A window function, also known as an analytic function, computes values over a group of rows and returns a single result for each row. This is different from an aggregate function, which returns a single result for a group of rows.
A window function includes an OVER
clause, which defines a window of rows
around the row being evaluated. For each row, the window function result
is computed using the selected window of rows as input, possibly
doing aggregation.
With window functions you can compute moving averages, rank items, calculate cumulative sums, and perform other analyses.
Window function syntax
function_name ( [ argument_list ] ) OVER over_clause over_clause: { named_window | ( [ window_specification ] ) } window_specification: [ named_window ] [ PARTITION BY partition_expression [, ...] ] [ ORDER BY expression [ { ASC | DESC } ] [, ...] ] [ window_frame_clause ] window_frame_clause: { rows_range } { frame_start | frame_between } rows_range: { ROWS | RANGE }
Description
A window function computes results over a group of rows. You can use the following syntax to build a window function:
function_name
: The function that performs a window operation. For example, the numbering functionRANK()
could be used here.argument_list
: Arguments that are specific to the function. Some functions have them, some do not.OVER
: Keyword required in the window function syntax preceding theOVER
clause.over_clause
: References a window that defines a group of rows in a table upon which to use a window function.window_specification
: Defines the specifications for the window.window_frame_clause
: Defines the window frame for the window.rows_range
: Defines the physical rows or a logical range for a window frame.
Notes
A window function can appear as a scalar expression operand in the following places in the query:
- The
SELECT
list. If the window function appears in theSELECT
list, its argument list andOVER
clause can't refer to aliases introduced in the sameSELECT
list. - The
ORDER BY
clause. If the window function appears in theORDER BY
clause of the query, its argument list can refer toSELECT
list aliases. - The
QUALIFY
clause.
A window function can't refer to another window function in its
argument list or its OVER
clause, even indirectly through an alias.
A window function is evaluated after aggregation. For example, the
GROUP BY
clause and non-window aggregate functions are evaluated first.
Because aggregate functions are evaluated before window functions,
aggregate functions can be used as input operands to window functions.
Returns
A single result for each row in the input.
Defining the OVER
clause
function_name ( [ argument_list ] ) OVER over_clause
over_clause:
{ named_window | ( [ window_specification ] ) }
Description
The OVER
clause references a window that defines a group of rows in a table
upon which to use a window function. You can provide a
named_window
that is
defined in your query, or you can
define the specifications for a new window.
Notes
If neither a named window nor window specification is provided, all input rows are included in the window for every row.
Examples using the OVER
clause
These queries use window specifications:
- Compute a grand total
- Compute a subtotal
- Compute a cumulative sum
- Compute a moving average
- Compute the number of items within a range
- Get the most popular item in each category
- Get the last value in a range
- Compute rank
These queries use a named window:
Defining the window specification
window_specification:
[ named_window ]
[ PARTITION BY partition_expression [, ...] ]
[ ORDER BY expression [ { ASC | DESC } ] [, ...] ]
[ window_frame_clause ]
Description
Defines the specifications for the window.
named_window
: The name of an existing window that was defined with aWINDOW
clause.
PARTITION BY
: Breaks up the input rows into separate partitions, over which the window function is independently evaluated.- Multiple partition expressions are allowed in the
PARTITION BY
clause. - An expression can't contain floating point types, non-groupable types, constants, or window functions.
- If this optional clause is not used, all rows in the input table comprise a single partition.
- Multiple partition expressions are allowed in the
ORDER BY
: Defines how rows are ordered within a partition. This clause is optional in most situations, but is required in some cases for navigation functions.window_frame_clause
: For aggregate analytic functions, defines the window frame within the current partition. The window frame determines what to include in the window. If this clause is used,ORDER BY
is required except for fully unbounded windows.
Notes
If neither the ORDER BY
clause nor window frame clause are present,
the window frame includes all rows in that partition.
For aggregate analytic functions, if the ORDER BY
clause is present but
the window frame clause is not, the following window frame clause is
used by default:
RANGE BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW
For example, the following queries are equivalent:
SELECT book, LAST_VALUE(item)
OVER (ORDER BY year)
FROM Library
SELECT book, LAST_VALUE(item)
OVER (
ORDER BY year
RANGE BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW)
FROM Library
Rules for using a named window in the window specification
If you use a named window in your window specifications, these rules apply:
- The specifications in the named window can be extended with new specifications that you define in the window specification clause.
- You can't have redundant definitions. If you have an
ORDER BY
clause in the named window and the window specification clause, an error is thrown. The order of clauses matters.
PARTITION BY
must come first, followed byORDER BY
andwindow_frame_clause
. If you add a named window, its window specifications are processed first.--this works: SELECT item, purchases, LAST_VALUE(item) OVER (item_window ROWS BETWEEN 2 PRECEDING AND 2 FOLLOWING) AS most_popular FROM Produce WINDOW item_window AS (ORDER BY purchases) --this does not work: SELECT item, purchases, LAST_VALUE(item) OVER (item_window ORDER BY purchases) AS most_popular FROM Produce WINDOW item_window AS (ROWS BETWEEN 2 PRECEDING AND 2 FOLLOWING)
A named window and
PARTITION BY
can't appear together in the window specification. If you needPARTITION BY
, add it to the named window.You can't refer to a named window in an
ORDER BY
clause, an outer query, or any subquery.
Examples using the window specification
These queries define partitions in a window function:
- Compute a subtotal
- Compute a cumulative sum
- Get the most popular item in each category
- Get the last value in a range
- Compute rank
- Use a named window in a window frame clause
These queries include a named window in a window specification:
These queries define how rows are ordered in a partition:
- Compute a subtotal
- Compute a cumulative sum
- Compute a moving average
- Compute the number of items within a range
- Get the most popular item in each category
- Get the last value in a range
- Compute rank
- Use a named window in a window frame clause
Defining the window frame clause
window_frame_clause:
{ rows_range } { frame_start | frame_between }
rows_range:
{ ROWS | RANGE }
frame_between:
{
BETWEEN unbounded_preceding AND frame_end_a
| BETWEEN numeric_preceding AND frame_end_a
| BETWEEN current_row AND frame_end_b
| BETWEEN numeric_following AND frame_end_c
}
frame_start:
{ unbounded_preceding | numeric_preceding | [ current_row ] }
frame_end_a:
{ numeric_preceding | current_row | numeric_following | unbounded_following }
frame_end_b:
{ current_row | numeric_following | unbounded_following }
frame_end_c:
{ numeric_following | unbounded_following }
unbounded_preceding:
UNBOUNDED PRECEDING
numeric_preceding:
numeric_expression PRECEDING
unbounded_following:
UNBOUNDED FOLLOWING
numeric_following:
numeric_expression FOLLOWING
current_row:
CURRENT ROW
The window frame clause defines the window frame around the current row within a partition, over which the window function is evaluated. Only aggregate analytic functions can use a window frame clause.
rows_range
: A clause that defines a window frame with physical rows or a logical range.ROWS
: Computes the window frame based on physical offsets from the current row. For example, you could include two rows before and after the current row.RANGE
: Computes the window frame based on a logical range of rows around the current row, based on the current row’sORDER BY
key value. The provided range value is added or subtracted to the current row's key value to define a starting or ending range boundary for the window frame. In a range-based window frame, there must be exactly one expression in theORDER BY
clause, and the expression must have a numeric type.
frame_between
: Creates a window frame with a lower and upper boundary. The first boundary represents the lower boundary. The second boundary represents the upper boundary. Only certain boundary combinations can be used, as show in the preceding syntax.- Define the beginning of the window frame with
unbounded_preceding
,numeric_preceding
,numeric_following
, orcurrent_row
.unbounded_preceding
: The window frame starts at the beginning of the partition.numeric_preceding
ornumeric_following
: The start of the window frame is relative to the current row.current_row
: The window frame starts at the current row.
- Define the end of the window frame with
numeric_preceding
,numeric_following
,current_row
, orunbounded_following
.numeric_preceding
ornumeric_following
: The end of the window frame is relative to the current row.current_row
: The window frame ends at the current row.unbounded_following
: The window frame ends at the end of the partition.
- Define the beginning of the window frame with
frame_start
: Creates a window frame with a lower boundary. The window frame ends at the current row.unbounded_preceding
: The window frame starts at the beginning of the partition.numeric_preceding
: The start of the window frame is relative to the current row.current_row
: The window frame starts at the current row.
numeric_expression
: An expression that represents a numeric type. The numeric expression must be a constant, non-negative integer or parameter.
Notes
If a boundary extends beyond the beginning or end of a partition, the window frame will only include rows from within that partition.
You can't use a window frame clause with some
navigation functions and
numbering functions,
such as RANK()
.
Examples using the window frame clause
These queries compute values with ROWS
:
- Compute a cumulative sum
- Compute a moving average
- Get the most popular item in each category
- Get the last value in a range
- Use a named window in a window frame clause
These queries compute values with RANGE
:
These queries compute values with a partially or fully unbound window:
- Compute a grand total
- Compute a subtotal
- Compute a cumulative sum
- Get the most popular item in each category
- Compute rank
These queries compute values with numeric boundaries:
- Compute a cumulative sum
- Compute a moving average
- Compute the number of items within a range
- Get the last value in a range
- Use a named window in a window frame clause
These queries compute values with the current row as a boundary:
Referencing a named window
SELECT query_expr,
function_name ( [ argument_list ] ) OVER over_clause
FROM from_item
WINDOW named_window_expression [, ...]
over_clause:
{ named_window | ( [ window_specification ] ) }
window_specification:
[ named_window ]
[ PARTITION BY partition_expression [, ...] ]
[ ORDER BY expression [ { ASC | DESC } ] [, ...] ]
[ window_frame_clause ]
named_window_expression:
named_window AS { named_window | ( [ window_specification ] ) }
A named window represents a group of rows in a table upon which to use an
window function. A named window is defined in the
WINDOW
clause, and referenced in
a window function's OVER
clause.
In an OVER
clause, a named window can appear either by itself or embedded
within a window specification.
Examples
Filtering results with the QUALIFY clause
The QUALIFY
clause can be used to filter the results of a window function.
For more information and examples, see the
QUALIFY
clause.
Window function examples
In these examples, the highlighted item is the current row. The bolded items are the rows that are included in the analysis.
Common tables used in examples
The following tables are used in the subsequent aggregate analytic
query examples: Produce
, Employees
,
and Farm
.
Produce table
Some examples reference a table called Produce
:
WITH Produce AS
(SELECT 'kale' as item, 23 as purchases, 'vegetable' as category
UNION ALL SELECT 'banana', 2, 'fruit'
UNION ALL SELECT 'cabbage', 9, 'vegetable'
UNION ALL SELECT 'apple', 8, 'fruit'
UNION ALL SELECT 'leek', 2, 'vegetable'
UNION ALL SELECT 'lettuce', 10, 'vegetable')
SELECT * FROM Produce
/*-------------------------------------*
| item | category | purchases |
+-------------------------------------+
| kale | vegetable | 23 |
| banana | fruit | 2 |
| cabbage | vegetable | 9 |
| apple | fruit | 8 |
| leek | vegetable | 2 |
| lettuce | vegetable | 10 |
*-------------------------------------*/
Employees table
Some examples reference a table called Employees
:
WITH Employees AS
(SELECT 'Isabella' as name, 2 as department, DATE(1997, 09, 28) as start_date
UNION ALL SELECT 'Anthony', 1, DATE(1995, 11, 29)
UNION ALL SELECT 'Daniel', 2, DATE(2004, 06, 24)
UNION ALL SELECT 'Andrew', 1, DATE(1999, 01, 23)
UNION ALL SELECT 'Jacob', 1, DATE(1990, 07, 11)
UNION ALL SELECT 'Jose', 2, DATE(2013, 03, 17))
SELECT * FROM Employees
/*-------------------------------------*
| name | department | start_date |
+-------------------------------------+
| Isabella | 2 | 1997-09-28 |
| Anthony | 1 | 1995-11-29 |
| Daniel | 2 | 2004-06-24 |
| Andrew | 1 | 1999-01-23 |
| Jacob | 1 | 1990-07-11 |
| Jose | 2 | 2013-03-17 |
*-------------------------------------*/
Farm table
Some examples reference a table called Farm
:
WITH Farm AS
(SELECT 'cat' as animal, 23 as population, 'mammal' as category
UNION ALL SELECT 'duck', 3, 'bird'
UNION ALL SELECT 'dog', 2, 'mammal'
UNION ALL SELECT 'goose', 1, 'bird'
UNION ALL SELECT 'ox', 2, 'mammal'
UNION ALL SELECT 'goat', 2, 'mammal')
SELECT * FROM Farm
/*-------------------------------------*
| animal | category | population |
+-------------------------------------+
| cat | mammal | 23 |
| duck | bird | 3 |
| dog | mammal | 2 |
| goose | bird | 1 |
| ox | mammal | 2 |
| goat | mammal | 2 |
*-------------------------------------*/
Compute a grand total
This computes a grand total for all items in the
Produce
table.
- (banana, apple, leek, cabbage, lettuce, kale) = 54 total purchases
- (banana, apple, leek, cabbage, lettuce, kale) = 54 total purchases
- (banana, apple, leek, cabbage, lettuce, kale) = 54 total purchases
- (banana, apple, leek, cabbage, lettuce, kale) = 54 total purchases
- (banana, apple, leek, cabbage, lettuce, kale) = 54 total purchases
- (banana, apple, leek, cabbage, lettuce, kale) = 54 total purchases
SELECT item, purchases, category, SUM(purchases)
OVER () AS total_purchases
FROM Produce
/*-------------------------------------------------------*
| item | purchases | category | total_purchases |
+-------------------------------------------------------+
| banana | 2 | fruit | 54 |
| leek | 2 | vegetable | 54 |
| apple | 8 | fruit | 54 |
| cabbage | 9 | vegetable | 54 |
| lettuce | 10 | vegetable | 54 |
| kale | 23 | vegetable | 54 |
*-------------------------------------------------------*/
Compute a subtotal
This computes a subtotal for each category in the
Produce
table.
- fruit
- (banana, apple) = 10 total purchases
- (banana, apple) = 10 total purchases
- vegetable
- (leek, cabbage, lettuce, kale) = 44 total purchases
- (leek, cabbage, lettuce, kale) = 44 total purchases
- (leek, cabbage, lettuce, kale) = 44 total purchases
- (leek, cabbage, lettuce, kale) = 44 total purchases
SELECT item, purchases, category, SUM(purchases)
OVER (
PARTITION BY category
ORDER BY purchases
ROWS BETWEEN UNBOUNDED PRECEDING AND UNBOUNDED FOLLOWING
) AS total_purchases
FROM Produce
/*-------------------------------------------------------*
| item | purchases | category | total_purchases |
+-------------------------------------------------------+
| banana | 2 | fruit | 10 |
| apple | 8 | fruit | 10 |
| leek | 2 | vegetable | 44 |
| cabbage | 9 | vegetable | 44 |
| lettuce | 10 | vegetable | 44 |
| kale | 23 | vegetable | 44 |
*-------------------------------------------------------*/
Compute a cumulative sum
This computes a cumulative sum for each category in the
Produce
table. The sum is computed with respect to the
order defined using the ORDER BY
clause.
- fruit
- (banana, apple) = 2 total purchases
- (banana, apple) = 10 total purchases
- vegetable
- (leek, cabbage, lettuce, kale) = 2 total purchases
- (leek, cabbage, lettuce, kale) = 11 total purchases
- (leek, cabbage, lettuce, kale) = 21 total purchases
- (leek, cabbage, lettuce, kale) = 44 total purchases
SELECT item, purchases, category, SUM(purchases)
OVER (
PARTITION BY category
ORDER BY purchases
ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW
) AS total_purchases
FROM Produce
/*-------------------------------------------------------*
| item | purchases | category | total_purchases |
+-------------------------------------------------------+
| banana | 2 | fruit | 2 |
| apple | 8 | fruit | 10 |
| leek | 2 | vegetable | 2 |
| cabbage | 9 | vegetable | 11 |
| lettuce | 10 | vegetable | 21 |
| kale | 23 | vegetable | 44 |
*-------------------------------------------------------*/
This does the same thing as the preceding example. You don't have to add
CURRENT ROW
as a boundary unless you would like to for readability.
SELECT item, purchases, category, SUM(purchases)
OVER (
PARTITION BY category
ORDER BY purchases
ROWS UNBOUNDED PRECEDING
) AS total_purchases
FROM Produce
In this example, all items in the Produce
table are included
in the partition. Only preceding rows are analyzed. The analysis starts two
rows prior to the current row in the partition.
- (banana, leek, apple, cabbage, lettuce, kale) = NULL
- (banana, leek, apple, cabbage, lettuce, kale) = NULL
- (banana, leek, apple, cabbage, lettuce, kale) = 2
- (banana, leek, apple, cabbage, lettuce, kale) = 4
- (banana, leek, apple, cabbage, lettuce, kale) = 12
- (banana, leek, apple, cabbage, lettuce, kale) = 21
SELECT item, purchases, category, SUM(purchases)
OVER (
ORDER BY purchases
ROWS BETWEEN UNBOUNDED PRECEDING AND 2 PRECEDING
) AS total_purchases
FROM Produce;
/*-------------------------------------------------------*
| item | purchases | category | total_purchases |
+-------------------------------------------------------+
| banana | 2 | fruit | NULL |
| leek | 2 | vegetable | NULL |
| apple | 8 | fruit | 2 |
| cabbage | 9 | vegetable | 4 |
| lettuce | 10 | vegetable | 12 |
| kale | 23 | vegetable | 21 |
*-------------------------------------------------------*/
Compute a moving average
This computes a moving average in the Produce
table.
The lower boundary is 1 row before the
current row. The upper boundary is 1 row after the current row.
- (banana, leek, apple, cabbage, lettuce, kale) = 2 average purchases
- (banana, leek, apple, cabbage, lettuce, kale) = 4 average purchases
- (banana, leek, apple, cabbage, lettuce, kale) = 6.3333 average purchases
- (banana, leek, apple, cabbage, lettuce, kale) = 9 average purchases
- (banana, leek, apple, cabbage, lettuce, kale) = 14 average purchases
- (banana, leek, apple, cabbage, lettuce, kale) = 16.5 average purchases
SELECT item, purchases, category, AVG(purchases)
OVER (
ORDER BY purchases
ROWS BETWEEN 1 PRECEDING AND 1 FOLLOWING
) AS avg_purchases
FROM Produce
/*-------------------------------------------------------*
| item | purchases | category | avg_purchases |
+-------------------------------------------------------+
| banana | 2 | fruit | 2 |
| leek | 2 | vegetable | 4 |
| apple | 8 | fruit | 6.33333 |
| cabbage | 9 | vegetable | 9 |
| lettuce | 10 | vegetable | 14 |
| kale | 23 | vegetable | 16.5 |
*-------------------------------------------------------*/
Compute the number of items within a range
This example gets the number of animals that have a similar population
count in the Farm
table.
- (goose, dog, ox, goat, duck, cat) = 4 animals between population range 0-2.
- (goose, dog, ox, goat, duck, cat) = 5 animals between population range 1-3.
- (goose, dog, ox, goat, duck, cat) = 5 animals between population range 1-3.
- (goose, dog, ox, goat, duck, cat) = 5 animals between population range 1-3.
- (goose, dog, ox, goat, duck, cat) = 4 animals between population range 2-4.
- (goose, dog, ox, goat, duck, cat) = 1 animal between population range 22-24.
SELECT animal, population, category, COUNT(*)
OVER (
ORDER BY population
RANGE BETWEEN 1 PRECEDING AND 1 FOLLOWING
) AS similar_population
FROM Farm;
/*----------------------------------------------------------*
| animal | population | category | similar_population |
+----------------------------------------------------------+
| goose | 1 | bird | 4 |
| dog | 2 | mammal | 5 |
| ox | 2 | mammal | 5 |
| goat | 2 | mammal | 5 |
| duck | 3 | bird | 4 |
| cat | 23 | mammal | 1 |
*----------------------------------------------------------*/
Get the most popular item in each category
This example gets the most popular item in each category. It defines how rows
in a window are partitioned and ordered in each partition. The
Produce
table is referenced.
- fruit
- (banana, apple) = apple is most popular
- (banana, apple) = apple is most popular
- vegetable
- (leek, cabbage, lettuce, kale) = kale is most popular
- (leek, cabbage, lettuce, kale) = kale is most popular
- (leek, cabbage, lettuce, kale) = kale is most popular
- (leek, cabbage, lettuce, kale) = kale is most popular
SELECT item, purchases, category, LAST_VALUE(item)
OVER (
PARTITION BY category
ORDER BY purchases
ROWS BETWEEN UNBOUNDED PRECEDING AND UNBOUNDED FOLLOWING
) AS most_popular
FROM Produce
/*----------------------------------------------------*
| item | purchases | category | most_popular |
+----------------------------------------------------+
| banana | 2 | fruit | apple |
| apple | 8 | fruit | apple |
| leek | 2 | vegetable | kale |
| cabbage | 9 | vegetable | kale |
| lettuce | 10 | vegetable | kale |
| kale | 23 | vegetable | kale |
*----------------------------------------------------*/
Get the last value in a range
This example gets the most popular item in a specific window frame, using
the Produce
table. The window frame analyzes up to three
rows at a time. Take a close look at the most_popular
column for vegetables.
Instead of getting the most popular item in a specific category, it gets the
most popular item in a specific range in that category.
- fruit
- (banana, apple) = apple is most popular
- (banana, apple) = apple is most popular
- vegetable
- (leek, cabbage, lettuce, kale) = cabbage is most popular
- (leek, cabbage, lettuce, kale) = lettuce is most popular
- (leek, cabbage, lettuce, kale) = kale is most popular
- (leek, cabbage, lettuce, kale) = kale is most popular
SELECT item, purchases, category, LAST_VALUE(item)
OVER (
PARTITION BY category
ORDER BY purchases
ROWS BETWEEN 1 PRECEDING AND 1 FOLLOWING
) AS most_popular
FROM Produce
/*----------------------------------------------------*
| item | purchases | category | most_popular |
+----------------------------------------------------+
| banana | 2 | fruit | apple |
| apple | 8 | fruit | apple |
| leek | 2 | vegetable | cabbage |
| cabbage | 9 | vegetable | lettuce |
| lettuce | 10 | vegetable | kale |
| kale | 23 | vegetable | kale |
*----------------------------------------------------*/
This example returns the same results as the preceding example, but it includes
a named window called item_window
. Some of the window specifications are
defined directly in the OVER
clause and some are defined in the named window.
SELECT item, purchases, category, LAST_VALUE(item)
OVER (
item_window
ROWS BETWEEN 1 PRECEDING AND 1 FOLLOWING
) AS most_popular
FROM Produce
WINDOW item_window AS (
PARTITION BY category
ORDER BY purchases)
Compute rank
This example calculates the rank of each employee within their department,
based on their start date. The window specification is defined directly
in the OVER
clause. The Employees
table is referenced.
- department 1
- (Jacob, Anthony, Andrew) = Assign rank 1 to Jacob
- (Jacob, Anthony, Andrew) = Assign rank 2 to Anthony
- (Jacob, Anthony, Andrew) = Assign rank 3 to Andrew
- department 2
- (Isabella, Daniel, Jose) = Assign rank 1 to Isabella
- (Isabella, Daniel, Jose) = Assign rank 2 to Daniel
- (Isabella, Daniel, Jose) = Assign rank 3 to Jose
SELECT name, department, start_date,
RANK() OVER (PARTITION BY department ORDER BY start_date) AS rank
FROM Employees;
/*--------------------------------------------*
| name | department | start_date | rank |
+--------------------------------------------+
| Jacob | 1 | 1990-07-11 | 1 |
| Anthony | 1 | 1995-11-29 | 2 |
| Andrew | 1 | 1999-01-23 | 3 |
| Isabella | 2 | 1997-09-28 | 1 |
| Daniel | 2 | 2004-06-24 | 2 |
| Jose | 2 | 2013-03-17 | 3 |
*--------------------------------------------*/
Use a named window in a window frame clause
You can define some of your logic in a named window and some of it in a
window frame clause. This logic is combined. Here is an example, using the
Produce
table.
SELECT item, purchases, category, LAST_VALUE(item)
OVER (item_window) AS most_popular
FROM Produce
WINDOW item_window AS (
PARTITION BY category
ORDER BY purchases
ROWS BETWEEN 2 PRECEDING AND 2 FOLLOWING)
/*-------------------------------------------------------*
| item | purchases | category | most_popular |
+-------------------------------------------------------+
| banana | 2 | fruit | apple |
| apple | 8 | fruit | apple |
| leek | 2 | vegetable | lettuce |
| cabbage | 9 | vegetable | kale |
| lettuce | 10 | vegetable | kale |
| kale | 23 | vegetable | kale |
*-------------------------------------------------------*/
You can also get the previous results with these examples:
SELECT item, purchases, category, LAST_VALUE(item)
OVER (item_window) AS most_popular
FROM Produce
WINDOW
a AS (PARTITION BY category),
b AS (a ORDER BY purchases),
c AS (b ROWS BETWEEN 2 PRECEDING AND 2 FOLLOWING),
item_window AS (c)
SELECT item, purchases, category, LAST_VALUE(item)
OVER (item_window ROWS BETWEEN 2 PRECEDING AND 2 FOLLOWING) AS most_popular
FROM Produce
WINDOW
a AS (PARTITION BY category),
b AS (a ORDER BY purchases),
item_window AS (b)
The following example produces an error because a window frame clause has been defined twice:
SELECT item, purchases, category, LAST_VALUE(item)
OVER (
item_window
ROWS BETWEEN 1 PRECEDING AND 1 FOLLOWING
) AS most_popular
FROM Produce
WINDOW item_window AS (
ORDER BY purchases
ROWS BETWEEN 2 PRECEDING AND 2 FOLLOWING)