2

I'm struggling to determine why my Strassen implementation is so slow. It allocates memory with each iteration, but I'm freeing it all as appropriate.

int** multiply(int** a, int** b, int size)
{
int row,col,i,j;

if(size == 1)
{
    int** c = allocate(size);
    c[0][0] = (a[0][0] * b[0][0])%2;
    return c;
}

if(size <= 2)
{
    int a11,a12,a21,a22,b11,b12,b21,b22;    
    int** c = allocate(size);
    a11 = a[0][0];
    a12 = a[0][1];
    a21 = a[1][0];
    a22 = a[1][1];
    b11 = b[0][0];
    b12 = b[0][1];
    b21 = b[1][0];
    b22 = b[1][1];

    c[0][0] = (a11*b11 + a12*b21)%2;
        c[0][1] = (a11*b12 + a12*b22)%2;
        c[1][0] = (a21*b11 + a22*b21)%2;
    c[1][1] = (a21*b12 + a22*b22)%2;
        return c;
}

int** c = allocate(size);
size = size/2;

int** A11 = allocate(size);
int** A12 = allocate(size);
int** A21 = allocate(size);
int** A22 = allocate(size);
int** B11 = allocate(size);
int** B12 = allocate(size);
int** B21 = allocate(size);
int** B22 = allocate(size);

for(i=0;i<size;i++)
{
    for(j=0;j<size;j++)
    {
        A11[i][j] = a[i][j];    
        A12[i][j] = a[i][j+size];
        A21[i][j] = a[i+size][j];
        A22[i][j] = a[i + size][j + size];
        B11[i][j] = b[i][j];
        B12[i][j] = b[i][j + size];
        B21[i][j] = b[i + size][j];
        B22[i][j] = b[i + size][j + size];
    }
}

int** S1 = subtract(B12,B22,size);
int** S2 = add(A11,A12, size);
int** S3 = add(A21,A22, size);
int** S4 = subtract(B21,B11, size);
int** S5 = add(A11,A22, size);
int** S6 = add(B11,B22, size);
int** S7 = subtract(A12,A22, size);
int** S8 = add(B21,B22, size);
int** S9 = subtract(A11,A21, size);
int** S10 = add(B11,B12, size);

int** P1 = multiply(A11, S1, size);
int** P2 = multiply(S2, B22, size);
int** P3 = multiply(S3, B11, size);
int** P4 = multiply(A22, S4, size);
int** P5 = multiply(S5, S6, size);
int** P6 = multiply(S7, S8, size);
int** P7 = multiply(S9, S10,size);

int** c11 = subtract(add(P5,P4,size), add(P2,P6,size), size);
int** c12 = add(P1,P2,size);
int** c21 = add(P3,P4,size);
int** c22 = subtract(add(P5,P1,size), subtract(P3,P7,size), size);

int** temp = add(P5,P4,size);
int** temp2 = add(P2,P6, size);

for(i=0; i< size; i++)
{
    for(j=0; j< size; j++)
    {
        c[i][j] = abs(c11[i][j] % 2);           
        c[i][j+size] = abs(c12[i][j] % 2);
        c[i+size][j] = abs(c21[i][j] % 2);
        c[i+size][j+size] = abs(c22[i][j] % 2);
    }
}

deallocate(A11, size);
deallocate(A12, size);
deallocate(A21, size);
deallocate(A22, size);
deallocate(B11, size);
deallocate(B12, size);
deallocate(B21, size);
deallocate(B22, size);
deallocate(c11, size);
deallocate(c12, size);
deallocate(c21, size);
deallocate(c22, size);
deallocate(P1, size);
deallocate(P2, size);
deallocate(P3, size);
deallocate(P4, size);
deallocate(P5, size);
deallocate(P6, size);
deallocate(P7, size);
deallocate(S1, size);
deallocate(S2, size);
deallocate(S3, size);
deallocate(S4, size);
deallocate(S5, size);
deallocate(S6, size);
deallocate(S7, size);
deallocate(S8, size);
deallocate(S9, size);
deallocate(S10, size);
deallocate(temp, size);
deallocate(temp2, size);
return c;
}
3
  • 2
    ... don't allocate so much... Apr 29, 2013 at 17:31
  • Have you run a full profile on your code to determine if memory allocation is really the bottleneck? For you know, the %2's could be the culprit due to poor compiler optimization or something else silly. Apr 29, 2013 at 18:14
  • Also, the above code is deallocating a lot more memory that it is allocating. Is your code sample showing the complete logic here? Apr 29, 2013 at 18:17

1 Answer 1

6

Since all your allocations are a fixed size, allocate a single, large block of memory sufficient for all your buffers and then use appropriate offsets into that buffer for each variable. At the end, you only deallocate a single buffer.

I don't know for sure that all the memory allocation/deallocation is what is causing this function to run slow but its a good bet. You might want to profile it to be sure.

2
  • In other words, use a "unit allocator" to give you constant time allocation and freeing. Apr 29, 2013 at 18:12
  • At the lowest levels, with the smallest sizes, there are many invocations of multiply(), each of which doesn't do much arithmetic; this may make allocation/deallocation overhead much more important by comparison. Worse, that overhead is unnecessary -- since your implementation is purely sequential, you only need one set of buffers for any given size level... Apr 29, 2013 at 23:24

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