adplus-dvertising
frame-decoration

Question

Why is data quality considered critical in organizations?

a.

It simplifies data management

b.

It boosts confidence and enables better customer service

c.

It reduces the need for data cleansing tools

d.

It eliminates the need for data warehouses

Answer: (b).It boosts confidence and enables better customer service Explanation:Data quality is critical because it boosts confidence, enables better customer service, enhances strategic decision making, and reduces risks from disastrous decisions.

Engage with the Community - Add Your Comment

Confused About the Answer? Ask for Details Here.

Know the Explanation? Add it Here.

Q. Why is data quality considered critical in organizations?

Similar Questions

Discover Related MCQs

Q. What is the underlying theme across various approaches to Master Data Management (MDM)?

Q. How does MDM help improve data quality in the context of data warehousing?

Q. What type of data is considered as master data in MDM?

Q. What is a potential benefit of MDM for businesses?

Q. In which category of MDM is it predominantly used for obtaining quality master data?

Q. What does MDM aim to achieve within an organization?

Q. What does MDM stand for in the context of data quality?

Q. What is a practical tip for ensuring data quality?

Q. What should organizations consider when it comes to data quality?

Q. What is the first step in the overall data purification process?

Q. How should you handle external data obtained for the data warehouse in terms of data quality?

Q. How should you prioritize data elements for cleansing in the data warehouse?

Q. What factors should determine how much data to cleanse in a data warehouse?

Q. What is the role of a Data Correction Authority in the data quality framework?

Q. What responsibilities does a Data Expert have in the data quality framework?

Q. What is the role of a steering committee in data quality initiatives?

Q. What is the main challenge in operational systems regarding data quality responsibilities?

Q. Who should be responsible for data quality in source systems?

Q. What is the purpose of a data quality framework?

Q. How can you detect the presence and extent of data pollution in your environment?