Three ways to get thread return value in Python
Apr 13, 2023 am 10:43 AMWhen it comes to threads, your brain should have this impression: We can control when it starts, but we cannot control when it ends. So how to get the return value of the thread? Today I will share some of my own practices.
Method 1: Use a list of global variables to save the return value
ret_values = [] def thread_func(*args): ... value = ... ret_values.append(value)
One reason for choosing a list is that the append() method of the list is thread-safe. In CPython, the GIL prevents their concurrent access. If you use a custom data structure, you need to add a thread lock where the data is modified concurrently.
If you know how many threads there are in advance, you can define a fixed-length list, and then store the return value according to the index, for example:
from threading import Thread threads = [None] * 10 results = [None] * 10 def foo(bar, result, index): result[index] = f"foo-{index}" for i in range(len(threads)): threads[i] = Thread(target=foo, args=('world!', results, i)) threads[i].start() for i in range(len(threads)): threads[i].join() print (" ".join(results))
Method 2: Rewrite the join method of Thread and return Return value of thread function
The default thread.join() method just waits for the thread function to end and has no return value. We can return the running result of the function here. The code is as follows:
from threading import Thread def foo(arg): return arg class ThreadWithReturnValue(Thread): def run(self): if self._target is not None: self._return = self._target(*self._args, **self._kwargs) def join(self): super().join() return self._return twrv = ThreadWithReturnValue(target=foo, args=("hello world",)) twrv.start() print(twrv.join()) # 此處會(huì)打印 hello world。
In this way, when we call thread.join() and wait for the thread to end, we will get the return value of the thread.
Method 3: Use the standard library concurrent.futures
I think the first two methods are too low-level. Python’s standard library concurrent.futures provides more advanced thread operations and can directly obtain threads. The return value is quite elegant. The code is as follows:
import concurrent.futures def foo(bar): return bar with concurrent.futures.ThreadPoolExecutor(max_workers=10) as executor: to_do = [] for i in range(10):# 模擬多個(gè)任務(wù) future = executor.submit(foo, f"hello world! {i}") to_do.append(future) for future in concurrent.futures.as_completed(to_do):# 并發(fā)執(zhí)行 print(future.result())
The result of a certain operation is as follows:
hello world! 8 hello world! 3 hello world! 5 hello world! 2 hello world! 9 hello world! 7 hello world! 4 hello world! 0 hello world! 1 hello world! 6
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