float('nan')
represents NaN (not a number). But how do I check for it?
19 Answers
Use math.isnan
:
>>> import math
>>> x = float('nan')
>>> math.isnan(x)
True

12@charlieparker : In Python3, math.isnan is still a part of the math module. docs.python.org/3/library/math.html#math.isnan . Use numpy.isnan if you wish, this answer is just a suggestion.– gimelSep 8, 2016 at 4:43

83

89@TMWP possibly...
import numpy
takes around 15 MB of RAM, whereasimport math
takes some 0,2 MB– petrpulcSep 12, 2017 at 12:09 
40@TMWP: If you're using NumPy,
numpy.isnan
is a superior choice, as it handles NumPy arrays. If you're not using NumPy, there's no benefit to taking a NumPy dependency and spending the time to load NumPy just for a NaN check (but if you're writing the kind of code that does NaN checks, it's likely you should be using NumPy). Feb 21, 2019 at 0:51 
11@jungwook That actually doesn't work. Your expression is always false. That is,
float('nan') == float('nan')
returnsFalse
— which is a strange convention, but basically part of the definition of a NaN. The approach you want is actually the one posted by Chris JesterYoung, below.– MikeJul 11, 2019 at 15:38
The usual way to test for a NaN is to see if it's equal to itself:
def isNaN(num):
return num != num

10Word of warning: quoting Bear's comment below "For people stuck with python <= 2.5. Nan != Nan did not work reliably. Used numpy instead." Having said that, I've not actually ever seen it fail.– mavnnJan 26, 2010 at 13:18

49I'm sure that, given operator overloading, there are lots of ways I could confuse this function. go with math.isnan() Aug 11, 2011 at 22:38

9It says in the 754 spec mentioned above that NaN==NaN should always be false, although it is not always implemented as such. Isn't is possible this is how math and/or numpy check this under the hood anyway? Apr 1, 2014 at 16:16

61Even though this works and, to a degree makes sense, I'm a human with principles and I hereby declare this as prohibited witchcraft. Please use math.isnan instead.– GonzaloOct 16, 2019 at 21:09

10If your input includes strings this is the correct answer. (@williamtorkington)
np.isnan
andmath.isnan
will both break in this case. Jun 28, 2020 at 15:07
numpy.isnan(number)
tells you if it's NaN
or not.

3

14
numpy.all(numpy.isnan(data_list))
is also useful if you need to determine if all elements in the list are nan Feb 27, 2014 at 22:18 
6

8When this answer was written 6 years ago, Python 2.5 was still in common use  and math.isnan was not part of the standard library. Now days I'm really hoping that's not the case in many places!– mavnnMar 30, 2015 at 7:30

5note that np.isnan() doesn't handle decimal.Decimal type (as many numpy's function). math.isnan() does handle.– comteMay 16, 2018 at 15:53
Here are three ways where you can test a variable is "NaN" or not.
import pandas as pd
import numpy as np
import math
# For single variable all three libraries return single boolean
x1 = float("nan")
print(f"It's pd.isna: {pd.isna(x1)}")
print(f"It's np.isnan: {np.isnan(x1)}}")
print(f"It's math.isnan: {math.isnan(x1)}}")
Output:
It's pd.isna: True
It's np.isnan: True
It's math.isnan: True

19

4

4version 3 of this answer was correct and well formatted. this one (now 7) is wrong again. rolled back as "dont want your edit" while the edits improved the answer, wtf. May 20, 2021 at 13:52

2

3
pd.isna('foo')
is also the only one that can handle strings.np.isnan('foo')
andmath.isnan('foo')
will result in TypeError exception.– wisbuckySep 30, 2022 at 20:32
It seems that checking if it's equal to itself (x != x
) is the fastest.
import pandas as pd
import numpy as np
import math
x = float('nan')
%timeit x != x
44.8 ns ± 0.152 ns per loop (mean ± std. dev. of 7 runs, 10000000 loops each)
%timeit math.isnan(x)
94.2 ns ± 0.955 ns per loop (mean ± std. dev. of 7 runs, 10000000 loops each)
%timeit pd.isna(x)
281 ns ± 5.48 ns per loop (mean ± std. dev. of 7 runs, 1000000 loops each)
%timeit np.isnan(x)
1.38 µs ± 15.7 ns per loop (mean ± std. dev. of 7 runs, 1000000 loops each)

1It's worthwhile noting that this works even if infinities are in question. That is, if
z = float('inf')
,z != z
evaluates to false. Oct 30, 2020 at 19:05 
1in my computer
z=float('inf')
and thenz==z
give True.x=float('nan')
and thenx==x
give False.– matan hDec 10, 2020 at 13:40 
3In most (if not all) cases, these speed differences will only be relevant, if repeated numerous times. Then you'll be using
numpy
or another tensor library, anyway.– rvfJan 4, 2022 at 10:58 
1This is a bad comparison. At this scale (nanoseconds) name and attribute lookup time are significant. If you use only local names, the difference between
x != x
andmath.isnan(x)
disappears; they're both about 35 ns on my system. You can use%timeit
in cell mode to check: 1)%%timeit x = float('nan')
<newline>x != x
2)%%timeit x = float('nan'); from math import isnan
<newline>isnan(x)
– wjandreaApr 2 at 18:29 
Careful: These timings only represent checking a preexisting variable and do not generalise well. A function such as
math.isnan
will compete very differently when a function is actually required andx != x
would need wrapping in alambda
. Anumpy
functionality such asnumpy.isnan
will compete very differently when applied to anumpy
array wherex != x
would require iteration. Apr 3 at 14:23
here is an answer working with:
 NaN implementations respecting IEEE 754 standard
 ie: python's NaN:
float('nan')
,numpy.nan
...
 ie: python's NaN:
 any other objects: string or whatever (does not raise exceptions if encountered)
A NaN implemented following the standard, is the only value for which the inequality comparison with itself should return True:
def is_nan(x):
return (x != x)
And some examples:
import numpy as np
values = [float('nan'), np.nan, 55, "string", lambda x : x]
for value in values:
print(f"{repr(value):<8} : {is_nan(value)}")
Output:
nan : True
nan : True
55 : False
'string' : False
<function <lambda> at 0x000000000927BF28> : False

1The series I'm checking is strings with missing values are 'nans' (???) so this solution works where others failed. Nov 3, 2018 at 22:49

numpy.nan
is a regular Pythonfloat
object, just like the kind returned byfloat('nan')
. Most NaNs you encounter in NumPy will not be thenumpy.nan
object. Apr 14, 2020 at 7:13 
numpy.nan
defines its NaN value on its own in the underlying library in C. It does not wrap python's NaN. But now, they both comply with IEEE 754 standard as they rely on C99 API.– x0sApr 22, 2020 at 7:59 
@user2357112supportsMonica: Python and numpy NaN actually don't behave the same way:
float('nan') is float('nan')
(nonunique) andnp.nan is np.nan
(unique)– x0sApr 22, 2020 at 8:07 
1@x0s: That has nothing to do with NumPy.
np.nan
is a specific object, while eachfloat('nan')
call produces a new object. If you didnan = float('nan')
, then you'd getnan is nan
too. If you constructed an actual NumPy NaN with something likenp.float64('nan')
, then you'd getnp.float64('nan') is not np.float64('nan')
too. Apr 22, 2020 at 10:09
I actually just ran into this, but for me it was checking for nan, inf, or inf. I just used
if float('inf') < float(num) < float('inf'):
This is true for numbers, false for nan and both inf, and will raise an exception for things like strings or other types (which is probably a good thing). Also this does not require importing any libraries like math or numpy (numpy is so damn big it doubles the size of any compiled application).

12
math.isfinite
was not introduced until Python 3.2, so given the answer from @DaveTheScientist was posted in 2012 it was not exactly "reinvent[ing] the wheel"  solution still stands for those working with Python 2. Nov 22, 2016 at 17:09 
This can be useful for people who need to check for NaN in a
pd.eval
expression. For examplepd.eval(float('inf') < float('nan') < float('inf'))
will returnFalse
– Derek OMay 25, 2021 at 15:33
or compare the number to itself. NaN is always != NaN, otherwise (e.g. if it is a number) the comparison should succeed.

6For people stuck with python <= 2.5. Nan != Nan did not work reliably. Used numpy instead.– BearJan 18, 2010 at 7:06
Well I entered this post, because i've had some issues with the function:
math.isnan()
There are problem when you run this code:
a = "hello"
math.isnan(a)
It raises exception. My solution for that is to make another check:
def is_nan(x):
return isinstance(x, float) and math.isnan(x)

5It was probably downvoted because isnan() takes a float, not a string. There's nothing wrong with the function, and the problems are only in his attempted use of it. (For that particular use case his solution is valid, but it's not an answer to this question.) Jul 7, 2013 at 14:12

7Be careful with checking for types in this way. This will not work e.g. for numpy.float32 NaN's. Better to use a try/except construction:
def is_nan(x): try: return math.isnan(x) except: return False
– RobMar 24, 2014 at 10:25 
4NaN does not mean that a value is not a valid number. It is part of IEEE floating point representation to specify that a particular result is undefined. e.g. 0 / 0. Therefore asking if "hello" is nan is meaningless. Jul 17, 2015 at 8:50

2this is better because NaN can land in any list of strings,ints or floats, so useful check– RAFIQMar 11, 2016 at 8:41

I had to implement exactly this for handling string columns in pandas. Jun 4, 2020 at 19:09
Another method if you're stuck on <2.6, you don't have numpy, and you don't have IEEE 754 support:
def isNaN(x):
return str(x) == str(1e400*0)
With python < 2.6 I ended up with
def isNaN(x):
return str(float(x)).lower() == 'nan'
This works for me with python 2.5.1 on a Solaris 5.9 box and with python 2.6.5 on Ubuntu 10

6
Comparison pd.isna
, math.isnan
and np.isnan
and their flexibility dealing with different type of objects.
The table below shows if the type of object can be checked with the given method:
+++++++
 Method  NaN  numeric  None  string  list 
+++++++
 pd.isna  yes  yes  yes  yes  yes 
 math.isnan  yes  yes  no  no  no 
 np.isnan  yes  yes  no  no  yes  < # will error on mixed type list
+++++++
pd.isna
The most flexible method to check for different types of missing values.
None of the answers cover the flexibility of pd.isna
. While math.isnan
and np.isnan
will return True
for NaN
values, you cannot check for different type of objects like None
or strings. Both methods will return an error, so checking a list with mixed types will be cumbersom. This while pd.isna
is flexible and will return the correct boolean for different kind of types:
In [1]: import pandas as pd
In [2]: import numpy as np
In [3]: missing_values = [3, None, np.NaN, pd.NA, pd.NaT, '10']
In [4]: pd.isna(missing_values)
Out[4]: array([False, True, True, True, True, False])

This!!!! I came here trying to figure out how to check for both NaN and None, which depending on user input excel sheets I could get either. If it weren't for those pesky users this would be easy! Mar 23 at 10:22
I am receiving the data from a webservice that sends NaN
as a string 'Nan'
. But there could be other sorts of string in my data as well, so a simple float(value)
could throw an exception. I used the following variant of the accepted answer:
def isnan(value):
try:
import math
return math.isnan(float(value))
except:
return False
Requirement:
isnan('hello') == False
isnan('NaN') == True
isnan(100) == False
isnan(float('nan')) = True

1


Well, being "not a number", anything that can not be casted to an int I guess is in fact not a number, and the try statement will fail? Try, return true, except return false.– chwiJul 7, 2016 at 9:29

@chwi Well, taking "not a number" literally, you are right, but that's not the point here. In fact, I am looking exactly for what the semantics of
NaN
is (like in python what you could get fromfloat('inf') * 0
), and thus although the string 'Hello' is not a number, but it is also notNaN
becauseNaN
is still a numeric value!– MahdiJul 7, 2016 at 11:19 
@chwi: You are correct, if exception handling is for specific exception. But in this answer, generic exception have been handled. So no need to check
int(value)
For all exception,False
will be written. Jan 15, 2020 at 11:53
All the methods to tell if the variable is NaN or None:
None type
In [1]: from numpy import math
In [2]: a = None
In [3]: not a
Out[3]: True
In [4]: len(a or ()) == 0
Out[4]: True
In [5]: a == None
Out[5]: True
In [6]: a is None
Out[6]: True
In [7]: a != a
Out[7]: False
In [9]: math.isnan(a)
Traceback (most recent call last):
File "<ipythoninput96d4d8c26d370>", line 1, in <module>
math.isnan(a)
TypeError: a float is required
In [10]: len(a) == 0
Traceback (most recent call last):
File "<ipythoninput1065b72372873e>", line 1, in <module>
len(a) == 0
TypeError: object of type 'NoneType' has no len()
NaN type
In [11]: b = float('nan')
In [12]: b
Out[12]: nan
In [13]: not b
Out[13]: False
In [14]: b != b
Out[14]: True
In [15]: math.isnan(b)
Out[15]: True
In Python 3.6 checking on a string value x math.isnan(x) and np.isnan(x) raises an error. So I can't check if the given value is NaN or not if I don't know beforehand it's a number. The following seems to solve this issue
if str(x)=='nan' and type(x)!='str':
print ('NaN')
else:
print ('non NaN')
How to remove NaN (float) item(s) from a list of mixed data types
If you have mixed types in an iterable, here is a solution that does not use numpy:
from math import isnan
Z = ['a','b', float('NaN'), 'd', float('1.1024')]
[x for x in Z if not (
type(x) == float # let's drop all float values…
and isnan(x) # … but only if they are nan
)]
['a', 'b', 'd', 1.1024]
Shortcircuit evaluation means that isnan
will not be called on values that are not of type 'float', as False and (…)
quickly evaluates to False
without having to evaluate the righthand side.
For nan of type float
>>> import pandas as pd
>>> value = float(nan)
>>> type(value)
>>> <class 'float'>
>>> pd.isnull(value)
True
>>>
>>> value = 'nan'
>>> type(value)
>>> <class 'str'>
>>> pd.isnull(value)
False
If you want to check for values that are not NaN, then negate whatever is used to flag NaNs; pandas has its own dedicated function for flagging nonNaN values.
lst = [1, 2, float('nan')]
m1 = [e == e for e in lst] # [True, True, False]
m2 = [not math.isnan(e) for e in lst] # [True, True, False]
m3 = ~np.isnan(lst) # array([ True, True, False])
m4 = pd.notna(lst) # array([ True, True, False])
This is especially useful if you want to filter values that are not NaN. For ndarray/Series objects, ==
is vectorized, so it can be used as well.
s = pd.Series(lst)
arr = np.array(lst)
x = s[s.notna()]
y = s[s==s] # `==` is vectorized
z = arr[~np.isnan(arr)] # array([1., 2.])
assert (x == y).all() and (x == z).all()
for strings in panda take pd.isnull:
if not pd.isnull(atext):
for word in nltk.word_tokenize(atext):
the function as feature extraction for NLTK
def act_features(atext):
features = {}
if not pd.isnull(atext):
for word in nltk.word_tokenize(atext):
if word not in default_stopwords:
features['cont({})'.format(word.lower())]=True
return features
isinstance(float("nan"), Number)
;P