What's the easiest way to add an empty column to a pandas DataFrame object? The best I've stumbled upon is something like

df['foo'] = df.apply(lambda _: '', axis=1)

Is there a less perverse method?

  • Do you actually want a column containing empty strings or rather N/A? – filmor May 1 '13 at 21:50

If I understand correctly, assignment should fill:

>>> import numpy as np
>>> import pandas as pd
>>> df = pd.DataFrame({"A": [1,2,3], "B": [2,3,4]})
>>> df
   A  B
0  1  2
1  2  3
2  3  4
>>> df["C"] = ""
>>> df["D"] = np.nan
>>> df
   A  B C   D
0  1  2   NaN
1  2  3   NaN
2  3  4   NaN
  • This answer just created new rows for me. – logicbloke May 16 at 15:26
  • @logicbloke can you provide an example where this is happening? – craymichael Jun 13 at 1:58
  • @craymichael It's been a while but I believe I had number-indexed columns with no names and named rows and it just created a new row at the end. – logicbloke Jun 13 at 6:54

To add to DSM's answer and building on this associated question, I'd split the approach into two cases:

  • Adding a single column: Just assign empty values to the new columns, e.g. df['C'] = np.nan

  • Adding multiple columns: I'd suggest using the .reindex(columns=[...]) method of pandas to add the new columns to the dataframe's column index. This also works for adding multiple new rows.

Here is an example adding multiple columns:

mydf = mydf.reindex( mydf.columns.tolist() + ['newcol1','newcol2'])  # version >= 0.20.0


mydf = mydf.reindex( columns = mydf.columns.tolist() + ['newcol1','newcol2'])  # version < 0.20.0

You can also always concatenate a new (empty) dataframe to the existing dataframe, but that doesn't feel as pythonic to me :)

  • 1
    Example for version >= 0.20.0 deletes the DataFrame and adds the new columns as rows. Example for version < 0.20.0 works fine on Pandas Version 0.24.1 – Lalo Mar 11 at 14:20

an even simpler solution is:

df = df.reindex(columns = header_list)                

where "header_list" is a list of the headers you want to appear.

any header included in the list that is not found already in the dataframe will be added with blank cells below.

so if

header_list = ['a','b','c', 'd']

then c and d will be added as columns with blank cells

  • 2
    More precisely, the columns will be added with NaNs. – broccoli2000 Aug 1 '17 at 14:18

Starting with v0.16.0, DF.assign() could be used to assign new columns (single/multiple) to a DF. These columns get inserted in alphabetical order at the end of the DF.

This becomes advantageous compared to simple assignment in cases wherein you want to perform a series of chained operations directly on the returned dataframe.

Consider the same DF sample demonstrated by @DSM:

df = pd.DataFrame({"A": [1,2,3], "B": [2,3,4]})
   A  B
0  1  2
1  2  3
2  3  4

   A  B C   D
0  1  2   NaN
1  2  3   NaN
2  3  4   NaN

Note that this returns a copy with all the previous columns along with the newly created ones. Inorder for the original DF to be modified accordingly, use it like : df = df.assign(...) as it does not support inplace operation currently.

  • What is that datatype for C? I am trying to add by looping through a list of strings. But it does not use it. – eleijonmarck Oct 24 '17 at 11:04

@emunsing's answer is really cool for adding multiple columns, but I couldn't get it to work for me in python 2.7. Instead, I found this works:

mydf = mydf.reindex(columns = np.append( mydf.columns.values, ['newcol1','newcol2'])

if you want to add column name from a list

for i in a:

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