Task Scheduling and Awaiting Results
When working with multiple asynchronous operations, you often need to run several coroutines at the same time and collect their results once all are finished. The asyncio.gather function is designed for this purpose. It takes multiple coroutine objects and schedules them to run concurrently. When you await the result of asyncio.gather, it waits for all the coroutines to complete and returns their results as a list, in the same order as the coroutines were provided. This makes it easy to manage and use the results of several asynchronous tasks together.
12345678910111213141516import asyncio async def fetch_data(n): await asyncio.sleep(n) return f"Data {n}" async def main(): results = await asyncio.gather( fetch_data(1), fetch_data(2), fetch_data(3) ) for result in results: print(result) await main()
Merci pour vos commentaires !
Demandez à l'IA
Demandez à l'IA
Posez n'importe quelle question ou essayez l'une des questions suggérées pour commencer notre discussion
Génial!
Completion taux amélioré à 9.09
Task Scheduling and Awaiting Results
Glissez pour afficher le menu
When working with multiple asynchronous operations, you often need to run several coroutines at the same time and collect their results once all are finished. The asyncio.gather function is designed for this purpose. It takes multiple coroutine objects and schedules them to run concurrently. When you await the result of asyncio.gather, it waits for all the coroutines to complete and returns their results as a list, in the same order as the coroutines were provided. This makes it easy to manage and use the results of several asynchronous tasks together.
12345678910111213141516import asyncio async def fetch_data(n): await asyncio.sleep(n) return f"Data {n}" async def main(): results = await asyncio.gather( fetch_data(1), fetch_data(2), fetch_data(3) ) for result in results: print(result) await main()
Merci pour vos commentaires !