I have a oracle query which is executed once a month to get the order details processed. This query is taking a painfully lot of time to execute. ( More than thirty mins ). Therefore I am trying to optimize this. I have a decent knowledge in Oracle and I will explain what I have tried so far. Still, it takes around 20 minutes to complete. This is the query. Oracle version is 11g.
SELECT store_typ, store_no, COUNT(order_no) FROM
(
SELECT DISTINCT(order_no), store.store_no, store.store_typ FROM
(
SELECT trx.order_no,trx.ADDED_DATE, odr.prod_typ, odr.store_no FROM daily_trx trx
LEFT OUTER JOIN
(
SELECT odr.order_no,odr.prod_typ,prod.store_no FROM order_main odr
LEFT OUTER JOIN ORDR_PROD_TYP prod
on odr.prod_typ = prod.prod_typ
) odr
ON trx.order_no= odr.order_no
) daily_orders ,
(SELECT store_no,store_typ FROM main_stores ) store
WHERE 1=1
and daily_orders.order_no !='NA'
and store.store_no = daily_orders.store_no
AND to_timestamp(to_char(daily_orders.ADDED_DATE,'DD-MM-YYYY HH24:MI:SS'),'DD-MM-YYYY HH24:MI:SS') >= to_date('01-05-2020 00:00:00','DD-MM-YYYY HH24:MI:SS')
AND to_timestamp(to_char(daily_orders.ADDED_DATE,'DD-MM-YYYY HH24:MI:SS'),'DD-MM-YYYY HH24:MI:SS') <= to_date('31-05-2020 23:59:59','DD-MM-YYYY HH24:MI:SS')
)
GROUP BY store_typ, store_no
Background
- order_main - This table has over 4 million records
- I introduced index for order_no column which reduced time to execute.
My questions are as follows.
1) Will it help if I move date validation inside the inner query like this ?
SELECT store_typ, store_no, COUNT(order_no) FROM
(
SELECT DISTINCT(order_no), store.store_no, store.store_typ FROM
(
SELECT trx.order_no,trx.ADDED_DATE, odr.prod_typ, odr.store_no FROM daily_trx trx
LEFT OUTER JOIN
(
SELECT odr.order_no,odr.prod_typ,prod.store_no FROM order_main odr
LEFT OUTER JOIN ORDR_PROD_TYP prod
on odr.prod_typ = prod.prod_typ
) odr
ON trx.order_no= odr.order_no
WHERE to_timestamp(to_char(daily_orders.ADDED_DATE,'DD-MM-YYYY HH24:MI:SS'),'DD-MM-YYYY HH24:MI:SS') >= to_date('01-05-2020 00:00:00','DD-MM-YYYY HH24:MI:SS')
AND to_timestamp(to_char(daily_orders.ADDED_DATE,'DD-MM-YYYY HH24:MI:SS'),'DD-MM-YYYY HH24:MI:SS') <= to_date('31-05-2020 23:59:59','DD-MM-YYYY HH24:MI:SS')
) daily_orders ,
(SELECT store_no,store_typ FROM main_stores ) store
WHERE 1=1
and daily_orders.order_no !='NA'
and store.store_no = daily_orders.store_no
--AND to_timestamp(to_char(daily_orders.ADDED_DATE,'DD-MM-YYYY HH24:MI:SS'),'DD-MM-YYYY HH24:MI:SS') >= to_date('01-05-2020 00:00:00','DD-MM-YYYY HH24:MI:SS')
--AND to_timestamp(to_char(daily_orders.ADDED_DATE,'DD-MM-YYYY HH24:MI:SS'),'DD-MM-YYYY HH24:MI:SS') <= to_date('31-05-2020 23:59:59','DD-MM-YYYY HH24:MI:SS')
)
GROUP BY store_typ, store_no
2) Could someone please suggest any other improvements that can be done to this query?
3) Additional indexing would help in any other tables / columns ? Only daily_trx and order_main tables are the tables that contains huge amount of data.