adplus-dvertising
frame-decoration

Question

What is the key difference between the Centralized Data Warehouse and Hub-and-Spoke architectural types?

a.

Centralized Data Warehouse has no separate data marts, while Hub-and-Spoke includes dependent data marts.

b.

Centralized Data Warehouse uses the bottom-up approach, while Hub-and-Spoke uses the top-down approach.

c.

Centralized Data Warehouse focuses on independent data marts, while Hub-and-Spoke focuses on a single version of the truth.

d.

Centralized Data Warehouse is suitable for legacy systems, while Hub-and-Spoke is for modern data warehousing.

Answer: (a).Centralized Data Warehouse has no separate data marts, while Hub-and-Spoke includes dependent data marts. Explanation:The key difference between the Centralized Data Warehouse and Hub-and-Spoke architectural types is that the Centralized Data Warehouse does not have separate data marts. In contrast, the Hub-and-Spoke architecture includes dependent data marts that obtain data from the centralized data warehouse. This approach provides an enterprise-wide view while allowing for specialized data marts.

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 key difference between the Centralized Data Warehouse and Hub-and-Spoke architectural types?

Similar Questions

Discover Related MCQs

Q. What is the principal notion behind the Data-Mart Bus architectural type?

Q. In a data warehouse, what is the role of architecture?

Q. What are the four broad categories of source data for a data warehouse?

Q. What is the primary challenge when dealing with production data in a data warehouse?

Q. What is the nature of information queries in operational systems?

Q. Why is data integration important in a data warehouse?

Q. What role does internal data play in a data warehouse?

Q. How often is data typically archived from operational systems, and for how long can it be retained?

Q. What is the purpose of archived data in a data warehouse?

Q. Why is external data important in a data warehouse?

Q. How does external data typically differ from internal data in terms of format?

Q. How do organizations need to manage data transmissions from external sources?

Q. After data is extracted from various operational systems and external sources, what major functions need to be performed to prepare the data for storing in the data warehouse?

Q. Where do the major functions of data extraction, transformation, and loading take place?

Q. Why is a separate staging area necessary for preparing data for a data warehouse?

Q. In some cases, particularly with old legacy systems, what type of staging area might be required?

Q. What is the purpose of data extraction in the staging area?

Q. Why might a data warehouse implementation team choose to use in-house programs for data extraction instead of outside tools?

Q. Where is the source data extracted into after the extraction function in the staging area?

Q. What is the primary purpose of data transformation in the context of a data warehouse?