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Python 3.1

I am doing some calculations on a data that has missing values. Any calculation that involves a missing value should result in a missing value.

I am thinking of using float('nan') to represent missing values. Is it safe? At the end I'll just check

def is_missing(x):
  return x!=x # I hope it's safe to use to check for NaN

It seems perfect, but I couldn't find a clear confirmation in the documentation.

I could use None of course, but it would then require that I do every single calculation with try / except TypeError to detect it. I could also use Inf, but I am even less sure about how it works.


@MSN I understand using NaN is slow. But if my choice is either:

# missing value represented by NaN
def f(a, b, c):
  return a + b * c


# missing value represented by None
def f(a, b, c):
  if a is None or b is None or c is None:
    return None
    return a + b * c

I would imagine the NaN option is still faster, isn't it?

share|improve this question
math.isnan(x) is more readable than x!=x. – adw Oct 29 '10 at 16:58
up vote 1 down vote accepted

It's safe-ish, but if the FPU ever has to touch x it can be insanely slow (as some hardware treats NaN as a special case):

share|improve this answer
I guess it won't be any faster if I instead check every single expression for missing values using if? – max Oct 30 '10 at 8:53
@max, Can you give me a code example of what you mean? I don't quite understand the question. – MSN Oct 30 '10 at 20:51
Edited my question to show the example code. – max Nov 1 '10 at 0:32
@max, it's certainly more terse. As for the perf difference, that's very platform specific. – MSN Nov 1 '10 at 2:48

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