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I need an advice for sample below code that requires lots of time for processing. I am developing project on OpenCV and have code blocks like this ( some of them are pictures ). What should I use for more speed? Like, OpenMP or TBB ( that's new in OpenCV and more complex, maybe some examples more helpful ) or GPU ( implementing entire project ) or Boost library or another I don't know 3rd party libraries.

i didn't write multithread on c++ before

thanks for helping now

sample code snippet:

for ( int j = 0; j < 90000000; j++ )
  for ( int i = 0; i < 90000000; i++ )
    for ( int k = 0; k < 90000000; k++ )
             // float point operations
share|improve this question
    
I have simplified it for easy understanding. In the code blocks, can be other outside variables. Also, i need an advice, can you suggest which option can be easy to follow? – user2055437 Feb 8 '13 at 19:24
    
But, then we don't know where the real bottlenecks are. As shown, there isn't really much here to optimize. – user334856 Feb 8 '13 at 19:25
    
first sorry for stealing your time, second the actual code blocks are very long and i didn't know how should i post here. Because of this, i must understand how can i handle double-for or triple-for? should i use tbb or openmp. which option is best solution for like situations? – user2055437 Feb 8 '13 at 19:47
    
for example; what are you using while impleting multithread programs? which is easy to understand, because i have a limited time. thks again – user2055437 Feb 8 '13 at 19:51
4  
((90 000 000^3) / 8) * bytes = 80 935 258.5 petabytes - assuming you are indexing an optimally stored bit matrix. What are you trying to actually do here? – sehe Feb 12 '13 at 14:48
up vote 3 down vote accepted

At first you should ensure to have linear access to your memory. For example if you have a matrix:

cv::Mat mat(nrows, ncols, CV_32FC1);

linear access is:

for(int r = 0; r < mat.rows; r++)
{
  for(int c = 0; c < mat.cols; c++)
  {
    mat.at<float>(r,c) ... do something
  }
}

no linear access and much slower would be:

for(int c = 0; c < mat.cols; c++)
{
   for(int r = 0; r < mat.rows; r++)
   {
     mat.at<float>(r,c) ... do something
   }
}

as it declines caching. in addition techniques as OpenMP or TBB are preferable. But also parallizing via Streaming SIMD Extensions (SSE) is could improve your code by factor 8 for each core, if your are able to compute with 8bit values.

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3  
Having linear access to memory isn't the big deal. Having linear access to ~80 Million Petabytes is going to prove more of a challenge... – sehe Feb 12 '13 at 14:49

OpenMP is one of the easiest options. We can just have some preprocessors to parallelize for loops. Here is a simple example of doing dot product using OpenMP

double Dot( int n, double x[], double y[] )
{
  int i;
  double dot_product = 0.0;

# pragma omp parallel \
  shared ( n, x, y ) \
  private ( i )

# pragma omp for reduction ( + : dot_product )

  for ( i = 0; i < n; i++ )
  {
    dot_product = dot_product + x[i] * y[i];
  }

  return dot_product;
}
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