# C++ Float Division and Precision

I know that 511 divided by 512 actually equals 0.998046875. I also know that the precision of floats is 7 digits. My question is, when I do this math in C++ (GCC) the result I get is 0.998047, which is a rounded value. I'd prefer to just get the truncated value of 0.998046, how can I do that?

``````  float a = 511.0f;
float b = 512.0f;
float c = a / b;
``````
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Can't you use doubles for extra precision and truncate that? –  Andrei May 14 '11 at 16:38
This is game code and while double would solve the problem as stated, I'm doing this calculation for texture rendering and a double would probably add a performance hit. The problem is, the rounding is causing one pixel offset in the textures. –  Nick Gotch May 14 '11 at 16:51
It is your debugger that's rounding the value. –  Hans Passant May 14 '11 at 16:56
@Nick - Maybe if you show us the code causing the 1-pixel error, we can help you with that (as a separate question, probably...) –  Dietrich Epp May 14 '11 at 16:56
Don't be too sure that `double`s would cause a performance hit. On many systems when you use `float` it actually converts everything to `double`, does all the math, then converts backs to `float` -- so it's actually doing more work when you use `float`. –  QuantumMechanic May 14 '11 at 16:56

Well, here's one problem. The value of `511/512`, as a `float`, is exact. No rounding is done. You can check this by asking for more than seven digits:

``````#include <stdio.h>
int main(int argc, char *argv[])
{
float x = 511.0f, y = 512.0f;
printf("%.15f\n", x/y);
return 0;
}
``````

Output:

``````0.998046875000000
``````

A `float` is stored not as a decimal number, but binary. If you divide a number by a power of 2, such as 512, the result will almost always be exact. What's going on is the precision of a `float` is not simply 7 digits, it is really 23 bits of precision.

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24 bits due to the fact that it is possible to get one more bit by keeping the number normalized. –  AProgrammer May 14 '11 at 17:00
Exactly. The only rounding that occurs in the questioners' example is when he prints out the value. And like @AProgrammer said, it has 24 bits of precision. –  Stephen Canon May 14 '11 at 17:01
This answers this question even though I still have the pixel offset problem in my original code, but thats for the help! –  Nick Gotch May 14 '11 at 17:09
Mathematically, it's 7.22 decimal digits of precision, however, due to digit slicing, it is necessary to use up to 9 decimal digits to represent a particular float. See my answer here –  ThomasMcLeod May 14 '11 at 17:27
@ThomasMcLeod, 6.92, not 7.22. For instance 0x1.0624d2p-10=9.99999349e-04 and 0x1.0624d4p-10=9.99999465e-04 are two successives float, so representing 9.999994e-04 is problematic. –  AProgrammer May 15 '11 at 7:22

I also know that the precision of floats is 7 digits.

No. The most common floating point format is binary and has a precision of 24 bits. It is somewhere between 6 and 7 decimal digits but you can't think in decimal if you want to understand how rounding work.

As b is a power of 2, c is exactly representable. It is during the conversion in a decimal representation that rounding will occurs. The standard ways of getting a decimal representation don't offer the possibility to use truncation instead of rounding. One way would be to ask for one more digit and ignore it.

But note that the fact that c is exactly representable is a property of its value. SOme apparently simpler values (like 0.1) don't have an exact representation in binary FP formats.

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24 bits of precision is not "between 6 and 7 decimal digits" because the range 0 to 2^24-1 equals 0 to 16777215 so the right answer is between 7 and 8 digits since 7 digits (9999999) is obviously less than 16777215 and 8 digits (99999999) is obviously more than 16777215. –  Olof Forshell May 17 '11 at 11:33
@Olof, 0x1.0624d2p-10=9.99999349e-04 and 0x1.0624d4p-10=9.99999465e-04 are two successives float, so representing 9.999994e-04 is problematic and you don't have 7 decimal digits of precision. –  AProgrammer May 17 '11 at 11:39
@OlofForshell, your analysis is straightforward but incorrect. Because the binary values and decimal values don't line up precisely, it's possible to skip a value even though the range is larger. It takes a range 2x what you think you need in order to eliminate this possibility, thus you lose a bit. –  Mark Ransom Dec 15 '11 at 22:44
@Mark Ransom: 16777215 is the largest odd integer that may be represented as a float. This is because it corresponds to 2^24-1 i e contains binary ones in a row which corresponds to the 24 (23 explicit + 1 implicit) bits in the float significand. Beginning with 16777216 every other integer may be represented up to 2^25-2. Actually the ranges are "0 to 2^24-2^0 by 2^0" followed by "2^24 to 2^25-2^1 by 2^1", "2^25 to 2^26-2^2 by 2^2" and so on. –  Olof Forshell Dec 16 '11 at 15:40

That 'rounded' value is most likley what is displayed through some output method rather than what is actually stored. Check the actual value in your debugger.

With iostream and stdio, you can specify the precision of the output. If you specify 7 significant digits, convert it to a string, then truncate the string before display you will get the output without rounding.

Can't think of one reason why you would want to do that however, and given the subseqent explanation of teh application, you'd be better off using double precision, though that will most likely simply shobe problems to somewhere else.

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If you are just interested in the value, you could use double and then multiply the result by 10^6 and floor it. Divide again by 10^6 and you will get the truncated value.

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Your question is not unique, it has been answered numerous times before. This is not a simple topic and just because answers are posted doesn't necessarily mean they'll be of good quality. If you browse a little you'll find the really good stuff. And it will take you less time.

I bet someone will -1 me for commenting and not answering.

_____ Edit _____

What is fundamental to understanding floating point is to realize that everything is displayed in binary digits. Because most people have trouble grasping this they try to see it from the point of view of decimal digits.

On the subject of 511/512 you can start by looking at the value 1.0. In floating point this could be expressed as i.000000... * 2^0 or implicit bit set (to 1) multiplied by 2^0 ie equals 1. Since 511/512 is less than 1 you need to start with the next lower power -1 giving i.000000... * 2^-1 i e 0.5. Notice that the only thing that has changed is the exponent. If we want to express 511 in binary we get 9 ones - 111111111 or in floating point with implicit bit i.11111111 - which we can divide by 512 and put together with the exponent of -1 giving i.1111111100... * 2^-1.

How does this translate to 0.998046875?

Well to begin with the implicit bit represents 0.5 (or 2^-1), the first explicit bit 0.25 (2^-2), the next explicit bit 0.125 (2^-3), 0.0625, 0.03125 and so on until you've represented the ninth bit (eighth explicit). Sum them up and you get 0.998046875. From the i.11111111 we find that this number represents 9 binary digits of precision and, coincidentally, 9 decimal precision.

If you multiply 511/512 by 512 you will get i1111111100... * 2^8. Here there are the same nine binary digits of precision but only three decimal digits (for 511).

Consider i.11111111111111111111111 (i + 23 ones) * 2^-1. We will get a fraction (2^(24-1)^/(2^24))with 24 binary and 24 decimal digits of precision. Given an appropriate printf formatting all 24 decimal digits will be displayed. Multiply it by 2^24 and you still have 24 binary digits of precision but only 8 decimal (for 16777215).

Now consider i.1111100... * 2^2 which comes out to 7.875. i11 is the integer part and 111 the fraction part (111/1000 or 7/8ths). 6 binary digits of precision and 4 decimal.

Thinking decimal when doing floating-point is utterly detrimental to understanding it. Free yourself!

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+1 for "This is not a simple topic" –  user79878 Jun 6 '11 at 17:18
-1 for a text that can be reused verbatim under many questions. –  Evgeni Sergeev Apr 21 at 7:22
@EvgeniSergeev: Help youself! This is about some of the intricacies of floating-point math. From my personal experience on the subject and considering that more or less the same questions are posted over and over again I'd say that this is a topic that ranks well above average in complexity or, perhaps, perceived complexity. Those who answer often seem to be most interested in points but have relatively little actual subject knowledge to share - it is often incorrect too. –  Olof Forshell Apr 21 at 8:45
@OlofForshell I guess the idea is that you should be specific, and you can be here, by downvoting and commenting on incorrect answers. I'm not saying it's up to you to do that alone, but over time the community will bring the more correct and useful answers to the top. It's a good feature of this site, that it would still work well even if this page was flooded with incorrect answers. –  Evgeni Sergeev Apr 21 at 16:10