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Question

What distinguishes Grid computing from MapReduce in terms of data processing?

a.

Grid computing emphasizes computation near the data.

b.

Grid computing uses map and reduce functions.

c.

MapReduce is suitable for CPU-bound jobs.

d.

MapReduce offers a lower-level interface to programmers.

Posted under Big Data Computing

Answer: (a).Grid computing emphasizes computation near the data. Explanation:Grid computing emphasizes computation near the data, whereas MapReduce provides a higher-level interface to programmers.

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Q. What distinguishes Grid computing from MapReduce in terms of data processing?

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