Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm working with PostgreSQL (I'm a rookie in the database world) and I'd like to know your opinion on the efficiency of this kind of queries I found in the code I'm working with. These queries have a lot of JOINs, and one of them (bold font) has many rows by request. This forces us to GROUP BY request.id in order to obtain a row by request and a field (bold font) with all this rows data.

I think this kind of queries has to lose lots of time looking for all these maximums, but I can't figure an alternative way of doing this. Any ideas on its efficiency and how to improve it?

SELECT
  request.id AS id,
  max(request_type.name) AS request_type,
  to_char(max(request.timestamp),'DD/mm/YYYY HH24:mi') AS timestamp,
  to_char(max(request.timestamp),'YYYY-mm-DD') AS timestamp_filtering,
  max(state.name) AS request_state,
  max(users.name || ' ' || COALESCE(users.surname,'')) AS create_user,
  max(request.id_create_user) AS id_create_user,
  max(enterprise.name) AS enterprise,
  max(cause_issue.name) AS cause,
  max(request_movements.id_request_state) AS id_state,
  array_to_string(array_agg(DISTINCT act_code.name || '/' || req_res.act_code), ', ') AS act_code, /* here */
  max(revised.code) AS state_revised, 
  max(request_shipment.warehouse) AS warehouse,
  max(req_res.id_warehouse) AS id_warehouse
FROM
  request
  LEFT JOIN users
    ON users.id=request.id_create_user
  LEFT JOIN enterprise
    ON users.id_enterprise=enterprise.id
  LEFT JOIN request_movements
    ON request_movements.id=request.id_request_movement
  LEFT JOIN request_versions
    ON request_versions.id = request_movements.id_version
  LEFT JOIN state
    ON request_movements.id_request_state=state.id
  INNER JOIN request_type
    ON request.id_request_type=request_type.id
  LEFT JOIN cause_issue
    ON request.id_cause_issue=cause_issue.id
  LEFT JOIN request_reserve req_res
    ON req_res.id_request = request.id /* here */
  LEFT JOIN act_code
    ON req_res.id_act_code=act_code.id
  LEFT JOIN request_shipment
    ON (request_shipment.id_request=request.id)
  LEFT JOIN warehouse_enterprise
    ON (warehouse_enterprise.id = request_shipment.id_warehouse_enterprise)
  LEFT JOIN revised
    ON (revised.id = request_shipment.id_revised)
WHERE
  request.id_request_type = "any_type"  
GROUP BY
  request.id

The EXPLAIN returns this.

share|improve this question
    
Did you already run EXPLAIN on this query? –  fvu Nov 13 '12 at 8:32
    
yes, but as I said I'm new in this and I haven't read enough to take advantage of this kind of analysis –  Pablo Novo Nov 13 '12 at 8:38
    
You may want to add the output of explain then, it helps people analyze your situation. –  fvu Nov 13 '12 at 8:39
1  
The best way to publish an execution plan is to upload it to explain.depesz.com –  a_horse_with_no_name Nov 13 '12 at 8:42
1  
That's a lot of left joins and aggregates o_O –  d11wtq Nov 13 '12 at 11:31

1 Answer 1

up vote 1 down vote accepted

You can much simplify this query by aggregating values in request_reserve and act_code before you JOIN to the big join. This avoids the need for aggregate functions on all the other columns and should generally be much faster for a larger number of rows.

SELECT r.id
      ,rt.name AS request_type
      ,to_char(r.timestamp, 'DD/mm/YYYY HH24:mi') AS timestamp
      ,to_char(r.timestamp, 'YYYY-mm-DD') AS timestamp_filtering
      ,s.name AS request_state
      ,u.name || COALESCE(' ' || u.surname, '') AS create_user
      ,r.id_create_user
      ,e.name AS enterprise
      ,c.name AS cause
      ,rm.id_request_state AS id_state
      ,rr.act_code
      ,rd.code AS state_revised
      ,rs.warehouse
      ,rr.id_warehouse
FROM      request              r
LEFT JOIN users                u  ON u.id = r.id_create_user
LEFT JOIN enterprise           e  ON e.id = u.id_enterprise
LEFT JOIN request_movements    rm ON rm.id = r.id_request_movement
LEFT JOIN request_versions     rv ON rv.id = rm.id_version
LEFT JOIN state                s  ON s.id = rm.id_request_state
     JOIN request_type         rt ON rt.id = r.id_request_type
LEFT JOIN cause_issue          c  ON c.id = r.id_cause_issue
LEFT JOIN request_shipment     rs ON rs.id_request = r.id
LEFT JOIN warehouse_enterprise w  ON w.id = rs.id_warehouse_enterprise
LEFT JOIN revised              rd ON rd.id = rs.id_revised
LEFT JOIN (
   SELECT rr.id_request, rr.id_warehouse
         ,array_to_string(array_agg(
             DISTINCT a.name || '/' || rr.act_code), ', ') AS act_code
   FROM   request_reserve rr
   LEFT   JOIN act_code   a ON r.id_act_code = a.id
   GROUP  BY rr.id_request, rr.id_warehouse
   )  rr ON rr.id_request = r.id
WHERE  r.id_request_type = "any_type";  -- use single quotes for values!

For big queries it is essential that you have a format the human eye can easily parse. Therefore I reformatted before I improved the query. I use table aliases to avoid unwieldy identifiers as much as possible.

Minor improvement to create_user: no trailing space. If either part of the name can be NULL, I suggest this to avoid a dangling space:

COALESCE(u.name || ' ' || u.surname, u.name, u.surname)

In PostgreSQL 9.1 or later you could use concat_ws().

share|improve this answer
    
Ohh!! Amazing! Thank you very much Erwin! I'll try it tomorrow and I'll give feedback about the results for everybody to watch them. –  Pablo Novo Nov 14 '12 at 17:30
    
I am a little suspicious about request_shipment, which looks like there could be n rows per request. But you say it's not like that .. –  Erwin Brandstetter Nov 14 '12 at 18:01
    
And I'm right trust me ;) So right as you on your diagnostic. Excellent work!! The query spends now over half the time it was spending before. Thank you very much for your time. It was very useful! –  Pablo Novo Nov 15 '12 at 11:52

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.