I'm confused about how to use asyncio.Queue for a particular producer-consumer pattern in which both the producer and consumer operate concurrently and independently.

First, consider this example, which closely follows that from the docs for asyncio.Queue:

import asyncio
import random
import time

async def worker(name, queue):
    while True:
        sleep_for = await queue.get()
        await asyncio.sleep(sleep_for)
        print(f'{name} has slept for {sleep_for:0.2f} seconds')

async def main(n):
    queue = asyncio.Queue()
    total_sleep_time = 0
    for _ in range(20):
        sleep_for = random.uniform(0.05, 1.0)
        total_sleep_time += sleep_for
    tasks = []
    for i in range(n):
        task = asyncio.create_task(worker(f'worker-{i}', queue))
    started_at = time.monotonic()
    await queue.join()
    total_slept_for = time.monotonic() - started_at
    for task in tasks:
    # Wait until all worker tasks are cancelled.
    await asyncio.gather(*tasks, return_exceptions=True)
    print(f'3 workers slept in parallel for {total_slept_for:.2f} seconds')
    print(f'total expected sleep time: {total_sleep_time:.2f} seconds')

if __name__ == '__main__':
    import sys
    n = 3 if len(sys.argv) == 1 else sys.argv[1]

There is one finer detail about this script: the items are put into the queue synchronously, with queue.put_nowait(sleep_for) over a conventional for-loop.

My goal is to create a script that uses async def worker() (or consumer()) and async def producer(). Both should be scheduled to run concurrently. No one consumer coroutine is explicitly tied to or chained from a producer.

How can I modify the program above so that the producer(s) is its own coroutine that can be scheduled concurrently with the consumers/workers?

There is a second example from PYMOTW. It requires the producer to know the number of consumers ahead of time, and uses None as a signal to the consumer that production is done.


How can I modify the program above so that the producer(s) is its own coroutine that can be scheduled concurrently with the consumers/workers?

The example can be generalized without changing its essential logic:

  • Move the insertion loop to a separate producer coroutine.
  • Start the consumers in the background, letting them process the items as they are produced.
  • With the consumers running, start the producers and wait for them to finish producing items, as with await producer() or await gather(*producers), etc.
  • Once all producers are done, wait for consumers to process the remaining items with await queue.join().
  • Cancel the consumers, all of which are now idly waiting for the queue to deliver the next item, which will never arrive as we know the producers are done.

Here is an example implementing the above:

import asyncio, random
async def rnd_sleep(t):
    # sleep for T seconds on average
    await asyncio.sleep(t * random.random() * 2)
async def producer(queue):
    while True:
        # produce a token and send it to a consumer
        token = random.random()
        print(f'produced {token}')
        if token < .05:
        await queue.put(token)
        await rnd_sleep(.1)
async def consumer(queue):
    while True:
        token = await queue.get()
        # process the token received from a producer
        await rnd_sleep(.3)
        print(f'consumed {token}')
async def main():
    queue = asyncio.Queue()
    # fire up the both producers and consumers
    producers = [asyncio.create_task(producer(queue))
                 for _ in range(3)]
    consumers = [asyncio.create_task(consumer(queue))
                 for _ in range(10)]
    # with both producers and consumers running, wait for
    # the producers to finish
    await asyncio.gather(*producers)
    print('---- done producing')
    # wait for the remaining tasks to be processed
    await queue.join()
    # cancel the consumers, which are now idle
    for c in consumers:

Note that in real-life producers and consumers, especially those that involve network access, you probably want to catch IO-related exceptions that occur during processing. If the exception is recoverable, as most network-related exceptions are, you can simply catch the exception and log the error. You should still invoke task_done() because otherwise queue.join() will hang due to an unprocessed item. If it makes sense to re-try processing the item, you can return it into the queue prior to calling task_done(). For example:

# like the above, but handling exceptions during processing:
async def consumer(queue):
    while True:
        token = await queue.get()
            # this uses aiohttp or whatever
            await process(token)
        except aiohttp.ClientError as e:
            print(f"Error processing token {token}: {e}")
            # If it makes sense, return the token to the queue to be
            # processed again. (You can use a counter to avoid
            # processing a faulty token infinitely.)
            #await queue.put(token)
        print(f'consumed {token}')
| improve this answer | |
  • 8
    I'm writing about asyncio with aiohttp & aiofiles and want to mention queues in a section---do you mind if I link to & cite this answer? – Brad Solomon Oct 2 '18 at 23:26
  • 3
    @BradSolomon Sure, go ahead! – user4815162342 Oct 3 '18 at 6:08
  • 1
    I'm trying to adapt this to test if files exist in a directory, but it doesn't seem to interleave producers and consumers asynchronously. All producers are first generated, followed by consumers. How do I modify this to work on cpu-bound processes like if pathlib.Path().exists(): .... – pylang Jan 29 '19 at 9:48
  • 3
    @pylang If your code is CPU-bound (or blocking in some other way not handled by asyncio), asyncio will not interleave it automatically. In that case, use run_in_executor to off-load the blocking code to a thread pool. Then you'd write if await loop.run_in_executor(None, lambda: pathlib.Path(...).exists()): ... – user4815162342 Jan 29 '19 at 10:07
  • 1
    I think that will be the right approach according to this blog giuseppeciotta.net/…. Many thanks. – pylang Jan 29 '19 at 20:05

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