I have a legacy database with the following table (note: no primary key)
It defines each a record for each accommodation "unit" and date, and the price for that date.
CREATE TABLE [single_date_availability]( [accommodation_id] [int], [accommodation_unit_id] [int], [arrival_date] [datetime], [price] [decimal](18, 0), [offer_discount] [decimal](18, 0), [num_pax] [int], [rooms_remaining] [int], [eta_available] [int], [date_correct] [datetime], [max_occupancy] [int], [max_adults] [int], [min_stay_nights] [int], [max_stay_nights] [int], [nights_remaining_count] [numeric](2, 0) ) ON [PRIMARY]
The table contains roughly 16,500 records.
But I need to multiply out the data in a completely different format, like such:
- Total price
Up to a max duration for each arrival date.
I'm using the following query to achieve this:
SELECT MIN(units.MaxAccommodationAvailabilityPax) AS MaxAccommodationAvailabilityPax, MIN(units.MaxAccommodationAvailabilityAdults) AS MaxAccommodationAvailabilityAdults, StartDate AS DepartureDate, EndDate AS ReturnDate, DATEDIFF(DAY, StartDate, EndDate) AS Duration, MIN(units.accommodation_id) AS AccommodationID, x.accommodation_unit_id AS AccommodationUnitID, SUM(Price) AS Price, MAX(num_pax) AS Occupancy, SUM(offer_discount) AS OfferSaving, MIN(date_correct) AS DateTimeCorrect, MIN(rooms_remaining) AS RoomsRemaining, MIN(CONVERT(int, dbo.IsGreaterThan(ISNULL(eta_available, 0)+ISNULL(nights_remaining_count, 0), 0))) AS EtaAvailable FROM single_date_availability fp INNER JOIN ( /* This gets max availability for the whole accommodation on the arrival date */ SELECT accommodation_id, arrival_date, CASE EtaAvailable WHEN 1 THEN 99 ELSE MaxAccommodationAvailabilityPax END AS MaxAccommodationAvailabilityPax, CASE EtaAvailable WHEN 1 THEN 99 ELSE MaxAccommodationAvailabilityAdults END AS MaxAccommodationAvailabilityAdults FROM (SELECT accommodation_id, arrival_date, SUM(MaximumOccupancy) MaxAccommodationAvailabilityPax, SUM(MaximumAdults) MaxAccommodationAvailabilityAdults, CONVERT(int, WebData.dbo.IsGreaterThan(SUM(EtaAvailable), -1)) AS EtaAvailable FROM (SELECT accommodation_id, arrival_date, MIN(rooms_remaining*max_occupancy) as MaximumOccupancy, MIN(rooms_remaining*max_adults) as MaximumAdults, MIN(ISNULL(eta_available, 0) + ISNULL(nights_remaining_count, 0) - 1) as EtaAvailable FROM single_date_availability GROUP BY accommodation_id, accommodation_unit_id, arrival_date) a GROUP BY accommodation_id, arrival_date) b ) units ON fp.accommodation_id = units.accommodation_id AND fp.arrival_date = units.arrival_date INNER JOIN ( /* This gets every combination of StartDate and EndDate for each Unit/Occupancy */ SELECT DISTINCT a.accommodation_unit_id, StartDate = a.arrival_date, EndDate = b.arrival_date+1, Duration = DATEDIFF(DAY, a.arrival_date, b.arrival_date)+1 FROM single_date_availability AS a INNER JOIN (SELECT accommodation_unit_id, arrival_date FROM single_date_availability) AS b ON a.accommodation_unit_id = b.accommodation_unit_id AND DATEDIFF(DAY, a.arrival_date, b.arrival_date)+1 >= a.min_stay_nights AND DATEDIFF(DAY, a.arrival_date, b.arrival_date)+1 <= (CASE a.max_stay_nights WHEN 0 THEN 28 ELSE a.max_stay_nights END) ) x ON fp.accommodation_unit_id = x.accommodation_unit_id AND fp.arrival_date >= x.StartDate AND fp.arrival_date < x.EndDate GROUP BY x.accommodation_unit_id, StartDate, EndDate /* This ensures that all dates between StartDate and EndDate are actually available */ HAVING COUNT(*) = DATEDIFF(DAY, StartDate, EndDate)
This works and gives me about 413,000 records. The results of this query I'm using to update another table.
But the query performs quite badly, as you might expect with so many self-joins. It takes about 15 secs to run locally, but on our test server takes over 1:30 mins, and on our live SQL server takes over 30 secs; and in all cases it maxes out the CPU while it's performing the larger of the joins.
No other processes are accessing the table at the same time, and that can be assumed.
I don't really mind the length of the query so much as the demand on the CPU, which can cause problems for other queries trying to access other databases / tables at the same time.
I have run the query through query optimizer and followed all the recommendations for indexes and statistics.
Any help on making this query faster or at least less CPU intensive would be much appreciated. If it needs to be broken down into different stages, that's acceptable.
To be honest speed is not so important as it's a bulk operation performed on a table that's not being touched by other processes.
I'm not particularly looking for comments on how terrible and un-normalized this structure is... that, I already know :-)