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I have customer records with id, timestamp and status.

ID, TS, STATUS
1 10 GOOD
1 20 GOOD
1 25 BAD
1 30 BAD
1 50 BAD
1 600 GOOD
2 40 GOOD
.. ... 

I am trying to calculate how much time is spent in consecutive BAD statuses (lets imagine order above is correct) per customer. So for customer id=1, 30-25,50-30,600-50 in total 575 seconds was spent in BAD status.

What is the method of doing this in Pandas? If I calculate .diff() on TS, that would give me differences, but how can I tie that 1) to the customer 2) certain status "blocks" for that customer?

Sample data:

df = pandas.DataFrame({'ID':[1,1,1,1,1,1,2],
                       'TS':[10,20,25,30,50,600,40],
                       'Status':['G','G','B','B','B','G','G']
                       },
                      columns=['ID','TS','Status'])

Thanks,

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2 Answers 2

up vote 2 down vote accepted
In [1]: df = DataFrame({'ID':[1,1,1,1,1,2,2],'TS':[10,20,25,30,50,10,40],'Stat
us':['G','G','B','B','B','B','B']}, columns=['ID','TS','Status'])

In [2]: f = lambda x: x.diff().sum()

In [3]: df['diff'] = df[df.Status=='B'].groupby('ID')['TS'].transform(f)

In [4]: df
Out[4]:
   ID  TS Status  diff
0   1  10      G   NaN
1   1  20      G   NaN
2   1  25      B    25
3   1  30      B    25
4   1  50      B    25
5   2  10      B    30
6   2  40      B    30

Explanation: Subset the dataframe to only those records with the desired Status. Groupby the ID and apply the lambda function diff().sum() to each group. Use transform instead of apply because transform returns an indexed series which you can use to assign to a new column 'diff'.

EDIT: New response to account for expanded question scope.

In [1]: df
Out[1]:
   ID   TS Status
0   1   10      G
1   1   20      G
2   1   25      B
3   1   30      B
4   1   50      B
5   1  600      G
6   2   40      G

In [2]: df['shift'] = -df['TS'].diff(-1)

In [3]: df['diff'] = df[df.Status=='B'].groupby('ID')['shift'].transform('sum')
In [4]: df
Out[4]:
   ID   TS Status  shift  diff
0   1   10      G     10   NaN
1   1   20      G      5   NaN
2   1   25      B      5   575
3   1   30      B     20   575
4   1   50      B    550   575
5   1  600      G   -560   NaN
6   2   40      G    NaN   NaN
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Hi - what do I do for the transition 50 BAD to 600 GOOD? I still want to count 550 in this sum.. –  user423805 Jan 7 '13 at 19:32
    
I've edited my response to try to account for your example and using your dataframe. –  Zelazny7 Jan 7 '13 at 19:52
    
very smart, you changed diff(1) to diff(-1) so that diff would be taken between i and i-1, but then the signs were all negative, hence -diff(-1). –  user423805 Jan 8 '13 at 8:50
1  
may want to consider the effect of calculating diff() on an ungrouped dataframe. i.e., what if the row with shift==-560 was bad? –  Garrett Jan 8 '13 at 16:43
    
crewbum is right, my solution does not cover those cases. His answer is the better one. –  Zelazny7 Jan 8 '13 at 17:01

Here's a solution to separately aggregate each contiguous block of bad status (part 2 of your question?).

In [5]: df = pandas.DataFrame({'ID':[1,1,1,1,1,1,1,1,2,2,2],
                               'TS':[10,20,25,30,50,600,650,670,40,50,60],
                               'Status':['G','G','B','B','B','G','B','B','G','B','B']
                               },
                               columns=['ID','TS','Status'])

In [6]: grp = df.groupby('ID')

In [7]: def status_change(df):
   ...:         return (df.Status.shift(1) != df.Status).astype(int)
   ...: 

In [8]: df['BlockId'] = grp.apply(lambda df: status_change(df).cumsum())

In [9]: df['Duration'] = grp.TS.diff().shift(-1)

In [10]: df
Out[10]: 
    ID   TS Status  BlockId  Duration
0    1   10      G        1        10
1    1   20      G        1         5
2    1   25      B        2         5
3    1   30      B        2        20
4    1   50      B        2       550
5    1  600      G        3        50
6    1  650      B        4        20
7    1  670      B        4       NaN
8    2   40      G        1        10
9    2   50      B        2        10
10   2   60      B        2       NaN

In [11]: df[df.Status == 'B'].groupby(['ID', 'BlockId']).Duration.sum()
Out[11]: 
ID  BlockId
1   2          575
    4           20
2   2           10
Name: Duration
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