I'm busy writing a small game server to try out flask. The game exposes an API via REST to users. It's easy for users to perform actions and query data, however I'd like to service the "game world" outside the app.run() loop to update game entities, etc. Given that Flask is so cleanly implemented, I'd like to see if there's a Flask way to do this.

  • You mean something like Flask-Admin? Or if you are using an ORM (SQL-Alchemy), then you can just create a new db session to query the database even if the application is running.
    – reptilicus
    Jan 17, 2013 at 18:38
  • It looks like there's a hackish way to do it, but I don't think this is technically supported. I also found this answer, which talks about using flask-celery for this.
    – girasquid
    Jan 17, 2013 at 18:42
  • If you actually need to do a lot of computation, you might want to use the subprocess module, and simply spawn new processes to do that additional computation.
    – Maus
    Jan 17, 2013 at 22:02
  • @girasquid Agreed, celery or some other task queue system is ideal for this sort of thing - you generally have less control over threads or sub-processes (since the parent process may be reaped by the server without notice). Jan 18, 2013 at 3:14
  • That is a plan, however the sub process will be manipulating data structures, that you'd like to access and set via the exposed flask api. Will I not run into problems?
    – Marinus
    Jan 18, 2013 at 14:41

3 Answers 3


Your additional threads must be initiated from the same app that is called by the WSGI server.

The example below creates a background thread that executes every 5 seconds and manipulates data structures that are also available to Flask routed functions.

import threading
import atexit
from flask import Flask

POOL_TIME = 5 #Seconds
# variables that are accessible from anywhere
commonDataStruct = {}
# lock to control access to variable
dataLock = threading.Lock()
# thread handler
yourThread = threading.Thread()

def create_app():
    app = Flask(__name__)

    def interrupt():
        global yourThread

    def doStuff():
        global commonDataStruct
        global yourThread
        with dataLock:
            # Do your stuff with commonDataStruct Here

        # Set the next thread to happen
        yourThread = threading.Timer(POOL_TIME, doStuff, ())

    def doStuffStart():
        # Do initialisation stuff here
        global yourThread
        # Create your thread
        yourThread = threading.Timer(POOL_TIME, doStuff, ())

    # Initiate
    # When you kill Flask (SIGTERM), clear the trigger for the next thread
    return app

app = create_app()          

Call it from Gunicorn with something like this:

gunicorn -b --log-config log.conf --pid=app.pid myfile:app
  • 14
    I found this to be problematic when using flask's auto-reload functionality (a new thread got created on every reload). To fix this, I used werkzeug.serving.is_running_from_reloader to only create it when the app is not running from the reloader.
    – raffomania
    Sep 6, 2015 at 13:05
  • 2
    @caio it should be "with dataLock:" capital L above. Jun 20, 2016 at 19:43
  • This is a nice solution; helps deal with flask apps that use multiprocessing or threading modules. I like it. Jan 14, 2017 at 7:08
  • 2
    This example is a little confusing because the object created called "yourThread" is not a thread. It's a timer: suggest you rename it. And, when yourTimer is executed ( in doStuff ), I don't know if yourThread is valid - ie, if you can execute cancel on a Timer that hasn't been executed. It has the efficiency issue that it's creating a new object every execution, if that might be an issue. Apr 10, 2017 at 4:07
  • 1
    The correct statement for checking "is_running_in_background()" is like so: from werkzeug.serving import is_running_from_reloader if is_running_from_reloader() == False: startBackground() Apr 10, 2017 at 16:25

In addition to using pure threads or the Celery queue (note that flask-celery is no longer required), you could also have a look at flask-apscheduler:


A simple example copied from https://github.com/viniciuschiele/flask-apscheduler/blob/master/examples/jobs.py:

from flask import Flask
from flask_apscheduler import APScheduler

class Config(object):
    JOBS = [
            'id': 'job1',
            'func': 'jobs:job1',
            'args': (1, 2),
            'trigger': 'interval',
            'seconds': 10


def job1(a, b):
    print(str(a) + ' ' + str(b))

if __name__ == '__main__':
    app = Flask(__name__)

    scheduler = APScheduler()
    # it is also possible to enable the API directly
    # scheduler.api_enabled = True

  • Can we start multiple jobs concurently that will not share same object storage?
    – alper
    Sep 13, 2021 at 21:23

First, you should use any WebSocket or polling mechanics to notify the frontend part about changes that happened. I use Flask-SocketIO wrapper, and very happy with async messaging for my tiny apps.

Nest, you can do all logic which you need in a separate thread(s), and notify the frontend via SocketIO object (Flask holds continuous open connection with every frontend client).

As an example, I just implemented page reload on backend file modifications:

<!doctype html>
    sio = io()

class App(Web, Module):

    def __init__(self, V):
        ## flask module instance
        self.flask = flask
        ## wrapped application instance
        self.app = flask.Flask(self.value)
        self.app.config['SECRET_KEY'] = config.SECRET_KEY
        ## `flask-socketio`
        self.sio = SocketIO(self.app)

    ## inotify reload files after change via `sio(reload)``
    def watchfiles(self):
        from watchdog.observers import Observer
        from watchdog.events import FileSystemEventHandler
        class Handler(FileSystemEventHandler):
            def __init__(self,sio):
                self.sio = sio
            def on_modified(self, event):
        self.observer = Observer()

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.