The time complexity is an indicator of the runtime of a function relative to the amount of its input data.
given n data items for a function,
- O(n) means a function will simply pass over each data item "once". So doubling the input amout will double its duration.
- O(n2) would mean that a function for example has two nested loops over the data, so double the input amount and wait 4 times as long.
- O(log n) for example would only need logarithmic time, e.g. when you give 10 times more input, the function will only take one "step" longer.
- O(sqrt(n)) thus means when you give 4 times the input of a call, the function will only take twice the time.
The Big-O-Notation only states how a function scales, but not how long it actually takes. For instance, the Big-O-Notation ignores constant factors. e.g. A function that iterates 4 times over some data (4x loop in sequence) has O(4n), and that is equal to O(n).
This fact also shows why O(log10 n) is equal to O(log2 n):
log10 n = (log2 n) / (log2 10). As (log2 10) is a constant factor, it can be omited in Big-O-Notation. Thus you can choose whatever log you like, it will not mean any difference concerning Big-O-complexity.
When you have two inputs, say lists A and B, you use two variables for there size, say n resp. m.
A function that has complexity O(n^2 * log m) behaves as follows:
- doubling list A will result in much slower execution (i.e. 4x duration) but
- doubling list B will only result in only "one more iteration" over the A's processing duration of O(n2) (i.e. it will only take n^2 * (any unknown constant factor) longer.)