PeopleCert DevOps Institute AIOps Foundation V1.0 AIOps-Foundation Exam Questions
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Question #1 (Topic: Demo Questions)
The incident related metric MTTD means:
Correct Answer: D
Explanation:
Mean Time to Detect (MTTD) is an incident management metric that measures the average time taken to identify an issue within a system. A lower MTTD indicates a more responsive monitoring system, allowing for quicker remediation and minimizing potential impact. Improving MTTD is crucial for maintaining system reliability and performance. The DevOps Institute's AIOps Foundation course emphasizes the importance of MTTD in evaluating the effectiveness of IT operations and the implementation of AIOps solutions to enhance detection capabilities.
Question #2 (Topic: Demo Questions)
What is the meaning of Digital Transformation?
Correct Answer: B
Explanation not available for this question.
Question #3 (Topic: Demo Questions)
What is a key difference between ITOA and AlOps?
Correct Answer: A
Explanation not available for this question.
Question #4 (Topic: Demo Questions)
What does AlOps stand for?
Correct Answer: B
Explanation not available for this question.
Question #5 (Topic: Demo Questions)
Which of the following describes MLOps?
Correct Answer: B
Explanation:
MLOps, or Machine Learning Operations, applies DevOps principles such as Continuous Integration and Continuous Deployment (CI/CD) to the development and deployment of machine learning models. This approach emphasizes automation, testing, and streamlined workflows to accelerate the machine learning lifecycle, ensuring models are reliable, reproducible, and maintainable in production environments.