# How to optimize the layers of pointer indirection

I am trying to optimize this sort of things in a heavy computing application:

say I have a

`````` double d[500][500][500][500];
``````

and the following is quite costly at least from compiler perspective

``````double d[x][y][j][k]
``````

I want to tell compiler is that it's contiguous memory, to facilitate computing the offset.

In my example,

I have something like this:

``````double n=0;
for (int i=0; i < someNumber; i++)
{
n+=d[x][i][j][k] /*(some other math calculations)*/;
}
``````

So I tried to optimize it by putting it in a separate function

``````void func( double*** const restrict dMatrix )
{
/* and do some calculations herel*/

}
``````

didn't help much :(

Any suggestions on optimizing it?

}

Edit

I cannot rewrite the code to make the array one-dimensional. I have to work with this multidimensional beast :(

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Your array is already 1-dimensional. –  Georg Schölly Sep 10 '09 at 12:38
It's 4 dimensional but contiguous. –  MSalters Sep 10 '09 at 12:43
<quote>I want to tell compiler is that it's contiguous memory,</quote> It already knows. –  Loki Astari Sep 10 '09 at 14:10
<quote>quite costly at least from compiler perspective</quote> Unlikely –  Loki Astari Sep 10 '09 at 14:11
Unless you have 512GB of RAM, your computation will be bound to so much swapping that any micro-optimazation will be pointless. The only thing you can do is reorder the memory accesses so that they're contiguous (in the example you posted, this means iterating over the last index - d[][][][i] instead of d[][i][][]. Besides, as the others have already pointed out, there's no pointer indirection going on here... –  CAFxX May 30 '12 at 8:17

I suspect that the problem is not the offset calculation but the actual access to memory. When you declare a 4-dimensional array and access elements with adjacent indices at any level except the last one memory addresses are actually quite far from each other and this leads to lots of cache misses and significant slowdown.

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I agree. Original poster should be able to verify this by comparing performance of looping i over d[x][i][j][k] with performance of looping k. Then read people.redhat.com/drepper/cpumemory.pdf for everything you could possibly need to know about memory & cache. –  timday Sep 10 '09 at 12:34

Note that this is a lot of (around 466 GB, if my math is right) data, and beware of swap and cache access issues. If you're not actually using 500^4 elements, you need to profile your application to see that it's really the "indirection" that is costing you, performance-wise.

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You can still do d[500][500][500][500] and access it your way. It makes no difference. –  Pod Sep 10 '09 at 12:26
Your suggestion is exactly the same as the fake multi-dimensional array of C. –  Georg Schölly Sep 10 '09 at 12:31
Removed the suggestion about explicit 1-dimensionality, since a[2][2] and a[2 * 2] are equivalent. Sorry for the confusion. –  unwind Sep 10 '09 at 12:38

The C compiler certainly knows when the memory is contiguous. You don't have to tell it.

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As mentioned elsewhere, the memory is contiguous anyway, and the slowness comes from cache misses. To cut down on this, you want to ensure (if possible) that you are iterating over adjacent elements for maximum cache coherence rather than making large jumps in memory. In C I believe this means that your most commonly iterated value should be the last dimension of the array, and least commonly iterated should be the first dimension: see the Wikipedia article.

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There are no multi-dimensional arrays in C. All arrays are 1-dimensional, the compiler just computes the correct offset. This means you can't make it faster by calculating the offset yourself. This is a limitation of the C language.

You can probably speed it up by reducing the amount of cache misses. `a[0][?][?][?]` is probably far from `a[1][?][?][?]`.

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What you used to be able to do to speed things up was to use incremental pointers to speed up accessing the array.

So using a simple array.

``````char aString[500];
for (int i=0; i<500; i++)
aString[i] = 0;     // Array access is really a multiply!
``````

becomes

``````char aString[500];
char *aStringPtr;
for (aStringPtr= &aString[0] ; aStringPtr<&aString[0]+500; aStringPtr++)
*aStringPtr = 0;
``````

This runs about twice as fast as the first example.

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Why does it run twice as fast? –  vehomzzz Sep 10 '09 at 17:45
I think it's because in the 2nd example your just incrementing an address in the first your incrementing a value and adding it to an address. –  AnthonyLambert Sep 11 '09 at 9:01
I don't thing that there should be a performance difference when optimization is turned on... –  Thomas Danecker Sep 14 '09 at 15:03

As unwind said, your array is about half a terabyte. You need a disk big enough, and a pagefile big enough. Then, you probably also need an extremely extremely large RAM. Finally, your cache size also matters, so the order you access elements will make a huge difference. Address calculation will be in the noise.

If this is actually a sparse array, you should treat it as such. In fact, organizing it with pointer arrays might be a good way to do that.

As it is, simply loading data into that array, if done in the fastest possible way, might take hours.

BTW, I hope you are on a 64-bit machine. A 32-bit address can only access about 4 GB.

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