Model Deployment Basics - Real World Applications

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Q. In which scenario would you prefer using a serverless architecture for model deployment?
  • A. When you need constant high traffic
  • B. When you want to minimize operational overhead
  • C. When you require low latency
  • D. When you need to manage complex infrastructure
Q. In which scenario would you use a shadow deployment strategy?
  • A. When you want to completely replace an old model
  • B. When you want to test a new model without affecting users
  • C. When you want to gather user feedback
  • D. When you want to scale the model
Q. What is a common evaluation metric used to assess the performance of a deployed classification model?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. R-squared
Q. What is a common method for monitoring deployed machine learning models?
  • A. Cross-validation
  • B. A/B testing
  • C. Grid search
  • D. K-fold validation
Q. What is a key consideration when deploying a machine learning model in a production environment?
  • A. The model's training time
  • B. The model's accuracy on the training set
  • C. The model's ability to handle unseen data
  • D. The model's complexity
Q. What is shadow deployment?
  • A. Deploying a model without user interaction
  • B. Deploying multiple models simultaneously
  • C. Deploying a model alongside the current version to compare performance
  • D. Deploying a model in a different environment
Q. What is the purpose of A/B testing in the context of model deployment?
  • A. To compare two different models
  • B. To evaluate model performance on training data
  • C. To tune hyperparameters
  • D. To visualize model predictions
Q. What is the purpose of versioning in model deployment?
  • A. To improve model accuracy
  • B. To track changes and manage different model iterations
  • C. To enhance data preprocessing
  • D. To optimize model training time
Q. What is the role of APIs in model deployment?
  • A. To train the model
  • B. To provide a user interface
  • C. To allow external applications to interact with the model
  • D. To store model data
Q. What is the significance of containerization in model deployment?
  • A. It improves model accuracy
  • B. It simplifies the deployment process and ensures consistency
  • C. It reduces the need for data preprocessing
  • D. It eliminates the need for model monitoring
Q. Which deployment strategy allows for gradual rollout of a new model version?
  • A. Blue-green deployment
  • B. A/B testing
  • C. Canary deployment
  • D. Shadow deployment
Q. Which of the following best describes the concept of 'model drift'?
  • A. The model's performance improves over time
  • B. The model's predictions become less accurate due to changes in data distribution
  • C. The model's architecture changes during deployment
  • D. The model is retrained with new data
Q. Which of the following is a common challenge in model deployment?
  • A. Data preprocessing
  • B. Model interpretability
  • C. Scalability and performance
  • D. Feature selection
Q. Which of the following is a key consideration when deploying a model for real-time predictions?
  • A. Model complexity
  • B. Data quality
  • C. Latency requirements
  • D. Training data size
Q. Which of the following is NOT a typical deployment environment for machine learning models?
  • A. Cloud services
  • B. Edge devices
  • C. Local servers
  • D. Data warehouses
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