I've a machine learning application which uses flask to expose api(for production this is not a good idea, but even if I'll use django in future the idea of the question shouldn't change).
The main problem is how to serve multiple requests to my app. Few months back
celery has been added to get around this problem. The number of workers in
celery that was spawned is equal to the number of cores present in the machine. For very few users this was looking fine and was in production for some time.
When the number of concurrent users got increased, it was evident that we should do a performance testing on it. It turns out: it is able to handle 20 users for 30 GB and 8 core machine without authentication and without any front-end. Which is not looking like a good number.
I didn't know there are things like: application server, web server, model server. When googling for this problem:
gunicorn was a good application server python application.
- Should I use
gunicornor any other application server along with
- If I remove
celeryand only use
gunicornwith the application can I achieve concurrency. I have read somewhere
celeryis not good for machine learning applications.
- What are the purposes of
celery. How can we achieve the best out of both.
Note: Main goal is to maximize concurrency. While serving in production authentication will be added. One front-end application might come into action in between in production.