深入理解Python异步编程(上)

时间:2021-07-19 10:10:44

本文代码整理自:深入理解Python异步编程(上)

参考:A Web Crawler With asyncio Coroutines

一、同步阻塞方式

import socket

def blocking_way():
sock = socket.socket()
# blocking
sock.connect(('example.com', 80))
request = 'GET / HTTP/1.0\r\nHost: example.com\r\n\r\n'
sock.send(request.encode('ascii'))
response = b''
chunk = sock.recv(4096)
while chunk:
response += chunk
# blocking
chunk = sock.recv(4096)
return response def sync_way():
res = []
for i in range(10):
res.append(blocking_way())
return len(res) def main():
start = time.time()
print(sync_way())
print(time.time() - start) if __name__ == '__main__':
import time
main() # 5.15s

二、同步多线程方式

import socket
from concurrent import futures def blocking_way():
sock = socket.socket()
# blocking
sock.connect(('example.com', 80))
request = 'GET / HTTP/1.0\r\nHost: example.com\r\n\r\n'
sock.send(request.encode('ascii'))
response = b''
chunk = sock.recv(4096)
while chunk:
response += chunk
# blocking
chunk = sock.recv(4096)
return response def thread_way():
workers = 10
with futures.ThreadPoolExecutor(workers) as executor:
futs = {executor.submit(blocking_way) for i in range(10)}
return len([fut.result() for fut in futs]) def main():
start = time.time()
print(thread_way())
print(time.time() - start) if __name__ == '__main__':
import time
main() # 0.52s

  

小提示

Python中的多线程因为GIL的存在,它们并不能利用CPU多核优势,
一个Python进程中,只允许有一个线程处于运行状态。 那为什么结果还是如预期,耗时缩减到了十分之一? 因为在做阻塞的系统调用时,例如sock.connect(),sock.recv()时,当前线程会释放GIL,
让别的线程有执行机会。但是单个线程内,在阻塞调用上还是阻塞的 Python中 time.sleep 是阻塞的,都知道使用它要谨慎,
但在多线程编程中,time.sleep 并不会阻塞其他线程。

  

三、非阻塞+回调(即异步非阻塞)方式

事件循环+回调     实现单线程内异步编程

事件监听

OS将I/O状态的变化都封装成了事件,如可读事件、可写事件。
并且提供了专门的系统模块让应用程序可以接收事件通知。这个模块就是select。
让应用程序可以通过select注册文件描述符和回调函数。
当文件描述符的状态发生变化时,select 就调用事先注册的回调函数。 select因其算法效率比较低,后来改进成了poll;
再后来又有进一步改进,BSD内核改进成了kqueue模块,而Linux内核改进成了epoll模块。这四个模块的作用都相同,暴露给程序员使用的API也几乎一致,
区别在于kqueue 和 epoll 在处理大量文件描述符时效率更高。

selectors模块

Python标准库提供的selectors模块是对底层select/poll/epoll/kqueue的封装。
DefaultSelector类会根据 OS 环境自动选择最佳的模块,
那在 Linux 2.5.44 及更新的版本上都是epoll了。

  

#!/usr/bin/python3.5
# encoding: utf-8 import socket
from selectors import DefaultSelector, EVENT_WRITE, EVENT_READ selector = DefaultSelector()
stopped = False
urls_todo = {'/', '/1', '/2', '/3', '/4', '/5', '/6', '/7', '/8', '/9'} class Crawler:
def __init__(self, url):
self.url = url
self.sock = None
self.response = b'' def fetch(self):
self.sock = socket.socket()
self.sock.setblocking(False)
try:
self.sock.connect(('example.com', 80))
except BlockingIOError:
pass
selector.register(self.sock.fileno(), EVENT_WRITE, self.connected) def connected(self, key, mask):
selector.unregister(key.fd)
get = 'GET {0} HTTP/1.0\r\nHost: example.com\r\n\r\n'.format(self.url)
self.sock.send(get.encode('ascii'))
selector.register(key.fd, EVENT_READ, self.read_response) def read_response(self, key, mask):
global stopped
# 如果响应大于4KB,下一次循环会继续读
chunk = self.sock.recv(4096)
if chunk:
self.response += chunk
else:
selector.unregister(key.fd)
urls_todo.remove(self.url)
if not urls_todo:
stopped = True # 事件循环
def loop():
while not stopped:
# 阻塞, 直到一个事件发生
events = selector.select()
for event_key, event_mask in events:
callback = event_key.data
callback(event_key, event_mask) if __name__ == '__main__':
import time
start = time.time()
for url in urls_todo:
crawler = Crawler(url)
crawler.fetch()
loop()
print(time.time() - start) # 0.53s

回调层次过多的缺点:

- 共享状态管理困难

在回调的版本中,我们必须在Crawler实例化后的对象self里保存它自己的sock对象。

如果不是采用OOP的编程风格,那需要把要共享的状态接力似的传递给每一个回调。

多个异步调用之间,到底要共享哪些状态,事先就得考虑清楚,精心设计。

- 错误处理困难

一连串的回调构成一个完整的调用链;
如果其中一环抛了异常怎么办?
整个调用链断掉,接力传递的状态也会丢失,这种现象称为调用栈撕裂。 所以,为了防止栈撕裂,异常必须以数据的形式返回,而不是直接抛出异常,
然后每个回调中需要检查上次调用的返回值,以防错误吞没。

四、Python 对异步I/O的优化之路

#!/usr/bin/python3.5
# encoding: utf-8 import socket
from selectors import DefaultSelector, EVENT_WRITE, EVENT_READ selector = DefaultSelector()
stopped = False
urls_todo = {'/', '/1', '/2', '/3', '/4', '/5', '/6', '/7', '/8', '/9'} class Future:
def __init__(self):
self.result = None
self._callbacks = [] def add_done_callback(self, fn):
self._callbacks.append(fn) def set_result(self, result):
self.result = result
for fn in self._callbacks:
fn(self) class Crawler:
def __init__(self, url):
self.url = url
self.response = b'' def fetch(self):
sock = socket.socket()
sock.setblocking(False)
try:
sock.connect(('example.com', 80))
except BlockingIOError:
pass
f = Future() def on_connected():
f.set_result(None) selector.register(sock.fileno(), EVENT_WRITE, on_connected)
yield f
selector.unregister(sock.fileno())
get = 'GET {0} HTTP/1.0\r\nHost: example.com\r\n\r\n'.format(self.url)
sock.send(get.encode('ascii')) global stopped
while True:
f = Future() def on_readable():
f.set_result(sock.recv(4096)) selector.register(sock.fileno(), EVENT_READ, on_readable)
chunk = yield f
selector.unregister(sock.fileno())
if chunk:
self.response += chunk
else:
urls_todo.remove(self.url)
if not urls_todo:
stopped = True
break class Task:
def __init__(self, coro):
self.coro = coro
f = Future()
f.set_result(None)
self.step(f) def step(self, future):
try:
# send会进入到coro执行, 即fetch, 直到下次yield
# next_future 为yield返回的对象
next_future = self.coro.send(future.result)
except StopIteration:
return
next_future.add_done_callback(self.step) # 事件循环
def loop():
while not stopped:
# 阻塞, 直到一个事件发生
events = selector.select()
for event_key, event_mask in events:
callback = event_key.data
callback() if __name__ == '__main__':
import time
start = time.time()
for url in urls_todo:
crawler = Crawler(url)
Task(crawler.fetch())
loop()
print(time.time() - start) # 0.53s

在前辈的基础上做了一点更改:

#!/usr/bin/python3
# encoding: utf-8 import socket
from selectors import DefaultSelector, EVENT_WRITE, EVENT_READ selector = DefaultSelector()
stopped = False
urls_todo = {'/', '/1', '/2', '/3', '/4', '/5', '/6', '/7', '/8', '/9'} class Future:
def __init__(self):
self.result = None
self._callback = None # 原来是用列表来保存 def add_done_callback(self, fn):
self._callback = fn def set_result(self, result):
self.result = result
# 因为只有一个对应的 Task.step()函数
if self._callback:
self._callback(self) class Crawler:
def __init__(self, url):
self.url = url
self.response = b'' def fetch(self):
sock = socket.socket()
sock.setblocking(False)
try:
sock.connect(('example.com', 80))
except BlockingIOError:
pass
f = Future() def on_connected():
f.set_result(None) selector.register(sock.fileno(), EVENT_WRITE, on_connected)
yield f
selector.unregister(sock.fileno())
get = 'GET {0} HTTP/1.0\r\nHost: example.com\r\n\r\n'.format(self.url)
sock.send(get.encode('ascii')) global stopped
while True:
f = Future() def on_readable():
f.set_result(sock.recv(4096)) selector.register(sock.fileno(), EVENT_READ, on_readable)
chunk = yield f
selector.unregister(sock.fileno())
if chunk:
self.response += chunk
else:
urls_todo.remove(self.url)
if not urls_todo:
stopped = True
break class Task:
def __init__(self, coro):
self.coro = coro
f = Future()
f.set_result(None)
self.step(f) def step(self, future):
try:
# send会进入到coro执行, 即fetch, 直到下次yield
# next_future 为yield返回的对象
next_future = self.coro.send(future.result)
except StopIteration:
return
next_future.add_done_callback(self.step)
print(next_future._callback) # 事件循环
def loop():
while not stopped:
# 阻塞, 直到一个事件发生
events = selector.select()
for event_key, event_mask in events:
callback = event_key.data
callback() if __name__ == '__main__':
import time
start = time.time()
c_list = []
for url in urls_todo:
crawler = Crawler(url)
Task(crawler.fetch())
c_list.append(crawler) loop()
# 增加了对爬取内容的输出
for crawler in c_list:
print(crawler.response)
print(time.time() - start)

  

五、用 yield from 改进生成器协程

yield可以直接作用于普通Python对象,而yield from却不行,

所以我们对Future还要进一步改造,把它变成一个iterable对象就可以了

#!/usr/bin/python3.5
# -*- coding:utf-8 -*- import socket
from selectors import DefaultSelector, EVENT_WRITE, EVENT_READ selector = DefaultSelector()
stopped = False
urls_todo = {'/', '/1', '/2', '/3', '/4', '/5', '/6', '/7', '/8', '/9'} def connect(sock, address):
f = Future()
sock.setblocking(False)
try:
sock.connect(address)
except BlockingIOError:
pass def on_connected():
f.set_result(None) selector.register(sock.fileno(), EVENT_WRITE, on_connected)
yield from f
selector.unregister(sock.fileno()) def read(sock):
f = Future() def on_readable():
f.set_result(sock.recv(4096)) selector.register(sock.fileno(), EVENT_READ, on_readable)
chunk = yield from f
selector.unregister(sock.fileno())
return chunk def read_all(sock):
response = []
chunk = yield from read(sock)
while chunk:
response.append(chunk)
chunk = yield from read(sock)
return b''.join(response) class Future:
def __init__(self):
self.result = None
self._callbacks = [] def add_done_callback(self, fn):
self._callbacks.append(fn) def set_result(self, result):
self.result = result
for fn in self._callbacks:
fn(self) def __iter__(self):
yield self
return self.result class Crawler:
def __init__(self, url):
self.url = url
self.response = b'' def fetch(self):
global stopped
sock = socket.socket()
yield from connect(sock, ('example.com', 80))
get = 'GET {0} HTTP/1.0\r\nHost: example.com\r\n\r\n'.format(self.url)
sock.send(get.encode('ascii'))
self.response = yield from read_all(sock)
urls_todo.remove(self.url)
if not urls_todo:
stopped = True class Task:
def __init__(self, coro):
self.coro = coro
f = Future()
f.set_result(None)
self.step(f) def step(self, future):
try:
# send会进入到coro执行, 即fetch, 直到下次yield
# next_future 为yield返回的对象
next_future = self.coro.send(future.result)
except StopIteration:
return
next_future.add_done_callback(self.step) # 事件循环
def loop():
while not stopped:
# 阻塞, 直到一个事件发生
events = selector.select()
for event_key, event_mask in events:
callback = event_key.data
callback() if __name__ == '__main__':
import time
start = time.time()
for url in urls_todo:
crawler = Crawler(url)
Task(crawler.fetch())
loop()
print(time.time() - start) # 0.53s

  

六、asyncio和原生协程初体验

asyncio是Python 3.4 试验性引入的异步I/O框架(PEP 3156),提供了基于协程做异步I/O编写单线程并发代码的基础设施。

其核心组件有事件循环(Event Loop)、协程(Coroutine)、任务(Task)、未来对象(Future)以及其他一些扩充和辅助性质的模块。

在引入asyncio的时候,还提供了一个装饰器@asyncio.coroutine用于装饰使用了yield from的函数,以标记其为协程。但并不强制使用这个装饰器。

在 3.5 中新增了async/await语法(PEP 492),对协程有了明确而显式的支持,称之为原生协程

async/await 和 yield from这两种风格的协程底层复用共同的实现,而且相互兼容。

在Python 3.6 中asyncio库“转正”,不再是实验性质的,成为标准库的正式一员。

#!/usr/bin/python3.5
# -*- coding:utf-8 -*- import asyncio
import aiohttp host = 'http://example.com'
urls_todo = {'/', '/1', '/2', '/3', '/4', '/5', '/6', '/7', '/8', '/9'} loop = asyncio.get_event_loop() async def fetch(url):
async with aiohttp.ClientSession(loop=loop) as session:
async with session.get(url) as response:
response = await response.read()
return response if __name__ == '__main__':
import time
start = time.time()
tasks = [fetch(host + url) for url in urls_todo]
loop.run_until_complete(asyncio.gather(*tasks))
print(time.time() - start) # 0.54s

2019-06-26补充demo示例

 import time
import asyncio
import requests urls = [
'http://httpbin.org/get',
'http://httpbin.org/ip',
'http://httpbin.org/json',
'http://httpbin.org/uuid',
'http://httpbin.org/user-agent',
'http://httpbin.org/headers',
'http://httpbin.org/response-headers',
] def get_result(url):
d = requests.get(url)
dd = d.json()
return dd start = time.time() results = []
for url in urls:
d = get_result(url)
results.append(d) print('RUN : {}'.format(time.time()-start))
print(results)

耗时:RUN : 6.703306198120117

 import time
import asyncio
import requests urls = [
'http://httpbin.org/get',
'http://httpbin.org/ip',
'http://httpbin.org/json',
'http://httpbin.org/uuid',
'http://httpbin.org/user-agent',
'http://httpbin.org/headers',
'http://httpbin.org/response-headers',
] def myfunc(url):
d = requests.get(url)
dd = d.json()
return dd @asyncio.coroutine
def fetch_async(func, url):
loop = asyncio.get_event_loop()
future = loop.run_in_executor(None, func, url)
data = yield from future
return data start = time.time()
loop = asyncio.get_event_loop()
tasks = [fetch_async(myfunc, url) for url in urls]
results = loop.run_until_complete(asyncio.gather(*tasks))
loop.close() print('RUN : {}'.format(time.time()-start))
print(results)

耗时:RUN : 1.0276665687561035

补充说明

run_in_executor(self, executor, func, *args) 第一个参数是传入一个executor(即concurrent.futures.ThreadPoolExecutor,线程池对象),
不传的话,默认使用 (os.cpu_count() or 1) * 5 这个数值,即如果是4核的cpu,就会对应生成一个含有20线程的线程池,来执行传入的第二个函数func.
所以run_in_executor其实开启了新的线程,再协调各个线程