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I understand that to drop a column you use df.drop('column name', axis=1). Is there a way to drop a column using a numerical index instead of the column name?

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I figure this will not work for the reasons shown here: stackoverflow.com/questions/13411544/… – John Nov 30 '13 at 7:37

You can delete column on i index like this:

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

It could work strange, if you have duplicate names in columns, so to do this you can rename column you want to delete column by new name. Or you can reassign DataFrame like this:

df = df.iloc[:, [j for j, c in enumerate(df.columns) if j != i]]
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Drop multiple columns like this:

cols = [1,2,4,5,12]
df.drop(df.columns[cols],axis=1,inplace=True)
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What is inplace argument for? – sidpat Feb 8 at 15:57
1  
if you do not use inplace=True then you will have to do df = df.drop() if you want to see the change in df itself. – muon Feb 8 at 20:21

if you really want to do it with integers (but why?), then you could build a dictionary.

col_dict = {x: col for x, col in enumerate(df.columns)}

then df = df.drop(col_dict[0], 1) will work as desired

edit: you can put it in a function that does that for you, though this way it creates the dictionary every time you call it

def drop_col_n(df, col_n_to_drop):
    col_dict = {x: col for x, col in enumerate(df.columns)}
    return df.drop(col_dict[col_n_to_drop], 1)

df = drop_col_n(df, 2)
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