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How is multi-process programming implemented in Python?

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Release: 2023-10-27 16:24:11
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How is multi-process programming implemented in Python?

How is multi-process programming implemented in Python?

Python is a concise and efficient programming language. However, when processing large amounts of data or needing to perform multiple tasks at the same time, single-threaded programs may not be efficient. In order to solve this problem, Python provides support for multi-process programming, allowing developers to execute multiple processes at the same time to improve program efficiency and performance.

In Python, multi-process programming can be achieved through the multiprocessing module. The multiprocessing module provides some very useful classes and functions that can help developers easily create and manage processes.

First, we need to import the multiprocessing module:

import multiprocessing
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Next, we can use the Process class to create a process object and pass in A function to specify what the process should do. The following is a simple example:

def worker():
    # 进程的执行内容
    print('Worker process')

if __name__ == '__main__':
    # 创建进程对象
    p = multiprocessing.Process(target=worker)
    # 启动进程
    p.start()
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In the above example, by calling the constructor of the multiprocessing.Process class, we create a process of the worker function Object, and the execution content of the process is specified through the target parameter. Then, start the process by calling the start method.

In addition to the Process class, the multiprocessing module also provides some other useful classes and functions, such as the Pool class that can create a process pool, Used to manage the execution of multiple processes. Here is an example:

def worker(x):
    # 进程的执行内容
    return x * x

if __name__ == '__main__':
    # 创建进程池
    pool = multiprocessing.Pool()
    # 启动多个进程,并传入参数
    result = pool.map(worker, [1, 2, 3, 4, 5])
    # 关闭进程池,阻止进程的添加
    pool.close()
    # 等待所有进程执行完毕
    pool.join()
    # 输出结果
    print(result)
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In the above example, we create a process pool by calling the constructor of the multiprocessing.Pool class. Then, by calling the map method, passing in a function and an iterable object as parameters, the process pool will automatically distribute each element of the iterable object to different processes for processing and collect the results. Finally, we can close the process pool by calling the close method to prevent the addition of processes, then call the join method to wait for all processes to complete execution, and finally output the results.

In addition to the Process class and the Pool class, the multiprocessing module also provides some other classes and functions, such as QueueClass can create an inter-process communication queue for transferring data between multiple processes. In addition, you can also use the Lock class to achieve inter-process synchronization.

In summary, multi-process programming in Python is implemented through the multiprocessing module. By using the Process class, Pool class, Queue class, and Lock class, developers can easily create and manage multiple processes , thereby improving program efficiency and performance. I hope this article will be helpful in understanding and learning multi-process programming in Python.

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