# quantile 1.1.2

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quantile 1.1.2
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Abstract
Aggregate for computing various quantiles (median, quartiles etc.) efficiently.
Description
An extension written in C that allows you to evaluate various quantiles (with float and integer types) efficiently. It collects all the data in memory and allows you to compute multiple quantiles at the same time.
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quantile 1.1.2

# Quantile aggregates

This extension provides three simple aggregate functions to compute quantiles (http://en.wikipedia.org/wiki/Quantile). There are two forms of aggregate functions available - the first one returns a single quantile, the second one returns an arbitrary number of quantiles (as an array).

## 1) quantile(p_value numeric, p_quantile float)

Computes arbitrary quantile of the values - the p_quantile has to be between 0 and 1. For example this should return 500 because 500 is the middle value of a sequence 1 .. 1000.

``````SELECT quantile(i, 0.5) FROM generate_series(1,1000) s(i);
``````

but you can choose arbitrary quantile (for example 0.95).

This function is overloaded for the four basic numeric types, i.e. int, bigint, double precision and numeric.

## 2) quantile(p_value numeric, p_quantiles float[])

If you need multiple quantiles at the same time (e.g. all four quartiles), you can use this function instead of the one described above. This version allows you to pass an array of quantiles and returns an array of values.

So if you need all three quartiles, you may do this

``````SELECT quantile(i, ARRAY[0.25, 0.5, 0.75])
FROM generate_series(1,1000) s(i);
``````

and it should return ARRAY[250, 500, 750]. Compared to calling the simple quantile function like this

``````SELECT quantile(i, 0.25), quantile(i, 0.5), quantile(i, 0.75)
FROM generate_series(1,1000) s(i);
``````

the advantage is that the values are collected just once (into a single array), not for each expression separately. If you're working with large data sets, this may save a significant amount of time and memory (if may even be the factor that allows the query to finish and not being killed by OOM killer or something).

Just as in the first case, there are four functions handling other basic numeric types, i.e. double, int, bigint and numeric.

## Installation

Installing this is very simple, especially if you're using pgxn client. All you need to do is this:

``````\$ pgxn install quantile
\$ pgxn load -d mydb quantile
``````

and you're done. You may also install the extension manually:

``````\$ make install
\$ psql dbname -c "CREATE EXTENSION quantile"
``````

And if you're on an older version (pre-9.1), you have to run the SQL script manually

``````\$ psql dbname < `pg_config --sharedir`/contrib/quantile--1.1.sql
``````

That's all.