ok, going to edit my answer to first deal more specifically with your query, the earlier advice would work but your query is fairly insane so let's discuss why.
Everything you need is actually in the EXPLAIN output here, your UNION is causing 3.4 million tuple accesses and the derived table query (after the concatenation) is ~0.9million.
Add an index on PRODUCTNAME in both tables
UNION? wtf? I assume what's going on here is you have two fairly similar/identical tables and you're doing a doing a UNION of this fairly dodgy filter query to basically concat one on to the other.
This is warning sign number one, this query would be faster if you can simplify this and have one table with a type enum, e.g.
type (LS|CJ) or a foreign key and a types table depending on your requirements.
Assuming you don't want to do that permanently for some reason, (and you should), you can create a temporary table for this computation from the two selects. Once you have all the info in one table, because you're doing a simple select your count, sum will be fast.
MySQL has an EXPLAIN command which you can prefix to any query, e.g.
EXPLAIN select SUM(SPRICE) AS Tot, MIN(SMIN) AS Min from (SELECT COUNT(LS.SALEPRICE) AS SPRICE, MIN(LS.SALEPRICE) AS SMIN FROM `linkshare` LS WHERE LS.`PRODUCTNAME` LIKE '%DVS Men\'s Comanche Skate Shoe%' UNION SELECT COUNT(CJ.PRICE) AS SPRICE, MIN(CJ.PRICE) AS SMIN FROM `cjfeeds` CJ WHERE CJ.NAME LIKE '%DVS Men\'s Comanche Skate Shoe%' ) AS xyz;
The output can be somewhat cryptic for beginners, check out a tutorial on it for more info. In general:
- Avoid 'LIKE blah%' style queries where possible
- Create an index on any fields used in selects (in tables with more than a thousand rows).
- Keep your quickly-growing tables as lean as possible
- Use fixed width columns where possible, e.g. char/varchar instead of TEXT/BLOB
- If you're running a compound slow query on a large data set, consider caching it/tuning your my.cnf table cache size.