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Question

What does the parallel database software stack typically comprise?

a.

SQL, relational dataflow layer, and column storage manager

b.

SQL compiler, relational dataflow layer, and row storage manager

c.

Hadoop MapReduce, Hadoop Distributed File System, and HiveQL

d.

SQL, PigLatin, and Hadoop M/R job

Posted under Big Data Computing

Answer: (b).SQL compiler, relational dataflow layer, and row storage manager Explanation:The parallel database software stack typically comprises SQL compiler, relational dataflow layer, and row storage manager.

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Q. What does the parallel database software stack typically comprise?

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