I'm experimenting with the Intel MKL library for performing Matrix multiplication using the Boost::uBLAS interface they provide (including mkl_boost_ublas_matrix_prod.hpp). My data are just integers so I tried changing my matrix template type to int and performance went way down, mostly it seems due to the code using only a single CPU core instead of the 12 I have available. I couldn't find anything in the MKL docs to explain why integers weren't using the OpenMP multithreading capabilities of MKL (I'm guessing they weren't using MKL at all?).

Furthermore, I'm seeing a 50% performance hit with doubles when compared to floats.

QUESTIONS:

- Why the disparity between floats and doubles?
- Why can't I use integers?

Here are my results from the code below:

```
matrix<float>(10000x10000): 13 seconds (12 threads used)
matrix<double>(10000x10000): 26 seconds (12 threads used)
matrix<int>(10000x10000): >1000 seconds (1 thread used, stopped early)
matrix<float>(25000x25000): 187 seconds (12 threads used)
matrix<double>(25000x25000): 401 seconds (12 threads used)
```

Code Used (replace both matrix< type > lines as required):

```
#include <boost/numeric/ublas/matrix.hpp>
#include <mkl_boost_ublas_matrix_prod.hpp>
using namespace boost::numeric::ublas;
void benchmark() {
int size = 10000;
matrix<float> m(size, size);
for (int i = 0; i < size; ++i) {
for (int j = 0; j < size; ++j) {
m(i,j) = 2*i-j;
}
}
matrix<float> r(size, size);
r = prod(m,m);
}
int main(int argc, char *argv[]) {
benchmark();
return 0;
}
```

Compiled with:

```
g++ Flags: -std=c++0x -O3 -DNDEBUG -DMKL_ILP64 -m64 -msse4.2 -march=native -mtune=native
ld Flags: -lmkl_intel_ilp64 -lmkl_gnu_thread -lmkl_core -fopenmp -lpthread -lm
```

Processor:

```
Intel Xeon E7530 with 6 Cores (x2) with HT.
```

The MKL doesn't use hyperthreads as they say it wouldn't help with anything so I have 12 threads available, not 24.