Every answer currently responding to this question tells you that the `O(1)`

means constant time (whatever it happens to measuring; could be runtime, number of operations, etc.). This is not accurate.

To say that runtime is `O(1)`

means that there is a constant `c`

such that the runtime is bounded above by `c`

, independent of the input. For example, returning the first element of an array of `n`

integers is `O(1)`

:

```
int firstElement(int *a, int n) {
return a[0];
}
```

But this function is `O(1)`

too:

```
int identity(int i) {
if(i == 0) {
sleep(60 * 60 * 24 * 365);
}
return i;
}
```

The runtime here is bounded above by 1 year, but most of the time the runtime is on the order of nanoseconds.

To say that runtime is `O(n)`

means that there is a constant `c`

such that the runtime is bounded above by `c * n`

, where `n`

measures the size of the input. For example, finding the number of occurrences of a particular integer in an unsorted array of `n`

integers by the following algorithm is `O(n)`

:

```
int count(int *a, int n, int item) {
int c = 0;
for(int i = 0; i < n; i++) {
if(a[i] == item) c++;
}
return c;
}
```

This is because we have to iterate through the array inspecting each element one at a time.