Python并发编程:多线程-进程池与线程池

一 进程池与线程池

  基于多进程或多线程实现并发的套接字通信,这样的实现方式存在的缺陷是:服务开启的进程数或线程数都会随着并发的客户端数目的增多而增多,这会对服务端主机带来巨大的压力,甚至于不堪重负而瘫痪,于是我们必须对服务端开启的进程数或线程数加以控制,让机器在一个自己可以承受的范围内运行,这就是进程池或线程池的用途,例如进程池,就是用来存放进程的池子,本质还是基于多进程,只不过是对开启进程的数目加以限制

concurrent.futures模块提供了高度封装的异步调用接口
ThreadPoolExecutor:线程池,提供异步调用
ProcessPoolExecute:进程池,提供异步调用

  

基本方法

1、submit(fn, *args, **kwargs)
异步提交任务

2、map(func, *iterables, timeout=None, chunksize=1)
取代for循环submit的操作

3、shutdown(wait=True)
相当于进程池的pool.close()+pool.join()操作
wait=True,等待池内所有任务执行完毕回收完资源后才继续
wait=False,立即返回,并不会等待池内的任务执行完毕
但不管wait参数为何值,整个程序都会等到所有任务执行完毕
submit和map必须在shutdown之前

4、result(timeout=None)
取得结果

5、add_done_callback(fn)
回调函数

  

二 进程池

from concurrent.futures import  ProcessPoolExecutor

import os, time, random

def task(n):
    print('%s is runing' % os.getpid())
    time.sleep(random.randint(1, 3))
    return n**2


if __name__ == '__main__':

    executor = ProcessPoolExecutor(max_workers=3)

    futures = []
    for i in range(10):
        future = executor.submit(task, i)
        futures.append(future)

    executor.shutdown(True)
    print('++++>')
    for future in futures:
        print(future.result())

  

三 线程池

from concurrent.futures import ThreadPoolExecutor

import os, time, random

def task(n):
    print('%s is runing' % os.getpid())
    time.sleep(random.randint(1, 3))
    return n**2


if __name__ == '__main__':

    executor = ThreadPoolExecutor(max_workers=3)

    futures = []
    for i in range(10):
        future = executor.submit(task, i)
        futures.append(future)

    executor.shutdown(True)
    print('++++>')
    for future in futures:
        print(future.result())

  

四 map方法

from concurrent.futures import ThreadPoolExecutor, ProcessPoolExecutor
import os, time, random


def task(n):
    print('%s is runing' % os.getpid())
    time.sleep(random.randint(1, 3))
    return n**2


if __name__ == '__main__':

    executor = ThreadPoolExecutor(max_workers=3)
    
    # for i in range(10):
    #     future = executor.submit(task, i)

    executor.map(task, range(1, 12))    # map取代了for+submit

  

五 回调函数

可以为进程池或线程池内的每个进程或线程绑定一个函数,该函数在进程或线程的任务执行完毕后自动触发,并接收任务的返回值当作参数,该函数称为回调函数 

from concurrent.futures import ProcessPoolExecutor
import requests
import os


def get_page(url):
    print('<进程%s> get %s' % (os.getpid(), url))
    respone = requests.get(url)
    if respone.status_code == 200:
        return {'url': url, 'text': respone.text}


def parse_page(res):
    res = res.result()
    print('<进程%s> parse %s' % (os.getpid(), res['url']))
    parse_res = 'url:<%s> size:[%s]\n' % (res['url'], len(res['text']))
    with open('db.txt', 'a') as f:
        f.write(parse_res)


if __name__ == '__main__':
    urls = [
        'https://www.baidu.com',
        'https://www.python.org',
        'https://www.openstack.org',
        'https://help.github.com/',
        'http://www.sina.com.cn/'

    ]

    p = ProcessPoolExecutor(3)
    for url in urls:
        p.submit(get_page, url).add_done_callback(parse_page)   # parse_page拿到的是一个future对象obj,需要用obj.result()拿到结果

  

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转载自www.cnblogs.com/mike-liu/p/9296306.html