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In
this article, I will discuss some T-SQL query performance tips and
tricks for SQL server programmers. The tips mentioned in this article
may sound obvious to most of you, but I have seen professional
developers who don't think before using them.
My first tip is
not using a WHERE clause in your SELECT statement to narrow the number
of rows returned. If you don't use a WHERE clause, then SQL Server will
perform a table scan of your table and return all of the rows. In some
case you may want to return all rows, and not using a WHERE clause is
appropriate in this case. But if you don't need all the rows returned,
use a WHERE clause to limit the number of rows returned.
By returning data you don't need, you are causing SQL Server to perform I/O it doesn't need to perform, wasting SQL Server resources. In addition, it increases network traffic, which can also lead to reduced performance. And if the table is very large, a table scan will lock the table during the time-consuming scan, preventing other users from accessing it, hurting concurrency.
Another
negative aspect of a table scan is that it will tend to flush out data
pages from the cache with useless data, which reduces SQL Server's
ability to reuse useful data in the cache, which increases disk I/O and
hurts performance. [6.5, 7.0, 2000]
To help identify long
running queries, use the SQL Server Profiler Create Trace Wizard to run
the "TSQL By Duration" trace. You can specify the length of the long
running queries you are trying to identify (such as over 1000
milliseconds), and then have these recorded in a log for you to
investigate later. [7.0]
When using the UNION statement, keep
in mind that, by default, it performs the equivalent of a SELECT
DISTINCT on the final result set. In other words, UNION takes the
results of two like recordsets, combines them, and then performs a
SELECT DISTINCT in order to eliminate any duplicate rows. This process
occurs even if there are no duplicate records in the final recordset.
If you know that there are duplicate records, and this presents a
problem for your application, and then by all means use the UNION
statement to eliminate the duplicate rows.
On
the other hand, if you know that there will never be any duplicate
rows, or if there are, and this presents no problem to your
application, then you should use the UNION ALL statement instead of the
UNION statement. The advantage of the UNION ALL is that is does not
perform the SELECT DISTINCT function, which saves a lot of unnecessary
SQL Server resources from being using. [6.5, 7.0, 2000]
Sometimes you might want to merge two or more sets of data resulting from two or more queries using UNION. For example:
SELECT column_name1, column_name2
FROM table_name1
WHERE column_name1 = some_valueUNIONSELECT column_name1, column_name2
FROM table_name1
WHERE column_name2 = some_value
This same query can be rewritten, like the following example, and when doing so, performance will be boosted:
SELECT DISTINCT column_name1, column_name2
FROM table_name1
WHERE column_name1 = some_value OR column_name2 = some_value
And if you can assume that neither criteria will return duplicate rows, you can even further boost the performance of this query by removing the DISTINCT clause. [6.5, 7.0, 2000]
Carefully
evaluate whether your SELECT query needs the DISTINCT clause or not.
Some developers automatically add this clause to every one of their
SELECT statements, even when it is not necessary. This is a bad habit
that should be stopped.
The DISTINCT clause should only be used
in SELECT statements if you know that duplicate returned rows are a
possibility, and that having duplicate rows in the result set would
cause problems with your application.
The
DISTINCT clause creates a lot of extra work for SQL Server, and reduces
the physical resources that other SQL statements have at their
disposal. Because of this, only use the DISTINCT clause if it is
necessary. [6.5, 7.0, 2000]
In your queries, don't return column
data you don't need. For example, you should not use SELECT * to return
all the columns from a table if you don't need all the data from each
column. In addition, using SELECT * prevents the use of covered
indexes, further potentially hurting query performance. [6.5, 7.0,
2000]
If your application allows users to run queries, but you
are unable in your application to easily prevent users from returning
hundreds, even thousands of unnecessary rows of data they don't need,
consider using the TOP operator within the SELECT statement. This way,
you can limit how may rows are returned, even if the user doesn't enter
any criteria to help reduce the number or rows returned to the client.
For example, the statement:
SELECT TOP 100 fname, lname FROM customers
WHERE state = 'AP'
limits the results to the first 100 rows returned, even if 10,000 rows actually meet the criteria of the WHERE clause. When the specified number of rows is reached, all processing on the query stops, potentially saving SQL Server overhead, and boosting performance.
The TOP operator works by allowing you to specify a specific number of rows to be returned, like the example above, or by specifying a percentage value, like this:
SELECT TOP 10 PERCENT fname, lname FROM customers
WHERE state = 'AP’
In
the above example, only 10 percent of the available rows would be
returned. Keep in mind that using this option may prevent the user from
getting the data they need. For example, the data the are looking for
may be in record 101, but they only get to see the first 100 records.
Because of this, use this option with discretion. [7.0, 2000]
You
may have heard of a SET command called SET ROWCOUNT. Like the TOP
operator, it is designed to limit how many rows are returned from a
SELECT statement. In effect, the SET ROWCOUNT and the TOP operator
perform the same function.
While
is most cases, using either option works equally efficiently, there are
some instances (such as rows returned from an unsorted heap) where the
TOP operator is more efficient than using SET ROWCOUNT. Because of
this, using the TOP operator is preferable to using SET ROWCOUNT to
limit the number of rows returned by a query. [6.5, 7.0, 2000]
In
a WHERE clause, the various operators used directly affect how fast a
query is run. This is because some operators lend themselves to speed
over other operators. Of course, you may not have any choice of which
operator you use in your WHERE clauses, but sometimes you do.
Here are the key operators used in the WHERE clause, ordered by their performance. Those operators at the top will produce results faster than those listed at the bottom.
This lesson here is to use = as much as possible, and <> as least as possible. [6.5, 7.0, 2000]
In
a WHERE clause, the various operands used directly affect how fast a
query is run. This is because some operands lend themselves to speed
over other operands. Of course, you may not have any choice of which
operand you use in your WHERE clauses, but sometimes you do.
Here are the key operands used in the WHERE clause, ordered by their performance. Those operands at the top will produce results faster than those listed at the bottom.
The simpler the operand, and using exact numbers, provides the best overall performance. [6.5, 7.0, 2000]
If
a WHERE clause includes multiple expressions, there is generally no
performance benefit gained by ordering the various expressions in any
particular order. This is because the SQL Server Query Optimizer does
this for you, saving you the effort. There are a few exceptions to
this, which are discussed on this web site[7.0, 2000]
Don't
include code that doesn't do anything. This may sound obvious, but I
have seen this in some off-the-shelf SQL Server-based applications. For
example, you may see code like this:
SELECT column_name FROM table_name
WHERE 1 = 0
When this query is run, no rows will be returned. Obviously, this is a simple example (and most of the cases where I have seen this done have been very long queries), a query like this (or part of a larger query) like this doesn't perform anything useful, and shouldn't be run. It is just wasting SQL Server resources. In addition, I have seen more than one case where such dead code actually causes SQL Server to through errors, preventing the code from even running. [6.5, 7.0, 2000]
By default, some developers, especially those who have not worked with SQL Server before, routinely include code similar to this in their WHERE clauses when they make string comparisons:
SELECT column_name FROM table_name
WHERE LOWER(column_name) = 'name'
In other words, these developers are making the assuming that the data in SQL Server is case-sensitive, which it generally is not. If your SQL Server database is not configured to be case sensitive, you don't need to use LOWER or UPPER to force the case of text to be equal for a comparison to be performed. Just leave these functions out of your code. This will speed up the performance of your query, as any use of text functions in a WHERE clause hurts performance.
But what if your database has been configured to be case-sensitive? Should you then use the LOWER and UPPER functions to ensure that comparisons are properly compared? No. The above example is still poor coding. If you have to deal with ensuring case is consistent for proper comparisons, use the technique described below, along with appropriate indexes on the column in question:
SELECT column_name FROM table_name
WHERE column_name = 'NAME' or column_name = 'name'
This code will run much faster than the first example. [6.5, 7.0, 2000]
Try to avoid WHERE clauses that are non-sargable. The term "sargable" (which is in effect a made-up word) comes from the pseudo-acronym "SARG", which stands for "Search ARGument," which refers to a WHERE clause that compares a column to a constant value. If a WHERE clause is sargable, this means that it can take advantage of an index (assuming one is available) to speed completion of the query. If a WHERE clause is non-sargable, this means that the WHERE clause (or at least part of it) cannot take advantage of an index, instead performing a table/index scan, which may cause the query's performance to suffer.
Non-sargable search arguments in the WHERE clause, such as "IS NULL", "<>", "!=", "!>", "!<", "NOT", "NOT EXISTS", "NOT IN", "NOT LIKE", and "LIKE '%500'" generally prevents (but not always) the query optimizer from using an index to perform a search. In addition, expressions that include a function on a column, expressions that have the same column on both sides of the operator, or comparisons against a column (not a constant), are not sargable.
But not every WHERE clause that has a non-sargable expression in it is doomed to a table/index scan. If the WHERE clause includes both sargable and non-sargable clauses, then at least the sargable clauses can use an index (if one exists) to help access the data quickly.
In
many cases, if there is a covering index on the table, which includes
all of the columns in the SELECT, JOIN, and WHERE clauses in a query,
then the covering index can be used instead of a table/index scan to
return a query's data, even if it has a non-sargable WHERE clause. But
keep in mind that covering indexes have their own drawbacks, such as
producing very wide indexes that increase disk I/O when they are read.
In some cases, it may be possible to rewrite a non-sargable WHERE clause into one that is sargable. For example, the clause:
WHERE SUBSTRING(firstname,1,1) = 'm'
can be rewritten like this:
WHERE firstname like 'm%
Both of these WHERE clauses produce the same result, but the first one is non-sargable (it uses a function) and will run slow, while the second one is sargable, and will run much faster.
WHERE
clauses that perform some function on a column are non-sargable. On the
other hand, if you can rewrite the WHERE clause so that the column and
function are separate, then the query can use an available index,
greatly boosting performance. for example:
Function Acts Directly on Column, and Index Cannot Be Used:
SELECT member_number, first_name, last_name
FROM members
WHERE DATEDIFF(yy,datofbirth,GETDATE()) > 21
Function Has Been Separated From Column, and an Index Can Be Used:
SELECT member_number, first_name, last_name
FROM members
WHERE dateofbirth < DATEADD(yy,-21,GETDATE())
Each of the above queries produces the same results, but the second query will use an index because the function is not performed directly on the column, as it is in the first example. The moral of this story is to try to rewrite WHERE clauses that have functions so that the function does not act directly on the column.
WHERE clauses that use NOT are not sargable, but can often be rewritten to remove the NOT from the WHERE clause, for example:
WHERE NOT column_name > 5
to
WHERE column_name <= 5
Each
of the above clauses produce the same results, but the second one is
sargable. If you don't know if a particular WHERE clause is sargable or
non-sargable, check out the query's execution plan in Query Analyzer.
Doing this, you can very quickly see if the query will be using index
lookups or table/index scans to return your results.
With some
careful analysis, and some clever thought, many non-sargable queries
can be written so that they are sargable. Your goal for best
performance (assuming it is possible) is to get the left side of a
search condition to be a single column name, and the right side an easy
to look up value. [6.5, 7.0, 2000]
If you run into a situation
where a WHERE clause is not sargable because of the use of a function
on the right side of an equality sign (and there is no other way to
rewrite the WHERE clause), consider creating an index on a computed
column instead. This way, you avoid the non-sargable WHERE clause
altogether, using the results of the function in your WHERE clause
instead. Because of the additional overhead required for indexes on
computed columns, you will only want to do this if you need to run this
same query over and over in your application, thereby justifying the
overhead of the indexed computed column. [2000]
If you
currently have a query that uses NOT IN, which offers poor performance
because the SQL Server optimizer has to use a nested table scan to
perform this activity, instead try to use one of the following options
instead, all of which offer better performance:
[6.5, 7.0, 2000]
When
you have a choice of using the IN or the EXISTS clause in your
Transact-SQL, you will generally want to use the EXISTS clause, as it
is usually more efficient and performs faster. [6.5, 7.0, 2000]
If
you find that SQL Server uses a TABLE SCAN instead of an INDEX SEEK
when you use an IN or OR clause as part of your WHERE clause, even when
those columns are covered by an index, consider using an index hint to
force the Query Optimizer to use the index.
For example
SELECT * FROM tblTaskProcesses WHERE nextprocess = 1 AND processid IN (8,32,45)
takes about 3 seconds, while:
SELECT * FROM tblTaskProcesses (INDEX = IX_ProcessID) WHERE nextprocess = 1 AND processid IN (8,32,45) returns in under a second. [7.0, 2000]
If you use LIKE in your WHERE clause, try to use one or more leading character in the clause, if at all possible. For example, use:
LIKE 'm%'
not:
LIKE '%m'
If you use a leading character in your LIKE clause, then the Query Optimizer has the ability to potentially use an index to perform the query, speeding performance and reducing the load on SQL Server.
But if the leading character in a LIKE clause is a wildcard, the Query Optimizer will not be able to use an index, and a table scan must be run, reducing performance and taking more time.
The
more leading characters you can use in the LIKE clause, the more likely
the Query Optimizer will find and use a suitable index. [6.5, 7.0,
2000]
If your application needs to retrieve summary data
often, but you don't want to have the overhead of calculating it on the
fly every time it is needed, consider using a trigger that updates
summary values after each transaction into a summary table.
While
the trigger has some overhead, overall, it may be less that having to
calculate the data every time the summary data is needed. You may have
to experiment to see which methods is fastest for your environment.
[6.5, 7.0, 2000]
If your application needs to insert a large
binary value into an image data column, perform this task using a
stored procedure, not using an INSERT statement embedded in your
application.
The
reason for this is because the application must first convert the
binary value into a character string (which doubles its size, thus
increasing network traffic and taking more time) before it can be sent
to the server. And when the server receives the character string, it
then has to convert it back to the binary format (taking even more
time).
Using a stored procedure avoids all this because all
the activity occurs on the SQL Server, and little data is transmitted
over the network. [6.5, 7.0, 2000]
When you have a choice of
using the IN or the BETWEEN clauses in your Transact-SQL, you will
generally want to use the BETWEEN clause, as it is much more efficient.
For example:
SELECT customer_number, customer_name
FROM customer
WHERE customer_number in (1000, 1001, 1002, 1003, 1004)
is much less efficient than this:
SELECT customer_number, customer_name
FROM customer
WHERE customer_number BETWEEN 1000 and 1004
Assuming
there is a useful index on customer_number, the Query Optimizer can
locate a range of numbers much faster (using BETWEEN) than it can find
a series of numbers using the IN clause (which is really just another
form of the OR clause). [6.5, 7.0, 2000]
If possible, try to
avoid using the SUBSTRING function in your WHERE clauses. Depending on
how it is constructed, using the SUBSTRING function can force a table
scan instead of allowing the optimizer to use an index (assuming there
is one). If the substring you are searching for does not include the
first character of the column you are searching for, then a table scan
is performed.
If possible, you should avoid using the SUBSTRING function and use the LIKE condition instead, for better performance.
Instead of doing this:
WHERE SUBSTRING(column_name,1,1) = 'b'
Try using this instead:
WHERE column_name LIKE 'b%'
If
you decide to make this choice, keep in mind that you will want your
LIKE condition to be sargable, which means that you cannot place a
wildcard in the first position. [6.5, 7.0, 2000]
Where
possible, avoid string concatenation in your Transact-SQL code, as it
is not a fast process, contributing to overall slower performance of
your application. [6.5, 7.0, 2000]
Generally, avoid using
optimizer hints in your queries. This is because it is generally very
hard to outguess the Query Optimizer. Optimizer hints are special
keywords that you include with your query to force how the Query
Optimizer runs. If you decide to include a hint in a query, this forces
the Query Optimizer to become static, preventing the Query Optimizer
from dynamically adapting to the current environment for the given
query. More often than not, this hurts, not helps performance.
If you think that a hint might be necessary to optimize your query, be sure you first do all of the following first:
If you have done all of the above, and the query is not running as you expect, then you may want to consider using an appropriate optimizer hint. If you haven't heeded my advice and have decided to use some hints, keep in mind that as your data changes, and as the Query Optimizer changes (through service packs and new releases of SQL Server), your hard-coded hints may no longer offer the benefits they once did. So if you use hints, you need to periodically review them to see if they are still performing as expected. [6.5, 7.0, 2000]
If you have a WHERE clause that includes expressions connected by two or more AND operators, SQL Server will evaluate them from left to right in the order they are written. This assumes that no parenthesis have been used to change the order of execution. Because of this, you may want to consider one of the following when using AND:
You may want to consider using Query Analyzer to look at the execution plans of your queries to see which is best for your situation. [6.5, 7.0, 2000]
If you want to boost the performance of a query that includes an AND operator in the WHERE clause, consider the following:
The Query Optimizer will perform a table scan or a clustered index scan on a table if the WHERE clause in the query contains an OR operator and if any of the referenced columns in the OR clause are not indexed (or does not have a useful index). Because of this, if you use many queries with OR clauses, you will want to ensure that each referenced column in the WHERE clause has a useful index. [7.0, 2000]
A query with one or more OR clauses can sometimes be rewritten as a series of queries that are combined with a UNION ALL statement, in order to boost the performance of the query. For example, let's take a look at the following query:
SELECT employeeID, firstname, lastname
FROM names
WHERE dept = 'prod' or city = 'Orlando' or division = 'food'
This query has three separate conditions in the WHERE clause. In order for this query to use an index, then there must be an index on all three columns found in the WHERE clause.
This same query can be written using UNION ALL instead of OR, like this example:
SELECT employeeID, firstname, lastname FROM names WHERE dept = 'prod'UNION ALL
SELECT employeeID, firstname, lastname FROM names WHERE city = 'Orlando'UNION ALL
SELECT employeeID, firstname, lastname FROM names WHERE division = 'food'
Each of these queries will produce the same results. If there is only an index on dept, but not the other columns in the WHERE clause, then the first version will not use any index and a table scan must be performed. But in the second version of the query will use the index for part of the query, but not for all of the query.
Admittedly, this is a very simple example, but even so, it does demonstrate how rewriting a query can affect whether or not an index is used or not. If this query was much more complex, then the approach of using UNION ALL might be must more efficient, as it allows you to tune each part of the index individually, something that cannot be done if you use only ORs in your query.
Note, that I am using UNION ALL instead of UNION. The reason for this is to prevent the UNION statement from trying to sort the data and remove duplicates, which hurts performance. Of course, if there is the possibility of duplicates, and you want to remove them, then of course you can use just UNION.
If you have a query that uses ORs and it not making the best use of indexes, consider rewriting it as a UNION ALL, and then testing performance. Only through testing can you be sure that one version of your query will be faster than another. [7.0, 2000]
Don't use ORDER BY in your SELECT statements unless you really need to, as it adds a lot of extra overhead. For example, perhaps it may be more efficient to sort the data at the client than at the server. In other cases, perhaps the client doesn't even need sorted data to achieve its goal. The key here is to remember that you shouldn't automatically sort data, unless you know it is necessary. [6.5, 7.0, 2000]
Whenever SQL Server has to perform a sorting operation, additional resources have to be used to perform this task. Sorting often occurs when any of the following Transact-SQL statements are executed:
In many cases, these commands cannot be avoided. On the other hand, there are few ways that sorting overhead can be reduced. These include:
If you have to sort by a particular column often, consider making that column a clustered index. This is because the data is already presorted for you and SQL Server is smart enough not to resort the data. [6.5, 7.0, 2000]
If your SELECT statement includes an IN operator along with a list of values to be tested in the query, order the list of values so that the most frequently found values are placed at the first of the list, and the less frequently found values are placed at the end of the list. This can speed performance because the IN option returns true as soon as any of the values in the list produce a match. The sooner the match is made, the faster the query completes. [6.5, 7.0, 2000]
If you need to use the SELECT INTO option, keep in mind that it can lock system tables, preventing others users from accessing the data they need. If you do need to use SELECT INTO, try to schedule it when your SQL Server is less busy, and try to keep the amount of data inserted to a minimum. [6.5, 7.0, 2000]
If your SELECT statement contains a HAVING clause, write your query so that the WHERE clause does most of the work (removing undesired rows) instead of the HAVING clause do the work of removing undesired rows. Using the WHERE clause appropriately can eliminate unnecessary rows before they get to the GROUP BY and HAVING clause, saving some unnecessary work, and boosting performance.
For example, in a SELECT statement with WHERE, GROUP BY, and HAVING clauses, here's what happens. First, the WHERE clause is used to select the appropriate rows that need to be grouped. Next, the GROUP BY clause divides the rows into sets of grouped rows, and then aggregates their values. And last, the HAVING clause then eliminates undesired aggregated groups. If the WHERE clause is used to eliminate as many of the undesired rows as possible, this means the GROUP BY and the HAVING clauses will have less work to do, boosting the overall performance of the query. [6.5, 7.0, 2000]
If your application performs many wildcard (LIKE %) text searches on CHAR or VARCHAR columns, consider using SQL Server's full-text search option. The Search Service can significantly speed up wildcard searches of text stored in a database. [7.0, 2000]
The GROUP BY clause can be used with or without an aggregate function. But if you want optimum performance, don't use the GROUP BY clause without an aggregate function. This is because you can accomplish the same end result by using the DISTINCT option instead, and it is faster.
For example, you could write your query two different ways:
USE Northwind
SELECT OrderID
FROM [Order Details]
WHERE UnitPrice > 10
GROUP BY OrderID
or
USE Northwind
SELECT DISTINCT OrderID
FROM [Order Details]
WHERE UnitPrice > 10
Both of the above queries produce the same results, but the second one will use less resources and perform faster. [6.5, 7.0, 2000]
The GROUP BY clause can be sped up if you follow these suggestion:
Consider
adding an ORDER BY clause to the SELECT statement that orders by the
same column as the GROUP BY. This may cause the GROUP BY to perform
faster. Test this to see if is true in your particular situation.
[7.0, 2000]
Sometimes perception is more important that reality. For example, which of the following two queries is the fastest:
Most DBAs would choose the first option as it takes less server resources and performs faster. But from many user's point-of-view, the second one may be more palatable. By getting immediate feedback, the user gets the impression that the application is fast, even though in the background, it is not.
If you run into situations where perception is more important than raw performance, consider using the FAST query hint. The FAST query hint is used with the SELECT statement using this form:
OPTION(FAST number_of_rows)
where number_of_rows is the number of rows that are to be displayed as fast as possible.
When
this hint is added to a SELECT statement, it tells the Query Optimizer
to return the specified number of rows as fast as possible, without
regard to how long it will take to perform the overall query. Before
rolling out an application using this hint, I would suggest you test it
thoroughly to see that it performs as you expect. You may find out that
the query may take about the same amount of time whether the hint is
used or not. If this the case, then don't use the hint. [7.0, 2000]
Instead of using temporary tables, consider using a derived table instead. A derived table is the result of using a SELECT statement in the FROM clause of an existing SELECT statement. By using derived tables instead of temporary tables, we can reduce I/O and boost our application's performance. [7.0, 2000]
SQL Server 2000 offers a new data type called "table." Its main purpose is for the temporary storage of a set of rows. A variable, of type "table," behaves as if it is a local variable. And like local variables, it has a limited scope, which is within the batch, function, or stored procedure in which it was declared. In most cases, a table variable can be used like a normal table. SELECTs, INSERTs, UPDATEs, and DELETEs can all be made against a table variable.
For best performance, if you need a temporary table in your Transact-SQL code, try to use a table variable instead of creating a conventional temporary table instead. Table variables are created and manipulated in memory instead of the tempdb database, making them much faster. In addition, table variables found in stored procedures result in fewer compilations (than when using temporary tables), and transactions using table variables only last as long as the duration of an update on the table variable, requiring less locking and logging resources. [2000]
It is fairly common request to write a Transact-SQL query to to compare a parent table and a child table and find out if there are any parent records that don't have a match in the child table. Generally, there are three ways this can be done:
Using a NOT EXISTS
SELECT a.hdr_key
FROM hdr_tbl a
WHERE NOT EXISTS (SELECT * FROM dtl_tbl b WHERE a.hdr_key = b.hdr_key)
Using a Left Join
SELECT a.hdr_key
FROM hdr_tbl a
LEFT JOIN dtl_tbl b ON a.hdr_key = b.hdr_key
WHERE b.hdr_key IS NULL
Using a NOT IN
SELECT hdr_key
FROM hdr_tbl
WHERE hdr_key NOT IN (SELECT hdr_key FROM dtl_tbl)
In each case, the above query will return identical results. But, which of these three variations of the same query produces the best performance? Assuming everything else is equal, the best performing version through the worst performing version will be from top to bottom, as displayed above. In other words, the NOT EXISTS variation of this query is generally the most efficient.
I
say generally, because the indexes found on the tables, along with the
number of rows in each table, can influence the results. If you are not
sure which variation to try yourself, you can try them all and see
which produces the best results in your particular circumstances. [7.0,
2000]
Be careful when using OR in your WHERE clause, it is
fairly simple to accidentally retrieve much more data than you need,
which hurts performance. For example, take a look at the query below:
SELECT companyid, plantid, formulaid
FROM batchrecords
WHERE companyid = '0001' and plantid = '0202' and formulaid = '39988773'
OR
companyid = '0001' and plantid = '0202'
As you can see from this query, the WHERE clause is redundant, as:
companyid = '0001' and plantid = '0202' and formulaid = '39988773'
is a subset of:
companyid = '0001' and plantid = '0202'
In
other words, this query is redundant. Unfortuantely, the SQL Server
Query Optimizer isn't smart enough to know this, and will do exactly
what you tell it to. What will happen is that SQL Server will have to
retrieve all the data you have requested, then in effect do a SELECT
DISTINCT to remove redundant rows it unnecessarily finds.
In this case, if you drop this code from the query:
OR
companyid = '0001' and plantid = '0202'
then run the query, you will receive the same results, but with much faster performance. [6.5, 7.0, 2000]
If
you need to verify the existence of a record in a table, don't use
SELECT COUNT(*) in your Transact-SQL code to identify it, which is very
inefficient and wastes server resources. Instead, use the Transact-SQL
IF EXITS to determine if the record in question exits, which is much
more efficient. For example:
Here's how you might use COUNT(*):
IF (SELECT COUNT(*) FROM table_name WHERE column_name = 'xxx')
Here's a faster way, using IF EXISTS:
IF EXISTS (SELECT * FROM table_name WHERE column_name = 'xxx')
The
reason IF EXISTS is faster than COUNT(*) is because the query can end
immediately when the text is proven true, while COUNT(*) must count go
through every record, whether there is only one, or thousands, before
it can be found to be true. [7.0, 2000]
Let's say that you
often need to INSERT the same value into a column. For example, perhaps
you have to perform 100,000 INSERTs a day into a particular table, and
that 90% of the time the data INSERTed into one of the columns of the
table is the same value.
If this the case, you can reduce network
traffic (along with some SQL Server overhead) by creating this
particular column with a default value of the most common value. This
way, when you INSERT your data, and the data is the default value, you
don't INSERT any data into this column, instead allowing the default
value to automatically be filled in for you. But when the value needs
to be different, you will of course INSERT that value into the column.
[6.5, 7.0, 2000]
Performing UPDATES takes extra resources for
SQL Server to perform. When performing an UPDATE, try to do as many of
the following recommendations as you can in order to reduce the amount
of resources required to perform an UPDATE. The more of the following
suggestions you can do, the faster the UPDATE will perform.
Of
course, you may have very little choice when UPDATing your data, but at
least give the above suggestions a thought. [6.5, 7.0, 2000]
If
you have created a complex transaction that includes several parts, one
part of which has a higher probability of rolling back the transaction
than the others, better performance will be provided if you locate the
most likely to fail part of the transaction at the front of the greater
transaction. This way, if this more-likely-to-fail transaction has to
roll back because of a failure, there has been no resources wasted on
the other less-likely-to-fail transactions. [6.5, 7.0, 2000]
呵呵,写的不错,点点一下,
沙沙 | 24/07/2008, 19:57





