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This query currently take 4 minutes to run:

with name1 as (
  select col1 as a1, col2 as a2, sum(FEE) as a3
  from s1, date
  where return_date = datesk and year = 2000
  group by col1, col2
)
select  c_id
from name1 ala1, ss, cc
where ala1.a3 > (
    select avg(a3) * 1.2 from name1 ctr2
    where ala1.a2 = ctr2.a2
  )
  and s_sk = ala1.a2
  and s_state = 'TN'
  and ala1.a1 = c_sk
order by c_id
limit 100;

I have set work_mem=’1000MB’ and enable-nestloop=off

EXPLAIN ANALYZE of this query is: http://explain.depesz.com/s/DUa

QUERY PLAN

-----------------------------------------------------------------------------------------------------------------------------------------------------
--------------------
 Limit  (cost=59141.02..59141.09 rows=28 width=17) (actual time=253707.928..253707.940 rows=100 loops=1)
   CTE name1
     ->  HashAggregate  (cost=11091.33..11108.70 rows=1390 width=14) (actual time=105.223..120.358 rows=50441 loops=1)
           Group Key: s1.col1, s1.col2
           ->  Hash Join  (cost=2322.69..11080.90 rows=1390 width=14) (actual time=10.390..79.897 rows=55820 loops=1)
                 Hash Cond: (s1.return_date = date.datesk)
                 ->  Seq Scan on s1  (cost=0.00..7666.14 rows=287514 width=18) (actual time=0.005..33.801 rows=287514 loops=1)
                 ->  Hash  (cost=2318.11..2318.11 rows=366 width=4) (actual time=10.375..10.375 rows=366 loops=1)
                       Buckets: 1024  Batches: 1  Memory Usage: 13kB
                       ->  Seq Scan on date  (cost=0.00..2318.11 rows=366 width=4) (actual time=5.224..10.329 rows=366 loops=1)
                             Filter: (year = 2000)
                             Rows Removed by Filter: 72683
   ->  Sort  (cost=48032.32..48032.39 rows=28 width=17) (actual time=253707.923..253707.930 rows=100 loops=1)
         Sort Key: cc.c_id
         Sort Method: top-N heapsort  Memory: 32kB
         ->  Hash Join  (cost=43552.37..48031.65 rows=28 width=17) (actual time=253634.511..253696.291 rows=18976 loops=1)
               Hash Cond: (cc.c_sk = ala1.a1)
               ->  Seq Scan on cc  (cost=0.00..3854.00 rows=100000 width=21) (actual time=0.009..18.527 rows=100000 loops=1)
               ->  Hash  (cost=43552.02..43552.02 rows=28 width=4) (actual time=253634.420..253634.420 rows=18976 loops=1)
                     Buckets: 1024  Batches: 1  Memory Usage: 668kB
                     ->  Hash Join  (cost=1.30..43552.02 rows=28 width=4) (actual time=136.819..253624.375 rows=18982 loops=1)
                           Hash Cond: (ala1.a2 = ss.s_sk)
                           ->  CTE Scan on name1 ala1  (cost=0.00..43548.70 rows=463 width=8) (actual time=136.756..253610.817 rows=18982 loops=1)
                                 Filter: (a3 > (SubPlan 2))
                                 Rows Removed by Filter: 31459
                                 SubPlan 2
                                   ->  Aggregate  (cost=31.29..31.31 rows=1 width=32) (actual time=5.025..5.025 rows=1 loops=50441)
                                         ->  CTE Scan on name1 ctr2  (cost=0.00..31.27 rows=7 width=32) (actual time=0.032..3.860 rows=8241 loops=50441)
                                               Filter: (ala1.a2 = a2)
                                               Rows Removed by Filter: 42200
                           ->  Hash  (cost=1.15..1.15 rows=12 width=4) (actual time=0.036..0.036 rows=12 loops=1)
                                 Buckets: 1024  Batches: 1  Memory Usage: 1kB
                                 ->  Seq Scan on ss  (cost=0.00..1.15 rows=12 width=4) (actual time=0.025..0.033 rows=12 loops=1)
                                       Filter: (s_state = 'TN'::bpchar)
 Planning time: 0.316 ms
 Execution time: 253708.351 ms
(36 rows)

With enable_nestloop=on; EXPLAIN ANLYZE result is : http://explain.depesz.com/s/NPo

QUERY PLAN

-----------------------------------------------------------------------------------------------------------------------------------------------------
--------------
 Limit  (cost=54916.36..54916.43 rows=28 width=17) (actual time=257869.004..257869.015 rows=100 loops=1)
   CTE name1
     ->  HashAggregate  (cost=11091.33..11108.70 rows=1390 width=14) (actual time=92.354..104.103 rows=50441 loops=1)
           Group Key: s1.col1, s1.col2
           ->  Hash Join  (cost=2322.69..11080.90 rows=1390 width=14) (actual time=9.371..68.156 rows=55820 loops=1)
                 Hash Cond: (s1.return_date = date.datesk)
                 ->  Seq Scan on s1  (cost=0.00..7666.14 rows=287514 width=18) (actual time=0.011..25.637 rows=287514 loops=1)
                 ->  Hash  (cost=2318.11..2318.11 rows=366 width=4) (actual time=9.343..9.343 rows=366 loops=1)
                       Buckets: 1024  Batches: 1  Memory Usage: 13kB
                       ->  Seq Scan on date  (cost=0.00..2318.11 rows=366 width=4) (actual time=4.796..9.288 rows=366 loops=1)
                             Filter: (year = 2000)
                             Rows Removed by Filter: 72683
   ->  Sort  (cost=43807.66..43807.73 rows=28 width=17) (actual time=257868.994..257868.998 rows=100 loops=1)
         Sort Key: cc.c_id
         Sort Method: top-N heapsort  Memory: 32kB
         ->  Nested Loop  (cost=0.29..43806.98 rows=28 width=17) (actual time=120.358..257845.941 rows=18976 loops=1)
               ->  Nested Loop  (cost=0.00..43633.22 rows=28 width=4) (actual time=120.331..257692.654 rows=18982 loops=1)
                     Join Filter: (ala1.a2 = ss.s_sk)
                     Rows Removed by Join Filter: 208802
                     ->  CTE Scan on name1 ala1  (cost=0.00..43548.70 rows=463 width=8) (actual time=120.316..257652.636 rows=18982 loops=1)
                           Filter: (a3 > (SubPlan 2))
                           Rows Removed by Filter: 31459
                           SubPlan 2
                             ->  Aggregate  (cost=31.29..31.31 rows=1 width=32) (actual time=5.105..5.105 rows=1 loops=50441)
                                   ->  CTE Scan on name1 ctr2  (cost=0.00..31.27 rows=7 width=32) (actual time=0.032..3.952 rows=8241 loops=50441)
                                         Filter: (ala1.a2 = a2)
                                         Rows Removed by Filter: 42200
                     ->  Materialize  (cost=0.00..1.21 rows=12 width=4) (actual time=0.000..0.001 rows=12 loops=18982)
                           ->  Seq Scan on ss  (cost=0.00..1.15 rows=12 width=4) (actual time=0.007..0.012 rows=12 loops=1)
                                 Filter: (s_state = 'TN'::bpchar)
               ->  Index Scan using cc_pkey on cc  (cost=0.29..6.20 rows=1 width=21) (actual time=0.007..0.007 rows=1 loops=18982)
                     Index Cond: (c_sk = ala1.a1)
 Planning time: 0.453 ms
 Execution time: 257869.554 ms
(34 rows)

Many other queries run quickly with enable_nestloop=off, there is no big difference for this query. Raw data is not really big, so 4 minutes is too much. I was expecting around 4-5 seconds.

Why is it taking so long !? I tried this in both postgres versions 9.4 and 9.5. It is same. Maybe I can create brin indexes. But I am not sure for which columns to create.

Configuration setting:

effective_cache_size         | 89GB 
shared_buffers               | 18GB
work_mem                     | 1000MB
maintenance_work_mem         | 500MB
checkpoint_segments          | 32
constraint_exclusion         | on
checkpoint_completion_target | 0.5 
| |
  • 1
    Maybe you could explain what the query is doing and provide sample daa and desired results. There might be better ways to write the logic. – Gordon Linoff Jul 9 '15 at 1:10
  • 1
    can you also prefix all the columns with the tables so that we know where the s_sk and s_state came from – cha Jul 9 '15 at 1:19
  • Your query plan appears to be telling you that the correlated subquery in your WHERE clause is very expensive. That should come as no surprise, as correlated subqueries are notorious for causing performance issues. Yours appears to require a full table scan of the CTE every time it is evaluated. – John Bollinger Jul 9 '15 at 1:32
3

Like John Bollinger commented, your sub-query gets evaluated for each row of the main query. But since you are averaging on a simple column, you can easily move the sub-query out to a CTE and calculate the average once, which should speed up things tremendously:

with name1 as (
  select col1 as a1, col2 as a2, sum(FEE) as a3
  from s1, date
  where return_date = datesk and year = 2000
  group by col1, col2
), avg_a3_by_a2 as (
  select a2, avg(a3) * 1.2 as avg12
  from name1
  group by a2
)
select c_id
from name1, avg_a3_by_a2, ss, cc
where name1.a3 > avg_a3_by_a2.avg12
  and name1.a2 = avg_a3_by_a2.a2
  and s_sk = name1.a2
  and s_state = 'TN'
  and name1.a1 = c_sk
order by c_id
limit 100;

The new CTE calculates the average + 20% for every distinct value of a2.

Please also use the JOIN syntax instead of comma-separated FROM items as it makes your code far more readable. And if you start using aliases in your query, use them consistently on all tables and columns. I could correct neither of these two issues because of lack of information.

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