


How Can I Achieve 'Fire and Forget' with Async/Await in Python?
Async/Await "Fire and Forget" in Python
Problem Statement
Async/await provides a convenient syntax for asynchronous programming in Python. However, there are situations where we want to initiate an asynchronous operation without waiting for its completion. This is often referred to as "fire and forget."
Solution Using asyncio.Task
Python provides asyncio.Task, which allows us to create a task that will execute in the background. Using asyncio.Task, we can achieve "fire and forget" by adding the following code to our script:
import asyncio async def async_foo(): # Do some asynchronous stuff here # Create a task for async_foo() asyncio.ensure_future(async_foo())
This creates a task for async_foo() that will execute asynchronously without blocking the main thread.
Handling Pending Tasks
If our script completes before all tasks are finished, we can use the following code to await all pending tasks:
pending_tasks = asyncio.Task.all_tasks() loop.run_until_complete(asyncio.gather(*pending_tasks))
This ensures that all tasks have completed before the script exits, preventing any warnings or errors.
Cancelling Tasks
In some cases, we may not want to wait for tasks to complete. We can cancel them using the following code:
for task in pending_tasks: task.cancel() with suppress(asyncio.CancelledError): loop.run_until_complete(task)
This cancels the tasks and suppresses any errors that may be raised as a result of the cancellation.
The above is the detailed content of How Can I Achieve 'Fire and Forget' with Async/Await in Python?. For more information, please follow other related articles on the PHP Chinese website!

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