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Posted to issues@calcite.apache.org by "Gautam Kumar Parai (JIRA)" <ji...@apache.org> on 2016/09/10 20:25:20 UTC

[jira] [Commented] (CALCITE-1288) Avoid doing the same join twice if count(distinct) exists

    [ https://issues.apache.org/jira/browse/CALCITE-1288?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=15480405#comment-15480405 ] 

Gautam Kumar Parai commented on CALCITE-1288:
---------------------------------------------

[~julianhyde] I have updated the pull request based on your comments. Can you please take a look? Thanks!

> Avoid doing the same join twice if count(distinct) exists
> ---------------------------------------------------------
>
>                 Key: CALCITE-1288
>                 URL: https://issues.apache.org/jira/browse/CALCITE-1288
>             Project: Calcite
>          Issue Type: Improvement
>            Reporter: Gautam Kumar Parai
>            Assignee: Gautam Kumar Parai
>
> When the query has one distinct aggregate and one or more non-distinct aggregates, the join instance need not produce the join-based plan. We can generate multi-phase aggregates. Another approach would be to use grouping sets. However, this transformation will be useful when systems don't support grouping sets and instead rely on the join-based plans (see the plan below)
> {code}
> select emp.empno, count(*), avg(distinct dept.deptno) 
> from sales.emp emp inner join sales.dept dept 
> on emp.deptno = dept.deptno 
> group by emp.empno
> LogicalProject(EMPNO=[$0], EXPR$1=[$1], EXPR$2=[$3])
>   LogicalJoin(condition=[IS NOT DISTINCT FROM($0, $2)], joinType=[inner])
>     LogicalAggregate(group=[{0}], EXPR$1=[COUNT()])
>       LogicalProject(EMPNO=[$0], DEPTNO0=[$9])
>         LogicalJoin(condition=[=($7, $9)], joinType=[inner])
>           LogicalTableScan(table=[[CATALOG, SALES, EMP]])
>           LogicalTableScan(table=[[CATALOG, SALES, DEPT]])
>     LogicalAggregate(group=[{0}], EXPR$2=[AVG($1)])
>       LogicalAggregate(group=[{0, 1}])
>         LogicalProject(EMPNO=[$0], DEPTNO0=[$9])
>           LogicalJoin(condition=[=($7, $9)], joinType=[inner])
>             LogicalTableScan(table=[[CATALOG, SALES, EMP]])
>             LogicalTableScan(table=[[CATALOG, SALES, DEPT]])
> {code}
> The more efficient form should look like 
> {code}
> select emp.empno, count(*), avg(distinct dept.deptno) 
> from sales.emp emp inner join sales.dept dept 
> on emp.deptno = dept.deptno 
> group by emp.empno
> LogicalAggregate(group=[{0}], EXPR$1=[SUM($2)], EXPR$2=[AVG($1)])
>   LogicalAggregate(group=[{0, 1}], EXPR$1=[COUNT()])
>     LogicalProject(EMPNO=[$0], DEPTNO0=[$9])
>       LogicalJoin(condition=[=($7, $9)], joinType=[inner])
>         LogicalTableScan(table=[[CATALOG, SALES, EMP]])
>         LogicalTableScan(table=[[CATALOG, SALES, DEPT]])
> {code}



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