I want to find the number of NaN
in each column of my data.
33 Answers
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:
>>> s = pd.Series([1,2,3, np.nan, np.nan])
>>> s.isna().sum() # or s.isnull().sum() for older pandas versions
2
For several columns, this also works:
>>> df = pd.DataFrame({'a':[1,2,np.nan], 'b':[np.nan,1,np.nan]})
>>> df.isna().sum()
a 1
b 2
dtype: int64

69And if you want the total number of nans in the whole
df
you can usedf.isnull().sum().sum()
Commented May 8, 2017 at 0:26 
9To get colsums,
.sum(axis=0)
, which is the default behavior. And to get rowsums,.sum(axis=1)
.– smciCommented May 28, 2019 at 7:57 
3

31
df['column_name'].isna().sum()
also works if anyone is wondering. Commented Jul 12, 2019 at 17:33 
5"and then sum to count the NaN values", to understand this statement, it is necessary to understand
df.isna()
produces Boolean Series where the number ofTrue
is the number ofNaN
, anddf.isna().sum()
addsFalse
andTrue
replacing them respectively by 0 and 1. Therefore this indirectly counts theNaN
, where a simplecount
would just return the length of the column.– minsCommented Dec 30, 2020 at 11:47
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)
You could subtract the total length from the count of nonnan 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.

8Indeed, 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.– jorisCommented Oct 8, 2014 at 21:12 
11I 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. Commented Mar 16, 2016 at 16:49

For me, both are under 3ms average for 70,000 rows with very few na's. Commented Jul 2, 2018 at 17:03
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

3something similar like df.stb.missing() ? You will have to import sidetable module for this to work! Commented Jan 12, 2021 at 9:25

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.– gaborousCommented Feb 17, 2018 at 2:46
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']))

3sushmit, 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 reexecute the code. Commented Jun 21, 2018 at 12:15
df.isnull().sum()
will give the columnwise sum of missing values.
If you want to know the sum of missing values in a particular column then following code will work: df.column.isnull().sum()
The below will print all the Nan columns in descending order.
df.isnull().sum().sort_values(ascending = False)
or
The below will print first 15 Nan columns in descending order.
df.isnull().sum().sort_values(ascending = False).head(15)
df.isnull().sum()
//type: <class 'pandas.core.series.Series'>
or
df.column_name.isnull().sum()
//type: <type 'numpy.int64'>
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()
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
'''
To count zeroes:
df[df == 0].count(axis=0)
To count NaN:
df.isnull().sum()
or
df.isna().sum()
Hope this helps,
import pandas as pd
import numpy as np
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]})
df.isnull().sum()/len(df) * 100
Thres = 40
(df.isnull().sum()/len(df) * 100 ) < Thres
You can use value_counts method and print values of np.nan
s.value_counts(dropna = False)[np.nan]

1Nice! This one is the most useful if you want to count both NaNs and nonNaNs.
s.value_counts(dropna = False)
– icemtelCommented Sep 5, 2019 at 8:36 
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


Comments are used for clarification or to point out a problem. Try again... Commented Mar 9, 2022 at 21:16
For the 1st part count NaN
we have multiple way.
Method 1 count
, due to the count
will ignore the NaN
which is different from size
print(len(df)  df.count())
Method 2 isnull
/ isna
chain with sum
print(df.isnull().sum())
#print(df.isna().sum())
Method 3 describe
/ info
: notice this will output the 'notnull' value count
print(df.describe())
#print(df.info())
Method from numpy
print(np.count_nonzero(np.isnan(df.values),axis=0))
For the 2nd part of the question, If we would like drop the column by the thresh,we can try with dropna
thresh, optional Require that many nonNA values.
Thresh = n # no null value require, you can also get the by int(x% * len(df))
df = df.dropna(thresh = Thresh, axis = 1)
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 dataframes.
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
You can try with:
In [1]: s = pd.DataFrame('a'=[1,2,5, np.nan, np.nan,3],'b'=[1,3, np.nan, np.nan,3,np.nan])
In [4]: s.isna().sum()
Out[4]: out = {'a'=2, 'b'=3} # the number of NaN values for each column
If needed the gran total of nans:
In [5]: s.isna().sum().sum()
Out[6]: out = 5 #the inline sum of Out[4]
In case you need to get the nonNA (nonNone) 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 nonNA, NA and total number of entries per group.
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:
adict[col]=(np.count_nonzero(Dataset[col].isnull())*100)/len(Dataset[col])
return pd.DataFrame(adict,index=['% of missing'],columns=adict.keys())
else:
raise TypeError("can only be used with panda dataframe")

1I prefer
df.apply(lambda x: x.value_counts(dropna=False)[np.nan]/x.size*100)
Commented Apr 7, 2018 at 17:47
I use this loop to count missing values for each column:
# check missing values
import numpy as np, pandas as pd
for col in df:
print(col +': '+ np.str(df[col].isna().sum()))
You can use df.iteritems() to loop over the data frame. Set a conditional within a for loop to calculate the NaN values percent for each column, and drop those that contain a value of NaNs over your set threshold:
for col, val in df.iteritems():
if (df[col].isnull().sum() / len(val) * 100) > 30:
df.drop(columns=col, inplace=True)
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.
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
reviews = pd.read_csv("../input/winereviews/winemagdata130kv2.csv", index_col=0)
To get the missing values, with n_missing_prices as the variable, simple do
n_missing_prices = sum(reviews.price.isnull())
print(n_missing_prices)
sum is the key method here, was trying to use count before i realized sum is the right method to use in this context
I've written a short function (Python 3) to produce .info as a pandas dataframe that can be then be written to excel:
df1 = pd.DataFrame({'a':[1,2,np.nan], 'b':[np.nan,1,np.nan]})
def info_as_df (df):
null_counts = df.isna().sum()
info_df = pd.DataFrame(list(zip(null_counts.index,null_counts.values))\
, columns = ['Column', 'Nulls_Count'])
data_types = df.dtypes
info_df['Dtype'] = data_types.values
return info_df
print(df1.info())
print(info_as_df(df1))
Which gives:
<class 'pandas.core.frame.DataFrame'>
RangeIndex: 3 entries, 0 to 2
Data columns (total 2 columns):
# Column NonNull Count Dtype
   
0 a 2 nonnull float64
1 b 1 nonnull float64
dtypes: float64(2)
memory usage: 176.0 bytes
None
Column Nulls_Count Dtype
0 a 1 float64
1 b 2 float64
Another way just for completeness is using np.count_nonzero
with .isna():
np.count_nonzero(df.isna())
%timeit np.count_nonzero(df.isna())
512 ms ± 24.7 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
Comparing with the top answers using 1000005 rows × 16 columns dataframe:
%timeit df.isna().sum()
492 ms ± 55.2 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
%timeit df.isnull().sum(axis = 0)
478 ms ± 34.9 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
%timeit count_nan = len(df)  df.count()
484 ms ± 47.4 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
data:
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'])
# big dataframe for %timeit
big_df = pd.DataFrame(np.random.randint(0, 100, size=(1000000, 10)), columns=list('ABCDEFGHIJ'))
df = pd.concat([big_df,results]) # 1000005 rows × 16 columns
df.info()
does not return a DataFame, the method only prints the information.df.info()
will give the data types and nonnull counts for each column