How should cloud architecture support scale in CX/AI programs?

Get ready for the TELUS Digital CX and AI Transformation Strategy for Enterprises test. Practice with flashcards and multiple choice questions. Prepare thoroughly for success in your exam with hints and detailed explanations for each question.

Multiple Choice

How should cloud architecture support scale in CX/AI programs?

Explanation:
Cloud architecture must scale dynamically to meet CX/AI workloads. Elastic compute lets resources grow and shrink automatically as demand rises or falls, ensuring fast model inference and responsive customer interactions without paying for idle capacity. Managed services handle common data, messaging, and ML infrastructure at scale, reducing operational overhead and providing built-in reliability, monitoring, and automatic scaling. Event-driven data processing enables real-time reactions to customer events and streaming data, so insights and actions can be triggered the moment something happens, which is essential for timely CX and AI workflows. Robust security controls are crucial as you scale, protecting customer data, ensuring compliance, and maintaining trust across increasing data volumes and access patterns. The other options fall short because relying on on-prem hardware misses cloud elasticity, fixed resources with manual scaling cannot adapt quickly to changing demand, and avoiding cloud services entirely prevents leveraging scalable, managed, event-driven capabilities necessary for modern CX/AI programs.

Cloud architecture must scale dynamically to meet CX/AI workloads. Elastic compute lets resources grow and shrink automatically as demand rises or falls, ensuring fast model inference and responsive customer interactions without paying for idle capacity. Managed services handle common data, messaging, and ML infrastructure at scale, reducing operational overhead and providing built-in reliability, monitoring, and automatic scaling. Event-driven data processing enables real-time reactions to customer events and streaming data, so insights and actions can be triggered the moment something happens, which is essential for timely CX and AI workflows. Robust security controls are crucial as you scale, protecting customer data, ensuring compliance, and maintaining trust across increasing data volumes and access patterns.

The other options fall short because relying on on-prem hardware misses cloud elasticity, fixed resources with manual scaling cannot adapt quickly to changing demand, and avoiding cloud services entirely prevents leveraging scalable, managed, event-driven capabilities necessary for modern CX/AI programs.

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