# Floating point division vs floating point multiplication

Is there any (non-microoptimization) performance gain by coding

``````float f1 = 200f / 2
``````

in comparision to

``````float f2 = 200f * 0.5
``````

A professor of mine told me a few years ago that floating point divisions were slower than floating point multiplications without elaborating the why.

Does this statement hold for modern PC architecture?

Update1

In respect to a comment, please do also consider this case:

``````float f1;
float f2 = 2
float f3 = 3;
for( i =0 ; i < 1e8; i++)
{
f1 = (i * f2 + i / f3) * 0.5; //or divide by 2.0f, respectively
}
``````

Update 2 Quoting from the comments:

[I want] to know what are the algorithmic / architectural requirements that cause > division to be vastly more complicated in hardware than multiplication

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The real way to find the answer is to try both and measure time. –  sharptooth Nov 8 '10 at 15:06
Most compilers will optimise a literal constant expression such as this, so it makes no difference. –  Paul R Nov 8 '10 at 15:06
Paul is still correct; Most compilers will turn `/ 2.0` into `* 0.5`. –  Gabe Nov 8 '10 at 15:14
@Gabe, I think what Paul meant is that it would turn `200f / 2` into `100f`. –  mikerobi Nov 8 '10 at 15:21
@Paul: Such optimization is possible for powers of 2, but not in general. Aside from powers of two, no floating point number has a reciprocal that you can multiply by in place of the division. –  R.. Dec 18 '10 at 4:29

Yes, many CPUs can perform multiplication in 1 or 2 clock cycles but division always takes longer (although FP division is sometimes faster than integer division).

If you look at this answer you will see that division can exceed 24 cycles.

Why does division take so much longer than multiplication? If you remember back to grade school, you may recall that multiplication can essentially be performed with many simultaneous additions. Division requires iterative subtraction that cannot be performed simultaneously so it takes longer. In fact, some FP units speed up division by performing a reciprocal approximation and multiplying by that. It isn't quite as accurate but is somewhat faster.

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I think the OP wants to know what are the algorithmic / architectural requirements that cause division to be vastly more complicated in hardware than multiplication. –  chrisaycock Nov 8 '10 at 15:12
@chrisaycok: Exactly. –  sum1stolemyname Nov 8 '10 at 15:14
Thanks for the link! –  sum1stolemyname Nov 8 '10 at 15:17
@chrisaycock - Shame the OP didn't ask that question then... –  T.E.D. Nov 8 '10 at 15:36
As I recall the Cray-1 didn't bother with a division instruction, it had a reciprocal instruction and expected you to multiply after that. For exactly this reason. –  Mark Ransom Nov 8 '10 at 16:46

Yes. Every FPU I am aware of performs multiplications much faster than divisions.

However, modern PCs are very fast. They also contain pipelining archtectures that can make the difference negligable under many circumstances. To top it off, any decent compiler will perform the division operation you showed at compile time with optimizations turned on. For your updated example, any decent compiler would perform that transformation itself.

So generally you should worry about making your code readable, and let the compiler worry about making it fast. Only if you have a measured speed issue with that line should you worry about perverting your code for the sake of speed. Compilers are well aware of what is faster than what on their CPU's, and are generally much better optimizers than you can ever hope to be.

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Making the code readable is not enough. Sometimes there are requirements to optimize something, and that would generally make the code hard to understand. Good developer would first write good unit tests, and then optimize the code. Readability is nice, but not always reachable goal. –  BЈовић Nov 8 '10 at 15:41
@VJo - Either you missed my second to last sentence, or you disagree with my priorities. If its the latter, I'm afraid we are doomed to disagree. –  T.E.D. Nov 8 '10 at 17:44
Compilers are usually good in optimizing the code, but they have some limits. Would you believe it is possible to speed up some algorithm several times by some tricks? cortstratton.org/articles/OptimizingForSSE.php –  BЈовић Nov 8 '10 at 19:45
Compilers cannot optimize this for you. They are not allowed to because the results would be different and non-conformant (wrt IEEE-754). gcc provides a `-ffast-math` option for this purpose, but it breaks many things and cannot be used in general. –  R.. Dec 18 '10 at 4:32
C compilers are allowed to optimize this because both division by 2.0 and multiplication by 0.5 are exact when using binary arithmetic, thus the result is the same. See section F.8.2 of the ISO C99 standard, which shows exactly this case as a permissible transformation when IEEE-754 bindings are used. –  njuffa Sep 3 '12 at 20:21

Division is inherently a much slower operation than multiplication.

And this may in fact be something that the compiler cannot (and you may not want to) optimize in many cases due to floating point inaccuracies. These two statements:

``````double d1 = 7 / 10;
double d2 = 7 * 0.1;
``````

are not semantically identical - `0.1` cannot be exactly represented as a `double`, so a slightly different value will end up being used - substituting the multiplication for the division in this case would yield a different result!

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With g++, 200.f / 10 and 200.f * 0.1 emit exactly the same code. –  kotlinski Nov 8 '10 at 15:31
@kotlinski: that makes g++ wrong, not my statement. I suppose one could argue that if the difference matters, you shouldn't be using floats in the first place, but it's definitely something I'd only do at the higher optimization levels if I were a compiler author. –  Michael Borgwardt Nov 8 '10 at 15:36
@Michael: Wrong by which standard? –  kotlinski Nov 8 '10 at 15:52
@kotlinski: wrong by the standard that a performance optmization done automatically by a compiler should never change the semantic behaviour of the code. –  Michael Borgwardt Nov 8 '10 at 15:56
if you try it, in a fair manner (that doesnt allow the compiler to optimize or substitute) you will find that 7 / 10 and 7 * 0.1 using double precision do not give the same result. The multiply gives the wrong answer it gives a number greater than the divide. floating point is about precision, if even a single bit is off it is wrong. same goes for 7 / 5 != 7/0.2, but take a number you can represent 7 / 4 and 7 * 0.25, that will give the same result. IEEE supports multiple rounding modes so you can overcome some of these problems (if you know the answer ahead of time). –  dwelch Nov 9 '10 at 7:45

The answer depends on the platform for which you are programming.

For example, doing lots of multiplication on an array on x86 should be much faster then doing division, because the compiler should create the assembler code which uses SIMD instructions. Since there are no division in the SIMD instructions, then you would see great improvements using multiplication then division.

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Good point. I didn't know that. –  sum1stolemyname Nov 8 '10 at 15:26
But other answers are good as well. A division is generally slower or equal then multiplication, but it depends on the platform. –  BЈовић Nov 8 '10 at 15:38
by now, there are division instructions for SSE –  Andre Holzner Aug 13 at 12:57