We have a web app made with pyramid and served through gunicorn+nginx. It works with 8 worker threads/processes

We needed to jobs, we have chosen apscheduler. here is how we launch it

from apscheduler.events import EVENT_JOB_EXECUTED, EVENT_JOB_ERROR
from apscheduler.scheduler import Scheduler

rerun_monitor = Scheduler()
rerun_monitor.start()
rerun_monitor.add_interval_job(job_to_be_run,\
            seconds=JOB_INTERVAL)

The issue is that all the worker processes of gunicorn pick the scheduler up. We tried implementing a file lock but it does not seem like a good enough solution. What would be the best way to make sure at any given time only one of the worker process picks the scheduled event up and no other thread picks it up till next JOB_INTERVAL?

The solution needs to work even with mod_wsgi in case we decide to switch to apache2+modwsgi later. It needs to work with single process development server which is waitress.

Update from the bounty sponsor

I'm facing the same issue described by the OP, just with a Django app. I'm mostly sure adding this detail won't change much if the original question. For this reason, and to gain a bit more of visibility, I also tagged this question with django.

  • Where do the jobs come from? Do web requests sometimes add new jobs? – Alex Grönholm Apr 17 '13 at 9:37
  • No. It is just a job that monitors a resource and takes action based on the resource state. The resource state is modified by the request. – Ranjith Ramachandra Apr 17 '13 at 10:12
  • Moreover the scheduler job is added in the __init__.py of the application – Ranjith Ramachandra Apr 17 '13 at 10:14
  • Wow, I do exactly the same thing in my app except I hadn't foreseen this problem because I'm only in development with Waitress. Keeping my eye on this post! – MFB Jun 18 '14 at 23:12
up vote 11 down vote accepted

Because Gunicorn is starting with 8 workers (in your example), this forks the app 8 times into 8 processes. These 8 processes are forked from the Master process, which monitors each of their status & has the ability to add/remove workers.

Each process gets a copy of your APScheduler object, which initially is an exact copy of your Master processes' APScheduler. This results in each "nth" worker (process) executing each job a total of "n" times.

A hack around this is to run gunicorn with the following options:

env/bin/gunicorn module_containing_app:app -b 0.0.0.0:8080 --workers 3 --preload

The --preload flag tells Gunicorn to "load the app before forking the worker processes". By doing so, each worker is "given a copy of the app, already instantiated by the Master, rather than instantiating the app itself". This means the following code only executes once in the Master process:

rerun_monitor = Scheduler()
rerun_monitor.start()
rerun_monitor.add_interval_job(job_to_be_run,\
            seconds=JOB_INTERVAL)

Additionally, we need to set the jobstore to be anything other than :memory:.This way, although each worker is its own independent process unable of communicating with the other 7, by using a local database (rather then memory) we guarantee a single-point-of-truth for CRUD operations on the jobstore.

from apscheduler.schedulers.background import BackgroundScheduler
from apscheduler.jobstores.sqlalchemy import SQLAlchemyJobStore

rerun_monitor = Scheduler(
    jobstores={'default': SQLAlchemyJobStore(url='sqlite:///jobs.sqlite')})
rerun_monitor.start()
rerun_monitor.add_interval_job(job_to_be_run,\
            seconds=JOB_INTERVAL)

Lastly, we want to use the BackgroundScheduler because of its implementation of start(). When we call start() in the BackgroundScheduler, a new thread is spun up in the background, which is responsible for scheduling/executing jobs. This is significant because remember in step (1), due to our --preload flag we only execute the start() function once, in the Master Gunicorn process. By definition, forked processes do not inherit the threads of their Parent, so each worker doesn't run the BackgroundScheduler thread.

from apscheduler.jobstores.sqlalchemy import SQLAlchemyJobStore

rerun_monitor = BackgroundScheduler(
    jobstores={'default': SQLAlchemyJobStore(url='sqlite:///jobs.sqlite')})
rerun_monitor.start()
rerun_monitor.add_interval_job(job_to_be_run,\
            seconds=JOB_INTERVAL)

As a result of all of this, every Gunicorn worker has an APScheduler that has been tricked into a "STARTED" state, but actually isn't running because it drops the threads of it's parent! Each instance is also capable of updating the jobstore database, just not executing any jobs!

Check out flask-APScheduler for a quick way to run APScheduler in a web-server (like Gunicorn), and enable CRUD operations for each job.

  • The answer does make sense, I can confirm that the .start() part of my code only gets called once when done with a --preload, but some of tasks does gets triggered twice (even thought my worker configuration is -w 4) – Sreenadh T C Oct 16 at 4:49

I found a fix that worked with a Django project having a very similar issue. I simply bind a TCP socket the first time the scheduler starts and check against it subsequently. I think the following code can work for you as well with minor tweaks.

import sys, socket

try:
    sock = socket.socket(socket.AF_INET, socket.SOCK_STREAM)
    sock.bind(("127.0.0.1", 47200))
except socket.error:
    print "!!!scheduler already started, DO NOTHING"
else:
    from apscheduler.schedulers.background import BackgroundScheduler
    scheduler = BackgroundScheduler()
    scheduler.start()
    print "scheduler started"
  • I had no idea you updated the question. I could not solve the problem at all and I switched to celery. You might want to consider it because I feel celery gives you a lot more power once you have gotten your head around it. You have the option of running scheduled jobs with celery beat. – Ranjith Ramachandra Dec 5 '14 at 9:39
  • However I am accepting your answer because you seem to have found a solution and in future it might help people – Ranjith Ramachandra Dec 5 '14 at 9:39
  • @shortfellow I updated the question because after offering the bounty I realized that with a minor change would also describe my use case well without altering your question too much. If my answer didn't help just don't accept it. The celery suggestion worth a look, thanks. – Paolo Dec 5 '14 at 11:14
  • Unaccepted the answer – Ranjith Ramachandra Dec 5 '14 at 11:21
  • 1
    @GeekSambhu no idea sorry – Paolo Jan 3 at 6:30

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