# How to count the NaN values in a column in pandas DataFrame

I have data, in which I want to find number of `NaN`, so that if it is less than some threshold, I will drop this columns. I looked, but didn't able to find any function for this. there is `value_counts`, but it would be slow for me, because most of values are distinct and I want count of `NaN` only.

You can use the `isna()` method (or it's alias `isnull()` which is also compatible with older pandas versions < 0.21.0) and then sum to count the NaN values. For one column:

``````In [1]: s = pd.Series([1,2,3, np.nan, np.nan])

In [4]: s.isna().sum()   # or s.isnull().sum() for older pandas versions
Out[4]: 2
``````

For several columns, it also works:

``````In [5]: df = pd.DataFrame({'a':[1,2,np.nan], 'b':[np.nan,1,np.nan]})

In [6]: df.isna().sum()
Out[6]:
a    1
b    2
dtype: int64
``````
• And if you want the total number of nans in the whole `df` you can use `df.isnull().sum().sum()` – RockJake28 May 8 '17 at 0:26

You could subtract the total length from the count of non-nan values:

``````count_nan = len(df) - df.count()
``````

You should time it on your data. For small Series got a 3x speed up in comparison with the `isnull` solution.

• Indeed, best time it. It will depend on the size of the frame I think, with a larger frame (3000 rows), using `isnull` is already two times faster as this. – joris Oct 8 '14 at 21:12
• I tried it both ways in a situation where I was counting length of group for a huge groupby where the group sizes were usually <4, and joris' df.isnull().sum() was at least 20x faster. This was with 0.17.1. – Nathan Lloyd Mar 16 '16 at 16:49
• For me, both are under 3ms average for 70,000 rows with very few na's. – Josiah Yoder Jul 2 '18 at 17:03

Lets assume df is a pandas DataFrame

Then,

``````    df.isnull().sum(axis = 0)
``````

This will give number of NaN values in every column.

If you need, NaN values in every row,

``````    df.isnull().sum(axis = 1)
``````

Based on the most voted answer we can easily define a function that gives us a dataframe to preview the missing values and the % of missing values in each column:

``````def missing_values_table(df):
mis_val = df.isnull().sum()
mis_val_percent = 100 * df.isnull().sum() / len(df)
mis_val_table = pd.concat([mis_val, mis_val_percent], axis=1)
mis_val_table_ren_columns = mis_val_table.rename(
columns = {0 : 'Missing Values', 1 : '% of Total Values'})
mis_val_table_ren_columns = mis_val_table_ren_columns[
mis_val_table_ren_columns.iloc[:,1] != 0].sort_values(
'% of Total Values', ascending=False).round(1)
print ("Your selected dataframe has " + str(df.shape[1]) + " columns.\n"
"There are " + str(mis_val_table_ren_columns.shape[0]) +
" columns that have missing values.")
return mis_val_table_ren_columns
``````

Since pandas 0.14.1 my suggestion here to have a keyword argument in the value_counts method has been implemented:

``````import pandas as pd
df = pd.DataFrame({'a':[1,2,np.nan], 'b':[np.nan,1,np.nan]})
for col in df:
print df[col].value_counts(dropna=False)

2     1
1     1
NaN    1
dtype: int64
NaN    2
1     1
dtype: int64
``````
• Best answer so far, it allows to also count other values types. – gaborous Feb 17 '18 at 2:46
``````dataset.isnull().sum()
``````

this will work!

if you are using Jupyter Notebook, How about....

`````` %%timeit
df.isnull().any().any()
``````

or

`````` %timeit
df.isnull().values.sum()
``````

or, are there anywhere NaNs in the data, if yes, where?

`````` df.isnull().any()
``````

if its just counting nan values in a pandas column here is a quick way

``````import pandas as pd
## df1 as an example data frame
## col1 name of column for which you want to calculate the nan values
sum(pd.isnull(df1['col1']))
``````
• sushmit, This way is not very quick if you have a number of columns. In that case, you'd have to copy and paste/type in each column name, then re-execute the code. – Amos Long Jun 21 '18 at 12:15

You can use value_counts method and print values of np.nan

``````s.value_counts(dropna = False)[np.nan]
``````
``````df1.isnull().sum()
``````

This will do the trick.

There is a nice Dzone article from July 2017 which details various ways of summarising NaN values. Check it out here.

The article I have cited provides additional value by: (1) Showing a way to count and display NaN counts for every column so that one can easily decide whether or not to discard those columns and (2) Demonstrating a way to select those rows in specific which have NaNs so that they may be selectively discarded or imputed.

Here's a quick example to demonstrate the utility of the approach - with only a few columns perhaps its usefulness is not obvious but I found it to be of help for larger data-frames.

``````import pandas as pd
import numpy as np

# example DataFrame
df = pd.DataFrame({'a':[1,2,np.nan], 'b':[np.nan,1,np.nan]})

# Check whether there are null values in columns
null_columns = df.columns[df.isnull().any()]
print(df[null_columns].isnull().sum())

# One can follow along further per the cited article
``````

Here is the code for counting `Null` values column wise :

``````df.isna().sum()
``````

based to the answer that was given and some improvements this is my approach

``````def PercentageMissin(Dataset):
"""this function will return the percentage of missing values in a dataset """
if isinstance(Dataset,pd.DataFrame):
adict={} #a dictionary conatin keys columns names and values percentage of missin value in the columns
for col in Dataset.columns:
else:
raise TypeError("can only be used with panda dataframe")
``````
• I prefer `df.apply(lambda x: x.value_counts(dropna=False)[np.nan]/x.size*100)` – K.-Michael Aye Apr 7 '18 at 17:47

In case you need to get the non-NA (non-None) and NA (None) counts across different groups pulled out by groupby:

``````gdf = df.groupby(['ColumnToGroupBy'])

def countna(x):
return (x.isna()).sum()

gdf.agg(['count', countna, 'size'])
``````

This returns the counts of non-NA, NA and total number of entries per group.

``````import numpy as np
import pandas as pd

raw_data = {'first_name': ['Jason', np.nan, 'Tina', 'Jake', 'Amy'],
'last_name': ['Miller', np.nan, np.nan, 'Milner', 'Cooze'],
'age': [22, np.nan, 23, 24, 25],
'sex': ['m', np.nan, 'f', 'm', 'f'],
'Test1_Score': [4, np.nan, 0, 0, 0],
'Test2_Score': [25, np.nan, np.nan, 0, 0]}
results = pd.DataFrame(raw_data, columns = ['first_name', 'last_name', 'age', 'sex', 'Test1_Score', 'Test2_Score'])

results

first_name last_name   age  sex  Test1_Score  Test2_Score
0      Jason    Miller  22.0    m          4.0         25.0
1        NaN       NaN   NaN  NaN          NaN          NaN
2       Tina       NaN  23.0    f          0.0          NaN
3       Jake    Milner  24.0    m          0.0          0.0
4        Amy     Cooze  25.0    f          0.0          0.0
``````

You can use following function, which will give you output in Dataframe

• Zero Values
• Missing Values
• % of Total Values
• Total Zero Missing Values
• % Total Zero Missing Values
• Data Type

Just copy and paste following function and call it by passing your pandas Dataframe

``````def missing_zero_values_table(df):
zero_val = (df == 0.00).astype(int).sum(axis=0)
mis_val = df.isnull().sum()
mis_val_percent = 100 * df.isnull().sum() / len(df)
mz_table = pd.concat([zero_val, mis_val, mis_val_percent], axis=1)
mz_table = mz_table.rename(
columns = {0 : 'Zero Values', 1 : 'Missing Values', 2 : '% of Total Values'})
mz_table['Total Zero Missing Values'] = mz_table['Zero Values'] + mz_table['Missing Values']
mz_table['% Total Zero Missing Values'] = 100 * mz_table['Total Zero Missing Values'] / len(df)
mz_table['Data Type'] = df.dtypes
mz_table = mz_table[
mz_table.iloc[:,1] != 0].sort_values(
'% of Total Values', ascending=False).round(1)
print ("Your selected dataframe has " + str(df.shape[1]) + " columns and " + str(df.shape[0]) + " Rows.\n"
"There are " + str(mz_table.shape[0]) +
" columns that have missing values.")
#         mz_table.to_excel('D:/sampledata/missing_and_zero_values.xlsx', freeze_panes=(1,0), index = False)
return mz_table

missing_zero_values_table(results)
``````

Output

``````Your selected dataframe has 6 columns and 5 Rows.
There are 6 columns that have missing values.

Zero Values  Missing Values  % of Total Values  Total Zero Missing Values  % Total Zero Missing Values Data Type
last_name              0               2               40.0                          2                         40.0    object
Test2_Score            2               2               40.0                          4                         80.0   float64
first_name             0               1               20.0                          1                         20.0    object
age                    0               1               20.0                          1                         20.0   float64
sex                    0               1               20.0                          1                         20.0    object
Test1_Score            3               1               20.0                          4                         80.0   float64
``````

If you want to keep it simple then you can use following function to get missing values in %

``````def missing(dff):
print (round((dff.isnull().sum() * 100/ len(dff)),2).sort_values(ascending=False))

missing(results)

Test2_Score    40.0
last_name      40.0
Test1_Score    20.0
sex            20.0
age            20.0
first_name     20.0
dtype: float64
``````

One other simple option not suggested yet, to just count NaNs, would be adding in the shape to return the number of rows with NaN.

``````df[df['col_name'].isnull()]['col_name'].shape
``````

Used the solution proposed by @sushmit in my code.

A possible variation of the same can also be

``````colNullCnt = []
for z in range(len(df1.cols)):
colNullCnt.append([df1.cols[z], sum(pd.isnull(trainPd[df1.cols[z]]))])
``````

Advantage of this is that it returns the result for each of the columns in the df henceforth.

https://pandas.pydata.org/pandas-docs/stable/generated/pandas.Series.count.html#pandas.Series.count

pandas.Series.count Series.count(level=None)[source] Return number of non-NA/null observations in the Series

``````import pandas as pd
import numpy as np

# example DataFrame
df = pd.DataFrame({'a':[1,2,np.nan], 'b':[np.nan,1,np.nan]})

# count the NaNs in a column
num_nan_a = df.loc[ (pd.isna(df['a'])) , 'a' ].shape[0]
num_nan_b = df.loc[ (pd.isna(df['b'])) , 'b' ].shape[0]

# summarize the num_nan_b
print(df)
print(' ')
print(f"There are {num_nan_a} NaNs in column a")
print(f"There are {num_nan_b} NaNs in column b")
``````

Gives as output:

``````     a    b
0  1.0  NaN
1  2.0  1.0
2  NaN  NaN

There are 1 NaNs in column a
There are 2 NaNs in column b
``````

Suppose you want to get the number of missing values(NaN) in a column(series) known as price in a dataframe called reviews

``````#import the dataframe
import pandas as pd

``````n_missing_prices = sum(reviews.price.isnull())