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Machine Learning with Amazon SageMaker Cookbook

You're reading from   Machine Learning with Amazon SageMaker Cookbook 80 proven recipes for data scientists and developers to perform machine learning experiments and deployments

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Product type Paperback
Published in Oct 2021
Publisher Packt
ISBN-13 9781800567030
Length 762 pages
Edition 1st Edition
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Author (1):
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Joshua Arvin Lat Joshua Arvin Lat
Author Profile Icon Joshua Arvin Lat
Joshua Arvin Lat
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Table of Contents (11) Chapters Close

Preface 1. Chapter 1: Getting Started with Machine Learning Using Amazon SageMaker 2. Chapter 2: Building and Using Your Own Algorithm Container Image FREE CHAPTER 3. Chapter 3: Using Machine Learning and Deep Learning Frameworks with Amazon SageMaker 4. Chapter 4: Preparing, Processing, and Analyzing the Data 5. Chapter 5: Effectively Managing Machine Learning Experiments 6. Chapter 6: Automated Machine Learning in Amazon SageMaker 7. Chapter 7: Working with SageMaker Feature Store, SageMaker Clarify, and SageMaker Model Monitor 8. Chapter 8: Solving NLP, Image Classification, and Time-Series Forecasting Problems with Built-in Algorithms 9. Chapter 9: Managing Machine Learning Workflows and Deployments 10. Other Books You May Enjoy

Chapter 5: Effectively Managing Machine Learning Experiments

In the previous chapter, we worked on several recipes that focused on preparing and processing the data before passing it as input to the training jobs. In this chapter, we will focus on different solutions and capabilities to help us manage machine learning (ML) experiments in Amazon SageMaker.

Once we have performed a certain number of ML experiments, we will realize that not all experiments succeed, and it takes a bit of trial and error to build high-quality ML models. This is somewhat similar to software development where bugs in the code need to be detected as early as possible to prevent these bugs from accidentally getting deployed into a production environment. Debugging ML experiments is generally much harder compared to debugging issues in software code since we would need a specialized tool that inspects and monitors changes in the values of parameters, metrics, and other variables in the experiment and performs...

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