# How to find a binary logarithm very fast? (O(1) at best)

Is there any very fast method to find a binary logarithm of an integer number? For example, given a number x=52656145834278593348959013841835216159447547700274555627155488768 such algorithm must find y=log(x,2) which is 215. x is always a power of 2.

The problem seems to be really simple. All what is required is to find the position of the most significant 1 bit. There is a well-known method FloorLog, but it is not very fast especially for the very long multi-words integers.

What is the fastest method?

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u cant do O(1) bcuz u got to read the number in O(n) – Timmy Apr 19 '10 at 15:08
^ Technically, that's O(log₁₀ n), but I see your point. – Christian Mann Mar 15 '11 at 5:58

Is Bit Twiddling Hacks what you're looking for?

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Thanks! Very useful info. – psihodelia Apr 19 '10 at 14:45
Wow, most amazing collection of solutions I ever saw for a single problem, it's really impressive the level of details taken into consideration... – Matthieu M. Apr 20 '10 at 7:35
-1: bit-twiddling hacks is great, but how does it help to find the log of 2^215? – Jason S Mar 15 '11 at 12:33
@Jason: A couple of the examples can be extended to any bit length, notably the one titled "Find the log base 2 of an N-bit integer in O(lg(N)) operations". – Christoffer Hammarström Mar 15 '11 at 13:19
Theoretically, finding log base 2 can be done in O(1) with some reasonable assumptions and this technique is used in fusion tree. – Yu-Han Lyu Apr 9 '15 at 16:21

A quick hack: Most floating-point number representations automatically normalise values, meaning that they effectively perform the loop Christoffer Hammarström mentioned in hardware. So simply converting from an integer to FP and extracting the exponent should do the trick, provided the numbers are within the FP representation's exponent range! (In your case, your integer input requires multiple machine words, so multiple "shifts" will need to be performed in the conversion.)

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If the integers are stored in a `uint32_t a[]`, then my obvious solution would be as follows:

1. Run a linear search over `a[]` to find the highest-valued non-zero `uint32_t` value `a[i]` in `a[]` (test using `uint64_t` for that search if your machine has native `uint64_t` support)

2. Apply the bit twiddling hacks to find the binary log `b` of the `uint32_t` value `a[i]` you found in step 1.

3. Evaluate `32*i+b`.

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I don't believe a binary search will work here, since `a[]` is not sorted -- there will be 0-words both before and after the single word containing a single 1-bit. – j_random_hacker Apr 21 '10 at 7:18
Uhm. Of course. What was I thinking? Linear search will be the only thing to work there. I have updated the answer accordingly. – ndim Apr 21 '10 at 13:06
Note: If the segments of the integer are stored in an array, then the data structure holding the integer (of which the array is a component) should already have the base-2 logarithm kept on hand at all times for instant access. That is, a library that always knows the base-2 logarithm of a giant integer is going to be much more efficient at addition, multiplication, etc., than one which has to scan for it. – Todd Lehman Jul 14 '14 at 22:30

The answer is implementation or language dependent. Any implementation can store the number of significant bits along with the data, as it is often useful. If it must be calculated, then find the most significant word/limb and the most significant bit in that word.

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The best option on top of my head would be a O(log(logn)) approach, by using binary search. Here is an example for a 64-bit ( `<= 2^63 - 1` ) number (in C++):

``````int log2(int64_t num) {
int res = 0, pw = 0;
for(int i = 32; i > 0; i --) {
res += i;
if(((1LL << res) - 1) & num)
res -= i;
}
return res;
}
``````

This algorithm will basically profide me with the highest number res such as `(2^res - 1 & num) == 0`. Of course, for any number, you can work it out in a similar matter:

``````int log2_better(int64_t num) {
var res = 0;
for(i = 32; i > 0; i >>= 1) {
if( (1LL << (res + i)) <= num )
res += i;
}
return res;
}
``````

Note that this method relies on the fact that the "bitshift" operation is more or less O(1). If this is not the case, you would have to precompute either all the powers of 2, or the numbers of form `2^2^i` (2^1, 2^2, 2^4, 2^8, etc.) and do some multiplications(which in this case aren't O(1)) anymore.

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