Conditional SQL count

The "best" way (for me) is to write a query like:

SELECT
    category,
    question1,
    count(*)
FROM reviews
GROUP BY category, question1

Then I use this data to draw a table in application logic.

Other option is to use one JSON column for all grouping results. This will result in something like:

category1 | {"zero": 1, "one": 3, "two": 5}
category2 | {"one": 7, "two": 4}

and so on.

The query for this option you can build from the previous one with json_build_object and json_agg. The best thing for this option - you do not need to know number of possible question1 values ahead of time.


In Postgres 9.4 or later, use the aggregate FILTER option. Typically cleanest and fastest:

SELECT category
     , count(*) FILTER (WHERE question1 = 0) AS zero
     , count(*) FILTER (WHERE question1 = 1) AS one
     , count(*) FILTER (WHERE question1 = 2) AS two
FROM   reviews
GROUP  BY 1;

Details for the FILTER clause:

  • Aggregate columns with additional (distinct) filters

If you want it short:

SELECT category
     , count(question1 = 0 OR NULL) AS zero
     , count(question1 = 1 OR NULL) AS one
     , count(question1 = 2 OR NULL) AS two
FROM   reviews
GROUP  BY 1;

More syntax variants:

  • For absolute performance, is SUM faster or COUNT?

Proper crosstab query

crosstab() yields the best performance and is shorter for long lists of options:

SELECT * FROM crosstab(
     'SELECT category, question1, count(*) AS ct
      FROM   reviews
      GROUP  BY 1, 2
      ORDER  BY 1, 2'
   , 'VALUES (0), (1), (2)'
   ) AS ct (category text, zero int, one int, two int);

Detailed explanation:

  • PostgreSQL Crosstab Query