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I have an hourly dataframe in the following format over several years:

Date/Time            Value
01.03.2010 00:00:00  60
01.03.2010 01:00:00  50
01.03.2010 02:00:00  52
01.03.2010 03:00:00  49
31.12.2013 23:00:00  77

and I am using the following code to get the average of each hour for every year in the data:

In [11]: year_hour_means = df1.groupby(lambda x: (x.year, x.hour)).mean()
In [12]: year_hour_means
(2010, 0)     60
(2010, 1)     50
(2010, 2)     52
(2010, 3)     49

Now I want to put that code into a function, so I am able to dynamically chose to group the hours by quarters, years or months and also do that for a certain daterange of the dataframe.

I have written the following function:

def datameans(df, avggrouper1, avggrouper2, startdate, enddate):  
    import pandas as pd
    df_hour_means = df[startdate:enddate]      
    df_hour_means = df_hour_means.groupby(lambda x: (avggrouper1, avggrouper2)).mean()  
    print df_hour_means.to_string()

I am calling the function like this

datameans(dataframe, 'x.quarter', 'x.hour' , '2010-01-01 00:00:00', '2012-12-31 23:00:00')

Unfortunately this does not work. Can somebody help me how I could have the years, quarters, months and days as different parameters to calculate the means?

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1 Answer 1

up vote 3 down vote accepted

I think what you are looking for is getattr:

def datameans(df, avggrouper1, avggrouper2, startdate, enddate):  
    df_hour_means = df[startdate:enddate]      
    df_hour_means = df_hour_means.groupby(
        lambda x: (getattr(x,avggrouper1), getattr(x,avggrouper2))).mean()  
    print df_hour_means.to_string()

and (like Matti John's answer) you'd call datameans with

datameans(dataframe, 'quarter', 'hour' , '2010-01-01 00:00:00', '2012-12-31 23:00:00')

Alternatively, use operator.attrgetter:

import operator
keyfunc = operator.attrgetter(avggrouper1, avggrouper2)
df_hour_means = df_hour_means.groupby(keyfunc).mean()  
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great! Many thanks to you both. With this it works perfectly. –  Markus W Jun 26 '13 at 14:10

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