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Question

What is one of the key distinctions between the development of Big Data in the database world and in the systems world?

a.

Big Data in the database world is based on open-source technologies, while Big Data in the systems world relies on proprietary software.

b.

Big Data in the database world focuses on structured data, while Big Data in the systems world deals with unstructured and semistructured data.

c.

Big Data in the database world was primarily driven by large web companies, while Big Data in the systems world emerged from traditional enterprises.

d.

Big Data in the database world emphasizes data volume scalability, while Big Data in the systems world prioritizes hardware size scalability.

Posted under Big Data Computing

Answer: (b).Big Data in the database world focuses on structured data, while Big Data in the systems world deals with unstructured and semistructured data. Explanation:One of the key distinctions is that Big Data in the database world primarily deals with structured data, while Big Data in the systems world deals with unstructured and semistructured data.

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Q. What is one of the key distinctions between the development of Big Data in the database world and in the systems world?

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