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I have a table of employees payments. They move around a lot and I need to summarise the data to find:

a) gaps in their work dates b) islands of work locations c) count the weeks for the islands

This sounds pretty straight forward but it's driving me mad.

So far I have a query which gets all the possible payment dates between the min and max payment_date. I then outer join the payment file. I then need to summarise the data ignoring gaps in pay less than 3 weeks.

Here's my code so far (I've left some superfluous stuff in):

declare @Start date declare @End date
select @Start=(select min(pay_date) from Location_ANALYSIS where ni_code='AN NI Number'), @End=(select max(pay_date) from Location_ANALYSIS where ni_code='AN NI Number')

WITH sample AS (
SELECT @Start AS dt
UNION ALL
SELECT DATEADD(dd, 7, dt)
FROM sample
WHERE DATEADD(dd, 7, dt) <= @End)
select sample.dt, isnull(o.Location_id,'{unknown}') as Location, sum(isnull(gross_pay,0)),isnull(cast(min(pay_date) as date),dt) as FirstDate,isnull(cast(dateadd(d,6,min(pay_date)) as date),dateadd(d,6,dt)) as LastDate
,GroupSequence = DENSE_RANK() over (order by isnull(o.Location_id,'{unknown}'))
from sample
left outer join Location_ANALYSIS o on o.PAY_DATE>=sample.dt and o.PAY_DATE<=DATEADD(d,6,sample.dt) and o.NI_CODE='AN NI Number'
group by isnull(o.Location_id,'{unknown}'),sample.dt
order by sample.dt

This gives me this list:

dt  Location(No column name)    FirstDate   LastDate    GroupSequence
2012-04-06  LONDON  900.75  2012-04-06  2012-04-12  2
2012-04-13  LONDON  555.75  2012-04-13  2012-04-19  2
2012-04-20  LONDON  244.53  2012-04-20  2012-04-26  2
2012-04-27  LONDON  524.58  2012-04-27  2012-05-03  2
2012-05-04  LONDON  500.58  2012-05-04  2012-05-10  2
2012-05-11  LONDON  467.58  2012-05-11  2012-05-17  2
2012-05-18  LONDON  258.78  2012-05-18  2012-05-24  2
2012-05-25  LONDON  479.58  2012-05-25  2012-05-31  2
2012-06-01  {unknown}   0.00    2012-06-01  2012-06-07  1
2012-06-08  {unknown}   0.00    2012-06-08  2012-06-14  1
2012-06-15  {unknown}   0.00    2012-06-15  2012-06-21  1
2012-06-22  {unknown}   0.00    2012-06-22  2012-06-28  1
2012-06-29  {unknown}   0.00    2012-06-29  2012-07-05  1
2012-07-06  LONDON  186.08  2012-07-06  2012-07-12  2
2012-07-13  {unknown}   0.00    2012-07-13  2012-07-19  1
2012-07-20  {unknown}   0.00    2012-07-20  2012-07-26  1
2012-07-27  {unknown}   0.00    2012-07-27  2012-08-02  1
2012-08-03  {unknown}   0.00    2012-08-03  2012-08-09  1
2012-08-10  {unknown}   0.00    2012-08-10  2012-08-16  1
2012-08-17  LONDON  767.58  2012-08-17  2012-08-23  2
2012-08-24  LONDON  758.58  2012-08-24  2012-08-30  2
2012-08-31  LONDON  794.58  2012-08-31  2012-09-06  2
2012-09-07  LONDON  389.58  2012-09-07  2012-09-13  2
2012-09-14  LONDON  428.58  2012-09-14  2012-09-20  2
2012-09-21  LONDON  629.58  2012-09-21  2012-09-27  2
2012-09-28  LONDON  734.58  2012-09-28  2012-10-04  2

My problem is I now need to group by location but the location can be repeated hence the DENSE_RANK() value can't be used to group by.

I need the data like this:

dt  Location    (No column name)    FirstDate   LastDate    GroupSequence
2012-04-06  LONDON  900.75  2012-04-06  2012-04-12  1
2012-04-13  LONDON  555.75  2012-04-13  2012-04-19  1
2012-04-20  LONDON  244.53  2012-04-20  2012-04-26  1
2012-04-27  LONDON  524.58  2012-04-27  2012-05-03  1
2012-05-04  LONDON  500.58  2012-05-04  2012-05-10  1
2012-05-11  LONDON  467.58  2012-05-11  2012-05-17  1
2012-05-18  LONDON  258.78  2012-05-18  2012-05-24  1
2012-05-25  LONDON  479.58  2012-05-25  2012-05-31  1
2012-06-01  {unknown}   0.00    2012-06-01  2012-06-07  2
2012-06-08  {unknown}   0.00    2012-06-08  2012-06-14  2
2012-06-15  {unknown}   0.00    2012-06-15  2012-06-21  2
2012-06-22  {unknown}   0.00    2012-06-22  2012-06-28  2
2012-06-29  {unknown}   0.00    2012-06-29  2012-07-05  2
2012-07-06  LONDON  186.08  2012-07-06  2012-07-12  3
2012-07-13  {unknown}   0.00    2012-07-13  2012-07-19  4
2012-07-20  {unknown}   0.00    2012-07-20  2012-07-26  4
2012-07-27  {unknown}   0.00    2012-07-27  2012-08-02  4
2012-08-03  {unknown}   0.00    2012-08-03  2012-08-09  4
2012-08-10  {unknown}   0.00    2012-08-10  2012-08-16  4
2012-08-17  LONDON  767.58  2012-08-17  2012-08-23  5
2012-08-24  LONDON  758.58  2012-08-24  2012-08-30  5
2012-08-31  LONDON  794.58  2012-08-31  2012-09-06  5
2012-09-07  LONDON  389.58  2012-09-07  2012-09-13  5
2012-09-14  LONDON  428.58  2012-09-14  2012-09-20  5
2012-09-21  LONDON  629.58  2012-09-21  2012-09-27  5
2012-09-28  LONDON  734.58  2012-09-28  2012-10-04  5

So I can group by the GroupSequence and ignore the sub 3-week gaps by Counting the group items.

In the end I want to produce this:

Location    START_DATE  END_DATE    PERIOD  TURNOVER
London  2012-04-06  2012-05-31  8   3932.13
{unknown}   2012-06-01  2012-07-05  5   0.00
London  2012-07-06  2012-07-05  0   186.08
{unknown}   2012-07-13  2012-08-16  5   0.00
London  2012-08-17  2012-10-04  7   4503.06

For what it's worth, I have got this working already using cursors and a lot of iteration but there are 1.5M payments records now and I'm desperately trying to speed things up by binning the cursors.

I hope this makes sense

share|improve this question
    
Which version of SQL-Server? Lead/Lag (in 2012) would help quite a bit. Otherwise you'd likely end up self-joining a subquery to look for breaks. –  Jason Quinones Jun 24 '13 at 18:01

1 Answer 1

I have a ugly solution for SQL 2012 I don't want to share. The problem is that I needed a window function that worked on the result of another window function. So I had to put my first result in a temporary table, then query the temp table in a CTE, and then grouped that to finally get what he wanted. Doesn't seem right. Also my sample data is different, but applies to this problem.

I think the good parts might be the use of window functions.

In my first part I use lag to put a 1 every time the Location changes.

CASE WHEN Location != LAG(Location, 1, 0) OVER (ORDER BY dt) THEN 1
ELSE 0 END [change]

The results looked like

Location, change, other_fields...
Montreal, 1, ...
Montreal, 0, ...
London, 1, ...
Miami, 1, ...
Montreal, 1, ...

In the next part I get a number that increments each time a new instance of location appears.

SUM(change) OVER ( -- I had a partition, but that isn't required
                  ORDER BY dt
                  ROWS UNBOUNDED PRECEDING) [change_id]

Those results look like:

Location, change_id, other_fields...
Montreal, 1, ...
Montreal, 1, ...
London, 2, ...
Miami, 3, ...
Montreal, 4, ...

I can then GROUP BY change_id, Location from the CTE to create the final output.

Location, sum_of_sales, other_aggregate_fields...
Montreal, 100, ...
London, 75, ...
Miami, 160, ...
Montreal, 75, ...
share|improve this answer
    
Hi, thanks for taking the time to post but i don't think it's the answer. My problem is I need the value to increment even if the location has already appeared. So, Montreal,1 Montreal,1 London,2 Miami,3 Montreal,4 Montreal,4 London,5 –  Deadeye Jun 25 '13 at 12:27
    
Yes, my example is bad and I have corrected it. But this will work. What happens is every time the location changes from the previous row change has a value of 1. So if the rows were Montreal, London, London, Montreal, it would result in 1, 1, 0, 1 from the first query, and 1, 2, 2, 3 from the second. Also the ordering has to stay consistent in both queries, that caused me trouble. –  Daniel Gimenez Jun 25 '13 at 12:46
    
@user1753793, did this ever work? If it didn't then I want to delete it. –  Daniel Gimenez Sep 13 '13 at 3:44

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