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?

  • 3
    Do you actually want a column containing empty strings or rather N/A?
    – filmor
    May 1, 2013 at 21:50

16 Answers 16


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
  • 7
    This answer just created new rows for me.
    – logicbloke
    May 16, 2019 at 15:26
  • 4
    If the df is empty, you may want to use df['new'] = pd.Series() (see my answer below)
    – Carsten
    Jul 31, 2019 at 15:00
  • 5
    how to add multiple empty columns? Feb 26, 2020 at 10:24
  • 14
    @M.Mariscal df[["newcol1","newcol2","newcol3"]] = None. Jun 4, 2021 at 7:17
  • 1
    @skippy-le-grand-gourou, this code will trigger a SettingWithCopyWarning warning. Do this instead: df.loc[:, ["newcol1","newcol2","newcol3"]] = np.nan
    – think
    Jul 13, 2023 at 11:46

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 with .reindex(rows=[...]). Note that newer versions of Pandas (v>0.20) allow you to specify an axis keyword rather than explicitly assigning to columns or rows.

Here is an example adding multiple columns:

mydf = mydf.reindex(columns = mydf.columns.tolist() + ['newcol1','newcol2'])


mydf = mydf.reindex(mydf.columns.tolist() + ['newcol1','newcol2'], axis=1)  # 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 :)

  • 3
    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, 2019 at 14:20
  • @emunsing While searching for an answer to this question, I ultimately found your answer helpful. At first, however, it wasn't working for me as Pandas requires , axis=1 in version = 0.25. I attempted to modify your answer to include the updated version, but I was rejected by @kenlukas and @il_raffa. I hope everyone struggling to understand why your response isn't working for them--like I was--at least comes across this comment. Nov 24, 2019 at 14:15
  • @Griff - I've now updated my answer to be more accurate and explicit about version compatability issues. Thanks for highlighting this.
    – emunsing
    Nov 26, 2019 at 21:36

I like:

df['new'] = pd.Series(dtype='int')

# or use other dtypes like 'float', 'object', ...

If you have an empty dataframe, this solution makes sure that no new row containing only NaN is added.

Specifying dtype is not strictly necessary, however newer Pandas versions produce a DeprecationWarning if not specified.

  • 3
    This is the best way to insert a new column with predefined dtype.
    – normanius
    Apr 12, 2021 at 18:43
  • 1
    Totally agree. If for any reason you need to size the new series to any given df, you can add index=df.index.
    – Wtower
    Jun 19, 2022 at 10:58

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

  • 6
    More precisely, the columns will be added with NaNs. Aug 1, 2017 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. In order 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. Oct 24, 2017 at 11:04
df["C"] = ""
df["D"] = np.nan

Assignment will give you this warning SettingWithCopyWarning:

A value is trying to be set on a copy of a slice from a DataFrame. Try using .loc[row_indexer,col_indexer] = value instead

so its better to use insert:

df.insert(index, column-name, column-value)

If this answer helps you don't forget to upvote


if you want to add column name from a list

for i in a:

@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'])
  • 2
    Please don't use Python 2.7... Jul 20, 2022 at 7:27

One can use df.insert(index_to_insert_at, column_header, init_value) to insert new column at a specific index.

cost_tbl.insert(1, "col_name", "") 

The above statement would insert an empty Column after the first column.


this will also work for multiple columns:

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

df1 = pd.DataFrame(columns=['C','D','E'])
df = df.join(df1, how="outer")

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

Then do whatever you want to do with the columns pd.Series.fillna(),pd.Series.map() etc.


You can do

df['column'] = None #This works. This will create a new column with None type
df.column = None #This will work only when the column is already present in the dataframe 

If you have a list of columns that you want to be empty, you can use assign, then comprehension dict, then dict unpacking.

>>> df = pd.DataFrame({"A": [1,2,3], "B": [2,3,4]})
>>> nan_cols_name = ["C","D","whatever"]
>>> df.assign(**{col:np.nan for col in nan_cols_name})

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

You can also unpack multiple dict in a dict that you unpack if you want different values for different columns.

df = pd.DataFrame({"A": [1,2,3], "B": [2,3,4]})
nan_cols_name = ["C","D","whatever"]
empty_string_cols_name = ["E","F","bad column with space"]
df = df.assign(**{
    **{col:np.nan for col in my_empy_columns_name}, 
    **{col:"" for col in empty_string_cols_name}

The below code address the question "How do I add n number of empty columns to my existing dataframe". In the interest of keeping solutions to similar problems in one place, I am adding it here.

Approach 1 (to create 64 additional columns with column names from 1-64)

m = list(range(1,65,1)) 
df.join(dd).replace(np.nan,'') #df is the dataframe that already exists

Approach 2 (to create 64 additional columns with column names from 1-64)

df.reindex(df.columns.tolist() + list(range(1,65,1)), axis=1).replace(np.nan,'')

Sorry for I did not explain my answer really well at beginning. There is another way to add an new column to an existing dataframe. 1st step, make a new empty data frame (with all the columns in your data frame, plus a new or few columns you want to add) called df_temp 2nd step, combine the df_temp and your data frame.

df_temp = pd.DataFrame(columns=(df_null.columns.tolist() + ['empty']))
df = pd.concat([df_temp, df])

It might be the best solution, but it is another way to think about this question.

the reason of I am using this method is because I am get this warning all the time:

: SettingWithCopyWarning: 
A value is trying to be set on a copy of a slice from a DataFrame.
Try using .loc[row_indexer,col_indexer] = value instead

See the caveats in the documentation: https://pandas.pydata.org/pandas-docs/stable/user_guide/indexing.html#returning-a-view-versus-a-copy
  df["empty1"], df["empty2"] = [np.nan, ""]

great I found the way to disable the Warning

pd.options.mode.chained_assignment = None 
  • 1
    Ok so... make sure that when giving an answer please give some info on what is happening line by line of possible. Because the person asking the question won't learn from this will he? He will copy and paste and his code will work and he won't know why. So I suggest adding a bit more info.
    – user13645394
    Aug 9, 2020 at 3:30

The reason I was looking for such a solution is simply to add spaces between multiple DFs which have been joined column-wise using the pd.concat function and then written to excel using xlsxwriter.

df[' ']=df.apply(lambda _: '', axis=1)
df_2 = pd.concat([df,df1],axis=1)                #worked but only once. 
# Note: df & df1 have the same rows which is my index. 
df_2[' ']=df_2.apply(lambda _: '', axis=1)       #didn't work this time !!?     
df_4 = pd.concat([df_2,df_3],axis=1)

I then replaced the second lambda call with

df_2['']=''                                 #which appears to add a blank column
df_4 = pd.concat([df_2,df_3],axis=1)

The output I tested it on was using xlsxwriter to excel. Jupyter blank columns look the same as in excel although doesnt have xlsx formatting. Not sure why the second Lambda call didnt work.


You can add multiple empty columns by directly assigning a list of values. Below is an example where column C is a column of empty strings and D is a column of NaNs.

df = pd.DataFrame({"A": [1, 2, 3], "B": [2, 3, 4]})
df[['C', 'D']] = ['', float('nan')]


You can create multiple columns of a specific value by item assignment as well. Below is an example where columns E, F and G are initialized with NaN values.

df[["E","F","G"]] = float('nan')

# this can be done using `assign` as well
df = df.assign(**dict.fromkeys(['E', 'F', 'G'], float('nan')))

If you're getting a SettingWithCopyWarning when creating a new column, that indicates that your dataframe was created from another dataframe using a filtering operation, so simply turning on copy-on-write mode (which is planned to be the default behavior by pandas 3.0) would silence that warning (see this answer for more info).

pd.set_option('mode.copy_on_write', True)          # turn on CoW
df = pd.DataFrame({"A": [1,2,3], "B": [2,3,4]})
df1 = df.query("A<3")
df1[['C', 'D']] = ['', float('nan')]

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