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Question

Which areas do data analytic algorithms often take into account when processing Big Data?

a.

User profiles, content descriptors, and contextual data.

b.

Location-based data only.

c.

Web scraping and data crawling.

d.

All of the above.

Posted under Big Data Computing

Answer: (a).User profiles, content descriptors, and contextual data. Explanation:Data analytic algorithms often take into account user profiles, content descriptors, and contextual data when processing Big Data.

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Q. Which areas do data analytic algorithms often take into account when processing Big Data?

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