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.

As I wrote in my previous topic: Benchmarking code - am I doing it right? I need to find a way to get benchmark statistics, like average, mean, standard deviation, etc. How can I do this using those methods I posted? Notice that I use a solution to benchmark code with time interval, not by calling a function many times. Any ideas?

I came up with just one, dont know if its correct (pseudocode):

buffsize = 1024;
buffer [buffsize];
totalcycles = 0

// arrays
walltimeresults = []
cputimeresults = []

// benchmarking
for i in (0, iterations):
   start = walltime();
   fun2measure(args, buffer);
   end = walltime();
   walltimeresults[i] = end - start;

   start = cputime();
   fun2measure(args, buffer);
   end = cputime();
   cputimeresults[i] = end - start;

   c1 = cyclecount();
   fun2measure(args, buffer);
   c2 = cyclecount();

   cyclesperbyte = c2-c1/(buffsize);
   totalcycles += cyclesperbyte;

for i in range (0, iterations) : sum += walltimeresults[i];
avg_wall_time = sum / iterations;

sum = 0;

for i in range (0, iterations) : sum += cputimeresults[i];
avg_cpu_time = sum / iterations;

avg_cycles = totalcycles / iterations;

Is it correct? How about mean, standard deviation, etc?

share|improve this question
add comment

1 Answer

Your average looks OK.

Mean (i.e. average) is

mean = 1/N * sum( x[i] )

Standard deviation is square root of variance:

sigma = sqrt( 1/N * sum( (x[i]-mean)^2 )
share|improve this answer
thanks! Any other advices about the code? What can I improve, change here, etc? –  nullpointer Jul 30 '13 at 20:34
@nullpointer: I would pop up a level and ask what is your overall purpose? If it's got anything to do with finding the fastest algorithm, I would be less concerned with measurement. I would be more concerned with getting penetrating insight into how to make the programs faster. If that's the goal, you might find this helpful. You'd be amazed how much fat can be trimmed from supposedly optimal programs. –  Mike Dunlavey Jul 30 '13 at 20:51
thank you once again. I will read this topic but my purpose isn't to find the fastest algorithm but to measure it's performace, that's all. I know that a single test (one function call) is meaningless in benchmarks. Im just wondering if I do this right, if I can get with my measurements 'usable' results. –  nullpointer Jul 30 '13 at 21:15
Also, I would like to ask you, what should I do when a function call is too 'short' in time that a single call shows 0.00000 seconds in each iteration? Can I do this: pastie.org/private/r2oxfjfwohupg1ypcjxgnw, is it correct? –  nullpointer Jul 31 '13 at 17:24
@nullpointer: I like stack-sampling, but even gprof should tell you the inclusive time. Essentially, if an overall program takes, say, 100 seconds, and in that time function foo appears on, say, 10% of stack samples, then the total inclusive time it takes is 10% of 100, or 10 seconds. If you divide that by the number of times it is called, that gives you the time per call. If it runs for too short a time to get samples, just wrap a loop of like 1000 iterations around it. Various profilers can take stack samples automatically, like oprofile and Zoom. –  Mike Dunlavey Jul 31 '13 at 17:54
add comment

Your Answer


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.