Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.
DateOccurred    CostCentre  TimeDifference
03/09/2012  2073    28138
03/09/2012  6078    34844
03/09/2012  8273    31215
03/09/2012  8367    28160
03/09/2012  8959    32037
03/09/2012  9292    30118
03/09/2012  9532    34200
03/09/2012  9705    27240
03/09/2012  10085   31431
03/09/2012  10220   22555
04/09/2012  6078    41126
04/09/2012  7569    31101
04/09/2012  8273    30994
04/09/2012  8959    30064
04/09/2012  9532    34655
04/09/2012  9705    26475
04/09/2012  10085   31443
04/09/2012  10220   33970
05/09/2012  2073    28221
05/09/2012  6078    27894
05/09/2012  7569    29012
05/09/2012  8239    42208
05/09/2012  8273    31128
05/09/2012  8367    27993
05/09/2012  8959    20669
05/09/2012  9292    33070
05/09/2012  9532    8189
05/09/2012  9705    27540
05/09/2012  10085   28798
05/09/2012  10220   23164
06/09/2012  2073    28350
06/09/2012  6078    35648
06/09/2012  7042    27129
06/09/2012  7569    31546
06/09/2012  8239    39945
06/09/2012  8273    31107
06/09/2012  8367    27795
06/09/2012  9292    32974
06/09/2012  9532    30320
06/09/2012  9705    37462
06/09/2012  10085   31703
06/09/2012  10220   7807
06/09/2012  14573   186
07/09/2012  0   0
07/09/2012  0   0
07/09/2012  2073    28036
07/09/2012  6078    31969
07/09/2012  7569    32941
07/09/2012  8273    30073
07/09/2012  8367    29391
07/09/2012  9292    31927
07/09/2012  9532    30127
07/09/2012  9705    27604
07/09/2012  10085   28108
08/09/2012  2073    28463
10/09/2012  6078    31266
10/09/2012  8239    16390
10/09/2012  8273    31140
10/09/2012  8959    30858
10/09/2012  9532    30794
10/09/2012  9705    28752
11/09/2012  0   0
11/09/2012  0   0
11/09/2012  0   0
11/09/2012  0   0
11/09/2012  0   0
11/09/2012  2073    28159
11/09/2012  6078    36835
11/09/2012  8239    45354
11/09/2012  8273    30922
11/09/2012  8367    31382
11/09/2012  8959    29670
11/09/2012  9292    33582
11/09/2012  9705    29394
11/09/2012  10085   17140
12/09/2012  2073    28283
12/09/2012  6078    31139
12/09/2012  7042    35063
12/09/2012  8273    31075
12/09/2012  8367    29795
12/09/2012  9292    33496
12/09/2012  9532    31669
12/09/2012  9705    26166
12/09/2012  10085   29889
12/09/2012  10220   35656
13/09/2012  2073    28144
13/09/2012  6078    30544
13/09/2012  7097    30866
13/09/2012  8273    30772
13/09/2012  8367    32387
13/09/2012  8959    29307
13/09/2012  9292    32348
13/09/2012  9532    28137
13/09/2012  9705    28823
13/09/2012  10085   31543
13/09/2012  10220   28293
14/09/2012  0   12433
14/09/2012  0   12434
14/09/2012  0   12434
14/09/2012  0   12434
14/09/2012  0   12434
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   12433
14/09/2012  0   0
14/09/2012  0   12433
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   1720
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   384
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   0
14/09/2012  0   383
14/09/2012  2073    28438
14/09/2012  6078    27255
14/09/2012  8273    29989
14/09/2012  8959    26892
14/09/2012  9292    33202
14/09/2012  9532    30862
14/09/2012  9705    26857
14/09/2012  10085   32657
14/09/2012  10220   27296
15/09/2012  6078    3832
17/09/2012  6078    30004
17/09/2012  7569    30390
17/09/2012  8239    41421
17/09/2012  8273    26337
17/09/2012  8367    31631
17/09/2012  8959    17989
17/09/2012  9292    35703
17/09/2012  9532    36542
17/09/2012  9705    27488
17/09/2012  10085   30849
17/09/2012  10220   32575
18/09/2012  2073    28293
18/09/2012  6078    27450
18/09/2012  7569    30323
18/09/2012  8239    38481
18/09/2012  8273    31154
18/09/2012  8367    27944
18/09/2012  8959    28196
18/09/2012  9292    30844
18/09/2012  9532    33128
18/09/2012  9705    32100
19/09/2012  2073    28227
19/09/2012  6078    32243
19/09/2012  7569    29041
19/09/2012  8239    42791
19/09/2012  8273    30966
19/09/2012  8367    26420
19/09/2012  8959    29394
19/09/2012  9292    14865
19/09/2012  9532    23618
19/09/2012  10085   31614
19/09/2012  10220   8686
20/09/2012  2073    28260
20/09/2012  6078    30446
20/09/2012  7097    34909
20/09/2012  7569    30869
20/09/2012  8273    31079
20/09/2012  8367    30162
20/09/2012  9292    13104
20/09/2012  9532    36614
20/09/2012  9705    35617
20/09/2012  10085   31821
20/09/2012  10220   30055
20/09/2012  14573   468
21/09/2012  0   0
21/09/2012  0   0
21/09/2012  0   0
21/09/2012  0   0
21/09/2012  0   0
21/09/2012  0   0
21/09/2012  0   0
21/09/2012  0   0
21/09/2012  0   0
21/09/2012  0   3
21/09/2012  0   0
21/09/2012  0   0
21/09/2012  0   3
21/09/2012  2073    28308
21/09/2012  6078    33833
21/09/2012  7569    32335
21/09/2012  9292    33824
21/09/2012  9532    33376
21/09/2012  10220   21002
22/09/2012  2073    28402
23/09/2012  2073    28109
24/09/2012  2073    28431
24/09/2012  6078    30027
24/09/2012  7097    31914
24/09/2012  8239    35617
24/09/2012  8273    30670
24/09/2012  8367    29084
24/09/2012  8959    31023
24/09/2012  9292    34394
24/09/2012  9532    31255
24/09/2012  9705    18758
24/09/2012  10085   29290
24/09/2012  10220   33230
25/09/2012  2073    28506
25/09/2012  6078    32043
25/09/2012  7042    34953
25/09/2012  7569    30898
25/09/2012  8239    41297
25/09/2012  8273    31012
25/09/2012  8367    29645
25/09/2012  8959    29904
25/09/2012  9532    37875
25/09/2012  9705    13280
25/09/2012  10085   35023
25/09/2012  10220   31359
26/09/2012  2073    28388
26/09/2012  6078    29765
26/09/2012  7097    31561
26/09/2012  7569    29151
26/09/2012  8239    40369
26/09/2012  8367    28174
26/09/2012  8959    26554
26/09/2012  9292    32104
26/09/2012  9532    33194
26/09/2012  9705    30377
26/09/2012  10085   31503
26/09/2012  10220   28310
27/09/2012  0   0
27/09/2012  0   0
27/09/2012  0   0
27/09/2012  0   0
27/09/2012  0   0
27/09/2012  0   0
27/09/2012  0   0
27/09/2012  0   0
27/09/2012  2073    28491
27/09/2012  6078    31137
27/09/2012  8239    38403
27/09/2012  8273    31117
27/09/2012  8367    28462
27/09/2012  9292    32387
27/09/2012  9532    23023
27/09/2012  9705    32790
27/09/2012  10085   33460
27/09/2012  10220   31782
28/09/2012  0   161
28/09/2012  2073    28381
28/09/2012  7569    32322
28/09/2012  8239    38362
28/09/2012  8273    30533
28/09/2012  8959    17128
28/09/2012  9292    32484
28/09/2012  9532    18586
28/09/2012  9705    27902
29/09/2012  2073    28583
  1. Above is a sample of a dataframe which has a million records
  2. How can I slice or group it by Week or Month and sum seconds column by cost centre.?*
  3. I have read/tried 30 of the articles on this site which appear by doing a search for
    List item pandas, python, groupby, split, dataframe, week with out success.
  4. I am using python 2.7 and pandas 0.9.
  5. I've read the Time Series / Date functionality section in the pandas 0.9 tutorial but couldn't make anything work with a dataframe. I would like to use the features in there such as Business week

Expected Output

DateOccurred CostCentre TimeDifference
2012-03-11            0         500000
2012-03-11         2073         570000
2012-03-18            0         650000
2012-03-18         2073         425000 
2012-03-25            0         378000
2012-04-25         2073         480000
share|improve this question
    
Appologies for not stating the question clearly. what I am trying to do is produce is the following DateOccurred CostCentre TimeDifference 2012-03-11 0 500000 2012-03-11 2073 570000 2012-03-18 0 650000 2012-03-18 2073 425000 2012-03-25 0 378000 2012-04-25 2073 480000 –  George Thompson Nov 5 '12 at 0:56

2 Answers 2

up vote 1 down vote accepted

Perhaps group by CostCentre first, then use Series/DataFrame resample()?

In [72]: centers = {}

In [73]: for center, idx in df.groupby("CostCentre").groups.iteritems():
   ....:     timediff = df.ix[idx].set_index("Date")['TimeDifference']
   ....:     centers[center] = timediff.resample("W", how=sum)

In [77]: pd.concat(centers, names=['CostCentre'])
Out[77]: 
CostCentre  Date      
0           2012-09-09         0
            2012-09-16     89522
            2012-09-23         6
            2012-09-30       161
2073        2012-09-09    141208
            2012-09-16    113024
            2012-09-23    169599
            2012-09-30    170780
6078        2012-09-09    171481
            2012-09-16    160871
            2012-09-23    153976
            2012-09-30    122972

Additional details:

When parse_dates is True for the pd.read_* functions, index_col must also be set.

In [28]: df = pd.read_clipboard(sep=' +', parse_dates=True, index_col=0,
   ....:                        dayfirst=True)

In [30]: df.head()
Out[30]: 
              CostCentre  TimeDifference
DateOccurred                            
2012-09-03          2073           28138
2012-09-03          6078           34844
2012-09-03          8273           31215
2012-09-03          8367           28160
2012-09-03          8959           32037

Since resample() requires a TimeSeries-indexed frame/series, setting the index during creation eliminates the need to set the index for each group individually. GroupBy objects also have an apply method, which is basically syntactic sugar around the "combine" step done with pd.concat() above.

In [37]: x = df.groupby("CostCentre").apply(lambda df: 
   ....:         df['TimeDifference'].resample("W", how=sum))

In [38]: x.head(12)
Out[38]: 
CostCentre  DateOccurred
0           2012-09-09           0
            2012-09-16       89522
            2012-09-23           6
            2012-09-30         161
2073        2012-09-09      141208
            2012-09-16      113024
            2012-09-23      169599
            2012-09-30      170780
6078        2012-09-09      171481
            2012-09-16      160871
            2012-09-23      153976
            2012-09-30      122972
share|improve this answer
    
@crewburn I am recieving the following error TypeError: Only valid with DatetimeIndex or PeriodIndex, from the following line centers[center] = timediff.resample("W", how=sum) Not quite sure what the cause is when read in the file with read_csv do I need to index anything? –  George Thompson Nov 6 '12 at 5:46
    
Though I omitted that step, you need to convert the date column from string to datetime objects. With read_csv, see the converters argument. I can update the answer if you'd like an example, but wasn't sure how the frame was being read. –  Garrett Nov 6 '12 at 7:59
    
@crewburn an example would be nice, I am using python 2.73 and pandas 0.9 I have loaded the following modules, import datetime, import time, import pandas.io.date_converters as conv # pandas date API, from datetime import timedelta, I am reading the file like this df_SOF2 = read_csv('/users/fabulous/documents/df_SOF1.csv', parse_dates=True) # read file from disk. –  George Thompson Nov 6 '12 at 10:19
    
FYI, updated the answer using parse_dates=True. parse_dates=True may have previously parsed all columns, but according to the current docs, parse_dates=True only parses the index now. –  Garrett Nov 6 '12 at 16:27
    
Thanks for the update I am just testing it on my mac will update call shortly. –  George Thompson Nov 6 '12 at 21:12

Here's a way to take your input (as text) and group it the way you want. The key is to use a dictionary for each grouping (date, then centre).

import collections
import datetime
import functools

def delta_totals_by_date_and_centre(in_file):
    # Use a defaultdict instead of a normal dict so that missing values are
    # automatically created. by_date is a mapping (dict) from a tuple of (year, week)
    # to another mapping (dict) from centre to total delta time.
    by_date = collections.defaultdict(functools.partial(collections.defaultdict, int))

    # For each line in the input...
    for line in in_file:
        # Parse the three fields of each line into date, int ,int.
        date, centre, delta = line.split()
        date = datetime.datetime.strptime(date, "%d/%m/%Y").date()
        centre = int(centre)
        delta = int(delta)

        # Determine the year and week of the year.
        year, week, weekday = date.isocalendar()
        year_and_week = year, week

        # Add the time delta.
        by_date[year_and_week][centre] += delta

    # Yield each result, in order.
    for year_and_week, by_centre in sorted(by_date.items()):
        for centre, delta in sorted(by_centre.items()):
            yield year_and_week, centre, delta

For your sample input, it produces this output (where the first column is year-week_of_the_year).

2012-36     0      0
2012-36  2073 141208
2012-36  6078 171481
2012-36  7042  27129
2012-36  7569 124600
2012-36  8239  82153
2012-36  8273 154517
2012-36  8367 113339
2012-36  8959  82770
2012-36  9292 128089
2012-36  9532 137491
2012-36  9705 146321
2012-36 10085 151483
2012-36 10220  87496
2012-36 14573    186
2012-37     0  89522
2012-37  2073 113024
2012-37  6078 160871
2012-37  7042  35063
2012-37  7097  30866
2012-37  8239  61744
2012-37  8273 153898
2012-37  8367  93564
2012-37  8959 116727
2012-37  9292 132628
2012-37  9532 121462
2012-37  9705 139992
2012-37 10085 111229
2012-37 10220  91245
2012-38     0      6
2012-38  2073 169599
2012-38  6078 153976
2012-38  7097  34909
2012-38  7569 152958
2012-38  8239 122693
2012-38  8273 119536
2012-38  8367 116157
2012-38  8959  75579
2012-38  9292 128340
2012-38  9532 163278
2012-38  9705  95205
2012-38 10085  94284
2012-38 10220  92318
2012-38 14573    468
2012-39     0    161
2012-39  2073 170780
2012-39  6078 122972
2012-39  7042  34953
2012-39  7097  63475
2012-39  7569  92371
2012-39  8239 194048
2012-39  8273 123332
2012-39  8367 115365
2012-39  8959 104609
2012-39  9292 131369
2012-39  9532 143933
2012-39  9705 123107
2012-39 10085 129276
2012-39 10220 124681
share|improve this answer
    
I am a newbie to python I have run the above code in python notebook and the result does not display. I am looking up the yield command as I haven't used it before. do I need to enter something else to view the output as shown above? –  George Thompson Nov 6 '12 at 6:40

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.