11

I want to use .notnull() on several columns of a dataframe to eliminate the rows which contain "NaN" values.

Let say I have the following df:

  A   B   C
0 1   1   1
1 1   NaN 1
2 1   NaN NaN
3 NaN 1   1

I tried to use this syntax but it does not work? do you know what I am doing wrong?

df[[df.A.notnull()],[df.B.notnull()],[df.C.notnull()]]

I get this Error:

TypeError: 'Series' objects are mutable, thus they cannot be hashed

What should I do to get the following output?

  A   B   C
0 1   1   1

Any idea?

  • 3
    You can just do df.dropna(subset=['A', 'B', 'C']) – ayhan Aug 1 '16 at 15:17
14

You can first select subset of columns by df[['A','B','C']], then apply notnull and specify if all values in mask are True:

print (df[['A','B','C']].notnull())
       A      B      C
0   True   True   True
1   True  False   True
2   True  False  False
3  False   True   True

print (df[['A','B','C']].notnull().all(1))
0     True
1    False
2    False
3    False
dtype: bool

print (df[df[['A','B','C']].notnull().all(1)])
     A    B    C
0  1.0  1.0  1.0

Another solution is from Ayhan comment with dropna:

print (df.dropna(subset=['A', 'B', 'C']))
     A    B    C
0  1.0  1.0  1.0

what is same as:

print (df.dropna(subset=['A', 'B', 'C'], how='any'))

and means drop all rows, where is at least one NaN value.

  • Thanks that make sense... what about the .all() what does that do? and how it is different from .any()? – MEhsan Aug 1 '16 at 15:16
  • 1
    all means check if all values are True and any means check if at least one value is True. And if use all(1) or any(1) it means check rows, because it is same as all(axis=1) or any(axis=1) – jezrael Aug 1 '16 at 15:17
  • Your are awesome! Thanks a lot my friend – MEhsan Aug 1 '16 at 15:20
  • Glad can help you! Nice day! – jezrael Aug 1 '16 at 15:28
1

You can apply multiple conditions by combining them with the & operator (this works not only for the notnull() function).

df[(df.A.notnull() & df.B.notnull() & df.C.notnull())]
     A    B    C
0  1.0  1.0  1.0

Alternatively, you can just drop all columns which contain NaN. The original DataFrame is not modified, instead a copy is returned.

df.dropna()

0

You can simply do:

df.dropna()

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