[
https://issues.apache.org/jira/browse/CALCITE-4542?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
]
Konstantin Orlov updated CALCITE-4542:
--------------------------------------
Description:
When TopDownRuleDriver is enabled, suboptimal plan is chosen for query with
join.
We have our own convention and implementation of all necessary relations. A
distributed join is considered less expensive by our cost system than a
single-distributed join, and the merge join is considered less expensive than
nested loop if index over join condition is present. Nevertheless the merge
join with a single distribution is chosen by optimizer.
The query is:
{code:java}
select e1."empid", e1."deptno" from "emps" e1 join "emps" e2 on e1."empid" =
e2."empid"
{code}
Actual plan:
{code:java}
MyProject(subset=[rel#16:RelSubset#2.MY.single.[]], empid=[$0], deptno=[$1]):
rowcount = 1500.0, cumulative cost = {1500.0 rows, 3000.0 cpu, 0.0 io}, id = 21
MyMergeJoin(subset=[rel#20:RelSubset#1.MY.single.[]], condition=[=($0, $5)],
joinType=[inner]): rowcount = 1500.0, cumulative cost = {150.0 rows, 0.0 cpu,
0.0 io}, id = 50
MyExchange(subset=[rel#25:RelSubset#0.MY.single.[]],
distribution=[single]): rowcount = 100.0, cumulative cost = {9210.340371976183
rows, 100.0 cpu, 0.0 io}, id = 30
MyTableScan(subset=[rel#29:RelSubset#0.MY.any.[0]], table=[[hr, emps]]):
rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io}, id = 27
MyExchange(subset=[rel#25:RelSubset#0.MY.single.[]],
distribution=[single]): rowcount = 100.0, cumulative cost = {9210.340371976183
rows, 100.0 cpu, 0.0 io}, id = 30
MyTableScan(subset=[rel#29:RelSubset#0.MY.any.[0]], table=[[hr, emps]]):
rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io}, id = 27
{code}
Expected plan is
{code:java}
MyProject(subset=[rel#16:RelSubset#2.MY.single.[]], empid=[$0], deptno=[$1]):
rowcount = 1500.0, cumulative cost = {1500.0 rows, 3000.0 cpu, 0.0 io}, id = 21
MyExchange(subset=[rel#20:RelSubset#1.MY.single.[]], distribution=[single]):
rowcount = 1500.0, cumulative cost = {18420.680743952365 rows, 100.0 cpu, 0.0
io}, id = 24
MyMergeJoin(subset=[rel#23:RelSubset#1.MY.any.[]], condition=[=($0, $5)],
joinType=[inner]): rowcount = 1500.0, cumulative cost = {0.15 rows, 0.0 cpu,
0.0 io}, id = 50
MyTableScan(subset=[rel#26:RelSubset#0.MY.hash[0].[0]], table=[[hr,
emps]]): rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io},
id = 25
MyTableScan(subset=[rel#26:RelSubset#0.MY.hash[0].[0]], table=[[hr,
emps]]): rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io},
id = 25
{code}
Planner [^dump.txt] doesn't contain the join with proper distribution.
Reproducer could be found
[here|https://github.com/korlov42/calcite/tree/derive-not-being-called-repoducer].
Please run {{org.apache.calcite.tools.PlannerTest#test}}
was:
When TopDownRuleDriver is enabled, suboptimal plan is chosen for query with
join.
We have our own convention and implementation of all necessary relations. A
distributed join is considered less expensive by our cost system than a
single-distributed join, and the merge join is considered less expensive than
nested loop if index over join condition is present. Nevertheless the merge
join with a single distribution is chosen by optimizer.
The query is:
{code:java}
select e1."empid", e1."deptno" from "emps" e1 join "emps" e2 on e1."empid" =
e2."empid"
{code}
Actual plan:
{code:java}
MyProject(subset=[rel#16:RelSubset#2.MY.single.[]], empid=[$0], deptno=[$1]):
rowcount = 1500.0, cumulative cost = {1500.0 rows, 3000.0 cpu, 0.0 io}, id = 21
MyMergeJoin(subset=[rel#20:RelSubset#1.MY.single.[]], condition=[=($0, $5)],
joinType=[inner]): rowcount = 1500.0, cumulative cost = {150.0 rows, 0.0 cpu,
0.0 io}, id = 50
MyExchange(subset=[rel#25:RelSubset#0.MY.single.[]],
distribution=[single]): rowcount = 100.0, cumulative cost = {9210.340371976183
rows, 100.0 cpu, 0.0 io}, id = 30
MyTableScan(subset=[rel#29:RelSubset#0.MY.any.[0]], table=[[hr, emps]]):
rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io}, id = 27
MyExchange(subset=[rel#25:RelSubset#0.MY.single.[]],
distribution=[single]): rowcount = 100.0, cumulative cost = {9210.340371976183
rows, 100.0 cpu, 0.0 io}, id = 30
MyTableScan(subset=[rel#29:RelSubset#0.MY.any.[0]], table=[[hr, emps]]):
rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io}, id = 27
{code}
Expected plan is
{code:java}
MyProject(subset=[rel#16:RelSubset#2.MY.single.[]], empid=[$0], deptno=[$1]):
rowcount = 1500.0, cumulative cost = {1500.0 rows, 3000.0 cpu, 0.0 io}, id = 21
MyExchange(subset=[rel#20:RelSubset#1.MY.single.[]], distribution=[single]):
rowcount = 1500.0, cumulative cost = {18420.680743952365 rows, 100.0 cpu, 0.0
io}, id = 24
MyMergeJoin(subset=[rel#23:RelSubset#1.MY.any.[]], condition=[=($0, $5)],
joinType=[inner]): rowcount = 1500.0, cumulative cost = {0.15 rows, 0.0 cpu,
0.0 io}, id = 50
MyTableScan(subset=[rel#26:RelSubset#0.MY.hash[0].[0]], table=[[hr,
emps]]): rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io},
id = 25
MyTableScan(subset=[rel#26:RelSubset#0.MY.hash[0].[0]], table=[[hr,
emps]]): rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io},
id = 25
{code}
Planner dump doesn't contain the join with proper distribution.
Reproducer could be found
[here|https://github.com/korlov42/calcite/tree/derive-not-being-called-repoducer].
Please run {{org.apache.calcite.tools.PlannerTest#test}}
> Suboptimal plan is chosen when TopDownRuleDriver is enabled
> ------------------------------------------------------------
>
> Key: CALCITE-4542
> URL: https://issues.apache.org/jira/browse/CALCITE-4542
> Project: Calcite
> Issue Type: Bug
> Affects Versions: 1.26.0
> Reporter: Konstantin Orlov
> Priority: Major
> Attachments: dump.txt
>
>
> When TopDownRuleDriver is enabled, suboptimal plan is chosen for query with
> join.
> We have our own convention and implementation of all necessary relations. A
> distributed join is considered less expensive by our cost system than a
> single-distributed join, and the merge join is considered less expensive than
> nested loop if index over join condition is present. Nevertheless the merge
> join with a single distribution is chosen by optimizer.
> The query is:
> {code:java}
> select e1."empid", e1."deptno" from "emps" e1 join "emps" e2 on e1."empid" =
> e2."empid"
> {code}
> Actual plan:
> {code:java}
> MyProject(subset=[rel#16:RelSubset#2.MY.single.[]], empid=[$0], deptno=[$1]):
> rowcount = 1500.0, cumulative cost = {1500.0 rows, 3000.0 cpu, 0.0 io}, id =
> 21
> MyMergeJoin(subset=[rel#20:RelSubset#1.MY.single.[]], condition=[=($0,
> $5)], joinType=[inner]): rowcount = 1500.0, cumulative cost = {150.0 rows,
> 0.0 cpu, 0.0 io}, id = 50
> MyExchange(subset=[rel#25:RelSubset#0.MY.single.[]],
> distribution=[single]): rowcount = 100.0, cumulative cost =
> {9210.340371976183 rows, 100.0 cpu, 0.0 io}, id = 30
> MyTableScan(subset=[rel#29:RelSubset#0.MY.any.[0]], table=[[hr,
> emps]]): rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io},
> id = 27
> MyExchange(subset=[rel#25:RelSubset#0.MY.single.[]],
> distribution=[single]): rowcount = 100.0, cumulative cost =
> {9210.340371976183 rows, 100.0 cpu, 0.0 io}, id = 30
> MyTableScan(subset=[rel#29:RelSubset#0.MY.any.[0]], table=[[hr,
> emps]]): rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io},
> id = 27
> {code}
> Expected plan is
> {code:java}
> MyProject(subset=[rel#16:RelSubset#2.MY.single.[]], empid=[$0], deptno=[$1]):
> rowcount = 1500.0, cumulative cost = {1500.0 rows, 3000.0 cpu, 0.0 io}, id =
> 21
> MyExchange(subset=[rel#20:RelSubset#1.MY.single.[]],
> distribution=[single]): rowcount = 1500.0, cumulative cost =
> {18420.680743952365 rows, 100.0 cpu, 0.0 io}, id = 24
> MyMergeJoin(subset=[rel#23:RelSubset#1.MY.any.[]], condition=[=($0, $5)],
> joinType=[inner]): rowcount = 1500.0, cumulative cost = {0.15 rows, 0.0 cpu,
> 0.0 io}, id = 50
> MyTableScan(subset=[rel#26:RelSubset#0.MY.hash[0].[0]], table=[[hr,
> emps]]): rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io},
> id = 25
> MyTableScan(subset=[rel#26:RelSubset#0.MY.hash[0].[0]], table=[[hr,
> emps]]): rowcount = 100.0, cumulative cost = {100.0 rows, 101.0 cpu, 0.0 io},
> id = 25
> {code}
> Planner [^dump.txt] doesn't contain the join with proper distribution.
> Reproducer could be found
> [here|https://github.com/korlov42/calcite/tree/derive-not-being-called-repoducer].
> Please run {{org.apache.calcite.tools.PlannerTest#test}}
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