What is the best method for comparing IEEE floats and doubles for equality? I have heard of several methods, but I wanted to see what the community thought.

The best approach I think is to compare ULPs.
A similar technique can be used for doubles. The trick is to convert the floats so that they're ordered (as if integers) and then just see how different they are. I have no idea why this damn thing is screwing up my underscores. Edit: Oh, perhaps that is just an artefact of the preview. That's OK then. 


The current version I am using is this
This seems to take care of most problems by combining relative and absolute error tolerance. Is the ULP approach better? If so, why? 


It rather depends on what you are doing with them. A fixedpoint type with the same range as an IEEE float would be many many times slower (and many times larger).
3D graphics, physics/engineering, simulation, climate simulation.... 


In numerical software you often want to test whether two floating point numbers are exactly equal. LAPACK is full of examples for such cases. Sure, the most common case is where you want to test whether a floating point number equals "Zero", "One", "Two", "Half". If anyone is interested I can pick some algorithms and go more into detail. Also in BLAS you often want to check whether a floating point number is exactly Zero or One. For example, the routine dgemv can compute operations of the form
So if beta equals One you have an "plus assignment" and for beta equals Zero a "simple assignment". So you certainly can cut the computational cost if you give these (common) cases a special treatment. Sure, you could design the BLAS routines in such a way that you can avoid exact comparisons (e.g. using some flags). However, the LAPACK is full of examples where it is not possible. P.S.:



Even if it causes it to copy from vector registers to integer registers via memory, and even if it stalls the pipeline, it's the best way to do it that I've come across, insofar as it provides the most robust comparisons even in the face of floating point errors. i.e. it is a price worth paying. 


ULPs are a direct measure of the "distance" between two floating point numbers. This means that they don't require you to conjure up the relative and absolute error values, nor do you have to make sure to get those values "about right". With ULPs, you can express directly how close you want the numbers to be, and the same threshold works just as well for small values as for large ones. 


Even if we do the numeric analysis to minimize accumulation of error, we can't eliminate it and we can be left with results that ought to be identical (if we were calculating with reals) but differ (because we cannot calculate with reals). 


If you are looking for two floats to be equal, then they should be identically equal in my opinion. If you are facing a floating point rounding problem, perhaps a fixed point representation would suit your problem better. 


Perhaps we cannot afford the loss of range or performance that such an approach would inflict. 


@DrPizza: I am no performance guru but I would expect fixed point operations to be quicker than floating point operations (in most cases). @Craig H: Sure. I'm totally okay with it printing that. If a or b store money then they should be represented in fixed point. I'm struggling to think of a real world example where such logic ought to be allied to floats. Things suitable for floats:
For all these things, either you much then numbers and simply present the results to the user for human interpretation, or you make a comparative statement (even if such a statement is, "this thing is within 0.001 of this other thing"). A comparative statement like mine is only useful in the context of the algorithm: the "within 0.001" part depends on what physical question you're asking. That my 0.02. Or should I say 2/100ths? 


Okay, but if I want a infinitesimally small bitresolution then it's back to my original point: == and != have no meaning in the context of such a problem. An int lets me express ~10^9 values (regardless of the range) which seems like enough for any situation where I would care about two of them being equal. And if that's not enough, use a 64bit OS and you've got about 10^19 distinct values. I can express values a range of 0 to 10^200 (for example) in an int, it is just the bitresolution that suffers (resolution would be greater than 1, but, again, no application has that sort of range as well as that sort of resolution). To summarize, I think in all cases one either is representing a continuum of values, in which case != and == are irrelevant, or one is representing a fixed set of values, which can be mapped to an int (or a another fixedprecision type). 


I have actually hit that limit... I was trying to juggle times in ps and time in clock cycles in a simulation where you easily hit 10^10 cycles. No matter what I did I very quickly overflowed the puny range of 64bit integers... 10^19 is not as much as you think it is, gimme 128 bits computing now! Floats allowed me to get a solution to the mathematical issues, as the values overflowed with lots zeros at the low end. So you basically had a decimal point floating aronud in the number with no loss of precision (I could like with the more limited distinct number of values allowed in the mantissa of a float compared to a 64bit int, but desperately needed th range!). And then things converted back to integers to compare etc. Annoying, and in the end I scrapped the entire attempt and just relied on floats and < and > to get the work done. Not perfect, but works for the use case envisioned. 


Perhaps I should explain the problem better. In C++, the following code:
prints the phrase "Something is wrong". Are you saying that it should? 


Oh dear lord please don't interpret the float bits as ints unless you're running on a P6 or earlier. 


If you have floating point errors you have even more problems than this. Although I guess that is up to personal perspective. 

