I need to compare two dataframes of different size row-wise and print out non matching rows. Lets take the following two:

df1 = DataFrame({
'Buyer': ['Carl', 'Carl', 'Carl'],
'Quantity': [18, 3, 5, ]})

df2 = DataFrame({
'Buyer': ['Carl', 'Mark', 'Carl', 'Carl'],
'Quantity': [2, 1, 18, 5]})

What is the most efficient way to row-wise over df2 and print out rows not in df1 e.g:

Buyer     Quantity 
Carl         2
Mark         1

Important: I do not want to have row:

Buyer     Quantity 
Carl         3

included in the diff:

I have already tried: Comparing two dataframes of different length row by row and adding columns for each row with equal value and Outputting difference in two Pandas dataframes side by side - highlighting the difference

But these do not match with my problem.

Thank you


  • 2
    Why there is no accepted answer? – famargar Sep 28 '17 at 8:29

merge the 2 dfs using method 'outer' and pass param indicator=True this will tell you whether the rows are present in both/left only/right only, you can then filter the merged df after:

In [22]:
merged = df1.merge(df2, indicator=True, how='outer')
merged[merged['_merge'] == 'right_only']

  Buyer  Quantity      _merge
3  Carl         2  right_only
4  Mark         1  right_only
  • 1
    above script helped me as well, thanks – Plinus Aug 5 '17 at 7:57
  • df3 = merged.loc[merged['_merge'] == 'left_only'] df3 .drop(['_merge'], axis = 1, inplace = True) giving Warning (from warnings module): File "D:/Work/psnl/python/pyCharm/compare2RSfile.py", line 1 import os, sys, ntpath, string, datetime, winsound, time SettingWithCopyWarning: A value is trying to be set on a copy of a slice from a DataFrame, how to overcome from this warning – Plinus Aug 5 '17 at 8:02
  • even it gives same warning if add new field, df3['Value'] = '' – Plinus Aug 5 '17 at 8:07
  • 1
    clear as water! +1 – famargar Sep 28 '17 at 8:37
  • df['_merge'].map({'both':'old','right_only':'remove','left_only':'new'}) – citynorman Aug 24 '18 at 19:35
diff = set(zip(df2.Buyer, df2.Quantity)) - set(zip(df1.Buyer, df1.Quantity))

This is the first solution that came to mind. You can then put the diff set back in a DF for presentation.

  • I like this. But how do you stuff the result diff set into a new DF? – eezis Jan 2 '18 at 15:18
  • 1
    @eezis In this case: DataFrame(list(diff), columns=['Buyer', 'Quantity']). Bear in mind that this does not conserve the indices of the original DF. – Shovalt Jan 3 '18 at 7:57

Try the following if you only care about adding the new Buyers to the other df:

df_delta=df2[df2['Buyer'].apply(lambda x: x not in df1['Buyer'].values)]

you may find this as the best:

df2[ ~df2.isin(df1)].dropna()

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.