


How Can I Efficiently Create Dynamic Pivot Tables in PostgreSQL Using `crosstab()`?
A more efficient way to implement dynamic pivot tables using CASE and GROUP BY statements
Compared to the query provided in the article, using the tablefunc
function in the crosstab()
extension is a more efficient alternative.
Installation:
First, install the tablefunc
extension if you haven’t already:
CREATE EXTENSION tablefunc;
Basic Crosstab solution:
Simple crosstab
solution for this scenario:
SELECT * FROM crosstab( 'SELECT bar, 1 AS cat, feh FROM tbl_org ORDER BY bar, feh') AS ct (bar text, val1 int, val2 int, val3 int);
Synthetic category column:
If you don’t have an actual category column, you can use window functions to create a synthetic category column:
SELECT * FROM crosstab( $$ SELECT bar, val, feh FROM ( SELECT *, 'val' || row_number() OVER (PARTITION BY bar ORDER BY feh) AS val FROM tbl_org ) x ORDER BY 1, 2 $$ , $$VALUES ('val1'), ('val2'), ('val3')$$ ) AS ct (bar text, val1 int, val2 int, val3 int);
Dynamic Crosstab?
While creating a fully dynamic crosstab
using plpgsql is challenging because of the limitations of dynamic return types. Here is a simpler test case example:
SELECT * FROM crosstab('SELECT row_name, attrib, val FROM tbl ORDER BY 1,2') AS ct (row_name text, val1 int, val2 int, val3 int);
tablefunc module:
Thetablefunc
module provides a simplified approach:
SELECT * FROM crosstab1('SELECT row_name, attrib, val::text FROM tbl ORDER BY 1,2');
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