What's the easiest way in Pandas to turn this
df = pd.DataFrame({'Class': [1, 2], 'Students': ['A,B,C,D', 'E,A,C']})
df
Class Students
0 1 A,B,C,D
1 2 E,A,C
Into this?
Let's try combinations
:
from functools import partial
from itertools import combinations
(df.set_index('Class')['Students']
.str.split(',')
.map(partial(combinations, r=2))
.map(list)
.explode()
.reset_index())
Class Students
0 1 (A, B)
1 1 (A, C)
2 1 (A, D)
3 1 (B, C)
4 1 (B, D)
5 1 (C, D)
6 2 (E, A)
7 2 (E, C)
8 2 (A, C)
This need multiple steps with pandas
only , split
+ explode
, then drop_duplicates
df.Student=df.Student.str.split(',')
df=df.explode('Student')
df=df.merge(df,on='Class')
df[['Student_x','Student_y']]=np.sort(df[['Student_x','Student_y']].values, axis=1)
df=df.query('Student_x!=Student_y').drop_duplicates(['Student_x','Student_y'])
df['Student']=df[['Student_x','Student_y']].agg(','.join,axis=1)
df
Out[100]:
Class Student_x Student_y Student
1 1 A B A,B
2 1 A C A,C
3 1 A D A,D
6 1 B C B,C
7 1 B D B,D
11 1 C D C,D
17 2 A E A,E
18 2 C E C,E