SELECT * FROM OrderTable WHERE LOWER(UserName)='telsa'
Instead of writing it like the below
SELECT * FROM OrderTable WHERE UserName='telsa'
Infact both the queries does the same work but the 2nd one is better and retrieves rows more speedly than the first query. Because Sql Server is not case sensitive
Tip 3: While running a query, the operators used with the WHERE clause directly affect the performance. The operators shown below are in their decreasing order of their performance.
Tip 4 : When we are writing queries containing NOT IN, then this is going to offer poor performance as the optimizer need to use nested table scan to perform this activity. This can be avoided by using EXISTS or NOT EXISTS.
When there is a choice to use IN or EXIST, we should go with EXIST clause for better performance.
Tip 5: It is always best practice to use the Index seek while the columns are covered by an index, this will force the Query Optimizer to use the index while using IN or OR clauses as a part of our WHERE clause.
SELECT * FROM OrderTable WHERE Status = 1 AND OrderID IN (406,530,956)
Takes more time than
SELECT * FROM OrderTable (INDEX=IX_OrderID) WHERE Status = 1 AND OrderID IN (406,530,956)
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Tip 6: While we use IN, in the sql query it better to use one or more leading characters in the clause instead of using the wildcard character at the starting.
SELECT * FROM CustomerTable WHERE CustomerName LIKE 'm%'
SELECT * FROM CustomerTable WHERE CustomerName LIKE '%m'
In the first query the Query optimizer is having the ability to use an index to perform the query and there by reducing the load on sql server. But in the second query, no suitable index can be created while running the query.
Tip 7: While there is case to use IN or BETWEEN clause in the query, it is always advisable to use BETWEEN for better result.
SELECT * FROM CustomerTable WHERE CustomerID BETWEEN (5000 AND 5005)
Performs better than
SELECT * FROM CustomerTable WHERE CustomerID IN (5000,5001,5002,5003,5004,5005)
Tip 8: Always avoid the use of SUBSTRING function in the query.
SELECT * FROM CustomerTable WHERE CustomerName LIKE 'n%'
Is much better than writing
SELECT * FROM CustomerTable WHERE SUBSTRING(CustomerName,1,1)='n'
Tip 9 : The queries having WHERE clause connected by AND operators are evaluated from left to right in the order they are written. So certain things should be taken care of like
Tip 10: Its sometimes better to combine queries using UNION ALL instead of using many OR clauses.
SELECT CustomerID, FirstName, LastName FROM CustomerTable
WHERE City = 'Wichita' or ZIP = '67201' or State= 'Kansas'
The above query to use and index, it is required to have indexes on all the 3 columns.
The same query can be written as
SELECT CustomerID, FirstName, LastName FROM CustomerTable WHERE City = 'Wichita'
UNION ALL
SELECT CustomerID, FirstName, LastName FROM CustomerTable WHERE ZIP = '67201'
UNION ALL
SELECT CustomerID, FirstName, LastName FROM CustomerTable WHERE State= 'Kansas'
Both the queries will provide same results but if there is only an index on City and no indexes on the zip or state, then the first query will not use the index and a table scan is performed. But the 2nd one will use the index as the part of the query.
Tip 11: While the select statement contains a HAVING clause, its better to make the WHERE clause to do most of the works (removing the undesired rows) for the Query instead of letting the HAVING clause to do the works.
e.g. in a SELECT statement with GROUP BY and HAVING clause, things happens like first WHERE clause will select appropriate rows then GROUP BY divide them to group of rows and finally the HAVING clause have less works to perform, which will boost the performance.
Tip 12: Let’s take 2 situations
We can use a hint like
SELECT * FROM CustomerTable WHERE City = 'Wichita' OPTION(FAST n)
where n = number of rows that we want to display as fast as possible. This hint helps to return the specified number of rows as fast as possible without bothering about the time taken by the overall query.
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11 September 2012
SqlServer Query Optimization Tips
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