# Is floating point math broken?

``````> 0.1 + 0.2 == 0.3
false

> 0.1 + 0.2
0.30000000000000004
``````

Any ideas why this happens?

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Floating point variables typically have this behaviour. It's caused by how they are stored in hardware. For more info check out the Wikipedia article on floating point numbers. –  Benoit Feb 25 '09 at 21:41
JavaScript treats decimals as floating point numbers, which means operations like addition might be subject to rounding error. You might want to take a look at this article: What Every Computer Scientist Should Know About Floating-Point Arithmetic –  matt b Feb 25 '09 at 21:42
This might be something obvious to some people, but not to javascript users like myself that just expect simple addition to work. Nobody ever told ME this, and I studied CS in Belgium ..., It might be correct according to the standard, but it seems very crappy and confusing to me. –  Mvision Jun 5 '12 at 9:45
It's not obvious, @Mvision; it's just well-trod ground. Anyone who has to program with floating-point numbers should, first, know what the heck floating-point numbers are, including their limitations. As for "crappy and confusing": if you're designing a programming system, you have to pick some mechanism for storing non-integer values. As with most things in life, there is no one ideal solution, but rather several to pick from, each with advantages and disadvantages. Due to the particular trade-offs involved, floating-point is the most popular choice in modern systems. –  Mark Reed Sep 9 '12 at 14:55
Hooray! We now have a comic to link to every time this question is asked! –  mob Jun 5 '13 at 20:37

All floating point math is like this and is based on the IEEE 754 standard. JavaScript uses 64-bit floating point representation, which is the same as Java's `double`.

You should never compare with `==` but instead compare the absolute value of their differences, and make sure that this difference is smaller than the Epsilon value, which is a very very small number.

``````x = 0.2;
y = 0.3;
equal = (Math.abs(x - y) < 0.000001)
``````

For the exact reason why, please read What Every Computer Scientist Should Know About Floating-Point Arithmetic. For an easier-to-digest explanation, see floating-point-gui.de.

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'Some error constant' also known as an Epsilon value. –  Gary Willoughby Apr 9 '10 at 12:47
I think "some error constant" is more correct than "The Epsilon" because there is no "The Epsilon" which could be used in all cases. Different epsilons need to be used in different situations. And the machine epsilon is almost never a good constant to use. –  Rotsor Sep 4 '10 at 23:33
@Rotsor couldn't agree more. I think linking to machine epsilon adds confusion - it's really something else. –  Peter Sep 5 '10 at 2:10
It's not quite true that all floating-point math is based on the IEEE [754] standard. There are still some systems in use that have the old IBM hexadecimal FP, for example, and there are still graphics cards that don't support IEEE-754 arithmetic. It's true to a reasonably approximation, however. –  Stephen Canon Jan 3 '13 at 23:36
Cray ditched IEEE-754 compliance for speed. Java loosened its adherence as an optimization as well. –  Art Taylor Feb 12 '13 at 3:12

# A Hardware Designer's Perspective

I believe I should add a hardware designer’s perspective to this since I design and build floating point hardware. Knowing the origin of the error may help in understanding what is happening in the software, and ultimately, I hope this helps explain the reasons for why floating point errors happen, and seem to accumulate over time.

## 1. Overview

From an engineering perspective, most floating point operations will have some element of error since the hardware that does the floating point computations is only required to have an error of less than one half of one unit in the last place. Therefore, much hardware will stop at a precision that's only necessary to yield an error of less than one half of one unit in the last place for a single operation which is especially problematic in floating point division. What constitutes a single operation depends upon how many operands the unit takes. For most, it is two, but some units take 3 or more operands. Because of this, there is no guarantee that repeated operations will result in a desirable error since the errors add up over time.

## 2. Standards

Most processors follow the IEEE-754 standard but some use denormalized, or different standards . For example, there is a denormalized mode in IEEE-754 which allows representation of very small floating point numbers at the expense of precision. The following however, will cover the normalized mode of IEEE-754 which is the typical mode of operation.

In the IEEE-754 standard, hardware designers are allowed any value of error/epsilon as long as it's less than one half of one unit in the last place, and the result only has to be less than one half of one unit in the last place for one operation. This explains why when there are repeated operations, the errors add up. For IEEE-754 double precision, this is the 54th bit, since 53 bits are used to represent the numeric part (normalized), also called the mantissa, of the floating point number (e.g. the 5.3 in 5.3e5). The next sections go into more detail on the causes of hardware error on various floating point operations.

## 3. Cause of Rounding Error in Division

The main cause of the error in floating point division, are the division algorithms used to calculate the quotient. Most computer systems calculate division using multiplication by an inverse, mainly in Z=X/Y, Z = X * (1/Y). Division is computed iteratively i.e. each cycle computes some bits of the quotient until the desired precision is reached, which for IEEE-754 is anything with an error of less than one unit in the last place. The table of reciprocals of Y (1/Y) is known as the quotient selection table (QST) in slow division, and the size in bits of the quotient selection table is usually the width of the radix, or number of bits of the quotient computed in each iteration, plus a few guard bits. For the IEEE-754 standard, double precision (64-bit), it would be the size of the radix of the divider, plus a few guard bits k, where k>=2. So for example, a typical Quotient Selection Table for a divider that computes 2 bits of the quotient at a time (radix 4) would be 2+2= 4 bits (plus a few optional bits).

3.1 Division Rounding Error: Approximation of Reciprocal

What reciprocals are in the quotient selection table depend on the division method: slow division such as SRT division, or fast division such as Goldschmidt division; each entry is modified according to the division algorithm in an attempt to yield the lowest possible error. In any case though, all reciprocals are approximations of the actual reciprocal, and introduce some element of error. Both slow division and fast division methods calculate the quotient iteratively, i.e. some number of bits of the quotient are calculated each step, then the result is subtracted from the dividend, and the divider repeats the steps until the error is less than one half of one unit in the last place. Slow division methods calculate a fixed number of digits of the quotient in each step and are usually less expensive to build, and fast division methods calculate a variable number of digits per step and are usually more expensive to build. The most important part of the division methods is that most of them rely upon repeated multiplication by an approximation of a reciprocal, so they are prone to error.

## 4. Rounding Errors in Other Operations: Truncation

Another cause of the rounding errors in all operations are the different modes of truncation of the final answer that IEEE-754 allows. There's truncate, round-towards-zero, round-to-nearest (default), round-down, and round-up. All methods introduce an element of error of less than one half of one unit in the last place for a single operation. Over time and repeated operations, truncation also adds cumulatively to the resultant error. This truncation error, is especially problematic in exponentiation, which involves some form of repeated multiplication.

## 5. Repeated Operations

Since the hardware that does the floating point calculations only needs to yield a result with an error of less than one half of one unit in the last place for a single operation, the error will grow over repeated operations if not watched. This is the reason that in computations that require a bounded error, mathematicians use methods such as using the round-to-nearest even digit in the last place of IEEE-754, because over time, the errors are more likely to cancel each other out, and Interval Arithmetic combined with variations of the IEEE 754 rounding modes to predict rounding errors, and correct them. Because of its low relative error compared to other rounding modes, round to nearest even digit (in the last place), is the default rounding mode of IEEE-754.

Note that the default rounding mode, round-to-nearest even digit in the last place, guarantees an error of less than one half of one unit in the last place for one operation. Using the truncation, round-up, and round down alone may result in an error that is greater than one half of one unit in the last place, but less than one unit in the last place, so these modes are not recommended unless they are used in Interval Arithmetic.

## 6. Summary

In short, the fundamental reason for the errors in floating point operations is a combination of the truncation in hardware, and the truncation of a reciprocal in the case of division. Since the IEEE-754 standard only requires an error of less than one half of one unit in the last place for a single operation, the floating point errors over repeated operations will add up unless corrected.

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(3) is wrong. The rounding error in a division is not less than one unit in the last place, but at most half a unit in the last place. –  gnasher729 Apr 23 at 22:31
@gnasher729 Good catch. Most basic operations also have en error of less than 1/2 of one unit in the last place using the default IEEE rounding mode. Edited the explanation, and also noted that the error may be greater than 1/2 of one ulp but less than 1 ulp if the user overrides the default rounding mode (this is especially true in embedded systems). –  KernelPanik Apr 24 at 11:17
(1) Floating point numbers do not have error. Every floating point value is exactly what it is. Most (but not all) floating point operations give inexact results. For example, there is no binary floating point value that is exactly equal to 1.0/10.0. Some operations (e.g., 1.0 + 1.0) do give exact results on the other hand. –  james large Jun 10 at 16:31
@james large Thanks for catching that. I edited the reply to clarify that most floating point operations have an error less than 1/2 of one ulp. There are some special cases where the result can be exact (like adding zero). –  KernelPanik Jun 11 at 10:58

Floating point rounding errors. 0.1 cannot be represented as accurately in base-2 as in base-10 due to the missing prime factor of 5. Just as 1/3 takes an infinite number of digits to represent in decimal, but is "0.1" in base-3, 0.1 takes an infinite number of digits in base-2 where it does not in base-10. And computers don't have an infinite amount of memory.

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computers don't need an infinite amount of memory to get 0.1 + 0.2 = 0.3 right –  Pacerier Oct 15 '11 at 16:27
@Pacerier Sure, they could use two unbounded-precision integers to represent a fraction, or they could use quote notation. It's the specific notion of "binary" or "decimal" that makes this impossible -- the idea that you have a sequence of binary/decimal digits and, somewhere in there, a radix point. To get precise rational results we'd need a better format. –  Devin Jeanpierre Oct 15 '11 at 19:45
@Pacerier: Neither binary nor decimal floating-point can precisely store 1/3 or 1/13. Decimal floating-point types can precisely represent values of the form M/10^E, but are less precise than similarly-sized binary floating-point numbers when it comes to representing most other fractions. In many applications, it's more useful to have higher precision with arbitrary fractions than to have perfect precision with a few "special" ones. –  supercat Apr 24 at 16:43
@Pacerier They do if they're storing the numbers as binary floats, which was the point of the answer. –  Mark Amery Aug 14 at 22:04

When you convert .1 or 1/10 to base 2 (binary) you get a repeating pattern after the decimal point, just like trying to represent 1/3 in base 10. The value is not exact, and therefore you can't do exact math with it using normal floating point methods.

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Great and short answer. Repeating pattern looks like 0.00011001100110011001100110011001100110011001100110011... –  Koka Chernov Jun 16 '12 at 14:22

In addition to the other correct answers, you may want to consider scaling your values to avoid problems with floating-point arithmetic.

For example:

``````var result = 1.0 + 2.0;     // result === 3.0 returns true
``````

``````var result = 0.1 + 0.2;     // result === 0.3 returns false
``````

The expression `0.1 + 0.2 === 0.3` returns `false` in JavaScript, but fortunately integer arithmetic in floating-point is exact, so decimal representation errors can be avoided by scaling.

As a practical example, to avoid floating-point problems where accuracy is paramount, it is recommended1 to handle money as an integer representing the number of cents: `2550` cents instead of `25.50` dollars.

1 Douglas Crockford: JavaScript: The Good Parts: Appendix A - Awful Parts (page 105).

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The problem is that the conversion itself is inaccurate. 16.08 * 100 = 1607.9999999999998. Do we have to resort to splitting the number and converting separately (as in 16 * 100 + 08 = 1608)? –  Jason Oct 7 '11 at 19:13
The solution here is to do all your calculations in integer then divide by your proportion (100 in this case) and round only when presenting the data. That will ensure that your calculations will always be precise. –  David Granado Dec 8 '11 at 21:38

A solution to tidy up the unsightly overflow

``````function strip(number) {
return (parseFloat(number.toPrecision(12)));
}
``````

Using 'toPrecision(12)' leaves trailing zeros which 'parseFloat()' removes. Assume it is accurate to plus/minus one on the least significant digit.

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This is the correct answer. Thank you!!! –  Vincil Bishop Aug 28 at 23:39

Floating point rounding error. From What Every Computer Scientist Should Know About Floating-Point Arithmetic:

Squeezing infinitely many real numbers into a finite number of bits requires an approximate representation. Although there are infinitely many integers, in most programs the result of integer computations can be stored in 32 bits. In contrast, given any fixed number of bits, most calculations with real numbers will produce quantities that cannot be exactly represented using that many bits. Therefore the result of a floating-point calculation must often be rounded in order to fit back into its finite representation. This rounding error is the characteristic feature of floating-point computation.

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My workaround:

``````function add(a, b, precision) {
var x = Math.pow(10, precision || 2);
return (Math.round(a * x) + Math.round(b * x)) / x;
}
``````

precision refers to the number of digits you want to preserve after the decimal point during addition.

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All numbers in JavaScript are represented in binary as IEEE-754 Doubles, which provides an accuracy to about 14 or 15 significant digits. Because they are floating point numbers, they do not always exactly represent real numbers, including fractions.

JavaScript syntax: Number

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I found a solution you can use this function to parse floats correctly also you can set your own precision

``````function getFloat(int) {
var num = new Number(int);
return parseFloat(num.toPrecision(2));
}
``````
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The question isn't about parsing floats! –  rvighne Feb 8 at 2:57
Yeah, but this happened to solve my specific issue so I am up-voting it =) –  njfife May 15 at 21:33

Did you try the duct tape solution?

Try to determine when errors occur and fix them with short if statements, it's not pretty but for some problems it is the only solution and this is one of them.

`````` if( (n * 0.1) < 100.0 ) { return n * 0.1 - 0.000000000000001 ;}
else { return n * 0.1 + 0.000000000000001 ;}
``````

I had the same problem in a scientific simulation project in c#, and I can tell you that if you ignore the butterfly effect it's gonna turn to a big fat dragon and bite you in the a**

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Those weird numbers appear because computers use binary(base 2) number system for calculation purposes, while we use decimal(base 10).

There are a majority of fractional numbers that cannot be represented precisely either in binary or in decimal or both. Result - A rounded up (but precise) number results.

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For those reading through this thread looking to get precision to a specific number of decimal places and not numbers, instead of num.toPrecision(2) you can use num.toFixed(2).

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