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12 Tuning PL/SQL Applications for Performance

This chapter explains how to write efficient new PL/SQL code and speed up existing PL/SQL code.

Topics:

Initialization Parameters for PL/SQL Compilation

Table 12-1 lists and briefly describes the initialization parameters that are used to compile PL/SQL units. The static data dictionary view ALL_PLSQL_OBJECT_SETTINGS displays the values of these parameters. For complete descriptions of these parameters and ALL_PLSQL_OBJECT_SETTINGS, see Oracle Database Reference.

Table 12-1 Initialization Parameters for PL/SQL CompilationFoot 1 

Parameter Description

PLSQL_CCFLAGS Footref 1

Enables you to control conditional compilation of each PL/SQL unit independently.

PLSQL_CODE_TYPE Footref 1

Specifies the compilation mode for PL/SQL program units—INTERPRETED (the default) or NATIVE.

If the optimization level (set by PLSQL_OPTIMIZE_LEVEL) is less than 2:

  • The compiler generates interpreted code, regardless of PLSQL_CODE_TYPE.

  • If you specify NATIVE, the compiler warns you that NATIVE was ignored.

PLSQL_DEBUG Footref 1

Specifies whether or not PL/SQL units will be compiled for debugging. See note following table.

PLSQL_NATIVE_LIBRARY_DIR

Specifies the name of the directory where shared objects produced by the native compiler are stored. See note following table.

PLSQL_NATIVE_LIBRARY_SUBDIR_COUNT

Specifies the number of subdirectories in the directory specified by PLSQL_NATIVE_ LIBRARY_DIR. See note following table.

PLSQL_OPTIMIZE_LEVEL Footref 1

Specifies the optimization level at which to compile PL/SQL units (the higher the level, the more optimizations the compiler tries to make).

If PLSQL_OPTIMIZE_LEVEL=1, PL/SQL units will be compiled for debugging.

PLSQL_WARNINGS Footref 1

Enables or disables the reporting of warning messages by the PL/SQL compiler, and specifies which warning messages to show as errors.

NLS_LENGTH_SEMANTICS Footref 1

Enables you to create CHAR and VARCHAR2 columns using either byte or character length semantics.


Footnote 1 The compile-time value of this parameter is stored with the metadata of the PL/SQL program unit.

Note:

The following initialization parameters are deprecated and might be unavailable in future Oracle Database releases:
  • PLSQL_DEBUG

    Instead of PLSQL_DEBUG, Oracle recommends using PLSQL_OPTIMIZE_LEVEL=1.

  • PLSQL_NATIVE_LIBRARY_DIR

  • PLSQL_NATIVE_LIBRARY_SUBDIR_COUNT

For Release 11.1, they have the same effects as they had for Release 10.2—described in Table 12-1—but the compiler warns you that they are deprecated.

If the compile-time value of an initialization parameter is stored with the metadata of the PL/SQL program unit, then you can reuse that value when you explicitly recompile the program unit, by doing the following:

  1. Use one of the following statements to recompile the program unit:

    • ALTER FUNCTION COMPILE

    • ALTER PACKAGE COMPILE

    • ALTER PROCEDURE COMPILE

  2. Include the REUSE SETTINGS clause in the statement.

    This clause preserves the existing settings and uses them for the recompilation of any parameters for which values are not specified elsewhere in the statement.

If you use the SQL statement CREATE OR REPLACE to explicitly compile a PL/SQL subprogram, or if you do not include the REUSE SETTINGS clause in the ALTER COMPILE statement, then the value of the initialization parameter is its value for the session.

See Also:

How PL/SQL Optimizes Your Programs

Prior to Oracle Database Release 10g, the PL/SQL compiler translated your code to machine code without applying many changes to improve performance. Now, PL/SQL uses an optimizing compiler that can rearrange code for better performance.

The optimizer is enabled by default. In rare cases, if the overhead of the optimizer makes compilation of very large applications take too long, you can lower the optimization by setting the initialization parameter PLSQL_OPTIMIZE_LEVEL=1 instead of its default value 2. In even rarer cases, you might see a change in exception action, either an exception that is not raised at all, or one that is raised earlier than expected. Setting PLSQL_OPTIMIZE_LEVEL=1 prevents the code from being rearranged.

One optimization that the compiler can perform is subprogram inlining. Subprogram inlining replaces a subprogram call (to a subprogram in the same program unit) with a copy of the called subprogram.

To allow subprogram inlining, either accept the default value of the PLSQL_OPTIMIZE_LEVEL initialization parameter (which is 2) or set it to 3. With PLSQL_OPTIMIZE_LEVEL=2, you must specify each subprogram to be inlined. With PLSQL_OPTIMIZE_LEVEL=3, the PL/SQL compiler seeks opportunities to inline subprograms beyond those that you specify.

If a particular subprogram is inlined, performance almost always improves. However, because the compiler inlines subprograms early in the optimization process, it is possible for subprogram inlining to preclude later, more powerful optimizations.

If subprogram inlining slows the performance of a particular PL/SQL program, use the PL/SQL hierarchical profiler to identify subprograms for which you want to turn off inlining. To turn off inlining for a subprogram, use the INLINE pragma, described in "INLINE Pragma".

See Also:

When to Tune PL/SQL Code

The information in this chapter is especially valuable if you are responsible for:

Before starting any tuning effort, benchmark the current system and measure how long particular subprograms take. PL/SQL in Oracle Database 10g includes many automatic optimizations, so you might see performance improvements without doing any tuning.

Guidelines for Avoiding PL/SQL Performance Problems

When a PL/SQL-based application performs poorly, it is often due to badly written SQL statements, poor programming practices, inattention to PL/SQL basics, or misuse of shared memory.

Topics:

Avoiding CPU Overhead in PL/SQL Code

Topics:

Make SQL Statements as Efficient as Possible

PL/SQL programs look relatively simple because most of the work is done by SQL statements. Slow SQL statements are the main reason for slow execution.

If SQL statements are slowing down your program:

  • Make sure you have appropriate indexes. There are different kinds of indexes for different situations. Your index strategy might be different depending on the sizes of various tables in a query, the distribution of data in each query, and the columns used in the WHERE clauses.

  • Make sure you have up-to-date statistics on all the tables, using the subprograms in the DBMS_STATS package.

  • Analyze the execution plans and performance of the SQL statements, using:

    • EXPLAIN PLAN statement

    • SQL Trace facility with TKPROF utility

  • Rewrite the SQL statements if necessary. For example, query hints can avoid problems such as unnecessary full-table scans.

For more information about these methods, see Oracle Database Performance Tuning Guide.

Some PL/SQL features also help improve the performance of SQL statements:

  • If you are running SQL statements inside a PL/SQL loop, look at the FORALL statement as a way to replace loops of INSERT, UPDATE, and DELETE statements.

  • If you are looping through the result set of a query, look at the BULK COLLECT clause of the SELECT INTO statement as a way to bring the entire result set into memory in a single operation.

Make Function Calls as Efficient as Possible

Badly written subprograms (for example, a slow sort or search function) can harm performance. Avoid unnecessary calls to subprograms, and optimize their code:

  • If a function is called within a SQL query, you can cache the function value for each row by creating a function-based index on the table in the query. The CREATE INDEX statement might take a while, but queries can be much faster.

  • If a column is passed to a function within an SQL query, the query cannot use regular indexes on that column, and the function might be called for every row in a (potentially very large) table. Consider nesting the query so that the inner query filters the results to a small number of rows, and the outer query calls the function only a few times as shown in Example 12-1.

Example 12-1 Nesting a Query to Improve Performance

BEGIN
-- Inefficient, calls function for every row
   FOR item IN (SELECT DISTINCT(SQRT(department_id)) col_alias FROM employees)
   LOOP
      DBMS_OUTPUT.PUT_LINE(item.col_alias);
   END LOOP;
-- Efficient, only calls function once for each distinct value.
   FOR item IN
   ( SELECT SQRT(department_id) col_alias FROM
     ( SELECT DISTINCT department_id FROM employees)
   )
   LOOP
      DBMS_OUTPUT.PUT_LINE(item.col_alias);
   END LOOP;
END;
/

If you use OUT or IN OUT parameters, PL/SQL adds some performance overhead to ensure correct action in case of exceptions (assigning a value to the OUT parameter, then exiting the subprogram because of an unhandled exception, so that the OUT parameter keeps its original value).

If your program does not depend on OUT parameters keeping their values in such situations, you can add the NOCOPY keyword to the parameter declarations, so the parameters are declared OUT NOCOPY or IN OUT NOCOPY.

This technique can give significant speedup if you are passing back large amounts of data in OUT parameters, such as collections, big VARCHAR2 values, or LOBs.

This technique also applies to member methods of object types. If these methods modify attributes of the object type, all the attributes are copied when the method ends. To avoid this overhead, you can explicitly declare the first parameter of the member method as SELF IN OUT NOCOPY, instead of relying on PL/SQL's implicit declaration SELF IN OUT. For information about design considerations for object methods, see Oracle Database Object-Relational Developer's Guide.

Make Loops as Efficient as Possible

Because PL/SQL applications are often built around loops, it is important to optimize the loop itself and the code inside the loop:

  • To issue a series of DML statements, replace loop constructs with FORALL statements.

  • To loop through a result set and store the values, use the BULK COLLECT clause on the query to bring the query results into memory in one operation.

  • If you have to loop through a result set more than once, or issue other queries as you loop through a result set, you can probably enhance the original query to give you exactly the results you want. Some query operators to explore include UNION, INTERSECT, MINUS, and CONNECT BY.

  • You can also nest one query inside another (known as a subselect) to do the filtering and sorting in multiple stages. For example, instead of calling a PL/SQL function in the inner WHERE clause (which might call the function once for each row of the table), you can filter the result set to a small set of rows in the inner query, and call the function in the outer query.

Use Built-In String Functions

PL/SQL provides many highly optimized string functions such as REPLACE, TRANSLATE, SUBSTR, INSTR, RPAD, and LTRIM. The built-in functions use low-level code that is more efficient than regular PL/SQL.

If you use PL/SQL string functions to search for regular expressions, consider using the built-in regular expression functions, such as REGEXP_SUBSTR.

  • You can search for regular expressions using the SQL operator REGEXP_LIKE. See Example 6-10.

  • You can test or manipulate strings using the built-in functions REGEXP_INSTR, REGEXP_REPLACE, and REGEXP_SUBSTR.

Oracle's regular expression features use characters like '.', '*', '^', and '$' that you might be familiar with from Linux, UNIX, or Perl programming. For multi-language programming, there are also extensions such as '[:lower:]' to match a lowercase letter, instead of '[a-z]' which does not match lowercase accented letters.

Put Least Expensive Conditional Tests First

PL/SQL stops evaluating a logical expression as soon as the result can be determined. This functionality is known as short-circuit evaluation. See "Short-Circuit Evaluation".

When evaluating multiple conditions separated by AND or OR, put the least expensive ones first. For example, check the values of PL/SQL variables before testing function return values, because PL/SQL might be able to skip calling the functions.

Minimize Datatype Conversions

At run time, PL/SQL converts between different datatypes automatically. For example, assigning a PLS_INTEGER variable to a NUMBER variable results in a conversion because their internal representations are different.

Whenever possible, choose datatypes carefully to minimize implicit conversions. Use literals of the appropriate types, such as character literals in character expressions and decimal numbers in number expressions.

Minimizing conversions might mean changing the types of your variables, or even working backward and designing your tables with different datatypes. Or, you might convert data once, such as from an INTEGER column to a PLS_INTEGER variable, and use the PL/SQL type consistently after that. The conversion from INTEGER to PLS_INTEGER datatype might improve performance, because of the use of more efficient hardware arithmetic. See "Use PLS_INTEGER or SIMPLE_INTEGER for Integer Arithmetic".

Use PLS_INTEGER or SIMPLE_INTEGER for Integer Arithmetic

When declaring a local integer variable:

  • If the value of the variable might be NULL, or if the variable needs overflow checking, use the datatype PLS_INTEGER.

  • If the value of the variable will never be NULL, and the variable does not need overflow checking, use the datatype SIMPLE_INTEGER.

PLS_INTEGER values use less storage space than INTEGER or NUMBER values, and PLS_INTEGER operations use hardware arithmetic. For more information, see "PLS_INTEGER and BINARY_INTEGER Datatypes".

SIMPLE_INTEGER is a predefined subtype of PLS_INTEGER. It has the same range as PLS_INTEGER and has a NOT NULL constraint. It differs significantly from PLS_INTEGER in its overflow semantics—for details, see "Overflow Semantics".

The datatype NUMBER and its subtypes are represented in a special internal format, designed for portability and arbitrary scale and precision, not performance. Even the subtype INTEGER is treated as a floating-point number with nothing after the decimal point. Operations on NUMBER or INTEGER variables require calls to library routines.

Avoid constrained subtypes such as INTEGER, NATURAL, NATURALN, POSITIVE, POSITIVEN, and SIGNTYPE in performance-critical code. Variables of these types require extra checking at run time, each time they are used in a calculation.

Use BINARY_FLOAT and BINARY_DOUBLE for Floating-Point Arithmetic

The datatype NUMBER and its subtypes are represented in a special internal format, designed for portability and arbitrary scale and precision, not performance. Operations on NUMBER or INTEGER variables require calls to library routines.

The BINARY_FLOAT and BINARY_DOUBLE types can use native hardware arithmetic instructions, and are more efficient for number-crunching applications such as scientific processing. They also require less space in the database.

These types do not always represent fractional values precisely, and handle rounding differently than the NUMBER types. These types are less suitable for financial code where accuracy is critical.

Avoiding Memory Overhead in PL/SQL Code

Topics:

Declare VARCHAR2 Variables of 4000 or More Characters

You might need to allocate large VARCHAR2 variables when you are not sure how big an expression result will be. You can actually conserve memory by declaring VARCHAR2 variables with large sizes, such as 32000, rather than estimating just a little on the high side, such as by specifying 256 or 1000. PL/SQL has an optimization that makes it easy to avoid overflow problems and still conserve memory. Specify a size of more than 4000 characters for the VARCHAR2 variable; PL/SQL waits until you assign the variable, then only allocates as much storage as needed.

Group Related Subprograms into Packages

When you call a packaged subprogram for the first time, the whole package is loaded into the shared memory pool. Subsequent calls to related subprograms in the package require no disk I/O, and your code executes faster. If the package is aged out of memory, it must be reloaded if you reference it again.

You can improve performance by sizing the shared memory pool correctly. Make sure it is large enough to hold all frequently used packages but not so large that memory is wasted.

Pin Packages in the Shared Memory Pool

You can pin frequently accessed packages in the shared memory pool, using the supplied package DBMS_SHARED_POOL. When a package is pinned, it is not aged out by the least recently used (LRU) algorithm that Oracle normally uses. The package remains in memory no matter how full the pool gets or how frequently you access the package.

For more information on the DBMS_SHARED_POOL package, see Oracle Database PL/SQL Packages and Types Reference.

Apply Advice of Compiler Warnings

The PL/SQL compiler issues warnings about things that do not make a program incorrect, but might lead to poor performance. If you receive such a warning, and the performance of this code is important, follow the suggestions in the warning and change the code to be more efficient.

Collecting Data About User-Defined Identifiers

PL/Scope extracts, organizes, and stores data about user-defined identifiers from PL/SQL source code. You can retrieve source code identifier data with the static data dictionary views *_IDENTIFIERS. For more information, see Oracle Database Advanced Application Developer's Guide.

Profiling and Tracing PL/SQL Programs

To help you isolate performance problems in large PL/SQL programs, PL/SQL provides the following tools, implemented as PL/SQL packages:

Tool Package Description
Profiler API DBMS_PROFILER Computes the time that your PL/SQL program spends at each line and in each subprogram.

You must have CREATE privileges on the units to be profiled.

Saves run-time statistics in database tables, which you can query.

Trace API DBMS_TRACE Traces the order in which subprograms execute.

You can specify the subprograms to trace and the tracing level.

Saves run-time statistics in database tables, which you can query.

PL/SQL hierarchical profiler DBMS_HPROF Reports the dynamic execution program profile of your PL/SQL program, organized by subprogram calls. Accounts for SQL and PL/SQL execution times separately.

Requires no special source or compile-time preparation.

Generates reports in HTML. Provides the option of storing results in relational format in database tables for custom report generation (such as third-party tools offer).


Topics:

For a detailed description of PL/SQL hierarchical profiler, see Oracle Database Advanced Application Developer's Guide.

Using the Profiler API: Package DBMS_PROFILER

The Profiler API ("Profiler") is implemented as PL/SQL package DBMS_PROFILER, whose services compute the time that your PL/SQL program spends at each line and in each subprogram and save these statistics in database tables, which you can query.

Note:

You can use Profiler only on units for which you have CREATE privilege. You do not need the CREATE privilege to use the PL/SQL hierarchical profiler (see Oracle Database Advanced Application Developer's Guide).

To use Profiler:

  1. Start the profiling session.

  2. Run your PL/SQL program long enough to get adequate code coverage.

  3. Flush the collected data to the database.

  4. Stop the profiling session.

After you have collected data with Profiler, you can:

  1. Query the database tables that contain the performance data.

  2. Identify the subprograms and packages that use the most execution time.

  3. Determine why your program spent more time accessing certain data structures and executing certain code segments.

    Inspect possible performance bottlenecks such as SQL statements, loops, and recursive functions.

  4. Use the results of your analysis to replace inappropriate data structures and rework slow algorithms.

    For example, due to an exponential growth in data, you might need to replace a linear search with a binary search.

For detailed information about the DBMS_PROFILER subprograms, see Oracle Database PL/SQL Packages and Types Reference.

Using the Trace API: Package DBMS_TRACE

The Trace API ("Trace") is implemented as PL/SQL package DBMS_TRACE, whose services trace execution by subprogram or exception and save these statistics in database tables, which you can query.

To use Trace:

  1. (Optional) Limit tracing to specific subprograms and choose a tracing level.

    Tracing all subprograms and exceptions in a large program can produce huge amounts of data that are difficult to manage.

  2. Start the tracing session.

  3. Run your PL/SQL program.

  4. Stop the tracing session.

After you have collected data with Trace, you can query the database tables that contain the performance data and analyze it in the same way that you analyze the performance data from Profiler (see "Using the Profiler API: Package DBMS_PROFILER").

For detailed information about the DBMS_TRACE subprograms, see Oracle Database PL/SQL Packages and Types Reference.

Reducing Loop Overhead for DML Statements and Queries with Bulk SQL

PL/SQL sends SQL statements such as DML and queries to the SQL engine for execution, and SQL returns the result data to PL/SQL. You can minimize the performance overhead of this communication between PL/SQL and SQL by using the PL/SQL language features known collectively as bulk SQL. The FORALL statement sends INSERT, UPDATE, or DELETE statements in batches, rather than one at a time. The BULK COLLECT clause brings back batches of results from SQL. If the DML statement affects four or more database rows, the use of bulk SQL can improve performance considerably.

The assigning of values to PL/SQL variables in SQL statements is called binding. PL/SQL binding operations fall into the following categories:

Binding Category When This Binding Occurs
in-bind When an INSERT or UPDATE statement stores a PL/SQL variable or host variable in the database
out-bind When the RETURNING clause of an INSERT, UPDATE, or DELETE statement assigns a database value to a PL/SQL variable or host variable
define When a SELECT or FETCH statement assigns a database value to a PL/SQL variable or host variable

Bulk SQL uses PL/SQL collections, such as varrays or nested tables, to pass large amounts of data back and forth in a single operation. This process is known as bulk binding. If the collection has 20 elements, bulk binding lets you perform the equivalent of 20 SELECT, INSERT, UPDATE, or DELETE statements using a single operation. Queries can pass back any number of results, without requiring a FETCH statement for each row.

Note:

Parallel DML is disabled with bulk binds.

To speed up INSERT, UPDATE, and DELETE statements, enclose the SQL statement within a PL/SQL FORALL statement instead of a loop construct.

To speed up SELECT statements, include the BULK COLLECT INTO clause in the SELECT statement instead of using INTO.

For syntax of, restrictions on, and usage notes for these statements, see "FORALL Statement" and "SELECT INTO Statement".

Topics:

Running One DML Statement Multiple Times (FORALL Statement)

The keyword FORALL lets you run multiple DML statements very efficiently. It can only repeat a single DML statement, unlike a general-purpose FOR loop. For full syntax and restrictions, see "FORALL Statement".

The SQL statement can reference more than one collection, but FORALL only improves performance where the index value is used as a subscript.

Usually, the bounds specify a range of consecutive index numbers. If the index numbers are not consecutive, such as after you delete collection elements, you can use the INDICES OF or VALUES OF clause to iterate over just those index values that really exist.

The INDICES OF clause iterates over all of the index values in the specified collection, or only those between a lower and upper bound.

The VALUES OF clause refers to a collection that is indexed by PLS_INTEGER and whose elements are of type PLS_INTEGER. The FORALL statement iterates over the index values specified by the elements of this collection.

The FORALL statement in Example 12-2 sends all three DELETE statements to the SQL engine at once.

Example 12-2 Issuing DELETE Statements in a Loop

CREATE TABLE employees_temp AS SELECT * FROM employees;
DECLARE
   TYPE NumList IS VARRAY(20) OF NUMBER;
   depts NumList := NumList(10, 30, 70);  -- department numbers
BEGIN
   FORALL i IN depts.FIRST..depts.LAST
      DELETE FROM employees_temp WHERE department_id = depts(i);
   COMMIT;
END;
/

Example 12-3 loads some data into PL/SQL collections. Then it inserts the collection elements into a database table twice: first using a FOR loop, then using a FORALL statement. The FORALL version is much faster.

Example 12-3 Issuing INSERT Statements in a Loop

CREATE TABLE parts1 (pnum INTEGER, pname VARCHAR2(15));
CREATE TABLE parts2 (pnum INTEGER, pname VARCHAR2(15));
DECLARE
  TYPE NumTab IS TABLE OF parts1.pnum%TYPE INDEX BY PLS_INTEGER;
  TYPE NameTab IS TABLE OF parts1.pname%TYPE INDEX BY PLS_INTEGER;
  pnums  NumTab;
  pnames NameTab;
  iterations CONSTANT PLS_INTEGER := 500;
  t1 INTEGER;
  t2 INTEGER;
  t3 INTEGER;
BEGIN
  FOR j IN 1..iterations LOOP  -- load index-by tables
     pnums(j) := j;
     pnames(j) := 'Part No. ' || TO_CHAR(j);
  END LOOP;
  t1 := DBMS_UTILITY.get_time;
  FOR i IN 1..iterations LOOP  -- use FOR loop
     INSERT INTO parts1 VALUES (pnums(i), pnames(i));
  END LOOP;
  t2 := DBMS_UTILITY.get_time;
  FORALL i IN 1..iterations  -- use FORALL statement
     INSERT INTO parts2 VALUES (pnums(i), pnames(i));
  t3 := DBMS_UTILITY.get_time;
  DBMS_OUTPUT.PUT_LINE('Execution Time (secs)');
  DBMS_OUTPUT.PUT_LINE('---------------------');
  DBMS_OUTPUT.PUT_LINE('FOR loop: ' || TO_CHAR((t2 - t1)/100));
  DBMS_OUTPUT.PUT_LINE('FORALL:   ' || TO_CHAR((t3 - t2)/100));
  COMMIT;
END;
/

Executing this block shows that the loop using FORALL is much faster.

The bounds of the FORALL loop can apply to part of a collection, not necessarily all the elements, as shown in Example 12-4.

Example 12-4 Using FORALL with Part of a Collection

CREATE TABLE employees_temp AS SELECT * FROM employees;
DECLARE
   TYPE NumList IS VARRAY(10) OF NUMBER;
   depts NumList := NumList(5,10,20,30,50,55,57,60,70,75);
BEGIN
   FORALL j IN 4..7  -- use only part of varray
      DELETE FROM employees_temp WHERE department_id = depts(j);
   COMMIT;
END;
/

You might need to delete some elements from a collection before using the collection in a FORALL statement. The INDICES OF clause processes sparse collections by iterating through only the remaining elements.

You might also want to leave the original collection alone, but process only some elements, process the elements in a different order, or process some elements more than once. Instead of copying the entire elements into new collections, which might use up substantial amounts of memory, the VALUES OF clause lets you set up simple collections whose elements serve as pointers to elements in the original collection.

Example 12-5 creates a collection holding some arbitrary data, a set of table names. Deleting some of the elements makes it a sparse collection that does not work in a default FORALL statement. The program uses a FORALL statement with the INDICES OF clause to insert the data into a table. It then sets up two more collections, pointing to certain elements from the original collection. The program stores each set of names in a different database table using FORALL statements with the VALUES OF clause.

Example 12-5 Using FORALL with Nonconsecutive Index Values

-- Create empty tables to hold order details
CREATE TABLE valid_orders (cust_name VARCHAR2(32),
                           amount NUMBER(10,2));
CREATE TABLE big_orders AS SELECT * FROM valid_orders
   WHERE 1 = 0;
CREATE TABLE rejected_orders AS SELECT * FROM valid_orders
  WHERE 1 = 0;
DECLARE
-- Collections for set of customer names & order amounts:
   SUBTYPE cust_name IS valid_orders.cust_name%TYPE;
   TYPE cust_typ IS TABLe OF cust_name;
   cust_tab cust_typ;
   SUBTYPE order_amount IS valid_orders.amount%TYPE;
   TYPE amount_typ IS TABLE OF NUMBER;
   amount_tab amount_typ;
-- Collections to point into CUST_TAB collection.
   TYPE index_pointer_t IS TABLE OF PLS_INTEGER;
   big_order_tab index_pointer_t := index_pointer_t();
   rejected_order_tab index_pointer_t := index_pointer_t();
   PROCEDURE setup_data IS BEGIN
 -- Set up sample order data,
 -- including some invalid orders and some 'big' orders.
    cust_tab := cust_typ('Company1','Company2',
      'Company3','Company4','Company5');
    amount_tab := amount_typ(5000.01, 0,
      150.25, 4000.00, NULL);
  END;
BEGIN
   setup_data();
   DBMS_OUTPUT.PUT_LINE
     ('--- Original order data ---');
   FOR i IN 1..cust_tab.LAST LOOP
     DBMS_OUTPUT.PUT_LINE
     ('Customer #' || i || ', ' || cust_tab(i) || ': $' ||
       amount_tab(i));
   END LOOP;
-- Delete invalid orders (where amount is null or 0).
   FOR i IN 1..cust_tab.LAST LOOP
     IF amount_tab(i) is null or amount_tab(i) = 0 THEN
        cust_tab.delete(i);
        amount_tab.delete(i);
     END IF;
   END LOOP;
   DBMS_OUTPUT.PUT_LINE
     ('--- Data with invalid orders deleted ---');
   FOR i IN 1..cust_tab.LAST LOOP
     IF cust_tab.EXISTS(i) THEN
       DBMS_OUTPUT.PUT_LINE('Customer #' || i || ', ' ||
          cust_tab(i) || ': $' || amount_tab(i));
      END IF;
   END LOOP;
-- Because subscripts of collections are not consecutive,
-- use FORALL...INDICES OF to iterate through actual subscripts,
-- rather than 1..COUNT
   FORALL i IN INDICES OF cust_tab
     INSERT INTO valid_orders(cust_name, amount) 
        VALUES(cust_tab(i), amount_tab(i));
-- Now process the order data differently
-- Extract 2 subsets and store each subset in a different table
   -- Initialize the CUST_TAB and AMOUNT_TAB collections again.
   setup_data();
   FOR i IN cust_tab.FIRST .. cust_tab.LAST LOOP
     IF amount_tab(i) IS NULL OR amount_tab(i) = 0 THEN
       -- Add a new element to this collection
       rejected_order_tab.EXTEND;
-- Record the subscript from the original collection
       rejected_order_tab(rejected_order_tab.LAST) := i; 
     END IF;
     IF amount_tab(i) > 2000 THEN
        -- Add a new element to this collection
        big_order_tab.EXTEND;
-- Record the subscript from the original collection
        big_order_tab(big_order_tab.LAST) := i;
     END IF;
   END LOOP;
-- Now it's easy to run one DML statement
-- on one subset of elements,
-- and another DML statement on a different subset.
   FORALL i IN VALUES OF rejected_order_tab
     INSERT INTO rejected_orders
       VALUES (cust_tab(i), amount_tab(i));
   FORALL i IN VALUES OF big_order_tab
     INSERT INTO big_orders
       VALUES (cust_tab(i), amount_tab(i));
   COMMIT;
END;
/
-- Verify that the correct order details were stored
SELECT cust_name "Customer",
  amount "Valid order amount" FROM valid_orders;
SELECT cust_name "Customer",
  amount "Big order amount" FROM big_orders;
SELECT cust_name "Customer",
 amount "Rejected order amount" FROM rejected_orders;

Topics:

How FORALL Affects Rollbacks

In a FORALL statement, if any execution of the SQL statement raises an unhandled exception, all database changes made during previous executions are rolled back. However, if a raised exception is caught and handled, changes are rolled back to an implicit savepoint marked before each execution of the SQL statement. Changes made during previous executions are not rolled back. For example, suppose you create a database table that stores department numbers and job titles, as shown in Example 12-6. Then, you change the job titles so that they are longer. The second UPDATE fails because the new value is too long for the column. Because we handle the exception, the first UPDATE is not rolled back and we can commit that change.

Example 12-6 Using Rollbacks with FORALL

CREATE TABLE emp_temp (deptno NUMBER(2), job VARCHAR2(18));
DECLARE
   TYPE NumList IS TABLE OF NUMBER;
   depts NumList := NumList(10, 20, 30);
BEGIN
  INSERT INTO emp_temp VALUES(10, 'Clerk');
-- Lengthening this job title causes an exception
  INSERT INTO emp_temp VALUES(20, 'Bookkeeper');
  INSERT INTO emp_temp VALUES(30, 'Analyst');
  COMMIT;
  FORALL j IN depts.FIRST..depts.LAST -- Run 3 UPDATE statements.
    UPDATE emp_temp SET job = job || ' (Senior)'
      WHERE deptno = depts(j);
-- raises a "value too large" exception
EXCEPTION
  WHEN OTHERS THEN
    DBMS_OUTPUT.PUT_LINE
      ('Problem in the FORALL statement.');
    COMMIT; -- Commit results of successful updates.
END;
/

Counting Rows Affected by FORALL (%BULK_ROWCOUNT Attribute)

The cursor attributes SQL%FOUND, SQL%ISOPEN, SQL%NOTFOUND, and SQL%ROWCOUNT, return useful information about the most recently executed DML statement. For additional description of cursor attributes, see "Implicit Cursors".

The SQL cursor has one composite attribute, %BULK_ROWCOUNT, for use with the FORALL statement. This attribute works like an associative array: SQL%BULK_ROWCOUNT(i) stores the number of rows processed by the ith execution of an INSERT, UPDATE or DELETE statement, as in Example 12-7.

Example 12-7 Using %BULK_ROWCOUNT with the FORALL Statement

CREATE TABLE emp_temp AS SELECT * FROM employees;
DECLARE
   TYPE NumList IS TABLE OF NUMBER;
   depts NumList := NumList(30, 50, 60);
BEGIN
   FORALL j IN depts.FIRST..depts.LAST
      DELETE FROM emp_temp WHERE department_id = depts(j);
-- How many rows were affected by each DELETE statement?
   FOR i IN depts.FIRST..depts.LAST
   LOOP
      DBMS_OUTPUT.PUT_LINE('Iteration #' || i || ' deleted ' ||
         SQL%BULK_ROWCOUNT(i) || ' rows.');
   END LOOP;
END;
/

The FORALL statement and %BULK_ROWCOUNT attribute use the same subscripts. For example, if FORALL uses the range 5..10, so does %BULK_ROWCOUNT. If the FORALL statement uses the INDICES OF clause to process a sparse collection, %BULK_ROWCOUNT has corresponding sparse subscripts. If the FORALL statement uses the VALUES OF clause to process a subset of elements, %BULK_ROWCOUNT has subscripts corresponding to the values of the elements in the index collection. If the index collection contains duplicate elements, so that some DML statements are issued multiple times using the same subscript, then the corresponding elements of %BULK_ROWCOUNT represent the sum of all rows affected by the DML statement using that subscript.

%BULK_ROWCOUNT is usually equal to 1 for inserts, because a typical insert operation affects only a single row. For the INSERT SELECT construct, %BULK_ROWCOUNT might be greater than 1. For example, the FORALL statement in Example 12-8 inserts an arbitrary number of rows for each iteration. After each iteration, %BULK_ROWCOUNT returns the number of items inserted.

Example 12-8 Counting Rows Affected by FORALL with %BULK_ROWCOUNT

CREATE TABLE emp_by_dept AS SELECT employee_id, department_id
   FROM employees WHERE 1 = 0;
DECLARE
  TYPE dept_tab IS TABLE OF departments.department_id%TYPE;
  deptnums dept_tab;
BEGIN
  SELECT department_id BULK COLLECT INTO deptnums FROM departments;
  FORALL i IN 1..deptnums.COUNT
     INSERT INTO emp_by_dept
        SELECT employee_id, department_id FROM employees
           WHERE department_id = deptnums(i);
  FOR i IN 1..deptnums.COUNT LOOP
-- Count how many rows were inserted for each department; that is,
-- how many employees are in each department.
   DBMS_OUTPUT.PUT_LINE('Dept '||deptnums(i)||': inserted '||
                          SQL%BULK_ROWCOUNT(i)||' records');
  END LOOP;
  DBMS_OUTPUT.PUT_LINE('Total records inserted: ' || SQL%ROWCOUNT);
END;
/

You can also use the scalar attributes %FOUND, %NOTFOUND, and %ROWCOUNT after running a FORALL statement. For example, %ROWCOUNT returns the total number of rows processed by all executions of the SQL statement.

%FOUND and %NOTFOUND refer only to the last execution of the SQL statement. You can use %BULK_ROWCOUNT to infer their values for individual executions. For example, when %BULK_ROWCOUNT(i) is zero, %FOUND and %NOTFOUND are FALSE and TRUE, respectively.

Handling FORALL Exceptions (%BULK_EXCEPTIONS Attribute)

PL/SQL provides a mechanism to handle exceptions raised during the execution of a FORALL statement. This mechanism enables a bulk-bind operation to save information about exceptions and continue processing.

To have a bulk bind complete despite errors, add the keywords SAVE EXCEPTIONS to your FORALL statement after the bounds, before the DML statement. Provide an exception handler to track the exceptions that occurred during the bulk operation.

Example 12-9 shows how you can perform a number of DML operations, without stopping if some operations encounter errors. In the example, EXCEPTION_INIT is used to associate the dml_errors exception with the ORA-24381 error. The ORA-24381 error is raised if any exceptions are caught and saved after a bulk operation.

All exceptions raised during the execution are saved in the cursor attribute %BULK_EXCEPTIONS, which stores a collection of records. Each record has two fields:

  • %BULK_EXCEPTIONS(i).ERROR_INDEX holds the iteration of the FORALL statement during which the exception was raised.

  • %BULK_EXCEPTIONS(i).ERROR_CODE holds the corresponding Oracle error code.

The values stored by %BULK_EXCEPTIONS always refer to the most recently executed FORALL statement. The number of exceptions is saved in %BULK_EXCEPTIONS.COUNT. Its subscripts range from 1 to COUNT.

The individual error messages, or any substitution arguments, are not saved, but the error message text can looked up using ERROR_CODE with SQLERRM as shown in Example 12-9.

You might need to work backward to determine which collection element was used in the iteration that caused an exception. For example, if you use the INDICES OF clause to process a sparse collection, you must step through the elements one by one to find the one corresponding to %BULK_EXCEPTIONS(i).ERROR_INDEX. If you use the VALUES OF clause to process a subset of elements, you must find the element in the index collection whose subscript matches %BULK_EXCEPTIONS(i).ERROR_INDEX, and then use that element's value as the subscript to find the erroneous element in the original collection.

If you omit the keywords SAVE EXCEPTIONS, execution of the FORALL statement stops when an exception is raised. In that case, SQL%BULK_EXCEPTIONS.COUNT returns 1, and SQL%BULK_EXCEPTIONS contains just one record. If no exception is raised during execution, SQL%BULK_EXCEPTIONS.COUNT returns 0.

Example 12-9 Bulk Operation that Continues Despite Exceptions

-- create a temporary table for this example
CREATE TABLE emp_temp AS SELECT * FROM employees;

DECLARE
   TYPE empid_tab IS TABLE OF employees.employee_id%TYPE;
   emp_sr empid_tab;
-- create an exception handler for ORA-24381
   errors NUMBER;
   dml_errors EXCEPTION;
   PRAGMA EXCEPTION_INIT(dml_errors, -24381);
BEGIN
   SELECT employee_id
     BULK COLLECT INTO emp_sr FROM emp_temp 
     WHERE hire_date < '30-DEC-94';
-- add '_SR' to the job_id of the most senior employees
     FORALL i IN emp_sr.FIRST..emp_sr.LAST SAVE EXCEPTIONS
       UPDATE emp_temp SET job_id = job_id || '_SR' 
       WHERE emp_sr(i) = emp_temp.employee_id;
-- If any errors occurred during the FORALL SAVE EXCEPTIONS,
-- a single exception is raised when the statement completes.

EXCEPTION
  -- Figure out what failed and why
  WHEN dml_errors THEN
   errors := SQL%BULK_EXCEPTIONS.COUNT;
   DBMS_OUTPUT.PUT_LINE
     ('Number of statements that failed: ' || errors);
   FOR i IN 1..errors LOOP
      DBMS_OUTPUT.PUT_LINE('Error #' || i || ' occurred during '||
         'iteration #' || SQL%BULK_EXCEPTIONS(i).ERROR_INDEX);
      DBMS_OUTPUT.PUT_LINE('Error message is ' ||
        SQLERRM(-SQL%BULK_EXCEPTIONS(i).ERROR_CODE));
   END LOOP;
END;
/
DROP TABLE emp_temp;

The output from the example is similar to:

Number of statements that failed: 2
Error #1 occurred during iteration #7
Error message is ORA-12899: value too large for column
Error #2 occurred during iteration #13
Error message is ORA-12899: value too large for column

In Example 12-9, PL/SQL raises predefined exceptions because updated values were too large to insert into the job_id column. After the FORALL statement, SQL%BULK_EXCEPTIONS.COUNT returned 2, and the contents of SQL%BULK_EXCEPTIONS were (7,12899) and (13,12899).

To get the Oracle error message (which includes the code), the value of SQL%BULK_EXCEPTIONS(i).ERROR_CODE was negated and then passed to the error-reporting function SQLERRM, which expects a negative number.

Retrieving Query Results into Collections (BULK COLLECT Clause)

Using the keywords BULK COLLECT with a query is a very efficient way to retrieve the result set. Instead of looping through each row, you store the results in one or more collections, in a single operation. You can use these keywords in the SELECT INTO and FETCH INTO statements, and the RETURNING INTO clause.

With the BULK COLLECT clause, all the variables in the INTO list must be collections. The table columns can hold scalar or composite values, including object types. Example 12-10 loads two entire database columns into nested tables:

Example 12-10 Retrieving Query Results with BULK COLLECT

DECLARE
   TYPE NumTab IS TABLE OF employees.employee_id%TYPE;
   TYPE NameTab IS TABLE OF employees.last_name%TYPE;
   enums NumTab;   -- No need to initialize collections
   names NameTab;  -- Values will be filled by SELECT INTO
   PROCEDURE print_results IS
   BEGIN
     IF enums.COUNT = 0 THEN 
       DBMS_OUTPUT.PUT_LINE('No results!');
     ELSE
       DBMS_OUTPUT.PUT_LINE('Results:');
       FOR i IN enums.FIRST .. enums.LAST
       LOOP
         DBMS_OUTPUT.PUT_LINE
           ('  Employee #' || enums(i) || ': '
         names(i));
       END LOOP;
     END IF;
   END;
BEGIN
  -- Retrieve data for employees with Ids greater than 1000
  SELECT employee_id, last_name
    BULK COLLECT INTO enums, names FROM employees
    WHERE employee_id > 1000;
  -- Data was brought into memory by BULK COLLECT
  -- No need to FETCH each row from result set
  print_results();
  -- Retrieve approximately 20% of all rows
  SELECT employee_id, last_name
    BULK COLLECT INTO enums, names FROM employees SAMPLE (20);
  print_results();
END;
/

The collections are initialized automatically. Nested tables and associative arrays are extended to hold as many elements as needed. If you use varrays, all the return values must fit in the varray's declared size. Elements are inserted starting at index 1, overwriting any existing elements.

Because the processing of the BULK COLLECT INTO clause is similar to a FETCH loop, it does not raise a NO_DATA_FOUND exception if no rows match the query. You must check whether the resulting nested table or varray is null, or if the resulting associative array has no elements, as shown in Example 12-11.

To prevent the resulting collections from expanding without limit, you can use the LIMIT clause to or pseudocolumn ROWNUM to limit the number of rows processed. You can also use the SAMPLE clause to retrieve a random sample of rows.

Example 12-11 Using the Pseudocolumn ROWNUM to Limit Query Results

DECLARE
   TYPE SalList IS TABLE OF employees.salary%TYPE;
   sals SalList;
BEGIN
  -- Limit number of rows to 50
 SELECT salary BULK COLLECT INTO sals
   FROM employees
   WHERE ROWNUM <= 50;
  -- Retrieve ~10% rows from table
  SELECT salary BULK COLLECT INTO sals FROM employees SAMPLE (10);
END;
/

You can process very large result sets by fetching a specified number of rows at a time from a cursor, as shown in the following sections.

Topics:

Examples of Bulk Fetching from a Cursor

You can fetch from a cursor into one or more collections as shown in Example 12-12.

Example 12-12 Bulk-Fetching from a Cursor Into One or More Collections

DECLARE
  TYPE NameList IS TABLE OF employees.last_name%TYPE;
  TYPE SalList IS TABLE OF employees.salary%TYPE;
  CURSOR c1 IS SELECT last_name, salary
    FROM employees
    WHERE salary > 10000;
  names NameList;
  sals  SalList;
  TYPE RecList IS TABLE OF c1%ROWTYPE;
  recs RecList;
  v_limit PLS_INTEGER := 10;
  PROCEDURE print_results IS
  BEGIN
    -- Check if collections are empty
    IF names IS NULL OR names.COUNT = 0 THEN
       DBMS_OUTPUT.PUT_LINE('No results!');
    ELSE
      DBMS_OUTPUT.PUT_LINE('Results: ');
      FOR i IN names.FIRST .. names.LAST
      LOOP
        DBMS_OUTPUT.PUT_LINE('  Employee ' || names(i) ||
          ': $' || sals(i));
      END LOOP;
    END IF;
  END;
BEGIN
  DBMS_OUTPUT.PUT_LINE
    ('--- Processing all results at once ---');
  OPEN c1;
  FETCH c1 BULK COLLECT INTO names, sals;
  CLOSE c1;
  print_results();
  DBMS_OUTPUT.PUT_LINE
    ('--- Processing ' || v_limit || ' rows at a time ---');
  OPEN c1;
  LOOP
    FETCH c1 BULK COLLECT INTO names, sals LIMIT v_limit;
    EXIT WHEN names.COUNT = 0;
    print_results();
  END LOOP;
  CLOSE c1;
  DBMS_OUTPUT.PUT_LINE
    ('--- Fetching records rather than columns ---');
  OPEN c1;
  FETCH c1 BULK COLLECT INTO recs;
  FOR i IN recs.FIRST .. recs.LAST
  LOOP
-- Now all columns from result set come from one record
    DBMS_OUTPUT.PUT_LINE('  Employee ' || recs(i).last_name ||
          ': $' || recs(i).salary);
  END LOOP;
END;
/

Example 12-13 shows how you can fetch from a cursor into a collection of records.

Example 12-13 Bulk-Fetching from a Cursor Into a Collection of Records

DECLARE
  TYPE DeptRecTab IS TABLE OF departments%ROWTYPE;
  dept_recs DeptRecTab;
  CURSOR c1 IS
    SELECT department_id, department_name, manager_id, location_id
      FROM departments
      WHERE department_id > 70;
BEGIN
  OPEN c1;
  FETCH c1 BULK COLLECT INTO dept_recs;
END;
/

Limiting Rows for a Bulk FETCH Operation (LIMIT Clause)

The optional LIMIT clause, allowed only in bulk FETCH statements, limits the number of rows fetched from the database. In Example 12-14, with each iteration of the loop, the FETCH statement fetches ten rows (or less) into index-by table empids. The previous values are overwritten. Note the use of empids.COUNT to determine when to exit the loop.

Example 12-14 Using LIMIT to Control the Number of Rows In a BULK COLLECT

DECLARE
   TYPE numtab IS TABLE OF NUMBER INDEX BY PLS_INTEGER;
   CURSOR c1 IS SELECT employee_id
     FROM employees
     WHERE department_id = 80;
   empids    numtab;
   rows      PLS_INTEGER := 10;
BEGIN
  OPEN c1;
  -- Fetch 10 rows or less in each iteration
  LOOP
    FETCH c1 BULK COLLECT INTO empids LIMIT rows;
    EXIT WHEN empids.COUNT = 0;
--  EXIT WHEN c1%NOTFOUND; -- incorrect, can omit some data
    DBMS_OUTPUT.PUT_LINE
     ('------- Results from Each Bulk Fetch --------');
    FOR i IN 1..empids.COUNT LOOP
      DBMS_OUTPUT.PUT_LINE( 'Employee Id: ' || empids(i));
    END LOOP;
  END LOOP;
  CLOSE c1;
END;
/

Retrieving DML Results Into a Collection (RETURNING INTO Clause)

You can use the BULK COLLECT clause in the RETURNING INTO clause of an INSERT, UPDATE, or DELETE statement:

Example 12-15 Using BULK COLLECT with the RETURNING INTO Clause

CREATE TABLE emp_temp AS SELECT * FROM employees;
DECLARE
   TYPE NumList IS TABLE OF employees.employee_id%TYPE;
   enums NumList;
   TYPE NameList IS TABLE OF employees.last_name%TYPE;
   names NameList;
BEGIN
   DELETE FROM emp_temp WHERE department_id = 30
     WHERE department_id = 30
     RETURNING employee_id, last_name
     BULK COLLECT INTO enums, names;
   DBMS_OUTPUT.PUT_LINE
     ('Deleted ' || SQL%ROWCOUNT || ' rows:');
   FOR i IN enums.FIRST .. enums.LAST
   LOOP
      DBMS_OUTPUT.PUT_LINE
        ('Employee #' || enums(i) || ': ' || names(i));
   END LOOP;
END;
/

Using FORALL and BULK COLLECT Together

You can combine the BULK COLLECT clause with a FORALL statement. The output collections are built up as the FORALL statement iterates.

In Example 12-16, the employee_id value of each deleted row is stored in the collection e_ids. The collection depts has 3 elements, so the FORALL statement iterates 3 times. If each DELETE issued by the FORALL statement deletes 5 rows, then the collection e_ids, which stores values from the deleted rows, has 15 elements when the statement completes:

Example 12-16 Using FORALL with BULK COLLECT

CREATE TABLE emp_temp AS SELECT * FROM employees;
DECLARE
   TYPE NumList IS TABLE OF NUMBER;
   depts NumList := NumList(10,20,30);
   TYPE enum_t IS TABLE OF employees.employee_id%TYPE;
   TYPE dept_t IS TABLE OF employees.department_id%TYPE;
   e_ids enum_t;
   d_ids dept_t;
BEGIN
  FORALL j IN depts.FIRST..depts.LAST
    DELETE FROM emp_temp
      WHERE department_id = depts(j)
      RETURNING employee_id, department_id
      BULK COLLECT INTO e_ids, d_ids;
  DBMS_OUTPUT.PUT_LINE
    ('Deleted ' || SQL%ROWCOUNT || ' rows:');
  FOR i IN e_ids.FIRST .. e_ids.LAST
  LOOP
    DBMS_OUTPUT.PUT_LINE('Employee #' || e_ids(i) ||
    ' from dept #' || d_ids(i));
  END LOOP;
END;
/

The column values returned by each execution are added to the values returned previously. If you use a FOR loop instead of the FORALL statement, the set of returned values is overwritten by each DELETE statement.

You cannot use the SELECT BULK COLLECT statement in a FORALL statement.

Using Host Arrays with Bulk Binds

Client-side programs can use anonymous PL/SQL blocks to bulk-bind input and output host arrays. This is the most efficient way to pass collections to and from the database server.

Host arrays are declared in a host environment such as an OCI or a Pro*C program and must be prefixed with a colon to distinguish them from PL/SQL collections. In the following example, an input host array is used in a DELETE statement. At run time, the anonymous PL/SQL block is sent to the database server for execution.

DECLARE
BEGIN
  -- Assume that values were assigned to host array
  -- and host variables in host environment
  FORALL i IN :lower..:upper
    DELETE FROM employees
      WHERE department_id = :depts(i);
  COMMIT;
END;

Writing Computation-Intensive PL/SQL Programs

The BINARY_FLOAT and BINARY_DOUBLE datatypes make it practical to write PL/SQL programs to do number-crunching, for scientific applications involving floating-point calculations. These datatypes act much like the native floating-point types on many hardware systems, with semantics derived from the IEEE-754 floating-point standard.

The way these datatypes represent decimal data make them less suitable for financial applications, where precise representation of fractional amounts is more important than pure performance.

The PLS_INTEGER datatype is a PL/SQL-only datatype that is more efficient than the SQL datatypes NUMBER or INTEGER for integer arithmetic. You can use PLS_INTEGER to write pure PL/SQL code for integer arithmetic, or convert NUMBER or INTEGER values to PLS_INTEGER for manipulation by PL/SQL.

Within a package, you can write overloaded versions of subprograms that accept different numeric parameters. The math routines can be optimized for each kind of parameter (BINARY_FLOAT, BINARY_DOUBLE, NUMBER, PLS_INTEGER), avoiding unnecessary conversions.

The built-in math functions such as SQRT, SIN, COS, and so on already have fast overloaded versions that accept BINARY_FLOAT and BINARY_DOUBLE parameters. You can speed up math-intensive code by passing variables of these types to such functions, and by calling the TO_BINARY_FLOAT or TO_BINARY_DOUBLE functions when passing expressions to such functions.

Tuning Dynamic SQL with EXECUTE IMMEDIATE Statement and Cursor Variables

Some programs (a general-purpose report writer for example) must build and process a variety of SQL statements, where the exact text of the statement is unknown until run time. Such statements probably change from execution to execution. They are called dynamic SQL statements.

Formerly, to execute dynamic SQL statements, you had to use the supplied package DBMS_SQL. Now, within PL/SQL, you can execute any kind of dynamic SQL statement using an interface called native dynamic SQL. The main PL/SQL features involved are the EXECUTE IMMEDIATE statement and cursor variables (also known as REF CURSORs).

Native dynamic SQL code is more compact and much faster than calling the DBMS_SQL package. The following example declares a cursor variable, then associates it with a dynamic SELECT statement:

DECLARE
   TYPE EmpCurTyp IS REF CURSOR;
   emp_cv   EmpCurTyp;
   v_ename VARCHAR2(15);
   v_sal   NUMBER := 1000;
   table_name VARCHAR2(30) := 'employees';
BEGIN
   OPEN emp_cv FOR 'SELECT last_name, salary FROM ' || table_name ||
      ' WHERE salary > :s' USING v_sal;
   CLOSE emp_cv;
END;
/

For more information, see Chapter 7, "Using Dynamic SQL".

Tuning PL/SQL Subprogram Calls with NOCOPY Hint

By default, OUT and IN OUT parameters are passed by value. The values of any IN OUT parameters are copied before the subprogram is executed. During subprogram execution, temporary variables hold the output parameter values. If the subprogram exits normally, these values are copied to the actual parameters. If the subprogram exits with an unhandled exception, the original parameters are unchanged.

When the parameters represent large data structures such as collections, records, and instances of object types, this copying slows down execution and uses up memory. In particular, this overhead applies to each call to an object method: temporary copies are made of all the attributes, so that any changes made by the method are only applied if the method exits normally.

To avoid this overhead, you can specify the NOCOPY hint, which allows the PL/SQL compiler to pass OUT and IN OUT parameters by reference. If the subprogram exits normally, the action is the same as normal. If the subprogram exits early with an exception, the values of OUT and IN OUT parameters (or object attributes) might still change. To use this technique, ensure that the subprogram handles all exceptions.

The following example asks the compiler to pass IN OUT parameter v_staff by reference, to avoid copying the varray on entry to and exit from the subprogram:

DECLARE
  TYPE Staff IS VARRAY(200) OF Employee;
  PROCEDURE reorganize (v_staff IN OUT NOCOPY Staff) IS ...

Example 12-17 loads 25,000 records into a local nested table, which is passed to two local procedures that do nothing. A call to the subprogram that uses NOCOPY takes much less time.

Example 12-17 Using NOCOPY with Parameters

DECLARE
  TYPE EmpTabTyp IS TABLE OF employees%ROWTYPE;
  emp_tab EmpTabTyp := EmpTabTyp(NULL);  -- initialize
  t1 NUMBER;
  t2 NUMBER;
  t3 NUMBER;
  PROCEDURE get_time (t OUT NUMBER) IS
    BEGIN t := DBMS_UTILITY.get_time; END;
  PROCEDURE do_nothing1 (tab IN OUT EmpTabTyp) IS
    BEGIN
      NULL;
    END;
  PROCEDURE do_nothing2 (tab IN OUT NOCOPY EmpTabTyp) IS
    BEGIN
      NULL;
    END;
BEGIN
  SELECT * INTO emp_tab(1)
    FROM employees
    WHERE employee_id = 100;
  -- Copy element 1 into 2..50000
  emp_tab.EXTEND(49999, 1);
  get_time(t1);
  -- Pass IN OUT parameter
  do_nothing1(emp_tab);
  get_time(t2);
  -- Pass IN OUT NOCOPY parameter
  do_nothing2(emp_tab);
  get_time(t3);
  DBMS_OUTPUT.PUT_LINE('Call Duration (secs)');
  DBMS_OUTPUT.PUT_LINE('--------------------');
  DBMS_OUTPUT.PUT_LINE
    ('Just IN OUT: ' || TO_CHAR((t2 - t1)/100.0));
  DBMS_OUTPUT.PUT_LINE
    ('With NOCOPY: ' || TO_CHAR((t3 - t2))/100.0);
END;
/

Restrictions on NOCOPY Hint

The use of NOCOPY increases the likelihood of parameter aliasing. For more information, see "Understanding PL/SQL Subprogram Parameter Aliasing".

Remember, NOCOPY is a hint, not a directive. In the following cases, the PL/SQL compiler ignores the NOCOPY hint and uses the by-value parameter-passing method; no error is generated:

Compiling PL/SQL Program Units for Native Execution

You can usually speed up PL/SQL program units by compiling them into native code (processor-dependent machine code), which is stored in the SYSTEM tablespace.

You can compile any PL/SQL program unit into native code—subprogram, package spec, package body, anonymous block, type spec, or type body. The program unit can be one that you wrote or one that Oracle supplied.

Natively compiled program units work in all server environments, including shared server configuration (formerly called "multithreaded server") and Oracle Real Application Clusters (Oracle RAC).

You can test to see how much performance gain you can get by enabling PL/SQL native compilation.

If you have determined that PL/SQL native compilation will provide significant performance gains in database operations, Oracle recommends compiling the entire database for native mode, which requires DBA privileges. This will speed up both your own code and calls to all of the built-in PL/SQL packages.

Topics:

* Requires DBA privileges.

Determining Whether to Use PL/SQL Native Compilation

Whether to compile a PL/SQL program unit for native or interpreted mode depends on where you are in the development cycle and on what the program unit does.

While you are debugging program units and recompiling them frequently, interpreted mode has these advantages:

  • You can use PL/SQL debugging tools on program units compiled for interpreted mode (but not for those compiled for native mode).

  • Compiling for interpreted mode is faster than compiling for native mode.

After the debugging phase of development, consider the following in determining whether to compile a PL/SQL program unit for native mode:

  • PL/SQL native compilation provides the greatest performance gains for computation-intensive procedural operations. Examples are data warehouse applications and applications with extensive server-side transformations of data for display.

  • PL/SQL native compilation provides the least performance gains for PL/SQL subprograms that spend most of their time executing SQL.

  • When many program units (typically over 15,000) are compiled for native execution, and are simultaneously active, the large amount of shared memory required might affect system performance.

How PL/SQL Native Compilation Works

Without native compilation, the PL/SQL statements in a PL/SQL program unit are compiled into an intermediate form, machine-readable code, which is stored in the database dictionary and interpreted at run time.

With PL/SQL native compilation, the PL/SQL statements in a PL/SQL program unit are compiled into native code and stored in the SYSTEM tablespace. The native code does not have to be interpreted at run time, so it runs faster.

Because native compilation applies only to PL/SQL statements, a PL/SQL program unit that only calls SQL statements might not run faster when natively compiled, but it will run at least as fast as the corresponding interpreted code. The compiled code and the interpreted code make the same library calls, so their action is exactly the same.

The first time a natively compiled PL/SQL program unit is executed, it is fetched from the SYSTEM tablespace into shared memory. Regardless of how many sessions call the program unit, shared memory has only one copy it. If a program unit is not being used, the shared memory it is using might be freed, to reduce memory load.

Natively compiled subprograms and interpreted subprograms can call each other.

PLSQL native compilation works transparently in a Oracle Real Application Clusters (Oracle RAC) environment.

Dependencies, Invalidation, and Revalidation

Recompilation is automatic with invalidated PL/SQL modules. For example, if an object on which a natively compiled PL/SQL subprogram depends changes, the subprogram is invalidated. The next time the same subprogram is called, the database recompiles the subprogram automatically. Because the PLSQL_CODE_TYPE setting is stored inside the library unit for each subprogram, the automatic recompilation uses this stored setting for code type.

Explicit recompilation does not necessarily use the stored PLSQL_CODE_TYPE setting. For the conditions under which explicit recompilation uses stored settings, see "Initialization Parameters for PL/SQL Compilation".

Setting PLSQL_CODE_TYPE Initialization Parameter

The PLSQL_CODE_TYPE initialization parameter determines whether PL/SQL code is natively compiled or interpreted. The default setting is INTERPRETED, which is recommended during development. To enable PL/SQL native compilation, set the value of PLSQL_CODE_TYPE to NATIVE.

Note:

If the optimization level (set by the PLSQL_OPTIMIZE_LEVEL initialization parameter) is less than 2, and you set PLSQL_CODE_TYPE to NATIVE, the compiler ignores your setting and warns you of this.

A package specification and its body can have different PLSQL_CODE_TYPE settings.

If you compile the whole database as NATIVE, Oracle recommends that you set PLSQL_CODE_TYPE at the system level.

See Also:

Oracle Database Reference for information about the PLSQL_CODE_TYPE initialization parameter and the initialization parameter file.

Setting Up a New Database for PL/SQL Native Compilation

If you have DBA privileges, you can set up an new database for PL/SQL native compilation by setting the initialization parameter PLSQL_CODE_TYPE to NATIVE. The performance benefits apply to all the built-in PL/SQL packages, which are used for many database operations.

Compiling the Entire Database for PL/SQL Native or Interpreted Compilation

If you have DBA privileges, you can recompile all PL/SQL modules in an existing database to NATIVE or INTERPRETED, using the dbmsupgnv.sql and dbmsupgin.sql scripts respectively during the process described in this section. Before making the conversion, review "Determining Whether to Use PL/SQL Native Compilation".

During the conversion to native compilation, TYPE specifications are not recompiled by dbmsupgnv.sql to NATIVE because these specifications do not contain executable code.

Package specifications seldom contain executable code so the run-time benefits of compiling to NATIVE are not measurable. You can use the TRUE command-line parameter with the dbmsupgnv.sql script to exclude package specs from recompilation to NATIVE, saving time in the conversion process.

When converting to interpreted compilation, the dbmsupgin.sql script does not accept any parameters and does not exclude any PL/SQL units.

Note:

The following procedure describes the conversion to native compilation. If you need to recompile all PL/SQL modules to interpreted compilation, make these changes in the steps.
  • Skip the first step.

  • Set the PLSQL_CODE_TYPE initialization parameter to INTERPRETED rather than NATIVE.

  • Substitute dbmsupgin.sql for the dbmsupgnv.sql script.

  1. Ensure that a test PL/SQL unit can be compiled. For example:

    ALTER PROCEDURE my_proc COMPILE PLSQL_CODE_TYPE=NATIVE REUSE SETTINGS;
    
  2. Shut down application services, the listener, and the database.

    • Shut down all of the Application services including the Forms Processes, Web Servers, Reports Servers, and Concurrent Manager Servers. After shutting down all of the Application services, ensure that all of the connections to the database were terminated.

    • Shut down the TNS listener of the database to ensure that no new connections are made.

    • Shut down the database in normal or immediate mode as the user SYS. See the Oracle Database Administrator's Guide.

  3. Set PLSQL_CODE_TYPE to NATIVE in the initialization parameter file. If the database is using a server parameter file, then set this after the database has started. See "Setting PLSQL_CODE_TYPE Initialization Parameter".

    The value of PLSQL_CODE_TYPE does not affect the conversion of the PL/SQL units in these steps. However, it does affect all subsequently compiled units, so explicitly set it to the compilation type that you want.

  4. Start up the database in upgrade mode, using the UPGRADE option. For information on SQL*Plus STARTUP, see the SQL*Plus User's Guide and Reference.

  5. Execute the following code to list the invalid PL/SQL units. You can save the output of the query for future reference with the SQL SPOOL statement:

    REM To save the output of the query to a file:
      SPOOL pre_update_invalid.log
    SELECT o.OWNER, o.OBJECT_NAME, o.OBJECT_TYPE 
      FROM DBA_OBJECTS o, DBA_PLSQL_OBJECT_SETTINGS s 
      WHERE o.OBJECT_NAME = s.NAME AND o.STATUS='INVALID';
    REM To stop spooling the output: SPOOL OFF
    

    If any Oracle supplied units are invalid, try to validate them by recompiling them. For example:

    ALTER PACKAGE SYS.DBMS_OUTPUT COMPILE BODY REUSE SETTINGS;
    

    If the units cannot be validated, save the spooled log for future resolution and continue.

  6. Execute the following query to determine how many objects are compiled NATIVE and INTERPRETED (to save the output, use the SQL SPOOL statement):

    SELECT TYPE, PLSQL_CODE_TYPE, COUNT(*)
      FROM DBA_PLSQL_OBJECT_SETTINGS
      WHERE PLSQL_CODE_TYPE IS NOT NULL
      GROUP BY TYPE, PLSQL_CODE_TYPE
      ORDER BY TYPE, PLSQL_CODE_TYPE;
    

    Any objects with a NULL plsql_code_type are special internal objects and can be ignored.

  7. Run the $ORACLE_HOME/rdbms/admin/dbmsupgnv.sql script as the user SYS to update the plsql_code_type setting to NATIVE in the dictionary tables for all PL/SQL units. This process also invalidates the units. Use TRUE with the script to exclude package specifications; FALSE to include the package specifications.

    This update must be done when the database is in UPGRADE mode. The script is guaranteed to complete successfully or rollback all the changes.

  8. Shut down the database and restart in NORMAL mode.

  9. Before you run the utlrp.sql script, Oracle recommends that no other sessions are connected to avoid possible problems. You can ensure this with the following statement:

    ALTER SYSTEM ENABLE RESTRICTED SESSION;
    
  10. Run the $ORACLE_HOME/rdbms/admin/utlrp.sql script as the user SYS. This script recompiles all the PL/SQL modules using a default degree of parellelism. See the comments in the script for information on setting the degree explicitly.

    If for any reason the script is abnormally terminated, rerun the utlrp.sql script to recompile any remaining invalid PL/SQL modules.

  11. After the compilation completes successfully, verify that there are no new invalid PL/SQL units using the query in step 5. You can spool the output of the query to the post_upgrade_invalid.log file and compare the contents with the pre_upgrade_invalid.log file, if it was created previously.

  12. Re-execute the query in step 6. If recompiling with dbmsupgnv.sql, confirm that all PL/SQL units, except TYPE specifications and package specifications if excluded, are NATIVE. If recompiling with dbmsupgin.sql, confirm that all PL/SQL units are INTERPRETED.

  13. Disable the restricted session mode for the database, then start the services that you previously shut down. To disable restricted session mode, use the following statement:

    ALTER SYSTEM DISABLE RESTRICTED SESSION;
    

Performing Multiple Transformations with Pipelined Table Functions

This section describes how to chain together special kinds of functions known as pipelined table functions. These functions are used in situations such as data warehousing to apply multiple transformations to data.

Topics:

Overview of Pipelined Table Functions

Pipelined table functions are functions that produce a collection of rows (either a nested table or a varray) that can be queried like a physical database table or assigned to a PL/SQL collection variable. You can use a table function in place of the name of a database table in the FROM clause of a query or in place of a column name in the SELECT list of a query.

A table function can take a collection of rows as input. An input collection parameter can be either a collection type (such as a VARRAY or a PL/SQL table) or a REF CURSOR.

Execution of a table function can be parallelized, and returned rows can be streamed directly to the next process without intermediate staging. Rows from a collection returned by a table function can also be pipelined, that is, iteratively returned as they are produced instead of in a batch after all processing of the table function's input is completed.

Streaming, pipelining, and parallel execution of table functions can improve performance:

  • By enabling multithreaded, concurrent execution of table functions

  • By eliminating intermediate staging between processes

  • By improving query response time: With non-pipelined table functions, the entire collection returned by a table function must be constructed and returned to the server before the query can return a single result row. Pipelining enables rows to be returned iteratively, as they are produced. This also reduces the memory that a table function requires, as the object cache does not need to materialize the entire collection.

  • By iteratively providing result rows from the collection returned by a table function as the rows are produced instead of waiting until the entire collection is staged in tables or memory and then returning the entire collection.

Writing a Pipelined Table Function

You declare a pipelined table function by specifying the PIPELINED keyword. Pipelined functions can be defined at the schema level with CREATE FUNCTION or in a package. The PIPELINED keyword indicates that the function returns rows iteratively. The return type of the pipelined table function must be a supported collection type, such as a nested table or a varray. This collection type can be declared at the schema level or inside a package. Inside the function, you return individual elements of the collection type. The elements of the collection type must be supported SQL datatypes, such as NUMBER and VARCHAR2. PL/SQL datatypes, such as PLS_INTEGER and BOOLEAN, are not supported as collection elements in a pipelined function.

Example 12-18 shows how to assign the result of a pipelined table function to a PL/SQL collection variable and use the function in a SELECT statement.

Example 12-18 Assigning the Result of a Table Function

CREATE PACKAGE pkg1 AS
  TYPE numset_t IS TABLE OF NUMBER;
  FUNCTION f1(x NUMBER) RETURN numset_t PIPELINED;
END pkg1;
/

CREATE PACKAGE BODY pkg1 AS
-- FUNCTION f1 returns a collection of elements (1,2,3,... x)
FUNCTION f1(x NUMBER) RETURN numset_t PIPELINED IS
  BEGIN
    FOR i IN 1..x LOOP
      PIPE ROW(i);
    END LOOP;
    RETURN;
  END;
END pkg1;
/

-- pipelined function is used in FROM clause of SELECT statement
SELECT * FROM TABLE(pkg1.f1(5));

Using Pipelined Table Functions for Transformations

A pipelined table function can accept any argument that regular functions accept. A table function that accepts a REF CURSOR as an argument can serve as a transformation function. That is, it can use the REF CURSOR to fetch the input rows, perform some transformation on them, and then pipeline the results out.

In Example 12-19, the f_trans function converts a row of the employees table into two rows.

Example 12-19 Using a Pipelined Table Function For a Transformation

-- Define the ref cursor types and function
CREATE OR REPLACE PACKAGE refcur_pkg IS
  TYPE refcur_t IS REF CURSOR RETURN employees%ROWTYPE;
  TYPE outrec_typ IS RECORD ( 
    var_num    NUMBER(6),
    var_char1  VARCHAR2(30),
    var_char2  VARCHAR2(30));
  TYPE outrecset IS TABLE OF outrec_typ;
 FUNCTION f_trans(p refcur_t) 
      RETURN outrecset PIPELINED;
END refcur_pkg;
/

CREATE OR REPLACE PACKAGE BODY refcur_pkg IS
  FUNCTION f_trans(p refcur_t) 
   RETURN outrecset PIPELINED IS
    out_rec outrec_typ;
    in_rec  p%ROWTYPE;
  BEGIN
  LOOP
    FETCH p INTO in_rec;
    EXIT WHEN p%NOTFOUND;
    -- first row
    out_rec.var_num := in_rec.employee_id;
    out_rec.var_char1 := in_rec.first_name;
    out_rec.var_char2 := in_rec.last_name;
    PIPE ROW(out_rec);
    -- second row
    out_rec.var_char1 := in_rec.email;
    out_rec.var_char2 := in_rec.phone_number;
    PIPE ROW(out_rec);
  END LOOP;
  CLOSE p;
  RETURN;
  END;
END refcur_pkg;
/
-- SELECT query using the f_transc table function
SELECT * FROM TABLE(
   refcur_pkg.f_trans(CURSOR
     (SELECT * FROM employees WHERE department_id = 60)));

In the preceding query, the pipelined table function f_trans fetches rows from the CURSOR subquery SELECT * FROM employees ..., performs the transformation, and pipelines the results back to the user as a table. The function produces two output rows (collection elements) for each input row.

Note that when a CURSOR subquery is passed from SQL to a REF CURSOR function argument as in Example 12-19, the referenced cursor is already open when the function begins executing.

Returning Results from Pipelined Table Functions

In PL/SQL, the PIPE ROW statement causes a pipelined table function to pipe a row and continue processing. The statement enables a PL/SQL table function to return rows as soon as they are produced. For performance, the PL/SQL run-time system provides the rows to the consumer in batches.

In Example 12-19, the PIPE ROW(out_rec) statement pipelines data out of the PL/SQL table function. out_rec is a record, and its type matches the type of an element of the output collection.

The PIPE ROW statement may be used only in the body of pipelined table functions; an error is raised if it is used anywhere else. The PIPE ROW statement can be omitted for a pipelined table function that returns no rows.

A pipelined table function may have a RETURN statement that does not return a value. The RETURN statement transfers the control back to the consumer and ensures that the next fetch gets a NO_DATA_FOUND exception.

Because table functions pass control back and forth to a calling routine as rows are produced, there is a restriction on combining table functions and PRAGMA AUTONOMOUS_TRANSACTION. If a table function is part of an autonomous transaction, it must COMMIT or ROLLBACK before each PIPE ROW statement, to avoid an error in the calling subprogram.

Oracle has three special SQL datatypes that enable you to dynamically encapsulate and access type descriptions, data instances, and sets of data instances of any other SQL type, including object and collection types. You can also use these three special types to create anonymous (that is, unnamed) types, including anonymous collection types. The types are SYS.ANYTYPE, SYS.ANYDATA, and SYS.ANYDATASET. The SYS.ANYDATA type can be useful in some situations as a return value from table functions.

See Also:

Oracle Database PL/SQL Packages and Types Reference for information about the interfaces to the ANYTYPE, ANYDATA, and ANYDATASET types and about the DBMS_TYPES package for use with these types.

Pipelining Data Between PL/SQL Table Functions

With serial execution, results are pipelined from one PL/SQL table function to another using an approach similar to co-routine execution. For example, the following statement pipelines results from function g to function f:

SELECT * FROM TABLE(f(CURSOR(SELECT * FROM TABLE(g()))));

Parallel execution works similarly except that each function executes in a different process (or set of processes).

Optimizing Multiple Calls to Pipelined Table Functions

Multiple calls to a pipelined table function, either within the same query or in separate queries result in multiple executions of the underlying implementation. By default, there is no buffering or reuse of rows. For example:

SELECT * FROM TABLE(f(...)) t1, TABLE(f(...)) t2
  WHERE t1.id = t2.id;
SELECT * FROM TABLE(f());
SELECT * FROM TABLE(f());

If the function always produces the same result value for each combination of values passed in, you can declare the function DETERMINISTIC, and Oracle automatically buffers rows for it. If the function is not really deterministic, results are unpredictable.

Fetching from Results of Pipelined Table Functions

PL/SQL cursors and ref cursors can be defined for queries over table functions. For example:

OPEN c FOR SELECT * FROM TABLE(f(...));

Cursors over table functions have the same fetch semantics as ordinary cursors. REF CURSOR assignments based on table functions do not have any special semantics.

However, the SQL optimizer will not optimize across PL/SQL statements. For example:

DECLARE
  r SYS_REFCURSOR;
BEGIN
  OPEN r FOR SELECT *
    FROM TABLE(f(CURSOR(SELECT * FROM tab)));
  SELECT * BULK COLLECT INTO rec_tab FROM TABLE(g(r));
END;
/

does not execute as well as:

SELECT * FROM TABLE(g(CURSOR(SELECT * FROM
  TABLE(f(CURSOR(SELECT * FROM tab))))));

This is so even ignoring the overhead associated with executing two SQL statements and assuming that the results can be pipelined between the two statements.

Passing Data with Cursor Variables

You can pass a set of rows to a PL/SQL function in a REF CURSOR parameter. For example, this function is declared to accept an argument of the predefined weakly typed REF CURSOR type SYS_REFCURSOR:

FUNCTION f(p1 IN SYS_REFCURSOR) RETURN ... ;

Results of a subquery can be passed to a function directly:

SELECT * FROM TABLE(f(CURSOR(SELECT empid FROM tab)));

In the preceding example, the CURSOR keyword causes the results of a subquery to be passed as a REF CURSOR parameter.

A predefined weak REF CURSOR type SYS_REFCURSOR is also supported. With SYS_REFCURSOR, you do not need to first create a REF CURSOR type in a package before you can use it.

To use a strong REF CURSOR type, you still must create a PL/SQL package and declare a strong REF CURSOR type in it. Also, if you are using a strong REF CURSOR type as an argument to a table function, then the actual type of the REF CURSOR argument must match the column type, or an error is generated. Weak REF CURSOR arguments to table functions can only be partitioned using the PARTITION BY ANY clause. You cannot use range or hash partitioning for weak REF CURSOR arguments.

PL/SQL functions can accept multiple REF CURSOR input variables as shown in Example 12-20.

For more information about cursor variables, see "Declaring REF CURSOR Types and Cursor Variables".

Example 12-20 Using Multiple REF CURSOR Input Variables

-- Define the ref cursor types
CREATE PACKAGE refcur_pkg IS
  TYPE refcur_t1 IS REF CURSOR RETURN employees%ROWTYPE;
  TYPE refcur_t2 IS REF CURSOR RETURN departments%ROWTYPE;  
  TYPE outrec_typ IS RECORD ( 
    var_num    NUMBER(6),
    var_char1  VARCHAR2(30),
    var_char2  VARCHAR2(30));
  TYPE outrecset IS TABLE OF outrec_typ;
  FUNCTION g_trans(p1 refcur_t1, p2 refcur_t2) 
    RETURN outrecset PIPELINED;
END refcur_pkg;
/

CREATE PACKAGE BODY refcur_pkg IS
FUNCTION g_trans(p1 refcur_t1, p2 refcur_t2) 
    RETURN outrecset PIPELINED IS
    out_rec outrec_typ;
    in_rec1 p1%ROWTYPE;
    in_rec2 p2%ROWTYPE;
BEGIN
  LOOP
    FETCH p2 INTO in_rec2;
    EXIT WHEN p2%NOTFOUND;
  END LOOP;
  CLOSE p2;
  LOOP
    FETCH p1 INTO in_rec1;
    EXIT WHEN p1%NOTFOUND;
    -- first row
    out_rec.var_num := in_rec1.employee_id;
    out_rec.var_char1 := in_rec1.first_name;
    out_rec.var_char2 := in_rec1.last_name;
    PIPE ROW(out_rec);
    -- second row
    out_rec.var_num := in_rec2.department_id;
    out_rec.var_char1 := in_rec2.department_name;
    out_rec.var_char2 := TO_CHAR(in_rec2.location_id);
    PIPE ROW(out_rec);
  END LOOP;
  CLOSE p1;
  RETURN;
END;
END refcur_pkg;
/

-- SELECT query using the g_trans table function
SELECT * FROM TABLE(refcur_pkg.g_trans(
  CURSOR(SELECT * FROM employees WHERE department_id = 60),
  CURSOR(SELECT * FROM departments WHERE department_id = 60)));

You can pass table function return values to other table functions by creating a REF CURSOR that iterates over the returned data:

SELECT * FROM TABLE(f(CURSOR(SELECT * FROM TABLE(g(...)))));

You can explicitly open a REF CURSOR for a query and pass it as a parameter to a table function:

DECLARE
  r SYS_REFCURSOR;
  rec ...;
BEGIN
  OPEN r FOR SELECT * FROM TABLE(f(...));
  -- Must return a single row result set.
  SELECT * INTO rec FROM TABLE(g(r));
END;
/

In this case, the table function closes the cursor when it completes, so your program must not explicitly try to close the cursor.

A table function can compute aggregate results using the input ref cursor. Example 12-21 computes a weighted average by iterating over a set of input rows.

Example 12-21 Using a Pipelined Table Function as an Aggregate Function

CREATE TABLE gradereport (student VARCHAR2(30),
                          subject VARCHAR2(30),
                          weight NUMBER, grade NUMBER);
INSERT INTO gradereport VALUES('Mark', 'Physics', 4, 4);
INSERT INTO gradereport VALUES('Mark','Chemistry', 4, 3);
INSERT INTO gradereport VALUES('Mark','Maths', 3, 3);
INSERT INTO gradereport VALUES('Mark','Economics', 3, 4);

CREATE PACKAGE pkg_gpa IS
  TYPE gpa IS TABLE OF NUMBER;
  FUNCTION weighted_average(input_values SYS_REFCURSOR)
    RETURN gpa PIPELINED;
END pkg_gpa;
/
CREATE PACKAGE BODY pkg_gpa IS
FUNCTION weighted_average(input_values SYS_REFCURSOR)
  RETURN gpa PIPELINED IS
  grade NUMBER;
  total NUMBER := 0;
  total_weight NUMBER := 0;
  weight NUMBER := 0;
BEGIN
-- Function accepts ref cursor and loops through all input rows
  LOOP
     FETCH input_values INTO weight, grade;
     EXIT WHEN input_values%NOTFOUND;
-- Accumulate the weighted average
     total_weight := total_weight + weight;
     total := total + grade*weight;
  END LOOP;
  PIPE ROW (total / total_weight);
  RETURN; -- the function returns a single result
END;
END pkg_gpa;
/
-- Query result is a nested table with single row
-- COLUMN_VALUE is keyword that returns contents of nested table
SELECT w.column_value "weighted result" FROM TABLE(
       pkg_gpa.weighted_average(CURSOR(SELECT weight,
       grade FROM gradereport))) w;

Performing DML Operations Inside Pipelined Table Functions

To execute DML statements, declare a pipelined table function with the AUTONOMOUS_TRANSACTION pragma, which causes the function to execute in a new transaction not shared by other processes:

CREATE FUNCTION f(p SYS_REFCURSOR)
  RETURN CollType PIPELINED IS
    PRAGMA AUTONOMOUS_TRANSACTION;
BEGIN
  NULL;
END;
/

During parallel execution, each instance of the table function creates an independent transaction.

Performing DML Operations on Pipelined Table Functions

Pipelined table functions cannot be the target table in UPDATE, INSERT, or DELETE statements. For example, the following statements will raise an error:

UPDATE F(CURSOR(SELECT * FROM tab)) SET col = value;
  INSERT INTO f(...) VALUES ('any', 'thing');

However, you can create a view over a table function and use INSTEAD OF triggers to update it. For example:

CREATE VIEW BookTable AS SELECT x.Name, x.Author
  FROM TABLE(GetBooks('data.txt')) x;

The following INSTEAD OF trigger fires when the user inserts a row into the BookTable view:

CREATE TRIGGER BookTable_insert
INSTEAD OF INSERT ON BookTable
REFERENCING NEW AS n
FOR EACH ROW
BEGIN
  ...
END
/
INSERT INTO BookTable VALUES (...);

INSTEAD OF triggers can be defined for all DML operations on a view built on a table function.

Handling Exceptions in Pipelined Table Functions

Exception handling in pipelined table functions works just as it does with regular functions.

Some languages, such as C and Java, provide a mechanism for user-supplied exception handling. If an exception raised within a table function is handled, the table function executes the exception handler and continues processing. Exiting the exception handler takes control to the enclosing scope. If the exception is cleared, execution proceeds normally.

An unhandled exception in a table function causes the parent transaction to roll back.