Microsoft Azure Architect Technologies (AZ-300) Practice Exam

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Prepare for the Microsoft Azure Architect Technologies Exam with comprehensive quizzes, flashcards, and simulated questions. Master the skills required to design solutions on Azure and earn your certification efficiently!

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Which statement about the scaling strategy is false?

  1. Scaling out can increase capacity indefinitely.

  2. Scaling up can maximize the potential of a single instance.

  3. Scaling out requires a powerful single instance.

  4. Scaling strategies have limits based on architecture.

The correct answer is: Scaling out requires a powerful single instance.

Scaling out involves adding more instances to handle increased demand, which typically does not require a single powerful instance. Instead, it focuses on distributing the load across multiple instances, thereby increasing the application's capacity effectively and efficiently. This method allows for horizontal scaling, which can lead to better load balancing and redundancy, as there are multiple smaller instances working together to fulfill requests. The other statements highlight valid aspects of scaling strategies. Scaling out can indeed increase capacity significantly and may seem limitless, provided there is sufficient infrastructure to support the additional instances. Scaling up allows a more powerful single instance to utilize its maximum capabilities, taking advantage of better hardware resources to improve performance. Lastly, all scaling strategies do indeed have limits influenced by architectural decisions, resource management, and dependencies within the system. Understanding these scaling methods is crucial for designing applications on cloud platforms like Azure, ensuring they can efficiently manage varying loads while maintaining performance and optimizing resource usage.