Course Information
Course Name
AWS-MLE: Machine Learning Engineering on AWS
Exam code
MLA-C01
Duration
3 Days
Overview
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. Participants learn to build, deploy, orchestrate, and operationalize ML solutions at scale through a balanced combination of theory, practical labs, and activities. Participants will 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.
Course level: Intermediate
Duration: 3 days
Audience Profile
This course is designed for 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 are DevOps engineer, developer, and SysOps engineer.
Prerequisites
We recommend that attendees of this course have:
· 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)
At Course Completion
In this course, you will learn to:
· Explain ML fundamentals and its applications in the AWS Cloud.
· Process, transform, and engineer data for ML tasks by using AWS services.
· Select appropriate ML algorithms and modeling approaches based on problem requirements and model interpretability.
· Design and implement scalable ML pipelines by using AWS services for model training, deployment, and orchestration.
· Create automated continuous integration and delivery (CI/CD) pipelines for ML workflows.
· Discuss appropriate security measures for ML resources on AWS.
· Implement monitoring strategies for deployed ML models, including techniques for detecting data dri
Course Outline
Module 1 : Introduction to Machine Learning (ML ) on AWS
Introduction to ML
Amazon SageMaker AI
Responsible ML
Module 2 : Analyzing Machine Learning (ML) Challenges
Evaluating ML business challenges
ML training approaches
ML training algorithms
Module 3 : Data Processing for Machine Learning (ML)
Data preparation and types
Exploratory data analysis
AWS storage options and choosing storage
Module 4 : Data Transformation and Feature Engineering
Handling incorrect, duplicated, and missing data
Feature engineering concepts
Feature selection techniques
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
Module 5 : Choosing a Modeling Approach
Amazon SageMaker AI built-in algorithms
Selecting built-in training algorithms
Amazon SageMaker Autopilot
Model selection considerations
ML cost considerations
Module 6 : Training Machine Learning (ML) Models
Model training concepts
Training models in Amazon SageMaker AI
Lab 3: Training a model with Amazon SageMaker AI
Module 7 : Evaluating and Tuning Machine Learning (ML) Models
Evaluating model performance
Techniques to reduce training time
Hyperparameter tuning techniques
Lab 4: Model Tuning and Hyperparameter Optimization with Amazon SageMaker AI
Module 8 : Model Deployment Strategies
Deployment considerations and target options
Deployment strategies
Choosing a model inference strategy
Container and instance types for inference
Lab 5: Shifting Traffic A/B
Module 9 : Securing AWS Machine Learning (ML) Resources
Access control
Network access controls for ML resources
Security considerations for CI/CD pipelines
Module 10 : Machine Learning Operations (MLOps) and Autometed Deployment
Introduction to MLOps
Automating testing in CI/CD pipelines
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
Detecting drift in ML models
SageMaker Model Monitor
Monitoring for data quality and model quality
Automated remediation and troubleshooting
Lab 7: Monitoring a Model for Data Drift
Module 12 : Course Wrap-up
All AWS certification courses are conducted by certified trainers from Iverson.
Digital Methods acts as the official training partner and assists with program consultation, registration, coordination, scheduling, and administrative arrangements to ensure a smooth and professional learning experience.