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Question

What is the CAP theorem and how does it relate to Big Data solutions?

a.

The CAP theorem states that Big Data solutions must provide three main features: consistency, availability, and partition tolerance.

b.

The CAP theorem states that any distributed storage system for sharing data can provide only two of the three main features: consistency, availability, and partition tolerance.

c.

The CAP theorem states that Big Data solutions are not subject to consistency, availability, or partition tolerance.

d.

The CAP theorem states that Big Data solutions must prioritize consistency over availability and partition tolerance.

Posted under Big Data Computing

Answer: (b).The CAP theorem states that any distributed storage system for sharing data can provide only two of the three main features: consistency, availability, and partition tolerance. Explanation:The CAP theorem states that any distributed storage system for sharing data can provide only two of the three main features: consistency, availability, and partition tolerance, and it relates to the trade-offs made in Big Data solutions.

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Q. What is the CAP theorem and how does it relate to Big Data solutions?

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