I am trying to access the index of a row in a function applied across an entire DataFrame
in Pandas. I have something like this:
df = pandas.DataFrame([[1,2,3],[4,5,6]], columns=['a','b','c'])
>>> df
a b c
0 1 2 3
1 4 5 6
and I'll define a function that access elements with a given row
def rowFunc(row):
return row['a'] + row['b'] * row['c']
I can apply it like so:
df['d'] = df.apply(rowFunc, axis=1)
>>> df
a b c d
0 1 2 3 7
1 4 5 6 34
Awesome! Now what if I want to incorporate the index into my function?
The index of any given row in this DataFrame
before adding d
would be Index([u'a', u'b', u'c', u'd'], dtype='object')
, but I want the 0 and 1. So I can't just access row.index
.
I know I could create a temporary column in the table where I store the index, but I'm wondering if it is stored in the row object somewhere.
apply
? It's much slower than performing vectorized ops on the frame itself. (Sometimes apply is the simplest way to do something, and performance considerations are often exaggerated, but for your particular example it's as easy not to use it.)