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PostgreSQL PERCENT_RANK Function

Summary: in this tutorial, you will learn how to use the PostgreSQL PERCENT_RANK() function to calculate the relative rank of a value within a set of values.

Introduction to PostgreSQL PERCENT_RANK() function

The PERCENT_RANK() function is like the CUME_DIST() function. The PERCENT_RANK() function evaluates the relative standing of a value within a set of values.

The following illustrates the syntax of the PERCENT_RANK() function:

PERCENT_RANK() OVER (
    [PARTITION BY partition_expression, ... ]
    ORDER BY sort_expression [ASC | DESC], ...
)

In this syntax:

PARTITION BY

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

The PARTITION BY clause is optional. If you omit it, the function treats the whole result set as a single partition.

ORDER BY

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

Return value

The PERCENT_RANK() function returns a result that is greater than 0 and less than or equal to 1.

0 < PERCENT_RANK() <= 1

The first value always receives a rank of zero. Tie values evaluate to the same cumulative distribution value.

PostgreSQL PERCENT_RANK() examples

We will use the sales_stats table created in the CUME_DIST() function tutorial for the demonstration.

SELECT
	year,
	name,
	amount
FROM
	actual_sales
ORDER BY
	year, name;

sales_stats table

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

The following example uses the PERCENT_RANK() function to calculate the sales percentile of each employee in 2019:

SELECT
    name,
	amount,
    PERCENT_RANK() OVER (
        ORDER BY amount
    )
FROM
    sales_stats
WHERE
    year = 2019;

Here is the output:

PostgreSQL PERCENT_RANK Function Over a Result Set example

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

This statement uses the PERCENT_RANK() function to calculate the sales amount percentile by sales employees in both 2018 and 2019.

SELECT
    name,
	amount,
    PERCENT_RANK() OVER (
		PARTITION BY year
        ORDER BY amount
    )
FROM
    sales_stats;

Here is the output:

PostgreSQL PERCENT_RANK Function Over a Partition example In this example:

  • The PARTITION BYclause distributed the rows in the sales_stats table into two partitions, one for 2018 and the other for 2019.
  • The ORDER BY clause sorted rows in each partition by sales amount.
  • The PERCENT_RANK() function is applied to each ordered partition to calculate the percent rank.

In this tutorial, you have learned how to use the PostgreSQL PERCENT_RANK() function to calculate the relative rank of a value within a set of values.

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