Instead of speculating about what may or may not happen, let's just look, shall we? I'll have to use C++ since I don't have a C# compiler handy (though see the C# example from VisualMelon), but I'm sure the same principles apply regardless.
We'll include the two alternatives you encountered in the interview. We'll also include a version that uses abs
as suggested by some of the answers.
#include <cstdlib>
bool IsSumInRangeWithVar(int a, int b)
{
int s = a + b;
if (s > 1000 || s < -1000) return false;
else return true;
}
bool IsSumInRangeWithoutVar(int a, int b)
{
if (a + b > 1000 || a + b < -1000) return false;
else return true;
}
bool IsSumInRangeSuperOptimized(int a, int b) {
return (abs(a + b) < 1000);
}
Now compile it with no optimization whatsoever: g++ -c -o test.o test.cpp
Now we can see precisely what this generates: objdump -d test.o
0000000000000000 <_Z19IsSumInRangeWithVarii>:
0: 55 push %rbp # begin a call frame
1: 48 89 e5 mov %rsp,%rbp
4: 89 7d ec mov %edi,-0x14(%rbp) # save first argument (a) on stack
7: 89 75 e8 mov %esi,-0x18(%rbp) # save b on stack
a: 8b 55 ec mov -0x14(%rbp),%edx # load a and b into edx
d: 8b 45 e8 mov -0x18(%rbp),%eax # load b into eax
10: 01 d0 add %edx,%eax # add a and b
12: 89 45 fc mov %eax,-0x4(%rbp) # save result as s on stack
15: 81 7d fc e8 03 00 00 cmpl $0x3e8,-0x4(%rbp) # compare s to 1000
1c: 7f 09 jg 27 # jump to 27 if it's greater
1e: 81 7d fc 18 fc ff ff cmpl $0xfffffc18,-0x4(%rbp) # compare s to -1000
25: 7d 07 jge 2e # jump to 2e if it's greater or equal
27: b8 00 00 00 00 mov $0x0,%eax # put 0 (false) in eax, which will be the return value
2c: eb 05 jmp 33 <_Z19IsSumInRangeWithVarii+0x33>
2e: b8 01 00 00 00 mov $0x1,%eax # put 1 (true) in eax
33: 5d pop %rbp
34: c3 retq
0000000000000035 <_Z22IsSumInRangeWithoutVarii>:
35: 55 push %rbp
36: 48 89 e5 mov %rsp,%rbp
39: 89 7d fc mov %edi,-0x4(%rbp)
3c: 89 75 f8 mov %esi,-0x8(%rbp)
3f: 8b 55 fc mov -0x4(%rbp),%edx
42: 8b 45 f8 mov -0x8(%rbp),%eax # same as before
45: 01 d0 add %edx,%eax
# note: unlike other implementation, result is not saved
47: 3d e8 03 00 00 cmp $0x3e8,%eax # compare to 1000
4c: 7f 0f jg 5d <_Z22IsSumInRangeWithoutVarii+0x28>
4e: 8b 55 fc mov -0x4(%rbp),%edx # since s wasn't saved, load a and b from the stack again
51: 8b 45 f8 mov -0x8(%rbp),%eax
54: 01 d0 add %edx,%eax
56: 3d 18 fc ff ff cmp $0xfffffc18,%eax # compare to -1000
5b: 7d 07 jge 64 <_Z22IsSumInRangeWithoutVarii+0x2f>
5d: b8 00 00 00 00 mov $0x0,%eax
62: eb 05 jmp 69 <_Z22IsSumInRangeWithoutVarii+0x34>
64: b8 01 00 00 00 mov $0x1,%eax
69: 5d pop %rbp
6a: c3 retq
000000000000006b <_Z26IsSumInRangeSuperOptimizedii>:
6b: 55 push %rbp
6c: 48 89 e5 mov %rsp,%rbp
6f: 89 7d fc mov %edi,-0x4(%rbp)
72: 89 75 f8 mov %esi,-0x8(%rbp)
75: 8b 55 fc mov -0x4(%rbp),%edx
78: 8b 45 f8 mov -0x8(%rbp),%eax
7b: 01 d0 add %edx,%eax
7d: 3d 18 fc ff ff cmp $0xfffffc18,%eax
82: 7c 16 jl 9a <_Z26IsSumInRangeSuperOptimizedii+0x2f>
84: 8b 55 fc mov -0x4(%rbp),%edx
87: 8b 45 f8 mov -0x8(%rbp),%eax
8a: 01 d0 add %edx,%eax
8c: 3d e8 03 00 00 cmp $0x3e8,%eax
91: 7f 07 jg 9a <_Z26IsSumInRangeSuperOptimizedii+0x2f>
93: b8 01 00 00 00 mov $0x1,%eax
98: eb 05 jmp 9f <_Z26IsSumInRangeSuperOptimizedii+0x34>
9a: b8 00 00 00 00 mov $0x0,%eax
9f: 5d pop %rbp
a0: c3 retq
We can see from the stack addresses (for example, the -0x4
in mov %edi,-0x4(%rbp)
versus the -0x14
in mov %edi,-0x14(%rbp)
) that IsSumInRangeWithVar()
uses 16 extra bytes on the stack.
Because IsSumInRangeWithoutVar()
allocates no space on the stack to store the intermediate value s
it has to recalculate it, resulting in this implementation being 2 instructions longer.
Funny, IsSumInRangeSuperOptimized()
looks a lot like IsSumInRangeWithoutVar()
, except it compares to -1000 first, and 1000 second.
Now let's compile with only the most basic optimizations: g++ -O1 -c -o test.o test.cpp
. The result:
0000000000000000 <_Z19IsSumInRangeWithVarii>:
0: 8d 84 37 e8 03 00 00 lea 0x3e8(%rdi,%rsi,1),%eax
7: 3d d0 07 00 00 cmp $0x7d0,%eax
c: 0f 96 c0 setbe %al
f: c3 retq
0000000000000010 <_Z22IsSumInRangeWithoutVarii>:
10: 8d 84 37 e8 03 00 00 lea 0x3e8(%rdi,%rsi,1),%eax
17: 3d d0 07 00 00 cmp $0x7d0,%eax
1c: 0f 96 c0 setbe %al
1f: c3 retq
0000000000000020 <_Z26IsSumInRangeSuperOptimizedii>:
20: 8d 84 37 e8 03 00 00 lea 0x3e8(%rdi,%rsi,1),%eax
27: 3d d0 07 00 00 cmp $0x7d0,%eax
2c: 0f 96 c0 setbe %al
2f: c3 retq
Would you look at that: each variant is identical. The compiler is able to do something quite clever: abs(a + b) <= 1000
is equivalent to a + b + 1000 <= 2000
considering setbe
does an unsigned comparison, so a negative number becomes a very large positive number. The lea
instruction can actually perform all these additions in one instruction, and eliminate all the conditional branches.
To answer your question, almost always the thing to optimize for is not memory or speed, but readability. Reading code is a lot harder than writing it, and reading code that's been mangled to "optimize" it is a lot harder than reading code that's been written to be clear. More often than not, these "optimizations" have negligible, or as in this case exactly zero actual impact on performance.
Follow up question, what changes when this code is in an interpreted language instead of compiled? Then, does the optimization matter or does it have the same result?
Let's measure! I've transcribed the examples to Python:
def IsSumInRangeWithVar(a, b):
s = a + b
if s > 1000 or s < -1000:
return False
else:
return True
def IsSumInRangeWithoutVar(a, b):
if a + b > 1000 or a + b < -1000:
return False
else:
return True
def IsSumInRangeSuperOptimized(a, b):
return abs(a + b) <= 1000
from dis import dis
print('IsSumInRangeWithVar')
dis(IsSumInRangeWithVar)
print('\nIsSumInRangeWithoutVar')
dis(IsSumInRangeWithoutVar)
print('\nIsSumInRangeSuperOptimized')
dis(IsSumInRangeSuperOptimized)
print('\nBenchmarking')
import timeit
print('IsSumInRangeWithVar: %fs' % (min(timeit.repeat(lambda: IsSumInRangeWithVar(42, 42), repeat=50, number=100000)),))
print('IsSumInRangeWithoutVar: %fs' % (min(timeit.repeat(lambda: IsSumInRangeWithoutVar(42, 42), repeat=50, number=100000)),))
print('IsSumInRangeSuperOptimized: %fs' % (min(timeit.repeat(lambda: IsSumInRangeSuperOptimized(42, 42), repeat=50, number=100000)),))
Run with Python 3.5.2, this produces the output:
IsSumInRangeWithVar
2 0 LOAD_FAST 0 (a)
3 LOAD_FAST 1 (b)
6 BINARY_ADD
7 STORE_FAST 2 (s)
3 10 LOAD_FAST 2 (s)
13 LOAD_CONST 1 (1000)
16 COMPARE_OP 4 (>)
19 POP_JUMP_IF_TRUE 34
22 LOAD_FAST 2 (s)
25 LOAD_CONST 4 (-1000)
28 COMPARE_OP 0 (<)
31 POP_JUMP_IF_FALSE 38
4 >> 34 LOAD_CONST 2 (False)
37 RETURN_VALUE
6 >> 38 LOAD_CONST 3 (True)
41 RETURN_VALUE
42 LOAD_CONST 0 (None)
45 RETURN_VALUE
IsSumInRangeWithoutVar
9 0 LOAD_FAST 0 (a)
3 LOAD_FAST 1 (b)
6 BINARY_ADD
7 LOAD_CONST 1 (1000)
10 COMPARE_OP 4 (>)
13 POP_JUMP_IF_TRUE 32
16 LOAD_FAST 0 (a)
19 LOAD_FAST 1 (b)
22 BINARY_ADD
23 LOAD_CONST 4 (-1000)
26 COMPARE_OP 0 (<)
29 POP_JUMP_IF_FALSE 36
10 >> 32 LOAD_CONST 2 (False)
35 RETURN_VALUE
12 >> 36 LOAD_CONST 3 (True)
39 RETURN_VALUE
40 LOAD_CONST 0 (None)
43 RETURN_VALUE
IsSumInRangeSuperOptimized
15 0 LOAD_GLOBAL 0 (abs)
3 LOAD_FAST 0 (a)
6 LOAD_FAST 1 (b)
9 BINARY_ADD
10 CALL_FUNCTION 1 (1 positional, 0 keyword pair)
13 LOAD_CONST 1 (1000)
16 COMPARE_OP 1 (<=)
19 RETURN_VALUE
Benchmarking
IsSumInRangeWithVar: 0.019361s
IsSumInRangeWithoutVar: 0.020917s
IsSumInRangeSuperOptimized: 0.020171s
Disassembly in Python isn't terribly interesting, since the bytecode "compiler" doesn't do much in the way of optimization.
The performance of the three functions is nearly identical. We might be tempted to go with IsSumInRangeWithVar()
due to it's marginal speed gain. Though I'll add as I was trying different parameters to timeit
, sometimes IsSumInRangeSuperOptimized()
came out fastest, so I suspect it may be external factors responsible for the difference, rather than any intrinsic advantage of any implementation.
If this is really performance critical code, an interpreted language is simply a very poor choice. Running the same program with pypy, I get:
IsSumInRangeWithVar: 0.000180s
IsSumInRangeWithoutVar: 0.001175s
IsSumInRangeSuperOptimized: 0.001306s
Just using pypy, which uses JIT compilation to eliminate a lot of the interpreter overhead, has yielded a performance improvement of 1 or 2 orders of magnitude. I was quite shocked to see IsSumInRangeWithVar()
is an order of magnitude faster than the others. So I changed the order of the benchmarks and ran again:
IsSumInRangeSuperOptimized: 0.000191s
IsSumInRangeWithoutVar: 0.001174s
IsSumInRangeWithVar: 0.001265s
So it seems it's not actually anything about the implementation that makes it fast, but rather the order in which I do the benchmarking!
I'd love to dig in to this more deeply, because honestly I don't know why this happens. But I believe the point has been made: micro-optimizations like whether to declare an intermediate value as a variable or not are rarely relevant. With an interpreted language or highly optimized compiler, the first objective is still to write clear code.
If further optimization might be required, benchmark. Remember that the best optimizations come not from the little details but the bigger algorithmic picture: pypy is going to be an order of magnitude faster for repeated evaluation of the same function than cpython because it uses faster algorithms (JIT compiler vs interpretation) to evaluate the program. And there's the coded algorithm to consider as well: a search through a B-tree will be faster than a linked list.
After ensuring you're using the right tools and algorithms for the job, be prepared to dive deep into the details of the system. The results can be very surprising, even for experienced developers, and this is why you must have a benchmark to quantify the changes.
int s
while being totally fine with those magic numbers for upper and lower bounds?