Simple job queues for Python
Go to file
lowercase00 82a59e9791
feat: move `reorder_queues` to `dequeue_job` (#1853)
* feat: move `reorder_queues` to `dequeue_job`

* Update worker.py
2023-03-07 07:44:47 +07:00
.github Don't fail CI if codecov fails (#1838) 2023-02-26 07:46:08 +07:00
docs Update index.md (#1858) 2023-03-07 06:55:08 +07:00
examples Drop python2-specific syntax (#1674) 2022-07-24 08:17:07 +07:00
rq feat: move `reorder_queues` to `dequeue_job` (#1853) 2023-03-07 07:44:47 +07:00
tests New dequeue strategy (#1806) 2023-03-05 06:23:00 +07:00
.coveragerc Ignore local.py (it's tested in werkzeug instead). 2014-08-14 10:19:12 +02:00
.deepsource.toml Fix some code quality issues (#1235) 2020-05-03 17:35:01 +07:00
.gitignore Typing (#1698) 2022-10-01 16:34:30 +07:00
.mailmap Add .mailmap 2015-08-25 09:08:42 +02:00
CHANGES.md Bump version to 1.13.0 2023-02-19 16:30:07 +07:00
Dockerfile Docker (#1471) 2021-06-12 11:51:11 +07:00
LICENSE Fix year. 2012-03-28 10:49:28 +02:00
MANIFEST.in include requirements.txt in sdist (#1335) 2020-09-10 07:52:05 +07:00
Makefile Typing (#1698) 2022-10-01 16:34:30 +07:00
README.md Black style (#1292) 2023-02-04 07:42:51 +07:00
codecov.yml Add codecov.yml to ignore tests directory 2022-03-02 08:25:46 +07:00
dev-requirements.txt Job methods docstrings (#1772) 2023-01-30 11:42:04 +07:00
pyproject.toml Added black config (#1815) 2023-02-14 07:47:52 +07:00
requirements.txt Improve requirements handling (#1287) 2020-06-29 13:29:28 +07:00
setup.cfg Improve the lint situation (#1688) 2022-08-07 06:48:00 +07:00
setup.py Add 3.11 Support (#1780) 2023-01-30 11:49:40 +07:00
tox.ini Typing (#1698) 2022-10-01 16:34:30 +07:00

README.md

RQ (Redis Queue) is a simple Python library for queueing jobs and processing them in the background with workers. It is backed by Redis and it is designed to have a low barrier to entry. It should be integrated in your web stack easily.

RQ requires Redis >= 3.0.0.

Build status PyPI Coverage Code style: black

Full documentation can be found here.

Support RQ

If you find RQ useful, please consider supporting this project via Tidelift.

Getting started

First, run a Redis server, of course:

$ redis-server

To put jobs on queues, you don't have to do anything special, just define your typically lengthy or blocking function:

import requests

def count_words_at_url(url):
    """Just an example function that's called async."""
    resp = requests.get(url)
    return len(resp.text.split())

You do use the excellent requests package, don't you?

Then, create an RQ queue:

from redis import Redis
from rq import Queue

queue = Queue(connection=Redis())

And enqueue the function call:

from my_module import count_words_at_url
job = queue.enqueue(count_words_at_url, 'http://nvie.com')

Scheduling jobs are also similarly easy:

# Schedule job to run at 9:15, October 10th
job = queue.enqueue_at(datetime(2019, 10, 10, 9, 15), say_hello)

# Schedule job to run in 10 seconds
job = queue.enqueue_in(timedelta(seconds=10), say_hello)

Retrying failed jobs is also supported:

from rq import Retry

# Retry up to 3 times, failed job will be requeued immediately
queue.enqueue(say_hello, retry=Retry(max=3))

# Retry up to 3 times, with configurable intervals between retries
queue.enqueue(say_hello, retry=Retry(max=3, interval=[10, 30, 60]))

For a more complete example, refer to the docs. But this is the essence.

The worker

To start executing enqueued function calls in the background, start a worker from your project's directory:

$ rq worker --with-scheduler
*** Listening for work on default
Got count_words_at_url('http://nvie.com') from default
Job result = 818
*** Listening for work on default

That's about it.

Installation

Simply use the following command to install the latest released version:

pip install rq

If you want the cutting edge version (that may well be broken), use this:

pip install git+https://github.com/rq/rq.git@master#egg=rq

Check out these below repos which might be useful in your rq based project.

Project history

This project has been inspired by the good parts of Celery, Resque and this snippet, and has been created as a lightweight alternative to the heaviness of Celery or other AMQP-based queueing implementations.