Skip to main content

Provides job scheduling capabilities to RQ (Redis Queue)

Project description

RQ Scheduler

RQ Scheduler is a small package that adds job scheduling capabilities to RQ, a Redis based Python queuing library.

https://travis-ci.org/ui/rq-scheduler.svg?branch=master

Requirements

Installation

You can install RQ Scheduler via pip:

pip install rq-scheduler

Or you can download the latest stable package from PyPI.

Usage

Schedule a job involves doing two different things:

  1. Putting a job in the scheduler

  2. Running a scheduler that will move scheduled jobs into queues when the time comes

Scheduling a Job

There are two ways you can schedule a job. The first is using RQ Scheduler’s enqueue_at:

from redis import Redis
from rq_scheduler import Scheduler
from datetime import datetime

scheduler = Scheduler(connection=Redis()) # Get a scheduler for the "default" queue

# Puts a job into the scheduler. The API is similar to RQ except that it
# takes a datetime object as first argument. So for example to schedule a
# job to run on Jan 1st 2020 we do:
scheduler.enqueue_at(datetime(2020, 1, 1), func) # Date time should be in UTC

# Here's another example scheduling a job to run at a specific date and time (in UTC),
# complete with args and kwargs.
scheduler.enqueue_at(datetime(2020, 1, 1, 3, 4), func, foo, bar=baz)

The second way is using enqueue_in. Instead of taking a datetime object, this method expects a timedelta and schedules the job to run at X seconds/minutes/hours/days/weeks later. For example, if we want to monitor how popular a tweet is a few times during the course of the day, we could do something like:

from datetime import timedelta

# Schedule a job to run 10 minutes, 1 hour and 1 day later
scheduler.enqueue_in(timedelta(minutes=10), count_retweets, tweet_id)
scheduler.enqueue_in(timedelta(hours=1), count_retweets, tweet_id)
scheduler.enqueue_in(timedelta(days=1), count_retweets, tweet_id)

IMPORTANT: You should always use UTC datetime when working with RQ Scheduler.

Periodic & Repeated Jobs

As of version 0.3, RQ Scheduler also supports creating periodic and repeated jobs. You can do this via the schedule method. Note that this feature needs RQ >= 0.3.1.

This is how you do it:

scheduler.schedule(
    scheduled_time=datetime.utcnow(), # Time for first execution, in UTC timezone
    func=func,                     # Function to be queued
    args=[arg1, arg2],             # Arguments passed into function when executed
    kwargs={'foo': 'bar'},         # Keyword arguments passed into function when executed
    interval=60,                   # Time before the function is called again, in seconds
    repeat=10                      # Repeat this number of times (None means repeat forever)
)

IMPORTANT NOTE: If you set up a repeated job, you must make sure that you either do not set a result_ttl value or you set a value larger than the interval. Otherwise, the entry with the job details will expire and the job will not get re-scheduled.

Cron Jobs

As of version 0.5.2, RQ Scheduler also supports creating Cron Jobs, which you can use for repeated jobs to run periodically at fixed times, dates or intervals, for more info check https://en.wikipedia.org/wiki/Cron. You can do this via the cron method.

This is how you do it:

scheduler.cron(
    cron_string,                # A cron string (e.g. "0 0 * * 0")
    func=func,                  # Function to be queued
    args=[arg1, arg2],          # Arguments passed into function when executed
    kwargs={'foo': 'bar'},      # Keyword arguments passed into function when executed
    repeat=10                   # Repeat this number of times (None means repeat forever)
    queue_name=queue_name       # In which queue the job should be put in
)

Retrieving scheduled jobs

Sometimes you need to know which jobs have already been scheduled. You can get a list of enqueued jobs with the get_jobs method:

list_of_job_instances = scheduler.get_jobs()

In it’s simplest form (as seen in the above example) this method returns a list of all job instances that are currently scheduled for execution.

Additionally the method takes two optional keyword arguments until and with_times. The first one specifies up to which point in time scheduled jobs should be returned. It can be given as either a datetime / timedelta instance or an integer denoting the number of seconds since epoch (1970-01-01 00:00:00). The second argument is a boolen that determines whether the scheduled execution time should be returned along with the job instances.

Example:

# get all jobs until 2012-11-30 10:00:00
list_of_job_instances = scheduler.get_jobs(until=datetime(2012, 10, 30, 10))

# get all jobs for the next hour
list_of_job_instances = scheduler.get_jobs(until=timedelta(hours=1))

# get all jobs with execution times
jobs_and_times = scheduler.get_jobs(with_times=True)
# returns a list of tuples:
# [(<rq.job.Job object at 0x123456789>, datetime.datetime(2012, 11, 25, 12, 30)), ...]

Checking if a job is scheduled

You can check whether a specific job instance or job id is scheduled for execution using the familiar python in operator:

if job_instance in scheduler:
    # Do something
# or
if job_id in scheduler:
    # Do something

Canceling a job

To cancel a job, simply do:

scheduler.cancel(job)

Running the scheduler

RQ Scheduler comes with a script rqscheduler that runs a scheduler process that polls Redis once every minute and move scheduled jobs to the relevant queues when they need to be executed:

# This runs a scheduler process using the default Redis connection
rqscheduler

If you want to use a different Redis server you could also do:

rqscheduler --host localhost --port 6379 --db 0

The script accepts these arguments:

  • -H or --host: Redis server to connect to

  • -p or --port: port to connect to

  • -d or --db: Redis db to use

  • -P or --password: password to connect to Redis

The arguments pull default values from environment variables with the same names but with a prefix of RQ_REDIS_.

Changelog

Version 0.6.0
  • Added scheduler.cron() capability. Thanks @petervtzand!

  • scheduler.schedule() now accepts id and ttl kwargs. Thanks @mbodock!

Version 0.5.1
  • Travis CI fixes. Thanks Steven Kryskalla!

  • Modified default logging configuration. You can pass in the -v or --verbose argument to rqscheduler script for more verbose logging.

  • RQ Scheduler now registers Queue name when a new job is scheduled. Thanks @alejandrodob !

  • You can now schedule jobs with string references like scheduler.schedule(scheduled_time=now, func='foo.bar'). Thanks @SirScott !

  • rqscheduler script now accepts floating point intervals. Thanks Alexander Pikovsky!

Version 0.5.0
  • IMPORTANT! Job timestamps are now stored and interpreted in UTC format. If you have existing scheduled jobs, you should probably change their timestamp to UTC before upgrading to 0.5.0. Thanks @michaelbrooks!

  • You can now configure Redis connection via environment variables. Thanks @malthe!

  • rqscheduler script now accepts --pid argument. Thanks @jsoncorwin!

Version 0.4.0
  • Supports Python 3!

  • Scheduler.schedule now allows job timeout to be specified

  • rqscheduler allows Redis connection to be specified via --url argument

  • rqscheduler now accepts --path argument

Version 0.3.6
  • Scheduler key is not set to expire a few seconds after the next scheduling operation. This solves the issue of rqscheduler refusing to start after an unexpected shut down.

Version 0.3.5
  • Support StrictRedis

Version 0.3.4
  • Scheduler related job attributes (interval and repeat) are now stored in job.meta introduced in RQ 0.3.4

Version 0.3.3
  • You can now check whether a job is scheduled for execution using job in scheduler syntax

  • Added scheduler.get_jobs method

  • scheduler.enqueue and scheduler.enqueue_periodic will now raise a DeprecationWarning, please use scheduler.schedule instead

Version 0.3.2
  • Periodic jobs now require RQ >= 0.3.1

Version 0.3
  • Added the capability to create periodic (cron) and repeated job using scheduler.enqueue

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

rq-scheduler-0.6.0.tar.gz (13.9 kB view hashes)

Uploaded Source

Built Distribution

rq_scheduler-0.6.0-py2.py3-none-any.whl (14.9 kB view hashes)

Uploaded Python 2 Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page