daunting, but trust me on this it is a great way to cue any task quickly and efficiently. Give it a shot! You will find it extremely useful in all of your projects.


For asynchronous/deferred execution of tasks/jobs you can use

Celery: https://github.com/celery/celery/

Django: http://docs.celeryproject.org/en/latest/django/first-steps-with-django.html

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