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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 D_Time

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.

df_SOF1.groupby('Location').sum()

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. __________________________________2012/11/01 I ran the following command on the 30 items above

df_SOF1.groupby('Transport').agg({'D_Time': sum})

D_Time

Transport
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)

Cheers

share|improve this question
    
That's an interesting question title you have there. –  Mike Bantegui Nov 1 '12 at 2:11
    
I was a little tired when posing the question lol! –  George Thompson Nov 1 '12 at 2:29
    
Could you provide an example: take 3 rows and show what operations you are trying to do and what results you are expecting (provide specific output). I don't understand what '7:53:00' + '7:56:00' might mean. To be able to substruct times you could combine date/time columns –  J.F. Sebastian Nov 1 '12 at 3:45
    
how have you found pandas to work with a million records? I have a large dataset also, and just reading the file is taking forever... –  pocketfullofcheese Nov 26 '12 at 21:57

1 Answer 1

up vote 1 down vote accepted

I didn't find any mentions about deltatime in pandas, and datetime module has one, so to convert D_Time to seconds is not bad idea:

def seconds(time_str):
    end_time = datetime.datetime.strptime(time_str,'%H:%M:%S')
    delta = end_time - datetime.datetime.strptime('0:0:0','%H:%M:%S')
    return delta.total_seconds()


df_SOF1.D_Time = df_SOF1.D_Time.apply(seconds)

result :

>>> df_SOF1.groupby('CostCentre').sum()
            Location  D_Time  count
CostCentre                         
0                 45   27180     69
2073             420  594660     21

moving datetime.datetime.strptime('0:0:0','%H:%M:%S') to global namespace can reduce exec time:

timeit.timeit("sec('01:01:01')", setup="from __main__ import sec",
              number=10000)
1.025843858718872

timeit.timeit("seconds('01:01:01')", setup="from __main__ import seconds",
              number=10000)
0.6128969192504883 
share|improve this answer
    
Many Many THANKS that looks just right I will give this a go, right now and let you know how I get on. LOL! –  George Thompson Nov 1 '12 at 16:15
    
You can accept answer if it helped you –  adray Nov 1 '12 at 17:30
    
adray I ran the above code –  George Thompson Nov 2 '12 at 17:20
    
Hi adray I ran the above function but I get the above error below AttributeError: type object 'datetime.datetime' has no attribute 'datetime' I beleive it has something to do with import datatime I am running python 2.7 how do you import your datetime module. Regards George –  George Thompson Nov 2 '12 at 17:23
    
Seems, you did "from datetime import datetime". Just do "import datetime" it's from standard library, so this should not be a problem. You can "dir(datetime)" to inspect avaliable methods –  adray Nov 2 '12 at 17:36

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