17

Consider following dataframe which has columns with same name (Apparently this does happens, currently I have a dataset like this! :( )

>>> df = pd.DataFrame({"a":range(10,15),"b":range(5,10)})
>>> df.rename(columns={"b":"a"},inplace=True)
df

    a   a
0   10  5
1   11  6
2   12  7
3   13  8
4   14  9

>>> df.columns
Index(['a', 'a'], dtype='object')

I would expect that when dropping by index , only the column with the respective index would be gone, but apparently this is not the case.

>>> df.drop(df.columns[-1],1)

0
1
2
3
4

Is there a way to get rid of columns with duplicated column names?

EDIT: I choose missleading values for the first column, fixed now

EDIT2: the expected outcome is

  a
0 10
1 11
2 12 
3 13
4 14
3
  • Indeed I passed 1 to drop columns. I also got out empty df (the 01234 is index). I was just expecting I would get rid of the second(last, containg values 5 to 9, hence the -1) column and the dataframe would not become empty, but would have index 0 to 4 and values 0 to 4. Sry for choosing misleading values for the "a" column – Robin Nemeth Mar 4 '16 at 14:08
  • @Pocin "Is there a way to get rid of columns with duplicated column names?" All columns had duplicated names and you got rid of them what else do you want? – Stop harming Monica Mar 4 '16 at 14:11
  • My bad, today is not my day. In the edit I added expected outcome. The confusion springs from the fact that if I would like to get rid of all columns with duplicated names i would use df.drop("a",1). I wanted to bypass this by using integer column indices, but it had same effect as df.drop("a",1) – Robin Nemeth Mar 4 '16 at 14:14
21

Actually just do this:

In [183]:
df.ix[:,~df.columns.duplicated()]

Out[183]:
   a
0  0
1  1
2  2
3  3
4  4

So this index all rows and then uses the column mask generated from duplicated and invert the mask using ~

The output from duplicated:

In [184]:
df.columns.duplicated()

Out[184]:
array([False,  True], dtype=bool)

UPDATE

As .ix is deprecated (since v0.20.1) you should do any of the following:

df.iloc[:,~df.columns.duplicated()]

or

df.loc[:,~df.columns.duplicated()]

Thanks to @DavideFiocco for alerting me

0

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