This question already has an answer here:

So I know that if you use the parallelStream without a custom ForkJoinPool it will use the default ForkJoinPool which by default has one less threads as you have processors.

So, as stated here (and also in the other answer of that question) in order to have more parallelism, you have to:

submit the parallel stream execution to your own ForkJoinPool: yourFJP.submit(() -> stream.parallel().forEach(doSomething));

So, I did this:

import java.util.Set;
import java.util.concurrent.ExecutionException;
import java.util.concurrent.ForkJoinPool;
import java.util.stream.IntStream;
import com.google.common.collect.Sets;

public class Main {

    public static void main(String[] args) throws InterruptedException, ExecutionException {

        ForkJoinPool forkJoinPool = new ForkJoinPool(1000);

        IntStream stream = IntStream.range(0, 999999);

        final Set<String> thNames = Collections.synchronizedSet(new HashSet<String>());

        forkJoinPool.submit(() -> {
            stream.parallel().forEach(n -> {

                System.out.println("Processing n: " + n);
                try {
                    System.out.println("Size: " + thNames.size() + " activeCount: " + forkJoinPool.getActiveThreadCount());
                } catch (Exception e) {
                    throw new RuntimeException(e);

I made a Set of thread Names in order to see how many threads are being created, and also logged the number of active threads that the pool has and both numbers don't grow up more that 16, so that means that the parallelism here is not being more than 16 (why even 16?). If I do not use the forkJoinPool, I get 4 as parallelism, which is according to the number of processors I have.

Why does it give me 16 and not 1000?

marked as duplicate by Sotirios Delimanolis java Apr 30 '16 at 0:07

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • 2
    I think there might be an issue with parallel() choosing the incorrect ForkJoinPool. When you set System.setProperty("java.util.concurrent.ForkJoinPool.common.parallelism", "1000");, it correctly uses that many worker threads, from the default pool. – Sotirios Delimanolis Apr 29 '16 at 21:21
  • 1
    @LouisWasserman My experiment was using a different ForkJoinPool (from netty), so can't rely on it. I'd like to rely on the highly upvoted post. – Sotirios Delimanolis Apr 29 '16 at 21:34
  • 2
    I'm very confused. When you set the common pool's parallelism with the system property, it triggers something that allows your pool to also reach that size. If you don't, your pool is maxed out. I can't find what that is from looking at the code right now. It might be the commonParallelism. – Sotirios Delimanolis Apr 29 '16 at 22:06
  • 2
    So that post only discusses how to execute the tasks in a custom ForkJoinPool, which your code is doing (you can verify this with a custom thread factory with custom names for the fork join threads). Your issue here is deeper than that. It relates to how the Stream#parallel() ends up using your FJP, limiting the parallelism separately. This part is unspecified. – Sotirios Delimanolis Apr 30 '16 at 0:15
  • 2
    You already have an answer. There is no need to add another. Still, there is no reason to post broken code, not even if “this was just an example”. Instantiating a thread-safe set instead still is a single line of code. By the way, if “this was just an example”, why aren’t you even able to create a new hash set without a third party library dependency? – Holger May 2 '16 at 14:54


Originally this answer was an elaborate explanation claiming that the ForkJoinPool applies back-pressure and doesn't even reach the prescribed parallelism level, because there are always idle workers available to process the stream.

That's incorrect.

The actual answer is provided in the original question to which this was marked as duplicate - using a custom ForkJoinPool for stream processing is not officially supported, and when using forEach, the default pool parallelism is used to determine the stream spliterator behavior.

Here's an example how when tasks are manually submitted to a custom ForkJoinPool, the pool's active thread count easily reaches its parallelism level:

for (int i = 0; i < 1_000_000; ++i) {
   forkJoinPool.submit(() -> {
      try {
         System.out.println("Size: " + thNames.size() + " activeCount: " + forkJoinPool.getActiveThreadCount() + " parallelism: " + forkJoinPool.getParallelism());
      } catch (Exception e) {
         throw new RuntimeException(e);

Thanks to Stuart Marks for pointing this out and to Sotirios Delimanolis for arguing that my original answer is wrong :)

  • Do you have the link where Stuart Marks pointed this out ? – Brice Jan 23 '18 at 10:41
  • @Brice See Stuart's answer in the duplicate question. – holocronweaver Feb 27 '18 at 0:20
  • @holocronweaver OK, thanks ! – Brice Feb 27 '18 at 10:11

It seems to me that when you submit a lambda to the FJP that lambda will use the common pool and not the FJP. Sotirios Delimanolis proved this with his comment, above. What you are submitting is a Task that runs in your FJP.

Try profiling this code to see what threads are actually being used.

You cannot name the threads within the FJP.

  • 3
    Nono. Maybe I worded my comment incorrectly. The task should run in the context of whatever ForkJoinPool instance it was submitted on. It does this by looking at the type of the currently running thread. If it's of type ForkJoinWorkerThread, it then has access to the ForkJoinPool that created it. It can use that to submit the other parallel tasks. You can name the threads of custom ForkJoinPool by providing an appropriate thread factory. – Sotirios Delimanolis Apr 29 '16 at 22:23

Not the answer you're looking for? Browse other questions tagged or ask your own question.