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Posted to dev@hive.apache.org by "Eric Hanson (JIRA)" <ji...@apache.org> on 2013/06/06 18:35:19 UTC

[jira] [Updated] (HIVE-4676) Optimize COUNT(*) aggregate over vectorized ORC execution path

     [ https://issues.apache.org/jira/browse/HIVE-4676?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel ]

Eric Hanson updated HIVE-4676:
------------------------------

    Description: 
The COUNT(*) aggregate with the vectorized execution path over ORC should be optimized because it is a very common case.

Given a table factsqlengineam_vec_orc with about 25 columns and 218 million rows, this query

select count(*) from factsqlengineam_vec_orc;

runs in 2 minutes 15 seconds, with HDFS Read 2,000,078,555

and this query

select count(mrowflag) from factsqlengineam_vec_orc;

runs in 42 seconds, with HDFS Read 1,207,855

Because the column mrowflag is non-null, both queries return the same result.

We should optimize count(*) so that it, say, chooses the most-compressed column from the ORC file (or even a single random column) and counts those values, but logically counts null values too so the meaning is the same as count(*). The vectorized iterator should not have to load all columns, just one column minimum, and any columns being filtered in the WHERE clause.

For scalar count(*) aggregates (i.e. without group-by) we can simply tally up the total number of remaining rows in each batch, without even looking at the data. Maybe we're already doing that but clearly we are reading more data than necessary now.



  was:
The COUNT(*) aggregate with the vectorized execution path over ORC should be optimized because it is a very common case.

Given a table factsqlengineam_vec_orc with about 25 columns and 218 million rows, this query

select count(*) from factsqlengineam_vec_orc;

runs in 2 minutes 15 seconds

and this query

select count(mrowflag) from factsqlengineam_vec_orc;

runs in 42 seconds.

Because the column mrowflag is non-null, both queries return the same result.

We should optimize count(*) so that it, say, chooses the most-compressed column from the ORC file (or even a single random column) and counts those values, but logically counts null values too so the meaning is the same as count(*). The vectorized iterator should not have to load all columns, just one column minimum, and any columns being filtered in the WHERE clause.

For scalar count(*) aggregates (i.e. without group-by) we can simply tally up the total number of remaining rows in each batch, without even looking at the data. Maybe we're already doing that but something is taking up extra time now.



    
> Optimize COUNT(*) aggregate over vectorized ORC execution path
> --------------------------------------------------------------
>
>                 Key: HIVE-4676
>                 URL: https://issues.apache.org/jira/browse/HIVE-4676
>             Project: Hive
>          Issue Type: Sub-task
>          Components: Query Processor
>    Affects Versions: vectorization-branch
>            Reporter: Eric Hanson
>
> The COUNT(*) aggregate with the vectorized execution path over ORC should be optimized because it is a very common case.
> Given a table factsqlengineam_vec_orc with about 25 columns and 218 million rows, this query
> select count(*) from factsqlengineam_vec_orc;
> runs in 2 minutes 15 seconds, with HDFS Read 2,000,078,555
> and this query
> select count(mrowflag) from factsqlengineam_vec_orc;
> runs in 42 seconds, with HDFS Read 1,207,855
> Because the column mrowflag is non-null, both queries return the same result.
> We should optimize count(*) so that it, say, chooses the most-compressed column from the ORC file (or even a single random column) and counts those values, but logically counts null values too so the meaning is the same as count(*). The vectorized iterator should not have to load all columns, just one column minimum, and any columns being filtered in the WHERE clause.
> For scalar count(*) aggregates (i.e. without group-by) we can simply tally up the total number of remaining rows in each batch, without even looking at the data. Maybe we're already doing that but clearly we are reading more data than necessary now.

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