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Amazon SageMaker Best Practices

You're reading from   Amazon SageMaker Best Practices Proven tips and tricks to build successful machine learning solutions on Amazon SageMaker

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Product type Paperback
Published in Sep 2021
Publisher Packt
ISBN-13 9781801070522
Length 348 pages
Edition 1st Edition
Languages
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Authors (3):
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Randy DeFauw Randy DeFauw
Author Profile Icon Randy DeFauw
Randy DeFauw
Shelbee Eigenbrode Shelbee Eigenbrode
Author Profile Icon Shelbee Eigenbrode
Shelbee Eigenbrode
Sireesha Muppala Sireesha Muppala
Author Profile Icon Sireesha Muppala
Sireesha Muppala
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Table of Contents (20) Chapters Close

Preface 1. Section 1: Processing Data at Scale
2. Chapter 1: Amazon SageMaker Overview FREE CHAPTER 3. Chapter 2: Data Science Environments 4. Chapter 3: Data Labeling with Amazon SageMaker Ground Truth 5. Chapter 4: Data Preparation at Scale Using Amazon SageMaker Data Wrangler and Processing 6. Chapter 5: Centralized Feature Repository with Amazon SageMaker Feature Store 7. Section 2: Model Training Challenges
8. Chapter 6: Training and Tuning at Scale 9. Chapter 7: Profile Training Jobs with Amazon SageMaker Debugger 10. Section 3: Manage and Monitor Models
11. Chapter 8: Managing Models at Scale Using a Model Registry 12. Chapter 9: Updating Production Models Using Amazon SageMaker Endpoint Production Variants 13. Chapter 10: Optimizing Model Hosting and Inference Costs 14. Chapter 11: Monitoring Production Models with Amazon SageMaker Model Monitor and Clarify 15. Section 4: Automate and Operationalize Machine Learning
16. Chapter 12: Machine Learning Automated Workflows 17. Chapter 13:Well-Architected Machine Learning with Amazon SageMaker 18. Chapter 14: Managing SageMaker Features across Accounts 19. Other Books You May Enjoy

Preparing, building, training and tuning, deploying, and managing ML models

First, let's review the ML life cycle. By the end of this section, you should understand how SageMaker's capabilities map to the key phases of the ML life cycle. The following diagram shows you what the ML life cycle looks like:

Figure 1.1 – Machine learning life cycle

Figure 1.1 – Machine learning life cycle

As you can see, there are three phases of the ML life cycle at a high level:

  • In the Data Preparation phase, you collect and explore data, label a ground truth dataset, and prepare your features. Feature engineering, in turn, has several steps, including data normalization, encoding, and calculating embeddings, depending on the ML algorithm you choose.
  • In the Model Training phase, you build your model and tune it until you achieve a reasonable validation score that aligns with your business objective.
  • In the Operations phase, you test how well your model performs against real-world data, deploy it, and monitor how well it performs. We will cover model monitoring in more detail in Chapter 11, Monitoring Production Models with Amazon SageMaker Model Monitor and Clarify.

This diagram is purposely simplified; in reality, each phase may have multiple smaller steps, and the whole life cycle is iterative. You're never really done with ML; as you gather data on how your model performs in production, you'll likely try to improve it by collecting more data, changing your features, or tuning the model.

So how do SageMaker capabilities map to the ML life cycle? Before we answer that question, let's take a look at the SageMaker console (Figure 1.2):

Figure 1.2 – Navigation pane in the SageMaker console

Figure 1.2 – Navigation pane in the SageMaker console

The appearance of the console changes frequently and the preceding screenshot shows the current appearance of the console at the time of writing.

These capability groups align to the ML life cycle, shown as follows:

Figure 1.3 – Mapping of SageMaker capabilities to the ML life cycle

Figure 1.3 – Mapping of SageMaker capabilities to the ML life cycle

SageMaker Studio is not shown here, as it is an integrated workbench that provides a user interface for many SageMaker capabilities. The marketplace provides both data and algorithms that can be used across the life cycle.

Now that we have had a look at the console, let's dive deeper into the individual capabilities of SageMaker in each life cycle phase.

You have been reading a chapter from
Amazon SageMaker Best Practices
Published in: Sep 2021
Publisher: Packt
ISBN-13: 9781801070522
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