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https://issues.apache.org/jira/browse/HIVE-27734?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
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Shohei Okumiya reassigned HIVE-27734:
-------------------------------------

    Assignee: Shohei Okumiya

> Add Iceberg's storage-partitioned join capabilities to Hive's 
> [sorted-]bucket-map-join
> --------------------------------------------------------------------------------------
>
>                 Key: HIVE-27734
>                 URL: https://issues.apache.org/jira/browse/HIVE-27734
>             Project: Hive
>          Issue Type: Improvement
>          Components: Iceberg integration
>    Affects Versions: 4.0.0-alpha-2
>            Reporter: Janos Kovacs
>            Assignee: Shohei Okumiya
>            Priority: Major
>
> Iceberg's 'data bucketing' is implemented through its rich (function based) 
> partitioning feature which helps to optimize join operations - called storage 
> partitioned joins. 
> doc: 
> [https://docs.google.com/document/d/1foTkDSM91VxKgkEcBMsuAvEjNybjja-uHk-r3vtXWFE/edit#heading=h.82w8qxfl2uwl]
> spark impl.: https://issues.apache.org/jira/browse/SPARK-37375
> This feature is not yet leveraged in Hive into its bucket-map-join 
> optimization, neither alone nor with Iceberg's SortOrder to 
> sorted-bucket-map-join.
> Customers migrating from Hive table format to Iceberg format with storage 
> optimized schema will experience performance degradation on large tables 
> where Iceberg's gain on no-listing performance improvement is significantly 
> smaller than the actual join performance over bucket-join or even 
> sorted-bucket-join.
>  
> {noformat}
> SET hive.query.results.cache.enabled=false;
> SET hive.fetch.task.conversion = none;
> SET hive.optimize.bucketmapjoin=true;
> SET hive.convert.join.bucket.mapjoin.tez=true;
> SET hive.auto.convert.join.noconditionaltask.size=1000;
> --if you are working with external table, you need this for bmj:
> SET hive.disable.unsafe.external.table.operations=false;
> -- HIVE BUCKET-MAP-JOIN
> DROP TABLE IF EXISTS default.hivebmjt1 PURGE;
> DROP TABLE IF EXISTS default.hivebmjt2 PURGE;
> CREATE TABLE default.hivebmjt1 (id int, txt string) CLUSTERED BY (id) INTO 8 
> BUCKETS;
> CREATE TABLE default.hivebmjt2 (id int, txt string);
> INSERT INTO default.hivebmjt1 VALUES 
> (1,'1'),(2,'2'),(3,'3'),(4,'4'),(5,'5'),(6,'6'),(7,'7'),(8,'8');
> INSERT INTO default.hivebmjt2 VALUES (1,'1'),(2,'2'),(3,'3'),(4,'4');
> EXPLAIN
> SELECT * FROM default.hivebmjt1 f INNER      JOIN default.hivebmjt2 d ON f.id 
> = d.id;
> EXPLAIN
> SELECT * FROM default.hivebmjt1 f LEFT OUTER JOIN default.hivebmjt2 d ON f.id 
> = d.id;
> -- Both are optimized into BMJ
> -- ICEBERG BUCKET-MAP-JOIN via Iceberg's storage-partitioned join
> DROP TABLE IF EXISTS default.icespbmjt1 PURGE;
> DROP TABLE IF EXISTS default.icespbmjt2 PURGE;
> CREATE TABLE default.icespbmjt1 (txt string) PARTITIONED BY (id int) STORED 
> BY ICEBERG ;
> CREATE TABLE default.icespbmjt2 (txt string) PARTITIONED BY (id int) STORED 
> BY ICEBERG ;
> INSERT INTO default.icespbmjt1 VALUES ('1',1),('2',2),('3',3),('4',4);
> INSERT INTO default.icespbmjt2 VALUES ('1',1),('2',2),('3',3),('4',4);
> EXPLAIN
> SELECT * FROM default.icespbmjt1 f INNER      JOIN default.icespbmjt2 d ON 
> f.id = d.id;
> EXPLAIN
> SELECT * FROM default.icespbmjt1 f LEFT OUTER JOIN default.icespbmjt2 d ON 
> f.id = d.id;
> -- Only Map-Join optimised
> {noformat}



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