We know that using double for currency is error-prone and not recommended. However, I'm yet to see a realistic example, where BigDecimal works while double fails and can't be simply fixed by some rounding.

Note that trivial problems

double total = 0.0;
for (int i = 0; i < 10; i++) total += 0.1;
for (int i = 0; i < 10; i++) total -= 0.1;
assertTrue(total == 0.0);

don't count as they're trivially solved by rounding (in this example anything from zero to sixteen decimal places would do).

Computations involving summing big values may need some intermediate rouding, but given the total currency in circulation being USD 1e12, Java double (i.e., the standard IEEE double precision) with its 15 decimal digits is still sufficient event for cents.

Computations involving division are in general imprecise even with BigDecimal. I can construct a computation which can't be performed with doubles, but can be performed with BigDecimal using a scale of 100, but it's not something you can encounter in reality.

I don't claim that such a realistic example does not exist, it's just that I haven't seen it yet.

I also surely agree, that using double is more error-prone.


What I'm looking for is a method like the following (based on the answer by Roland Illig)

  * Given an input which has three decimal places,
  * round it to two decimal places using HALF_EVEN.
BigDecimal roundToTwoPlaces(BigDecimal n) {
    // To make sure, that the input has three decimal places.
    checkArgument(n.scale() == 3);
    return n.round(new MathContext(2, RoundingMode.HALF_EVEN));

together with a test like

public void testRoundToTwoPlaces() {
    final BigDecimal n = new BigDecimal("0.615");
    final BigDecimal expected = new BigDecimal("0.62");
    final BigDecimal actual = roundToTwoPlaces(n);
    Assert.assertEquals(expected, actual);

When this gets naively rewritten using double, then the test could fail (it doesn't for the given input, but it does for others). However, it can be done correctly:

static double roundToTwoPlaces(double n) {
    final long m = Math.round(1000.0 * n);
    final double x = 0.1 * m;
    final long r = (long) Math.rint(x);
    return r / 100.0;

It's ugly and error-prone (and can probably be simplified), but it can be easily encapsulated somewhere. That's why I'm looking for more answers.

  • 2
    My understanding is that some (most?) countries legally require accounting and financial related math to be done in some form of decimal based math, following some specific rules about rounding and specify how many digits past the decimal point are to be used. – rcgldr Mar 18 '17 at 7:21
  • 1
    Well what do you consider realistic exactly? You mention total currency in circulation of ~1 trillion, but clearly calculations involving "money" need to deal with non-physical amounts which often greatly exceed paper money floating around. For example, the GDP of the world is > 1e14, and I can certainly imagine other monetary figures with much larger values. So can an example use large numbers like 1e16? – BeeOnRope Jun 18 '17 at 19:21
  • In particular "an expression suffering from round-off errors doesn't count" is a confusing requirement: you could position any inaccuracy in a floating point result as being related to "round off errors". Perhaps it would help to give an example of the type of method which you are looking for (even if it does work with double). – BeeOnRope Jun 18 '17 at 19:25
  • 1
    @maaartinus - even though I think using "realistic" leaves a lot of wiggle room and makes it technically undefined, you've made it clear enough for me to take a shot at an answer, anyway. – BeeOnRope Jun 21 '17 at 5:21
  • 1
    @GhostCat I've just accepted an answer, though I'm not really satisfied with it. My question turned out to be more complicated than I thought. – maaartinus Jan 12 '18 at 12:44

I can see four basic ways that double can screw you when dealing with currency calculations.

Mantissa Too Small

With ~15 decimal digits of precision in the mantissa, you are you going to get the wrong result any time you deal with amounts larger than that. If you are tracking cents, problems would start to occur before 1013 (ten trillion) dollars.

While that's a big number, it's not that big. The US GDP of ~18 trillion exceeds it, so anything dealing with country or even corporation sized amounts could easily get the wrong answer.

Furthermore, there are plenty of ways that much smaller amounts could exceed this threshold during calculation. You might be doing a growth projection or a over a number of years, which results in a large final value. You might be doing a "what if" scenario analysis where various possible parameters are examined and some combination of parameters might result in very large values. You might be working under financial rules which allow fractions of a cent which could chop another two orders of magnitude or more off of your range, putting you roughly in line with the wealth of mere individuals in USD.

Finally, let's not take a US centric view of things. What about other currencies? One USD is worth is worth roughly 13,000 Indonesian Rupiah, so that's another 2 orders of magnitude you need to track currency amounts in that currency (assuming there are no "cents"!). You're almost getting down to amounts that are of interest to mere mortals.

Here is an example where a growth projection calculation starting from 1e9 at 5% goes wrong:

method   year                         amount           delta
double      0             $ 1,000,000,000.00
Decimal     0             $ 1,000,000,000.00  (0.0000000000)
double     10             $ 1,628,894,626.78
Decimal    10             $ 1,628,894,626.78  (0.0000004768)
double     20             $ 2,653,297,705.14
Decimal    20             $ 2,653,297,705.14  (0.0000023842)
double     30             $ 4,321,942,375.15
Decimal    30             $ 4,321,942,375.15  (0.0000057220)
double     40             $ 7,039,988,712.12
Decimal    40             $ 7,039,988,712.12  (0.0000123978)
double     50            $ 11,467,399,785.75
Decimal    50            $ 11,467,399,785.75  (0.0000247955)
double     60            $ 18,679,185,894.12
Decimal    60            $ 18,679,185,894.12  (0.0000534058)
double     70            $ 30,426,425,535.51
Decimal    70            $ 30,426,425,535.51  (0.0000915527)
double     80            $ 49,561,441,066.84
Decimal    80            $ 49,561,441,066.84  (0.0001678467)
double     90            $ 80,730,365,049.13
Decimal    90            $ 80,730,365,049.13  (0.0003051758)
double    100           $ 131,501,257,846.30
Decimal   100           $ 131,501,257,846.30  (0.0005645752)
double    110           $ 214,201,692,320.32
Decimal   110           $ 214,201,692,320.32  (0.0010375977)
double    120           $ 348,911,985,667.20
Decimal   120           $ 348,911,985,667.20  (0.0017700195)
double    130           $ 568,340,858,671.56
Decimal   130           $ 568,340,858,671.55  (0.0030517578)
double    140           $ 925,767,370,868.17
Decimal   140           $ 925,767,370,868.17  (0.0053710938)
double    150         $ 1,507,977,496,053.05
Decimal   150         $ 1,507,977,496,053.04  (0.0097656250)
double    160         $ 2,456,336,440,622.11
Decimal   160         $ 2,456,336,440,622.10  (0.0166015625)
double    170         $ 4,001,113,229,686.99
Decimal   170         $ 4,001,113,229,686.96  (0.0288085938)
double    180         $ 6,517,391,840,965.27
Decimal   180         $ 6,517,391,840,965.22  (0.0498046875)
double    190        $ 10,616,144,550,351.47
Decimal   190        $ 10,616,144,550,351.38  (0.0859375000)

The delta (difference between double and BigDecimal first hits > 1 cent at year 160, around 2 trillion (which might not be all that much 160 years from now), and of course just keeps getting worse.

Of course, the 53 bits of Mantissa mean that the relative error for this kind of calculation is likely to be very small (hopefully you don't lose your job over 1 cent out of 2 trillion). Indeed, the relative error basically holds fairly steady through most of the example. You could certainly organize it though so that you (for example) subtract two various with loss of precision in the mantissa resulting in an arbitrarily large error (exercise up to reader).

Changing Semantics

So you think you are pretty clever, and managed to come up with a rounding scheme that lets you use double and have exhaustively tested your methods on your local JVM. Go ahead and deploy it. Tomorrow or next week or whenever is worst for you, the results change and your tricks break.

Unlike almost every other basic language expression and certainly unlike integer or BigDecimal arithmetic, by default the results of many floating point expressions don't have a single standards defined value due to the strictfp feature. Platforms are free to use, at their discretion, higher precision intermediates, which may result in different results on different hardware, JVM versions, etc. The result, for the same inputs, may even vary at runtime when the method switches from interpreted to JIT-compiled!

If you had written your code in the pre-Java 1.2 days, you'd be pretty pissed when Java 1.2 suddenly introduces the now-default variable FP behavior. You might be tempted to just use strictfp everywhere and hope you don't run into any of the multitude of related bugs - but on some platforms you'd be throwing away much of the performance that double bought you in the first place.

There's nothing to say that the JVM spec won't again change in the future to accommodate further changes in FP hardware, or that the JVM implementors won't use the rope that the default non-strictfp behavior gives them to do something tricky.

Inexact Representations

As Roland pointed out in his answer, a key problem with double is that it doesn't have exact representations for some most non-integer values. Although a single non-exact value like 0.1 will often "roundtrip" OK in some scenarios (e.g., Double.toString(0.1).equals("0.1")), as soon as you do math on these imprecise values the error can compound, and this can be irrecoverable.

In particular, if you are "close" to a rounding point, e.g., ~1.005, you might get a value of 1.00499999... when the true value is 1.0050000001..., or vice-versa. Because the errors go in both directions, there is no rounding magic that can fix this. There is no way to tell if a value of 1.004999999... should be bumped up or not. Your roundToTwoPlaces() method (a type of double rounding) only works because it handled a case where 1.0049999 should be bumped up, but it will never be able to cross the boundary, e.g., if cumulative errors cause 1.0050000000001 to be turned into 1.00499999999999 it can't fix it.

You don't need big or small numbers to hit this. You only need some math and for the result to fall close to the boundary. The more math you do, the larger the possible deviations from the true result, and the more chance of straddling a boundary.

As requested here a searching test that does a simple calculation: amount * tax and rounds it to 2 decimal places (i.e., dollars and cents). There are a few rounding methods in there, the one currently used, roundToTwoPlacesB is a souped-up version of yours1 (by increasing the multiplier for n in the first rounding you make it a lot more sensitive - the original version fails right away on trivial inputs).

The test spits out the failures it finds, and they come in bunches. For example, the first few failures:

Failed for 1234.57 * 0.5000 = 617.28 vs 617.29
Raw result : 617.2850000000000000000000, Double.toString(): 617.29
Failed for 1234.61 * 0.5000 = 617.30 vs 617.31
Raw result : 617.3050000000000000000000, Double.toString(): 617.31
Failed for 1234.65 * 0.5000 = 617.32 vs 617.33
Raw result : 617.3250000000000000000000, Double.toString(): 617.33
Failed for 1234.69 * 0.5000 = 617.34 vs 617.35
Raw result : 617.3450000000000000000000, Double.toString(): 617.35

Note that the "raw result" (i.e., the exact unrounded result) is always close to a x.xx5000 boundary. Your rounding method errs both on the high and low sides. You can't fix it generically.

Imprecise Calculations

Several of the java.lang.Math methods don't require correctly rounded results, but rather allow errors of up to 2.5 ulp. Granted, you probably aren't going to be using the hyperbolic functions much with currency, but functions such as exp() and pow() often find their way into currency calculations and these only have an accuracy of 1 ulp. So the number is already "wrong" when it is returned.

This interacts with the "Inexact Representation" issue, since this type of error is much more serious than that from the normal mathematic operations which are at least choosing the best possible value from with the representable domain of double. It means that you can have many more round-boundary crossing events when you use these methods.

  • 1
    Mantissa Too Small - there's nothing I could do (apart from simulating something like. BigDecimal. Changing Semantics - this can be solved by rounding twice: First to a number of decimals the exact result can have (e.g., 1.23 * 45.678 to five decimals) and then rounding the result to the desired precision. Inexact Representations - solvable by double rounding, too (I'll post details if you want), as it removes any excess precision. Imprecise Calculations - apart from pow, they're missing from BigDecimal, too. And BigDecimal.pow is imprecise (>1 ulp), too. – maaartinus Jun 21 '17 at 19:51
  • All that said, I like your answer most... though I prefer a single problem I could solve or not. I'll try on the parts requiring double rounding. Btw., later I've found out that round is useless as it rounds towards +INF, rint is the way to go. I guess, it could need some benchmark, too, as double rounding could be a bit costly. – maaartinus Jun 21 '17 at 20:01
  • @maar I think I explained above why double rounding can't solve the inexact representation problem: the information about the true value of the expression that produced the value has been lost. Sure you can write code that rounds 1.0049999999 to 1.01, but that code can't know whether it should instead round it to 1.00 because the exact value was actually < 1.005. I.e. it has to produce different values for the same input so it isn't even a function! – BeeOnRope Jun 21 '17 at 20:05
  • @maartinus - yeah, the main "solvable" (or not) problem is the inexact representation one. That's the crux of my reply (the mantissa bits one is interesting but as you point out there's not much you can do about it). I'll be interested to see what you come up with for the double rounding. Note that from one point of view your job is harder than mine - you have to come up with a function that works for all values, not just one case. I only need one counter-example. OTOH sometimes the counter-example is hard to find! – BeeOnRope Jun 21 '17 at 20:10
  • But how did you come to 1.0049999999? Was it maybe something like 0.1 + 0.2 + 0.3 + 0.2 * 2.025? Then you know that by rounding to three places you get (the best approximation of) the exact value 1.005. Sure, this information is to be supplied by the optimizing programmer. In order to obtain two decimals from three, my doubly-rounding method does rint(rint(1000 * a) / 10) / 100. It can't work for all values, but it works, when 1. you know how many decimals the exact result has, 2. there isn't too much precision already lost. – maaartinus Jun 21 '17 at 20:21

When you round double price = 0.615 to two decimal places, you get 0.61 (rounded down) but probably expected 0.62 (rounded up, because of the 5).

This is because double 0.615 is actually 0.6149999999999999911182158029987476766109466552734375.

  • Interesting. And 0.615 can be obtained e.g. from 1.23 with 50% off. However, with round(1.23*.5 * 1e2) / 1e2, I get 0.62, so my addendum to your example doesn't work. +++ Anyway, I believe, 1. it can be made work, but 2. the rounding problem can be solved, and 3. it may get pretty complicated. – maaartinus Mar 18 '17 at 7:51
  • Just loop over all numbers between 0.0000 and 10.0000 to see whether they all behave consistently. Also, when your methods are not marked as strictfp, you may get different results after the code has been optimized. – Roland Illig Mar 18 '17 at 7:57
  • 10% of 21.15 should be 2.12 but Math.round((21.15*.1)*1e2)/1e2 yields 2.11 so be assured cases exist. Anyway, these cases can be handled properly when taking into account that they only occur after multiplying an amount with some factor and that you generally also know how many decimal digits an exact result of such multiplication would have at maximum. – Markus Benko Mar 20 '17 at 21:06
  • I actually do get 0.62. This is probably just an incident, but I'd bet, I can get correctly rounded for any such input (assuming a sane input range). – maaartinus Jun 19 '17 at 1:34
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    @maartinus You are measuring something else. When you multiply with 100, the bit pattern of the mantissa changes. The general problem stays the same. – Roland Illig Jun 19 '17 at 6:19

The main problems you are facing in practice are related to the fact that round(a) + round(b) is not necessarily equal to round(a+b). By using BigDecimal you have fine control over the rounding process and can therefore make your sums come out correctly.

When you calculate taxes, say 18 % VAT, it is easy to get values that have more than two decimal places when represented exactly. So rounding becomes an issue.

Lets assume you buy 2 articles for $ 1.3 each

Article  Price  Price+VAT (exact)  Price+VAT (rounded)
A        1.3    1.534              1.53
B        1.3    1.534              1.53
sum      2.6    3.068              3.06
exact rounded   3.07

So if you do the calculations with double and only round to print the result, you would get a total of 3.07 while the amount on the bill should actually be 3.06.

  • Right, but a monetary input is already rounded, so when rounding the result, I do get the exact value. +++ With 18% VAT, I have to round to four decimal places instead of two. This is something you must consider with BigDecimal, too. – maaartinus Mar 18 '17 at 7:15
  • The error occurs because of the intermediate rounding and can be avoided by rounding just once: round((1.3 * 1.18 + 1.3 * 1.18) * 1e2) / 1e2. – maaartinus Mar 18 '17 at 7:53
  • Yes sure, that's exactly the point since you may be forced to show rounded intermediate results on the bill. Therefore the mathematically more exact result (3.07 in the example) seems wrong. – Henry Mar 18 '17 at 7:57
  • But I can get the other result, too, and the logic is trivial. Whenever I'm forced to show a value with which I should compute further, I replace the inexact value by the rounded value: a = round((1.3 * 1.18) * 1e2) / 1e2; a+a. – maaartinus Mar 18 '17 at 8:09
  • Indeed, financial calculations such as these are generally rounded at very specific times and in a very specific manner (or you get Superman III). – Sneftel Mar 18 '17 at 17:19

Let's give a "less technical, more philosophical" answer here: why do you think that "Cobol" isn't using floating point arithmetic when dealing with currency?!

("Cobol" in quotes, as in: existing legacy approaches to solve real world business problems).

Meaning: almost 50 years ago, when people started using computers for business aka financial work, they quickly realized that "floating point" representation isn't going to work for the financial industry (maybe expect some rare niche corners as pointed out in the question).

And keep in mind: back then, abstractions were truly expensive! It was expensive enough to have a bit here and and a register there; and still it quickly become obvious to the giants on whose shoulders we stand ... that using "floating points" would not solve their problems; and that they had to rely on something else; more abstract - more expensive!

Our industry had 50+ years to come up with "floating point that works for currency" - and the common answer is still: don't do it. Instead, you turn to solutions such as BigDecimal.


You don't need an example. You just need fourth-form mathematics. Fractions in floating-point are represented in binary radix, and binary radix is incommensurable with decimal radix. Tenth grade stuff.

Therefore there will always be rounding and approximation, and neither is acceptable in accounting in any way, shape, or form. The books have to balance to the last cent, and so FYI does a bank branch at the end of each day, and the entire bank at regular intervals.

an expression suffering from round-off errors doesn't count'

Ridiculous. This is the problem. Excluding rounding errors excludes the entire problem.

  • I've already explained that I'm not excluding rounding as problem. What I'm excluding is an example consisting of something like "Look ma, 1.0-0.9 returns 0.099999. We must use BigDecimal". Given some limits, the rounding errors are provably fixable by final rounding like here. – maaartinus Jun 19 '17 at 1:30
  • I quoted you accurately. FP Rounding problems are fixable with a great deal of trouble that most programmers don't know about, and that already takes place inside BIgDecimal (it uses binary interally, with three guard bits: highly non-trivial). – user207421 Jun 19 '17 at 1:51
  • Sure, you quoted me accurately. Thank you for pointing me to a misleading formulation of my bounty text. Feel free to improve it. If you can.... Otherwise, please accept my later explanation as I can't edit it either. I meant that an example alone doesn't count. +++ I fully agree with you saying that using double means a lot of trouble and I'm not recommending doing it without a good reason. But there are people having done it succesfully. – maaartinus Jun 19 '17 at 2:09
  • To be fair, I don't think it's strictly true that binary radix is incommensurable with decimal radix. For example, binary radix can store all integers just as decimal radix can. For fractional decimal values, for whatever precision you want, there is some (quite reasonable) size of binary radix mantissa that can be used to reversibly store all decimal fractional values of that type (exactly how, for example, Double.toString(0.1) returns "0.1" and not something like "0.99...995. Now it may not be the natural way to represent it, but can work for representation. – BeeOnRope Jun 21 '17 at 21:40
  • BigDecimal internally is using "binary" of course (indirectly via BigInteger) for its mantissa, although yes the scale is inherently decimal. The real problem with double is with operations I think - most operations on BigDecimal that are inherently exact, and some of the plain double operations are inexact and those often errors can't be fixed once the info is lost. Now BigDecimal has some inexact operations too, but only a few (eg, division with repeated decimals) so you can just implement so much more with BigDecimal... I guess I ended up agreeing with "incommensurable" ?? – BeeOnRope Jun 21 '17 at 21:46

Suppose that you have 1000000000001.5 (it is in the 1e12 range) money. And you have to calculate 117% of it.

In double, it becomes 1170000000001.7549 (this number is already imprecise). Then apply your round algorithm, and it becomes 1170000000001.75.

In precise arithmetic, it becomes 1170000000001.7550, which is rounded to 1170000000001.76. Ouch, you lost 1 cent.

I think that it is a realistic example, where double is inferior to precise arithmetic.

Sure, you can fix this somehow (even, you can implement BigDecimal using double arihmetic, so in a way, double can be used for everything, and it will be precise), but what's the point?

You can use double for integer arithmetic, if numbers are less than 2^53. If you can express your math within these constraints, then calculation will be precise (division needs special care, of course). As soon as you leave this territory, your calculations can be imprecise.

As you can see, 53 bits is not enough, double is not enough. But, if you store money in decimal-fixed point number (I mean, store the number money*100, if you need cents precision), then 64 bits might be enough, so a 64-bit integer can be used instead of BigDecimal.


Using BigDecimal would be most necessary when dealing with high value digital forms of currency such as cyprtocurrency (BTC, LTC, etc.), stocks, etc. In situations like these a lot of times you will be dealing with very specific values at 7 or 8 significant figures. If your code accidentally causes rounding error at 3 or 4 sig figs then the losses could be extremely significant. Losing money because of a rounding error is not going to be fun, especially if it's for clients.

Sure, you could probably get away with using a Double for everything if you made sure to do everything right, but it would probably be better to not take the risk, especially if you're starting from scratch.

  • I disagree. Bitcoin has 8 decimal places and as long as you don't have more than ten million of them, working with double works. Just round intermediate results to 8 decimal places when too much error can accumulate. – maaartinus Jun 19 '17 at 17:55
  • Right, it's fine if the rounding error is at the 8th decimal place, but if you have a rounding error at the second or third decimal place your problem has automatically become 10 times worse for every decimal place. – Ryan - Llaver Jun 19 '17 at 17:57
  • No, what I'm proposing is an exact computation based on the knowledge that there are no more than eight decimal places. For example with a = 0.00000001 we get a+a+a as 3.0000000000000004e-8, which is slightly off. The errors could accumulate, but when we round, we get 3e-8 as exactly as representable. With rounding on the output, we get "0.00000003" with no error at all. – maaartinus Jun 19 '17 at 18:04
  • Ahh okay I see what you're getting at. – Ryan - Llaver Jun 19 '17 at 18:13

The following would appear to be a decent implementation of a method that needed to "round down to the nearest penny".

private static double roundDowntoPenny(double d ) {
    double e = d * 100;
    return ((int)e) / 100.0;

However, the output of the following shows that the behavior isn't quite what we expect.

public static void main(String[] args) {


10.19 // Not expected!

Of course, a method can be written which produces the output that we want. The problem is that it actually very difficult to do so (and to do so in every place where you need to manipulate prices).

For every numeral-system (base-10, base-2, base-16, etc.) with a finite number of digits, there are rationals that cannot be stored exactly. For example, 1/3 cannot be stored (with finite digits) in base-10. Similarly, 3/10 cannot be stored (with finite digits) in base-2.

If we needed to chose a numeral-system to store arbitrary rationals, it wouldn't matter what system we chose - any system chosen would have some rationals that couldn't be stored exactly.

However, humans began assigning prices to things way before the development of computer systems. Therefore, we see prices like 5.30 rather that 5 + 1/3. For example, our stock exchanges use decimal prices, which mean that they accept orders, and issue quotes, only in prices that can be represented in base-10. Likewise, it means that they can issue quotes and accept orders in prices that cannot be accurately represented in base-2.

By storing (transmitting, manipulating) those prices in base-2, we are essentially relying on rounding logic to always correctly round our (in-exact) base-2 (representation of) numbers back to their (exact) base-10 representation.

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