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Question

In the Federated architectural type, how is data integration achieved?

a.

By discarding legacy decision-support structures

b.

Through the centralized data warehouse

c.

By physically or logically integrating data through shared key fields and metadata

d.

Through independent data marts

Answer: (c).By physically or logically integrating data through shared key fields and metadata Explanation:In the Federated architectural type, data integration is achieved by physically or logically integrating data through shared key fields, overall global metadata, and distributed queries. This approach allows organizations with existing decision-support structures to connect and utilize their data sources without discarding their legacy systems.

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Q. In the Federated architectural type, how is data integration achieved?

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