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I have a loop that iterates from 1 to N and takes a modular sum over time. However N is very large and so I am wondering if there is a way to modify it by taking advantage of multithread.

To give sample program

for (long long i = 1; i < N; ++i)
   total = (total + f(i)) % modulus;

f(i) in my case isn't an actual function, but a long expression that would take up room here. Putting it there to illustrate purpose.

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If you really wan to speed it up try using cuda also can I ask what the purpose of this loop is –  aaronman Jun 14 '13 at 16:22
3  
A really simple optimization - save the % modulus for the end. Arithmetically, there's no reason to do it inside the loop, unless you're doing it to help prevent overflow. (Thanks to @Xaqq for catching my previous too-broad generalization.) –  Scott Mermelstein Jun 14 '13 at 16:27
    
@ScottMermelstein Maybe it would overflow without it. But yeah, if you can save it for end, do it. –  Xaqq Jun 14 '13 at 16:28
    
Would overflow, modulus required. –  MrP Jun 14 '13 at 16:34
    
yeah, give each thread its own total, have them each sum up unique ranges, then when they're all finished and joined, add the totals. –  Joe Runde Jun 14 '13 at 16:38

5 Answers 5

up vote 7 down vote accepted

Yes, try this:

double total=0;
#pragma omp parallel for reduction(+:total)
for (long long i = 1; i < N; ++i)
  total = (total + f(i)) % modulus;

Compile with:

g++ -fopenmp your_program.c

It's that simple! No headers are required. The #pragma line automatically spins up a couple of threads, divides the iterations of the loop evenly, and then recombines everything after the loop. Note though, that you must know the number of iterations beforehand.

This code uses OpenMP, which provides easy-to-use parallelism that's quite suitable to your case. OpenMP is even built-in to the GCC and MSVC compilers.

This page shows some of the other reduction operations that are possible.

If you need nested for loops, you can just write

double total=0;
#pragma omp parallel for reduction(+:total)
for (long long i = 1; i < N; ++i)
for (long long j = 1; j < N; ++j)
  total = (total + f(i)*j) % modulus;

And the outer loop will be parallelised, with each thread running its own copy of the inner loop.

But you could also use the collapse directive:

#pragma omp parallel for reduction(+:total) collapse(2)

and then the iterations of both loops will be automagically divied up.

If each thread needs its own copy of a variable defined prior to the loop, use the private command:

double total=0, cheese=4;
#pragma omp parallel for reduction(+:total) private(cheese)
for (long long i = 1; i < N; ++i)
  total = (total + f(i)) % modulus;

Note that you don't need to use private(total) because this is implied by reduction.

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How does this work? What if the sum is over a double loop, or if more than one variable is involved other than total? –  MrP Jun 14 '13 at 16:44
    
If the sum is over a double loop, the iterations of the outer loops will be divided between the threads and each thread will run its own copies of the inner loop. –  Richard Jun 14 '13 at 16:47
    
You can have as many reduction clauses as you would like, though you should be make careful note of the private and shared commands, which isolate variables to particular threads. –  Richard Jun 14 '13 at 16:48
    
So let's say I had a triple loop, i=1 to A, j=1 to B, k=1 to C. Would using the same pragma statement you have listed split up the loop by the i=1 to A loop? –  MrP Jun 14 '13 at 16:53
1  
Note you'll need one more modulus after this loop total %= modulus, the reduction clause will only add the total of each thread for you which in general will not be between 0 and modulus-1 –  GuyGreer Jun 14 '13 at 17:04

As presumably the f(i) are independent but take the same time roughly to run, you could create yourself 4 threads, and get each to sum up 1/4 of the total, then return the sum as a value, and join each one. This isn't a very flexible method, especially if the times the f(i) times can be random.

You might also want to consider a thread pool, and make each thread calculate f(i) then get the next i to sum.

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This is not a valid answer as it is a rephrasing of what I am asking for –  MrP Jun 14 '13 at 16:36
2  
no, it is 2 methods of doing what you're asking for. –  Tom Tanner Jun 14 '13 at 16:37

you may can use threading building blocks and lambda-function if u are using c++11. than your loop would looks like:

tbb::parallel_for(1, N, [=](long long i) {
  total = (total + f(i)) % modulus;
});

and whitout overflow checks:

tbb::parallel_for(1, N, [=](long long i) {
  total = (total + f(i));
});
total %= modulus;
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Try openMP's parallel for with the reduction clause for your total http://bisqwit.iki.fi/story/howto/openmp/#ReductionClause

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If f(long long int) is a function that solely relies on its input and no global state and the abelian properties of addition hold, you can gain a significant advantage like this:

for(long long int i = 0, j = 1; i < N; i += 2, j += 2)
{
    total1 = (total1 + f(i)) % modulus;
    total2 = (total2 + f(j)) % modulus;
}

total = (total1 + total2) % modulus;

Breaking this out like that should help by allowing the compiler to improve code generation and the CPU to use more resources (the two operations can be handled in parallel) and pump more data out and reduce stalls. [I am assuming an x86 architecture here]

Of course, without knowing what f really looks like, it's hard to be sure if this is possible or if it will really help or make a measurable difference.

There may be other similar tricks that you can exploit special knowledge of your input and your platform - for example, SSE instructions could allow you to do even more. Platform-specific functionality might also be useful. For example, a modulo operation may not be required at all and your compiler may provide a special intrinsic function to perform addition modulo N.

I must ask, have you profiled your code and found this to be a hotspot?

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I don't know how to profile code properly, but it is a hotspot –  MrP Jun 14 '13 at 16:50
    
I think you mean i+=2, j+=2. Also, notice that OP loop starts at 1, though it's a minor point (nitpick some would say) –  didierc Jun 14 '13 at 17:20
    
Oops - you are of course correct; silly typo. –  Nik Bougalis Jun 14 '13 at 18:24

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