20

I noticed that when incrementing a counter, it is significantly slower when the value of the counter is a large number. I tried it in Chrome, Firefox, and IE11, all show worse performance in large numbers.

See jsperf test here (code below):

var count1 = 0;
var count2 = new Date().getTime();
var count3 = 1e5;
var count4 = 1e9;
var count5 = 1e12;
var count6 = 1e15;

function getNum1() {
  return ++count1;
}

function getNum2() {
  return ++count2;
}

function getNum3() {
  return ++count3;
}

function getNum4() {
  return ++count4;
}

function getNum5() {
  return ++count5;
}

function getNum6() {
  return ++count6;
}

Why does it happen?

6
  • I cannot reproduce your findings in Firefox 41. It claims the small dataset is 55% slower.
    – k-nut
    Oct 25, 2015 at 12:34
  • @k-nut That's very strange, I tested with Firefox 41 and see that the large dataset is 45% slower. Consistently so.
    – Malki
    Oct 25, 2015 at 12:40
  • Can confirm for Safari and Chrome independently, up to 2x faster on small numbers. Oct 25, 2015 at 12:41
  • FireFox 43 64 bit, just the opposite, bigger numbers are twice as fast - here the JS engine is doing a different kind of optimization
    – edc65
    Oct 25, 2015 at 15:55
  • @edc65 probably dead code elimination, if you share your benchmark I might be able to help. Oct 25, 2015 at 17:27

2 Answers 2

29

Modern JavaScript runtimes and compilers perform an optimization called SMI (Small Integers).

All numbers in JavaScript are double precision floating points which are relatively slow to perform calculations on. However, in practice in a lot of cases (for example the majority of for loops) we're working with integers.

So - it is very useful to optimize numbers to perform efficient calculations when possible. When the engine can prove that a number is a small integer - it will gladly treat it as such and perform all calculations as if the number is an integer.

Incrementing a 32-bit integer is a single processor operation and is very cheap. So you get better performance doing it.

8
  • See this slideshow for more information, it's slightly outdated but still pretty good. Oct 25, 2015 at 13:04
  • 4
    Note that in many JavaScript engines you only get that speedup for 31 bit integers, because the MSB will be a tagging bit specifying whether to treat the number as an integer or a reference to a double somewhere.
    – Joey
    Oct 25, 2015 at 14:10
  • “double precision floating points which are relatively slow to perform calculations on” erm... really? If that were relevant, then scientific applications had long stopped to be written in Fortran. No, in fact x86-64 doesn't make much speed difference between int and float at all. I suppose in ARM it does make a significant difference, but I'd bet that is still rather neglectable vs the overhead of a dynamic type system. And that's likely the real reason: JavaScript can stuff extra type information into a 64-bit field if it only holds a 31-bit int. Oct 25, 2015 at 18:35
  • @leftaroundabout I'm not sure how you interpreted what I said like that - 64 bit floats are boxed in JavaScript engines and 32 bit ints are not. That's why there is such a speed difference. Obviously, there is a performance difference between ints and doubles in some scenarios - doing ++ when running a JS script is not likely one of them - which can be easily validated by creating a typed array object in JS and measuring it. Oct 25, 2015 at 18:41
  • 1
    Well, it's just that you made it sound like big numbers are slow because they're floats. Really it would be no faster even if they were implement by boxed Word8s... — I rather wouldn't edit your answer because I know little about JavaScript, but I think a short explanation about boxed values would be necessary here. Oct 25, 2015 at 18:56
0

This 'large' number you are using though, is really large, I bet it's the difference between processing a 32-bit quantity and a more-than-32-bits quantity. Try a base of 1,500,000,00 (sub 32-bit signed), 3,000,000,000 (sub 32-bit unsigned) and 5,000,000,000 (over 32 bit).

3
  • JavaScript Numbers are Always 64-bit Floating Point: w3schools.com/js/js_numbers.asp Oct 25, 2015 at 12:39
  • 2
    @Oleg that's irrelevant to whatever optimizations a compiler might perform when it can prove a number is in fact a 32bit int. Oct 25, 2015 at 12:57
  • 1
    In fact, all JS engines I'm familiar with optimize this - the optimization is called SMI (stands for small integers). Oct 25, 2015 at 12:57

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