I'm struggling a bit on the best way to do this with as little performance hit as possible.
Here's the setup...
Search results page with search refining filters that make an AJAX call to a PHP handler which returns a new (refined) set of results.
I have 4 tables that contain all of the data I need to connect to in the PHP handler code.
Table 1 - Main table of records with main details
Table 2 - Ratings for each product from professional rating company #1
Table 3 - Ratings for each product from professional rating company #2
Table 4 - Ratings for each product from professional rating company #3
The refiners on the search results page are jquery sliders with ranges from the lowest allowed rating to the highest for each.
When a slider handle is moved, a new AJAX call is made with the new value(s) and the database query will run to create a fresh set of refined results.
Getting the data I need from Table 1 is the easy part. What I'm struggling with is how to efficiently include a join on the other 3 tables and only picking up rows that match the refining values/ranges. Table 2, 3, and 4 all have multiple columns for year (2004-2012) and when I made an initial attempt to put it all into one query, it bogged down.
Table 2, 3, and 4 hold the various ratings for each record in Table 1.
The columns in Table 2, 3, and 4 are... id - productID - y2004 - y2005 - y2006 - y2007 - ... you get the idea.
Each year column has a numeric value for each record (default is 0).
What I need to do is efficiently select records that match the refiner ranges selected by the user across all 4 tables at once.
An example refiner search would be...get all records from Table 1 where price is between $25 and $50 AND where Table 2 records have a rating (from any year/column) between 1 - 4 AND where Table 3 records have a rating (from any year/column) between 80 - 100 AND where Table 4 records have a rating (from any year/column) between 80 - 100.
Any advice on how to set this up with as much performance as possible?