Lab - Orchestrate a Machine Learning Workflow using Amazon SageMaker Pipelines and SageMaker Model Registry
Offered By: Amazon Web Services via AWS Skill Builder
Course Description
Overview
In this lab, you manage different steps of an automated machine learning (ML) workflow. This includes data loading, data transformation, training and tuning, model evaluation, bias detection, and deployment. You also use the model registry for storing the trained models.
Objectives
- Create a SageMaker pipeline.
- View pipeline steps and artifacts.
- Register trained models with the model registry through a pipeline step.
Prerequisites
- Basic navigation of the AWS Management Console
- Basic familiarity with Machine Learning concepts
Outline
Task 1: Set up the environment
Task 2: Create and monitor a SageMaker pipeline
Tags
Related Courses
Interprofessional Healthcare InformaticsUniversity of Minnesota via Coursera Data Science at Scale - Capstone Project
University of Washington via Coursera Implementing ETL with SQL Server Integration Services
Microsoft via edX Introduzione a R
University of Modena and Reggio Emilia via EduOpen Практики работы с данными средствами Power Query и Power Pivot
Saint Petersburg State University via Coursera