I use the following function to calculate log base 2 for integers:
public static int log2(int n){
if(n <= 0) throw new IllegalArgumentException();
If you are thinking about using floating-point to help with integer arithmetics, you have to be careful.
I usually try to avoid FP calculations whenever possible.
Floating-point operations are not exact. You can never know for sure what will (int)(Math.log(65536)/Math.log(2))
evaluate to. For example, Math.ceil(Math.log(1<<29) / Math.log(2))
is 30 on my PC where mathematically it should be exactly 29. I didn't find a value for x where (int)(Math.log(x)/Math.log(2))
fails (just because there are only 32 "dangerous" values), but it does not mean that it will work the same way on any PC.
The usual trick here is using "epsilon" when rounding. Like (int)(Math.log(x)/Math.log(2)+1e-10)
should never fail. The choice of this "epsilon" is not a trivial task.
More demonstration, using a more general task - trying to implement int log(int x, int base)
:
The testing code:
static int pow(int base, int power) {
int result = 1;
for (int i = 0; i < power; i++)
result *= base;
return result;
}
private static void test(int base, int pow) {
int x = pow(base, pow);
if (pow != log(x, base))
System.out.println(String.format("error at %d^%d", base, pow));
if(pow!=0 && (pow-1) != log(x-1, base))
System.out.println(String.format("error at %d^%d-1", base, pow));
}
public static void main(String[] args) {
for (int base = 2; base < 500; base++) {
int maxPow = (int) (Math.log(Integer.MAX_VALUE) / Math.log(base));
for (int pow = 0; pow <= maxPow; pow++) {
test(base, pow);
}
}
}
If we use the most straight-forward implementation of logarithm,
static int log(int x, int base)
{
return (int) (Math.log(x) / Math.log(base));
}
this prints:
error at 3^5
error at 3^10
error at 3^13
error at 3^15
error at 3^17
error at 9^5
error at 10^3
error at 10^6
error at 10^9
error at 11^7
error at 12^7
...
To completely get rid of errors I had to add epsilon which is between 1e-11 and 1e-14. Could you have told this before testing? I definitely could not.
This is the function that I use for this calculation:
public static int binlog( int bits ) // returns 0 for bits=0
{
int log = 0;
if( ( bits & 0xffff0000 ) != 0 ) { bits >>>= 16; log = 16; }
if( bits >= 256 ) { bits >>>= 8; log += 8; }
if( bits >= 16 ) { bits >>>= 4; log += 4; }
if( bits >= 4 ) { bits >>>= 2; log += 2; }
return log + ( bits >>> 1 );
}
It is slightly faster than Integer.numberOfLeadingZeros() (20-30%) and almost 10 times faster (jdk 1.6 x64) than a Math.log() based implementation like this one:
private static final double log2div = 1.000000000001 / Math.log( 2 );
public static int log2fp0( int bits )
{
if( bits == 0 )
return 0; // or throw exception
return (int) ( Math.log( bits & 0xffffffffL ) * log2div );
}
Both functions return the same results for all possible input values.
Update:
The Java 1.7 server JIT is able to replace a few static math functions with alternative implementations based on CPU intrinsics. One of those functions is Integer.numberOfLeadingZeros(). So with a 1.7 or newer server VM, a implementation like the one in the question is actually slightly faster than the binlog
above. Unfortunatly the client JIT doesn't seem to have this optimization.
public static int log2nlz( int bits )
{
if( bits == 0 )
return 0; // or throw exception
return 31 - Integer.numberOfLeadingZeros( bits );
}
This implementation also returns the same results for all 2^32 possible input values as the the other two implementations I posted above.
Here are the actual runtimes on my PC (Sandy Bridge i7):
JDK 1.7 32 Bits client VM:
binlog: 11.5s
log2nlz: 16.5s
log2fp: 118.1s
log(x)/log(2): 165.0s
JDK 1.7 x64 server VM:
binlog: 5.8s
log2nlz: 5.1s
log2fp: 89.5s
log(x)/log(2): 108.1s
This is the test code:
int sum = 0, x = 0;
long time = System.nanoTime();
do sum += log2nlz( x ); while( ++x != 0 );
time = System.nanoTime() - time;
System.out.println( "time=" + time / 1000000L / 1000.0 + "s -> " + sum );
To add to x4u answer, which gives you the floor of the binary log of a number, this function return the ceil of the binary log of a number :
public static int ceilbinlog(int number) // returns 0 for bits=0
{
int log = 0;
int bits = number;
if ((bits & 0xffff0000) != 0) {
bits >>>= 16;
log = 16;
}
if (bits >= 256) {
bits >>>= 8;
log += 8;
}
if (bits >= 16) {
bits >>>= 4;
log += 4;
}
if (bits >= 4) {
bits >>>= 2;
log += 2;
}
if (1 << log < number)
log++;
return log + (bits >>> 1);
}
you can use the identity
log[a]x
log[b]x = ---------
log[a]b
so this would be applicable for log2.
log[10]x
log[2]x = ----------
log[10]2
just plug this into the java Math log10 method....
http://mathforum.org/library/drmath/view/55565.html
To calculate log base 2 of n, following expression can be used:
double res = log10(n)/log10(2);
There is the function in guava libraries:
LongMath.log2()
So I suggest to use it.