Optimizing Subqueries
Context
When an application runs an SQL statement to operate the database, a large number of subqueries are used because they are more clear than table join. Especially in complicated query statements, subqueries have more complete and independent semantics, which makes SQL statements clearer and easier to understand. Therefore, subqueries are widely used.
In GaussDB, subqueries can also be called sublinks based on the location of subqueries in SQL statements.
- Subquery: corresponds to a range table (RangeTblEntry) in the query parse tree. That is, a subquery is a SELECT statement following immediately after the FROM keyword.
- Sublink: corresponds to an expression in the query parsing tree. That is, a sublink is a statement in the WHERE or ON clause or in the target list.
In conclusion, a subquery is a RangeTblEntry and a sublink is an expression in the query parsing tree. A sublink can be found in constraint conditions and expressions. In GaussDB, sublinks can be classified into the following types:
- exist_sublink: corresponds to the EXIST and NOT EXIST statements.
- any_sublink: corresponds to the op ANY(SELECT…) statement. op can be the <, >, or = operator. IN/NOT IN (SELECT...) also belongs to this type.
- all_sublink: corresponds to the op ALL(SELECT...) statement. op can be the <, >, or = operator.
- rowcompare_sublink: corresponds to the RECORD op (SELECT...) statement.
- expr_sublink: corresponds to the (SELECT with a single target list item...) statement.
- array_sublink: corresponds to the ARRAY(SELECT...) statement.
- cte_sublink: corresponds to the WITH(...) query statement.
The exist_sublink and any_sublink are pulled up by the optimization engine of GaussDB. In addition, expr_sublink can also be pulled up. However, because of the flexible use of subqueries in SQL statements, complex subqueries may affect query performance. If you do not want to pull up expr_sublink, set the GUC parameter rewrite_rule. Subqueries are classified into non-correlated subqueries and correlated subqueries.
- Non-correlated subqueries
The execution of a subquery is independent from attributes of the outer query. In this way, a subquery can be executed before outer queries.
Example:
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gaussdb=# select t1.c1,t1.c2 from t1 where t1.c1 in ( select c2 from t2 where t2.c2 IN (2,3,4) ); QUERY PLAN --------------------------------------------------------------- Streaming (type: GATHER) Node/s: All datanodes -> Hash Right Semi Join Hash Cond: (t2.c2 = t1.c1) -> Streaming(type: REDISTRIBUTE) Spawn on: All datanodes -> Seq Scan on t2 Filter: (c2 = ANY ('{2,3,4}'::integer[])) -> Hash -> Seq Scan on t1 (10 rows)
- Correlated subqueries
The execution of a subquery depends on some attributes (used as AND conditions of the subquery) of outer queries. In the following example, t1.c1 in the t2.c1 = t1.c1 condition is a correlated attribute. Such a subquery depends on outer queries and needs to be executed once for each outer query.
Example:
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gaussdb=# select t1.c1,t1.c2 from t1 where t1.c1 in ( select c2 from t2 where t2.c1 = t1.c1 AND t2.c2 in (2,3,4) ); QUERY PLAN ----------------------------------------------------------------------- Streaming (type: GATHER) Node/s: All datanodes -> Seq Scan on t1 Filter: (SubPlan 1) SubPlan 1 -> Result Filter: (t2.c1 = t1.c1) -> Materialize -> Streaming(type: BROADCAST) Spawn on: All datanodes -> Seq Scan on t2 Filter: (c2 = ANY ('{2,3,4}'::integer[])) (12 rows)
Sublink Optimization on GaussDB
To optimize a sublink, a subquery is pulled up to join with tables in outer queries, preventing the subquery from being converted into a plan involving subplans and broadcast. You can run the EXPLAIN statement to check whether a sublink is converted into the combination of a subplan and broadcast.
Example
- Sublink-release scenarios supported by GaussDB
- Pulling up the IN sublink
- Pulling up the EXISTS sublink
The WHERE clause must contain a column in the outer query. Other parts of the subquery cannot contain the column. Other restrictions are as follows:
- The subquery must contain the FROM clause.
- The subquery cannot contain the WITH clause.
- The subquery cannot contain aggregate functions.
- The subquery cannot contain a SET, SORT, LIMIT, WindowAgg, or HAVING operation.
- The subquery cannot contain volatile functions.
- Pulling up an equivalent correlated query containing aggregate functions
The WHERE condition of the subquery must contain a column from the outer query. Equivalence comparison must be performed between this column and related columns in tables of the subquery. These conditions must be connected using AND. Other parts of the subquery cannot contain the column. Other restrictions are as follows:
- The columns in the expression in the WHERE condition of the subquery must exist in tables.
- After the SELECT keyword of the subquery, there must be only one output column. The output column must be an aggregate function (for example, MAX), and the parameter (for example, t2.c2) of the aggregate function cannot be columns of a table (for example, t1) in outer queries. The aggregate function cannot be COUNT.
For example, the following subquery can be pulled up:
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select * from t1 where c1 >( select max(t2.c1) from t2 where t2.c1=t1.c1 );
The following subquery cannot be pulled up because the subquery has no aggregate function:
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select * from t1 where c1 >( select t2.c1 from t2 where t2.c1=t1.c1 );
The following subquery cannot be pulled up because the subquery has two output columns:
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select * from t1 where (c1,c2) >( select max(t2.c1),min(t2.c2) from t2 where t2.c1=t1.c1 );
- The subquery must be a FROM clause.
- The subquery cannot contain a GROUP BY, HAVING, or SET operation.
- The subquery can only be an inner join.
- The target list of the subquery cannot contain the function that returns a set.
- The WHERE condition of the subquery must contain a column from the outer query. Equivalence comparison must be performed between this column and related columns in tables of the subquery. These conditions must be connected using AND. Other parts of the subquery cannot contain the column. For example, the following innermost sublink can be pulled up:
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select * from t3 where t3.c1=( select t1.c1 from t1 where c1 >( select max(t2.c1) from t2 where t2.c1=t1.c1 ));
If another condition is added to the subquery in the previous example, the subquery cannot be pulled up because the subquery references to the column in the outer query. Example:
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select * from t3 where t3.c1=( select t1.c1 from t1 where c1 >( select max(t2.c1) from t2 where t2.c1=t1.c1 and t3.c1>t2.c2 ));
- Pulling up a sublink in the OR clause
If the WHERE condition contains an EXIST correlated sublink connected by OR:
Example:
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select a, c from t1 where t1.a = (select avg(a) from t3 where t1.b = t3.b) or exists (select * from t4 where t1.c = t4.c);
The process of pulling up such a sublink is as follows:
- Extract opExpr from the OR clause in the WHERE condition. The value is t1.a = (select avg(a) from t3 where t1.b = t3.b).
- The opExpr contains a subquery. If the subquery can be pulled up, the subquery is rewritten as select avg(a), t3.b from t3 group by t3.b, generating the NOT NULL condition t3.b is not null. The opExpr is replaced by this NOT NULL condition. In this case, the SQL statement changes to:
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select a, c from t1 left join (select avg(a) avg, t3.b from t3 group by t3.b) as t3 on (t1.a = avg and t1.b = t3.b) where t3.b is not null or exists (select * from t4 where t1.c = t4.c);
- Extract the EXISTS sublink exists (select * from t4 where t1.c = t4.c) from the OR clause to check whether the sublink can be pulled up. If it can be pulled up, it is converted into select t4.c from t4 group by t4.c, generating the NOT NULL condition t4.c is not null. In this case, the SQL statement changes to:
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select t1.a, t1.c from t1 left join (select avg(a) avg, t3.b from t3 group by t3.b) as t3 on (t1.a = avg and t1.b = t3.b) left join (select t5.c from t5 group by t5.c) as t5 on (t1.c = t5.c) where t3.b is not null or t5.c is not null;
- Sublink-release scenarios not supported by GaussDB
Except the sublinks described above, all the other sublinks cannot be pulled up. In this case, a join subquery is planned as the combination of subplans and broadcast. As a result, if inner tables have a large amount of data, query performance may be poor.
If a correlated subquery joins with two tables in outer queries, the subquery cannot be pulled up. You need to change the outer query into a WITH clause and then perform the join.
Example:
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select distinct t1.a, t2.a from t1 left join t2 on t1.a=t2.a and not exists (select a,b from test1 where test1.a=t1.a and test1.b=t2.a);
The outer query is changed into:
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with temp as ( select * from (select t1.a as a, t2.a as b from t1 left join t2 on t1.a=t2.a) ) select distinct a,b from temp where not exists (select a,b from test1 where temp.a=test1.a and temp.b=test1.b);
- The subquery (without COUNT) in the target list cannot be pulled up.
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gaussdb=# explain (costs off) select (select c2 from t2 where t1.c1 = t2.c1) ssq, t1.c2 from t1 where t1.c2 > 10;
The execution plan is as follows:
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gaussdb=# explain (costs off) select (select c2 from t2 where t1.c1 = t2.c1) ssq, t1.c2 from t1 where t1.c2 > 10; QUERY PLAN ------------------------------------------------------ Streaming (type: GATHER) Node/s: All datanodes -> Seq Scan on t1 Filter: (c2 > 10) SubPlan 1 -> Result Filter: (t1.c1 = t2.c1) -> Materialize -> Streaming(type: BROADCAST) Spawn on: All datanodes -> Seq Scan on t2 (11 rows)
The correlated subquery is displayed in the target list (query return list). Values need to be returned even if the condition t1.c1=t2.c1 is not met. Therefore, use a right outer join to join t2 and t1 so that the SSQ can return padding values when the condition t1.c1=t2.c1 is not met.
ScalarSubQuery (SSQ) and Correlated-ScalarSubQuery (CSSQ) are described as follows:
- SSQ: a sublink that returns a scalar value of a single row with a single column
- CSSQ: an SSQ containing correlation conditions
The preceding SQL statement can be changed into:
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with ssq as ( select * from t1 where t1.c2 > 10 ) select t2.c2,ssq.c2 from t2 right join ssq on ssq.c1 = t2.c1;
The execution plan after the change is as follows:
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QUERY PLAN --------------------------------------- Streaming (type: GATHER) Node/s: All datanodes -> Hash Right Join Hash Cond: (t2.c1 = t1.c1) -> Seq Scan on t2 -> Hash -> Seq Scan on t1 Filter: (c2 > 10) (8 rows)
In the preceding example, the SSQ in the target list is pulled up to right join, preventing poor performance caused by the plan involving subplans and broadcast when the table (t2) in the subquery is too large.
- The subquery (with COUNT) in the target list cannot be pulled up.
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select (select count(*) from t2 where t2.c1=t1.c1) cnt, t1.c1, t3.c1 from t1,t3 where t1.c1=t3.c1 order by cnt, t1.c1;
The execution plan is as follows:
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QUERY PLAN ------------------------------------------------------------------ Streaming (type: GATHER) Node/s: All datanodes -> Sort Sort Key: ((SubPlan 1)), t1.c1 -> Hash Join Hash Cond: (t1.c1 = t3.c1) -> Seq Scan on t1 -> Hash -> Seq Scan on t3 SubPlan 1 -> Aggregate -> Result Filter: (t2.c1 = t1.c1) -> Materialize -> Streaming(type: BROADCAST) Spawn on: All datanodes -> Seq Scan on t2 (17 rows)
The correlated subquery is displayed in the target list (query return list). Values need to be returned even if the condition t1.c1=t2.c1 is not met. Therefore, use left outer join to join T1 and T2 so that SSQ can return padding values when the condition t1.c1=t2.c1 is not met. However, COUNT is used, which requires that 0 is returned when the condition is not met. Therefore, case-when NULL then 0 else count(*) can be used.
The preceding SQL statement can be changed into:
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with ssq as ( select count(*) cnt, c1 from t2 group by c1 ) select case when ssq.cnt is null then 0 else ssq.cnt end cnt, t1.c1, t3.c1 from t1 left join ssq on ssq.c1 = t1.c1,t3 where t1.c1 = t3.c1 order by ssq.cnt, t1.c1;
The execution plan after the change is as follows:
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QUERY PLAN ----------------------------------------------------- Streaming (type: GATHER) Node/s: All datanodes -> Sort Sort Key: (count(*)), t1.c1 -> Hash Join Hash Cond: (t1.c1 = t3.c1) -> Hash Left Join Hash Cond: (t1.c1 = t2.c1) -> Seq Scan on t1 -> Hash -> HashAggregate Group By Key: t2.c1 -> Seq Scan on t2 -> Hash -> Seq Scan on t3 (15 rows)
- Non-equivalent correlated subqueries cannot be pulled up.
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select t1.c1, t1.c2 from t1 where t1.c1 = (select agg() from t2.c2 > t1.c2);
Non-equivalent correlated subqueries cannot be pulled up. You can perform join twice (one CorrelationKey and one rownum self-join) to rewrite the statement.
You can rewrite the statement in either of the following ways:
- Subquery rewriting
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select t1.c1, t1.c2 from t1, ( select t1.rowid, agg() aggref from t1,t2 where t1.c2 > t2.c2 group by t1.rowid ) dt /* derived table */ where t1.rowid = dt.rowid AND t1.c1 = dt.aggref;
- CTE rewriting
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WITH dt as ( select t1.rowid, agg() aggref from t1,t2 where t1.c2 > t2.c2 group by t1.rowid ) select t1.c1, t1.c2 from t1, dt where t1.rowid = dt.rowid AND t1.c1 = dt.aggref;
- Subquery rewriting
- Currently, GaussDB does not have an effective way to provide globally unique row IDs for tables and intermediate result sets. Therefore, the rewriting is difficult. It is recommended that this issue is avoided at the service layer or by using t1.xc_nodeid + t1.ctid to associate row IDs. However, the high repetition rate of xc_nodeid leads to low association efficiency, and xc_node_id+ctid cannot be used as the join condition of a hash join.
- If the AGG type is COUNT(*), 0 is used for data padding when CASE-WHEN is not matched. If the type is not COUNT(*), NULL is used.
- CTE rewriting works better by using sharescan.
- The subquery (without COUNT) in the target list cannot be pulled up.
More Optimization Examples
Example 1: Change the base table to a replication table and create an index on the filter column.
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create table master_table (a int); create table sub_table(a int, b int); select a from master_table group by a having a in (select a from sub_table); |
In this example, a correlated subquery is contained. To improve the query performance, you can change sub_table to a replication table and create an index on the a column.
Example 2: Modify the SELECT statement to change the subquery to a join relationship between the main table and the parent query, or modify the subquery to improve the query performance. Ensure that the subquery to be used is semantically correct.
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gaussdb=# explain (costs off)select * from master_table as t1 where t1.a in (select t2.a from sub_table as t2 where t1.a = t2.b); QUERY PLAN ---------------------------------------------------------- Streaming (type: GATHER) Node/s: All datanodes -> Seq Scan on master_table t1 Filter: (SubPlan 1) SubPlan 1 -> Result Filter: (t1.a = t2.b) -> Materialize -> Streaming(type: BROADCAST) Spawn on: All datanodes -> Seq Scan on sub_table t2 (11 rows) |
In the preceding example, a subplan is used. To remove the subplan, you can modify the statement as follows:
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gaussdb=# explain(costs off) select * from master_table as t1 where exists (select t2.a from sub_table as t2 where t1.a = t2.b and t1.a = t2.a); QUERY PLAN -------------------------------------------------- Streaming (type: GATHER) Node/s: All datanodes -> Hash Semi Join Hash Cond: (t1.a = t2.b) -> Seq Scan on master_table t1 -> Hash -> Streaming(type: REDISTRIBUTE) Spawn on: All datanodes -> Seq Scan on sub_table t2 (9 rows) |
In this way, the subplan is replaced by the semi-join between the two tables, greatly improving the execution efficiency.
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