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I work on hive and i am new to it. I am facing some issues regarding the performance in hive query.

  1. Number of mappers allocated to my job is very low even though there are hundreds of mappers available. I have tried setting mapred.map.tasks=200. But it takes only 20 to 30 mappers. I understand, number of mappers depend upon the inputsplit. Is there any other option to increase the mappers? if no then why is the parameter(mapred.map.tasks) introduced ?

  2. Is there any resource where i can understand to correlate hive queries to map-reduce jobs, i.e where the different part of the query is executed?

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how is your input data organized? There are some situations where Hive cannot split the input freely into a(n idealized) number of mappers. For instance if you are loading .gz files, I believe the standard behavior is 1 .gz file -> 1 map, regardless the number of nodes available. –  Mike Repass Dec 11 '12 at 19:45
    
i am querying against a hive table. But the table is very large approx 10 TB size.. –  maverick Dec 12 '12 at 3:36

2 Answers 2

For more information about setting map tasks, check this link: http://wiki.apache.org/hadoop/HowManyMapsAndReduces. Basically, mapred.map.tasks is just a hint; it doesn't really control anything usually.

To see how Hive queries are executed, simply preface your query with explain. For example: explain select foo from bar;. If you need even more information, there's also explain extended.

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This article is not going to explicitly talk about mapred.map.tasks, but it gives a great knowledge on Hive queries turning into MapReduce jobs.

http://infolab.stanford.edu/~ragho/hive-icde2010.pdf

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