I have a large table with about 100 million records, with fields
DATE type. I need to check the the number of overlaps with some date range, say between
2013-08-30, So I use.
SELECT COUNT(*) FROM myTable WHERE end_date >= '2013-08-20' AND start_date <= '2013-08-30'
date column are indexed.
The important points is that the date ranges that I am searching for overlap are always in the future, while the main part of the records in the table are in the past (say about 97-99 million).
So, will this query be faster, if I add a column
is_future - TINYINT, so, by checking only that condition like this
SELECT COUNT(*) FROM myTable WHERE is_future = 1 AND end_date >= '2013-08-20' AND start_date <= '2013-08-30'
it will exclude the rest 97 million or so records and will check the date condition for only the remaining 1-3 million records ?
I use MySQL
The mysql engine is innodb, but will matter considerably if it is say, MyISAM
here is the create table
CREATE TABLE `orders` ( `id` bigint(20) NOT NULL AUTO_INCREMENT, `title` `start_date` date DEFAULT NULL, `end_date` date DEFAULT NULL, PRIMARY KEY (`id`) ) ENGINE=InnoDB AUTO_INCREMENT=24 DEFAULT CHARSET=utf8 COLLATE=utf8_bin;
EDIT 2 after @Robert Co answer
The partitioning looks like a good idea for this case, but it does not allow me to create partition based on
is_future field unless I define it as primary key, otherwise I should remove my main primary key - id, which I can not do. So, if I define that field as primary key, then is there a meaning of partitioning, will not it be fast already if I search by
is_future field which is primary key.
EDIT 3 The actual query where I need to use this is to select restaurant that have some free tables for that date range
SELECT r.id, r.name, r.table_count FROM restaurants r LEFT JOIN orders o ON r.id = o.restaurant_id WHERE o.id IS NULL OR (r.table_count > (SELECT COUNT(*) FROM orders o2 WHERE o2.restaurant_id = r.id AND end_date >= '2013-08-20' AND start_date <= '2013-08-30' AND o2.status = 1 ) )
SOLUTION After a lot more research and testing the fastest way for counting the number of rows in my case was to just add one more condition, that start_date is more than current date (because the date ranges for search are always in the future)
SELECT COUNT(*) FROM myTable WHERE end_date >= '2013-09-01' AND start_date >= '2013-08-20' AND start_date <= '2013-09-30'
also it is necessary to have one index - with start_date and end_date fields (thank you @symcbean). As a result the execution time on table with 10m rows from 7 seconds - became 0.050 seconds.
SOLUTION 2 (@Robert Co) partitioning in this case worked as well !! - perhaps it is better solution than indexing. Or they can both be applied together.