adplus-dvertising
frame-decoration

Question

Why is reliable strategic decision-making essential in a data warehouse?

a.

It reduces the need for data quality.

b.

It ensures that all data is reliable.

c.

It can add value to a business.

d.

It makes data cleaning more complex.

Answer: (c).It can add value to a business. Explanation:Reliable strategic decision-making is essential in a data warehouse because it can add value to a business, and no data warehouse can provide value until the data is clean and of high quality.

Engage with the Community - Add Your Comment

Confused About the Answer? Ask for Details Here.

Know the Explanation? Add it Here.

Q. Why is reliable strategic decision-making essential in a data warehouse?

Similar Questions

Discover Related MCQs

Q. What is the potential issue with old product codes when used in a data warehouse that stores historical data?

Q. What is the result of the unofficial use of fields in data records?

Q. What is a common issue with cryptic values in old legacy systems?

Q. Which of the following is a violation of a basic business rule in a personnel and payroll system?

Q. What is the problem with reused primary keys when capturing data in a data warehouse?

Q. When identifiers for product codes are different in various systems, what problem does this cause?

Q. What is the issue with inconsistent values for policy types in different legacy systems?

Q. What problem is associated with multipurpose fields that can be used differently by various departments?

Q. What integration issues arise in an auction company when the same customer is both a buyer and a seller?

Q. Why do integration problems often arise in legacy systems?

Q. What is the primary goal of data cleansing for a data warehouse?

Q. Where does data pollution typically occur in the context of a data warehouse?

Q. Why is it challenging to address data pollution problems from old operational systems?

Q. How does data aging affect data quality in source systems?

Q. What is a potential issue related to heterogeneous system integration in the context of data quality?

Q. How does a good database design contribute to data quality?

Q. What is the role of entity integrity and referential integrity rules in preventing data pollution?

Q. What can be a result of incomplete information at the time of data entry for an entity?

Q. How does the entry of generic values into mandatory fields affect data quality?

Q. What role does data verification play in preventing data corruption?