Amazon Web Services

In this AWS Summit ANZ 2022 session, Sara van de Moosdijk (Moose) presents a comprehensive guide on designing end-to-end MLOps architectures for organizations of varying sizes and maturity levels. She walks through the challenges of deploying and maintaining machine learning models in production, then introduces MLOps concepts and AWS services that can address these challenges. Moose provides detailed architecture diagrams for small, medium, and large MLOps setups, explaining key components like automated retraining pipelines, model registries, and monitoring tools. The session aims to help architects and developers implement effective MLOps practices using AWS services like SageMaker, Lambda, EventBridge, and CodePipeline. Moose emphasizes that MLOps is a journey, encouraging viewers to start with basic steps and gradually adopt more advanced features as needed.

product-information
skills-and-how-to
migration-and-modernization
ai-ml
devtools
Show 6 more

Up Next

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
1:01:07

Accelerate ML Model Delivery: Implementing End-to-End MLOps Solutions with Amazon SageMaker

Nov 22, 2024
VideoThumbnail
47:39

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

Nov 22, 2024
VideoThumbnail
53:14

AWS re:Invent 2023: SaaS DevOps Deep Dive - Automating Multi-Tenant Deployments for Container and Serverless Environments

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