On our SQL SERVER 2008 R2 database we have an
COUNTRIES referential table that contains countries. The
PRIMARY KEY is a nvarchar column:
create table COUNTRIES( COUNTRY_ID nvarchar(50) PRIMARY KEY, ... other columns )
The primary key contains values like 'FR', 'GER', 'US', 'UK', etc. This table contains max. 20 rows.
We also have a
SALES table containing sales data:
create table SALES( ID int PRIMARY KEY COUNTRY_ID nvarchar(50), PRODUCT_ID int, DATE datetime, UNITS decimal(18,2) ... other columns )
This sales table contains a column named
COUNTRY_ID, also of type
nvarchar (not a primary key). This table is much larger, containing around 20 million rows.
Inside our app, when querying on the
SALES table, we filter almost every time on the
COUNTRY_ID. Even like this it takes too long to perform most of aggregation queries (even with the proper indexes in place)
We're in a development phase to improve the query performance on the
SALES table. My question is:
Does it worth switching the
COUNTRY_ID type from
nvarchar(50) to the type
int? If the column
COUNTRY_ID is converted in both tables to the type
int, can I expect a better performance when joining the two tables?