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I have web application written in Flask. As suggested by everyone, I can't use Flask in production. So I thought of Gunicorn with Flask.

In Flask application I am loading some Machine Learning models. These are of size 8GB collectively. Concurrency of my web application can go upto 1000 requests. And the RAM of machine is 15GB.
So what is the best way to run this application?

2
  • 9
    Seeing this is quite old, but could you tell us please what did you go with in the end? Having the same situation currently..
    – galloper
    Nov 18, 2020 at 14:34
  • got solution? @neel Sep 4, 2021 at 14:01

2 Answers 2

70

You can start your app with multiple workers or async workers with Gunicorn.

Flask server.py

from flask import Flask
app = Flask(__name__)

@app.route("/")
def hello():
    return "Hello World!"

if __name__ == "__main__":
    app.run()

Gunicorn with gevent async worker

gunicorn server:app -k gevent --worker-connections 1000

Gunicorn 1 worker 12 threads:

gunicorn server:app -w 1 --threads 12

Gunicorn with 4 workers (multiprocessing):

gunicorn server:app -w 4

More information on Flask concurrency in this post: How many concurrent requests does a single Flask process receive?.

6
  • 9
    With multiple workers it is throwing out of memory exception as size of models is large. I think with each worker it will load all models in different memory space
    – neel
    Mar 7, 2016 at 9:02
  • You need to use async worker like gevent to allow concurrency with one worker: gunicorn -k gevent --worker-connections 1000.
    – molivier
    Mar 7, 2016 at 9:10
  • You can also add --threads to run each worker with the specified number of threads. See Edit.
    – molivier
    Mar 7, 2016 at 9:29
  • Which worker type should I use if my api call is taking around 1sec?
    – neel
    Mar 9, 2016 at 10:45
  • 2
    I'll go with gevent and monkey patch your app: stackoverflow.com/questions/29527351/…. You can also have a look to celery to run background tasks.
    – molivier
    Mar 9, 2016 at 11:01
15

The best thing to do is to use pre-fork mode (preload_app=True). This will initialize your code in a "master" process and then simply fork off worker processes to handle requests. If you are running on linux and assuming your model is read-only, the OS is smart enough to reuse the physical memory amongst all the processes.

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  • 1
    The problem I found with this is that if you are running databases, they will complain that the database instance shouldn't be forked. In my case, MongoClient from pyMongo /usr/local/lib/python3.8/site-packages/pymongo/topology.py:164: UserWarning: MongoClient opened before fork. Create MongoClient only after forking.
    – carkod
    Nov 16, 2021 at 8:29
  • 1
    yes, in those cases you need to be sure to initialize those connections post fork. after that it should be fine.
    – slushi
    Nov 16, 2021 at 19:50
  • I confirm, such memory reuse in Linux systems (such as our Ubuntu containers), is evident also for multiple optuna scripts (training rather memory-intensive ML models) executed in parallel using multiprocessing.
    – mirekphd
    Dec 11, 2022 at 10:38

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