Before you "optimize" this, be sure it's returning a correct result. The cross join operation to representative looks very odd. No GROUP BY, so that "totals" from product and quantity are effectively be multiplied by the number of rows in representative
. (It's not invalid to do that, but its an odd enough result
that we are going to question it.)
It's 2015 already. Way past time to ditch the old-school comma syntax for join operations. Use the JOIN
keyword. And relocate the join predicates from the WHERE
clause to an ON
clause.
When we omit join predicates, as an aid to future readers, we prefer to include the CROSS
keyword as an indication to that the omission of join predicates was intentional.
Also, I would avoid using IN (subquery)
, and use a join operation to get an equivalent result.
So, first, I'd re-write the query:
SELECT r.rep_name AS RNAME -- not deterministic, no GROUP BY
, SUM(t.quantity*p.ptr) AS TOTPTR
, SUM(t.quantity*p.pts) AS TOTPTS
FROM areawise_temp t
JOIN product p
ON p.id = t.our_product_id
JOIN ( SELECT l.pincode
FROM pincode_list l
JOIN rep_area a
ON a.pin_id = l.pin_id
JOIN representative e
ON e.id = a.rep_id
GROUP BY l.pincode
) c
ON c.pincode = t.pincode
CROSS
JOIN representative r
WHERE t.bill_date BETWEEN '2015/04/01' AND '2015/04/30'
AND t.our_cust_id <> ''
AND t.our_product_id <> ''
This should be equivalent to the original query, and return the same result ( possibly with a different RNAME value, since that's indeterminate.)
Not be belabor a point that's already been made, but that cross join to representative
looks very odd. I strongly suspect that the original query is not returning the result you actually want returned.
In terms of performance, the next question we have is the datatypes of our_cust_id
and our_product_id
columns... if those are numeric, the inequality comparison to an empty string is odd.) The datatype of bill_date
, if that's a DATE
, then we'd really expect the literals to have dash separators, rather than slashes. (I think MySQL will recognize the slashes just fine, but we're much more used to seeing date literals using dashes, and we know for sure that works.)
Basically, we want to know about any implicit datatype conversions that we're forcing MySQL to perform, because those may impact whether an index can be used.
The next step in "optimizing" this is to use EXPLAIN
, to see the access plan, and to evaluate whether an index we expect to be used isn't be using, or whether the addition of a suitable index might improve performance.
JOIN
keyword, and relocate the join predicates from theWHERE
clause to anON
clause. In this example, it would be helpful (to future readers) to include the keywordCROSS
from the join torepresentatives
, to indicate the the omission of a join predicate is intentional. Absent aGROUP BY
clause, you are going to get an indeterminate value forRNAME
. Before you "optimize" this, you might want to verify it's returning a "correct" result (not just by accident, but by design.)