44

I am creating a flask application, for one request I need to run some long running job which is not required to wait on the UI. I will create a thread and send a message to UI. The thread will calculate and update the database. But, UI will see a message upon submit. Below is my implementation, but it is running the thread and then sending the output to UI which is not I prefer. How can I run this thread in the background?

@app.route('/someJob')
def index():
    t1 = threading.Thread(target=long_running_job)
    t1.start()
    return 'Scheduled a job'

def long_running_job
    #some long running processing here

How can I make thread t1 to run the background and immediately send message in return?

6 Answers 6

105

Try this example, tested on Python 3.4.3 / Flask 0.11.1

from flask import Flask
from time import sleep
from concurrent.futures import ThreadPoolExecutor

# DOCS https://docs.python.org/3/library/concurrent.futures.html#concurrent.futures.ThreadPoolExecutor
executor = ThreadPoolExecutor(2)

app = Flask(__name__)


@app.route('/jobs')
def run_jobs():
    executor.submit(some_long_task1)
    executor.submit(some_long_task2, 'hello', 123)
    return 'Two jobs were launched in background!'


def some_long_task1():
    print("Task #1 started!")
    sleep(10)
    print("Task #1 is done!")


def some_long_task2(arg1, arg2):
    print("Task #2 started with args: %s %s!" % (arg1, arg2))
    sleep(5)
    print("Task #2 is done!")


if __name__ == '__main__':
    app.run()
18
  • Yes this works in python3, but my question was specific to 2.7
    – San
    Aug 16, 2017 at 12:59
  • 1
    are you able to run this using any web-server except localhost, I mean gunicorn or apache-wsgi
    – arshpreet
    Oct 3, 2017 at 12:51
  • 3
    @arshpreet I have almost the same code working in production, running via uWSGI from 2016 until now without any problems. Test with Gunicorn also works just fine. Oct 4, 2017 at 21:40
  • 2
    If you want to use concurrent.futures with Flask, check out Flask-Executor. It provides a more idiomatic way of initialising an executor in Flask and provides some handy features (retaining the app context, application factory pattern support, decorators) Aug 28, 2018 at 1:23
  • 2
    What if some_long_task1 or some_long_task2 raised exceptions? I have wrote similar codes, but I found that the exceptions were suppressed.
    – secsilm
    Dec 13, 2019 at 8:24
27

Check out Flask-Executor which uses concurrent.futures in the background and makes your life very easy.

from flask_executor import Executor

executor = Executor(app)

@app.route('/someJob')
def index():
    executor.submit(long_running_job)
    return 'Scheduled a job'

def long_running_job
    #some long running processing here

This not only runs jobs in the background but gives them access to the app context. It also provides a way to store jobs so users can check back in to get statuses.

2
  • it has to be putted inside app context?
    – TomSawyer
    Sep 9, 2019 at 9:26
  • This works brilliantly, I have completed some examples using this executor stackoverflow.com/questions/68411571/…. However, can you please point to an example that evokes multiple background task that can run at the same time.
    – Sade
    Jul 20, 2021 at 12:24
16

The best thing to do for stuff like this is use a message broker. There is some excellent software in the python world meant for doing just this:

Both are excellent choices.

It's almost never a good idea to spawn a thread the way you're doing it, as this can cause issues processing incoming requests, among other things.

If you take a look at the celery or RQ getting started guides, they'll walk you through doing this the proper way!

3
  • 7
    yes, I knew about celery and redis queues. But, I am trying them to have as a simple thread background job. Not sure, what issues will pop up if I use threads. Can you explain. also, what change I need if I want to work the way I coded? Is it not possible at all?
    – San
    Mar 24, 2014 at 18:16
  • I'm interested in knowing how this could impact request processing please.
    – Konrad
    Jan 22, 2020 at 16:50
  • @San I suppose it's because python uses GIL and python's threads are not threads in their classic sense. Even multithreaded application is still single threaded in python. Threads in python help with IO mostly, but anything other than that in fact could impact request processing. And threads in python are not lightweight, so they do take up a chunk of resources.
    – winwin
    Sep 25, 2021 at 15:36
1

If you'd like to execute the long-running operation within the flask application context, then it's a bit easier to (as opposed to using ThreadPoolExecutor, taking care of exceptions):

  1. Define a command line for your application (cli.py) - because all web applications should have an admin cli anyway.
  2. subprocess.Popen (no wait) the command line in a web request.

For example:

# cli.py

import click
import yourpackage.app
import yourpackage.domain

app = yourpackage.app.create_app()

@click.group()
def cli():
    pass

@click.command()
@click.argument('foo_id')
def do_something(foo_id):
    with app.app_context():
        yourpackage.domain.do_something(foo_id)

if __name__ == '__main__':
    cli.add_command(do_something)
    cli()

Then,

# admin.py (flask view / controller)

bp = Blueprint('admin', __name__, url_prefix='/admin')

@bp.route('/do-something/<int:foo_id>', methods=["POST"])
@roles_required('admin')
def do_something(foo_id):
    yourpackage.domain.process_wrapper_do_something(foo_id)
    flash("Something has started.", "info")
    return redirect(url_for("..."))

And:

# domain.py

import subprocess

def process_wrapper_do_something(foo_id):
    command = ["python3", "-m", "yourpackage.cli", "do_something", str(foo_id)]
    subprocess.Popen(command)

def do_something(foo_id):
    print("I am doing something.")
    print("This takes some time.")
0

Agree with the marked answer from @rdegges. Sorry my account doesn't have enough credit to add comment under the answer, but I want to make it clear on "Why to use a message broker, instead of spawning a thread (or process)".

The other answers about ThreadPoolExecutor and flask_executor are creating a new thread (or process, as flask_executor is capable of) to execute the "long_running_job". These new threads/processes will have the same context as the main website:

For threads: The new thread will be able to access the context of the website application, change things, or break it, if this thread raises an exception; For processes: The new process will have a copy of the context of the website application. If the website somehow use a lot of memory in initialization, the new process will have a copy of it too, even if the process is not going to utilize this part of the memory.

On another hand, if you are using a message broker, and another application to retrieve the job message to work on it, the new application will have nothing to do with the website application, also it doesn't copy the memory from the web app.

In the future, when your application is big enough, you can place your application into another server (or servers), It is easy to scale out.

0

If you want use Celery with flask. Firstly check your operation and when operation completed redirect your celery task. You can check this link if you dont now celery: FLASK: How to establish connection with mysql server?

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