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AWS Certified Machine Learning - Specialty (MLS-C01) Domain 3

Modeling

Official Exam Guide: Domain 3: Modeling

Skill Builder: AWS Certified Machine Learning - Specialty Exam Prep


Domain Overview

Domain 3 (36% - largest domain) focuses on framing business problems as ML problems, selecting appropriate models, training models, hyperparameter optimization, and evaluating models.


Task 3.1: Frame business problems as ML problems

Key Concepts:

Essential Documentation:


Task 3.2: Select appropriate model(s)

Key Algorithms:

Essential Documentation:


Task 3.3: Train ML models

Key Concepts:

Essential Documentation:


Task 3.4: Perform hyperparameter optimization

Key Concepts:

Essential Documentation:


Task 3.5: Evaluate ML models

Key Concepts:

Essential Documentation:


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Study Tips

  1. Master algorithm selection - Classification (XGBoost, random forest), Regression (linear learner), Clustering (k-means), Forecasting (DeepAR), Computer Vision (CNN), NLP (RNN, transformers).

  2. Learn evaluation metrics - Classification: accuracy, precision, recall, F1, AUC-ROC. Regression: RMSE, MAE, R². Confusion matrix interpretation.

  3. Understand hyperparameter tuning - SageMaker automatic model tuning, Bayesian optimization, random search, grid search strategies.

  4. Practice bias-variance tradeoff - Overfitting (high variance): regularization, more data. Underfitting (high bias): more features, complex model.

  5. Study training optimization - Distributed training strategies, gradient descent variants (SGD, Adam), learning rate schedules, early stopping.


Note: This is Domain 3 of 4, representing 36% (largest domain) of exam content.