I have a small(ish) aggregated data set in Netezza, about 10m rows, on a TwinFin 6.
To simplify the question a bit, I've cut down the number of columns:
CUSTOMER_SALES_AGG CUSTOMER_ID NUMBER_TRANS TOTAL_DOLLARS TOTAL_ITEMS
This table is distributed on CUSTOMER_ID, with 1 row per customer ID, collecting the total transactions the customer has made, the total dollars they've spent, and the # of items that they've purchased.
I'm attempting to calculate the decile ranking of each customer across all customers, by # transactions, total $ spent, and total items bought. E.G. if a customer spent >= 90% of other customers, they would rank in the 1st decile.
I've built a query:
SELECT CUSTOMER_ID, NUMBER_TRANS, NTILE(10) OVER(ORDER BY NUMBER_TRANS DESC NULLS LAST) as TRANS_DECILE, TOTAL_DOLLARS, NTILE(10) OVER(ORDER BY TOTAL_DOLLARS DESC NULLS LAST) as DOLLARS_DECILE, TOTAL_ITEMS, NTILE(10) OVER(ORDER BY TOTAL_ITEMS DESC NULLS LAST) as ITEMS_DECILE FROM CUSTOMER_SALES_AGG;
This works, but it's very slow, taking nearly 10-20 minutes to run.
Since doing a decile computation requires sorting the data and then dividing that sorted data into groups, it seems like the MPP structure of Netezza would handle this very well. If I was partitioning the deciles I could redistribute and do the ranking on each SPU, it could be even faster.
Any ideas on how to speed this up?