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The Machine Learning Solutions Architect Handbook

You're reading from   The Machine Learning Solutions Architect Handbook Practical strategies and best practices on the ML lifecycle, system design, MLOps, and generative AI

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Product type Paperback
Published in Apr 2024
Publisher Packt
ISBN-13 9781805122500
Length 602 pages
Edition 2nd Edition
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Author (1):
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David Ping David Ping
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David Ping
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Table of Contents (19) Chapters Close

Preface 1. Navigating the ML Lifecycle with ML Solutions Architecture FREE CHAPTER 2. Exploring ML Business Use Cases 3. Exploring ML Algorithms 4. Data Management for ML 5. Exploring Open-Source ML Libraries 6. Kubernetes Container Orchestration Infrastructure Management 7. Open-Source ML Platforms 8. Building a Data Science Environment Using AWS ML Services 9. Designing an Enterprise ML Architecture with AWS ML Services 10. Advanced ML Engineering 11. Building ML Solutions with AWS AI Services 12. AI Risk Management 13. Bias, Explainability, Privacy, and Adversarial Attacks 14. Charting the Course of Your ML Journey 15. Navigating the Generative AI Project Lifecycle 16. Designing Generative AI Platforms and Solutions 17. Other Books You May Enjoy
18. Index

Advanced ML Engineering

Congratulations on making it so far! By now, you should have developed a good understanding of the core fundamental skills that an ML solutions architect needs in order to operate effectively across the ML lifecycle. In this chapter, we will delve into advanced ML concepts. Our focus will be on exploring a range of options for distributed model training for large models and datasets. Understanding the concept and techniques for distributed training is becoming increasingly important as all large-scale model training such as GPT will require distributed training architecture. Furthermore, we’ll delve into diverse technical approaches aimed at optimizing model inference latency. As model sizes grow larger, having a good grasp on how to optimize models for low-latency inference is becoming an essential skill in ML engineering. Lastly, we will close this chapter with a hands-on lab on distributed model training.

Specifically, we will cover the following...

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