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?
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'])
or
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 :)
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
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]})
df
Out[18]:
A B
0 1 2
1 2 3
2 3 4
df.assign(C="",D=np.nan)
Out[21]:
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.
@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'])
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))
dd=pd.DataFrame(columns=m)
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
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.
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")
>>>df
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.
N/A
? - filmor