同步对象以确保完成所有任务

Car*_*aet 10 java concurrency multithreading synchronization blocking

我应该使用哪个Java同步对象来确保完成任意大量的任务?限制是:

  1. 每项任务都需要花费大量的时间来完成,并行执行任务是合适的.
  2. 有太多的任务要适应内存(即我不能将Future每个任务放入a Collection然后调用get所有期货).
  3. 我不知道将会有多少任务(即我不能使用a CountDownLatch).
  4. ExecutorService可共享的,所以我不能用awaitTermination( long, TimeUnit )

例如,在Grand Central Dispatch中,我可能会这样做:

let workQueue = dispatch_get_global_queue( QOS_CLASS_BACKGROUND, 0 )
let latch = dispatch_group_create()
let startTime = NSDate()
var itemsProcessed = 0
let countUpdateQueue = dispatch_queue_create( "countUpdateQueue", DISPATCH_QUEUE_SERIAL )
for item in fetchItems() // generator returns too many items to store in memory
{
    dispatch_group_enter( latch )
    dispatch_async( workQueue )
    {
        self.processItem( item ) // method takes a non-trivial amount of time to run
        dispatch_async( countUpdateQueue )
        {
            itemsProcessed++
        }
        dispatch_group_leave( latch )
    }
}
dispatch_group_wait( latch, DISPATCH_TIME_FOREVER )
let endTime = NSDate()
let totalTime = endTime.timeIntervalSinceDate( startTime )
print( "Processed \(itemsProcessed) items in \(totalTime) seconds." )
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它产生的输出看起来像这样(128项): Processed 128 items in 1.846794962883 seconds.

我试过类似的东西Phaser:

final Executor executor = new ThreadPoolExecutor( 64, 64, 1l, MINUTES, new LinkedBlockingQueue<Runnable>( 8 ), new CallerRunsPolicy() );
final Phaser latch = new Phaser( 0 );
final long startTime = currentTimeMillis();
final AtomicInteger itemsProcessed = new AtomicInteger( 0 );
for( final String item : fetchItems() ) // iterator returns too many items to store in memory
{
    latch.register();
    final Runnable task = new Runnable() {
        public void run() {
            processItem( item ); // method takes a non-trivial amount of time to run
            itemsProcessed.incrementAndGet();
            latch.arrive();
        }
    };
    executor.execute( task );
}
latch.awaitAdvance( 0 );
final long endTime = currentTimeMillis();
out.println( "Processed " + itemsProcessed.get() + " items in " + ( endTime - startTime ) / 1000.0 + " seconds." );
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任务并不总是在最后一个print语句之前完成,我可能会得到如下所示的输出(对于128项):Processed 121 items in 5.296 seconds.是否Phaser使用正确的对象?文档表明它只支持65,535个参与方,因此我需要批处理要处理的项目或引入某种Phaser分层.

Ale*_*dov 1

“确保完成任意数量的任务” - 最简单的方法是维护已完成任务的计数器,并使用阻塞操作来等待达到给定数量的任务。没有这样的现成课程,但很容易制作一个:

class EventCounter {
   long counter=0;

   synchronized void up () {
     counter++;
     notifyAll();
   }
   synchronized void ensure (long count) {
     while (counter<count) wait();
   }
 }
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“任务太多,无法装入内存” - 因此,当正在运行的任务数量过多时,必须暂停提交新任务的过程。最简单的方法是将正在运行的任务数量视为资源,并用信号量来计数:

Semaphore runningTasksSema=new Semaphore(maxNumberOfRunningTasks);
EventCounter  eventCounter =new EventCounter ();

for( final String item : fetchItems() ) {
    final Runnable task = new Runnable() {
       public void run() {
            processItem( item ); 
            runningTasksSema.release();
            eventCounter.up();
       }
    };
   runningTasksSema.aquire();
   executor.execute(task);
}
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当线程想要确保完成一些给定数量的任务时,它会调用:

eventCounter.ensure(givenNumberOfFinishedTasks);
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可以设计runningTasksSema.aquire()和操作的异步(非阻塞)版本,但它们会更复杂。eventCounter.ensure()