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There is a table:


Approximate 100.000 doc_id and 27.000.000 rows.

Majority query on this table - searching documents similar to current document:

select 10 documents with maximum of 
     (count common to current document value)/(count ov values in document).

Nowadays we use PostgreSQL. Table weight (with index) ~1,5 GB. Average query time ~0.5s - it is to hight. And, for my opinion this time will grow exponential with growing of database.

Should I transfer all this to NoSQL base, if so, what?


SELECT D.doc_id as doc_id,
  (count(D.doc_crc32) *1.0 / testing.get_count_by_doc_id(D.doc_id))::real as avg_doc 
FROM testing.text_attachment D
WHERE D.doc_id !=29758 -- 29758 - is random id
  AND D.doc_crc32 IN (select testing.get_crc32_rows_by_doc_id(29758)) -- get_crc32... is IMMUTABLE
GROUP BY D.doc_id

Limit  (cost=95.23..95.26 rows=10 width=8) (actual time=1849.601..1849.641 rows=10 loops=1)
   ->  Sort  (cost=95.23..95.28 rows=20 width=8) (actual time=1849.597..1849.609 rows=10 loops=1)
         Sort Key: (((((count(d.doc_crc32))::numeric * 1.0) / (testing.get_count_by_doc_id(d.doc_id))::numeric))::real)
         Sort Method:  top-N heapsort  Memory: 25kB
         ->  HashAggregate  (cost=89.30..94.80 rows=20 width=8) (actual time=1211.835..1847.578 rows=876 loops=1)
               ->  Nested Loop  (cost=0.27..89.20 rows=20 width=8) (actual time=7.826..928.234 rows=167771 loops=1)
                     ->  HashAggregate  (cost=0.27..0.28 rows=1 width=4) (actual time=7.789..11.141 rows=1863 loops=1)
                           ->  Result  (cost=0.00..0.26 rows=1 width=0) (actual time=0.130..4.502 rows=1869 loops=1)
                     ->  Index Scan using crc32_idx on text_attachment d  (cost=0.00..88.67 rows=20 width=8) (actual time=0.022..0.236 rows=90 loops=1863)
                           Index Cond: (d.doc_crc32 = (testing.get_crc32_rows_by_doc_id(29758)))
                           Filter: (d.doc_id <> 29758)
 Total runtime: 1849.753 ms
(12 rows)
share|improve this question
Please edit the description to explain what the actual problem is with what you've described. Ideally, what the goal is; the criterion for choosing between different systems. – bignose Mar 21 '10 at 9:32
And what has EXPLAIN to say about your queries? Without a queryplan, nobody knows if you could speed things up. And without the proper indexes and settings in postgresql.conf, the database has to be slow. As said below, 1.5GB is nothing to worry about, has to be very fast. Unless you do the wrong things. – Frank Heikens Mar 21 '10 at 10:31
What is the function get_count_by_doc_id doing? – MkV Mar 22 '10 at 10:53
It culate rows count with current doc_id: CREATE OR REPLACE FUNCTION testing.get_count_by_doc_id(integer) RETURNS bigint AS 'SELECT count(doc_id) FROM testing.text_attachment WHERE doc_id = $1' LANGUAGE 'sql' IMMUTABLE; – potapuff Mar 23 '10 at 9:20
up vote 3 down vote accepted

1.5 GByte is nothing. Serve from ram. Build a datastructure that helps you searching.

share|improve this answer

I don't think your main problem here is the kind of database you're using but the fact that you don't in fact have an "index" for what you're searching: similarity between documents.

My proposal is to determine once which are the 10 documents similar to each of the 100.000 doc_ids and cache the result in a new table like this:


where you'll insert 10 rows per document each of them representing the 10 best matches for it. You'll get 400.000 rows which you can directly access by index which should take down search time to something like O(log n) (depending on index implementation).

Then, on each insertion or removal of a document (or one of its values) you iterate through the documents and update the new table accordingly.

e.g. when a new document is inserted: for each of the documents already in the table

  1. you calculate its match score and
  2. if the score is higher than the lowest score of the similar documents cached in the new table you swap in the similar_doc and score of the newly inserted document
share|improve this answer

If you're getting that bad performance out of PostgreSQL, a good start would be to tune PostgreSQL, your query and possibly your datamodel. A query like that should serve a lot faster on such a small table.

share|improve this answer

First, is 0.5s a problem or not? And did you already optimize your queries, datamodel and configuration settings? If not, you can still get better performance. Performance is a choice.

Besides speed, there is also functionality, that's what you will loose.


What about pushing the function to a JOIN:

    D.doc_id as doc_id,
    (count(D.doc_crc32) *1.0 / testing.get_count_by_doc_id(D.doc_id))::real as avg_doc 
    testing.text_attachment D
        JOIN (SELECT testing.get_crc32_rows_by_doc_id(29758) AS r) AS crc ON D.doc_crc32 = r
    D.doc_id <> 29758
GROUP BY D.doc_id
share|improve this answer
Yes, 0.5s is a problem, because expected in the near future a significant increase in the size of the table, so time for query will grow to. Sure, db and queries was optimized. There is no other functionality on this table, except searching similar documents. – potapuff Mar 21 '10 at 10:31
this query reduce -> HashAggregate (cost=0.27..0.28 rows=1 width=4) (actual time=7.926..11.324 rows=1863 loops=1) line, but save only few milliseconds. – potapuff Mar 23 '10 at 9:29

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