I am trying to count the duplicates of each type of row in my dataframe. For example, say that I have a dataframe in pandas as follows:

df = pd.DataFrame({'one': pd.Series([1., 1, 1]),
                   'two': pd.Series([1., 2., 1])})

I get a df that looks like this:

    one two
0   1   1
1   1   2
2   1   1

I imagine the first step is to find all the different unique rows, which I do by:


This gives me the following df:

    one two
0   1   1
1   1   2

Now I want to take each row from the above df ([1 1] and [1 2]) and get a count of how many times each is in the initial df. My result would look something like this:

Row     Count
[1 1]     2
[1 2]     1

How should I go about doing this last step?


Here's a larger example to make it more clear:

df = pd.DataFrame({'one': pd.Series([True, True, True, False]),
                   'two': pd.Series([True, False, False, True]),
                   'three': pd.Series([True, False, False, False])})

gives me:

    one three   two
0   True    True    True
1   True    False   False
2   True    False   False
3   False   False   True

I want a result that tells me:

       Row           Count
[True True True]       1
[True False False]     2
[False False True]     1
  • 1
    could you check if this works: df.groupby(df.columns.tolist(),as_index=False).size() – EdChum - Reinstate Monica Feb 23 '16 at 18:18
  • It's close, but has missing values. I added to my question about so I could format the response. – jss367 Feb 23 '16 at 18:24
  • 1
    That's a display thing, it informs you of where the values are the same for a given level – EdChum - Reinstate Monica Feb 23 '16 at 18:35
  • Ah, I see! Thanks so much. If you want to submit that as a response I'll check it as correct. – jss367 Feb 23 '16 at 18:37

You can groupby on all the columns and call size the index indicates the duplicate values:

In [28]:

one    three  two  
False  False  True     1
True   False  False    2
       True   True     1
dtype: int64
  • I'm not sure I'm understanding this correctly. It appears to give me the number of 1's in my second column (2) as its first row [2 2], and then the number of 2's in my second column (1) as its second row [1 1]. I'm looking for the number of rows that are [1 1] and [1 2]. These happen to be the same in this case, but not in the general case. Or am I missing something? – jss367 Feb 23 '16 at 18:07
  • 1
    This solution seems to fail if you deal with missing values (as np.NaN) because they are simply ignored by the groupby. – pansen Oct 18 '17 at 15:08
  • @pansen the OP did not specify that as part of their requirements, also how should np.NaN be treated anyway as they are missing values? – EdChum - Reinstate Monica Oct 18 '17 at 15:13
  • You're right - it was not specified by the OP. np.NaN should be treated as any other valid value because duplicated rows exist (and count) regardless of having np.NaN or not. – pansen Oct 19 '17 at 11:27
  • @pansen where is it stated that NaN should be treated as a valid value given that it's missing data and invalid? Where is this considered the norm? – EdChum - Reinstate Monica Oct 19 '17 at 11:54

   one  two  records
0    1    1        2
1    1    2        1
  • 4
    This should be the accepted answer. – Qubix Oct 9 at 10:26

If you like to count duplicates on particular column(s):


If you want to count duplicates on entire dataframe:


Or simply you can use DataFrame.duplicated(subset=None, keep='first'):

df.duplicated(subset='one', keep='first').sum()


subset : column label or sequence of labels(by default use all of the columns)

keep : {‘first’, ‘last’, False}, default ‘first’

  • first : Mark duplicates as True except for the first occurrence.
  • last : Mark duplicates as True except for the last occurrence.
  • False : Mark all duplicates as True.
df = pd.DataFrame({'one' : pd.Series([1., 1, 1, 3]), 'two' : pd.Series([1., 2., 1, 3] ), 'three' : pd.Series([1., 2., 1, 2] )})
df['str_list'] = df.apply(lambda row: ' '.join([str(int(val)) for val in row]), axis=1)
df1 = pd.DataFrame(df['str_list'].value_counts().values, index=df['str_list'].value_counts().index, columns=['Count'])


>>> df1
1 1 1      2
3 2 3      1
1 2 2      1

If the index values must be a list, you could take the above code a step further with:

df1.index = df1.index.str.split()


[1, 1, 1]      2
[3, 2, 3]      1
[1, 2, 2]      1
  • 1
    thanks, this helped me on how to match the indexes – David Gladson Sep 18 at 10:57

None of the existing answers quite offers a simple solution that returns "the number of rows that are just duplicates and should be cut out". This is a one-size-fits-all solution that does:

# generate a table of those culprit rows which are duplicated:
dups = df.groupby(df.columns.tolist()).size().reset_index().rename(columns={0:'count'})

# sum the final col of that table, and subtract the number of culprits:
dups['count'].sum() - dups.shape[0]

I use:

used_features =[

df['is_duplicated'] = df.duplicated(used_features)

which gives count of duplicated rows, and then you can analyse them by a new column. I didn't see such solution here.


ran into this problem today and wanted to include NaNs so I replace them temporarily with "" (empty string). Please comment if you do not understand something :). This solution assumes that "" is not a relevant value for you. It should also work with numerical data (I have tested it sucessfully but not extensively) since pandas will infer the data type again after replacing "" with np.nan.

import pandas as pd

# create test data
df = pd.DataFrame({'test':['foo','bar',None,None,'foo'],
                  'test3':[None, 'foo','bar',None,None]})

# fill null values with '' to not lose them during groupby
# groupby all columns and calculate the length of the resulting groups
# rename the series obtained with groupby to "group_count"
# reset the index to get a DataFrame
# replace '' with np.nan (this reverts our first operation)
# sort DataFrame by "group_count" descending
df = (df.fillna('')\
      .sort_values(by = ['group_count'], ascending = False))
  test test2 test3  group_count
3  foo   bar   NaN            2
0  NaN   NaN   NaN            1
1  NaN   NaN   bar            1
2  bar   NaN   foo            1

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.