Skip to content

vb8448/huey

This branch is 106 commits behind coleifer/huey:master.

Folders and files

NameName
Last commit message
Last commit date

Latest commit

345857d · Jun 7, 2021
Dec 16, 2020
Jun 7, 2021
Aug 13, 2020
Jun 7, 2021
Feb 28, 2018
Apr 20, 2021
Mar 4, 2017
Aug 22, 2017
Apr 2, 2019
Apr 1, 2019
Jun 30, 2020
Jun 30, 2020

Repository files navigation

http://media.charlesleifer.com/blog/photos/huey2-logo.png

a lightweight alternative.

huey is:

huey supports:

  • multi-process, multi-thread or greenlet task execution models
  • schedule tasks to execute at a given time, or after a given delay
  • schedule recurring tasks, like a crontab
  • automatically retry tasks that fail
  • task prioritization
  • task result storage
  • task locking
  • task pipelines and chains

http://i.imgur.com/2EpRs.jpg

https://api.travis-ci.org/coleifer/huey.svg?branch=master

At a glance

from huey import RedisHuey, crontab

huey = RedisHuey('my-app', host='redis.myapp.com')

@huey.task()
def add_numbers(a, b):
    return a + b

@huey.task(retries=2, retry_delay=60)
def flaky_task(url):
    # This task might fail, in which case it will be retried up to 2 times
    # with a delay of 60s between retries.
    return this_might_fail(url)

@huey.periodic_task(crontab(minute='0', hour='3'))
def nightly_backup():
    sync_all_data()

Calling a task-decorated function will enqueue the function call for execution by the consumer. A special result handle is returned immediately, which can be used to fetch the result once the task is finished:

>>> from demo import add_numbers
>>> res = add_numbers(1, 2)
>>> res
<Result: task 6b6f36fc-da0d-4069-b46c-c0d4ccff1df6>

>>> res()
3

Tasks can be scheduled to run in the future:

>>> res = add_numbers.schedule((2, 3), delay=10)  # Will be run in ~10s.
>>> res(blocking=True)  # Will block until task finishes, in ~10s.
5

For much more, check out the guide or take a look at the example code.

Running the consumer

Run the consumer with four worker processes:

$ huey_consumer.py my_app.huey -k process -w 4

To run the consumer with a single worker thread (default):

$ huey_consumer.py my_app.huey

If your work-loads are mostly IO-bound, you can run the consumer with threads or greenlets instead. Because greenlets are so lightweight, you can run quite a few of them efficiently:

$ huey_consumer.py my_app.huey -k greenlet -w 32

Storage

Huey's design and feature-set were informed by the capabilities of the Redis database. Redis is a fantastic fit for a lightweight task queueing library like Huey: it's self-contained, versatile, and can be a multi-purpose solution for other web-application tasks like caching, event publishing, analytics, rate-limiting, and more.

Although Huey was designed with Redis in mind, the storage system implements a simple API and many other tools could be used instead of Redis if that's your preference.

Huey comes with builtin support for Redis, Sqlite and in-memory storage.

Documentation

See Huey documentation.

Project page

See source code and issue tracker on Github.

Huey is named in honor of my cat:

http://m.charlesleifer.com/t/800x-/blog/photos/p1473037658.76.jpg?key=mD9_qMaKBAuGPi95KzXYqg

About

a little task queue for python

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 83.1%
  • Lua 16.9%