What is Inference in AI | Using a trained model to make predictions or decisions based on new data |
What is Feature Transformation | Altering data to improve its suitability for machine learning often including scaling or encoding |
What is Data Preprocessing | The process of cleaning transforming and preparing raw data for use in AI models |
What is a Pipeline in Azure Machine Learning | A series of steps to automate workflows for data preparation training and deployment |
What is the purpose of Cross-validation | To ensure the model generalizes well by testing it on different subsets of the training data |
What is Feature Engineering | The process of selecting creating or transforming variables to improve model performance |
What are common evaluation metrics for Regression models | Mean Absolute Error Mean Squared Error and R squared |
What is Model Overfitting | When a model learns the training data too well and performs poorly on unseen data |
Which Azure service supports model training and deployment | Azure Machine Learning |
What is Model Underfitting | When a model is too simple and fails to capture patterns in the training data |
What is Hyperparameter Tuning | The process of optimizing settings for an AI model to improve its performance |
What are common evaluation metrics for Classification models | Accuracy precision recall and F1 score |
What is Batch Deployment | Deploying an AI model to process data in batches rather than real time |
What is Real-time Deployment | Deploying an AI model to provide immediate predictions or decisions as data is received |
What is Responsible AI in Azure | Ensuring AI models are fair explainable and ethically deployed |
What are the main steps in Data Preprocessing | Cleaning transformation splitting into training and test sets |
What is the difference between Training and Inference | Training builds the model while inference uses the model to make predictions |
What is Training in AI | The process of feeding data into a machine learning algorithm to create a model |
Why is Splitting Data important | To separate data into training and testing sets ensuring model evaluation is unbiased |
What is Data Cleaning | Removing or correcting inaccurate incomplete or irrelevant data |