Why is the behavior of the Haskell range notation different for floats than for integers and chars?

Prelude> [1, 3 .. 10] :: [Int]
Prelude> [1, 3 .. 10] :: [Float]
Prelude> ['a', 'c' .. 'f']

I would understand it if the last element was close to the upper bound, but this is obviously not a rounding issue.


The syntax [e1, e2 .. e3] is really syntactic sugar for enumFromThenTo e1 e2 e3, which is a function in the Enum typeclass.

The Haskell standard defines its semantics as follows:

For the types Int and Integer, the enumeration functions have the following meaning:

  • The sequence enumFrom e1 is the list [e1,e1 + 1,e1 + 2,…].
  • The sequence enumFromThen e1 e2 is the list [e1,e1 + i,e1 + 2i,…], where the increment, i, is e2 − e1. The increment may be zero or negative. If the increment is zero, all the list elements are the same.
  • The sequence enumFromTo e1 e3 is the list [e1,e1 + 1,e1 + 2,…e3]. The list is empty if e1 > e3.
  • The sequence enumFromThenTo e1 e2 e3 is the list [e1,e1 + i,e1 + 2i,…e3], where the increment, i, is e2 − e1. If the increment is positive or zero, the list terminates when the next element would be greater than e3; the list is empty if e1 > e3. If the increment is negative, the list terminates when the next element would be less than e3; the list is empty if e1 < e3.

This is pretty much what you'd expect, but the Float and Double instances are defined differently:

For Float and Double, the semantics of the enumFrom family is given by the rules for Int above, except that the list terminates when the elements become greater than e3 + i∕2 for positive increment i, or when they become less than e3 + i∕2 for negative i.

I'm not really sure what the justification for this is, so the only answer I can give you is that it is that way because it's defined that way in the standard.

You can work around this by enumerating using integers and converting to Float afterward.

Prelude> map fromIntegral [1, 3 .. 10] :: [Float]
  • 12
    Probably the intention is to make things such as [0.0, 0.1 .. 1.0] work more-or-less like what one would naively expect not knowing about floating-point imprecisions. – hmakholm left over Monica Sep 3 '11 at 1:21
  • 6
    @Henning: I guess that makes sense if one assumes that in the common use case, e3 would be in the sequence [e1, e1+i ..], ignoring inaccuracies. In the OP's example, e3 was halfway in between two values, which is in a sense the worst case scenario for that assumption. – hammar Sep 3 '11 at 1:39
  • 4
    I would further contend that anyone who doesn't know about floating-point imprecision issues should not be using floating point values. In general, use arbitrary-precision rationals where performance isn't a major concern, and learn how to use floats properly where it is. – C. A. McCann Sep 3 '11 at 2:57
  • 8
    This is a nasty bug in the Haskell specification. It's trying to hide the inherent problems with floating point, but that just means the problem shows up elsewhere. – augustss Sep 3 '11 at 7:29
  • 5
    @leftaroundabout I know how floating point works, and attempts to work around problems is just causing me more problems. I expect enumFromThenTo to keep adding the increment and taking elements as long as they are <= the upper bound. Getting an element above the upper bound is very confusing. – augustss Sep 5 '11 at 10:21

Ok, @Henning Makholm already said this in his comment, but he didn't explain why this actually is a better solution.

First thing to say: when dealing with floating-point, we must always be aware of the possible rounding errors. When we write [0.0, 0.1 .. 1.0] we must be aware that all these numbers, except for the first one, will not be at the exact places of tenths. Where we need this kind of certainty, we must not use floats at all.

But of course there are many applications where we're content with reasonable certainy, but need high-speed. That's where floats are great. One possible application of such a list would be a simple trapezoid numerical integration:

trIntegrate f l r s = sum [ f x | x<-[l,(l+s)..r] ] * s - (f(l)+f(r))*s/2

let's test this: trIntegrate ( \x -> exp(x + cos(sqrt(x) - x*x)) ) 1.0 3.0 0.1 => 25.797334337026466
compared to 25.9144 an error of less than one percent. Not exact of course, but that's inherent to the integration method.

Suppose now that float ranges were defined to always terminate when crossing the right border. Then, it would be possible (but we can't be certain about it!) that only 20 values rather than 21 are calculated in the sum, because the last value of x happens to be 3.000000something. We can simulate this

bad_trIntegrate f l r s = sum [ f x | x<-[l,(l+s)..(r-s)] ] * s - (f(l)+f(r))*s/2

then we get

bad_trIntegrate ( \x -> exp(x + cos(sqrt(x) - x*x)) ) 1.0 3.0 0.1

=> 21.27550564546988

This has nothing to do with hiding the problems with floating point. It's just a method to help the programmer getting around these problems easier. In fact, the counterintuitive result of [1, 3 .. 10] :: Float helps to remember these problems!

  • But why was the same behaviour specified for Rationals? Here there are no imprecisions. – Josephine Feb 14 '12 at 12:03
  • @André that is a bit uncanny indeed. It's a choice between whether the behaviour is incompatible with integers or with floats. IMO, rationals are rather closer related to floats, so it's somewhat reasonable to put them in that box rather than the Integral one. — In an interval of fractional numbers (as opposed to an integer one) it is always possible to choose a step size of which the interval size is an integral multiple. In that case, ranges of Rationals and ranges of Floats behave just as one would intuively expect, so we should simply make sure this condition is always fulfilled. – leftaroundabout Feb 14 '12 at 14:03
  • 2
    After having thought about it, i agree about the interval size. Someone on IRC even considered it an error, if this condition was not fulfilled. At first i thought that is ridiculous, but now i see his point. – Josephine Feb 15 '12 at 14:38
  • I agree that simplifies life in many cases. However, it introduces new problems: sum [dx * sqrt (1 - x) | x <- [0.0, dx .. 1]] returns NaN for dx = 0.001 because the "overshoot" leaves the domain of the integrated function. I'm not sure this is worth it. – undur_gongor Apr 26 '18 at 19:26
  • @undur_gongor such a sum would normally also give a wrong result when the last term is omitted; only in special cases like sqrt (1 - 1) does this not matter. Again I'd argue that the obviously wrong NaN is less bad than a sensible-sounding yet order-0-inaccurate float number. — To be really sure for stuff like this, using floats that may touch the domain boundaries is just fundamentally the wrong approach; one should calculate cell midpoints instead or else only use range syntax for the inter-cell boundaries but add the exact outer boundaries separately. – leftaroundabout Apr 26 '18 at 19:32

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.