I have a history table containing a single entry when an entry in another table changes. I need to perform a query that produces the sum() or count() of the most recent entries for each time period.
Here's the relevant bits of my table structure:
CREATE TABLE opportunity_history ( "id" BIGSERIAL PRIMARY KEY, "opportunity_id" TEXT NOT NULL, "employee_external_id" TEXT NOT NULL, "item_date" TIMESTAMP NOT NULL, "amount" NUMERIC(18,2) NOT NULL DEFAULT 0 );
So for example if I have a single opportunity created in January, and updated twice in February, I want to count it once in Jan, and only once in Feb.
The other similar queries I have (which don't involve history - just singular data points) work fine by joining to a generate_series() in a single query. I would love to be able to achieve something similar. Here's an example using generate_series:
SELECT Periods.day, sum(amount) as value FROM ( SELECT generate_series('2012-01-01', '2013-01-01', '1 month'::interval)::date AS day ) as Periods LEFT JOIN opportunity ON ( employee_external_id='...' AND close_date >= Periods.day AND close_date < Periods.day ) GROUP BY 1 ORDER BY 1
However that doesn't work for opportunity_history, because if a single item is listed in the same month twice you get duplication.
I'm really stumped on this one. I've tried doing it via WITH RECURSIVE and nothing seems to unfold properly for me.
Example data (skipping id columns and using dates instead of timestamps):
'foo', 'user1', 2013-01-01, 100 'bar', 'user1', 2013-01-02, 50 'foo', 'user1', 2013-01-12, 100 'bar', 'user1', 2013-01-13, 55 'foo', 'user1', 2013-01-23, 100 'foo', 'user1', 2013-02-04, 100 'foo', 'user1', 2013-02-15, 100 'bar', 'user1', 2013-03-01, 55
For sum I would want:
2013-01 155 (foo on 2013-01-23 and bar on 2013-01-13) 2013-02 100 (foo on 2013-02-15) 2013-03 55 (bar on 2013-03-01)
Or for count:
2013-01 2 2013-02 1 2013-03 1
Also note I'm happy to use "extended" SQL such as CTEs or WITH RECURSIVE or window functions if required. I'd rather avoid a loop in a Pg/plsql function if I can do it in a single query.