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Question

What is one critical side effect of using Big Data clusters for scalability?

a.

Reduced energy consumption

b.

Efficient utilization of resources

c.

Wasted resources when consuming unnecessary data

d.

Enhanced exploration of data

Posted under Big Data Computing

Answer: (c).Wasted resources when consuming unnecessary data Explanation:Using Big Data clusters for scalability can lead to wasted resources when consuming data that is not really necessary for the exploration path.

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Q. What is one critical side effect of using Big Data clusters for scalability?

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