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Oracle SQL tuning
Top 10 Oracle SQL tuning tips
1. Design and develop with performance in mind2. Establish a tuning environment3. Index wisely4. Reduce parsing5. Take advantage of Cost Based Optimizer6. Avoid accidental table scans7. Optimize necessary table scans8. Optimize joins9. Use array processing10. Consider PL/SQL for “tricky” SQL
Hint #1: Design and develop with performance in mind
Explicitly identify performance targets
Focus on critical transactions– Test the SQL for these transactions against simulations of production
data Measure performance as early as possible
Consider prototyping critical portions of the applications
Consider de-normalization and other performance by design features early on
Hint #2: Establish a tuning and development environment
A significant portion of SQL that performs poorly in production was originally crafted against empty or nearly empty tables.
Make sure you establish a reasonable sub-set of production data that is used during development and tuning of SQL
Make sure your developers understand EXPLAIN PLAN and tkprof, or equip them with commercial tuning tools.
Understanding SQL tuning tools
The foundation tools for SQL tuning are:
– The EXPLAIN PLAN command– The SQL Trace facility– The tkprof trace file formatter
Effective SQL tuning requires either familiarity with these tools or the use of commercial alternatives such as SQLab
EXPLAIN PLAN
The EXPLAIN PLAN reveals the execution plan for an SQL statement.
The execution plan reveals the exact sequence of steps that the Oracle optimizer has chosen to employ to process the SQL.
The execution plan is stored in an Oracle table called the “plan table”
Suitably formatted queries can be used to extract the execution plan from the plan table.
A simple EXPLAIN PLAN
SQL> EXPLAIN PLAN FOR select count(*) from sales
where product_id=1;
Explained.
SQL> SELECT RTRIM (LPAD (' ', 2 * LEVEL) || RTRIM (operation)
||' '||RTRIM (options) || ' ' || object_name) query_plan
2 FROM plan_table
3 CONNECT BY PRIOR id = parent_id
4* START WITH id = 0
QUERY_PLAN
--------------------------------------------
SELECT STATEMENT
SORT AGGREGATE
TABLE ACCESS FULL SALES
Interpreting EXPLAIN PLAN
The more heavily indented an access path is, the earlier it is executed.
If two steps are indented at the same level, the uppermost statement is executed first.
Some access paths are “joined” – such as an index access that is followed by a table lookup.
A more complex EXPLAIN PLANSELECT STATEMENT VIEW SYS_DBA_SEGS UNION-ALL NESTED LOOPS NESTED LOOPS NESTED LOOPS NESTED LOOPS NESTED LOOPS VIEW SYS_OBJECTS UNION-ALL TABLE ACCESS FULL TAB$ TABLE ACCESS FULL TABPART$ TABLE ACCESS FULL CLU$ TABLE ACCESS FULL IND$ TABLE ACCESS FULL INDPART$ TABLE ACCESS FULL LOB$ TABLE ACCESS FULL TABSUBPART$ TABLE ACCESS FULL INDSUBPART$ TABLE ACCESS FULL LOBFRAG$ TABLE ACCESS BY INDEX ROWID OBJ$ INDEX UNIQUE SCAN I_OBJ1 TABLE ACCESS CLUSTER SEG$ INDEX UNIQUE SCAN I_FILE#_BLOCK# TABLE ACCESS BY INDEX ROWID FILE$ INDEX UNIQUE SCAN I_FILE2 TABLE ACCESS CLUSTER TS$ INDEX UNIQUE SCAN I_TS# TABLE ACCESS CLUSTER USER$ INDEX UNIQUE SCAN I_USER# NESTED LOOPS NESTED LOOPS NESTED LOOPS NESTED LOOPS TABLE ACCESS FULL UNDO$ TABLE ACCESS BY INDEX ROWID FILE$ INDEX UNIQUE SCAN I_FILE2 TABLE ACCESS CLUSTER SEG$ INDEX UNIQUE SCAN I_FILE#_BLOCK# TABLE ACCESS CLUSTER TS$ INDEX UNIQUE SCAN I_TS# TABLE ACCESS CLUSTER USER$ INDEX UNIQUE SCAN I_USER# NESTED LOOPS NESTED LOOPS NESTED LOOPS TABLE ACCESS FULL FILE$ TABLE ACCESS CLUSTER SEG$ INDEX RANGE SCAN I_FILE#_BLOCK# TABLE ACCESS CLUSTER TS$ INDEX UNIQUE SCAN I_TS# TABLE ACCESS CLUSTER USER$ INDEX UNIQUE SCAN I_USER#
SQL_TRACE and tkprof
ALTER SESSION SET SQL_TRACE TRUE causes a trace of SQL execution to be generated.
The TKPROF utility formats the resulting output.
Tkprof output contains breakdown of execution statistics, execution plan and rows returned for each step. These stats are not available from any other source.
Tkprof is the most powerful tool, but requires a significant learning curve.
Tkprof output
count2 cpu3 elapsed4 disk5 query6 current7 rows8
------ ------ ------ -------- ------- -------- -------- ------
Parsea 1d 0.02 0.01 0 0 0 0
Executeb 1e 0.00 0.00 0 0 0 0
Fetchc 20j 141.10 141.65 1237 1450011 386332 99i
------ ------ ------ -------- ------- -------- -------- ------
total 22 141.12 141.66 1237k 1450011f 386332g 99h
Rowsl Execution Planm
------- ---------------------------------------------------
0 SELECT STATEMENT GOAL: CHOOSE
99 FILTER
96681 TABLE ACCESS GOAL: ANALYZED (FULL) OF 'CUSTOMERS'
96582 TABLE ACCESS GOAL: ANALYZED (FULL) OF 'EMPLOYEES'
Using SQLab
Because EXPLAIN PLAN and tkprof are unwieldy and hard to interpret, third party tools that automate the process and provide expert advice improve SQL tuning efficiency.
The Quest SQLab product:
– Identifies SQL your database that could benefit from tuning– Provides a sophisticated tuning environment to examine, compare and
evaluate execution plans.– Incorporates an expert system to advise on indexing and SQL
statement changes
SQLab SQL tuning lab– Display execution plan in a variety of intuitive ways– Provide easy access to statistics and other useful data– Model changes to SQL and immediately see the results
SQLab Expert Advice– SQLab provides specific advice on how to tune an SQL
statement
SQLab SQL trace integration
– SQLab can also retrieve the execution statistics that are otherwise only available through tkprof
Hint #3: Index wisely
Index to support selective WHERE clauses and join conditions
Use concatenated indexes where appropriate
Consider overindexing to avoid table lookups
Consider advanced indexing options– Hash Clusters– Bit mapped indexes– Index only tables
Effect of adding columns to a concatenated index
– Novice SQL programmers often are satisfied if the execution plan shows an index
– Make sure the index has all the columns required
4
6
20
40
700
0 100 200 300 400 500 600 700 800
Logical IO
Index onSurname+firstname+dob+phoneo
Index onSurname+firstname+DOB
Index on Surname+firstname
Merge 3 indexes
Surname index only
Bit-map indexes
– Contrary to widespread belief, can be effective when there are many distinct column values
– Not suitable for OLTP however
0.01
0.1
1
10
100
1 10 100 1,000 10,000 100,000 1,000,000
Distinct values
Ela
psed tim
e (
s)
Bitmap index B*-Tree index Full table scan
Hint #4: Reduce parsing
Use bind variables– Bind variables are key to application scalability– If necessary in 8.1.6+, set cursor CURSOR_SHARING to
FORCE
Reuse cursors in your application code– How to do this depends on your development language
Use a cursor cache– Setting SESSION_CACHED_CURSORS (to 20 or so) can
help applications that are not re-using cursors
Hint #5: Take advantage of the Cost Based Optimizer
The older rule based optimizer is inferior in almost every respect to the modern cost based optimizer
Using the cost based optimizer effectively involves:– Regular collection of table statistics using the ANALYZE or
DBMS_STATS command– Understand hints and how they can be used to influence
SQL statement execution– Choose the appropriate optimizer mode: FIRST_ROWS is
best for OLTP applications; ALL_ROWS suits reporting and OLAP jobs
Hint #6: Avoid accidental tablescans
Tablescans that occur unintentionally are a major source of poorly performing SQL. Causes include:
– Missing Index– Using “!=“, “<>” or NOT
• Use inclusive range conditions or IN lists– Looking for values that are NULL
• Use NOT NULL values with a default value– Using functions on indexed columns
• Use “functional” indexes in Oracle8i
Hint #7: Optimize necessary table scans
There are many occasions where a table scan is the only option. If so:– Consider parallel query option– Try to reduce size of the table
• Adjust PCTFREE and PCTUSED• Relocate infrequently used long columns or BLOBs• Rebuild when necessary to reduce the high water mark
– Improve the caching of the table• Use the CACHE hint or table property• Implement KEEP and RECYCLE pools
– Partition the table (if you really seek a large subset of data)– Consider the fast full index scan
Fast full index scan performance
– Use when you must read every row, but not every column– Counting the rows in a table is a perfect example
2.44
4.94
5.23
12.53
17.76
19.83
0 5 10 15 20
Elapsed time (s)
Parallel fast full index
fast full index
Parallel table scan
Full table scan
Full index scan
Index range scan (RULE)
Hint #8: Optimize joins Pick the best join method
– Nested loops joins are best for indexed joins of subsets– Hash joins are usually the best choice for “big” joins
Pick the best join order– Pick the best “driving” table– Eliminate rows as early as possible in the join order
Optimize “special” joins when appropriate– STAR joins for data-warehousing applications– STAR_TRANSFORMATION if you have bitmap indexes– ANTI-JOIN methods for NOT IN sub-queries– SEMI-JOIN methods for EXISTS sub-queries– Properly index CONNECT BY hierarchical queries
Optimizes queries using EXISTS where there is no supporting index
select *
from customers c
where exists
(select 1 from employees e
where e.surname=c.contact_surname
and e.firstname=c.contact_firstname
and e.date_of_birth=c.date_of_birth)
Oracle 8 semi-joins
No index on employees
Oracle 8 semi-joins
Without the semi-join or supporting index, queries like the one on the preceding slide will perform very badly.
Oracle will perform a tablescan of the inner table for each row retrieved by the outer table
If customers has 100,000 rows, and employees 800 rows then 80 MILLION rows will be processed!
In Oracle7, you should create the index or use an IN-based subquery
In Oracle8, the semi-join facility allows the query to be resolved by a sort-merge or hash join.
To Use semi-joins
Set ALWAYS_SEMI_JOIN=HASH or MERGE in INIT.ORA, OR
Use a MERGE_SJ or HASH_SJ hint in the subquery of the SQL statementSELECT *
FROM customers c
WHERE exists
(select /*+merge_sj*/ 1
from employees e
where ….)
Oracle8 semi-joins
The performance improvements are impressive (note the logarithmic scale)
6.69
6.83
31.01
1,343.19
1 10 100 1,000 10,000
Elapsed time (logarithmic scale)
IN-based subquery
EXISTS - merge semi-join
EXISTS no semi-join but with index
EXISTS no semi-join or indexes
Star Join improvements
A STAR join involves a large “FACT” table being joined to a number of smaller “dimension” tables
Star Join improvements
The Oracle7 Star join algorithm works well when there is a concatenated index on all the FACT table columns
But when there are a large number of dimensions, creating concatenated indexes for all possible queries is impossible.
Oracle8’s “Star transformation” involves re-wording the query so that it can be supported by combinations of bitmap indexes.
Since bitmap indexes can be efficiently combined, a single bitmap index on each column can support all possible queries.
To enable the star transformation
Create bitmap indexes on each of the FACT table columns which are used in star queries
Make sure that STAR_TRANSFORMATION_ENABLED is TRUE, either by changing init.ora or using an ALTER SESSION statement.
Use the STAR_TRANSFORMATION hint if necessary.
Drawback of Star transformation
Bitmap indexes reduce concurrency (row-level locking may break down).
But remember that large number of distinct column values may not matter
Star transformation performance
When there is no suitable concatenated index, the Star transformation results in a significant improvement
0.01
0.24
9.94
0.35
0 1 2 3 4 5 6 7 8 9 10
Elapsed time (s)
Concatenated index
No suitable concatenated index
Star_transformation
Star
Hint #9: Use ARRAY processing– Retrieve or insert rows in batches, rather than one at a time.– Methods of doing this are language specific
0
10
20
30
40
50
60
0 20 40 60 80 100 120 140 160 180 200 220 240 260 280 300
Array size
Ela
psed tim
e
Hint #10: Consider PL/SQL for “tricky” SQL
With SQL you specify the data you want, not how to get it. Sometime you need to specifically dictate your retrieval algorithms.
For example:– Getting the second highest value – Doing lookups on a low-high lookup table– Correlated updates– SQL with multiple complex correlated subqueries – SQL that seems to hard to optimize unless it is broken into
multiple queries linked in PL/SQL
Oracle8i PL/SQL Improvements
– Array processing
– NOCOPY
– Temporary tables
– The profiler
– Dynamic SQL
Bonus hint: When your SQL is tuned, look to your Oracle configuration
When SQL is inefficient there is limited benefit in investing in Oracle server or operating system tuning.
However, once SQL is tuned, the limiting factor for performance will be Oracle and operating system configuration.
In particular, check for internal Oracle contention that typically shows up as latch contention or unusual wait conditions (buffer busy, free buffer, etc)