Versions Compared

Key

  • This line was added.
  • This line was removed.
  • Formatting was changed.

...

  1. Install spark (either download pre-built spark, or build assembly from source).  
    • Download the correct Install/build a compatible version.  To find out what version of Spark that your particular Hive build was built/tested on, check your Hive's root pom.xml for <spark.version>.  
    • Note: Each Install/build a compatible distribution.  Each version of Spark in turn has several distributions, corresponding with different versions of Hadoop.  Choose the one corresponding to Hadoop installation.
    • Once spark is installed, find and keep note of the spark<spark-assembly-*.jar jar> location.
  2. Start Spark cluster (Master and workers).
    • Keep note of the Spark master URL<Spark Master URL>.  This can be found in Spark master WebUI.

...

  1. As Hive on Spark is still in development, only a Hive assembly built from hive/spark development branch works against spark: https://github.com/apache/hive/tree/spark.  Build hive assembly from this branch as described in https://cwiki.apache.org/confluence/display/Hive/HiveDeveloperFAQ.
  2. Start hive and add the spark<spark-assembly-*.jar jar> to the hive auxpath.

    Code Block
    hive --auxpath /location/to/spark-assembly-spark_version-hadoop_version.jar
  3. Configure hive execution engine to run on spark:

    Code Block
    hive> set hive.execution.engine=spark;
  4. Configure required properties for spark-conf.  See: http://spark.apache.org/docs/latest/configuration.html.  This can be done either by adding a file "spark-defaults.conf" to the hive classpath, or configured as normal properties from hive.

    Code Block
    hive> set spark.master=<spark<Spark masterMaster URL>
    
    hive> set spark.eventLog.enabled=true;             
    
    hive> set spark.executor.memory=512m;              
    
    hive> set spark.serializer=org.apache.spark.serializer.KryoSerializer;

...