Python: max/min builtin functions depend on parameter order

`max(float('nan'), 1)` evaluates to nan

`max(1, float('nan'))` evaluates to 1

Is it the intended behavior?

`max` raises an exception when the iterable is empty. Why wouldn't Python's `max` raise an exception when `nan` is present? Or at least do something useful, like return `nan` or ignore `nan`. The current behavior is very unsafe and seems completely unreasonable.

I found an even more surprising consequence of this behavior, so I just posted a related question.

• Really... It doesn't seem to break on 'nan', because `max(0.5, float('nan'), 1)` returns 1. – khachik Nov 21 '10 at 13:16
• @khachik: I'm just saying `max` result depends on the order of parameters, which is a bit unexpected to me, even if it only happened in one example. But in fact it works on your example too: `max(float('nan'), 1, 0.5)` returns nan. – max Nov 21 '10 at 19:43
• The bug isn't in max. The bug is the fact that you're using floating points and assuming they have any meaningful mathematical behavior. – Antimony Aug 28 '12 at 0:30
• @Antimony: I don't assume that floating point values perfectly represent mathematical objects. I do assume that they are useful in building software, which requires (among other things) that their behavior is consistent with the expectations of the majority of experienced developers. Anything that violates this assumption is either a bad design, a bug. – max Aug 28 '12 at 0:51
• Well floating points do not satisfy the expectations of most developers. I'll leave the question of whether they are useful in building software up to you. – Antimony Aug 28 '12 at 1:44

``````In : 1>float('nan')
Out: False

In : float('nan')>1
Out: False
``````

The float `nan` is neither bigger nor smaller than the integer `1`. `max` starts by choosing the first element, and only replaces it when it finds an element which is strictly larger.

``````In : max(1,float('nan'))
Out: 1
``````

Since `nan` is not larger than 1, 1 is returned.

``````In : max(float('nan'),1)
Out: nan
``````

Since 1 is not larger than `nan`, `nan` is returned.

PS. Note that `np.max` treats `float('nan')` differently:

``````In : import numpy as np
In : np.max([1,float('nan')])
Out: nan

In : np.max([float('nan'),1])
Out: nan
``````

but if you wish to ignore `np.nan`s, you can use `np.nanmax`:

``````In : np.nanmax([1,float('nan')])
Out: 1.0

In : np.nanmax([float('nan'),1])
Out: 1.0
``````
• Thank you that helps. Terrible behavior, though, IMO. – max Nov 21 '10 at 19:51
• Only python .. – javadba Mar 4 at 5:27

I haven't seen this before, but it makes sense. Notice that `nan` is a very weird object:

``````>>> x = float('nan')
>>> x == x
False
>>> x > 1
False
>>> x < 1
False
``````

I would say that the behaviour of `max` is undefined in this case -- what answer would you expect? The only sensible behaviour is to assume that the operations are antisymmetric.

Notice that you can reproduce this behaviour by making a broken class:

``````>>> class Broken(object):
...     __le__ = __ge__ = __eq__ = __lt__ = __gt__ = __ne__ =
...     lambda self, other: False
...
>>> x = Broken()
>>> x == x
False
>>> x < 1
False
>>> x > 1
False
>>> max(x, 1)
<__main__.Broken object at 0x024B5B50>
>>> max(1, x)
1
``````
• For NaN comparison you should use math.isnan function – Andrew Nov 21 '10 at 13:36
• "makes sense". `NaNsense` I say .. – javadba Mar 4 at 5:28

Max works the following way:

The first item is set as maxval and then the next is compared to this value. The comparation will always return False:

``````>>> float('nan') < 1
False
>>> float('nan') > 1
False
``````

So if the first value is nan, then (since the comparation returns false) it will not be replaced upon the next step.

OTOH if 1 is the first, the same happens: but in this case, since 1 was set, it will be the maximum.

You can verify this in the python code, just look up the function min_max in Python/bltinmodule.c