23

so by using

df_ab = pd.concat([df_a, df_b], axis=1, join='inner')

I get a Dataframe looking like this:

    A    A    B    B
0   5    5   10   10
1   6    6   19   19

and I want to remove its multiple columns:

    A     B
0   5    10
1   6    19

Because df_a and df_b are subsets of the same Dataframe I know that all rows have the same values if the column name is the same. I have a working solution:

df_ab = df_ab.T.drop_duplicates().T

but I have a number of rows so this one is very slow. Does someone have a faster solution? I would prefer a solution where explicit knowledge of the column names isn't needed.

0

4 Answers 4

56

The easiest way is:

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

One line of code can change everything

4
  • 3
    This should be the verified answer, as not ALL columns have to be the same exactly all the time
    – Jeru Luke
    Jul 6, 2017 at 18:46
  • This fails for large number of columns. I get this error MemoryError: Unable to allocate 480. GiB for an array with shape (87494, 736334) and data type object. This is the shape of my dataframe (736334, 1312). May 7, 2020 at 3:19
  • If I were you I would not read all data at once. Read it in chunks. E.g. Column/N and operates in smaller chunks or randomly read the 5 numbers of rows saw (736334, 5) and remove duplicates columns. Then get the remaining columns as a list, and read your data keeping only those columns. Look at Pandas-ish library like Modin, Dask, Ray, Blaze that support large data and checkout pandas.pydata.org/pandas-docs/stable/user_guide/scale.html May 7, 2020 at 4:07
  • Plus if you have GPUs see cudf. May 7, 2020 at 4:19
13

Perhaps you would be better off avoiding the problem altogether, by using pd.merge instead of pd.concat:

df_ab = pd.merge(df_a, df_b, how='inner')

This will merge df_a and df_b on all columns shared in common.

3
  • Yes, that's actually better than my concat :D thanks. Aug 17, 2015 at 0:50
  • 2
    Although concat can take more than two at a time.
    – Teepeemm
    Feb 3, 2021 at 23:41
  • 1
    Merging is generating duplicate rows. Couldn't figure out why. But concatenation doesn't do that.
    – hafiz031
    Nov 8, 2021 at 19:28
12

You may use np.unique to get indices of unique columns, and then use .iloc:

>>> df
   A  A   B   B
0  5  5  10  10
1  6  6  19  19
>>> _, i = np.unique(df.columns, return_index=True)
>>> df.iloc[:, i]
   A   B
0  5  10
1  6  19
1
9

For those who skip the question and look straight at answers, the simplest way for me is to use OP's solution (assuming you don't run into the same performance issues he did: Transpose the dataframe, use drop_duplicates, and then Transpose it again:

df.T.drop_duplicates().T
3
  • 3
    This worked for me, but was very slow. Answer from @Prayson W. Daniel was a fraction of the speed.
    – Declan
    Sep 27, 2019 at 14:32
  • That answer only works if the column names are identical. If. you have identical column values and different names, you'd want the Transpose solution. Sep 14, 2020 at 8:52
  • This may be slower because it creates a new object instead of operating on a view. With the solution of @Prayson W. Daniel, I kept getting the SettingWithCopyWarning.
    – Teepeemm
    Feb 3, 2021 at 23:58

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