My dataframe looks like this :

pd.DataFrame([["t1","d2","e3","r4"],
         ["t1","d2","e2","r4"],
         ["t1","d2","e1","r4"]],columns=["a","b","c","d"])

and I want:

pd.DataFrame([["t1","d2","e3","r4","e1","e2"]],
columns=["a","b","c","d","c1","c2"])

ie I have only 1 column that values differs and I want to create a new dataframe with columns added when new values are observed. Is there an easy way to do this ?

up vote 7 down vote accepted

Edit: To generalize for any single non-unique column:

Ucols = df.columns[(df.nunique() == 1)].tolist()
df_out = df.set_index(Ucols).set_index(df.groupby(Ucols).cumcount(), append=True).unstack()
df_out.columns = [f'{i}{j}' if j != 0 else f'{i}' for i,j in df_out.columns]
print(df_out.reset_index())

Output:

    a   b   d   c  c1  c2
0  t1  d2  r4  e3  e2  e1

Original Answer

Use:

df_out = df.set_index(['a','b','d',df.groupby(['a','b','d']).cumcount()]).unstack()

df_out.columns = [f'{i}{j}' if j != 0 else f'{i}' for i,j in df_out.columns]

df_out.reset_index()

Output:

    a   b   d   c  c1  c2
0  t1  d2  r4  e3  e2  e1
  • 2
    It looks to me that this doesn't generalize. I mean you know already that column c has more values. – user32185 Sep 24 at 14:03
  • 1
    Updated solution to handle not knowing 'c' has more than one value. Thanks. – Scott Boston Sep 24 at 14:14

You can use a dictionary comprehension. For consistency, I've included integer labeling on all columns.

res = pd.DataFrame({f'{col}{idx}': val for col in df for idx, val in \
                    enumerate(df[col].unique(), 1)}, index=[0])

print(res)

   a1  b1  c1  c2  c3  d1
0  t1  d2  e3  e2  e1  r4

An alternative to df[col].unique() is df[col].drop_duplicates(), though the latter may incur an overhead for iterating a pd.Series object versus np.ndarray.

  • Here you can unique instead of drop_duplicates() – user32185 Sep 24 at 14:09
  • 1
    @user32185, Good point, have included that alternative. I believe it should be more efficient as unique returns an array, i.e. no pd.Series overhead. – jpp Sep 24 at 14:11
  • I'm curious to know if it's possible to use a comprehension with a for inside the else in order to obtain the OP requested output. See my answer as reference. – user32185 Sep 24 at 14:26
  • @user32185, You can probably do something like d = {1: ''}; f'{col}{d.get(idx, idx)}', since you can use dict.get within an f-string. So if it's a 1 it'll just be an empty string, otherwise return the integer. – jpp Sep 24 at 14:32

Not as beautiful as Scott answer but the logic you are looking for is:

out = pd.DataFrame()
for col in df.columns:
    values =df[col].unique()
    if len(values)==1:
        out[col]=values
    else:
        for i,value in enumerate(values):
            out[col+str(i+1)]= value

Using drop_duplicates

s=df.reset_index().melt('index').drop_duplicates(['variable','value'],keep='first')


pd.DataFrame([s.value.values.tolist()],columns=s['variable']+s['index'].astype(str))
Out[1151]: 
   a0  b0  c0  c1  c2  d0
0  t1  d2  e3  e2  e1  r4

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