adplus-dvertising
frame-decoration

Question

What is the essential requirement for implementing Type 2 changes in a data warehouse?

a.

To track orders by customer name

b.

To track orders by multiple attributes

c.

To track orders by marital status and address

d.

To track orders by state and date

Answer: (d).To track orders by state and date Explanation:The essential requirement for implementing Type 2 changes is to be able to track orders by state and date.

Engage with the Community - Add Your Comment

Confused About the Answer? Ask for Details Here.

Know the Explanation? Add it Here.

Q. What is the essential requirement for implementing Type 2 changes in a data warehouse?

Similar Questions

Discover Related MCQs

Q. How are orders for a customer with Type 2 changes in marital status separated in the data warehouse?

Q. What is the method for applying Type 2 changes to the data warehouse?

Q. What is the primary nature of Type 3 changes in dimension tables?

Q. When are Type 3 changes typically used in data warehousing?

Q. What is the purpose of Type 3 changes in data warehousing?

Q. What is the characteristic of Type 3 changes related to tracking orders through transitions?

Q. How do Type 3 changes enable tracking forward and backward?

Q. What is the method for applying Type 3 changes to the data warehouse?

Q. What is the key characteristic of Type 3 changes in dimension tables?

Q. What is one of the considerations when dealing with large dimensions in a data warehouse?

Q. What can be a characteristic of a large dimension in a data warehouse?

Q. Which dimension is expected to be gigantic for enterprises dealing with the general public?

Q. What is a challenge when dealing with large dimensions in a data warehouse?

Q. What is a common characteristic of large dimensions in data warehousing?

Q. How do multiple hierarchies within a dimension impact users in different departments?

Q. What is a challenge when dealing with rapidly changing dimensions?

Q. When is the type 2 approach feasible for handling rapidly changing dimensions?

Q. How is the existence of multiple rows for the same customer in a rapidly changing dimension noticeable to end-users?

Q. What is one effective approach for handling large, rapidly changing dimensions in a data warehouse?

Q. What are "junk dimensions" in the context of data warehousing?