49

I am trying to execute lots of tasks using a ThreadPoolExecutor. Below is a hypothetical example:

def workQueue = new ArrayBlockingQueue<Runnable>(3, false)
def threadPoolExecutor = new ThreadPoolExecutor(3, 3, 1L, TimeUnit.HOURS, workQueue)
for(int i = 0; i < 100000; i++)
    threadPoolExecutor.execute(runnable)

The problem is that I quickly get a java.util.concurrent.RejectedExecutionException since the number of tasks exceeds the size of the work queue. However, the desired behavior I am looking for is to have the main thread block until there is room in the queue. What is the best way to accomplish this?

  • 3
    Take a look at this question: stackoverflow.com/questions/2001086/… – Kiril Aug 10 '10 at 4:33
  • 3
    This answer to another question suggests using a custom BlockingQueue subclass which blocks on offer() by delegating to put(). I think that ends up working more or less the same as the RejectedExecutionHandler which calls getQueue().put(). – Robert Tupelo-Schneck Mar 29 '14 at 20:50
  • 2
    Putting directly in queue would be incorrect, as explained in this answer stackoverflow.com/a/3518588/585903 – Sumit Jain Apr 9 '15 at 13:42
  • 2
    @SumitJain Read that answer more carefully; only one of the three objections raised in that answer apply to the approach suggested in @Robert Tupelo-Schneck's comment. By invoking put() from within the queue itself, you don't access the queue via getQueue() (objection #3) and the object you're putting is already properly wrapped if necessary (objection #2). You're still at risk of deadlock if all your threads die before the item comes off the queue, but that may be a risk most people looking for this particular solution would be willing to assume. – Tim Apr 27 '17 at 21:22
56

In some very narrow circumstances, you can implement a java.util.concurrent.RejectedExecutionHandler that does what you need.

RejectedExecutionHandler block = new RejectedExecutionHandler() {
  rejectedExecution(Runnable r, ThreadPoolExecutor executor) {
     executor.getQueue().put( r );
  }
};

ThreadPoolExecutor pool = new ...
pool.setRejectedExecutionHandler(block);

Now. This is a very bad idea for the following reasons

  • It's prone to deadlock because all the threads in the pool may die before the thing you put in the queue is visible. Mitigate this by setting a reasonable keep alive time.
  • The task is not wrapped the way your Executor may expect. Lots of executor implementations wrap their tasks in some sort of tracking object before execution. Look at the source of yours.
  • Adding via getQueue() is strongly discouraged by the API, and may be prohibited at some point.

A almost-always-better strategy is to install ThreadPoolExecutor.CallerRunsPolicy which will throttle your app by running the task on the thread which is calling execute().

However, sometimes a blocking strategy, with all its inherent risks, is really what you want. I'd say under these conditions

  • You only have one thread calling execute()
  • You have to (or want to) have a very small queue length
  • You absolutely need to limit the number of threads running this work (usually for external reasons), and a caller-runs strategy would break that.
  • Your tasks are of unpredictable size, so caller-runs could introduce starvation if the pool was momentarily busy with 4 short tasks and your one thread calling execute got stuck with a big one.

So, as I say. It's rarely needed and can be dangerous, but there you go.

Good Luck.

  • 3
    A very well thought-out response. I take minor issue with your condition that > "You have to (or want to) have a very small queue length." You may not be able to predict how many tasks that a given job will queue. Maybe you're running a daily job that processes data from some DB and on Monday there's 500 records to process but Tuesday there are 50,000. You've gotta set an upper bound on your queue such that you won't blow your heap when a big job comes through. In that case there's no harm in waiting for some tasks to complete before queueing more. – skelly Jan 15 '15 at 14:43
  • Fantastic answer, thank you – Roy Truelove Mar 5 '15 at 16:08
  • 2
    "It's prone to deadlock because all the threads in the pool may die before the thing you put in the queue is visible. Mitigate this by setting a reasonable keep alive time." Can't deadlock be avoided completely by setting the min pool size to a value greater than zero? Every other reason is fallout of Java not having built-in support for blocking puts to executor queues. Which is interesting, because it seems to be a pretty reasonable strategy. I wonder what the rationale is. – Tim Pote Sep 30 '15 at 12:05
  • 2
    Perhaps another condition for a blocking strategy is when order of execution is important. CallerRunsPolicy will mean that the rejected task will likely be executed before other pending items in the executor. – Adrian Baker Mar 10 '18 at 19:24
5

You could use a semaphore to block threads from going into the pool.

ExecutorService service = new ThreadPoolExecutor(
    3, 
    3, 
    1, 
    TimeUnit.HOURS, 
    new ArrayBlockingQueue<>(6, false)
);

Semaphore lock = new Semaphore(6); // equal to queue capacity

for (int i = 0; i < 100000; i++ ) {
    try {
        lock.acquire();
        service.submit(() -> {
            try {
              task.run();
            } finally {
              lock.release();
            }
        });
    } catch (InterruptedException e) {
        throw new RuntimeException(e);
    }
}

Some gotchas:

  • Only use this pattern with a fixed thread pool. The queue is unlikely to be full often, thus new threads won't be created. Check out the java docs on ThreadPoolExecutor for more details: https://docs.oracle.com/javase/8/docs/api/java/util/concurrent/ThreadPoolExecutor.html There is a way around this, but it is out of scope of this answer.
  • Queue size should be higher than the number of core threads. If we were to make the queue size 3, what would end up happening is:

    • T0: all three threads are doing work, the queue is empty, no permits are available.
    • T1: Thread 1 finishes, releases a permit.
    • T2: Thread 1 polls the queue for new work, finds none, and waits.
    • T3: Main thread submits work into the pool, thread 1 starts work.

    The example above translates to thread the main thread blocking thread 1. It may seem like a small period, but now multiply the frequency by days and months. All of a sudden, short periods of time add up to a large amount of time wasted.

  • Thread 1 is already blocked at time T2 when it finds the queue to be empty. I'm not sure I understood your point on main thread blocking that thread. – asgs Nov 11 '18 at 21:54
  • @asgs "Thread 1 is already blocked at time T2 when it finds the queue to be empty." Right, and because it's the main thread's responsibility to put work into the queue, you can deduce that the main thread is blocking Thread 1. – devkaoru Nov 22 '18 at 17:56
5

What you need to do is to wrap your ThreadPoolExecutor into Executor which explicitly limits amount of concurrently executed operations inside it:

 private static class BlockingExecutor implements Executor {

    final Semaphore semaphore;
    final Executor delegate;

    private BlockingExecutor(final int concurrentTasksLimit, final Executor delegate) {
        semaphore = new Semaphore(concurrentTasksLimit);
        this.delegate = delegate;
    }

    @Override
    public void execute(final Runnable command) {
        try {
            semaphore.acquire();
        } catch (InterruptedException e) {
            e.printStackTrace();
            return;
        }

        final Runnable wrapped = () -> {
            try {
                command.run();
            } finally {
                semaphore.release();
            }
        };

        delegate.execute(wrapped);

    }
}

You can adjust concurrentTasksLimit to the threadPoolSize + queueSize of your delegate executor and it will pretty much solve your problem

1

Here is my code snippet in this case:

public void executeBlocking( Runnable command ) {
    if ( threadPool == null ) {
        logger.error( "Thread pool '{}' not initialized.", threadPoolName );
        return;
    }
    ThreadPool threadPoolMonitor = this;
    boolean accepted = false;
    do {
        try {
            threadPool.execute( new Runnable() {
                @Override
                public void run() {
                    try {
                        command.run();
                    }
                    // to make sure that the monitor is freed on exit
                    finally {
                        // Notify all the threads waiting for the resource, if any.
                        synchronized ( threadPoolMonitor ) {
                            threadPoolMonitor.notifyAll();
                        }
                    }
                }
            } );
            accepted = true;
        }
        catch ( RejectedExecutionException e ) {
            // Thread pool is full
            try {
                // Block until one of the threads finishes its job and exits.
                synchronized ( threadPoolMonitor ) {
                    threadPoolMonitor.wait();
                }
            }
            catch ( InterruptedException ignored ) {
                // return immediately
                break;
            }
        }
    } while ( !accepted );
}

threadPool is a local instance of java.util.concurrent.ExecutorService which has been initialized already.

1

This is what I ended up doing:

int NUM_THREADS = 6;
Semaphore lock = new Semaphore(NUM_THREADS);
ExecutorService pool = Executors.newCachedThreadPool();

for (int i = 0; i < 100000; i++) {
    try {
        lock.acquire();
    } catch (InterruptedException e) {
        throw new RuntimeException(e);
    }
    pool.execute(() -> {
        try {
            // Task logic
        } finally {
            lock.release();
        }
    });
}
0

I solved this problem using a custom RejectedExecutionHandler, which simply blocks the calling thread for a little while and then tries to submit the task again:

public class BlockWhenQueueFull implements RejectedExecutionHandler {

    public void rejectedExecution(Runnable r, ThreadPoolExecutor executor) {

        // The pool is full. Wait, then try again.
        try {
            long waitMs = 250;
            Thread.sleep(waitMs);
        } catch (InterruptedException interruptedException) {}

        executor.execute(r);
    }
}

This class can just be used in the thread-pool executor as a RejectedExecutionHandler like any other. In this example:

executorPool = new def threadPoolExecutor = new ThreadPoolExecutor(3, 3, 1L, TimeUnit.HOURS, workQueue, new BlockWhenQueueFull())

The only downside I see is that the calling thread might get locked slightly longer than strictly necessary (up to 250ms). For many short-running tasks, perhaps decrease the wait-time to 10ms or so. Moreover, since this executor is effectively being called recursively, very long waits for a thread to become available (hours) might result in a stack overflow.

Nevertheless, I personally like this method. It's compact, easy to understand, and works well. Am I missing anything important?

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