As mentioned in @Blusky's answer:
The asynchronous API will exist in django 3.X. not before.
If this is not an option, then the answer is just no.
Please note as well, that even with django 3.X any django code, that accesses the database will not be asynchronous it had to be executed in a thread (thread pool)
Celery is intended for background tasks or deferred tasks, but celery will never return an HTTP response as it didn't receive the HTTP request to which it should respond to. Celery is also not asyncio friendly.
You might have to think of changing your architecture / implementation.
Look at your overall problem and ask yourself whether you really need an asynchronous API with Django.
Is this API intended for browser applications or for machine to machine applications?
Could your client's use web sockets and wait for the answer?
Could you separate blocking and non blocking parts on your server side?
Use django for everything non blocking, for everything periodic / deferred (django + celelry) and implement the asynchronous part with web server plugins or python ASGI code or web sockets.
Use Django + nginx nchan (if your web server is nginx)
Link to nchan: https://nchan.io/
your API call would create a task id, start a celery task, return immediately the task id or a polling url.
The polling URL would be handled for example via an nchan long polling channel.
your client connects to the url corresponding to an nchan long polling channel and celery deblocks it whenever you're task is finished (the 10s are over)
Use Django + an ASGI server + one handcoded view and use strategy similiar to nginx nchan
Same logic as above, but you don't use nginx nchan, but implement it yourself
Use an ASGI server + a non blocking framework (or just some hand coded ASGI views) for all blocking urls and Django for the rest.
They might exchange data via the data base, local files or via local http requests.
Just stay blocking and throw enough worker processes / threads at your server
This is probably the worst suggestion, but if it is just for personal use,
and you know how many requests you will have in parallel then just make sure you have enough Django workers, so that you can afford to be blocking.
I this case you would block an entire Django worker for each slow request.
Use websockets. e.g. with the channels module for Django
Websockets can be implemented with earlier versions of django (>= 2.2) with the django channels module (
pip install channels) ( https://github.com/django/channels )
You need an ASGI server to server the asynchronous part. You could use for example Daphne ot uvicorn (The channel doc explains this rather well)
Addendum 2020-06-01: simple async example calling synchronous django code
Following code uses the starlette module as it seems quite simple and small
from starlette.applications import Starlette
from starlette.responses import Response
from starlette.routing import Route
from django_app.xxx import synchronous_func1
from django_app.xxx import synchronous_func2
executor = concurrent.futures.ThreadPoolExecutor(max_workers=2)
async def simple_slow(request):
""" simple function, that sleeps in an async matter """
return Response('hello world')
async def call_slow_dj_funcs(request):
""" slow django code will be called in a thread pool """
loop = asyncio.get_running_loop()
future_func1 = executor.submit(synchronous_func1)
func1_result = future_func1.result()
future_func2 = executor.submit(synchronous_func2)
func2_result = future_func2.result()
response_txt = "OK"
return Response(response_txt, media_type="text/plain")
routes = [
app = Starlette(debug=True, routes=routes)
you could for example run this code with
pip install uvicorn
uvicorn --port 8002 miniasyncio:app
then on your web server route these specific urls to uvicorn and not to your django application server.