Description
Who should attend
- Developers
 - Data Scientists
 
Certifications
This course is part of the following Certifications:
Prerequisites
- Familiarity with Python programming language
 - Basic understanding of Machine Learning
 
Course Objectives
- Prepare a dataset for training
 - Train and evaluate a Machine Learning model
 - Automatically tune a Machine Learning model
 - Prepare a Machine Learning model for production
 - Think critically about Machine Learning model results
 
Outline: Practical Data Science with Amazon SageMaker (PDSASM)
Module 1: Introduction to Machine Learning
- Types of ML
 - Job Roles in ML
 - Steps in the ML pipeline
 
Module 2: Introduction to Data Prep and SageMaker
- Training and Test dataset defined
 - Introduction to SageMaker
 - Demo: SageMaker console
 - Demo: Launching a Jupyter notebook
 
Module 3: Problem formulation and Dataset Preparation
- Business Challenge: Customer churn
 - Review Customer churn dataset
 
Module 4: Data Analysis and Visualization
- Demo: Loading and Visualizing your dataset
 - Exercise 1: Relating features to target variables
 - Exercise 2: Relationships between attributes
 - Demo: Cleaning the data
 
Module 5: Training and Evaluating a Model
- Types of Algorithms
 - XGBoost and SageMaker
 - Demo 5: Training the data
 - Exercise 3: Finishing the Estimator definition
 - Exercise 4: Setting hyperparameters
 - Exercise 5: Deploying the model
 - Demo: Hyperparameter tuning with SageMaker
 - Demo: Evaluating Model Performance
 
Module 6: Automatically Tune a Model
- Automatic hyperparameter tuning with SageMaker
 - Exercises 6-9: Tuning Jobs
 
Module 7: Deployment / Production Readiness
- Deploying a model to an endpoint
 - A/B deployment for testing
 - Auto Scaling Scaling
 - Demo: Configure and Test Autoscaling
 - Demo: Check Hyperparameter tuning job
 - Demo: AWS Autoscaling
 - Exercise 10-11: Set up AWS Autoscaling
 
Module 8: Relative Cost of Errors
- Cost of various error types
 - Demo: Binary Classification cutoff
 
Module 9: Amazon SageMaker Architecture and features
- Accessing Amazon SageMaker notebooks in a VPC
 - Amazon SageMaker batch transforms
 - Amazon SageMaker Ground Truth
 - Amazon SageMaker Neo
 




