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We have an issue with a large postgresql (9.2) database which is around ~1 Tb on a server cluster with 100Gb Ram and a shared_buffers settings of 33Gb. The issue is that full table scans on our user table which is around 11M rows are too slow. Autovacuum does its job since although the table is frequently updated we mostly don't see more than 1M dead tuples at any time. The total table size is 8Gb and according to stats queries on this table mostly hit the shared_buffers cache. However when we have to do full table scans (requirement) and apply filters on a lot of columns we consistently get something like the following indicative performance

-> Seq Scan on tbm_user cf (cost=0.00..2481065.31 rows=130434 width=20) (actual time=0.879..87236.529 rows=1323510 loops=1)
Filter: (...)

The filter above is not displayed but it consists of multiple clauses on single columns which are joined using AND / OR, nothing fancy really. The planner expects fewer rows but i think that's not problem, the query plan is fine, the missing part (following step, seq scan on user is the first one) is a hash join with a smaller table which is the optimal plan. Overall, 90 seconds on average seems way to slow to me and this measurement was taken during an off peak hour where the db cluster load is small.

edit:

I can't give the dbs schema, the full query plan is not that important since what i have already given is the first step of the plan. As for the filters, they are applied on 15 different columns, some of them in combinations (i may be able to give out the whole where clause but need to check first). However what i can say is that the storage is a fast SAN that can handle many I/O ops and that a select count(*) which triggers a full table scan is done in 5 seconds.

EXPLAIN ANALYZE select count(*) from tbm_user;
Aggregate  (cost=1103159.60..1103159.63 rows=1 width=0) (actual time=5195.380..5195.380 rows=1 loops=1)
  ->  Seq Scan on tbm_user (cost=0.00..1077166.09 rows=10797403 width=0) (actual time=0.043..4219.200 rows=10402631 loops=1)

edit 2:

I took Richard's advice and did a select count(*) with the filters and verified that the problem is in there application as you can see in the plan

Aggregate  (cost=2481142.25..2481142.28 rows=1 width=0) (actual time=84766.815..84766.815 rows=1 loops=1)
  ->  Seq Scan on tbm_user cf  (cost=0.00..2480815.50 rows=130703 width=0) (actual time=0.097..84425.880 rows=1322248 loops=1)
      Filter: (...)

edit 3: I followed Daniels advice and by removing the fitlering clauses one by one i figured what's causing the slow down, 2 of the filters where casting text to timestamp and comparing with another timestamp, without these the query needs 20 seconds instead of 90.

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closed as off-topic by mu is too short, Denis de Bernardy, Chris Travers, Andrew Barber Nov 26 '13 at 19:51

This question appears to be off-topic. The users who voted to close gave this specific reason:

  • "Questions concerning problems with code you've written must describe the specific problem — and include valid code to reproduce it — in the question itself. See SSCCE.org for guidance." – Denis de Bernardy, Chris Travers, Andrew Barber
If this question can be reworded to fit the rules in the help center, please edit the question.

1  
Needs... More... Info... A lot of it. Schemas, queries, the full plans, type of hard drives, etc. Seeing your current description of the problem and how the stats are, 90s doesn't necessarily sound slow. –  Denis de Bernardy Oct 11 '13 at 5:52
    
You said the table was cached, so the SAN shouldn't matter either way. Given the speed difference though, it's either (1) the comparisons themselves or (2) the unpacking/shipping values about that are slowing things. Try a count(*) with your filter conditions and see what speed that gives. Without details of the table/conditions though vague suggestions like this are all people can offer. –  Richard Huxton Oct 11 '13 at 7:22
    
Yes, the table is mostly cached and the SAN should not come into place here, i mentioned it because i was asked about the disk. I ll try your suggestion about the count with the filter and report back, thanks –  nvrs Oct 11 '13 at 7:58
    
@nvrs: without posting more data, including the full boat load of filters and join, you're essentially guaranteed to have no response. –  Denis de Bernardy Oct 11 '13 at 10:44
1  
The timings of the count(*) queries with and without the filter prove that the part that matters is the part you're not showing -- the WHERE clause. There might be something you can do to speed that up, but without seeing what you are doing, nobody can make any specific suggestions. I will mention that I have seen very simple changes in which functions are used make a huge difference in PostGIS. Also, sometimes people think they need to scan the whole table when a KNN index search will also work -- and be much faster. –  kgrittn Oct 11 '13 at 15:42

2 Answers 2

I followed Daniels advice and by removing the fitlering clauses one by one i figured what's causing the slow down, 2 of the filters where casting text to timestamp and comparing with another timestamp, without these the query needs 20 seconds instead of 90.

You should alter table to cast the fields to their appropriate type, and then add an index on that field.

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Hi, thanks for the advice but unfortunately that's not an option unless a non trivial code refactoring on the app is done. We new that this has been a cause for less than stellar performance for a while, we just hadn't realized that it would cause such a big hit –  nvrs Nov 26 '13 at 8:18
    
Also, for those suggesting indexes i am telling you they won't help, because a) we can't add any more indexes to every column of a table that's already hot from updates (query filters almost every column) and b) the requirement of the query is to scan every row, apply filters that have very high selectivity and then randomly sample from the outcome a subset (typically filters filter out 50% of the tuples and there is no obvious single one that does that). Indexes won't work. –  nvrs Nov 26 '13 at 8:23

I followed Daniels advice and by removing the fitlering clauses one by one i figured what's causing the slow down, 2 of the filters where casting text to timestamp and comparing with another timestamp, without these the query needs 20 seconds instead of 90.

That is a problem. Try wrapping the casting in an immutable function that can be run early on, and if that is not possible, try very hard to get consistent data types across your database. Joining across different datatypes very often renders indexes unusable.

The above assumes that the text values are coming in as query parameters, not via a join. And it also assumes usable indexes on these or other criteria.

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That won't help. He needs to change the column definition to something more sane. And then add an index on it. –  Denis de Bernardy Nov 26 '13 at 7:41
    
The post is full of insufficient information. We don't know what indexes he has or where the text values come from. It might help. It might not. It depends very much on specifics which are missing from the question. –  Chris Travers Nov 26 '13 at 7:45
    
(edited to state my assumptions clearly) –  Chris Travers Nov 26 '13 at 7:46
    
I'm aware that the question was awkward and should get many more -1 votes and closed. But the fact of the matter is that an immutable function, while helpful for query planning, is of absolutely no use here. If PG is casting the criteria to text, it means the column contains text rather than a timestamp. One of OP's where clauses likely contains a call to now() or something to that order. –  Denis de Bernardy Nov 26 '13 at 7:51
    
Denis: Is that necessarily true? Given that there are no queries, how do we know there are no explicit casts? That it is taking something cast to text and then comparing to a timestamp suggests to my reading that this is not an automatic cast. –  Chris Travers Nov 26 '13 at 7:53

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