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  • 理解Twisted与非阻塞编程

    先来看一段代码:

    # ~*~ Twisted - A Python tale ~*~
    
    from time import sleep
    
    # Hello, I'm a developer and I mainly setup Wordpress.
    def install_wordpress(customer):
        # Our hosting company Threads Ltd. is bad. I start installation and...
        print "Start installation for", customer
        # ...then wait till the installation finishes successfully. It is
        # boring and I'm spending most of my time waiting while consuming
        # resources (memory and some CPU cycles). It's because the process
        # is *blocking*.
        sleep(3)
        print "All done for", customer
    
    # I do this all day long for our customers
    def developer_day(customers):
        for customer in customers:
            install_wordpress(customer)
    
    developer_day(["Bill", "Elon", "Steve", "Mark"])
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    运行一下,结果如下所示:

    $ ./deferreds.py 1
    ------ Running example 1 ------
    Start installation for Bill
    All done for Bill
    Start installation
    ...
    * Elapsed time: 12.03 seconds
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    这是一段顺序执行的代码。四个消费者,为一个人安装需要3秒的时间,那么四个人就是12秒。这样处理不是很令人满意,所以看一下第二个使用了线程的例子:

    import threading
    
    # The company grew. We now have many customers and I can't handle the
    # workload. We are now 5 developers doing exactly the same thing.
    def developers_day(customers):
        # But we now have to synchronize... a.k.a. bureaucracy
        lock = threading.Lock()
        #
        def dev_day(id):
            print "Goodmorning from developer", id
            # Yuck - I hate locks...
            lock.acquire()
            while customers:
                customer = customers.pop(0)
                lock.release()
                # My Python is less readable
                install_wordpress(customer)
                lock.acquire()
            lock.release()
            print "Bye from developer", id
        # We go to work in the morning
        devs = [threading.Thread(target=dev_day, args=(i,)) for i in range(5)]
        [dev.start() for dev in devs]
        # We leave for the evening
        [dev.join() for dev in devs]
    
    # We now get more done in the same time but our dev process got more
    # complex. As we grew we spend more time managing queues than doing dev
    # work. We even had occasional deadlocks when processes got extremely
    # complex. The fact is that we are still mostly pressing buttons and
    # waiting but now we also spend some time in meetings.
    developers_day(["Customer %d" % i for i in xrange(15)])
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    运行一下:

    $ ./deferreds.py 2
    ------ Running example 2 ------
    Goodmorning from developer 0Goodmorning from developer
    1Start installation forGoodmorning from developer 2
    Goodmorning from developer 3Customer 0
    ...
    from developerCustomer 13 3Bye from developer 2
    * Elapsed time: 9.02 seconds
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    这次是一段并行执行的代码,使用了5个工作线程。15个消费者每个花费3s意味着总共45s的时间,不过用了5个线程并行执行总共只花费了9s的时间。这段代码有点复杂,很大一部分代码是用于管理并发,而不是专注于算法或者业务逻辑。另外,程序的输出结果看起来也很混杂,可读性也天津市。即使是简单的多线程的代码同样也难以写得很好,所以我们转为使用Twisted:

    # For years we thought this was all there was... We kept hiring more
    # developers, more managers and buying servers. We were trying harder
    # optimising processes and fire-fighting while getting mediocre
    # performance in return. Till luckily one day our hosting
    # company decided to increase their fees and we decided to
    # switch to Twisted Ltd.!
    
    from twisted.internet import reactor
    from twisted.internet import defer
    from twisted.internet import task
    
    # Twisted has a slightly different approach
    def schedule_install(customer):
        # They are calling us back when a Wordpress installation completes.
        # They connected the caller recognition system with our CRM and
        # we know exactly what a call is about and what has to be done next.
        #
        # We now design processes of what has to happen on certain events.
        def schedule_install_wordpress():
                def on_done():
                    print "Callback: Finished installation for", customer
            print "Scheduling: Installation for", customer
            return task.deferLater(reactor, 3, on_done)
        #
        def all_done(_):
            print "All done for", customer
        #
        # For each customer, we schedule these processes on the CRM
        # and that
        # is all our chief-Twisted developer has to do
        d = schedule_install_wordpress()
        d.addCallback(all_done)
        #
        return d
    
    # Yes, we don't need many developers anymore or any synchronization.
    # ~~ Super-powered Twisted developer ~~
    def twisted_developer_day(customers):
        print "Goodmorning from Twisted developer"
        #
        # Here's what has to be done today
        work = [schedule_install(customer) for customer in customers]
        # Turn off the lights when done
        join = defer.DeferredList(work)
        join.addCallback(lambda _: reactor.stop())
        #
        print "Bye from Twisted developer!"
    # Even his day is particularly short!
    twisted_developer_day(["Customer %d" % i for i in xrange(15)])
    
    # Reactor, our secretary uses the CRM and follows-up on events!
    reactor.run()
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    运行结果:

    ------ Running example 3 ------
    Goodmorning from Twisted developer
    Scheduling: Installation for Customer 0
    ....
    Scheduling: Installation for Customer 14
    Bye from Twisted developer!
    Callback: Finished installation for Customer 0
    All done for Customer 0
    Callback: Finished installation for Customer 1
    All done for Customer 1
    ...
    All done for Customer 14
    * Elapsed time: 3.18 seconds
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    这次我们得到了完美的执行代码和可读性强的输出结果,并且没有使用线程。我们并行地处理了15个消费者,也就是说,本来需要45s的执行时间在3s之内就已经完成。这个窍门就是我们把所有的阻塞的对sleep()的调用都换成了Twisted中对等的task.deferLater()和回调函数。由于现在处理的操作在其他地方进行,我们就可以毫不费力地同时服务于15个消费者。

    前面提到处理的操作发生在其他的某个地方。现在来解释一下,算术运算仍然发生在CPU内,但是现在的CPU处理速度相比磁盘和网络操作来说非常快。所以给CPU提供数据或者从CPU向内存或另一个CPU发送数据花费了大多数时间。我们使用了非阻塞的操作节省了这方面的时间,例如,task.deferLater()使用了回调函数,当数据已经传输完成的时候会被激活。

    另一个很重要的一点是输出中的Goodmorning from Twisted developerBye from Twisted developer!信息。在代码开始执行时就已经打印出了这两条信息。如果代码如此早地执行到了这个地方,那么我们的应用真正开始运行是在什么时候呢?答案是,对于一个Twisted应用(包括Scrapy)来说是在reactor.run()里运行的。在调用这个方法之前,必须把应用中可能用到的每个Deferred链准备就绪,然后reactor.run()方法会监视并激活回调函数。

    注意,reactor的主要一条规则就是,你可以执行任何操作,只要它足够快并且是非阻塞的。

    现在好了,代码中没有那么用于管理多线程的部分了,不过这些回调函数看起来还是有些杂乱。可以修改成这样:

    # Twisted gave us utilities that make our code way more readable!
    @defer.inlineCallbacks
    def inline_install(customer):
        print "Scheduling: Installation for", customer
        yield task.deferLater(reactor, 3, lambda: None)
        print "Callback: Finished installation for", customer
        print "All done for", customer
    
    def twisted_developer_day(customers):
        ... same as previously but using inline_install() instead of schedule_install()
    
    twisted_developer_day(["Customer %d" % i for i in xrange(15)])
    reactor.run()
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    运行的结果和前一个例子相同。这段代码的作用和上一个例子是一样的,但是看起来更加简洁明了。inlineCallbacks生成器可以使用一些一些Python的机制来使得inline_install()函数暂停或者恢复执行。inline_install()函数变成了一个Deferred对象并且并行地为每个消费者运行。每次yield的时候,运行就会中止在当前的inline_install()实例上,直到yieldDeferred对象完成后再恢复运行。

    现在唯一的问题是,如果我们不止有15个消费者,而是有,比如10000个消费者时又该怎样?这段代码会同时开始10000个同时执行的序列(比如HTTP请求、数据库的写操作等等)。这样做可能没什么问题,但也可能会产生各种失败。在有巨大并发请求的应用中,例如Scrapy,我们经常需要把并发的数量限制到一个可以接受的程度上。在下面的一个例子中,我们使用task.Cooperator()来完成这样的功能。Scrapy在它的Item Pipeline中也使用了相同的机制来限制并发的数目(即CONCURRENT_ITEMS设置):

    @defer.inlineCallbacks
    def inline_install(customer):
        ... same as above
    
    # The new "problem" is that we have to manage all this concurrency to
    # avoid causing problems to others, but this is a nice problem to have.
    def twisted_developer_day(customers):
        print "Goodmorning from Twisted developer"
        work = (inline_install(customer) for customer in customers)
        #
        # We use the Cooperator mechanism to make the secretary not
        # service more than 5 customers simultaneously.
        coop = task.Cooperator()
        join = defer.DeferredList([coop.coiterate(work) for i in xrange(5)])
        #
        join.addCallback(lambda _: reactor.stop())
        print "Bye from Twisted developer!"
    
    twisted_developer_day(["Customer %d" % i for i in xrange(15)])
    reactor.run()
    
    # We are now more lean than ever, our customers happy, our hosting
    # bills ridiculously low and our performance stellar.
    # ~*~ THE END ~*~
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    运行结果:

    $ ./deferreds.py 5
    ------ Running example 5 ------
    Goodmorning from Twisted developer
    Bye from Twisted developer!
    Scheduling: Installation for Customer 0
    ...
    Callback: Finished installation for Customer 4
    All done for Customer 4
    Scheduling: Installation for Customer 5
    ...
    Callback: Finished installation for Customer 14
    All done for Customer 14
    * Elapsed time: 9.19 seconds
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    从上面的输出中可以看到,程序运行时好像有5个处理消费者的槽。除非一个槽空出来,否则不会开始处理下一个消费者的请求。在本例中,处理时间都是3秒,所以看起来像是5个一批次地处理一样。最后得到的性能跟使用线程是一样的,但是这次只有一个线程,代码也更加简洁更容易写出正确的代码。

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  • 原文地址:https://www.cnblogs.com/skying555/p/5982680.html
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