Here's a little test program that follows what the system pow() from Source/Intel/xmm_power.c, in Apple's Libm-2026, does in this case:
#include <stdio.h>
int main() {
// basically lines 1130-1157 of xmm_power.c, modified a bit to remove
// irrelevant things
double x = .3;
int i = 3;
//calculate ix = f**i
long double ix = 1.0, lx = (long double) x;
//calculate x**i by doing lots of multiplication
int mask = 1;
//for each of the bits set in i, multiply ix by x**(2**bit_position)
while(i != 0)
{
if( i & mask )
{
ix *= lx;
i -= mask;
}
mask += mask;
lx *= lx; // In double this might overflow spuriously, but not in long double
}
printf("%.40f\n", (double) ix);
}
This prints out 0.0269999999999999962252417162744677625597, which agrees with the results I get for .3 ^ 3 in Matlab and .3 ** 3 in Python (and we know the latter just calls this code). By contrast, .3 * .3 * .3 for me gets 0.0269999999999999996946886682280819513835, which is the same thing that you get if you just ask to print out 0.027 to that many decimal places and so is presumably the closest double.
So there's the algorithm. We could track out exactly what value is set at each step, but it's not too surprising that it would round to a very slightly smaller number given a different algorithm for doing it.
.3*.3*.3yields 0.0269999999999999996946886682280819513835012912750244140625 and is closer to the exact result.pow(.3, 3)yields 0.0269999999999999962252417162744677625596523284912109375. Time to get some sleep. – Eric Postpischil Jan 23 at 3:46==with floating point is naïve and is not applicable to this question. – Eric Postpischil Jan 23 at 10:24