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I am new to tuning postgreSQL but have read this standard guide: https://wiki.postgresql.org/wiki/Tuning_Your_PostgreSQL_Server and have used pgtune to get some configuration recommendations. I am running postgreSQL 9.3 on Windows 8, am doing data analytics, and my desktop has 24GB RAM, an i7 4-core processor, and a 7200rpm hdd with 32GB SSD cache using intel smart response.

It seems as though postgreSQL is not taking full advantage of the computer and I am wondering what more I might need to do in terms of tuning.

pgtune made the following changes to postgresql.conf:

  • default_statistics_target = 100
  • maintenance_work_mem = 480MB
  • constraint_exclusion = on
  • checkpoint_completion_target = 0.9
  • effective_cache_size = 2816MB
  • work_mem = 96MB
  • wal_buffers = 32MB
  • checkpoint_segments = 64
  • shared_buffers = 960MB
  • max_connections = 20

Now I run this complex self join, count with group by query on the 5GB table "training" which has 100 million rows and four integer columns:

SELECT t1.m_id, t2.m_id, count(*)
FROM training t1, training t2
WHERE t1.u_id = t2.u_id AND t1.m_id < t2.m_id
GROUP BY t1.m_id, t2.m_id

EXPLAIN revealed the following query plan:

GroupAggregate  (cost=4984590388.65..5216672318.82 rows=25381444 width=8)
  ->  Sort  (cost=4984590388.65..5042547417.59 rows=23182811573 width=8)
        Sort Key: t1.m_id, t2.m_id
        ->  Nested Loop  (cost=0.57..676446040.92 rows=23182811573 width=8)
              ->  Seq Scan on training t1  (cost=0.00..1621754.12 rows=99072112 width=8)
              ->  Index Only Scan using training_u_id_m_id_idx on training t2  (cos=0.57..4.90 rows=191 width=8)
                    Index Cond: ((u_id = t1.u_id) AND (m_id > t1.m_id))

It has been running for 8 hours, but what interested me is what task manager revealed. The PostgreSQL Server process is using only:

  • 15% CPU
  • 6.1% Memory (about 512MB)
  • 3.5% Disk

No other processes are taking significant amounts of resources. It surprises me that postgreSQL would not use more of the available resources given the complexity of the query, does anyone have an idea of what might be going on? Do my pgtune values seem good?

I've done a little research as well which has told me that:

  1. On Windows shared_buffers should not be greater than 512MB, and that system cache should be used instead. Question: Do I have to somehow tell Windows to allocate system cache to postgreSQL or will this happen automatically if postgreSQL requests it?
  2. work_mem allows the database server to do sorts in RAM if it is large enough. Question: Is my work_mem large enough for this? How can I tell whether sorts are being done in RAM or on disk?

I would appreciate any insight at all to help speed up this query. Thanks!

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    "On Windows shared_buffers should not be greater than 512MB" - I think that was only true for 32bit systems. Using something like 2GB or 4GB isn't that unreasonable - maybe even more. Your effective_cache_size seems quite low for a 24GB system. In reality Windows will most probably use a lot more for the file cache. You can check this e.g. with ProcessExplorer. If you have a fast disk, you might try to lower random_page_cost to e.g. 2.5. And work_mem seems extremely high. Remember that this memory can be allocated multiple times for every session!
    – user330315
    Feb 9, 2014 at 14:45
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    @a_horse_with_no_name Thanks. Also I should have mentioned that since it's being used for data analytics, I really only run one query at a time. even still work_mem seems high? Feb 9, 2014 at 15:02
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    @RussellTaylor Haha, a multi-million iteration nested loop over a seqscan? It's not going to finish this century on a 7200rpm HDD. Throw as much work_mem as you can at this query without flushing too much out of the OS's buffer cache. And upgrade your HDD ;-) Feb 10, 2014 at 0:52
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    @CraigRinger It actually in finished in 30 hours believe it or not. I'll consider upgrading to an SSD and i'll definitely increase work_mem, thanks. Feb 10, 2014 at 19:21
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    Increasing work_mem worked?
    – Alexandre
    Dec 20, 2016 at 13:52

1 Answer 1

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I think effective_cache_size sounds way small, try 20GB. Also, for an analytics workload, work_mem is quite small. I'd set it to at 1GB if you are sure you won't have a lot of connections (and lowering max_connections even further will protect you from accidentally running a lot of them)

A single 7200rpm hdd seems quite inadequate for an analytics workload. I'm not familiar with "SSD cache using intel smart response", maybe that can help make up for it. Can you tell how much of our 5 GB table is getting cached on it?

You might also want increase effective_io_concurrency, not knowing how the SSD cache performs I don't know how much good that will do. But it could help and probably won't hurt.

The low memory usage is OK. Windows should be using the memory to cache the file data, which should help postgres a lot, but is not be charged to postgres.

I don't know where in Task Manager you find a "3.5% Disk", I can't find such a metric.

PostgreSQL 9.3 does not parallelize a single query to multiple CPUs (parallel query was added in version 9.6), so 15% CPU usage is not that far from being totally CPU bound.

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    effective_io_concurrency is currently only used for bitmap index scans, so it's not going to help anyway. Feb 10, 2014 at 0:51
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    I had thought it was using a bitmap scan, but I must have confused this query with a different one I was thinking about yesterday. In any case, it probably ought to be using one if it really returning 191 rows per loop and if effective_io_concurrency is > 1, but the planner is not smart enough to do that yet.
    – jjanes
    Feb 10, 2014 at 17:22
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    @jjanes thanks for the answer. For 3.5% disk my task manager has the columns: CPU, Memory, Disk, Network in the processes tab. Any idea about shared_buffers and whether it's still the case that going past 512MB is ineffective in Windows? Feb 10, 2014 at 19:49
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    @jjanes just a quick note, effective_io_concurrency is not settable on Windows systems, regardless of whether it is 32- or 64-bit. This holds for Windows up to version 10 and PostgreSQL up to version 10. It's something to do with there being no posix_fadvise function, but that's above my pay grade so I can't extrapolate.
    – e_i_pi
    Jun 6, 2018 at 3:09

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