Book Image

Getting Started with Amazon SageMaker Studio

By : Michael Hsieh
Book Image

Getting Started with Amazon SageMaker Studio

By: Michael Hsieh

Overview of this book

Amazon SageMaker Studio is the first integrated development environment (IDE) for machine learning (ML) and is designed to integrate ML workflows: data preparation, feature engineering, statistical bias detection, automated machine learning (AutoML), training, hosting, ML explainability, monitoring, and MLOps in one environment. In this book, you'll start by exploring the features available in Amazon SageMaker Studio to analyze data, develop ML models, and productionize models to meet your goals. As you progress, you will learn how these features work together to address common challenges when building ML models in production. After that, you'll understand how to effectively scale and operationalize the ML life cycle using SageMaker Studio. By the end of this book, you'll have learned ML best practices regarding Amazon SageMaker Studio, as well as being able to improve productivity in the ML development life cycle and build and deploy models easily for your ML use cases.
Table of Contents (16 chapters)
1
Part 1 – Introduction to Machine Learning on Amazon SageMaker Studio
4
Part 2 – End-to-End Machine Learning Life Cycle with SageMaker Studio
11
Part 3 – The Production and Operation of Machine Learning with SageMaker Studio

Running CI/CD in SageMaker Studio

The ML pipeline we've seen running previously is just one part of our CI/CD system at work. The ML pipeline is triggered by a CI/CD pipeline in AWS CodePipeline. Let's dive into the three CI/CD pipelines that the SageMaker project template sets up for us.

There are three CodePipeline pipelines:

  • <project-name-prefix>-modelbuild: The purpose of this pipeline is to run the ML pipeline and create an ML model in SageMaker Model Registry. This CI/CD pipeline runs the ML pipeline as a build step when triggered by a commit to the repository. The ML model in the SageMaker model registry needs to be approved in order to trigger the next pipeline, modeldeploy.
  • <project-name-prefix>-modeldeploy: The purpose of this pipeline is to deploy the latest approved ML model in the SageMaker model registry as a SageMaker endpoint. The build process deploys a staging endpoint first and requests manual approval before proceeding to deploy...