I have the following file (
df_SOF1.csv), it is 1 million records long
Location,Transport,Transport1,DateOccurred,CostCentre,D_Time,count 0,Lorry,Car,07/09/2012,0,0:00:00,2 1,Lorry,Car,11/09/2012,0,0:00:00,5 2,Lorry,Car,14/09/2012,0,0:00:00,30 3,Lorry,Car,14/09/2012,0,0:07:00,2 4,Lorry,Car,14/09/2012,0,0:29:00,1 5,Lorry,Car,14/09/2012,0,3:27:00,3 6,Lorry,Car,14/09/2012,0,3:28:00,4 7,Lorry,Car,21/09/2012,0,0:00:00,13 8,Lorry,Car,27/09/2012,0,0:00:00,8 9,Lorry,Car,28/09/2012,0,0:02:00,1 10,Train,Bus,03/09/2012,2073,7:49:00,1 11,Train,Bus,05/09/2012,2073,7:50:00,1 12,Train,Bus,06/09/2012,2073,7:52:00,1 13,Train,Bus,07/09/2012,2073,7:48:00,1 14,Train,Bus,08/09/2012,2073,7:55:00,1 15,Train,Bus,11/09/2012,2073,7:49:00,1 16,Train,Bus,12/09/2012,2073,7:52:00,1 17,Train,Bus,13/09/2012,2073,7:50:00,1 18,Train,Bus,14/09/2012,2073,7:54:00,1 19,Train,Bus,18/09/2012,2073,7:51:00,1 20,Train,Bus,19/09/2012,2073,7:50:00,1 21,Train,Bus,20/09/2012,2073,7:51:00,1 22,Train,Bus,21/09/2012,2073,7:52:00,1 23,Train,Bus,22/09/2012,2073,7:53:00,1 24,Train,Bus,23/09/2012,2073,7:49:00,1 25,Train,Bus,24/09/2012,2073,7:54:00,1 26,Train,Bus,25/09/2012,2073,7:55:00,1 27,Train,Bus,26/09/2012,2073,7:53:00,1 28,Train,Bus,27/09/2012,2073,7:55:00,1 29,Train,Bus,28/09/2012,2073,7:53:00,1 30,Train,Bus,29/09/2012,2073,7:56:00,1
I am using pandas to analyse it I have been been trying for at least 40 hours
to find a way to group the data in a way that I can aggregate the time column
I have loaded the required modules
I create a dataframe see below using
DateOccured as an index
df_SOF1 = read_csv('/users/fabulous/documents/df_SOF1.csv', index_col=3, parse_dates=True) # read file from disk
I can group by any column or iterate through any row e.g.
However I have not found a way to sum up and take the mean of the
D_Time column using pandas. I have read over 20 articles on timedeltas etc but am still not the wiser how I do this in pandas.
Any solution that can allow me do arithmetic on the
D_Time column would be appreciated. (even if it has to be done outside of pandas).
I thought one possible solution would be to change the
D_Time column into seconds.
I ran the following command on the 30 items above
Lorry 0:00:000:00:000:00:000:07:000:29:003:27:003:28... Train 7:49:007:50:007:52:007:48:007:55:007:49:007:52..
It seems to sum the values together physically rather than give a numerical sum (like adding strings)