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SELECT DISTINCT "myapp_profile"."user_id", "myapp_profile"."name", 
  "myapp_profile"."age", "auth_user"."id", "auth_user"."username", 
  "auth_user"."first_name", "auth_user"."last_name", "auth_user"."email", 
  "auth_user"."password", "auth_user"."is_staff", "auth_user"."is_active", 
  "auth_user"."is_superuser", "auth_user"."last_login", "auth_user"."date_joined" 
FROM "myapp_profile" 
INNER JOIN "auth_user" ON ("myapp_profile"."user_id" = "auth_user"."id") 
LEFT OUTER JOIN "myapp_siterel" ON ("myapp_profile"."user_id" = "myapp_siterel"."profile_id") 
LEFT OUTER JOIN "django_site" ON ("myapp_siterel"."site_id" = "django_site"."id") 
WHERE ("auth_user"."is_superuser" = false 
AND "auth_user"."is_staff" = false 
AND ("django_site"."id" IS NULL OR "django_site"."id" IN (15, 16))) 
ORDER BY "myapp_profile"."user_id" 
DESC LIMIT 100

The above query takes about 100 seconds to run with 2 million users/profiles. I'm no DBA and our DBAs are looking at the situation to see what can be done, but since I'll likely never get to see what changes (assuming it happens at the DB level), I'm curious how you could optimized this query. It obviously needs to happen a ton faster than it is happening, like on the order of 5 seconds or less. If there is no way to optimize the SQL, is there an index or indexes you could add/change to make the query it quicker, or is there anything something else I'm overlooking?

Postgres 9 is the DB, and Django's ORM is where this query came from.

Query Plan

Limit (cost=1374.35..1383.10 rows=100 width=106)
-> Unique (cost=1374.35..1391.24 rows=193 width=106)
-> Sort (cost=1374.35..1374.83 rows=193 width=106)
Sort Key: myapp_profile.user_id, myapp_profile.name, myapp_profile.age, auth_user.username, auth_user.first_name, auth_user.last_name, auth_user.email, auth_user.password, auth_user.is_staff, auth_user.is_active, auth_user.is_superuser, auth_user.last_login, auth_user.date_joined
-> Nested Loop (cost=453.99..1367.02 rows=193 width=106)
-> Hash Left Join (cost=453.99..1302.53 rows=193 width=49)
Hash Cond: (myapp_siterel.site_id = django_site.id)
Filter: ((django_site.id IS NULL) OR (django_site.id = ANY ('{10080,10053}'::integer[])))
-> Hash Left Join (cost=448.50..1053.27 rows=15001 width=53)
Hash Cond: (myapp_profile.user_id = myapp_siterel.profile_id)
-> Seq Scan on myapp_profile (cost=0.00..286.01 rows=15001 width=49)
-> Hash (cost=261.00..261.00 rows=15000 width=8)
-> Seq Scan on myapp_siterel (cost=0.00..261.00 rows=15000 width=8)
-> Hash (cost=3.55..3.55 rows=155 width=4)
-> Seq Scan on django_site (cost=0.00..3.55 rows=155 width=4)
-> Index Scan using auth_user_pkey on auth_user (cost=0.00..0.32 rows=1 width=57)
Index Cond: (auth_user.id = myapp_profile.user_id)
Filter: ((NOT auth_user.is_superuser) AND (NOT auth_user.is_staff))

Thanks

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3 Answers 3

up vote 2 down vote accepted

I'm not so familiar with postgres, so I'm not sure how good it's query optimiser is, but it looks like everything you have in the where clause could instead be join conditions, although I'd hope postgres is clever enough to work that out for itself, however if it's not then it's going to fetch all your 2 million users with related records in the other 3 tables and then filter that using your where.

The indexes already mentioned should also work for you if they don't already exist. Again i'm more an MSSQL person but does postgres not have any statistics profile or query plan you can see?

Something along these lines

SELECT DISTINCT
    "myapp_profile"."user_id",
    "myapp_profile"."name", 
    "myapp_profile"."age",
    "auth_user"."id",
    "auth_user"."username", 
    "auth_user"."first_name",
    "auth_user"."last_name",
    "auth_user"."email", 
    "auth_user"."password",
    "auth_user"."is_staff",
    "auth_user"."is_active", 
    "auth_user"."is_superuser",
    "auth_user"."last_login",
    "auth_user"."date_joined" 
FROM "myapp_profile" 
    INNER JOIN "auth_user"
        ON ("myapp_profile"."user_id" = "auth_user"."id") 
        AND "auth_user"."is_superuser" = false
        AND "auth_user"."is_staff" = false 
    LEFT OUTER JOIN "myapp_siterel"
        ON ("myapp_profile"."user_id" = "myapp_siterel"."profile_id") 
    LEFT OUTER JOIN "django_site"
        ON ("myapp_siterel"."site_id" = "django_site"."id") 
        AND ("django_site"."id" IS NULL OR "django_site"."id" IN (15, 16))
ORDER BY "myapp_profile"."user_id" DESC
LIMIT 100

Also, do you need the distinct? That'll also slow it down somewhat.

share|improve this answer
    
Very interesting. I have a feeling that's what's happening (given the fact that a limited by 100 query is taking so long). How would you write it to do what you speak of, in the case that Postgres is so naive? –  orokusaki Jul 1 '11 at 15:56
    
See my edit for an example of what I was thinking about. –  Treborbob Jul 1 '11 at 16:05
    
I've added a query plan. Thanks, I'm going to take a look at your SQL. –  orokusaki Jul 1 '11 at 16:05
    
be interested to see if the plan changes when running my version. –  Treborbob Jul 1 '11 at 16:10
    
I'm unable to get a custom query to cooperate with Django's admin queryset requirements, but I ran the query manually, and got this: gist.github.com/d3ab71a22a144a56955d –  orokusaki Jul 1 '11 at 17:09

for basics:

make sure all the user id fields are indexed.

also looks like you would do well with an index on is_supervisor, and is_staff

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can you post the explain plan? –  Randy Jul 1 '11 at 15:26

there's never a straight forward silver-bullet solution for query optimization, however, the obvious steps is to index columns you're searching on, in your case, that's:

"auth_user"."is_superuser"
"auth_user"."is_staff"
"django_site"."id"
"myapp_profile"."user_id"
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