19

I have a df X with columns with duplicate names:

In [77]: X_R
Out[77]: 
      dollars  dollars
   0   0.7085   0.5000

I want to rename it so that I have:

In [77]: X_R
Out[77]: 
       Retail   Cost
   0   0.7085   0.5000

Using the Pandas rename function does' work:

X_R.rename(index=str, columns={"dollars": "Retail", "dollars": "Cost"})

Just gives me two columns named Cost.

How can I rename the columns in this case?

2
  • 1
    X_R.columns = ['Retail','Cost']?
    – MaxU
    Nov 23 '16 at 22:04
  • 2
    how did you get the duplicated column names ?
    – user8864088
    Dec 4 '18 at 1:14
20

Here is a dynamic solution:

In [59]: df
Out[59]:
   a  x  x  x  z
0  6  2  7  7  8
1  6  6  3  1  1
2  6  6  7  5  6
3  8  3  6  1  8
4  5  7  5  3  0

In [60]: d
Out[60]: {'x': ['x1', 'x2', 'x3']}

In [61]: df.rename(columns=lambda c: d[c].pop(0) if c in d.keys() else c)
Out[61]:
   a  x1  x2  x3  z
0  6   2   7   7  8
1  6   6   3   1  1
2  6   6   7   5  6
3  8   3   6   1  8
4  5   7   5   3  0
2
  • I was wondering how to get the duplicated column names in pandas. Pandas only takes the last column, also if I read the data from file it gives me x x.1 x.2.
    – user8864088
    Dec 4 '18 at 1:10
  • @astro123, if you want to preserve duplicates in column names use mangle_dupe_cols=False parameter. df.columns[df.columns.duplicated()] - will give you duplicated column names
    – MaxU
    Dec 4 '18 at 14:31
15

Here is another dynamic solution that I think is nicer

In [59]: df
Out[59]:
   a  x  x  x  z
0  6  2  7  7  8
1  6  6  3  1  1
2  6  6  7  5  6
3  8  3  6  1  8
4  5  7  5  3  0
In [61]: class renamer():
             def __init__(self):
                  self.d = dict()

              def __call__(self, x):
                  if x not in self.d:
                      self.d[x] = 0
                      return x
                  else:
                      self.d[x] += 1
                      return "%s_%d" % (x, self.d[x])

          df.rename(columns=renamer())
Out[61]:
   a  x  x_1  x_2  z
0  6   2   7   7  8
1  6   6   3   1  1
2  6   6   7   5  6
3  8   3   6   1  8
4  5   7   5   3  0
1
  • thanks for this; i was able to use this to rename columns before doing a column drop... which apparently has trouble with duplicate column names?
    – beep_check
    Oct 10 '19 at 20:10
12
X_R.columns = ['Retail','Cost']
5

Not directly an answer, but since this a top search result, here is a short and flexible solution to append a suffix to duplicate column names:

# A dataframe with duplicated column names
df = pd.DataFrame([[1, 2, 3],
                   [4, 5, 6],
                   [7, 8, 9]])
df.columns = ['a', 'b', 'b']

# Columns to not rename
excluded = df.columns[~df.columns.duplicated(keep=False)]

# An incrementer
import itertools
inc = itertools.count().__next__

# A renamer
def ren(name):
    return f"{name}{inc()}" if name not in excluded else name

# Use inside rename()
df.rename(columns=ren)

 

    a   b   b              a  b0  b1
0   1   2   3          0   1   2   3
1   4   5   6    =>    1   4   5   6
2   7   8   8          2   7   8   9
1
  • Note that the suffix counter is shared, i.e. if you have multiple sets of duplicates they aren't handled independently. a, a, b, b becomes a0, a1, b2, b3.
    – wjakobw
    Oct 11 '21 at 13:22
4

MaxU's answer helped me with this same problem. In this answer, I add in a way to find those duplicated column headers.

First, we make a dictionary of the duplicated column names with values corresponding to the desired new column names. For this, the defaultdict subclass is required.

import pandas as pd
from collections import defaultdict

renamer = defaultdict()

We iterate over the duplicated column names to create a dictionary with keys being the duplicated column name and values being a list of new column names. I have chosen this list to be original name_0, original name_1, and so on.

for column_name in df.columns[df.columns.duplicated(keep=False)].tolist():
    if column_name not in renamer:
        renamer[column_name] = [column_name+'_0']
    else:
        renamer[column_name].append(column_name +'_'+str(len(renamer[column_name])))

print(renamer)
defaultdict(None, {'b': ['b_0', 'b_1', 'b_2', 'b_3'], 'c': ['c_0', 'c_1']})

Original dataframe:

print(df)
        a   b   b   b   b   c   c   d
Item 0  2   1   0   2   8   3   9   5
Item 1  3   2   7   3   5   4   6   2
Item 2  4   3   8   1   5   7   4   4
Item 3  5   5   3   6   0   5   2   5

Rename the duplicated columns by assigning the new names from our renamer defaultdict, leaving the unduplicated columns alone

df.rename(
    columns=lambda column_name: renamer[column_name].pop(0)
    if column_name in renamer 
    else column_name
)
        a   b_0 b_1 b_2 b_3 c_0 c_1 d
Item 0  2   1   0   2   8   3   9   5
Item 1  3   2   7   3   5   4   6   2
Item 2  4   3   8   1   5   7   4   4
Item 3  5   5   3   6   0   5   2   5

(As a sidenote, a couple of people have questioned why duplicated column names existed in the first place. For myself, I encountered duplicated column names when importing with the xlwings package (to deal with password-protected Excel files). You could also inadvertently create duplicate column names by using pd.concat.

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.