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Question

Why is it challenging to have a one-size-fits-all filter for big heterogeneous data?

a.

Because it requires a decrease in efficiency.

b.

Because it increases data variety/complexity.

c.

Because data tokens cannot be processed efficiently.

d.

Because data filtering depends on the specific context.

Posted under Big Data Computing

Answer: (d).Because data filtering depends on the specific context. Explanation:It is challenging to have a one-size-fits-all filter for big heterogeneous data because data filtering depends on the specific context, and there is no single filter that can apply universally.

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Q. Why is it challenging to have a one-size-fits-all filter for big heterogeneous data?

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