As per FastAPI's documentation:
When you declare a path operation function with normal def
instead
of async def
, it is run in an external threadpool that is then
await
ed, instead of being called directly (as it would block the
server).
also, as described here:
If you are using a third party library that communicates with
something (a database, an API, the file system, etc.) and doesn't have
support for using await
, (this is currently the case for most
database libraries), then declare your path operation functions as
normally, with just def
.
If your application (somehow) doesn't have to communicate with
anything else and wait for it to respond, use async def
.
If you just don't know, use normal def
.
Note: You can mix def
and async def
in your path operation functions as much as you need and define each one using the best
option for you. FastAPI will do the right thing with them.
Anyway, in any of the cases above, FastAPI will still work
asynchronously and be extremely fast.
But by following the steps above, it will be able to do some
performance optimizations.
Thus, def
endpoints (in the context of asynchronous programming, a function defined with just def
is called synchronous function), in FastAPI, run in a separate thread from an external threadpool that is then await
ed, and hence, FastAPI will still work asynchronously. In other words, the server will process requests to such endpoints concurrently. Whereas, async def
endpoints run in the event loop
—on the main (single) thread—that is, the server will also process requests to such endpoints concurrently/asynchronously, as long as there is an await
call to non-blocking I/O-bound operations inside such async def
endpoints/routes, such as waiting for (1) data from the client to be sent through the network, (2) contents of a file in the disk to be read, (3) a database operation to finish, etc., (have a look here). If, however, an endpoint defined with async def
does not await
for something inside, in order to give up time for other tasks in the event loop to run (e.g., requests to the same or other endpoints, background tasks, etc.), each request to such an endpoint will have to be completely finished (i.e., exit the endpoint), before returning control back to the event loop and allow other tasks to run. In other words, in such cases, the server will process requests sequentially. Note that the same concept not only applies to FastAPI endpoints, but also to StreamingResponse
's generator function (see StreamingResponse
class implementation), as well as Background Tasks
(see BackgroundTask
class implementation); hence, after reading this answer to the end, you should be able to decide whether you should define a FastAPI endpoint, StreamingResponse
's generator, or background task function with def
or async def
.
The keyword await
(which works only within an async def
function) passes function control back to the event loop
. In other words, it suspends the execution of the surrounding coroutine (i.e., a coroutine object is the result of calling an async def
function), and tells the event loop
to let something else run, until that await
ed task completes. Note that just because you may define a custom function with async def
and then await
it inside your async def
endpoint, it doesn't mean that your code will work asynchronously, if that custom function contains, for example, calls to time.sleep()
, CPU-bound tasks, non-async I/O libraries, or any other blocking call that is incompatible with asynchronous Python code. In FastAPI, for example, when using the async
methods of UploadFile
, such as await file.read()
and await file.write()
, FastAPI/Starlette, behind the scenes, actually runs such methods of File objects in an external threadpool (using the async
run_in_threadpool()
function) and await
s it; otherwise, such methods/operations would block the event loop
. You can find out more by having a look at the implementation of the UploadFile
class.
Note that async
does not mean parallel, but concurrently. Asynchronous code with async
and await
is many times summarised as using coroutines. Coroutines are collaborative (or cooperatively multitasked), meaning that "at any given time, a program with coroutines is running only one of its coroutines, and this running coroutine suspends its execution only when it explicitly requests to be suspended" (see here and here for more info on coroutines). As described in this article:
Specifically, whenever execution of a currently-running coroutine
reaches an await
expression, the coroutine may be suspended, and
another previously-suspended coroutine may resume execution if what it
was suspended on has since returned a value. Suspension can also
happen when an async for
block requests the next value from an
asynchronous iterator or when an async with
block is entered or
exited, as these operations use await
under the hood.
If, however, a blocking I/O-bound or CPU-bound operation was directly executed/called inside an async def
function/endpoint, it would block the main thread (and hence, the event loop
). Hence, a blocking operation such as time.sleep()
in an async def
endpoint would block the entire server (as in the code example provided in your question). Thus, if your endpoint is not going to make any async
calls, you could declare it with just def
instead, which would be run in an external threadpool that would then be await
ed, as explained earlier (more solutions are given in the following sections). Example:
@app.get("/ping")
def ping(request: Request):
#print(request.client)
print("Hello")
time.sleep(5)
print("bye")
return "pong"
Otherwise, if the functions that you had to execute inside the endpoint are async
functions that you had to await
, you should define your endpoint with async def
. To demonstrate this, the example below uses the asyncio.sleep()
function (from the asyncio
library), which provides a non-blocking sleep operation. The await asyncio.sleep()
method will suspend the execution of the surrounding coroutine (until the sleep operation completes), thus allowing other tasks in the event loop to run. Similar examples are given here and here as well.
import asyncio
@app.get("/ping")
async def ping(request: Request):
#print(request.client)
print("Hello")
await asyncio.sleep(5)
print("bye")
return "pong"
Both the endpoints above will print out the specified messages to the screen in the same order as mentioned in your question—if two requests arrived at around the same time—that is:
Hello
Hello
bye
bye
Important Note
When you call your endpoint for the second (third, and so on) time, please remember to do that from a tab that is isolated from the browser's main session; otherwise, succeeding requests (i.e., coming after the first one) will be blocked by the browser (on client side), as the browser will be waiting for response from the server for the previous request before sending the next one. You can confirm that by using print(request.client)
inside the endpoint, where you would see the hostname
and port
number being the same for all incoming requests—if requests were initiated from tabs opened in the same browser window/session)—and hence, those requests would be processed sequentially, because of the browser sending them sequentially in the first place. To solve this, you could either:
Reload the same tab (as is running), or
Open a new tab in an Incognito Window, or
Use a different browser/client to send the request, or
Use the httpx
library to make asynchronous HTTP requests, along with the awaitable asyncio.gather()
, which allows executing multiple asynchronous operations concurrently and then returns a list of results in the same order the awaitables (tasks) were passed to that function (have a look at this answer for more details).
Example:
import httpx
import asyncio
URLS = ['http://127.0.0.1:8000/ping'] * 2
async def send(url, client):
return await client.get(url, timeout=10)
async def main():
async with httpx.AsyncClient() as client:
tasks = [send(url, client) for url in URLS]
responses = await asyncio.gather(*tasks)
print(*[r.json() for r in responses], sep='\n')
asyncio.run(main())
In case you had to call different endpoints that may take different time to process a request, and you would like to print the response out on client side as soon as it is returned from the server—instead of waiting for asyncio.gather()
to gather the results of all tasks and print them out in the same order the tasks were passed to the send()
function—you could replace the send()
function of the example above with the one shown below:
async def send(url, client):
res = await client.get(url, timeout=10)
print(res.json())
return res
Async
/await
and Blocking I/O-bound or CPU-bound Operations
If you are required to use async def
(as you might need to await
for coroutines inside your endpoint), but also have some synchronous blocking I/O-bound or CPU-bound operation (long-running computation task) that will block the event loop
(essentially, the entire server) and won't let other requests to go through, for example:
@app.post("/ping")
async def ping(file: UploadFile = File(...)):
print("Hello")
try:
contents = await file.read()
res = cpu_bound_task(contents) # this will block the event loop
finally:
await file.close()
print("bye")
return "pong"
then:
You should check whether you could change your endpoint's definition to normal def
instead of async def
. For example, if the only method in your endpoint that has to be awaited is the one reading the file contents (as you mentioned in the comments section below), you could instead declare the type of the endpoint's parameter as bytes
(i.e., file: bytes = File()
) and thus, FastAPI would read the file for you and you would receive the contents as bytes
. Hence, there would be no need to use await file.read()
. Please note that the above approach should work for small files, as the enitre file contents would be stored into memory (see the documentation on File
Parameters); and hence, if your system does not have enough RAM available to accommodate the accumulated data (if, for example, you have 8GB of RAM, you can’t load a 50GB file), your application may end up crashing. Alternatively, you could call the .read()
method of the SpooledTemporaryFile
directly (which can be accessed through the .file
attribute of the UploadFile
object), so that again you don't have to await
the .read()
method—and as you can now declare your endpoint with normal def
, each request will run in a separate thread (example is given below). For more details on how to upload a File
, as well how Starlette/FastAPI uses SpooledTemporaryFile
behind the scenes, please have a look at this answer and this answer.
@app.post("/ping")
def ping(file: UploadFile = File(...)):
print("Hello")
try:
contents = file.file.read()
res = cpu_bound_task(contents)
finally:
file.file.close()
print("bye")
return "pong"
Use FastAPI's (Starlette's) run_in_threadpool()
function from the concurrency
module—as @tiangolo suggested here—which "will run the function in a separate thread to ensure that the main thread (where coroutines are run) does not get blocked" (see here). As described by @tiangolo here, "run_in_threadpool
is an awaitable function, the first parameter is a normal function, the next parameters are passed to that function directly. It supports both sequence arguments and keyword arguments".
from fastapi.concurrency import run_in_threadpool
res = await run_in_threadpool(cpu_bound_task, contents)
Alternatively, use asyncio
's loop.run_in_executor()
—after obtaining the running event loop
using asyncio.get_running_loop()
—to run the task, which, in this case, you can await
for it to complete and return the result(s), before moving on to the next line of code. Passing None
as the executor argument, the default executor will be used; that is ThreadPoolExecutor
:
import asyncio
loop = asyncio.get_running_loop()
res = await loop.run_in_executor(None, cpu_bound_task, contents)
or, if you would like to pass keyword arguments instead, you could use a lambda
expression (e.g., lambda: cpu_bound_task(some_arg=contents)
), or, preferably, functools.partial()
, which is specifically recommended in the documentation for loop.run_in_executor()
:
import asyncio
from functools import partial
loop = asyncio.get_running_loop()
res = await loop.run_in_executor(None, partial(cpu_bound_task, some_arg=contents))
You could also run your task in a custom ThreadPoolExecutor
. For instance:
import asyncio
import concurrent.futures
loop = asyncio.get_running_loop()
with concurrent.futures.ThreadPoolExecutor() as pool:
res = await loop.run_in_executor(pool, cpu_bound_task, contents)
In Python 3.9+, you could also use asyncio.to_thread()
to asynchronously run a synchronous function in a separate thread—which, essentially, uses await loop.run_in_executor(None, func_call)
under the hood, as can been seen in the implementation of asyncio.to_thread()
. The to_thread()
function takes the name of a blocking function to execute, as well as any arguments (*args and/or **kwargs) to the function, and then returns a coroutine that can be await
ed. Example:
import asyncio
res = await asyncio.to_thread(cpu_bound_task, contents)
ThreadPoolExecutor
will successfully prevent the event loop
from being blocked, but won't give you the performance improvement you would expect from running code in parallel; especially, when one needs to perform CPU-bound
operations, such as the ones described here (e.g., audio or image processing, machine learning, and so on). It is thus preferable to run CPU-bound tasks in a separate process—using ProcessPoolExecutor
, as shown below—which, again, you can integrate with asyncio
, in order to await
it to finish its work and return the result(s). As described here, on Windows, it is important to protect the main loop of code to avoid recursive spawning of subprocesses, etc. Basically, your code must be under if __name__ == '__main__':
.
import concurrent.futures
loop = asyncio.get_running_loop()
with concurrent.futures.ProcessPoolExecutor() as pool:
res = await loop.run_in_executor(pool, cpu_bound_task, contents)
Use more workers. For example, uvicorn main:app --workers 4
(if you are using Gunicorn as a process manager with Uvicorn workers, please have a look at this answer). Note: Each worker "has its own things, variables and memory". This means that global
variables/objects, etc., won't be shared across the processes/workers. In this case, you should consider using a database storage, or Key-Value stores (Caches), as described here and here. Additionally, note that "if you are consuming a large amount of memory in your code, each process will consume an equivalent amount of memory".
If you need to perform heavy background computation and you don't necessarily need it to be run by the same process (for example, you don't need to share memory, variables, etc), you might benefit from using other bigger tools like Celery, as described in FastAPI's documentation.