Reader small image

You're reading from  Apache Hive Essentials

Product typeBook
Published inFeb 2015
Reading LevelIntermediate
PublisherPackt
ISBN-139781783558575
Edition1st Edition
Languages
Right arrow
Author (1)
Dayong Du
Dayong Du
author image
Dayong Du

Dayong Du has all his career dedicated to enterprise data and analytics for more than 10 years, especially on enterprise use case with open source big data technology, such as Hadoop, Hive, HBase, Spark, etc. Dayong is a big data practitioner as well as author and coach. He has published the 1st and 2nd edition of Apache Hive Essential and coached lots of people who are interested to learn and use big data technology. In addition, he is a seasonal blogger, contributor, and advisor for big data start-ups, co-founder of Toronto big data professional association.
Read more about Dayong Du

Right arrow

Job and query optimization


Job and query optimization covers experience and skills to improve performance in the area of job-running mode, JVM reuse, job parallel running, and query optimizations in JOIN.

Local mode

Hadoop can run in standalone, pseudo-distributed, and fully distributed mode. Most of the time, we need to configure Hadoop to run in fully distributed mode. When the data to process is small, it is an overhead to start distributed data processing since the launching time of the fully distributed mode takes more time than the job processing time. Since Hive 0.7.0, Hive supports automatic conversion of a job to run in local mode with the following settings:

jdbc:hive2://> SET hive.exec.mode.local.auto=true; --default false
jdbc:hive2://> SET hive.exec.mode.local.auto.inputbytes.max=50000000;
jdbc:hive2://> SET hive.exec.mode.local.auto.input.files.max=5;
--default 4

A job must satisfy the following conditions to run in the local mode:

  • The total input size of the job is lower...

lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Apache Hive Essentials
Published in: Feb 2015Publisher: PacktISBN-13: 9781783558575

Author (1)

author image
Dayong Du

Dayong Du has all his career dedicated to enterprise data and analytics for more than 10 years, especially on enterprise use case with open source big data technology, such as Hadoop, Hive, HBase, Spark, etc. Dayong is a big data practitioner as well as author and coach. He has published the 1st and 2nd edition of Apache Hive Essential and coached lots of people who are interested to learn and use big data technology. In addition, he is a seasonal blogger, contributor, and advisor for big data start-ups, co-founder of Toronto big data professional association.
Read more about Dayong Du