48

From Pandas data frame, how to get index of non "NaN" values?

My data frame is

    A    b     c
0   1    q1    1
1   2    NaN   3
2   3    q2    3
3   4    q1    NaN
4   5    q2    7

And I want the index of the rows in which column b is not NaN. (there can be NaN values in other column e.g. c )

non_nana_index = [0,2,3,4]

Using this non "NaN" index list I want to create new data frame which column b do not have "Nan"

df2=

    A    b     c
0   1    q1    1
1   3    q2    3
2   4    q1    NaN
3   5    q2    7

3 Answers 3

74

Just filter them

In [62]:

df['b'].notnull()

Out[62]:
0     True
1    False
2     True
3     True
4     True
Name: b, dtype: bool
In [63]:

df[df['b'].notnull()]
Out[63]:
   A   b   c
0  1  q1   1
2  3  q2   3
3  4  q1 NaN
4  5  q2   7
0
14

DataFrames have a dropna method:

import pandas
import numpy

d = pandas.DataFrame({'A': [1, 2, 3, numpy.nan], 
                      'b': [1, 2, numpy.nan, 3],
                      'c': [1, numpy.nan, 2, 3]})
d.dropna(subset=['b'])
2
  • dropna, will remove all the column or row, depending on the other arguments. The OP was looking for the index of the NaN
    – Kots
    Nov 30, 2021 at 8:49
  • 2
    @Kots when you read through the whole question you will see his actual ask was " I want to create new data frame which column b do not have "Nan"". He was just expecting to need the indexes of these rows to get there. My answer shows you can get there without the indexes. Nov 30, 2021 at 12:39
0

You can also use query here:

In [5]: df.query('b == b')
Out[5]: 
   A   b    c
0  1  q1  1.0
2  3  q2  3.0
3  4  q1  NaN
4  5  q2  7.0

This works as NaN when compared to itself returns False:

In [5]: np.nan == np.nan
Out[5]: False

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