Bit Manipulations
One approach would be to use bit manipulations:
(n & (n-1) == 0) and n != 0
Explanation: every power of 2 has exactly 1 bit set to 1 (the bit in that number's log base-2 index). So when subtracting 1 from it, that bit flips to 0 and all preceding bits flip to 1. That makes these 2 numbers the inverse of each other so when AND-ing them, we will get 0 as the result.
For example:
n = 8
decimal | 8 = 2**3 | 8 - 1 = 7 | 8 & 7 = 0
| ^ | |
binary | 1 0 0 0 | 0 1 1 1 | 1 0 0 0
| ^ | | & 0 1 1 1
index | 3 2 1 0 | | -------
0 0 0 0
-----------------------------------------------------
n = 5
decimal | 5 = 2**2 + 1 | 5 - 1 = 4 | 5 & 4 = 4
| | |
binary | 1 0 1 | 1 0 0 | 1 0 1
| | | & 1 0 0
index | 2 1 0 | | ------
1 0 0
So, in conclusion, whenever we subtract one from a number, AND the result with the number itself, and that becomes 0 - that number is a power of 2!
Of course, AND-ing anything with 0
will give 0, so we add the check for n != 0
.
math
functions
You could always use math functions, but notice that using them without care could cause incorrect results:
import math
math.log(n, 2).is_integer()
Or:
math.log2(n).is_integer()
- Worth noting that for any
n <= 0
, both functions will throw a ValueError
as it is mathematically undefined (and therefore shouldn't present a logical problem).
Or:
abs(math.frexp(n)[0]) == 0.5
As noted above, for some numbers these functions are not accurate and actually give FALSE RESULTS:
math.log(2**29, 2).is_integer()
will give False
math.log2(2**49-1).is_integer()
will give True
math.frexp(2**53+1)[0] == 0.5
will give True
!!
This is because math
functions use floats, and those have an inherent accuracy problem.
Timing
According to the math docs, the log
with a given base, actually calculates log(x)/log(base)
which is obviously slow. log2
is said to be more accurate, and probably more efficient. Bit manipulations are simple operations, not calling any functions.
So the results are:
log
with base=2
: 0.67 sec
frexp
: 0.52 sec
log2
: 0.37 sec
bit ops: 0.2 sec
The code I used for these measures can be recreated in this REPL.
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