I was experimenting with different integer types in Visual Studio project in Windows using a simple exchange sort algorithm below. The processor is Intel. The code was compiled in Release x64. The optimization setting is "Maximize Speed (/O2)". The command line corresponding to the compilation settings is

```
/permissive- /GS /GL /W3 /Gy /Zc:wchar_t /Zi /Gm- /O2 /sdl /Fd"x64\Release\vc141.pdb" /Zc:inline /fp:precise /D "NDEBUG" /D "_CONSOLE" /D "_UNICODE" /D "UNICODE" /errorReport:prompt /WX- /Zc:forScope /Gd /Oi /MD /Fa"x64\Release\" /EHsc /nologo /Fo"x64\Release\" /Fp"x64\Release\SpeedTestForIntegerTypes.pch" /diagnostics:classic
```

The code itself:

```
#include <ctime>
#include <vector>
#include <iostream>
void sort(int N, int A[], int WorkArray[]) // exchange sort
{
int i, j, index, val_min;
for (j = 0; j < N; j++)
{
val_min = 500000;
for (i = j; i < N; i++)
{
if (A[i] < val_min)
{
val_min = A[i];
index = i;
}
}
WorkArray[j] = A[j];
A[j] = val_min;
A[index] = WorkArray[j];
}
}
int main()
{
std::vector<int> A(400000), WorkArray(400000);
for(size_t k = 0; k < 400000; k++)
A[k] = 400000 - (k+1);
clock_t begin = clock();
sort(400000, &A[0], &WorkArray[0]);
clock_t end = clock();
double sortTime = double(end - begin) / CLOCKS_PER_SEC;
std::cout << "Sort time: " << sortTime << std::endl;
return 0;
}
```

The `WorkArray`

is only needed to save the vector before sorting.
The point is, this sorting took me 22.3 seconds to complete. The interesting part is that if I change type `int`

to `size_t`

for arrays `A`

, `WorkArray`

(both in `std::vector`

and in the argument list of function `sort`

), as well as for `val_min`

, the time increases to 67.4! This is **threefold** slower! The new code is below:

```
#include <ctime>
#include <vector>
#include <iostream>
void sort(int N, size_t A[], size_t WorkArray[]) // exchange sort
{
int i, j, index;
size_t val_min;
for (j = 0; j < N; j++)
{
val_min = 500000U;
for (i = j; i < N; i++)
{
if (A[i] < val_min)
{
val_min = A[i];
index = i;
}
}
WorkArray[j] = A[j];
A[j] = val_min;
A[index] = WorkArray[j];
}
}
int main()
{
std::vector<size_t> A(400000), WorkArray(400000);
for(size_t k = 0; k < 400000; k++)
A[k] = 400000 - (k+1);
clock_t begin = clock();
sort(400000, &A[0], &WorkArray[0]);
clock_t end = clock();
double sortTime = double(end - begin) / CLOCKS_PER_SEC;
std::cout << "Sort time: " << sortTime << std::endl;
return 0;
}
```

Note that I still keep type `int`

for function local variables `i`

, `j`

, `index`

, `N`

, and so the only two arithmetical operations that are `i++`

and `j++`

should take the same amount of time to perform in both cases. Therefore, this slowdown has to do with other reasons. Is it related to the memory alignment issue or register sizes or something else?

But **the most outrageous** part was when I changed `int`

to `unsigned int`

. Both `unsigned int`

and `int`

occupy the same number of bytes which is 4 (`sizeof`

showed that). But the runtime for `unsigned int`

was 65.8 s! While the first outcome was somewhat ok to accept, the second one totally confuses me! Why is there such a significant difference in time it takes to run such a simple algorithm that does not even involve sign checks?

Thanks to all addressing both of these questions. Where can I start reading more about these hardware-level optimization peculiarities? I don't care about the sorting algorithm itself, it's here for illustration of the problem only.

UPDATE: once again, I stress the fact that **I use ints for array indices in all three cases**.

`main.cpp:23:16: warning: 'index' may be used uninitialized in this function [-Wmaybe-uninitialized] A[index] = WorkArray[j];`

Unfortunately, I don't have MSVC in front of me to test this atm. – Mysticial Mar 16 '18 at 17:38`size_t`

but not`int`

. But`int`

vs.`unsigned`

are almost identical. – Mysticial Mar 16 '18 at 18:04