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I've read some other questions on this topic. However, they didn't solve my problem anyway.

I wrote the code as following and I got pthread version and omp version both slower than the serial version. I'm very confused.

Compiled under environment:

Ubuntu 12.04 64bit 3.2.0-60-generic
g++ (Ubuntu 4.8.1-2ubuntu1~12.04) 4.8.1

CPU(s):                2
On-line CPU(s) list:   0,1
Thread(s) per core:    1
Vendor ID:             AuthenticAMD
CPU family:            18
Model:                 1
Stepping:              0
CPU MHz:               800.000
BogoMIPS:              3593.36
L1d cache:             64K
L1i cache:             64K
L2 cache:              512K
NUMA node0 CPU(s):     0,1

Compile command:

g++ -std=c++11 ./eg001.cpp -fopenmp

#include <cmath>
#include <cstdio>
#include <ctime>
#include <omp.h>
#include <pthread.h>

#define NUM_THREADS 5
const int sizen = 256000000;

struct Data {
    double * pSinTable;
    long tid;

void * compute(void * p) {
    Data * pDt = (Data *)p;
    const int start = sizen * pDt->tid/NUM_THREADS;
    const int end = sizen * (pDt->tid + 1)/NUM_THREADS;
    for(int n = start; n < end; ++n) {
        pDt->pSinTable[n] = std::sin(2 * M_PI * n / sizen);

int main()
    double * sinTable = new double[sizen];
    pthread_t threads[NUM_THREADS];
    pthread_attr_t attr;
    pthread_attr_setdetachstate(&attr, PTHREAD_CREATE_JOINABLE);

    clock_t start, finish;

    start = clock();
    int rc;
    Data dt[NUM_THREADS];
    for(int i = 0; i < NUM_THREADS; ++i) {
        dt[i].pSinTable = sinTable;
        dt[i].tid = i;
        rc = pthread_create(&threads[i], &attr, compute, &dt[i]);
    for(int i = 0; i < NUM_THREADS; ++i) {
        rc = pthread_join(threads[i], nullptr);
    finish = clock();
    printf("from pthread: %lf\n", (double)(finish - start)/CLOCKS_PER_SEC);

    delete sinTable;
    sinTable = new double[sizen];

    start = clock();
#   pragma omp parallel for
    for(int n = 0; n < sizen; ++n)
        sinTable[n] = std::sin(2 * M_PI * n / sizen);
    finish = clock();
    printf("from omp: %lf\n", (double)(finish - start)/CLOCKS_PER_SEC);

    delete sinTable;
    sinTable = new double[sizen];

    start = clock();
    for(int n = 0; n < sizen; ++n)
        sinTable[n] = std::sin(2 * M_PI * n / sizen);
    finish = clock();
    printf("from serial: %lf\n", (double)(finish - start)/CLOCKS_PER_SEC);

    delete sinTable;

    return 0;


from pthread: 21.150000
from omp: 20.940000
from serial: 20.800000

I wonder whether it was my code's problem so I used pthread to do the same thing.

However, I'm totally wrong, and I wonder whether it might be Ubuntu's problem on OpenMP/pthread.

I have a friend who has AMD CPU and Ubuntu 12.04 as well, and got the same problem there, so I might have some reason to believe that the problem is not limited to only me.

If anyone has the same problem as me, or has some clue on the problem, thanks in advance.

If the code is not good enough, I ran a benchmark and I pasted the result here:


The benchmark url: http://www.cs.kent.edu/~farrell/mc08/lectures/progs/openmp/microBenchmarks/src/download.html

New infomation:

I ran the code on windows (without pthread version) with VS2012.

I used 1/10 of sizen because windows does not allow me to allocate that great trunk of memory where the results are:

from omp: 1.004
from serial: 1.420
from FreeNickName: 735 (this one is the suggestion improvement by @FreeNickName)

Does this indicate that it could be a problem of Ubuntu OS ??

Problem is solved by using omp_get_wtime function that is portable among Operating Systems. See the answer by Hristo Iliev.

Some tests about the controversial topic by FreeNickName.

(Sorry I need to test it on Ubuntu cause the windows was one of my friends'.)

--1-- Change from delete to delete [] : (but without memset)(-std=c++11 -fopenmp)

from pthread: 13.491405
from omp: 13.023099
from serial: 20.665132
from FreeNickName: 12.022501

--2-- With memset immediately after new: (-std=c++11 -fopenmp)

from pthread: 13.996505
from omp: 13.192444
from serial: 19.882127
from FreeNickName: 12.541723

--3-- With memset immediately after new: (-std=c++11 -fopenmp -march=native -O2)

from pthread: 11.886978
from omp: 11.351801
from serial: 17.002865
from FreeNickName: 11.198779

--4-- With memset immediately after new, and put FreeNickName's version before OMP for version: (-std=c++11 -fopenmp -march=native -O2)

from pthread: 11.831127
from FreeNickName: 11.571595
from omp: 11.932814
from serial: 16.976979

--5-- With memset immediately after new, and put FreeNickName's version before OMP for version, and set NUM_THREADS to 5 instead of 2 (I'm dual core).

from pthread: 9.451775
from FreeNickName: 9.385366
from omp: 11.854656
from serial: 16.960101
share|improve this question
Is it only slower in Ubuntu? Concurrency does not always yield in performance improvement, if your workload is not grained appropriately you will likely experience a performance drop. –  ddriver Apr 20 '14 at 16:10
@ddriver My friend has a CentOS as well, which parallel version is faster. –  Adam Apr 20 '14 at 16:12
Try with 2 threads only, that's as much as your CPU actually has. No need to run 5 threads on a system that has only two. The threads might very well be fighting for resources, which would explain the drop –  ddriver Apr 20 '14 at 16:36
@ddriver it didn't help. Serial version is stil the fastest. from pthread: 20.960000, from omp: 21.010000, from serial: 20.840000 –  Adam Apr 20 '14 at 16:55
@FreeNickname and Hristo lliev, and pburka, I updated the performance tests on different occasions. I think you guys will be interested. –  Adam Apr 24 '14 at 15:04

3 Answers 3

up vote 4 down vote accepted

There is nothing wrong with OpenMP in your case. What is wrong is the way you measure the elapsed time.

Using clock() to measure the performance of multithreaded applications on Linux (and most other Unix-like OSes) is a mistake since it does not return the wall-clock (real) time but instead the accumulated CPU time for all process threads (and on some Unix flavours even the accumulated CPU time for all child processes). Your parallel code shows better performance on Windows since there clock() returns the real time and not the accumulated CPU time.

The best way to prevent such discrepancies is to use the portable OpenMP timer routine omp_get_wtime():

double start = omp_get_wtime();
#pragma omp parallel for
for(int n = 0; n < sizen; ++n)
    sinTable[n] = std::sin(2 * M_PI * n / sizen);
double finish = omp_get_wtime();
printf("from omp: %lf\n", finish - start);

For non-OpenMP applications, you should use clock_gettime() with the CLOCK_REALTIME clock:

struct timespec start, finish;
clock_gettime(CLOCK_REALTIME, &start);
#pragma omp parallel for
for(int n = 0; n < sizen; ++n)
    sinTable[n] = std::sin(2 * M_PI * n / sizen);
clock_gettime(CLOCK_REALTIME, &finish);
printf("from omp: %lf\n", (finish.tv_sec + 1.e-9 * finish.tv_nsec) -
                          (start.tv_sec + 1.e-9 * start.tv_nsec));
share|improve this answer
I wonder whether clock() function is a C-standard function, and if so, how could it be non-portable?? –  Adam Apr 21 '14 at 11:12
clock() is an ISO/IEC 9899:1990 (a.k.a. C90) and SUSv3 standard function indeed, but its poor definition and the pre-existing discrepancies prompted the development of the new portable clock_gettime() interface. –  Hristo Iliev Apr 21 '14 at 14:36
Well, I googled clock_gettime(), and I found out that it's just portable among *nix, but not windows (That's quite sad). –  Adam Apr 21 '14 at 15:00
That's why you should use omp_get_wtime() as it is portable among all platforms that support OpenMP and it always returns real time. –  Hristo Iliev Apr 21 '14 at 15:01

The Linux scheduler, in the absence of any information, will tend to schedule threads in a process on the same core so that they are served by the same cache and memory bus. It has no way of knowing that your threads will be accessing different memory so won't be hurt instead of helped by being on different cores.

Use the sched_setaffinity function to set each thread to a different core mask.

share|improve this answer
I used time command to calculate the cpu usage (I ran only pthread version) and it gave me: from pthread: 20.760000 ./a.out 19.67s user 1.29s system 164% cpu 12.741 total –  Adam Apr 21 '14 at 2:54
If sched_setaffinity is needed on your platform, then surely the omp runtime platform support code will invoke it for you. –  Ben Voigt Apr 21 '14 at 4:42
How about setting the GOMP_CPU_AFFINITY environment variable instead of messing with non-portable system calls? –  Hristo Iliev Apr 21 '14 at 9:57

WARNING: tho answer is controversial. The trick described below is implementation dependent and can lead to a decrease of performance. Still, it might increase it as well. I strongly recommend to take a look at comments to this answer.

This doesn't really answer the question, but if you alter the way you parallelize your code, you might get a performance boost. Now you do it like this:

#pragma omp parallel for
for(int n = 0; n < sizen; ++n)
    sinTable[n] = std::sin(2 * M_PI * n / sizen);

In this case each thread will compute one item. Since you have 2 cores, OpenMP will create two threads by default. To calculate each value a thread would have to:

  1. Initialize.
  2. Compute values.

The first step is rather expensive. And both your threads would have to do it sizen/2 times. Try to do the following:

    int workloadPerThread = sizen / NUM_THREADS;
    #pragma omp parallel for
    for (int thread = 0; thread < NUM_THREADS; ++thread)
        int start = thread * workloadPerThread;
        int stop = start + workloadPerThread;
        if (thread == NUM_THREADS - 1)
                stop += sizen % NUM_THREADS;
        for (int n = start; n < stop; ++n)
            sinTable[n] = std::sin(2 * M_PI * n / sizen);

This way your threads will initialize only once.

share|improve this answer
I suggest that you might have taken the wrong path on the question where the benchmark result would like to explain that any improvement on code will not humbly affect the result. Anyway, thanks for your suggestion nevertheless it didn't work: from pthread: 20.730000; from omp: 20.800000; from serial: 20.780000; from FreeNickname: 20.850000 –  Adam Apr 21 '14 at 5:51
Yes, sorry. If it was a pure OpenMP problem, ptheads would run faster than the serial version. Still, my answer might help you to improve omp performance, when you will deal with this strange behaviour you get, so, I guess, I'll leave it here. –  FreeNickname Apr 21 '14 at 6:20
This answer is incorrect. The compiler / runtime will divide the work up for you. Dividing it up by hand as you've demonstrated will be unlikely to show any improvement, and makes the code much more difficult to read. –  pburka Apr 21 '14 at 13:12
@pburka, and now read the question again, please. Up to the end. –  FreeNickname Apr 21 '14 at 17:58
I tend to agree with @pburka. Your code is an unnecessary overcomplication of what parallel for schedule(static) does anyway. And though not explicitly specified in the original question, schedule(static) is the implementation-specific default for virtually any existing OpenMP compiler when no schedule clause is specified. –  Hristo Iliev Apr 21 '14 at 20:24

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