Amazon Web Services

Amazon SageMaker provides a comprehensive suite of MLOps tools to streamline the machine learning lifecycle. This video demonstrates how to leverage SageMaker to implement an end-to-end MLOps solution, enabling faster experimentation, training, testing, deployment, and governance of ML models at scale. Learn how to automate and standardize your ML workflows to productionize high-performance models efficiently without compromising on quality. The session covers practical examples and best practices for using SageMaker's MLOps capabilities to accelerate your organization's AI/ML initiatives.

product-information
skills-and-how-to
data
ai-ml
sagemaker
Show 2 more

Up Next

VideoThumbnail
15:58

Revolutionizing Business Intelligence: Generative AI Features in Amazon QuickSight

Nov 22, 2024
VideoThumbnail
9:30

Deploying ASP.NET Core 6 Applications on AWS Elastic Beanstalk Linux: A Step-by-Step Guide for .NET Developers

Nov 22, 2024
VideoThumbnail
47:39

Simplifying Application Authorization: Amazon Verified Permissions at AWS re:Invent 2023

Nov 22, 2024
VideoThumbnail
2:51

How to Start, Connect, and Enroll Amazon EC2 Mac Instances into Jamf for Apple Mobile Device Management

Nov 22, 2024
VideoThumbnail
39:31

AWS re:Invent 2023: What's New in AWS Amplify for Full-Stack Web and Mobile App Development

Nov 22, 2024