Let's say we have a dummy function:

async def foo(arg):
    result = await some_remote_call(arg)
    return result.upper()

What's the difference between:

import asyncio    

coros = []
for i in range(5):

loop = asyncio.get_event_loop()


import asyncio

futures = []
for i in range(5):

loop = asyncio.get_event_loop()

Note: The example returns a result, but this isn't the focus of the question. When return value matters, use gather() instead of wait().

Regardless of return value, I'm looking for clarity on ensure_future(). wait(coros) and wait(futures) both run the coroutines, so when and why should a coroutine be wrapped in ensure_future?

Basically, what's the Right Way (tm) to run a bunch of non-blocking operations using Python 3.5's async?

For extra credit, what if I want to batch the calls? For example, I need to call some_remote_call(...) 1000 times, but I don't want to crush the web server/database/etc with 1000 simultaneous connections. This is doable with a thread or process pool, but is there a way to do this with asyncio?

2020 update (Python 3.7+): Don't use these snippets. Instead use:

import asyncio

async def do_something_async():
    tasks = []
    for i in range(5):
    await asyncio.gather(*tasks)

def do_something():

Also consider using Trio, a robust 3rd party alternative to asyncio.


5 Answers 5


A coroutine is a generator function that can both yield values and accept values from the outside. The benefit of using a coroutine is that we can pause the execution of a function and resume it later. In case of a network operation, it makes sense to pause the execution of a function while we're waiting for the response. We can use the time to run some other functions.

A future is like the Promise objects from Javascript. It is like a placeholder for a value that will be materialized in the future. In the above-mentioned case, while waiting on network I/O, a function can give us a container, a promise that it will fill the container with the value when the operation completes. We hold on to the future object and when it's fulfilled, we can call a method on it to retrieve the actual result.

Direct Answer: You don't need ensure_future if you don't need the results. They are good if you need the results or retrieve exceptions occurred.

Extra Credits: I would choose run_in_executor and pass an Executor instance to control the number of max workers.

Explanations and Sample codes

In the first example, you are using coroutines. The wait function takes a bunch of coroutines and combines them together. So wait() finishes when all the coroutines are exhausted (completed/finished returning all the values).

loop = get_event_loop() # 

The run_until_complete method would make sure that the loop is alive until the execution is finished. Please notice how you are not getting the results of the async execution in this case.

In the second example, you are using the ensure_future function to wrap a coroutine and return a Task object which is a kind of Future. The coroutine is scheduled to be executed in the main event loop when you call ensure_future. The returned future/task object doesn't yet have a value but over time, when the network operations finish, the future object will hold the result of the operation.

from asyncio import ensure_future

futures = []
for i in range(5):

loop = get_event_loop()

So in this example, we're doing the same thing except we're using futures instead of just using coroutines.

Let's look at an example of how to use asyncio/coroutines/futures:

import asyncio

async def slow_operation():
    await asyncio.sleep(1)
    return 'Future is done!'

def got_result(future):

    # We have result, so let's stop

loop = asyncio.get_event_loop()
task = loop.create_task(slow_operation())

# We run forever

Here, we have used the create_task method on the loop object. ensure_future would schedule the task in the main event loop. This method enables us to schedule a coroutine on a loop we choose.

We also see the concept of adding a callback using the add_done_callback method on the task object.

A Task is done when the coroutine returns a value, raises an exception or gets canceled. There are methods to check these incidents.

I have written some blog posts on these topics which might help:

Of course, you can find more details on the official manual: https://docs.python.org/3/library/asyncio.html

  • 3
    I've updated my question to be a bit more clear - if I don't need the result from the coroutine, do I still need to use ensure_future()? And if I do need the result, can't I just use run_until_complete(gather(coros))?
    – knite
    Jan 12, 2016 at 21:39
  • 1
    ensure_future schedules the coroutine to be executed in the event loop. So I would say yes, it's required. But of course you can schedule the coroutines using other functions/methods too. Yes, you can use gather() - but gather will wait until all the responses are collected.
    – masnun
    Jan 12, 2016 at 21:42
  • 6
    @AbuAshrafMasnun @knite gather and wait actually wrap the given coroutines as tasks using ensure_future (see the sources here and here). So there is no point in using ensure_future beforehand, and it has nothing to do with getting the results or not.
    – Vincent
    Jan 14, 2016 at 9:57
  • 9
    @AbuAshrafMasnun @knite Also, ensure_future has a loop argument, so there is no reason to use loop.create_task over ensure_future. And run_in_executor won't work with coroutines, a semaphore should be used instead.
    – Vincent
    Jan 14, 2016 at 12:51
  • 3
    @vincent there is a reason to use create_task over ensure_future, see docs. Quote create_task() (added in Python 3.7) is the preferable way for spawning new tasks.
    – omni
    Jul 12, 2018 at 10:39


  • Invoking a coroutine function(async def) will NOT run it. It returns a coroutine object, like generator functions return generator objects.
  • await retrieves values from coroutines, i.e. "calls" the coroutine.
  • eusure_future/create_task wrap a coroutine and schedule it to run on the event loop on next iteration, but will not wait for it to finish, it's like a daemon thread.
  • By awaiting a coroutine or a task wrapping a coroutine, you can always retrieve the result returned by the coroutine, the difference is their execution order.

Some code examples

Let's first clear some terms:

  • coroutine function, the one you async defs;
  • coroutine object, what you got when you "call" a coroutine function;
  • task, a object wrapped around a coroutine object to run on the event loop.
  • awaitable, something that you can await, like task, future or plain coroutine object.

The term coroutine can be both coroutine function and coroutine object depending on the context, but it should be easy enough for you to tell the differences.

Case 1, await on a coroutine

We create two coroutines, await one, and use create_task to run the other one.

import asyncio
import time

# coroutine function
async def log_time(word):
    print(f'{time.time()} - {word}')

async def main():
    coro = log_time('plain await')
    task = asyncio.create_task(log_time('create_task'))  # <- runs in next iteration
    await coro  # <-- run directly
    await task

if __name__ == "__main__":

You will get results like this, plain coroutine was executed first as expected:

1539486251.7055213 - plain await
1539486251.7055705 - create_task

Because coro was executed directly, and task was executed in the next iteration.

Case 2, yielding control to event loop

By calling asyncio.sleep(1), the control is yielded back to the loop, we should see a different result:

async def main():
    coro = log_time('plain await')
    task = asyncio.create_task(log_time('create_task'))  # <- runs in next iteration
    await asyncio.sleep(1)  # <- loop got control, and runs task
    await coro  # <-- run directly
    await task

You will get results like this, the execution order is reversed:

1539486378.5244057 - create_task
1539486379.5252144 - plain await

When calling asyncio.sleep(1), the control was yielded back to the event loop, and the loop checks for tasks to run, then it runs the task created by create_task first.

Although we invoked the coroutine function first, without awaiting it, we just created a coroutine, it does NOT start automatically. Then, we create a new coroutine and wrap it by a create_task call, creat_task not only wraps the coroutine, but also schedules the task to run on next iteration. In the result, create_task is executed before plain await.

The magic here is to yield control back to the loop, you can use asyncio.sleep(0) to achieve the same result.

After all the differences, the same thing is: if you await on a coroutine or a task wrapping a coroutine, i.e. an awaitable, you can always retrieve the result they return.

Under the hood

asyncio.create_task calls asyncio.tasks.Task(), which will call loop.call_soon. And loop.call_soon will put the task in loop._ready. During each iteration of the loop, it checks for every callbacks in loop._ready and runs it.

asyncio.wait, asyncio.ensure_future and asyncio.gather actually call loop.create_task directly or indirectly.

Also note in the docs:

Callbacks are called in the order in which they are registered. Each callback will be called exactly once.

  • 4
    Thanks for a clean explanation! Have to say, it's a pretty terrible design. High-level API is leaking low-level abstraction, which overcomplicate the API. Feb 20, 2019 at 11:49
  • 1
    check out the curio project, which is well-designed
    – ospider
    Feb 20, 2019 at 13:02
  • 2
    Nice explanation! I think the effect of the await task2 call could be clarified. In both examples, the loop.create_task() call is what schedules task2 on the event loop. So in both exs you can delete the await task2 and still task2 will eventually run. In ex2 the behaviour will be identical, as the await task2 I believe is just scheduling the already completed task (which wont run a second time), whereas in ex1 the behaviour will be slightly different since task2 wont be executed until main is complete. To see the difference, add print("end of main") at the end of ex1's main
    – Andrew
    Jan 23, 2020 at 11:44

A comment by Vincent linked to https://github.com/python/asyncio/blob/master/asyncio/tasks.py#L346, which shows that wait() wraps the coroutines in ensure_future() for you!

In other words, we do need a future, and coroutines will be silently transformed into them.

I'll update this answer when I find a definitive explanation of how to batch coroutines/futures.

  • Does it mean that for a coroutine object c, await c is equivalent to await create_task(c)?
    – Alexey
    May 6, 2020 at 16:21

From the BDFL [2013]


  • It's a coroutine wrapped in a Future
  • class Task is a subclass of class Future
  • So it works with await too!

  • How does it differ from a bare coroutine?
  • It can make progress without waiting for it
    • As long as you wait for something else, i.e.
      • await [something_else]

With this in mind, ensure_future makes sense as a name for creating a Task since the Future's result will be computed whether or not you await it (as long as you await something). This allows the event loop to complete your Task while you're waiting on other things. Note that in Python 3.7 create_task is the preferred way ensure a future.

Note: I changed "yield from" in Guido's slides to "await" here for modernity.


Though there already are a few very useful answers they don't cover all the nuances. In particular, the accepted answer is no longer correct.

You should not use wait with coroutines - for compatibility with new versions of library.


Deprecated since version 3.8, will be removed in version 3.11: Passing coroutine objects to wait() directly is deprecated.

And another statement from documentation that may be useful for the deep understanding. Result of wait is futures. If you want to check that your coroutine is in result you should wrap it into future first - with create_task (since it is preferred way to create task than ensure_future).

wait() schedules coroutines as Tasks automatically and later returns those implicitly created Task objects in (done, pending) sets. Therefore the following code won’t work as expected:

async def foo():
    return 42

coro = foo() 
done, pending = await asyncio.wait({coro})

if coro in done:
    # This branch will never be run! 

Here is how the above snippet can be fixed:

    return 42

task = asyncio.create_task(foo()) 
done, pending = await asyncio.wait({task})

if task in done:
    # Everything will work as expected now. 

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