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Machine Learning Engineering on AWS

Gain practical experience using AWS services such as Amazon SageMaker AI and analytics tools such as Amazon EMR to develop robust, scalable, and production-ready machine learning applications

Machine Learning (ML) Engineering on Amazon Web Services (AWS) is a 3-day intermediate course designed for ML professionals seeking to learn machine learning engineering on AWS.

GK# 910028 Vendor# MLEng
Vendor Credits:
  • Global Knowledge Delivered Course
  • Training Exclusives
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Who Should Attend?

Professionals who are interested in building, deploying, and operationalizing machine learning models on AWS. This could include current and in-training machine learning engineers who might have little prior experience with AWS.

Other roles that can benefit from this training:

  • DevOps Engineer
  • Developer
  • SysOps Engineer

What You'll Learn

  • Participants learn to build, deploy, orchestrate, and operationalize ML solutions at scale through a balanced combination of theory, practical labs, and activities
  • Gain experience using Amazon SageMaker AI and analytics tools such as Amazon EMR

Course Outline

Day 1

  • Module 0: Course Introduction
  • Module 1: Introduction to Machine Learning (ML) on AWS
    • Topic A: Introduction to ML
    • Topic B: Amazon SageMaker AI
    • Topic C: Responsible ML
  • Module 2: Analyzing Machine Learning (ML) Challenges
    • Topic A: Evaluating ML business challenges
    • Topic B: ML training approaches
    • Topic C: ML training algorithms
  • Module 3: Data Processing for Machine Learning (ML)
    • Topic A: Data preparation and types
    • Topic B: Exploratory data analysis
    • Topic C: AWS storage options and choosing storage
  • Module 4: Data Transformation and Feature Engineering
    • Topic A: Handling incorrect, duplicated, and missing data
    • Topic B: Feature engineering concepts
    • Topic C: Feature selection techniques
    • Topic D: AWS data transformation services
    • Lab 1: Analyze and Prepare Data with Amazon SageMaker Data Wrangler and Amazon EMR
    • Lab 2: Data Processing Using SageMaker Processing and the SageMaker Python SDK

Day 2

  • Module 5: Choosing a Modeling Approach
    • Topic A: Amazon SageMaker AI built-in algorithms
    • Topic B: Selecting built-in training algorithms
    • Topic C: Amazon SageMaker Autopilot
    • Topic D: Model selection considerations
    • Topic E: ML cost considerations
  • Module 6: Training Machine Learning (ML) Models
    • Topic A: Model training concepts
    • Topic B: Training models in Amazon SageMaker AI
    • Lab 3: Training a model with Amazon SageMaker AI
  • Module 7: Evaluating and Tuning Machine Learning (ML) models
    • Topic A: Evaluating model performance
    • Topic B: Techniques to reduce training time
    • Topic C: Hyperparameter tuning techniques
    • Lab 4: Model Tuning and Hyperparameter Optimization with Amazon SageMaker AI
  • Module 8: Model Deployment Strategies
    • Topic A: Deployment considerations and target options
    • Topic B: Deployment strategies
    • Topic C: Choosing a model inference strategy
    • Topic D: Container and instance types for inference
    • Lab 5: Shifting Traffic A/B

Day 3

  • Module 9: Securing AWS Machine Learning (ML) Resources
    • Topic A: Access control
    • Topic B: Network access controls for ML resources
    • Topic C: Security considerations for CI/CD pipelines
  • Module 10: Machine Learning Operations (MLOps) and Automated Deployment
    • Topic A: Introduction to MLOps
    • Topic B: Automating testing in CI/CD pipelines
    • Topic C: Continuous delivery services
    • Lab 6: Using Amazon SageMaker Pipelines and the Amazon SageMaker Model Registry with Amazon SageMaker Studio
  • Module 11: Monitoring Model Performance and Data Quality
    • Topic A: Detecting drift in ML models
    • Topic B: SageMaker Model Monitor
    • Topic C: Monitoring for data quality and model quality
    • Topic D: Automated remediation and troubleshooting
    • Lab 7: Monitoring a Model for Data Drift
  • Module 12: Course Wrap-up
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Prerequisites

We recommend that attendees of this course have the following:

  • Familiarity with basic machine learning concepts
  • Working knowledge of Python programming language and common data science libraries such as NumPy, Pandas, and Scikit-learn
  • Basic understanding of cloud computing concepts and familiarity with AWS
  • Experience with version control systems such as Git (beneficial but not required)

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