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Question

What is the current limitation in terms of knowledge of MapReduce workloads?

a.

Lack of technology companies

b.

Limited scalability of MapReduce

c.

Limited understanding of query optimization

d.

Limited knowledge of real-life production workloads

Posted under Big Data Computing

Answer: (d).Limited knowledge of real-life production workloads Explanation:Knowledge of real-life production MapReduce workloads is currently limited to a handful of technology companies.

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Q. What is the current limitation in terms of knowledge of MapReduce workloads?

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