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dlib/examples/parallel_for_ex.cpp

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// The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt
/*
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This is an example illustrating the use of the parallel for loop tools from the dlib
C++ Library.
Normally, a for loop executes the body of the loop in a serial manner. This means
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that, for example, if it takes 1 second to execute the body of the loop and the body
needs to execute 10 times then it will take 10 seconds to execute the entire loop.
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However, on modern multi-core computers we have the opportunity to speed this up by
executing multiple steps of a for loop in parallel. This example program will walk you
though a few examples showing how to do just that.
*/
#include <dlib/threads.h>
#include <dlib/misc_api.h> // for dlib::sleep
#include <vector>
#include <iostream>
using namespace dlib;
using namespace std;
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// ----------------------------------------------------------------------------------------
void print(const std::vector<int>& vect)
{
for (unsigned long i = 0; i < vect.size(); ++i)
{
cout << vect[i] << endl;
}
cout << "\n**************************************\n";
}
// ----------------------------------------------------------------------------------------
void example_using_regular_non_parallel_loops();
void example_using_lambda_functions();
void example_without_using_lambda_functions();
// ----------------------------------------------------------------------------------------
int main()
{
// We have 3 examples, each contained in a separate function. Each example performs
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// exactly the same computation, however, the second two examples do so using parallel
// for loops. So the first example is here to show you what we are doing in terms of
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// classical non-parallel for loops. Then the next two examples will illustrate two
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// ways to parallelize for loops in C++. The first, and simplest way, uses C++11
// lambda functions. However, since lambda functions are a relatively recent addition
// to C++ we also show how to write parallel for loops without using lambda functions.
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// This way, users who don't yet have access to a current C++ compiler can learn to
// write parallel for loops as well.
example_using_regular_non_parallel_loops();
example_using_lambda_functions();
example_without_using_lambda_functions();
}
// ----------------------------------------------------------------------------------------
void example_using_regular_non_parallel_loops()
{
cout << "\nExample using regular non-parallel for loops\n" << endl;
std::vector<int> vect;
// put 10 elements into vect which are all equal to -1
vect.assign(10, -1);
// Now set each element equal to its index value. We put a sleep call in here so that
// when we run the same thing with a parallel for loop later on you will be able to
// observe the speedup.
for (unsigned long i = 0; i < vect.size(); ++i)
{
vect[i] = i;
dlib::sleep(1000); // sleep for 1 second
}
print(vect);
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// Assign only part of the elements in vect.
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vect.assign(10, -1);
for (unsigned long i = 1; i < 5; ++i)
{
vect[i] = i;
dlib::sleep(1000);
}
print(vect);
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// Sum all element sin vect.
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int sum = 0;
vect.assign(10, 2);
for (unsigned long i = 0; i < vect.size(); ++i)
{
dlib::sleep(1000);
sum += vect[i];
}
cout << "sum: "<< sum << endl;
}
// ----------------------------------------------------------------------------------------
void example_using_lambda_functions()
{
// Change the next line to #if 1 if your compiler supports the new C++11 lambda functions.
#if 0
cout << "\nExample using parallel for loops\n" << endl;
// This variable should be set to the number of processing cores on your computer since
// it determines the amount of parallelism in the for loop.
const unsigned long num_threads = 10;
std::vector<int> vect;
vect.assign(10, -1);
parallel_for(num_threads, 0, vect.size(), [&](long i){
// The i variable is the loop counter as in a normal for loop. So we simply need
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// to place the body of the for loop right here and we get the same behavior. The
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// range for the for loop is determined by the 2nd and 3rd arguments to
// parallel_for().
vect[i] = i;
dlib::sleep(1000);
});
print(vect);
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// Assign only part of the elements in vect.
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vect.assign(10, -1);
parallel_for(num_threads, 1, 5, [&](long i){
vect[i] = i;
dlib::sleep(1000);
});
print(vect);
// Note that things become a little more complex if the loop bodies are not totally
// independent. In the first two cases each iteration of the loop touched different
// memory locations, so we didn't need to use any kind of thread synchronization.
// However, in the summing loop we need to add some synchronization to protect the sum
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// variable. This is easily accomplished by creating a mutex and locking it before
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// adding to sum. More generally, you must ensure that the bodies of your parallel for
// loops are thread safe using whatever means is appropriate for your code. Since a
// parallel for loop is implemented using threads, all the usual techniques for
// ensuring thread safety can be used.
int sum = 0;
mutex m;
vect.assign(10, 2);
parallel_for(num_threads, 0, vect.size(), [&](long i){
// The sleep statements still execute in parallel.
dlib::sleep(1000);
// Lock the m mutex. The auto_mutex will automatically unlock at the closing }.
// This will ensure only one thread can execute the sum += vect[i] statement at
// a time.
auto_mutex lock(m);
sum += vect[i];
});
cout << "sum: "<< sum << endl;
#endif
}
// ----------------------------------------------------------------------------------------
// ----------------------------------------------------------------------------------------
// The rest of this example program shows how to create parallel for loops without
// using lambda functions. So the first thing we do is explicitly create function
// objects equivalent to the lambda functions we used. Then we call parallel_for()
// as done above.
// ----------------------------------------------------------------------------------------
// ----------------------------------------------------------------------------------------
struct function_object
{
function_object( std::vector<int>& vect_ ) : vect(vect_) {}
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std::vector<int>& vect;
void operator() (long i) const
{
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vect[i] = i;
dlib::sleep(1000);
}
};
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struct function_object_sum
{
function_object_sum( const std::vector<int>& vect_, int& sum_ ) : vect(vect_), sum(sum_) {}
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const std::vector<int>& vect;
int& sum;
mutex m;
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void operator() (long i) const
{
dlib::sleep(1000);
auto_mutex lock(m);
sum += vect[i];
}
};
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void example_without_using_lambda_functions()
{
// Again, note that this function does exactly the same thing as
// example_using_regular_non_parallel_loops() and example_using_lambda_functions().
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cout << "\nExample using parallel for loops and no lambda functions\n" << endl;
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const unsigned long num_threads = 10;
std::vector<int> vect;
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vect.assign(10, -1);
parallel_for(num_threads, 0, vect.size(), function_object(vect));
print(vect);
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vect.assign(10, -1);
parallel_for(num_threads, 1, 5, function_object(vect));
print(vect);
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int sum = 0;
vect.assign(10, 2);
function_object_sum funct(vect, sum);
parallel_for(num_threads, 0, vect.size(), funct);
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cout << "sum: " << sum << endl;
}
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// ----------------------------------------------------------------------------------------