Course Details

Learn how Amazon SageMaker mitigates the core challenges of implementing a machine learning pipeline. In this course, you’ll learn about using SageMaker notebooks and instances to help power your machine learning workloads. We’ll cover topics across the machine learning pipeline, from algorithm selection, to running training jobs, to deployment, and more.

Topics Covered:

In this course, you will learn:

  • The machine learning pipeline
  • What is Amazon SageMaker and what are its key features?
  • SageMaker model selection
  • Choosing an algorithm
  • Data Formatting
  • Creating and running training jobs
  • Hyperparameter tuning
  • Deployment
  • Inference types

Who Should Attend?

This course is intended for:

  • Developers
  • Data scientists
  • Data platform engineers
  • Anyone interested in learning the basics of Amazon SageMaker - fundamental understanding of machine learning is helpful.

Speaker

  • Darren White AWS Technical Trainer

Intro body copy here about 2018 re:Invent launches.

Watch Now:

Compute

Service How To

December 19th, 2018 | 1:00 PM PT

Developing Deep Learning Models for Computer Vision with
Amazon EC2 P3 Instances.

Register Now>

Containers

What's New / Cloud Innovation

December 11th, 2018 | 1:00 PM PT

EMBARGOED

Register Now>

Data Lakes & Analytics

Webinar 1:

What's New / Cloud Innovation

December 10th, 2018 | 11:00 AM PT

EMBARGOED

Register Now>

Webinar 2:

What's New / Cloud Innovation

December 12th, 2018 | 11:00 AM PT

EMBARGOED

Register Now>