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Question

What is the main objective of adding the semantics layer to the Big Data processing stack?

a.

To reduce the volume of data.

b.

To improve data annotation.

c.

To create new data silos.

d.

To achieve more effective use of semantics.

Posted under Big Data Computing

Answer: (d).To achieve more effective use of semantics. Explanation:The semantics layer is added to achieve more effective use of semantics in Big Data processing.

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Q. What is the main objective of adding the semantics layer to the Big Data processing stack?

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