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Machine Learning at Scale with H2O

You're reading from   Machine Learning at Scale with H2O A practical guide to building and deploying machine learning models on enterprise systems

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Product type Paperback
Published in Jul 2022
Publisher Packt
ISBN-13 9781800566019
Length 396 pages
Edition 1st Edition
Tools
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Authors (2):
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Gregory Keys Gregory Keys
Author Profile Icon Gregory Keys
Gregory Keys
David Whiting David Whiting
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David Whiting
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Table of Contents (22) Chapters Close

Preface 1. Section 1 – Introduction to the H2O Machine Learning Platform for Data at Scale
2. Chapter 1: Opportunities and Challenges FREE CHAPTER 3. Chapter 2: Platform Components and Key Concepts 4. Chapter 3: Fundamental Workflow – Data to Deployable Model 5. Section 2 – Building State-of-the-Art Models on Large Data Volumes Using H2O
6. Chapter 4: H2O Model Building at Scale – Capability Articulation 7. Chapter 5: Advanced Model Building – Part I 8. Chapter 6: Advanced Model Building – Part II 9. Chapter 7: Understanding ML Models 10. Chapter 8: Putting It All Together 11. Section 3 – Deploying Your Models to Production Environments
12. Chapter 9: Production Scoring and the H2O MOJO 13. Chapter 10: H2O Model Deployment Patterns 14. Section 4 – Enterprise Stakeholder Perspectives
15. Chapter 11: The Administrator and Operations Views 16. Chapter 12: The Enterprise Architect and Security Views 17. Section 5 – Broadening the View – Data to AI Applications with the H2O AI Cloud Platform
18. Chapter 13: Introducing H2O AI Cloud 19. Chapter 14: H2O at Scale in a Larger Platform Context 20. Other Books You May Enjoy Appendix : Alternative Methods to Launch H2O Clusters

Putting it all together – algorithms, feature engineering, grid search, and AutoML

The H2O AutoML implementation is simple yet powerful, so why would we ever need grid search? In fact, for a lot of real-world enterprise use cases, any of the top candidates in an AutoML leaderboard would be great models to put into production. This is especially true of the stacked ensemble models produced by AutoML.

However, our coverage of grid search was not just to satisfy intellectual curiosity. A more involved process, which we will outline next, uses AutoML followed by a customized grid search to discover and fine-tune model performance.

An enhanced AutoML procedure

Here are the steps:

  1. Start by running AutoML on your data to create a baseline leaderboard. You can investigate leading models, gain an understanding of the runtimes required to fit algorithms to your data, and more, which may inform future AutoML parameter choices and expectations.
  2. The second stage is feature...
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