30

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

Andy

  • 2
    Why there is no accepted answer? – famargar Sep 28 '17 at 8:29
77

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']

Out[22]:
  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
6
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
2

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)]
0

you may find this as the best:

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

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