A B DATE 2013-05-01 473077 71333 2013-05-02 35131 62441 2013-05-03 727 27381 2013-05-04 481 1206 2013-05-05 226 1733 2013-05-06 NaN 4064 2013-05-07 NaN 41151 2013-05-08 NaN 8144 2013-05-09 NaN 23 2013-05-10 NaN 10
say i have the dataframe above. what is the easiest way to get a series with the same index which is the average of the columns A and B? the average needs to ignore NaN values. the twist is that this solution needs to be flexible to the addition of new columns to the dataframe.
the closest i have come was
df.sum(axis=1) / len(df.columns)
however, this does not seem to ignore the NaN values
(note: i am still a bit new to the pandas library, so i'm guessing there's an obvious way to do this that my limited brain is simply not seeing)