8 bits representing the number 7 look like this:
00000111
Three bits are set.
What are algorithms to determine the number of set bits in a 32bit integer?
8 bits representing the number 7 look like this:
Three bits are set. What are algorithms to determine the number of set bits in a 32bit integer? 


This is known as the 'Hamming Weight', 'popcount' or 'sideways addition'. The 'best' algorithm really depends on which CPU you are on and what your usage pattern is. Some CPUs have a single builtin instruction to do it and others have parallel instructions which act on bit vectors. The parallel instructions will almost certainly be fastest, however, the singleinstruction algorithms are 'usually microcoded loops that test a bit per cycle; a logtime algorithm coded in C is often faster'. A prepopulated table lookup method can be very fast if your CPU has a large cache and/or you are doing lots of these instructions in a tight loop. However it can suffer because of the expense of a 'cache miss', where the CPU has to fetch some of the table from main memory. If you know that your bytes will be mostly 0's or mostly 1's then there are very efficient algorithms for these scenarios. I believe a very good general purpose algorithm is the following, known as 'parallel' or 'variableprecision SWAR algorithm'. I have expressed this in a Clike pseudo language, you may need to adjust it to work for a particular language (e.g. using uint32_t for C++ and >>> in Java):
This is because it has the best worstcase behaviour of any of the algorithms discussed, so will efficiently deal with any usage pattern or values you throw at it. References: http://graphics.stanford.edu/~seander/bithacks.html http://en.wikipedia.org/wiki/Hamming_weight http://gurmeetsingh.wordpress.com/2008/08/05/fastbitcountingroutines/ http://aggregate.ee.engr.uky.edu/MAGIC/#Population%20Count%20(Ones%20Count) 


Also consider the buildin functions of your compilers. On the GNU compiler for example you can just use:
In the worst case the compiler will generate a call to a function. In the best case the compiler will emit a cpu instruction to do the same job faster. The GCC intrinsics even work across multiple platforms. Popcount will become mainstream in the x86 architecture, so it makes sense to start using the intrinsic now. Other architectures have the popcount for years. 


In my opinion, the "best" solution is the one that can be read by another programmer (or the original programmer two years later) without copious comments. You may well want the fastest or cleverest solution which some have already provided but I prefer readability over cleverness any time.
If you want more speed (and assuming you document it well to help out your successors), you could use a table lookup:
Although these rely on specific data type sizes so they're not that portable. But, since many performance optimisations aren't portable anyway, that may not be an issue. If you want portability, I'd stick to the readable solution. 


From Hacker's Delight, p. 66, Figure 52
Executes in ~20ish instructions (arch dependent), no branching. 


I got bored, and timed a billion iterations of three approaches. Compiler is gcc O3. CPU is whatever they put in the 1st gen Macbook Pro. Fastest is the following, at 3.7 seconds:
Second place goes to the same code but looking up 4 bytes instead of 2 halfwords. That took around 5.5 seconds. Third place goes to the bittwiddling 'sideways addition' approach, which took 8.6 seconds. Fourth place goes to GCC's __builtin_popcount(), at a shameful 11 seconds. The counting onebitatatime approach was waaaay slower, and I got bored of waiting for it to complete. So if you care about performance above all else then use the first approach. If you care, but not enough to spend 64Kb of RAM on it, use the second approach. Otherwise use the readable (but slow) onebitatatime approach. It's hard to think of a situation where you'd want to use the bittwiddling approach. Edit: Similar results here. 


If you happen to be using Java, the builtin method 


I think the fastest way—without using lookup tables and popcount—is the following. It counts the set bits with just 12 operations.
It works because you can count the total number of set bits by dividing in two halves, counting the number of set bits in both halves and then adding them up. Also know as
The number of bits in two bits can be
This is what was required: the last column shows the count of set bits in every two bit pair. If the two bit number is
This statement should be easy to understand. After the first operation we have the count of set bits in every two bits, now we sum up that count in every 4 bits.
We then sum up the above result, giving us the total count of set bits in 4 bits. The last statement is the most tricky.
Let's break it down further...
It's similar to the second statement; we are counting the set bits in groups of 4 instead. We know—because of our previous operations—that every nibble has the count of set bits in it. Let's look an example. Suppose we have the byte
It gives us the count of set bits in a byte, in the first nibble
Now every byte has the count of set bits in it. We need to add them up all together. The trick is to multiply the result by All we need now is the first byte which has the sum of all set bits in all the bytes, and we get it by 


This is one of those questions where it helps to know your microarchitecture. I just timed two variants under gcc 4.3.3 compiled with O3 using C++ inlines to eliminate function call overhead, one billion iterations, keeping the running sum of all counts to ensure the compiler doesn't remove anything important, using rdtsc for timing (clock cycle precise). inline int pop2(unsigned x, unsigned y) { x = x  ((x >> 1) & 0x55555555); y = y  ((y >> 1) & 0x55555555); x = (x & 0x33333333) + ((x >> 2) & 0x33333333); y = (y & 0x33333333) + ((y >> 2) & 0x33333333); x = (x + (x >> 4)) & 0x0F0F0F0F; y = (y + (y >> 4)) & 0x0F0F0F0F; x = x + (x >> 8); y = y + (y >> 8); x = x + (x >> 16); y = y + (y >> 16); return (x+y) & 0x000000FF; } The unmodified Hacker's Delight took 12.2 gigacycles. My parallel version (counting twice as many bits) runs in 13.0 gigacycles. 10.5s total elapsed for both together on a 2.4GHz Core Duo. 25 gigacycles = just over 10 seconds at this clock frequency, so I'm confident my timings are right. This has to do with instruction dependency chains, which are very bad for this algorithm. I could nearly double the speed again by using a pair of 64bit registers. In fact, if I was clever and added x+y a little sooner I could shave off some shifts. The 64bit version with some small tweaks would come out about even, but count twice as many bits again. With 128 bit SIMD registers, yet another factor of two, and the SSE instruction sets often have clever shortcuts, too. There's no reason for the code to be especially transparent. The interface is simple, the algorithm can be referenced online in many places, and it's amenable to comprehensive unit test. The programmer who stumbles upon it might even learn something. These bit operations are extremely natural at the machine level. OK, I decided to bench the tweaked 64bit version. For this one sizeof(unsigned long) == 8 inline int pop2(unsigned long x, unsigned long y) { x = x  ((x >> 1) & 0x5555555555555555); y = y  ((y >> 1) & 0x5555555555555555); x = (x & 0x3333333333333333) + ((x >> 2) & 0x3333333333333333); y = (y & 0x3333333333333333) + ((y >> 2) & 0x3333333333333333); x = (x + (x >> 4)) & 0x0F0F0F0F0F0F0F0F; y = (y + (y >> 4)) & 0x0F0F0F0F0F0F0F0F; x = x + y; x = x + (x >> 8); x = x + (x >> 16); x = x + (x >> 32); return x & 0xFF; } That looks about right (I'm not testing carefully, though). Now the timings come out at 10.70 gigacycles / 14.1 gigacycles. That later number summed 128 billion bits and corresponds to 5.9s elapsed on this machine. The nonparallel version speeds up a tiny bit because I'm running in 64bit mode and it likes 64bit registers slightly better than 32bit registers. Let's see if there's a bit more OOO pipelining to be had here. This was a bit more involved, so I actually tested a bit. Each term alone sums to 64, all combined sum to 256. inline int pop4(unsigned long x, unsigned long y, unsigned long u, unsigned long v) { enum { m1 = 0x5555555555555555, m2 = 0x3333333333333333, m3 = 0x0F0F0F0F0F0F0F0F, m4 = 0x000000FF000000FF }; x = x  ((x >> 1) & m1); y = y  ((y >> 1) & m1); u = u  ((u >> 1) & m1); v = v  ((v >> 1) & m1); x = (x & m2) + ((x >> 2) & m2); y = (y & m2) + ((y >> 2) & m2); u = (u & m2) + ((u >> 2) & m2); v = (v & m2) + ((v >> 2) & m2); x = x + y; u = u + v; x = (x & m3) + ((x >> 4) & m3); u = (u & m3) + ((u >> 4) & m3); x = x + u; x = x + (x >> 8); x = x + (x >> 16); x = x & m4; x = x + (x >> 32); return x & 0x000001FF; } I was excited for a moment, but it turns out gcc is playing inline tricks with O3 even though I'm not using the inline keyword in some tests. When I let gcc play tricks, a billion calls to pop4() takes 12.56 gigacycles, but I determined it was folding arguments as constant expressions. A more realistic number appears to be 19.6gc for another 30% speedup. My test loop now looks like this, making sure each argument is different enough to stop gcc from playing tricks. hitime b4 = rdtsc(); for (unsigned long i = 10L * 1000*1000*1000; i < 11L * 1000*1000*1000; ++i) sum += pop4 (i, i^1, ~i, i1); hitime e4 = rdtsc(); 256 billion bits summed in 8.17s elapsed. Works out to 1.02s for 32 million bits as benchmarked in the 16bit table lookup. Can't compare directly, because the other bench doesn't give a clock speed, but looks like I've slapped the snot out of the 64KB table edition, which is a tragic use of L1 cache in the first place. Update: decided to do the obvious and create pop6() by adding four more duplicated lines. Came out to 22.8gc, 384 billion bits summed in 9.5s elapsed. So there's another 20% Now at 800ms for 32 billion bits. 


Let me explain this algorithm. This algorithm is based on Divide and Conquer Algorithm. Suppose there is a 8bit integer 213(11010101 in binary), the algorithm works like this(each time merge two neighbor blocks):



For a happy medium between a 2^{32} lookup table and iterating through each bit individually:



Why not iteratively divide by 2? count = 0 while n > 0 if (n % 2) == 1 count += 1 n /= 2 EDIT: Matt, I don't currently have enough reputation to comment... :P. I agree that this isn't the fastest, but "best" is somewhat ambiguous. I'd argue though that "best" should have an element of clarity 


It's not the fastest or best solution, but I found the same question in my way, and I started to think and think. finally I realized that it can be done like this if you get the problem from mathematical side, and draw a graph, then you find that it's a function which has some periodic part, and then you realize the difference between the periods... so here you go:



The Hacker's Delight bittwiddling becomes so much clearer when you write out the bit patterns.
The first step adds the even bits to the odd bits, producing a sum of bits in each two. The other steps add highorder chunks to loworder chunks, doubling the chunk size all the way up, until we have the final count taking up the entire int. 


The function you are looking for is often called the "sideways sum" or "population count" of a binary number. Knuth discusses it in preFascicle 1A, pp1112 (although there was a brief reference in Volume 2, 4.6.3(7).) The locus classicus is Peter Wegner's article "A Technique for Counting Ones in a Binary Computer", from the Communications of the ACM, Volume 3 (1960) Number 5, page 322. He gives two different algorithms there, one optimized for numbers expected to be "sparse" (i.e., have a small number of ones) and one for the opposite case. 


What do you means with "Best algorithm"? The shorted code or the fasted code? Your code look very elegant and it has a constant execution time. The code is also very short. But if the speed is the major factor and not the code size then I think the follow can be faster:
I think that this will not more faster for a 64 bit value but a 32 bit value can be faster. 


I wrote a fast bitcount macro for RISC machines in about 1990. It does not use advanced arithmetic (multiplication, division, %), memory fetches (way too slow), branches (way too slow), but it does assume the CPU has a 32bit barrel shifter (in other words, >> 1 and >> 32 take the same amount of cycles.) It assumes that small constants (such as 6, 12, 24) cost nothing to load into the registers, or are stored in temporaries and reused over and over again. With these assumptions, it counts 32 bits in about 16 cycles/instructions on most RISC machines. Note that 15 instructions/cycles is close to a lower bound on the number of cycles or instructions, because it seems to take at least 3 instructions (mask, shift, operator) to cut the number of addends in half, so log_2(32) = 5, 5 x 3 = 15 instructions is a quasilowerbound.
Here is a secret to the first and most complex step:
so if I take the 1st column (A) above, shift it right 1 bit, and subtract it from AB, I get the output (CD). The extension to 3 bits is similar; you can check it with an 8row boolean table like mine above if you wish.



Few open questions:
we can modify the algo to support the negative number as follows:
now to overcome the second problem we can write the algo like:
for complete reference see : http://goursaha.freeoda.com/Miscellaneous/IntegerBitCount.html 


if you're using C++ another option is to use template metaprogramming:
usage would be:
you could of course further expand this template to use different types (even autodetecting bit size) but I've kept it simple for clarity. edit: forgot to mention this is good because it should work in any C++ compiler and it basically just unrolls your loop for you if a constant value is used for the bit count (in other words, I'm pretty sure it's the fastest general method you'll find) 


I'm particularly fond of this example from the fortune file: #define BITCOUNT(x) (((BX_(x)+(BX_(x)>>4)) & 0x0F0F0F0F) % 255) #define BX_(x) ((x)  (((x)>>1)&0x77777777)  (((x)>>2)&0x33333333)  (((x)>>3)&0x11111111)) I like it best because it's so pretty! 


Java JDK1.5 Integer.bitCount(n); where n is the number whose 1's are to be counted. check also,



I always use the simplest code which is more intuitive.
Logic : n & (n1) resets the last set bit of n. P.S : I know this is not O(1) solution, albeit an interesting solution. 


There are many algorithm to count the set bits; but i think the best one is the faster one! You can see the detailed on this page: I suggest this one: Counting bits set in 14, 24, or 32bit words using 64bit instructions
This method requires a 64bit CPU with fast modulus division to be efficient. The first option takes only 3 operations; the second option takes 10; and the third option takes 15. 


This can be done in



Here is a portable module ( ANSIC ) which can benchmark each of your algorithm's on any architecture. Your CPU has 9 bit bytes? No problem :) At the moment it implements 2 algorithms, the K&R algorithm and a byte wise lookup table. The lookup table is on average 3 times faster than the K&R algorithm. If someone can figure a way to make the "Hacker's Delight" algorithm portable feel free to add it in.
.



32bit or not ? I just came with this method in Java after reading "cracking the coding interview" 4th edition exercice 5.5 ( chap 5: Bit Manipulation). If the least significant bit is 1 increment
I think this one is more intuitive than the solutions with constant 0x33333333 no matter how fast they are. It depends on your definition of "best algorithm" . 


Fast C# solution using precalculated table of Byte bit counts with branching on input size.



Personally I use this :



Here is a solution that has not been mentioned so far, using bitfields. The following program counts the set bits in an array of 100000000 16bit integers using 4 different methods. Timing results are given in parentheses (on MacOSX, with
While the bitfield version is very readable, the timing results show that it is over 4x slower than 


Iterated 'count' runs in time proportional to the total number of bits. It simply loops through all the bits, terminating slightly earlier because of the while condition. Useful, if 1'S or the set bits are sparse and among the least significant bits. 


Or also:


