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Machine Learning Engineering  with Python

You're reading from   Machine Learning Engineering with Python Manage the lifecycle of machine learning models using MLOps with practical examples

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Product type Paperback
Published in Aug 2023
Publisher Packt
ISBN-13 9781837631964
Length 462 pages
Edition 2nd Edition
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Author (1):
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Andrew P. McMahon Andrew P. McMahon
Author Profile Icon Andrew P. McMahon
Andrew P. McMahon
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Table of Contents (12) Chapters Close

Preface 1. Introduction to ML Engineering 2. The Machine Learning Development Process FREE CHAPTER 3. From Model to Model Factory 4. Packaging Up 5. Deployment Patterns and Tools 6. Scaling Up 7. Deep Learning, Generative AI, and LLMOps 8. Building an Example ML Microservice 9. Building an Extract, Transform, Machine Learning Use Case 10. Other Books You May Enjoy
11. Index

Training at scale

When we introduced Ray in Chapter 6, Scaling Up, we mentioned use cases where the data or processing time requirements were such that using a very scalable parallel computing framework made sense. What was not made explicit is that sometimes these requirements come from the fact that we actually want to train many models, not just one model on a large amount of data or one model more quickly. This is what we will do here.

The retail forecasting example we described in Chapter 1, Introduction to ML Engineering uses a data set with several different retail stores in it. Rather than creating one model that could have a store number or identifier as a feature, a better strategy would perhaps be to train a forecasting model for each individual store. This is likely to give better accuracy as the features of the data at the store level which may give some predictive power will not be averaged out by the model looking at a combination of all the stores together. This...

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