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](https://github.com/rq/rq/workflows/Test%20rq/badge.svg)](https://github.com/rq/rq/actions?query=workflow%3A%22Test+rq%22) [![PyPI](https://img.shields.io/pypi/pyversions/rq.svg)](https://pypi.python.org/pypi/rq) [![Coverage](https://codecov.io/gh/rq/rq/branch/master/graph/badge.svg)](https://codecov.io/gh/rq/rq) Full documentation can be found [here][d]. ## Support RQ If you find RQ useful, please consider supporting this project via [Tidelift](https://tidelift.com/subscription/pkg/pypi-rq?utm_source=pypi-rq&utm_medium=referral&utm_campaign=readme). ## Getting started First, run a Redis server, of course: ```console $ redis-server ``` To put jobs on queues, you don't have to do anything special, just define your typically lengthy or blocking function: ```python 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][r] package, don't you? Then, create an RQ queue: ```python from redis import Redis from rq import Queue queue = Queue(connection=Redis()) ``` And enqueue the function call: ```python from my_module import count_words_at_url job = queue.enqueue(count_words_at_url, 'http://nvie.com') ``` Scheduling jobs are also similarly easy: ```python # 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: ```python 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][d]. But this is the essence. ### The worker To start executing enqueued function calls in the background, start a worker from your project's directory: ```console $ 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 ## Related Projects Check out these below repos which might be useful in your rq based project. - [rq-dashboard](https://github.com/Parallels/rq-dashboard) - [rqmonitor](https://github.com/pranavgupta1234/rqmonitor) - [django-rq](https://github.com/rq/django-rq) - [Flask-RQ2](https://github.com/rq/Flask-RQ2) - [rq-scheduler](https://github.com/rq/rq-scheduler) ## Project history This project has been inspired by the good parts of [Celery][1], [Resque][2] and [this snippet][3], and has been created as a lightweight alternative to the heaviness of Celery or other AMQP-based queueing implementations. [r]: http://python-requests.org [d]: http://python-rq.org/ [m]: http://pypi.python.org/pypi/mailer [p]: http://docs.python.org/library/pickle.html [1]: http://www.celeryproject.org/ [2]: https://github.com/resque/resque [3]: https://github.com/fengsp/flask-snippets/blob/1f65833a4291c5b833b195a09c365aa815baea4e/utilities/rq.py