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Django Too Simple Queue

PyPI version Workflow

This packages provides a simplistic task queue and scheduler for Django.

It is geared towards basic apps, where simplicity primes. The package offers simple decorator syntax, including cron-like schedules.

Features :

  • no celery/redis/rabbitmq/whatever... just Django !
  • clean decorator syntax to register tasks and schedules
  • simple queuing syntax
  • cron-like scheduling
  • tasks.py autodiscovery
  • django admin integration
  • tasks results stored using the Django ORM
  • replacement tasks on interruption

Limitations :

  • no multithreading yet (but running multiple workers should work)
  • not well suited for projects spawning a high volume of tasks

Compatibility:

  • Django 3.2 and 4.0
  • Python 3.8, 3.9, 3.10

Installation

Install the library :

pip install django-toosimple-q

Enable the app in settings.py :

INSTALLED_APPS = [
    # ...
    'django_toosimple_q',
    # ...
]

Quickstart

Tasks need to be registered using the @register_task() decorator. Once registered, they can be added to the queue by calling the .queue() function.

from django_toosimple_q.decorators import register_task

# Register a task
@register_task()
def my_task(name):
    return f"Hello {name} !"

# Enqueue tasks
my_task.queue("John")
my_task.queue("Peter")

Registered tasks can be scheduled from code using this cron-like syntax :

from django_toosimple_q.decorators import register_task, schedule_task

# Register and schedule tasks (each morning at 8:30)
@schedule_task(cron="30 8 * * *", args=['John'])
@register_task()
def morning_routine(name):
    return f"Good morning {name} !"

To consume the tasks, you need to run at least one worker :

python manage.py worker

The workers will take care of adding scheduled tasks to the queue when needed, and will execute the tasks.

The package autoloads tasks.py from all installed apps. While this is the recommended place to define your tasks, you can do so from anywhere in your code.

Advanced usage

Tasks

You can optionnaly give a custom name to your tasks. This is required when your task is defined in a local scope.

@register_task(name="my_favourite_task")
def my_task():
    ...

You can set task priorities.

@register_task(priority=0)
def my_favourite_task():
    ...

@register_task(priority=1)
def my_other_task():
    ...

# Enqueue tasks
my_other_task.queue()
my_favourite_task.queue()  # will be executed before the other one

You can define retries=N and retry_delay=S to retry the task in case of failure. The delay (in second) will double on each failure.

@register_task(retries=10, retry_delay=60)
def download_data():
    ...

You can mark a task as unique=True if the task shouldn't be queued again if already queued with the same arguments. This is usefull for tasks such as cleaning or refreshing.

@register_task(unique=True)
def cleanup():
    ...

cleanup.queue()
cleanup.queue()  # this will be ignored as long as the first one is still queued

You can assign tasks to specific queues, and then have your worker only consume tasks from specific queues using --queue myqueue or --exclude_queue myqueue. By default, workers consume all tasks.

@register_task(queue='long_running')
def long_task():
    ...

@register_task()
def short_task():
    ...

# Then run those with these workers, so that long
# running tasks don't prevent short running tasks
# from being run :
# manage.py worker --exclude_queue long_running
# manage.py worker

You can enqueue tasks with a specific due date.

@register_task()
def my_task():
    ...

# Enqueue tasks
from datetime import datetime, timedelta
my_task.queue("John", due=datetime.now() + timedelta(hours=1))

The queue() function returns a TaskExec model instance, which holds information about the task execution, including the task result.

from django.core.management import call_command
from django_toosimple_q.models import TaskExec

@register_task()
def multiply(a, b):
    return a * b

t = multiply.queue(3, 4)

assert t.state == TaskExec.States.QUEUED
assert t.result == None

call_command("worker", "--until_done")  # equivalent to `python manage.py worker --until_done`

t.refresh_from_db()
assert t.state == TaskExec.States.SUCCEEDED
assert t.result == 12

Schedules

You may define multiple schedules for the same task. In this case, it is mandatory to specify a unique name :

@schedule_task(name="afternoon_routine", cron="30 16 * * *", args=['afternoon'])
@schedule_task(name="morning_routine", cron="30 8 * * *", args=['morning'])
@register_task()
def my_task(time_of_day):
    return f"Good {time_of_day} John !"

By default, last_run is set to now() on schedule creation. This means they will only run on next cron occurence. If you need your schedules to be run as soon as possible after initialisation, you can specify run_on_creation=True.

@schedule_task(cron="30 8 * * *", run_on_creation=True)
@register_task()
def my_task():
    ...

By default, if some crons where missed (e.g. after a server shutdown or if the workers can't keep up with all tasks), the missed tasks will be lost. If you need the tasks to catch up, set catch_up=True.

@schedule_task(cron="30 8 * * *", catch_up=True)
@register_task()
def my_task():
    ...

You may get the schedule's cron datetime provided as a keyword argument to the task using the datetime_kwarg argument. This is often useful in combination with catch_up, for things like report generation. Remember to treat the case where the argument is None (which happens when the task is run outside of the schedule).

@schedule_task(cron="30 8 * * *", datetime_kwarg="scheduled_on", catch_up=True)
@register_task()
def my_task(scheduled_on):
    if scheduled_on:
        return f"This was scheduled for {scheduled_on.isoformat()}."
    else:
        return "This was not scheduled."

Similarly to tasks, you can assign schedules to specific queues, and then have your worker only consume tasks from specific queues using --queue myqueue or --exclude_queue myqueue.

@schedule_task(cron="30 8 * * *", queue='scheduler')
@register_task(queue='worker')
def task():
    ...

# Then run those with these workers
# manage.py worker --queue scheduler
# manage.py worker --queue worker

Schedule's cron support a non-standard sixth argument for seconds :

from django_toosimple_q.decorators import register_task, schedule_task

# A schedule running every 15 seconds
@schedule_task(cron="* * * * * */15")
@register_task()
def morning_routine():
    return f"15 seconds passed !"

Schedule's cron can also be set to manual in which case it never runs, but can only be triggered manually from the admin :

from django_toosimple_q.decorators import register_task, schedule_task

# A schedule that only runs when manually triggered
@schedule_task(cron="manual")
@register_task()
def for_special_occasions():
    return f"this was triggered manually !"

Management comment

Besides standard django management commands arguments, the management command supports following arguments.

usage: manage.py worker [--queue QUEUE | --exclude_queue EXCLUDE_QUEUE]
                        [--tick TICK]
                        [--once | --until_done]
                        [--label LABEL]
                        [--timeout TIMEOUT]

optional arguments:
  --queue QUEUE         which queue to run (can be used several times, all
                        queues are run if not provided)
  --exclude_queue EXCLUDE_QUEUE
                        which queue not to run (can be used several times, all
                        queues are run if not provided)
  --tick TICK           frequency in seconds at which the database is checked
                        for new tasks/schedules
  --once                run once then exit (useful for debugging)
  --until_done          run until no tasks are available then exit (useful for
                        debugging)
  --label LABEL         the name of the worker to help identifying it ('{pid}'
                        will be replaced by the process id)
  --timeout TIMEOUT     the time in seconds after which this worker will be considered
                        offline (set this to a value higher than the longest tasks this
                        worker will execute)

Contrib apps

django_toosimple_q.contrib.mail

A queued email backend to send emails asynchronously, preventing your website from failing completely in case the upstream backend is down.

Enable and configure the app in settings.py :

INSTALLED_APPS = [
    # ...
    'django_toosimple_q.contrib.mail',
    # ...
]

EMAIL_BACKEND = 'django_toosimple_q.contrib.mail.backends.QueueBackend'

# Actual Django email backend used, defaults to django.core.mail.backends.smtp.EmailBackend, see https://docs.djangoproject.com/en/3.2/ref/settings/#email-backend
TOOSIMPLEQ_EMAIL_BACKEND = 'django.core.mail.backends.smtp.EmailBackend'

Head to the Django documentation for usage.

Dev

Automated tests

To run tests, we recommend using Docker :

docker compose build
# run all tests
docker compose run django test
# or to run just a specific test
docker compose run django test django_toosimple_q.tests.tests_worker.TestWorker

Tests are run automatically on github.

Manual testing

Manual testing can be done like this:

# start a dev server and a worker
docker compose build
docker compose run django migrate
docker compose run django createsuperuser
docker compose up

Then connect on 127.0.0.1:8000/admin/

Without docker

To run tests locally without Docker (by default, tests runs against an in-memory sqlite database):

pip install -r requirements-dev.txt
python manage.py test

Contribute

Code style is done with pre-commit :

pip install -r requirements-dev.txt
pre-commit install

Internals

Terms

Task: a callable with a known name in the registry. These are typically registered in tasks.py.

TaskExecution: a specific planned or past call of a task, including inputs (arguments) and outputs. This is a model, whose instanced are typically created using mycallable.queue() or from schedules.

Schedule: a configuration for repeated execution of tasks. These are typically configured in tasks.py.

ScheduleExecution: the last execution of a schedule (e.g. keeps track of the last time a schedule actually lead to generate a task execution). This is a model, whose instances are created by the worker.

Registry: a dictionary keeping all registered schedules and tasks.

Worker: a management command that executes schedules and tasks on a regular basis.

Changelog

  • 2023-12-04 : v1.0.0b ⚠ BACKWARDS INCOMPATIBLE RELEASE ⚠

    • feature: added workerstatus to the admin, allowing to monitor workers
    • feature: queue tasks for later (mytask.queue(due=now()+timedelta(hours=2)))
    • feature: assign queues to schedules (@schedule_task(queue="schedules"))
    • feature: allow manual schedules that are only run manually through the admin (@schedule_task(cron="manual"))
    • refactor: removed non-execution related data from the database (clarifying the fact tha the source of truth is the registry)
    • refactor: better support for concurrent workers
    • refactor: better names for models and decorators
    • refactor: optimise task exec admin listing when results, stdout or stderr holds large data
    • infra: included a demo project
    • infra: improved testing, including for concurrency behaviour
    • infra: updated compatibility to Django 3.2/4.1/4.2 and Python 3.8-3.11
    • quick migration guide:
      • rename @schedule -> @schedule_task
      • task name must now be provided as a kwarg: @register_task("mytask") -> @register_task(name="mytask"))
      • replace @schedule_task(..., last_check=None) -> @schedule_task(..., run_on_creation=True)
      • models: Schedule -> ScheduleExec and Task -> TaskExec
      • renamed ScheduleExec.last_run to ScheduleExec.last_task
  • 2022-03-24 : v0.4.0

    • made last_check and last_run optional in the admin
    • defined id fields
  • 2021-07-15 : v0.3.0

    • added contrib.mail
    • task replacement now tracked with a FK instead of a state
    • also run tests on postgres
    • added datetime_kwarg argument to schedules
  • 2021-06-11 : v0.2.0

    • added retries, retry_delay options for tasks
    • improve logging
  • 2020-11-12 : v0.1.0

    • fixed bug where updating schedule failed
    • fixed worker not doing all available tasks for each tick
    • added --tick argument
    • enforce uniqueness of schedule

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Simplistic task queue and cron-like scheduler for Django

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