Is there a way in pandas to check if a dataframe column has duplicate values, without actually dropping rows? I have a function that will remove duplicate rows, however, I only want it to run if there are actually duplicates in a specific column.

Currently I compare the number of unique values in the column to the number of rows: if there are less unique values than rows then there are duplicates and the code runs.

 if len(df['Student'].unique()) < len(df.index):
    # Code to remove duplicates based on Date column runs

Is there an easier or more efficient way to check if duplicate values exist in a specific column, using pandas?

Some of the sample data I am working with (only two columns shown). If duplicates are found then another function identifies which row to keep (row with oldest date):

    Student Date
0   Joe     December 2017
1   James   January 2018
2   Bob     April 2018
3   Joe     December 2017
4   Jack    February 2018
5   Jack    March 2018
  • 1
    sort your df by date then df.drop_duplicates('student')
    – BENY
    May 8, 2018 at 22:18
  • 3
    @Wen Yes this, but maybe convert to datetime and sort after. Quick check would be: any(df['Student'].duplicated())
    – Anton vBR
    May 8, 2018 at 22:21
  • A couple of misunderstandings: a) it's never necessary to check len(df[col].unique()), pandas has df[col].nunique() b) but anyway you don't even need that either, you're just looking for df[col].duplicated(...)
    – smci
    May 31, 2020 at 3:09

4 Answers 4


Main question

Is there a duplicate value in a column, True/False?

║ Student ║ Date          ║
║ Joe     ║ December 2017 ║
║ Bob     ║ April 2018    ║
║ Joe     ║ December 2018 ║

Assuming above dataframe (df), we could do a quick check if duplicated in the Student col by:

boolean = not df["Student"].is_unique      # True (credit to @Carsten)
boolean = df['Student'].duplicated().any() # True

Further reading and references

Above we are using one of the Pandas Series methods. The pandas DataFrame has several useful methods, two of which are:

  1. drop_duplicates(self[, subset, keep, inplace]) - Return DataFrame with duplicate rows removed, optionally only considering certain columns.
  2. duplicated(self[, subset, keep]) - Return boolean Series denoting duplicate rows, optionally only considering certain columns.

These methods can be applied on the DataFrame as a whole, and not just a Serie (column) as above. The equivalent would be:

boolean = df.duplicated(subset=['Student']).any() # True
# We were expecting True, as Joe can be seen twice.

However, if we are interested in the whole frame we could go ahead and do:

boolean = df.duplicated().any() # False
boolean = df.duplicated(subset=['Student','Date']).any() # False
# We were expecting False here - no duplicates row-wise 
# ie. Joe Dec 2017, Joe Dec 2018

And a final useful tip. By using the keep paramater we can normally skip a few rows directly accessing what we need:

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

  • first : Drop duplicates except for the first occurrence.
  • last : Drop duplicates except for the last occurrence.
  • False : Drop all duplicates.

Example to play around with

import pandas as pd
import io

data = '''\
Joe,December 2017
Bob,April 2018
Joe,December 2018'''

df = pd.read_csv(io.StringIO(data), sep=',')

# Approach 1: Simple True/False
boolean = df.duplicated(subset=['Student']).any()
print(boolean, end='\n\n') # True

# Approach 2: First store boolean array, check then remove
duplicate_in_student = df.duplicated(subset=['Student'])
if duplicate_in_student.any():
    print(df.loc[~duplicate_in_student], end='\n\n')

# Approach 3: Use drop_duplicates method
df.drop_duplicates(subset=['Student'], inplace=True)



  Student           Date
0     Joe  December 2017
1     Bob     April 2018

  Student           Date
0     Joe  December 2017
1     Bob     April 2018
  • 1
    Thanks, any(df['Student'].duplicated()) was what I was after. May 8, 2018 at 23:35
  • Incidentally, I wasn't able to get the date conversion to work (my existing function did work though). I got the error AttributeError: 'DataFrame' object has no attribute 'Date' for the line df['Date'] = pd.to_datetime(df.Date) May 8, 2018 at 23:37
  • @JeffMitchell df.Date equals df['Date']. It is case-sensitive. Are you sure your columns is called Date? Could try df['Date'] too
    – Anton vBR
    May 9, 2018 at 8:56

You can use is_unique:


# equals true in case of no duplicates

Older pandas versions required:

  • 1
    You just need to do df['Student'].is_unique. df['Student'] is already a Pandas series
    – joshlk
    Mar 10, 2021 at 9:50
  • True, older pandas versions however struggled with that. Edited the answer now
    – Carsten
    Mar 10, 2021 at 11:01

If you want to know how many duplicates & what they are use:

df.pivot_table(index=['ColumnName'], aggfunc='size')

df.pivot_table(index=['ColumnName1',.., 'ColumnNameN'], aggfunc='size')

In addition to DataFrame.duplicated and Series.duplicated, Pandas also has a DataFrame.any and Series.any.

import pandas as pd

df = pd.read_csv("https://raw.githubusercontent.com/uiuc-cse/data-fa14/gh-pages/data/iris.csv")

With Python ≥3.8, check for duplicates and access some duplicate rows:

if (duplicated := df.duplicated(keep=False)).any():
    some_duplicates = df[duplicated].sort_values(by=df.columns.to_list()).head()
    print(f"Dataframe has one or more duplicated rows, for example:\n{some_duplicates}")

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