219

Given a pandas dataframe containing possible NaN values scattered here and there:

Question: How do I determine which columns contain NaN values? In particular, can I get a list of the column names containing NaNs?

1
  • 7
    df.isna().any()[lambda x: x] works for me
    – matanster
    Aug 10 '18 at 13:32

14 Answers 14

348

UPDATE: using Pandas 0.22.0

Newer Pandas versions have new methods 'DataFrame.isna()' and 'DataFrame.notna()'

In [71]: df
Out[71]:
     a    b  c
0  NaN  7.0  0
1  0.0  NaN  4
2  2.0  NaN  4
3  1.0  7.0  0
4  1.0  3.0  9
5  7.0  4.0  9
6  2.0  6.0  9
7  9.0  6.0  4
8  3.0  0.0  9
9  9.0  0.0  1

In [72]: df.isna().any()
Out[72]:
a     True
b     True
c    False
dtype: bool

as list of columns:

In [74]: df.columns[df.isna().any()].tolist()
Out[74]: ['a', 'b']

to select those columns (containing at least one NaN value):

In [73]: df.loc[:, df.isna().any()]
Out[73]:
     a    b
0  NaN  7.0
1  0.0  NaN
2  2.0  NaN
3  1.0  7.0
4  1.0  3.0
5  7.0  4.0
6  2.0  6.0
7  9.0  6.0
8  3.0  0.0
9  9.0  0.0

OLD answer:

Try to use isnull():

In [97]: df
Out[97]:
     a    b  c
0  NaN  7.0  0
1  0.0  NaN  4
2  2.0  NaN  4
3  1.0  7.0  0
4  1.0  3.0  9
5  7.0  4.0  9
6  2.0  6.0  9
7  9.0  6.0  4
8  3.0  0.0  9
9  9.0  0.0  1

In [98]: pd.isnull(df).sum() > 0
Out[98]:
a     True
b     True
c    False
dtype: bool

or as @root proposed clearer version:

In [5]: df.isnull().any()
Out[5]:
a     True
b     True
c    False
dtype: bool

In [7]: df.columns[df.isnull().any()].tolist()
Out[7]: ['a', 'b']

to select a subset - all columns containing at least one NaN value:

In [31]: df.loc[:, df.isnull().any()]
Out[31]:
     a    b
0  NaN  7.0
1  0.0  NaN
2  2.0  NaN
3  1.0  7.0
4  1.0  3.0
5  7.0  4.0
6  2.0  6.0
7  9.0  6.0
8  3.0  0.0
9  9.0  0.0
8
  • Thanks for the response! I am looking to get a list of the column names (I updated my question accordingly), do you know how? Mar 25 '16 at 18:56
  • Do you know a good a way to select all columns with a specific value instead of null values? Oct 22 '17 at 17:03
  • 1
    Nevermind! Simply replace .isnull() with .isin(['xxx']) to search for values instead of nulls: df.columns[df.isin['xxx'].any()].tolist() Oct 22 '17 at 17:16
  • @gregorio099, i'd do it this way: df.columns[df.eq(search_for_value).any()].tolist()
    – MaxU
    Oct 22 '17 at 20:17
  • 1
    Nice answer, already upvoted. Idea - can you add new functions isna, notna ?
    – jezrael
    Jan 18 '18 at 14:34
37

You can use df.isnull().sum(). It shows all columns and the total NaNs of each feature.

1
  • Do you have a quick approach for using and setting conditions based on this method.? For example, if col4 and col5 and col6 is null: df=df[["col1","col2","col3"]]
    – Edward
    Apr 30 '21 at 22:16
16

I had a problem where I had to many columns to visually inspect on the screen so a shortlist comp that filters and returns the offending columns is

nan_cols = [i for i in df.columns if df[i].isnull().any()]

if that's helpful to anyone

Adding to that if you want to filter out columns having more nan values than a threshold, say 85% then use

nan_cols85 = [i for i in df.columns if df[i].isnull().sum() > 0.85*len(data)]

8

This worked for me,

1. For getting Columns having at least 1 null value. (column names)

data.columns[data.isnull().any()]

2. For getting Columns with count, with having at least 1 null value.

data[data.columns[data.isnull().any()]].isnull().sum()

[Optional] 3. For getting percentage of the null count.

data[data.columns[data.isnull().any()]].isnull().sum() * 100 / data.shape[0]
1
  • Thanks for the multiple approaches! Jun 24 '20 at 22:41
5

In datasets having large number of columns its even better to see how many columns contain null values and how many don't.

print("No. of columns containing null values")
print(len(df.columns[df.isna().any()]))

print("No. of columns not containing null values")
print(len(df.columns[df.notna().all()]))

print("Total no. of columns in the dataframe")
print(len(df.columns))

For example in my dataframe it contained 82 columns, of which 19 contained at least one null value.

Further you can also automatically remove cols and rows depending on which has more null values
Here is the code which does this intelligently:

df = df.drop(df.columns[df.isna().sum()>len(df.columns)],axis = 1)
df = df.dropna(axis = 0).reset_index(drop=True)

Note: Above code removes all of your null values. If you want null values, process them before.

4
df.columns[df.isnull().any()].tolist()

it will return name of columns that contains null rows

3

i use these three lines of code to print out the column names which contain at least one null value:

for column in dataframe:
    if dataframe[column].isnull().any():
       print('{0} has {1} null values'.format(column, dataframe[column].isnull().sum()))
3

This is one of the methods..

import pandas as pd
df = pd.DataFrame({'a':[1,2,np.nan], 'b':[np.nan,1,np.nan],'c':[np.nan,2,np.nan], 'd':[np.nan,np.nan,np.nan]})
print(pd.isnull(df).sum())

enter image description here

2

Both of these should work:

df.isnull().sum()
df.isna().sum()

DataFrame methods isna() or isnull() are completely identical.

Note: Empty strings '' is considered as False (not considered NA)

1

I know this is a very well-answered question but I wanted to add a slight adjustment. This answer only returns columns containing nulls, and also still shows the count of the nulls.

As 1-liner:

pd.isnull(df).sum()[pd.isnull(df).sum() > 0]

Description

  1. Count nulls in each column
null_count_ser = pd.isnull(df).sum()
  1. True|False series describing if that column had nulls
is_null_ser = null_count_ser > 0
  1. Use the T|F series to filter out those without
null_count_ser[is_null_ser]

Example Output

name          5
phone         187
age           644
1
  • This worked nicely, thank you!
    – 0bserver07
    Dec 8 '21 at 17:57
0

df.isna() return True values for NaN, False for the rest. So, doing:

df.isna().any()

will return True for any column having a NaN, False for the rest

0
0

To see just the columns containing NaNs and just the rows containing NaNs:

isnulldf = df.isnull()
columns_containing_nulls = isnulldf.columns[isnulldf.any()]
rows_containing_nulls = df[isnulldf[columns_containing_nulls].any(axis='columns')].index
only_nulls_df = df[columns_containing_nulls].loc[rows_containing_nulls]
print(only_nulls_df)
0

features_with_na=[features for features in dataframe.columns if dataframe[features].isnull().sum()>0]

for feature in features_with_na: print(feature, np.round(dataframe[feature].isnull().mean(), 4), '% missing values') print(features_with_na)

it will give % of missing value for each column in dataframe

0

The code works if you want to find columns containing NaN values and get a list of the column names.

l = df.isnull().any()
list(na_names.where(l == True).dropna().index)

If you want you find columns whose values are all NaNs, you can replace any with all.

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