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Question

Why is the order of focusing considered important when processing Big Data or its semantics?

a.

It influences the appearance of data tokens.

b.

It affects the efficiency of processing.

c.

It determines the source of data tokens.

d.

It enhances data persistence.

Posted under Big Data Computing

Answer: (b).It affects the efficiency of processing. Explanation:The order of focusing is considered important because it affects the efficiency of processing when dealing with Big Data or its semantics.

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Q. Why is the order of focusing considered important when processing Big Data or its semantics?

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