1

I have a dataframe like as shown below

ID,F1,F2,F3,F4,F5,F6,L1,L2,L3,L4,L5,L6
1,X,,X,,,X,A,B,C
1,X,,X,,,X,A,B,C
1,X,,X,,,X,A,B,C
2,X,,,X,,X,A,B,C,D,E
3,X,X,X,,,X,A
3,X,X,X,,,X,,B,,C
3,X,X,X,,,X,,D,C
4,X,X,,,,,A,B
4,,,,X,,X,G,H,I
4,,,X,,,,T

df = pd.read_clipboard(sep=',')

I would like to do the below

a) Remove full duplicates (where all values of each column match). ex: ID=1 (keep=first)

b) Collapse near duplicates into one row. ex: ID= 3 and 4. Near duplicates are rows where only ID match but rest of the F numbered and L number columns differ

I was trying the below but it results in incorrect output

The below code misses to copy other L numbered values which doesn't have NA before

df = df.drop_duplicates(keep='first') # this drops full duplicates ex:ID = 1
df.groupby(['ID'])['ID','F1','F2','F3','F4','F5','F6','L1','L2','L3','L4','L5','L6'].bfill().drop_duplicates(subset=['ID'],keep='first') 

In real data, there are 50 F columns and 50 L columns. For F columns the position of X is important and has to be correct whereas for L columns, it can be anywhere as long as it is captured, it is fine.

I expect my output to be like as shown below

enter image description here

1 Answer 1

2

Use:

#first omit all duplicates by all columns
df = df.drop_duplicates(keep='first')

cL = df.filter(like='L').columns
cF = df.filter(like='F').columns

def f(x):
     s =  pd.Series(x.stack().unique()).rename(lambda x: f'L{x + 1}')
     print (s)
     return s

#recreate L columns by remove missing values and duplicates
#f = lambda x: pd.Series(x.stack().unique()).rename(lambda x: f'L{x + 1}')
df1 = df[cL].groupby(df['ID']).apply(f).unstack()

#remove original L columns
df = df.drop(cL, axis=1)
#for F columns processing with original solution
df[cF] = df.groupby(['ID'])[cF].bfill()
#after remove duplicates for F columns add L columns in df1
df = df.drop_duplicates(subset=['ID'],keep='first').join(df1, on='ID')
print (df)
   ID F1   F2   F3   F4  F5 F6 L1 L2 L3   L4   L5   L6
0   1  X  NaN    X  NaN NaN  X  A  B  C  NaN  NaN  NaN
3   2  X  NaN  NaN    X NaN  X  A  B  C    D    E  NaN
4   3  X    X    X  NaN NaN  X  A  B  C    D  NaN  NaN
7   4  X    X    X    X NaN  X  A  B  G    H    I    T
17
  • @TheGreat - Can you explian why is in L4 value H ? This vaue is not in L4
    – jezrael
    Mar 18 at 6:08
  • 1
    We don't have to worry about positions for L column values. We just need to put everything in single row for each ID (if they have multiple rows). We need to worry about position only for F column values
    – The Great
    Mar 18 at 6:10
  • @TheGreat - One question - whats happens if more non duplicated values like number of L columns? Then is possible add new column L7 ?
    – jezrael
    Mar 18 at 6:32
  • Yes, you can add new column L7.
    – The Great
    Mar 18 at 6:32
  • 1
    Is it possible to write the above statement without lambda but by using for loop or whatever (just for my understanding). solution is perfect okay. So, I can try line by line to learn it works.
    – The Great
    Mar 18 at 6:44

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.