toppyy commented on code in PR #6402: URL: https://github.com/apache/arrow-datafusion/pull/6402#discussion_r1205721407
########## docs/source/user-guide/sql/window_functions.md: ########## @@ -0,0 +1,263 @@ +<!--- + Licensed to the Apache Software Foundation (ASF) under one + or more contributor license agreements. See the NOTICE file + distributed with this work for additional information + regarding copyright ownership. The ASF licenses this file + to you under the Apache License, Version 2.0 (the + "License"); you may not use this file except in compliance + with the License. You may obtain a copy of the License at + + http://www.apache.org/licenses/LICENSE-2.0 + + Unless required by applicable law or agreed to in writing, + software distributed under the License is distributed on an + "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY + KIND, either expressioness or implied. See the License for the + specific language governing permissions and limitations + under the License. +--> + +# Window Functions + +A _window function_ performs a calculation across a set of table rows that are somehow related to the current row. This is comparable to the type of calculation that can be done with an aggregate function. However, window functions do not cause rows to become grouped into a single output row like non-window aggregate calls would. Instead, the rows retain their separate identities. Behind the scenes, the window function is able to access more than just the current row of the query result + +Here is an example that shows how to compare each employee's salary with the average salary in his or her department: + +```sql +SELECT depname, empno, salary, avg(salary) OVER (PARTITION BY depname) FROM empsalary; + ++-----------+-------+--------+-------------------+ +| depname | empno | salary | avg | ++-----------+-------+--------+-------------------+ +| personnel | 2 | 3900 | 3700.0 | +| personnel | 5 | 3500 | 3700.0 | +| develop | 8 | 6000 | 5020.0 | +| develop | 10 | 5200 | 5020.0 | +| develop | 11 | 5200 | 5020.0 | +| develop | 9 | 4500 | 5020.0 | +| develop | 7 | 4200 | 5020.0 | +| sales | 1 | 5000 | 4866.666666666667 | +| sales | 4 | 4800 | 4866.666666666667 | +| sales | 3 | 4800 | 4866.666666666667 | ++-----------+-------+--------+-------------------+ +``` + +A window function call always contains an OVER clause directly following the window function's name and argument(s). This is what syntactically distinguishes it from a normal function or non-window aggregate. The OVER clause determines exactly how the rows of the query are split up for processing by the window function. The PARTITION BY clause within OVER divides the rows into groups, or partitions, that share the same values of the PARTITION BY expression(s). For each row, the window function is computed across the rows that fall into the same partition as the current row. The previous example showed how to count the average of a column per partition. + +You can also control the order in which rows are processed by window functions using ORDER BY within OVER. (The window ORDER BY does not even have to match the order in which the rows are output.) Here is an example: + +```sql +SELECT depname, empno, salary, + rank() OVER (PARTITION BY depname ORDER BY salary DESC) +FROM empsalary; + ++-----------+-------+--------+--------+ +| depname | empno | salary | rank | ++-----------+-------+--------+--------+ +| personnel | 2 | 3900 | 1 | +| develop | 8 | 6000 | 1 | +| develop | 10 | 5200 | 2 | +| develop | 11 | 5200 | 2 | +| develop | 9 | 4500 | 4 | +| develop | 7 | 4200 | 5 | +| sales | 1 | 5000 | 1 | +| sales | 4 | 4800 | 2 | +| personnel | 5 | 3500 | 2 | +| sales | 3 | 4800 | 2 | ++-----------+-------+--------+--------+ +``` + +There is another important concept associated with window functions: for each row, there is a set of rows within its partition called its window frame. Some window functions act only on the rows of the window frame, rather than of the whole partition. Here is an example of using window frames in queries: + +```sql +SELECT depname, empno, salary, + avg(salary) OVER(ORDER BY salary ASC ROWS BETWEEN 1 PRECEDING AND 1 FOLLOWING) AS avg, + min(salary) OVER(ORDER BY empno ASC ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW) AS cum_min +FROM empsalary +ORDER BY empno ASC; + ++-----------+-------+--------+--------------------+---------+ +| depname | empno | salary | avg | cum_min | ++-----------+-------+--------+--------------------+---------+ +| sales | 1 | 5000 | 5000.0 | 5000 | +| personnel | 2 | 3900 | 3866.6666666666665 | 3900 | +| sales | 3 | 4800 | 4700.0 | 3900 | +| sales | 4 | 4800 | 4866.666666666667 | 3900 | +| personnel | 5 | 3500 | 3700.0 | 3500 | +| develop | 7 | 4200 | 4200.0 | 3500 | +| develop | 8 | 6000 | 5600.0 | 3500 | +| develop | 9 | 4500 | 4500.0 | 3500 | +| develop | 10 | 5200 | 5133.333333333333 | 3500 | +| develop | 11 | 5200 | 5466.666666666667 | 3500 | ++-----------+-------+--------+--------------------+---------+ +``` + +## Syntax + +The syntax for the OVER-clause is + +```sql +function([expr]) + OVER( + [PARTITION BY expr[, …]] + [ORDER BY expr [ ASC | DESC ][, …]] + [ frame_clause ] + ) +``` + +where **frame_clause** is one of: + +```sql + { RANGE | ROWS | GROUPS } frame_start Review Comment: :+1: added text mentioning this, thanks -- This is an automated message from the Apache Git Service. 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