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# Most efficient way to calculate the exponential of each element of a matrix

I'm migrating from Matlab to C + GSL and I would like to know what's the most efficient way to calculate the matrix B for which:

``````B[i][j] = exp(A[i][j])
``````

where i in [0, Ny] and j in [0, Nx].

Notice that this is different from matrix exponential:

``````B = exp(A)
``````

which can be accomplished with some unstable/unsupported code in GSL (linalg.h).

I've just found the brute force solution (couple of 'for' loops), but is there any smarter way to do it?

EDIT

## Results from the solution post of Drew Hall

All the results are from a 1024x1024 `for(for)` loop in which in each iteration two `double` values (a complex number) are assigned. The time is the averaged time over 100 executions.

• Results when taking into account the {Row,Column}-Major mode to store the matrix:
• 226.56 ms when looping over the row in the inner loop in Row-Major mode (case 1).
• 223.22 ms when looping over the column in the inner loop in Row-Major mode (case 2).
• 224.60 ms when using the `gsl_matrix_complex_set` function provided by GSL (case 3).

Source code for case 1:

``````for(i=0; i<Nx; i++)
{
for(j=0; j<Ny; j++)
{
/* Operations to obtain c_value (including exponentiation) */
matrix[2*(i*s_tda + j)] = GSL_REAL(c_value);
matrix[2*(i*s_tda + j)+1] = GSL_IMAG(c_value);
}
}
``````

Source code for case 2:

``````for(i=0; i<Nx; i++)
{
for(j=0; j<Ny; j++)
{
/* Operations to obtain c_value (including exponentiation) */
matrix->data[2*(j*s_tda + i)] = GSL_REAL(c_value);
matrix->data[2*(j*s_tda + i)+1] = GSL_IMAG(c_value);
}
}
``````

Source code for case 3:

``````for(i=0; i<Nx; i++)
{
for(j=0; j<Ny; j++)
{
/* Operations to obtain c_value (including exponentiation) */
gsl_matrix_complex_set(matrix, i, j, c_value);
}
}
``````
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I think you're only thinking it's inefficient/dumb because you're used to MATLAB, where using nested fors is a recipe for disaster. But MATLAB would have done that under the hood, it's just that if you write it out, it sucks. But C doesn't work that way, you always write it out and it'll be just as fast/faster than the MATLAB... – Scott Stafford Jul 24 '10 at 3:30
Hmmm...these performance numbers are indistinguishable. I'm surprised--can we see the code you ran in each case? I wonder if your compiler has noticed that the values are independent and automatically reordered & unrolled the loops to maximize performance. Seeing the generated assembly in each case would tell us that. – Drew Hall Jul 25 '10 at 11:44
You're using a constant value on the RHS of the assignment in each case (what happened to exp()?)--I suspect the compiler has hoisted that out of the loop and replaced the loop with some sort of memset()-like operation. Try to make the assignment dependent on the data--even just something like matrix[2*(is_tda + j)] = sin(matrix[2*(is_tda + j)]) would probably defeat that optimization and show cache effects. – Drew Hall Jul 25 '10 at 21:51
@Drew: `c_value` is not a constant. I just shortened the code to avoid it being too long. The actual code that I use is hosted in google code in the project gico-lib (which is kind of messy) around line 45 of signal.c. I'll try to fake the compiler (which is gcc 4.2.1 for Darwin (MacOsX)) with that trick and post the results later. – Alejandro Cámara Jul 25 '10 at 22:43
Involving in the assignment the matrix element (A[i] = exp(A[i]) equivalent) the difference between case 1 and 2 is similar, around 5 ms. – Alejandro Cámara Jul 25 '10 at 22:55

There's no way to avoid iterating over all the elements and calling `exp()` or equivalent on each one. But there are faster and slower ways to iterate.

In particular, your goal should be to mimimize cache misses. Find out if your data is stored in row-major or column-major order, and be sure to arrange your loops such that the inner loop iterates over elements stored contiguously in memory, and the outer loop takes the big stride to the next row (if row major) or column (if column major). Although this seems trivial, it can make a HUGE difference in performance (depending on the size of your matrix).

Once you've handled the cache, your next goal is to remove loop overhead. The first step (if your matrix API supports it) is to go from nested loops (M & N bounds) to a single loop iterating over the underlying data (M*N bound). You'll need to get a raw pointer to the underlying memory block (that is, a double* rather than a double**) to do this.

Finally, throw in some loop unrolling (that is, do 8 or 16 elements for each iteration of the loop) to further reduce the loop overhead, and that's probably about as quick as you can make it. You'll probably need a final switch statement with fall-through to clean up the remainder elements (for when your array size % block size != 0).

-
Wow, that was a change in the strategy that I didn't think of before. Thanks, I'll write it down and try to apply it to the many nested fors loops that I do. – Alejandro Cámara Jul 24 '10 at 10:25
Sure. When you've done so, add another comment here (or edit your question) and let us know if you actually got any performance improvement! – Drew Hall Jul 24 '10 at 11:07
How would he determine if the matrix is stored in a row-major or column-order way? I'd love to be able to use this optimization myself. Also, Drew Hall = `for` loop superhero – Rafe Kettler Jul 24 '10 at 14:14
@Rafe: Generally code that has a C heritage is row-major, and code that has a Fortran heritage (or interfaces with Fortran libraries such as LAPACK) is column major. Look in the documentation for the matrix library you're using, or if all else fails, try it both ways with a really big matrix and time it--it should be pretty obvious. – Drew Hall Jul 24 '10 at 20:16
I edited the question to include some results I've obtained. I'll try the other optimizations later. – Alejandro Cámara Jul 25 '10 at 11:17

No, unless there's some strange mathematical quirk I haven't heard of, you pretty much just have to loop through the elements with two for loops.

-
Any magical mathematician around? It really looks unefficient to make the double for loop. – Alejandro Cámara Jul 23 '10 at 22:33
Alejandro: If you want `N_x * N_y` independently calculated exponentials, then `A` is not a matrix anymore but just a bunch of numbers. :-) – u0b34a0f6ae Jul 23 '10 at 22:40
If you want a mathemagician, I'd go to a math forum or something of a similar nature (like www.askdrmath.com) and try their knowledge. It can't hurt to try! – Rafe Kettler Jul 23 '10 at 22:44
kaize.se: You're right, doesn't smell like improving the double for loop :-( BTW, I sent the question to Dr. Math as Rafe suggested just in case some magical mathematician is online. – Alejandro Cámara Jul 23 '10 at 23:06

If you just want to apply `exp` to an array of numbers, there's really no shortcut. You gotta call it (Nx * Ny) times. If some of the matrix elements are simple, like 0, or there are repeated elements, some memoization could help.

However, if what you really want is a matrix exponential (which is very useful), the algorithm we rely on is DGPADM. It's in Fortran, but you can use f2c to convert it to C. Here's the paper on it.

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Since the contents of the loop haven't been shown, the bit that calculates the c_value we don't know if the performance of the code is limited by memory bandwidth or limited by CPU. The only way to know for sure is to use a profiler, and a sophisticated one at that. It needs to be able to measure memory latency, i.e. the amount of time the CPU has been idle waiting for data to arrive from RAM.

If you are limited by memory bandwidth, there's not a lot you can do once you're accessing memory sequentially. The CPU and memory work best when data is fetched sequentially. Random accesses hit the throughput as data is more likely to have to be fetched into cache from RAM. You could always try getting faster RAM.

If you're limited by CPU then there are a few more options available to you. Using SIMD is one option, as is hand coding the floating point code (C/C++ compiler aren't great at FPU code for many reasons). If this were me, and the code in the inner loop allows for it, I'd have two pointers into the array, one at the start and a second 4/5ths of the way through it. Each iteration, a SIMD operation would be performed using the first pointer and scalar FPU operations using the second pointer so that each iteration of the loop does five values. Then, I'd interleave the SIMD instructions with the FPU instructions to mitigate latency costs. This shouldn't affect your caches since (at least on the Pentium) the MMU can stream up to four data streams simultaneously (i.e. prefetch data for you without any prompting or special instructions).

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