- 오라클에서 제공하는 함수가 있기 때문에 이를 사용하여 불필요한 수고를 덜 수 있다.
- 프로그래밍 언어의 명령, 함수, 구문, 사용법 등을 알고 이런 강력한 기능들을 사용하는 것도 능력이다.
- 결과를 확인하고자 할 경우 DUAL table을 사용한다.
SQL functions are built into Oracle Database and are available for use in various appropriate SQL statements. Do not confuse SQL functions with user-defined functions written in PL/SQL.
If you call a SQL function with an argument of a datatype other than the datatype expected by the SQL function, then Oracle attempts to convert the argument to the expected datatype before performing the SQL function. If you call a SQL function with a null argument, then the SQL function automatically returns null. The only SQL functions that do not necessarily follow this behavior are CONCAT
, NVL
, REPLACE
, and REGEXP_REPLACE
.
In the syntax diagrams for SQL functions, arguments are indicated by their datatypes. When the parameter function
appears in SQL syntax, replace it with one of the functions described in this section. Functions are grouped by the datatypes of their arguments and their return values.
The sections that follow list the built-in SQL functions in each of the groups illustrated in the preceding diagrams except user-defined functions. All of the built-in SQL functions are then described in alphabetical order.
Single-Row Functions
Single-row functions return a single result row for every row of a queried table or view. These functions can appear in select lists, WHERE
clauses, START
WITH
and CONNECT
BY
clauses, and HAVING
clauses.
Numeric Functions
Numeric functions accept numeric input and return numeric values. Most numeric functions that return NUMBER
values that are accurate to 38 decimal digits. The transcendental functions COS
, COSH
, EXP
, LN
, LOG
, SIN
, SINH
, SQRT
, TAN
, and TANH
are accurate to 36 decimal digits. The transcendental functions ACOS
, ASIN
, ATAN
, and ATAN2
are accurate to 30 decimal digits. The numeric functions are:
ABS
ACOS
ASIN
ATAN
ATAN2
BITAND
CEIL
COS
COSH
EXP
FLOOR
LN
LOG
MOD
NANVL
POWER
REMAINDER
ROUND (number)
SIGN
SIN
SINH
SQRT
TAN
TANH
TRUNC (number)
WIDTH_BUCKET
Character Functions Returning Character Values
Character functions that return character values return values of the following datatypes unless otherwise documented:
-
If the input argument is CHAR
or VARCHAR2
, then the value returned is VARCHAR2
.
-
If the input argument is NCHAR
or NVARCHAR2
, then the value returned is NVARCHAR2
.
The length of the value returned by the function is limited by the maximum length of the datatype returned.
-
For functions that return CHAR
or VARCHAR2
, if the length of the return value exceeds the limit, then Oracle Database truncates it and returns the result without an error message.
-
For functions that return CLOB
values, if the length of the return values exceeds the limit, then Oracle raises an error and returns no data.
The character functions that return character values are:
CHR
CONCAT
INITCAP
LOWER
LPAD
LTRIM
NLS_INITCAP
NLS_LOWER
NLSSORT
NLS_UPPER
REGEXP_REPLACE
REGEXP_SUBSTR
REPLACE
RPAD
RTRIM
SOUNDEX
SUBSTR
TRANSLATE
TREAT
TRIM
UPPER
Character Functions Returning Number Values
Character functions that return number values can take as their argument any character datatype.
The character functions that return number values are:
ASCII
INSTR
LENGTH
REGEXP_INSTR
Datetime Functions
Datetime functions operate on date (DATE
), timestamp (TIMESTAMP
, TIMESTAMP
WITH
TIME
ZONE
, and TIMESTAMP
WITH
LOCAL
TIME
ZONE
), and interval (INTERVAL
DAY
TO
SECOND
, INTERVAL
YEAR
TO
MONTH
) values.
Some of the datetime functions were designed for the Oracle DATE
datatype (ADD_MONTHS
, CURRENT_DATE
, LAST_DAY
, NEW_TIME
, and NEXT_DAY
). If you provide a timestamp value as their argument, Oracle Database internally converts the input type to a DATE
value and returns a DATE
value. The exceptions are the MONTHS_BETWEEN
function, which returns a number, and the ROUND
and TRUNC
functions, which do not accept timestamp or interval values at all.
The remaining datetime functions were designed to accept any of the three types of data (date, timestamp, and interval) and to return a value of one of these types.
The datetime functions are:
ADD_MONTHS
CURRENT_DATE
CURRENT_TIMESTAMP
DBTIMEZONE
EXTRACT (datetime)
FROM_TZ
LAST_DAY
LOCALTIMESTAMP
MONTHS_BETWEEN
NEW_TIME
NEXT_DAY
NUMTODSINTERVAL
NUMTOYMINTERVAL
ROUND (date)
SESSIONTIMEZONE
SYS_EXTRACT_UTC
SYSDATE
SYSTIMESTAMP
TO_CHAR (datetime)
TO_TIMESTAMP
TO_TIMESTAMP_TZ
TO_DSINTERVAL
TO_YMINTERVAL
TRUNC (date)
TZ_OFFSET
General Comparison Functions
The general comparison functions determine the greatest and or least value from a set of values. The general comparison functions are:
GREATEST
LEAST
Hierarchical Function
The hierarchical function applies hierarchical path information to a result set.
SYS_CONNECT_BY_PATH
Encoding and Decoding Functions
The encoding and decoding functions let you inspect and decode data in the database.
DECODE
DUMP
ORA_HASH
VSIZE
NULL-Related Functions
The NULL
-related functions facilitate null handling. The NULL
-related functions are:
COALESCE
LNNVL
NULLIF
NVL
NVL2
Aggregate Functions
Aggregate functions return a single result row based on groups of rows, rather than on single rows. Aggregate functions can appear in select lists and in ORDER
BY
and HAVING
clauses. They are commonly used with the GROUP
BY
clause in a SELECT
statement, where Oracle Database divides the rows of a queried table or view into groups. In a query containing a GROUP
BY
clause, the elements of the select list can be aggregate functions, GROUP
BY
expressions, constants, or expressions involving one of these. Oracle applies the aggregate functions to each group of rows and returns a single result row for each group.
If you omit the GROUP
BY
clause, then Oracle applies aggregate functions in the select list to all the rows in the queried table or view. You use aggregate functions in the HAVING
clause to eliminate groups from the output based on the results of the aggregate functions, rather than on the values of the individual rows of the queried table or view.
Many (but not all) aggregate functions that take a single argument accept these clauses:
-
DISTINCT
causes an aggregate function to consider only distinct values of the argument expression.
-
ALL
causes an aggregate function to consider all values, including all duplicates.
For example, the DISTINCT
average of 1, 1, 1, and 3 is 2. The ALL
average is 1.5. If you specify neither, then the default is ALL
.
All aggregate functions except COUNT
(*) and GROUPING
ignore nulls. You can use the NVL
function in the argument to an aggregate function to substitute a value for a null. COUNT
never returns null, but returns either a number or zero. For all the remaining aggregate functions, if the data set contains no rows, or contains only rows with nulls as arguments to the aggregate function, then the function returns null.
The aggregate functions MIN
, MAX
, SUM
, AVG
, COUNT
, VARIANCE
, and STDDEV
, when followed by the KEEP
keyword, can be used in conjunction with the FIRST
or LAST
function to operate on a set of values from a set of rows that rank as the FIRST
or LAST
with respect to a given sorting specification. Please refer to FIRST for more information.
You can nest aggregate functions. For example, the following example calculates the average of the maximum salaries of all the departments in the sample schema hr
:
SELECT AVG(MAX(salary)) FROM employees GROUP BY department_id;
AVG(MAX(SALARY))
----------------
10925
This calculation evaluates the inner aggregate (MAX
(salary
)) for each group defined by the GROUP
BY
clause (department_id
), and aggregates the results again.
The aggregate functions are:
AVG
COLLECT
CORR
CORR_*
COUNT
COVAR_POP
COVAR_SAMP
CUME_DIST
DENSE_RANK
FIRST
GROUP_ID
GROUPING
GROUPING_ID
LAST
MAX
MEDIAN
MIN
PERCENTILE_CONT
PERCENTILE_DISC
PERCENT_RANK
RANK
REGR_ (Linear Regression) Functions
STATS_BINOMIAL_TEST
STATS_CROSSTAB
STATS_F_TEST
STATS_KS_TEST
STATS_MODE
STATS_MW_TEST
STATS_ONE_WAY_ANOVA
STATS_T_TEST_*
STATS_WSR_TEST
STDDEV
STDDEV_POP
STDDEV_SAMP
SUM
VAR_POP
VAR_SAMP
VARIANCE
Analytic Functions
Analytic functions compute an aggregate value based on a group of rows. They differ from aggregate functions in that they return multiple rows for each group. The group of rows is called a window and is defined by the analytic_clause
. For each row, a sliding window of rows is defined. The window determines the range of rows used to perform the calculations for the current row. Window sizes can be based on either a physical number of rows or a logical interval such as time.
Analytic functions are the last set of operations performed in a query except for the final ORDER
BY
clause. All joins and all WHERE
, GROUP
BY
, and HAVING
clauses are completed before the analytic functions are processed. Therefore, analytic functions can appear only in the select list or ORDER
BY
clause.
Analytic functions are commonly used to compute cumulative, moving, centered, and reporting aggregates.
analytic_function::=
Description of the illustration analytic_function.gif
analytic_clause::=
Description of the illustration analytic_clause.gif
query_partition_clause::=
Description of the illustration query_partition_clause.gif
order_by_clause::=
Description of the illustration order_by_clause.gif
windowing_clause ::=
Description of the illustration windowing_clause.gif
The semantics of this syntax are discussed in the sections that follow.
analytic_function
Specify the name of an analytic function (see the listing of analytic functions following this discussion of semantics).
arguments
Analytic functions take 0 to 3 arguments. The arguments can be any numeric datatype or any nonnumeric datatype that can be implicitly converted to a numeric datatype. Oracle determines the argument with the highest numeric precedence and implicitly converts the remaining arguments to that datatype. The return type is also that datatype, unless otherwise noted for an individual function.
analytic_clause
Use OVER
analytic_clause
to indicate that the function operates on a query result set. That is, it is computed after the FROM
, WHERE
, GROUP
BY
, and HAVING
clauses. You can specify analytic functions with this clause in the select list or ORDER
BY
clause. To filter the results of a query based on an analytic function, nest these functions within the parent query, and then filter the results of the nested subquery.
Notes on the analytic_clause: The following notes apply to the analytic_clause
:
-
You cannot specify any analytic function in any part of the analytic_clause
. That is, you cannot nest analytic functions. However, you can specify an analytic function in a subquery and compute another analytic function over it.
-
You can specify OVER
analytic_clause
with user-defined analytic functions as well as built-in analytic functions. See CREATE FUNCTION.
query_partition_clause
Use the PARTITION
BY
clause to partition the query result set into groups based on one or more value_expr
. If you omit this clause, then the function treats all rows of the query result set as a single group.
To use the query_partition_clause
in an analytic function, use the upper branch of the syntax (without parentheses). To use this clause in a model query (in the model_column_clauses
) or a partitioned outer join (in the outer_join_clause
), use the lower branch of the syntax (with parentheses).
You can specify multiple analytic functions in the same query, each with the same or different PARTITION
BY
keys.
If the objects being queried have the parallel attribute, and if you specify an analytic function with the query_partition_clause
, then the function computations are parallelized as well.
Valid values of value_expr
are constants, columns, nonanalytic functions, function expressions, or expressions involving any of these.
order_by_clause
Use the order_by_clause
to specify how data is ordered within a partition. For all analytic functions except PERCENTILE_CONT
and PERCENTILE_DISC
(which take only a single key), you can order the values in a partition on multiple keys, each defined by a value_expr
and each qualified by an ordering sequence.
Within each function, you can specify multiple ordering expressions. Doing so is especially useful when using functions that rank values, because the second expression can resolve ties between identical values for the first expression.
Whenever the order_by_clause
results in identical values for multiple rows, the function returns the same result for each of those rows. Please refer to the analytic example for SUM for an illustration of this behavior.
Restrictions on the ORDER BY Clause The following restrictions apply to the ORDER
BY
clause:
-
When used in an analytic function, the order_by_clause
must take an expression (expr
). The SIBLINGS
keyword is not valid (it is relevant only in hierarchical queries). Position (position
) and column aliases (c_alias
) are also invalid. Otherwise this order_by_clause
is the same as that used to order the overall query or subquery.
-
An analytic function that uses the RANGE
keyword can use multiple sort keys in its ORDER
BY
clause if it specifies either of these two windows:
-
RANGE
BETWEEN
UNBOUNDED
PRECEDING
AND
CURRENT
ROW
. The short form of this is RANGE
UNBOUNDED
PRECEDING
.
-
RANGE
BETWEEN
CURRENT
ROW
AND
UNBOUNDED
FOLLOWING
. The short form of this is RANGE
UNBOUNDED
FOLLOWING
.
Window boundaries other than these two can have only one sort key in the ORDER
BY
clause of the analytic function. This restriction does not apply to window boundaries specified by the ROW
keyword.
ASC | DESC Specify the ordering sequence (ascending or descending). ASC
is the default.
NULLS FIRST | NULLS LAST Specify whether returned rows containing nulls should appear first or last in the ordering sequence.
NULLS
LAST
is the default for ascending order, and NULLS
FIRST
is the default for descending order.
Analytic functions always operate on rows in the order specified in the order_by_clause
of the function. However, the order_by_clause
of the function does not guarantee the order of the result. Use the order_by_clause
of the query to guarantee the final result ordering.
windowing_clause
Some analytic functions allow the windowing_clause
. In the listing of analytic functions at the end of this section, the functions that allow the windowing_clause
are followed by an asterisk (*).
ROWS | RANGE These keywords define for each row a window (a physical or logical set of rows) used for calculating the function result. The function is then applied to all the rows in the window. The window moves through the query result set or partition from top to bottom.
You cannot specify this clause unless you have specified the order_by_clause
. Some window boundaries defined by the RANGE
clause let you specify only one expression in the order_by_clause
. Please refer to "Restrictions on the ORDER BY Clause".
The value returned by an analytic function with a logical offset is always deterministic. However, the value returned by an analytic function with a physical offset may produce nondeterministic results unless the ordering expression results in a unique ordering. You may have to specify multiple columns in the order_by_clause
to achieve this unique ordering.
BETWEEN ... AND Use the BETWEEN
... AND
clause to specify a start point and end point for the window. The first expression (before AND
) defines the start point and the second expression (after AND
) defines the end point.
If you omit BETWEEN
and specify only one end point, then Oracle considers it the start point, and the end point defaults to the current row.
UNBOUNDED PRECEDING Specify UNBOUNDED
PRECEDING
to indicate that the window starts at the first row of the partition. This is the start point specification and cannot be used as an end point specification.
UNBOUNDED FOLLOWING Specify UNBOUNDED
FOLLOWING
to indicate that the window ends at the last row of the partition. This is the end point specification and cannot be used as a start point specification.
CURRENT ROW As a start point, CURRENT
ROW
specifies that the window begins at the current row or value (depending on whether you have specified ROW
or RANGE
, respectively). In this case the end point cannot be value_expr
PRECEDING
.
As an end point, CURRENT
ROW
specifies that the window ends at the current row or value (depending on whether you have specified ROW
or RANGE
, respectively). In this case the start point cannot be value_expr
FOLLOWING
.
value_expr PRECEDING or value_expr FOLLOWING For RANGE
or ROW
:
-
If value_expr
FOLLOWING
is the start point, then the end point must be value_expr
FOLLOWING
.
-
If value_expr
PRECEDING
is the end point, then the start point must be value_expr
PRECEDING
.
If you are defining a logical window defined by an interval of time in numeric format, then you may need to use conversion functions.
If you specified ROWS
:
-
value_expr
is a physical offset. It must be a constant or expression and must evaluate to a positive numeric value.
-
If value_expr
is part of the start point, then it must evaluate to a row before the end point.
If you specified RANGE
:
-
value_expr
is a logical offset. It must be a constant or expression that evaluates to a positive numeric value or an interval literal. Please refer to "Literals" for information on interval literals.
-
You can specify only one expression in the order_by_clause
-
If value_expr
evaluates to a numeric value, then the ORDER
BY
expr
must be a numeric or DATE
datatype.
-
If value_expr
evaluates to an interval value, then the ORDER
BY
expr
must be a DATE
datatype.
If you omit the windowing_clause
entirely, then the default is RANGE
BETWEEN
UNBOUNDED
PRECEDING
AND
CURRENT
ROW
.
Analytic functions are commonly used in data warehousing environments. In the list of analytic functions that follows, functions followed by an asterisk (*) allow the full syntax, including the windowing_clause
.
AVG *
CORR *
COVAR_POP *
COVAR_SAMP *
COUNT *
CUME_DIST
DENSE_RANK
FIRST
FIRST_VALUE *
LAG
LAST
LAST_VALUE *
LEAD
MAX *
MIN *
NTILE
PERCENT_RANK
PERCENTILE_CONT
PERCENTILE_DISC
RANK
RATIO_TO_REPORT
REGR_ (Linear Regression) Functions *
ROW_NUMBER
STDDEV *
STDDEV_POP *
STDDEV_SAMP *
SUM *
VAR_POP *
VAR_SAMP *
VARIANCE *