# Match values of multiple columns by using 2 columns

Sample DF:

``````ID   Name     Match1    Random_Col    Match2    Price    Match3     Match4       Match5
1    Apple      Yes     Random Value   No        10      Yes        Yes          Yes
2    Apple      Yes     Random Value1  No        10      Yes        Yes          No
3    Apple      Yes     Random Value2  No        15      No         Yes          Yes
4    Orange     No      Random Value   Yes       12      Yes        Yes          No
5    Orange     No      Random Value   Yes       12      No         No           No
6    Banana     Yes     Random Value   No        15      Yes        No           No
7    Apple      Yes     Random Value   No        15      No        Yes          Yes
``````

Expected DF:

``````ID   Name     Match1    Random_Col    Match2  Price Match3  Match4 Match5 Final_Match
1    Apple      Yes     Random Value   No      10    Yes    Yes    Yes   Full
2    Apple      Yes     Random Value1  No      10    Yes    Yes    No  Partial
3    Apple      Yes     Random Value2  No      15    No     Yes    Yes Partial
4    Orange     No      Random Value   Yes     12    Yes    Yes    No    Full
5    Orange     No      Random Value   Yes     12    No     No     No Partial
6    Banana     Yes     Random Value   No      15    Yes    No     No   Full
7    Apple      Yes     Random Value   No      15    No     Yes    Yes Partial
``````

Problem Statement:

1. If combination `Name` and `Price` is non-repetitive simply put `Full` in `Final_Match` column (Example ID 6)
2. If the combination `Name` and `Price` are repetitive then within them count `Yes` in Match1 to Match5 columns, whichever has greater "Yes" put `Full` for that one and `Partial` for the other (Example ID 1 & 2 and 4,5)

3. If the combination `Name` and `Price` are repetitive then within an ID count `Yes` in Match1 to Match5 columns,if they have equal "Yes" put `Partial` in both (Example ID 3,7)

Code

``````s = (df.replace({'Yes': 1, 'No': 0})
.iloc[:, 1:]
.sum(1))

df['final_match'] = np.where(s.groupby(df[['Price','Name']]).rank(ascending=False).eq(1), 'Full ','Partial')
``````

The above code works when I had to `groupby` by only 1 column lets say `Name` but it is not working for combination.

Any help!!

• Can you also provide code to reproduce your dataframe? – Mohit Motwani Mar 13 at 9:13

Use:

``````#count Yes values only in Match columns
s = df.filter(like='Match').eq('Yes').sum(axis=1)
m1 = ~df.duplicated(['Price','Name'], keep=False)
#create new column filled by Series s
m2 = df.assign(new=s).groupby(['Price','Name'])['new'].rank(ascending=False).eq(1)
df['final_match'] = np.where(m1 | m2, 'Full ','Partial')
print (df)

ID    Name Match1     Random_Col Match2  Price Match3 Match4 Match5  \
0   1   Apple    Yes   Random Value     No     10    Yes    Yes    Yes
1   2   Apple    Yes  Random Value1     No     10    Yes    Yes     No
2   3   Apple    Yes  Random Value2     No     15     No    Yes    Yes
3   4  Orange     No   Random Value    Yes     12    Yes    Yes     No
4   5  Orange     No   Random Value    Yes     12     No     No     No
5   6  Banana    Yes   Random Value     No     15    Yes     No     No
6   7   Apple    Yes   Random Value     No     15     No    Yes    Yes

final_match
0       Full
1     Partial
2     Partial
3       Full
4     Partial
5       Full
6     Partial
``````