A tool for calculating the big-O time complexity of Java code? [closed]

As @emory pointed out, it is provably impossible to determine the big-O time complexity of an arbitrary piece of code automatically (the proof is a reduction from the halting problem). However, there are tools that can attempt to measure the complexity of a piece of code empirically by running it on several different inputs. One such tool is described in the paper “Measuring Empirical Computational Complexity” by Goldsmith, Aiken, and Wilkerson. It works by attempting to do a regression on the program's runtime versus its input size. The tool, called trend-prof, has been discontinued, but is archived here for reference.


I might be solving someone's homework, but the question was begging for a sane solution...

Counting distinct digits in a number requires no strings, sets or regular expressions, just some simple arithmetics.

The following method runs in O(n) time (n = number of digits in the input) and constant space:

int distinctDigits(int num) {
  if (num == 0) {
    return 1;
  }

  boolean[] digits = new boolean[10];

  while (num > 0) {
    digits[num % 10] = true;
    num /= 10;
  }

  int count = 0;
  for (boolean digit : digits) {
    if (digit) {
      count++;
    }
  }

  return count;
}

Making this work for negative numbers is left as an exericse to the reader ;)