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# Complexity of a particular pseudocode algorithm

I'm just studying for my data structures & algorithms final. The following question was on my midterm and I got it wrong, so I'm just trying to figure it out:

What is the complexity of the following pseudocode?

`````` x <- 0
for x <- 0 to n:
for y <- 0 to n:
y <- y + 1
y <- y * 2
``````

On the midterm I answered O( n^2 ) but now that I'm looking at it again, I think it might be O( nlogn ).. See my answer below showing my attempt.

Any help is helping me pass my exam!

Cheers!

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I'm not sure why I got downvoted for this. I am not getting people to do my homework for me. I am trying to clarify my understanding of Big-Oh notation for my final. I attempted to answer this problem on my midterm and failed. Now I'm clarifying. – connorbode Dec 7 '12 at 4:30
See the answer programmers.stackexchange.com/questions/170610/…. Your question is very similar to that. – O.C. Dec 7 '12 at 11:50
Still not sure why I am being downvoted for this question. It would be great if you could provide an explanation as to why I am being downvoted. – connorbode Jan 3 '15 at 23:20

The following is my answer for the moment...

The outer loop `for x <- 0 to n` executes n times, definitely.

The inner loop `for y <- 0 to n` appears to execute n times, however every time it executes, its contained code brings y exponentially closer to n. So I believe that this section of code executes with O( logn ) complexity.

Thus, the whole algorithm executes with O( nlogn ) time complexity.

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Empirically, I may dare to represent your algorithm's behavior as such:

Some snapshots ("sum" is the number of iterations):

``````500 * 8 = 4000
``````