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hadoop - Hive query performance for high cardinality field

I have a single but huge table in hive which will almost always be queried with the primary key column (say, employee_id). The table will be really huge, millions of rows inserted each day and I want to query fast using partitions over this field. I followed this post and I know that partitioning is only good for low cardinality fields, so how can I accomplish my goal of querying fast with employee_id column?

I understand that id column having very high cardinality should be used as bucketing but it does not help me with the query performance over single table, does it?

I think that if I could use something like hash(employee_id) as partitions, it would help me very much. Is this possible? I couldn't see such a thing in the documents about hive.

To summarize, what I want is fast query result for:

select * from employee where employee_id=XXX

assuming employee table has billions of records, with primary key column employee_id where classical partitioning by year, month, day etc does not help.

Thanks in advance,

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  1. Use ORC with bloom filters:
    CREATE TABLE employee (
      employee_id bigint,
      name STRING
    ) STORED AS ORC 
    TBLPROPERTIES ("orc.bloom.filter.columns"="employee_id")
    ;
  1. Enable PPD with vectorizing, use CBO and Tez:
    SET hive.optimize.ppd=true;
    SET hive.optimize.ppd.storage=true;
    SET hive.vectorized.execution.enabled=true;
    SET hive.vectorized.execution.reduce.enabled = true;
    SET hive.cbo.enable=true;
    set hive.stats.autogather=true;
    set hive.compute.query.using.stats=true;
    set hive.stats.fetch.partition.stats=true;
    set hive.execution.engine=tez;
    set hive.stats.fetch.column.stats=true;
    set hive.map.aggr=true;
    SET hive.tez.auto.reducer.parallelism=true; 

Ref: https://community.cloudera.com/t5/Community-Articles/Optimizing-Hive-queries-for-ORC-formatted-tables/ta-p/248164

  1. Tune proper parallelism on mappers and reducers:

    --example for mappers:

     set tez.grouping.max-size=67108864;
     set tez.grouping.min-size=32000000;
    

    --example settings for reducers:

     set hive.exec.reducers.bytes.per.reducer=67108864; --decrease this to increase the number of reducers
    

Change these figures to achieve optimal performance.


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