Skip to main content

Machine Learning on AWS

Suman Debnath, Principal Developer Advocate for Machine Learning at AWS, guides you through the essentials of running machine learning workflows on AWS.
Apr 23, 2025

Amazon Web Services (AWS) offers powerful tools for building and scaling machine learning models, from traditional analyses to generative AI workflows. Learning how to use Amazon Bedrock and SageMaker not only boosts productivity but also enhances the scalability and reliability of machine learning projects. For data scientists and machine learning engineers, moving analyses to the cloud with AWS opens new possibilities for collaboration and deployment.

In this hands-on code-along session, Suman Debnath, Principal Developer Advocate for Machine Learning at AWS, guides you through the essentials of running machine learning workflows on AWS. You’ll learn how to get started with Amazon Bedrock and SageMaker, explore the full lifecycle of machine learning and generative AI workflows, and discover how to seamlessly transition your analyses to the cloud. This session is ideal for professionals looking to expand their machine learning capabilities and leverage the cloud for greater efficiency and scalability.

Key Takeaways:

  • Learn how to use Amazon Bedrock and SageMaker for machine learning.
  • Understand machine learning and generative AI workflows on AWS.
  • Discover best practices for moving machine learning analyses to the cloud.

Session Resources (including link to GitHub Repo)

Topics
Related

blog

How to Learn AWS From Scratch in 2025: The Complete Guide

Your complete guide to learning AWS, whether starting fresh or building on existing knowledge. Discover a step-by-step roadmap along with several resources to get you started!
Thalia Barrera's photo

Thalia Barrera

15 min

Tutorial

The Complete Guide to Machine Learning on AWS with Amazon SageMaker

This comprehensive tutorial teaches you how to use AWS SageMaker to build, train, and deploy machine learning models. We guide you through the complete workflow, from setting up your AWS environment and creating a SageMaker notebook instance to preparing data, training models, and deploying them as endpoints.
Bex Tuychiev's photo

Bex Tuychiev

15 min

Tutorial

Deep Learning with Jupyter Notebooks in the Cloud

This step-by-step tutorial will show you how to set up and use Jupyter Notebook on Amazon Web Services (AWS) EC2 GPU for deep learning.
Dan Becker's photo

Dan Becker

10 min

Tutorial

A Beginner's Guide to Azure Machine Learning

Explore Azure Machine Learning in our beginner's guide to setting up, deploying models, and leveraging AutoML & ML Studio in the Azure ecosystem.
Moez Ali's photo

Moez Ali

11 min

Tutorial

Machine Learning, Pipelines, Deployment and MLOps Tutorial

Learn basic MLOps and end-to-end development and deployment of ML pipelines.
Moez Ali's photo

Moez Ali

15 min

code-along

Getting Started with Machine Learning in Python

Learn the fundamentals of supervised learning by using scikit-learn.
George Boorman's photo

George Boorman

See MoreSee More