Process类,Thread类,Pool类,gevent类,ProcessPoolExecutor,ThreadPoolExecutor的用法比较

一 Process类

  multiprocessing模块下的一个类

  创建子进程。

  有两种方法

  方法一

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from multiprocessing import Process
import os
def foo():
    print('%s from foo'%os.getpid())
def bar():
    print('%s from bar' % os.getpid())
if __name__ == '__main__':
    p1=Process(target=foo)
    p2=Process(target=bar)
    p1.start()
    p2.start()
    p1.join()
    p2.join()
    print('%s over'%os.getpid())
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  输出: 

13524 from foo
12848 from bar
12696 over

  方法二

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from multiprocessing import Process
import os
class Myprocess(Process):
    def __init__(self,name):
        super().__init__()
        self.name=name
    def run(self):
        print('%s from %s' % (os.getpid(),self.name))
if __name__ == '__main__':
    p1=Myprocess('foo')
    p2=Myprocess('bar')
    p1.start()
    p2.start()
    p1.join()
    p2.join()
    print('%s over' % os.getpid())
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  输出:

15260 from foo
5980 from bar
8844 over

二 Thread类

  threading模块下的类

  创建线程

  有两种方法

  与Process类一样。

三 Pool类

  Pool类的方法:

    p=Pool()

    p.apply_async(),异步提交任务,生成ApplyResult对象

    p.close() 

    p.join()

    ApplyResult.get(),从ApplyResult对象中获取返回值。

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from multiprocessing import Pool
import os,time
def foo():
    time.sleep(1)
    print('%s from foo'%os.getpid())
    return 'foo'
def bar():
    time.sleep(2)
    print('%s from bar' % os.getpid())
    return 'bar'
if __name__ == '__main__':
    p=Pool()
    t1=time.time()
    res1=p.apply_async(foo)
    res2=p.apply_async(bar)
    p.close()
    p.join()
    print(res1)
    print(time.time()-t1)          ##多出来的0.15秒是开启进程所花费的时间
    t2=time.clock()
    print(res1.get())
    print(res2.get())
    print(time.clock()-t2)
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  输出:

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12468 from foo
8832 from bar
<multiprocessing.pool.ApplyResult object at 0x00000126511CEE48>
2.1609864234924316
foo
bar
2.1880321932470032e-05
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  map()方,比较常用。

  官方介绍:

Apply `func` to each element in `iterable`, collecting the results
        in a list that is returned.

  废话少说,上代码

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import time
from multiprocessing import Pool

def foo(x):
    time.sleep(1)
    return x*x

if __name__ == '__main__':
    l = [1,2,3,4,5,6,7,8,9,10]
    t1 = time.time()
    p = Pool()
    print(time.time()-t1)
    res = p.map(foo,l) # 这行代码表示所有的进行都已经执行完了,并且每个进程的结果都拿到,放在了res中
    print(time.time()-t1)   
    print(res,type(res))
    p.close()
    p.join()
    print(time.time()-t1)
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  输出:

0.14187192916870117
2.2597498893737793
[1, 4, 9, 16, 25, 36, 49, 64, 81, 100] <class 'list'>
2.401075601577759

四 gevent

  gevent是一个基于协程的Python网络库。

  单线程实现并发,协程。

  需要用到猴子补丁。

  方法:

    g1=gevent.spawn(func):提交任务,生成Greenlet对象--g1。

    g1.join(),阻塞,直到g1任务完成。

    g1.value。从Greenlet对象g1中获取返回值。   

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import gevent
from gevent import monkey;monkey.patch_all()
import os,time
from threading import current_thread
def foo():
    time.sleep(1)
    print('%s  %s from foo'%(os.getpid(),current_thread().getName()))
def bar():
    time.sleep(2)
    print('%s  %s from bar' % (os.getpid(),current_thread().getName()))
t1=time.time()
g1=gevent.spawn(foo)
g2=gevent.spawn(bar)
print(g1,g2)
g1.join()
g2.join()
print(time.time()-t1)
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  输出:

<Greenlet at 0x1e3fc1396d0: foo> <Greenlet at 0x1e3fc139800: bar>
7536  DummyThread-1 from foo
7536  DummyThread-2 from bar
2.0017032623291016              #可以看到协程开启进程花销非常小。

五 ProcessPoolExecutor

  创建多进程

  concurrent.futures库内的ProcessPoolExecutor类

  executor=ProcessPoolExecutor():生成一个ProcessPoolExecutor对象;

  future=executor.submit():提交任务,返回一个Future对象。

  executor.shutdown()。相当于Pool类中的close()和join()

  future.result():从Future对象中获取其返回值。

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from concurrent.futures import ProcessPoolExecutor,ThreadPoolExecutor
import os,time
from threading import current_thread
def foo():
    time.sleep(1)
    print('%s  %s from foo'%(os.getpid(),current_thread().getName()))
    return 'foo'
def bar():
    time.sleep(2)
    print('%s  %s from bar' % (os.getpid(),current_thread().getName()))
    return 'bar'
if __name__ == '__main__':
    t1=time.time()
    executor=ProcessPoolExecutor()
    print('executor',executor)
    future1=executor.submit(foo)
    future2=executor.submit(bar)
    print(future1,future2)
    executor.shutdown()
    print(future1.result())
    print(future2.result())
    print(time.time()-t1)
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  输出:

6480  MainThread from foo
6756  MainThread from bar
foo
bar
2.7526917457580566                   #可以看到创建进程还是比较花费时间的

六 ThreadPoolExecutor()

  创建多线程

  concurrent.futures库内的ProcessPoolExecutor类

  executor=ThreadPoolExecutor():生成一个ThreadPoolExecutor对象;

  future=executor.submit():提交任务,返回一个Future对象。

  executor.shutdown()。相当于Pool类中的close()和join()。

  future.result():从Future对象中获取其返回值。

  

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from concurrent.futures import ThreadPoolExecutor
import os,time
from threading import current_thread
def foo():
    time.sleep(1)
    print('%s  %s from foo'%(os.getpid(),current_thread().getName()))
    return 'foo'
def bar():
    time.sleep(2)
    print('%s  %s from bar' % (os.getpid(),current_thread().getName()))
    return 'bar'
if __name__ == '__main__':
    t1=time.time()
    executor=ThreadPoolExecutor()
    print('executor',executor)
    future1=executor.submit(foo)
    future2=executor.submit(bar)
    print(future1,future2)
    executor.shutdown()
    print(future1.result())
    print(future2.result())
    print(time.time()-t1)
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  输出:

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executor <concurrent.futures.thread.ThreadPoolExecutor object at 0x0000020073EAAAC8>
<Future at 0x20073eb4198 state=running> <Future at 0x20074176940 state=running>
4380  <concurrent.futures.thread.ThreadPoolExecutor object at 0x0000020073EAAAC8>_0 from foo         #可以看到进程号是一样的
4380  <concurrent.futures.thread.ThreadPoolExecutor object at 0x0000020073EAAAC8>_1 from bar
foo
bar
2.001234531402588                     #相比较开启进程,线程开启的时间非常快,花销非常小
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转载自www.cnblogs.com/ExMan/p/10138866.html