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As a simple example,

select * from tablename;

DOES NOT kick in map reduce, while

select count(*) from tablename;

DOES. What is the general principle used to decide when to use map reduce (by hive)?

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up vote 5 down vote accepted

In general, any sort of aggregation, such as min/max/count is going to require a MapReduce job. This isn't going to explain everything for you, probably.

Hive, in the style of many RDBMS, has an EXPLAIN keyword that will outline how your Hive query gets translated into MapReduce jobs. Try running explain on both your example queries and see what it is trying to do behind the scenes.

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select * from tablename;

Just reads raw data from files in HDFS, so it is much faster without MapReduce.

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but for a large file it has to read from all the nodes in parallel. Hive does that without MR? – ernesto Apr 16 '15 at 10:37

It is an optimisation technique, hive.fetch.task.conversion property can (FETCH) task minimize latency of mapreduce overhead.

When doing SELECT, LIMIT, FETCH queries this property skips mapreduce and uses the FETCH task.

This property can have 3 values - none, minimal (the default) and more.

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