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In the table my_obj there are two integer fields:

(value_a integer, value_b integer);

I try to compute how many time value_a = value_b, and I want to express this ratio in percents. This is the code I have tried:

select sum(case when o.value_a = o.value_b then 1 else 0 end) as nb_ok,
       sum(case when o.value_a != o.value_b then 1 else 0 end) as nb_not_ok,
from  my_obj as o
group by o.property_name;

compute_percent is a stored_procedure that simply does (a * 100) / (a + b)

But PostgreSQL complains that the column nb_ok doesn't exist.
How would you do that properly ?

I use PostgreSQL 9.1 with Ubuntu 12.04.

share|improve this question
But postgresql complains that the column nook doesn't exist. ? Please fix your question, there is no nook anywhere. When talking about an error message, put it in your question as is. Copy / Paste. –  Erwin Brandstetter Mar 27 '13 at 1:50
I often try right click from the aterm console that runs psql so as to copy, but often it doesn't go to my system clipboard and is not avaible for pasting into chromium. I fixed my question with nbok written in lower case cause that's the way psql wrote it. –  Stephane Rolland Mar 27 '13 at 13:13
Consider the last paragraph of my answer and follow the link to the manual to understand why nbok appears in lower case. –  Erwin Brandstetter Mar 27 '13 at 14:08
I've already read it :-) In deed it's been month I am switching from camelCase to unix like case... but you know 15 years automatisms don't go away so easily. However, I'm still more reluctant about all sql keyword in Uppercase, all the more so that now I have my Caps-Lock redirected to Escape key for vim. –  Stephane Rolland Mar 27 '13 at 14:11
Upper-casing of SQL keywords is totally optional and a matter of taste. But lower casing of identifiers is not. –  Erwin Brandstetter Mar 27 '13 at 14:13

3 Answers 3

up vote 3 down vote accepted

There is more to this question than it may seem.

Simple version

This is much faster and simpler:

SELECT property_name
      ,(count(value_a = value_b OR NULL) * 100) / count(*) AS pct
FROM   my_obj


property_name | pct
 prop_1       | 17
 prop_2       | 43


  • You don't need a function for this at all.

  • Instead of counting value_b (which you don't need to begin with) and calculating the total, use count(*) for the total. Faster, simpler.

  • This assumes you don't have NULL values. I.e. both columns are defined NOT NULL. The information is missing in your question.
    If not, your original query is probably not doing what you think it does. If any of the values is NULL, your version does not count that row at all. You could even provoke a division-by-zero exception this way.
    This version works with NULL, too. count(*) produces the count of all rows, regardless of values.

  • Here's how the count works:


    count() ignores NULL values. Voilá.

  • Operator precedence governs that = binds before OR. You could add parentheses to make it clearer:

    count ((value_a = value_b) OR FALSE)
  • You can do the same with

    count NULLIF(<expression>, FALSE)
  • The result type of count() is bigint by default.
    A division bigint / bigint, truncates fractional digits.

Include fractional digits

Use 100.0 (with fractional digit) to force the calculation to be numeric and thereby preserve fractional digits.
You may want to use round() with this:

SELECT property_name
      ,round((count(value_a = value_b OR NULL) * 100.0) / count(*), 2) AS pct
FROM   my_obj


property_name | pct
 prop_1       | 17.23
 prop_2       | 43.09

As an aside:
I use value_a instead of valueA. Don't use unquoted mixed-case identifiers in PostgreSQL. I have seen too many desperate question coming from this folly. If you wonder what I am talking about, read the chapter Identifiers and Key Words in the manual.

share|improve this answer
Does this COUNT run faster than the similar SUM((value_a=value_b)::integer) or the analogous SUM(CASE...)? –  Andrew Lazarus Mar 29 '13 at 18:27
@AndrewLazarus: The difference is generally marginal, as each of the three forms is very cheap compared to reading data from disk. In my last test OR came before CASE and ::int. But OR, CASE an NULLIF were "to close to call", really. You can test this easily. Here is a recent similar test on dba.SE (but without an OR version). –  Erwin Brandstetter Mar 29 '13 at 20:10
But count(*) is clearly faster than count(<expression>). –  Erwin Brandstetter Mar 29 '13 at 20:18

Probably the easiest way to do is to just use a with clause

WITH data 
     AS (SELECT Sum(CASE WHEN o.valuea = o.valueb THEN 1 ELSE 0 END) AS nbOk, 
                Sum(CASE WHEN o.valuea != o.valueb THEN 1 ELSE 0 END) AS nbNotOk, 
         FROM   my_obj AS o 
         GROUP  BY o.property_name) 
SELECT nbok, 
       Compute_percent(nbok, nbnotok) 
FROM   data
share|improve this answer
Supposing a covering index on one/both columns, will the optimizer be able to use them for this query (and in what capacity), or will it be a strict table scan? –  Clockwork-Muse Mar 26 '13 at 18:39
@Clockwork-Muse it works just like an in-line query. It will use whatever it can to build the data but after that everything is done in memory. –  Conrad Frix Mar 26 '13 at 18:49
@ConradFrix I made a mistake in my question, i'm going to edit, the group by is group by o.property_name. It doesn't make sense otherwise. –  Stephane Rolland Mar 26 '13 at 18:59

You might also want to try this version:

WITH all(count) as (SELECT COUNT(*)
                    FROM my_obj),
     matching(count) as (SELECT COUNT(*)
                         FROM my_obj
                         WHERE valueA = valueB)
SELECT nbOk, nbNotOk, Compute_percent(nbOk, nbNotOk)
FROM (SELECT matching.count as nbOk, all.count - matching.count as nbNotOk
      FROM all
      CROSS JOIN matching) data
share|improve this answer

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