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I have a data frame hourly time series of rainfall at 3 locations.The head and tail provides the details of the data as below. In order to understand the diurnal variation of precipitation, I would like to club all the hourly data from all days and all years.

hourly_series.head()
                           loc1_data  loc2_data loc3_data
2013-10-01 05:30:00+00:00        0.5          1          1
2013-10-01 06:30:00+00:00        NaN        NaN        NaN
2013-10-01 07:30:00+00:00        NaN        NaN        NaN
2013-10-01 08:30:00+00:00          0          0          0
2013-10-01 09:30:00+00:00        NaN        NaN        NaN

[5 rows x 3 columns]
hourly_series.tail()
                           loc1_data  loc2_data  loc3_data
2014-01-01 00:30:00+00:00        7.5          1          5
2014-01-01 01:30:00+00:00          0          0          0
2014-01-01 02:30:00+00:00          0          2          0
2014-01-01 03:30:00+00:00          0        4.5          0
2014-01-01 04:30:00+00:00          1          0          0

I tried

hourly_grouped = hourly_series.groupby([(lambda x:x.year,lambda x:x.month, lambda x: x.time)])

However, I could'nt achieve the desired output. I am new to the pandas package.

share|improve this question
    
What was the output from your attempt? – ouflak Apr 1 '14 at 11:58
up vote 2 down vote accepted

Are you looking for this?

hourly_series['hour'] = hourly_series.index
hourly_series['hour'] = hourly_series['hour'].apply(lambda x: x.hour)
hourly_series.groupby(['hour']).var() # Or any other stats function
share|improve this answer
    
Thanks@Shravan. another quick question is how do i resample between two given timestamps to arrive at daily rainfall.For example I would like to calculate daily rainfall by summing all not NaN values between 7:30 given day to 7:30 next day.NOTE there could be more than 24 values in the timeseries as the frequency is not hourly. – user1142937 Apr 1 '14 at 18:00
    
Hello! If you are looking for daily sum between some start and end date this should work. start = pd.to_datetime('2012-05-30 00:00:00') end = pd.to_datetime('2012-06-01 00:00:00') hourly_series['day'] = hourly_series.index hourly_series['day'] = hourly_series['day'].apply(lambda x: x.date()) hourly_series[start:end].groupby(['day']).sum(skipna = True) – Shravan Apr 2 '14 at 4:55

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