Machine Learning Engineering on AWS

Machine Learning Engineering on AWS is an intermediate course designed for professionals who want to build, deploy, orchestrate, and operationalize machine learning solutions at scale using AWS services. The course combines theory with hands-on labs and activities to help participants develop production-ready ML applications.

This instructor-led training focuses on the full machine learning engineering lifecycle on AWS, from data preparation and model development to deployment, automation, and monitoring. Participants gain practical experience using services such as Amazon SageMaker AI and analytics tools like Amazon EMR to build scalable, robust, and operational ML solutions suitable for real-world production environments.

Course objectives

In this course, you will learn to:

  • Explain machine learning fundamentals and their applications in the AWS Cloud
  • Process, transform, and engineer data for ML tasks using AWS services
  • Select appropriate ML algorithms and modeling approaches based on problem requirements and interpretability
  • Design and implement scalable ML pipelines for training, deployment, and orchestration
  • Create automated CI/CD pipelines for ML workflows
  • Discuss appropriate security measures for ML resources on AWS
  • Implement monitoring strategies for deployed ML models, including detection of data drift

Prerequisites

We recommend that attendees of this course have:

  • Familiarity with basic machine learning concepts
  • Working knowledge of Python 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, which is beneficial but not required

Target audience

This course is designed for professionals interested in building, deploying, and operationalizing machine learning models on AWS. This includes current or aspiring machine learning engineers with limited prior AWS experience, as well as DevOps engineers, developers, and SysOps engineers.

Day 1 – Foundations, data processing and feature engineering

The first day introduces machine learning on AWS, including Amazon SageMaker AI and responsible ML concepts. You analyze ML business challenges, work with data processing and exploratory data analysis, and cover data transformation and feature engineering. The day includes hands-on labs using SageMaker Data Wrangler, Amazon EMR, and SageMaker Processing.

Day 2 – Model development, training and deployment

Day two focuses on choosing modeling approaches, training ML models with Amazon SageMaker AI, evaluating and tuning models, and implementing deployment strategies. You work with built-in algorithms, SageMaker Autopilot, hyperparameter tuning, and traffic-shifting techniques through practical labs.

Day 3 – Security, MLOps and monitoring

The final day covers securing ML resources on AWS, introducing MLOps concepts, and automating deployment with CI/CD pipelines. You also work with monitoring model performance and data quality, detecting data drift, and using SageMaker Model Monitor, supported by hands-on labs and a course wrap-up.

Practical information

Duration: 3 days
Price: 27 900 NOK
Course level: Intermediate

FAQ

Er dette et sertifiseringskurs?
Nei, dette er et opplæringskurs og gir ingen formell sertifisering.

Er kurset praktisk rettet?
Ja, kurset inkluderer presentasjoner, hands-on labs, demonstrasjoner og gruppeøvelser.

Hvilke AWS-tjenester brukes i kurset?
Kurset bruker blant annet Amazon SageMaker AI, SageMaker Pipelines, SageMaker Model Monitor og Amazon EMR.

Passer kurset for deltakere uten mye AWS-erfaring?
Ja, kurset er rettet mot ML-ingeniører som kan ha begrenset AWS-erfaring, men som har grunnleggende ML- og Python-kunnskap.

Dekker kurset både utvikling og drift av ML-modeller?
Ja, kurset dekker hele ML-ingeniørrollen, inkludert utvikling, automatisering, sikkerhet, drift og overvåking.

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