Python中的并行编程速度

  这里主要想记录下今天碰到的一个小知识点:Python中的并行编程速率如何?

  我想把AutoTool做一个并行化改造,主要目的当然是想提高多任务的执行速度。第一反应就是想到用多线程执行不同模块任务,但是在我收集Python多线程编程资料的时候发现一个非常奇怪的信息,那就是Python的多线程并不是真正的多线程,因为有一个GIL的存在(可以参考这篇文章讲解《Python最难的问题》)导致Python实际上默认(CPython解释器)只能是单线程执行。

  这里我写了一个例子可以看看:

  1 #!/usr/bin/env python
  2 # -*- coding: utf-8 -*-
  3 # @File    : batch_swig_runner.py
  4 # @Time    : 2019/7/8 18:09
  5 # @Author  : KuLiuheng
  6 # @Email   : liuheng.klh@alibaba-inc.com
  7 
  8 from swig_runner import SwigRunner
  9 
 10 import time
 11 import logging
 12 from threading import Thread
 13 from multiprocessing import Pool
 14 
 15 
 16 class TestRunner(Thread):
 17     def __init__(self, name, path):
 18         super(TestRunner, self).__init__()
 19         self.name = name
 20         self.path = path
 21 
 22     def run(self):
 23         logging.warning("Message from the thread-%s START" % self.name)
 24         for i in range(10000000):   # 耗时操作模拟
 25             j = int(i) * 10.1
 26         # time.sleep(1)
 27         logging.warning("Message from the thread-%s END" % self.name)
 28         return self.path
 29 
 30 
 31 def multi_process(mname, mpath):
 32     logging.warning("Message from the thread-%s START" % mname)
 33     for i in range(10000000):   # 耗时操作模拟
 34         j = int(i) * 10.1
 35     # time.sleep(1)
 36     logging.warning("Message from the thread-%s END" % mname)
 37 
 38 
 39 class BatchSwigRunner(object):
 40     def __init__(self, modules=None):
 41         """
 42         用模块信息字典(工程名: 工程路径)来初始化
 43         :param modules: {工程名: 工程路径}
 44         """
 45         if modules is not None:
 46             self._modules = modules
 47         else:
 48             self._modules = dict()
 49 
 50     def add_module_info(self, name, path):
 51         self._modules[name] = path
 52 
 53     def start(self):
 54         """
 55         启动批量任务执行,并返回执行过程中的错误信息
 56         :return: list(工程序号,工程名称) 出错的工程信息列表
 57         """
 58         runners = list()
 59         for (project_name, project_path) in self._modules.items():
 60             # logging.warning('BatchSwigRunner.start() [%s][%s]' % (project_name, project_path))
 61             sub_runner = TestRunner(project_name, project_path)
 62             sub_runner.daemon = True
 63             sub_runner.start()
 64             runners.append(sub_runner)
 65 
 66         for runner in runners:
 67             runner.join()
 68 
 69 
 70 if __name__ == '__main__':
 71     batch_runner = BatchSwigRunner()
 72     batch_runner.add_module_info('name1', 'path1')
 73     batch_runner.add_module_info('name2', 'path2')
 74     batch_runner.add_module_info('name3', 'path3')
 75     batch_runner.add_module_info('name4', 'path4')
 76     start_time = time.time()
 77     batch_runner.start()
 78 
 79     print 'Total time comsumed = %.2fs' % (time.time() - start_time)
 80 
 81     print('========================================')
 82     start_time = time.time()
 83 
 84     for index in range(4):
 85         logging.warning("Message from the times-%d START" % index)
 86         for i in range(10000000):       # 耗时操作模拟
 87             j = int(i) * 10.1
 88         # time.sleep(1)
 89         logging.warning("Message from the times-%d END" % index)
 90 
 91     print '>>Total time comsumed = %.2fs' % (time.time() - start_time)
 92 
 93     print('----------------------------------------------')
 94     start_time = time.time()
 95 
 96     pool = Pool(processes=4)
 97     for i in range(4):
 98         pool.apply_async(multi_process, ('name++%d' % i, 'path++%d' % i))
 99     pool.close()
100     pool.join()
101     print '>>>> Total time comsumed = %.2fs' % (time.time() - start_time)
View Code

   看结果就发现很神奇的结论:

C:Python27python.exe E:/VirtualShare/gitLab/GBL-310/GBL/AutoJNI/autoTool/common/batch_swig_runner.py
WARNING:root:Message from the thread-name4 START
WARNING:root:Message from the thread-name2 START
WARNING:root:Message from the thread-name3 START
WARNING:root:Message from the thread-name1 START
WARNING:root:Message from the thread-name2 END
WARNING:root:Message from the thread-name4 END
WARNING:root:Message from the thread-name3 END
Total time comsumed = 15.92s
========================================
WARNING:root:Message from the thread-name1 END
WARNING:root:Message from the times-0 START
WARNING:root:Message from the times-0 END
WARNING:root:Message from the times-1 START
WARNING:root:Message from the times-1 END
WARNING:root:Message from the times-2 START
WARNING:root:Message from the times-2 END
WARNING:root:Message from the times-3 START
WARNING:root:Message from the times-3 END
>>Total time comsumed = 11.59s
----------------------------------------------
WARNING:root:Message from the thread-name++0 START
WARNING:root:Message from the thread-name++1 START
WARNING:root:Message from the thread-name++2 START
WARNING:root:Message from the thread-name++3 START
WARNING:root:Message from the thread-name++1 END
WARNING:root:Message from the thread-name++0 END
WARNING:root:Message from the thread-name++2 END
WARNING:root:Message from the thread-name++3 END
>>>> Total time comsumed = 5.69s

Process finished with exit code 0
View Code

  其运行速度是(计算密集型):multiprocessing > normal > threading.Thread

  请注意这里用的是持续计算来模拟耗时操作:

for i in range(10000000):   # 耗时操作模拟
    j = int(i) * 10.1

  如果用空等待(time.sleep(1)类似IO等待)来模拟耗时操作,那么结果就是(IO等待型):threading.Thread > multiprocessing > normal

C:Python27python.exe E:/VirtualShare/gitLab/GBL-310/GBL/AutoJNI/autoTool/common/batch_swig_runner.py
WARNING:root:Message from the thread-name4 START
WARNING:root:Message from the thread-name2 START
WARNING:root:Message from the thread-name3 START
WARNING:root:Message from the thread-name1 START
WARNING:root:Message from the thread-name3 END
WARNING:root:Message from the thread-name4 END
WARNING:root:Message from the thread-name2 END
WARNING:root:Message from the thread-name1 END
WARNING:root:Message from the times-0 START
Total time comsumed = 1.01s
========================================
WARNING:root:Message from the times-0 END
WARNING:root:Message from the times-1 START
WARNING:root:Message from the times-1 END
WARNING:root:Message from the times-2 START
WARNING:root:Message from the times-2 END
WARNING:root:Message from the times-3 START
WARNING:root:Message from the times-3 END
>>Total time comsumed = 4.00s
----------------------------------------------
WARNING:root:Message from the thread-name++0 START
WARNING:root:Message from the thread-name++1 START
WARNING:root:Message from the thread-name++2 START
WARNING:root:Message from the thread-name++3 START
WARNING:root:Message from the thread-name++0 END
WARNING:root:Message from the thread-name++1 END
WARNING:root:Message from the thread-name++2 END
WARNING:root:Message from the thread-name++3 END
>>>> Total time comsumed = 1.73s

Process finished with exit code 0
View Code

   为何会有这样的结果呢?

(1)threading机制中因为GIL的存在,实际上是一把全局锁让多线程变成了CPU线性执行,只可能用到一颗CPU计算。当sleep这样是释放CPU操作发生时,可以迅速切换线程,切换速度可以接受(比multiprocessing快),比normal(阻塞等待)当然快的多;

(2)这里用了多进程Pool,可以真正意义上使用多CPU,对于CPU计算密集型的操作(上面的for循环计算)那么肯定是多核比单核快。所以就出现了第一种测试场景的结果。

原文地址:https://www.cnblogs.com/kuliuheng/p/11154481.html