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I have a table which has a table like this.

Jan----------A------------ 100
Jan----------B------------ 120
Feb----------A------------ 50
Mar----------A------------ 60
Mar----------B------------ 30

and so on

I have to calculate the expected sales for each month and book type based on the last 2 months sales. So for March and type A it would be (100+50)/2 = 75 For March and type B it is 120/1 since no data for Feb is there.

I was trying to use the lag function but it wouldn't work since there is data missing in a few rows.

Any ideas on this?

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Since it plans to ignore missing values, this should probably work. Don't have a database to test it on at the moment but will give it another go in the morning

  avg(sold_in_dollars) over (partition by book_type order by month
    range between interval '2' month preceding and interval '1' month preceding) as avg_sales
from myTable;

This sort of assumes that month has a date datatype and can be sorted on... if it's just a text string then you'll need something else.

Normally you could just use rows between 2 preceding and 1 preceding but but this will take the two previous data points and not necessarily the two previous months if there are rows missing.

You could work it out with lag but it would be a bit more complicated.

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+1 - I think it should be partitioned by month rather then book_type. Just an opinion... – Art Jan 28 '13 at 16:30

As far as I know, you can give a default value to lag() :

  SELECT Book_Type, 
         (lag(sold_in_Dollars, 1, 0) OVER(PARTITION BY Book_Type ORDER BY Month) + lag(sold_in_Dollars, 2, 0) OVER(PARTITION BY Book_Type ORDER BY Month))/2 AS expected_sales
    FROM your_table
GROUP BY Book_Type

(Assuming Month column doesn't really contain JAN or FEB but real, orderable dates.)

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What about something like (forgive the sql server syntax, but you get the idea):

Select Book_type, AVG(sold_in_dollars)
from MyTable
where Month in (Month(DATEADD('mm'-1,GETDATE)),Month(DATEADD('mm'-2,GETDATE)))
group by booktype
share|improve this answer
He wants 120/1, not (120+0)/2, which is silly. – milan Nov 23 '10 at 23:57
plug the values in and run it. – SteveCav Nov 24 '10 at 0:16
As far as I know average ignores nulls, so if you average over two rows and one of the values is null, then it only divides by 1. – Mike Meyers Nov 24 '10 at 0:19
@MikeyByCrikey: But the OP provides an example that NULL isn't used -- if there's no sales in the month, the month doesn't appear in the table at all. – OMG Ponies Nov 24 '10 at 0:40
@OMG Ponies: My comment makes (a little) more sense if read as an @ replay to milan which it was meant to be. But then reading the original comment this morning I'm taking a different meaning from it than I did last night. – Mike Meyers Nov 24 '10 at 8:43

A partition outer join can help create the missing data. Create a set of months and join those values to each row by the month and perform the join once for each book type. I created the months January through April in this example:

with test_data as
  select to_date('01-JAN-2010', 'DD-MON-YYYY') month, 'A' book_type, 100 sold_in_dollars from dual union all
  select to_date('01-JAN-2010', 'DD-MON-YYYY') month, 'B' book_type, 120 sold_in_dollars from dual union all
  select to_date('01-FEB-2010', 'DD-MON-YYYY') month, 'A' book_type, 50 sold_in_dollars from dual union all
  select to_date('01-MAR-2010', 'DD-MON-YYYY') month, 'A' book_type, 60 sold_in_dollars from dual union all
  select to_date('01-MAR-2010', 'DD-MON-YYYY') month, 'B' book_type, 30 sold_in_dollars from dual
select book_type, month, sold_in_dollars
  ,case when denominator = 0 then 'N/A' else to_char(numerator / denominator) end expected_sales
  select test_data.book_type, all_months.month, sold_in_dollars
    ,count(sold_in_dollars) over
      (partition by book_type order by all_months.month rows between 2 preceding and 1 preceding) denominator
    ,sum(sold_in_dollars) over
      (partition by book_type order by all_months.month rows between 2 preceding and 1 preceding) numerator
      select add_months(to_date('01-JAN-2010', 'DD-MON-YYYY'), level-1) month from dual connect by level <= 4
    ) all_months
    left outer join test_data partition by (test_data.book_type) on all_months.month = test_data.month 
order by book_type, month
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