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I wonder whether more than 8 threads can run concurrently on a hardware with 8 cores.

If so, using openMP to parallelize N calculations, I could create chunks of size, say, N/8, and in each thread further fork into (N/8)/8 threads, and maybe still more?

How do things happen when I nested parallelize? do I still have 8 available threads for the nested parallel?

Thanks!!

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3 Answers 3

up vote 6 down vote accepted

8 cores can only run at most 8 threads concurrently at a given point in time. However, a lot depends on what your threads are doing. If they are doing CPU intensive tasks, it is not recommended to spawn many more threads than the number of cores (a few maybe OK). Otherwise excessive context switching and cache misses will start to degrade performance. However, if there is significant I/O, the threads may be blocked a lot, not using the CPU, so you can run many more of them in parallel.

Bottom line is, you need to measure the performance in your particular case, on your particular environment.

See also this related thread.

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I reckon interleaving could possibly in certain scenarios speed things up ? For instance, if there was a lot of waiting for certain processes to finish ? –  ScarletAmaranth Apr 16 '12 at 17:06
    
it looks like my program is faster (20%?) using nested parallels. I never enforce the number of threads to use, I only set omp_set_nested(true) –  octoback Apr 17 '12 at 8:09
    
@ScarletAmaranth, yes indeed. I/O is the most typical example of this (hence I mentioned it in my answer), but there are other cases too. –  Péter Török Apr 17 '12 at 8:33

The modern cpu processors have option of hyper-threading.
It means that the pipeline can run two or more threads at the same time.

so the number of threads that can run simultaneously
total_threads = num_procs * hyper_threading factor

Generally, the hyperthreading factor = 2.

For a cpu intensive workload, you must run total_threads. For a io intensive workloads, you can should use total_threads*2 number of threads. This way we can overlap the compute of some threads with io of other threads.

The thumb-rules are what I follow. You may change it depending upon the workload.

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First of all,you can't run more than 8 threads. Second,resort to nested parallelism if nothing else works as openmp has to improve a lot in this aspect.

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