0

I have a DataFrame ('main') that has about 300 columns. I created a smaller DataFrame ('public') and have been working on this.

I now want to delete the columns contained within 'public' from the larger DataFrame ('main').

I've tried the following instructions:

http://pandas.pydata.org/pandas-docs/dev/generated/pandas.DataFrame.drop.html

Python Pandas - Deleting multiple series from a data frame in one command

without any success, along with various other statements that have been unsuccessful.

The columns that make up 'public' are not consecutive - i.e. they are taken from various points in the larger DataFrame 'main'. All of the columns have the same Index. [Not sure if this is important, but 'public' was created using the 'join' function].

Yes, I'm being lazy - I don't want to have to type out the names of every column! I'm hoping there's a way to use the DataFrame 'public' in a statement that will allow deletion of these columns en masse. If anyone has any suggestions and/or guidance I'd be most grateful.

(Have Python 2.7 and am using Pandas, numpy, math, pylab etc.)

Thanks in advance.

0

1 Answer 1

0

Ignore my question - Murphy's Law prevails and I've just solved it.

I was using the statement from the stackoverflow question mentioned below:

df.drop(df.columns[1:], axis=1) 

and this was not working. I have instead used

df = df.drop(df2, axis=1)

and this worked (df = main, df2 = public). Simple really once you don't overthink it.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.