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Question

How does the time-wrapping/compression property of EDM impact data analysis?

a.

It extends the time scale.

b.

It limits data analysis perspectives.

c.

It allows for analysis from different perspectives.

d.

It has no effect on data analysis.

Posted under Big Data Computing

Answer: (c).It allows for analysis from different perspectives. Explanation:The time-wrapping/compression property of EDM allows for data analysis from different perspectives.

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Q. How does the time-wrapping/compression property of EDM impact data analysis?

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