4
df1 = {
    'vouchers': [100, 200, 300, 400],
    'units': [11, 12, 12, 13],
    'some_other_data': ['a', 'b', 'c', 'd'],
    }
df2 = {
    'vouchers': [500, 200, 600, 300],
    'units': [11, 12, 12, 13],
    'some_other_data': ['b', 'd', 'c', 'a'],
    }

Given the two dataframes like above, I want to do the following: if voucher from df1 can be found in df2, and their corresponding unit is the same, then delete the entire voucher row from df1.

So in this case the desired output would be:

df1 = {
    'vouchers': [100, 300, 400],
    'units': [11, 12, 13],
    'some_other_data': ['a', 'c', 'd'],
    }

What would be the best way to achieve this?

4

You can do this efficiently with index operations, using pd.Index.isin:

u = df1.set_index(['vouchers', 'units'])
df1[~u.index.isin(pd.MultiIndex.from_arrays([df2.vouchers, df2.units]))]

   vouchers  units some_other_data
0       100     11               a
2       300     12               c
3       400     13               d
  • 1
    this is nice man :-) multiple index ~ wow – Wen-Ben Jan 11 at 15:52
3

Doing with merge indicator , after we get the index need to remove , using drop

idx=df1.merge(df2,on=['vouchers','units'],indicator=True,how='left').\
     loc[lambda x : x['_merge']=='both'].index
df1=df1.drop(idx,axis=0)
df1
Out[374]: 
   vouchers  units some_other_data
0       100     11               a
2       300     12               c
3       400     13               d
2

Though we have many good answers, but the questions seems interesting so as the learning hence, i admit it in a great interest and would like to place another version which looks little simpler by using the booleans expression:

First DataFrame:

>>> df1
   vouchers  units some_other_data
0       100     11               a
1       200     12               b
2       300     12               c
3       400     13               d

Second DataFrame:

>>> df2
   vouchers  units some_other_data
0       500     11               a
1       200     12               b
2       600     12               c
3       300     13               d

Possible Simpler answer:

>>> df1[(df1 != df2).any(1)]
   vouchers  units some_other_data
0       100     11               a
2       300     12               c
3       400     13               d

Solution 2: Using merge + indicator + query

>>> df1.merge(df2, how='outer', indicator=True).query('_merge == "left_only"').drop('_merge', 1)
   vouchers  units some_other_data
0       100     11               a
2       300     12               c
3       400     13               d

Solution 3:

>>> df1[~df1.isin(df2).all(axis=1)]
   vouchers  units some_other_data
0       100     11               a
2       300     12               c
3       400     13               d
  • I really like the last solution for readability, but it will only work if some_other_data is the same in both dataframes. Could it be possibly be adjusted to work even when the data is different? (I will also adjust my question) – barciewicz Jan 11 at 18:15
  • @barciewicz, thanks for liking it , however first answer is more robust for the provided data, if you like it you can always upvote :-) – pygo Jan 11 at 18:18
1

One possibility via pd.DataFrame.duplicated:

df = pd.concat([df1, df2], ignore_index=True)
df = df.loc[~df.duplicated(subset=['vouchers', 'units'], keep=False)]
df = df.reindex(df.index & df1.index)

print(df)

#   some_other_data  units  vouchers
# 0               a     11       100
# 2               c     12       300
# 3               d     13       400
0

My solution:

df1 = {
    'vouchers': [100, 200, 300, 400],
    'units': [11, 12, 12, 13],
    'some_other_data': ['a', 'b', 'c', 'd']
    }
df2 = {
    'vouchers': [500, 200, 600, 300],
    'units': [11, 12, 12, 13],
    'some_other_data': ['a', 'b', 'c', 'd']
    }  

y = 0
for x in range(len(df1['vouchers'])):
    if df1['vouchers'][x-y] == df2['vouchers'][x]:
        if df1['units'][x-y] == df2['units'][x]:
            for key in df1.keys():
                del df1[key][x]
            y += 1
0

Try this, it is simple:

excs = [] #will store the index of the values which are equal

for i, (key, value) in enumerate(zip(df1["vouchers"], df1["units"])):
  for key2, value2 in zip(df2["vouchers"], df2["units"]):
    if key == key2 and value == value2:
      excs.append(i)

for exc in excs:
  del(df1["vouchers"][exc])
  del(df1["units"][exc])

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