adplus-dvertising
frame-decoration

Question

What is a practical tip for ensuring data quality?

a.

Begin the purification process with low-impact pollution sources

b.

Use in-house programs for everything

c.

Select tools that are not suitable for the task

d.

Identify high-impact pollution sources and start the purification process with these

Answer: (d).Identify high-impact pollution sources and start the purification process with these Explanation:Starting the data purification process with high-impact pollution sources.

Engage with the Community - Add Your Comment

Confused About the Answer? Ask for Details Here.

Know the Explanation? Add it Here.

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

Similar Questions

Discover Related MCQs

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?

Q. What is the first step in assessing the extent of data pollution before applying data cleansing techniques?

Q. What factors should you consider when deciding whether to use vendor tools, integrate cleansing toolkits with ETL tools, or use in-house programming for data cleansing?

Q. Why is cleansing data in the source systems a complex task?

Q. What is a drawback of cleansing data in the staging area?

Q. Where in the data flow process can data cleansing be applied?

Q. What fundamental question must be answered when deciding which data to cleanse?

Q. What principle should be applied when determining the extent of data cleansing for a data warehouse?

Q. What is one of the drawbacks of the "clean as you go" approach to data cleansing?