/aqo

Adaptive query optimization for PostgreSQL

Primary LanguageCOtherNOASSERTION

Adaptive query optimization

Adaptive query optimization is the extension of standard PostgreSQL cost-based query optimizer. Its basic principle is to use query execution statistics for improving cardinality estimation. Experimental evaluation shows that this improvement sometimes provides an enormously large speed-up for rather complicated queries.

Installation

The module works with PostgreSQL 9.6 and above.

The module contains a patch and an extension. Patch has to be applied to the sources of PostgresSQL. Patch affects header files, that is why PostgreSQL must be rebuilt completely after applying the patch (make clean and make install). Extension has to be unpacked into contrib directory and then to be compiled and installed with make install.

cd postgresql-9.6                                                # enter postgresql source directory
git clone https://github.com/tigvarts/aqo.git contrib/aqo        # clone aqo into contrib
patch -p1 --no-backup-if-mismatch < contrib/aqo/aqo_pg9_6.patch  # patch postgresql
make clean && make && make install                               # recompile postgresql
cd contrib/aqo                                                   # enter aqo directory
make && make install                                             # install aqo
make check                                              # check whether it works correctly (optional)

For PostgreSQL 10 and above use aqo_pg10.patch instead of aqo_pg9_6.patch

In your database:

CREATE EXTENSION aqo;

Modify your postgresql.conf:

shared_preload_libraries = 'aqo'

and restart PostgreSQL.

It is essential that library is preloaded during server startup, because adaptive query optimization must be enabled on per-cluster basis instead of per-database.

Usage

The typical case is follows: you have complicated query, which executes too long. EXPLAIN ANALYZE shows, that the possible reason is bad cardinality estimnation.

Example:

                                                                             QUERY PLAN
--------------------------------------------------------------------------------------------------------------------------------------------------------------------
 Aggregate  (cost=15028.15..15028.16 rows=1 width=96) (actual time=8168.188..8168.189 rows=1 loops=1)
   ->  Nested Loop  (cost=8.21..15028.14 rows=1 width=48) (actual time=199.500..8167.708 rows=88 loops=1)
         ->  Nested Loop  (cost=7.78..12650.75 rows=5082 width=37) (actual time=0.682..3015.721 rows=785477 loops=1)
               Join Filter: (t.id = ci.movie_id)
               ->  Nested Loop  (cost=7.21..12370.11 rows=148 width=41) (actual time=0.666..404.791 rows=14165 loops=1)
                     ->  Nested Loop  (cost=6.78..12235.17 rows=270 width=20) (actual time=0.645..146.855 rows=35548 loops=1)
                           ->  Seq Scan on keyword k  (cost=0.00..3632.40 rows=8 width=20) (actual time=0.126..29.117 rows=8 loops=1)
                                 Filter: (keyword = ANY ('{superhero,sequel,second-part,marvel-comics,based-on-comic,tv-special,fight,violence}'::text[]))
                                 Rows Removed by Filter: 134162
                           ->  Bitmap Heap Scan on movie_keyword mk  (cost=6.78..1072.32 rows=303 width=8) (actual time=0.919..13.800 rows=4444 loops=8)
                                 Recheck Cond: (keyword_id = k.id)
                                 Heap Blocks: exact=23488
                                 ->  Bitmap Index Scan on keyword_id_movie_keyword  (cost=0.00..6.71 rows=303 width=0) (actual time=0.535..0.535 rows=4444 loops=8)
                                       Index Cond: (keyword_id = k.id)
                     ->  Index Scan using title_pkey on title t  (cost=0.43..0.49 rows=1 width=21) (actual time=0.007..0.007 rows=0 loops=35548)
                           Index Cond: (id = mk.movie_id)
                           Filter: (production_year > 2000)
                           Rows Removed by Filter: 1
               ->  Index Scan using movie_id_cast_info on cast_info ci  (cost=0.56..1.47 rows=34 width=8) (actual time=0.009..0.168 rows=55 loops=14165)
                     Index Cond: (movie_id = mk.movie_id)
         ->  Index Scan using name_pkey on name n  (cost=0.43..0.46 rows=1 width=19) (actual time=0.006..0.006 rows=0 loops=785477)
               Index Cond: (id = ci.person_id)
               Filter: (name ~~ '%Downey%Robert%'::text)
               Rows Removed by Filter: 1
 Planning time: 40.047 ms
 Execution time: 8168.373 ms
(26 rows)

Then you can use the following pattern:

BEGIN;
SET aqo.mode = 'learn';
EXPLAIN ANALYZE <query>;
RESET aqo.mode;
-- ... do EXPLAIN ANALYZE <query> while cardinality estimations in the plan are bad
--                                      and the plan is bad
COMMIT;

Warning: execute query until plan stops changing!

When the plan stops changing, you can often observe performance improvement:

                                                                              QUERY PLAN
-----------------------------------------------------------------------------------------------------------------------------------------------------------------------
 Aggregate  (cost=112883.89..112883.90 rows=1 width=96) (actual time=738.731..738.731 rows=1 loops=1)
   ->  Nested Loop  (cost=1.85..112883.23 rows=88 width=48) (actual time=73.826..738.618 rows=88 loops=1)
         ->  Nested Loop  (cost=1.43..110496.69 rows=5202 width=36) (actual time=72.917..723.994 rows=5202 loops=1)
               Join Filter: (t.id = mk.movie_id)
               ->  Nested Loop  (cost=0.99..110046.39 rows=306 width=40) (actual time=72.902..720.310 rows=306 loops=1)
                     ->  Nested Loop  (cost=0.56..109820.42 rows=486 width=19) (actual time=72.856..717.429 rows=486 loops=1)
                           ->  Seq Scan on name n  (cost=0.00..107705.93 rows=2 width=19) (actual time=72.819..717.148 rows=2 loops=1)
                                 Filter: (name ~~ '%Downey%Robert%'::text)
                                 Rows Removed by Filter: 4167489
                           ->  Index Scan using person_id_cast_info on cast_info ci  (cost=0.56..1054.82 rows=243 width=8) (actual time=0.024..0.091 rows=243 loops=2)
                                 Index Cond: (person_id = n.id)
                     ->  Index Scan using title_pkey on title t  (cost=0.43..0.45 rows=1 width=21) (actual time=0.005..0.006 rows=1 loops=486)
                           Index Cond: (id = ci.movie_id)
                           Filter: (production_year > 2000)
                           Rows Removed by Filter: 0
               ->  Index Scan using movie_id_movie_keyword on movie_keyword mk  (cost=0.43..1.26 rows=17 width=8) (actual time=0.004..0.008 rows=17 loops=306)
                     Index Cond: (movie_id = ci.movie_id)
         ->  Index Scan using keyword_pkey on keyword k  (cost=0.42..0.45 rows=1 width=20) (actual time=0.003..0.003 rows=0 loops=5202)
               Index Cond: (id = mk.keyword_id)
               Filter: (keyword = ANY ('{superhero,sequel,second-part,marvel-comics,based-on-comic,tv-special,fight,violence}'::text[]))
               Rows Removed by Filter: 1
 Planning time: 51.333 ms
 Execution time: 738.904 ms
(23 rows)

The settings system in AQO works with normalized queries, i. e. queries with removed constants. For example, the normalized version of SELECT * FROM tbl WHERE a < 25 AND b = 'str'; is SELECT * FROM tbl WHERE a < CONST and b = CONST;

So the queries have equal normalization if and only if they differ only in their constants.

Each normalized query has its own hash. The correspondence between normalized query hash and query text is stored in aqo_query_texts table:

SELECT * FROM aqo_query_texts;
 query_hash  |                                query_text
-------------+----------------------------------------------------------------------------
           0 | COMMON feature space (do not delete!)
 -1104999304 | SELECT                                                                    +
             |     MIN(k.keyword) AS movie_keyword,                                      +
             |     MIN(n.name) AS actor_name,                                            +
             |     MIN(t.title) AS hero_movie                                            +
             | FROM                                                                      +
             |     cast_info AS ci,                                                      +
             |     keyword AS k,                                                         +
             |     movie_keyword AS mk,                                                  +
             |     name AS n, title AS t                                                 +
             | WHERE                                                                     +
             |     k.keyword in ('superhero', 'sequel', 'second-part', 'marvel-comics',  +
             |                   'based-on-comic', 'tv-special', 'fight', 'violence') AND+
             |     n.name LIKE '%Downey%Robert%' AND                                     +
             |     t.production_year > 2000 AND                                          +
             |     k.id = mk.keyword_id AND                                              +
             |     t.id = mk.movie_id AND                                                +
             |     t.id = ci.movie_id AND                                                +
             |     ci.movie_id = mk.movie_id AND                                         +
             |     n.id = ci.person_id;
(2 rows)

The most useful settings are learn_aqo and use_aqo. In the example pattern above, if you want to freeze the plan and prevent aqo from further learning from queries execution statistics (which is not recommended, especially if the data tends to change significantly), you can do UPDATE SET aqo_learn=false WHERE query_hash = <query_hash>; before commit.

The more detailed reference of AQO settings mechanism is available further.

Advanced tuning

AQO has two kind of settings: per-query-type settings are stored in aqo_queries table in the database and also there is GUC variable aqo.mode.

If aqo.mode = 'disabled', AQO is disabled for all queries, so PostgreSQL use its own cardinality estimations during query optimization. It is useful if you want to disable aqo for all queries temporarily in the current session or for the whole cluster but not to remove or to change collected statistics and settings.

Otherwise, if the normalized query hash is stored in aqo_queries, AQO uses settings from there to process the query.

Those settings are:

Learn_aqo setting shows whether AQO collects statistics for next execution of the same query type. Enabled value may have computational overheads, but it is essential when AQO model does not fit the data. It happens at the start of AQO for the new query type or when the data distribution in database is changed.

Use_aqo setting shows whether AQO cardinalities prediction be used for next execution of such query type. Disabling of AQO usage is reasonable for that cases in which query execution time increases after applying AQO. It happens sometimes because of cost models incompleteness.

Fspace_hash setting is for extra advanced AQO tuning. It may be changed manually to optimize a number of queries using the same model. It may decrease the amount of memory for models and even the query execution time, but also it may cause the bad AQO's behavior, so please use it only if you know exactly what you do.

Auto_tuning setting identifies whether AQO tries to tune learn_aqo and use_aqo settings for the query on its own.

If the normalized query hash is not stored in aqo_queries, AQO behaviour depends on the aqo.mode.

If aqo.mode is 'controlled', the unknown query is just ignored, i. e. the standard PostgreSQL optimizer is used and the query execution statistics is ignored.

If aqo.mode is 'learn', then the normalized query hash appends to aqo_queries with the default settings learn_aqo=true, use_aqo=true, auto_tuning=false, and fspace_hash = query_hash which means that AQO uses separate machine learning model for this query type optimization. After that the query is processed as if it already was in aqo_queries.

Aqo.mode = 'intelligent' behaves similarly. The only difference is that default auto_tunung variable in this case is true.

if aqo.mode is 'forced', the query is not appended to aqo_queries table, but uses special COMMON feature space with identificator fspace=0 for the query optimization and update COMMON machine learning model with the execution statistics of this query.

Comments on AQO modes

'controlled' mode is the default mode to use in production, because it uses standard PostgreSQL optimizer for all unknown query types and uses predefined settings for the known ones.

'learn' mode is a base mode necessary to memorize new normalized query. The usage pattern is follows

SET aqo.mode='learn'
<query>
SET aqo.mode='controlled';
<query>
<query>
...
-- unitl convergence

'learn' mode is not recommended to be used permanently for the whole cluster, because it enables AQO for every query type, even for those ones that don't need it, and that may lead to unnecessary computational overheads and performance degradation.

'intelligent' mode is the attempt to do machine learning optimizations completelly automatically in a self-tuning manner, i.e. determine for which queries it is reasonable to use machine learing models and for which it is not. If you want to rely completely on it, you may use it on per-cluster basis: just add line aqo.mode = 'intelligent' into your postgresql.conf. Nevertheless, it may still work not very good, so we do not recommend to use it for production.

For handling workloads with dynamically generated query structures the forced mode aqo.mode = 'forced' is provided. We cannot guarantee overall performance improvement with this mode, but you may try it nevertheless. On one hand it lacks of intelligent tuning, so the performance for some queries may even decrease, on the other hand it may work for dynamic workload and consumes less memory than the 'intelligent' mode.

Recipes

If you want to freeze optimizer's behavior (i. e. disable learning under workload), use

UPDATE aqo_queries SET learn_aqo=false, auto_tuning=false;.

If you want to disable AQO for all queries, you may use

UPDATE aqo_queries SET use_aqo=false, learn_aqo=false, auto_tuning=false;.

If you want to disable aqo for all queries temporarily in the current session or for the whole cluster but not to remove or to change collected statistics and settings, you may use disabled mode:

SET aqo.mode = 'disabled';

or

ALTER SYSTEM SET aqo.mode = 'disabled'.

Limitations

Note that the extension doesn't work with any kind of temporary objects, because in query normalization AQO uses the inner OIDs of objects, which are different for dynamically generated objects, even if their names are equal. That is why 'intelligent', 'learn' and 'forced' aqo modes cannot be used as the system setting with such objects in the workload. In this case you can use aqo.mode='controlled' and use another aqo.mode inside the transaction to store settings for the queries without temporary objects.

The extension doesn't collect statistics on replicas, because replicas are read-only. It may use query execution statistics from master if the replica is binary, nevertheless. The version which overcomes the replica usage limitations is comming soon.

'learn' and 'intelligent' modes are not supposed to work on per-cluster basis with queries with dynamically generated structure, because they memorize all normalized query hashes, which are different for all queries in such workload. Dynamically generated constants are okay.

License

© Postgres Professional, 2016-2018. Licensed under The PostgreSQL License.

Reference

The paper on the proposed method is also under development, but the draft version with experiments is available here.