According to EC-Council’s AI Program Manager (CAIPM) framework, enterprise adoption of AI—especially in high-stakes environments like healthcare—requires strong emphasis on operational reliability, governance, and vendor accountability. When AI systems are deployed into production workflows, particularly those involving critical services such as telehealth, organizations must ensure that service availability, incident response, and continuity are formally guaranteed.
The scenario highlights concerns about system behavior under sustained load, incident response readiness, and continuity guarantees. These are classic indicators of the need for robust Service Level Agreements (SLAs) and clearly defined support structures. SLAs specify uptime commitments, response times, resolution timelines, and escalation procedures, all of which are essential for mission-critical environments. CAIPM emphasizes that vendor selection must go beyond functional capability and include operational assurances, contractual accountability, and support maturity.
Options A, B, and D focus on cost flexibility, model diversity, and feature capabilities, respectively. While important, they do not directly address the operational risk, reliability, and governance concerns described in the scenario. In contrast, SLAs and support levels directly mitigate these risks by ensuring accountability and continuity.
Therefore, prioritizing Service Level Agreements and support levels is the correct decision for ensuring safe and reliable enterprise AI deployment.