Automate schema migrations using DizzleORM and GitHub Actions - Manage thousands of tenants with this workflow

PostgreSQL LAG Function

Summary: in this tutorial, you will learn how to use the PostgreSQL LAG() function to access data of the previous row from the current row.

Introduction to PostgreSQL LAG() function

PostgreSQL LAG() function allows you to access data of the previous row from the current row. It can be very useful for comparing the value of the current row with the value of the previous row.

Here’s the basic syntax of the LAG() function:

LAG(expression [,offset [,default_value]])
OVER (
    [PARTITION BY partition_expression, ... ]
    ORDER BY sort_expression [ASC | DESC], ...
)

In this syntax:

expression

The expression is evaluated against the previous row at a specified offset. It can be a column, expression, or subquery.

The expression must return a single value, and cannot be a window function.

offset

The offset is a positive integer that specifies the number of rows that come before the current row from which to access data. The offset can be an expression, subquery, or column. It defaults to 1 if you don’t specify it.

default_value

The LAG() function will return the default_value in case the offset goes beyond the scope of the partition. The function will return NULL if you omit the default_value.

PARTITION BY clause

The PARTITION BY clause divides rows into partitions to which the LAG() function is applied.

By default, the function will treat the whole result set as a single partition if you omit the PARTITION BY clause.

ORDER BY clause

The ORDER BY clause specifies the order of the rows in each partition to which the LAG() function is applied.

PostgreSQL LAG() function examples

We’ll use the sales table from the LEAD() function tutorial for the demonstration:

CREATE TABLE sales(
	year SMALLINT CHECK(year > 0),
	group_id INT NOT NULL,
	amount DECIMAL(10,2) NOT NULL,
	PRIMARY KEY(year,group_id)
);

INSERT INTO
	sales(year, group_id, amount)
VALUES
	(2018,1,1474),
	(2018,2,1787),
	(2018,3,1760),
	(2019,1,1915),
	(2019,2,1911),
	(2019,3,1118),
	(2020,1,1646),
	(2020,2,1975),
	(2020,3,1516)
RETURNING *;

Here is the data from the sales function:

year | group_id | amount
------+----------+---------
 2018 |        1 | 1474.00
 2018 |        2 | 1787.00
 2018 |        3 | 1760.00
 2019 |        1 | 1915.00
 2019 |        2 | 1911.00
 2019 |        3 | 1118.00
 2020 |        1 | 1646.00
 2020 |        2 | 1975.00
 2020 |        3 | 1516.00
(9 rows)

1) Using PostgreSQL LAG() function over a result set example

This example uses the LAG() function to return the sales amount of the current year and the previous year of the group id 1:

SELECT
  year,
  amount,
  LAG(amount, 1) OVER (
    ORDER BY
      year
  ) previous_year_sales
FROM
  sales
WHERE group_id = 1;

Output:

year | amount  | previous_year_sales
------+---------+---------------------
 2018 | 1474.00 |                null
 2019 | 1915.00 |             1474.00
 2020 | 1646.00 |             1915.00
(3 rows)

In this example:

  • The WHERE clause retrieves only the rows with the group id 1.
  • The LAG() function returns the sales amount of the previous year from the current year.

Since the sales table has no data for the year before 2018, the LAG() function returns NULL.

2) Using PostgreSQL LAG() function over a partition example

The following example uses the LAG() function to compare the sales of the current year with the sales of the previous year of each product group:

SELECT
  year,
  amount,
  group_id,
  LAG(amount, 1) OVER (
    PARTITION BY group_id
    ORDER BY
      year
  ) previous_year_sales
FROM
  sales;

Output:

year | amount  | group_id | previous_year_sales
------+---------+----------+---------------------
 2018 | 1474.00 |        1 |                null
 2019 | 1915.00 |        1 |             1474.00
 2020 | 1646.00 |        1 |             1915.00
 2018 | 1787.00 |        2 |                null
 2019 | 1911.00 |        2 |             1787.00
 2020 | 1975.00 |        2 |             1911.00
 2018 | 1760.00 |        3 |                null
 2019 | 1118.00 |        3 |             1760.00
 2020 | 1516.00 |        3 |             1118.00
(9 rows)

In this example:

  • The PARTITION BY clause divides the rows into partitions by the group id.
  • The ORDER BY clause sorts rows in each product group by years in ascending order.
  • The LAG() function is applied to each partition to return the sales of the previous year.

Summary

  • Use the PostgreSQL LAG() function to access the data of the previous row from the current row.

Last updated on

Was this page helpful?