Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am using Intel C Compiler for I-32A architecture. When I compile my C program with the following options:

icl mytest.c /openmp /QxHost /fp:fast /fast

The test run takes 3.3s. Now I tried to use PGO, so I compiled with:

icl mytest.c /openmp /QxHost /fp:fast /fast /Qprof-gen

I then run the executable with my sample input 2-3 times and compile again with:

icl mytest.c /openmp /QxHost /fp:fast /fast /Qprof-use

Hoping it will take into account collected information. It in fact tells me it's using the .dyn files but resulting executable is slower (3.85s) than without Qprof-use and this is on exactly the same data the runs were performed (should be perfect for PGO). I tried setting openmp threads to one, thinking it might mess with .dyn output but the result is the same - it's slower than simple compilation.

My question is: is it even theoretically possible or I am messing up PGO process somehow with the compiler options ?

share|improve this question
    
/Qpprof-use? Is the second p supposed to be there? –  CAFxX Jul 21 '12 at 20:30
    
just a typo; typing was faster than copy-pasting from the console :) –  Piotr Lopusiewicz Jul 21 '12 at 21:21

1 Answer 1

A 3.3-second floating-point application isn't going to see benefit from profile-guided optimization. From my guess, you're doing some sort of raw data crunching, which is better suited to hand-coded assembly if you need raw FLOPs than it is to PGO.

PGO will not tell the compiler how to optimize your inner loop to remove branch delays and keep the pipeline full. It may tell it if your loop is likely to run only 5,000 times or if your floats satisfy some criteria.

It is used with data that is statistically representative of other data you want it to run on. In other words you use it with data on a program that you want to be able to run other data with at a good clip. It doesn't necessarily optimize for the program at hand and, as you said, may even slow it down a bit for a possible net gain.

It really depends on your program but an OpenMP FP app is not what PGO is for. Like everything else it isn't a "magic bullet."

share|improve this answer
1  
Thanks this is helpful. I am still surprised it gives worse result for EXACT SAME data the profile runs were run on. Is there some explanation for this ? –  Piotr Lopusiewicz Jul 21 '12 at 16:34
1  
@PiotrLopusiewicz Yes. Like I said it may determine your loop will usually terminate after 5,000 iterations. If it does that, it will add code to check for termination conditions around 5,000 iterations. It will basically add heuristics that will speed up the average predicted case, not necessarily the case you are definitely running, like how qsort performance is amortized. The loop thing is just a trivial example, by the way. –  std''OrgnlDave Jul 21 '12 at 16:43

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.