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(Before anyone says anything Yes this was homework but i have already turned it in and have gotten it back, i just want to figure this out for the test tomorrow.)

The problem was to calculate the execution times and big O for the code snippet. I can calculate the big O fine, but i dont get how you can determine the execution time. Ok basically what i dont understand is how to calculate the execution time

for(i=0; i < n; i++){
    SomeJavaStatment;
    for(j=0; j < 2 * n; J+= 2){ 
        SomeJavaStatment;
        SomeJavaStatment;
}
}

the correct answer was Big O(n^2) I got that right however I had no idea what the execution time was, and the correct answer for that was 4n^2+5n+2.

I would appreciate if someone could explain how i would go about getting to that answer.

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I fear your prof is using "execution time" in some rather peculiar manner. You'll have to look up the definition for that one yourself, I doubt it's standard terminology.. –  Voo Apr 3 '12 at 21:28
    
I think it's abstracted. Consider n some multiple of seconds, and then you can convert the formula into 'time.' This would, of course, depend on the clock speed of the machine where the code is executing. –  ingyhere Apr 3 '12 at 21:31
    
It's way too abstract, SomeJavaStatement could be much more complex than i++ –  cxyzs7 Apr 3 '12 at 21:33
    
Agreed. To make sense it should define SomeJavaStatement as an operation of O(1). There was probably some definition left out of the question here for brevity's sake. –  ingyhere Apr 3 '12 at 21:36
    
@ingyhere Even then, that has absolutely nothing to do with the execution time (add is a good bit cheaper than mul on most CPUs), but just the number of statements. Ah well –  Voo Apr 3 '12 at 22:12

2 Answers 2

up vote 6 down vote accepted

I don't think, that execution time should be determined that way but:

 //assignment to i takes 1 operation    
 for(i=0; i < n; i++){ // i++ is executed n times, i < n is executed (n+1) times
    SomeJavaStatment; // n times

    //assignment to j takes 1 operation
    for(j=0; j < 2 * n; j+= 2){  // j+=2 is executed n*n times, j < 2*n is executed n*(n+1) times
        SomeJavaStatment; // n * n times
        SomeJavaStatment; // n * n times
    }
 }

In total it gives 1 + n + (n+1) + n + n + (n*n) + (n+1)*n + (n*n) + (n*n) = 4 * n^2 + 5*n + 2 :)

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You're talking about the variable 'i' in the comment next to 'j' looping. –  ingyhere Apr 3 '12 at 23:22

Big O describes the upper bound of a function. Your function is not only Big O(n^2), but it also has tight bounds (for any given value of n, the function has the exact same runtime). You can manually calculate the exact tight bound, or you can express it as a summation resulting in 4n^2+5n+2.

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