1

I have a DataFrame looking like this:

    Col1         Col2         Col3
1   'Content1.1' 'Content1.2' 'Content1.3' 
2   'Content2.1' 'Content2.2' 'Content2.3' 
3   'Content3.1' 'Content3.2' 'Content3.3' 
...

Now I want to add a Series like this:

Col4  'Content2.4'
Col5  'Content2.5'
Col6  'Content2.6'

to a specific index in the DataFrame, for example, at index 2 like this:

    Col1         Col2         Col3         Col4         Col5         Col6
1   'Content1.1' 'Content1.2' 'Content1.3' NaN          NaN          NaN
2   'Content2.1' 'Content2.2' 'Content2.3' 'Content2.4' 'Content2.5' 'Content2.6'
3   'Content3.1' 'Content3.2' 'Content3.3' NaN          NaN          NaN
...

For now I use the following code snippet, with content_to_add being the series and data being the DataFrame:

for column, value in content_to_add.iteritems():
    data.loc[index, column] = value

This works, but I would prefer a solution without having to iterate through the series, since that way I have to add each column one after another, with big datasets that seems like a bottleneck.

2

Use to_frame and concat:

index = 2
pd.concat([data, content_to_add.to_frame(index).T], axis=1)

           Col1          Col2          Col3          Col4          Col5          Col6
1  'Content1.1'  'Content1.2'  'Content1.3'           NaN           NaN           NaN
2  'Content2.1'  'Content2.2'  'Content2.3'  'Content2.4'  'Content2.5'  'Content2.6'
3  'Content3.1'  'Content3.2'  'Content3.3'           NaN           NaN           NaN

Where the argument to to_frame is the index you want to concat the series rows to.

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