AI/ML Screening Test

AI/ML Screening Test

1 / 49

Which cloud service provides a fully managed ML pipeline solution?

2 / 49

What does CI/CD integration with model registry achieve?

 

3 / 49

In MLOps, what is 'model drift'?

 

4 / 49

Which of the following is an example of CI/CD for ML models?

 

5 / 49

. What does a feature store provide in MLOps?

 

6 / 49

What is the role of GitOps in MLOp?

7 / 49

What is 'model rollback' in CI/CD pipelines

8 / 49

What is blue-green deployment in ML pipelines?

9 / 49

What is the purpose of data drift detection?

 

10 / 49

What is the purpose of MLflow in MLOps?

11 / 49

How does AIOps reduce 'alert fatigue?

12 / 49

What is the purpose of a model registry in MLOps?

13 / 49

Which challenge does AIOps primarily address?

14 / 49

What is online learning in ML deployment

15 / 49

Which CI/CD tool is widely integrated with MLOps pipelines?

 

16 / 49

Which type of data is MOST commonly analyzed by AIOps platforms?

 

17 / 49

Which metric is best for evaluating classification models in imbalanced dataset?

18 / 49

. What is shadow deployment in MLOps?

 

19 / 49

In MLOps, what is 'model lineage?

20 / 49

What is the role of Kubernetes in MLOps pipelines

21 / 49

Which stage in MLOps involves hyperparameter tuning?

22 / 49

Why is explainability important in production ML models?

23 / 49

Which of the following is an example of predictive analytics in AIOps?

24 / 49

Why is monitoring critical after model deployment?

 

25 / 49

What is the role of continuous validation in MLOps

26 / 49

What is a common challenge in automating ML pipelines?

 

27 / 49

Which of the following ensures reproducibility in ML experiments?

 

28 / 49

Which of the following describes Continuous Training (CT) in MLOps?

 

29 / 49

What is the main purpose of MLOps?

30 / 49

Which tool is widely used for managing ML pipelines?

31 / 49

Which is a key output of anomaly detection in AIOps?

32 / 49

. What role does Natural Language Processing (NLP) play in AIOps?

33 / 49

Which of the following is a common model deployment pattern?

 

34 / 49

Which AI technique is commonly used in AIOps for anomaly detection?

35 / 49

Which algorithm is often used in AIOps for log anomaly detection?

36 / 49

Which monitoring metric is MOST relevant in MLOps?

 

37 / 49

Which of the following tools is commonly associated with AIOps?

38 / 49

What is the main role of Docker in MLOps pipelines?

 

39 / 49

What is a key advantage of using AIOps in incident management?

40 / 49

In a CI/CD pipeline, unit tests for ML models typically validate:

 

41 / 49

What is Canary Deployment in MLOps?

 

42 / 49

Which of the following best describes the goal of AIOps?

43 / 49

Which of the following ensures fairness and bias detection in ML models?

 

44 / 49

Which orchestrator is commonly used for ML pipelines in Kubernetes?

45 / 49

Which of the following is NOT a stage in the MLOps lifecycle?

46 / 49

. Which tool is commonly used for workflow orchestration in ML pipelines?

47 / 49

What is the difference between DevOps and MLOps?

48 / 49

Which of the following best describes model governance

49 / 49

Which of the following tools integrates monitoring into MLOps pipelines?

 

Your score is

Leave a Comment

Your email address will not be published. Required fields are marked *

Scroll to Top