adplus-dvertising
frame-decoration

Question

How does the evolutionary approach address the challenge of smart filtering?

a.

By using a fixed system of environmental contexts.

b.

By applying a one-size-fits-all filter.

c.

By adjusting contexts through independent evolutionary mechanisms.

d.

By using a single filter for all types of data.

Posted under Big Data Computing

Answer: (c).By adjusting contexts through independent evolutionary mechanisms. Explanation:The evolutionary approach addresses the challenge of smart filtering by adjusting contexts through independent evolutionary mechanisms, allowing for flexibility in filtering based on changing conditions.

Engage with the Community - Add Your Comment

Confused About the Answer? Ask for Details Here.

Know the Explanation? Add it Here.

Q. How does the evolutionary approach address the challenge of smart filtering?

Similar Questions

Discover Related MCQs

Q. What property of knowledge organisms in the evolutionary approach helps in filtering out noise?

Q. Why is it challenging to decide which part of a potentially useful collection of data should be sacrificed or "forgotten"?

Q. What is the drawback of following straightforward policies like fixed lifetime for keeping records in Big Data management?

Q. What is one potentially viable approach to forgetting in data management?

Q. What does the approach of "forgetting before storing" propose?

Q. What is data contextualization primarily concerned with in the context of the Big Data?

Q. What does data contextualization involve transforming data from and into?

Q. What is the primary benefit of using dynamic contextualization in knowledge discovery?

Q. What is the primary purpose of data compression in the context of Big Data?

Q. When is lossy compression typically applied to data?

Q. What are the four major functional areas of autonomic computing according to IBM?

Q. What is the primary benefit of sharing knowledge within a group?

Q. How does knowledge evolve in a social context?

Q. What is the role of ontologies in understanding Big Data?

Q. Why is it important to treat Big Data processing as an ecosystem of evolving processing entities?

Q. What is the primary challenge faced by traditional relational database management technologies when dealing with big data analytics?

Q. How do companies like Facebook and Twitter achieve scalability for their MySQL installations?

Q. What is the main difference between vertical scalability and horizontal scalability with database products?

Q. What should be considered when constructing Big Data systems on premise?

Q. What is the advantage of most Big Data systems when it comes to data structure?