float('nan')
results in Nan (not a number). But how do I check for it? Should be very easy, but I cannot find it.
18 Answers
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
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
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).
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)
I am receiving the data from a web-service 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
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 "<ipython-input-9-6d4d8c26d370>", line 1, in <module>
math.isnan(a)
TypeError: a float is required
In [10]: len(a) == 0
Traceback (most recent call last):
File "<ipython-input-10-65b72372873e>", 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
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]
Short-circuit 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 right-hand side.
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])
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