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Machine Learning on Kubernetes

You're reading from   Machine Learning on Kubernetes A practical handbook for building and using a complete open source machine learning platform on Kubernetes

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Product type Paperback
Published in Jun 2022
Publisher Packt
ISBN-13 9781803241807
Length 384 pages
Edition 1st Edition
Languages
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Authors (2):
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Ross Brigoli Ross Brigoli
Author Profile Icon Ross Brigoli
Ross Brigoli
Faisal Masood Faisal Masood
Author Profile Icon Faisal Masood
Faisal Masood
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Toc

Table of Contents (16) Chapters Close

Preface 1. Part 1: The Challenges of Adopting ML and Understanding MLOps (What and Why)
2. Chapter 1: Challenges in Machine Learning FREE CHAPTER 3. Chapter 2: Understanding MLOps 4. Chapter 3: Exploring Kubernetes 5. Part 2: The Building Blocks of an MLOps Platform and How to Build One on Kubernetes
6. Chapter 4: The Anatomy of a Machine Learning Platform 7. Chapter 5: Data Engineering 8. Chapter 6: Machine Learning Engineering 9. Chapter 7: Model Deployment and Automation 10. Part 3: How to Use the MLOps Platform and Build a Full End-to-End Project Using the New Platform
11. Chapter 8: Building a Complete ML Project Using the Platform 12. Chapter 9: Building Your Data Pipeline 13. Chapter 10: Building, Deploying, and Monitoring Your Model 14. Chapter 11: Machine Learning on Kubernetes 15. Other Books You May Enjoy

Using MLFlow as an experiment tracking system

In this section, you will see how the MLflow library allows you to record your experiments with the MLflow server. The custom notebook image, which you saw in the first part of this chapter, already has MLflow libraries packaged into the container. Please refer to the chapter6/requirements.txt file for the exact version of the MLflow library.

Before we start this activity, it is important to understand two main concepts: experiment and run.

An experiment is a logical name under which MLflow records and groups the metadata, for example, an experiment could be the name of your project. Let's say you are working on building a model for predicting credit card fraud for your retail customer. This could become the experiment name.

A run is a single execution of an experiment that is tracked in MLflow. A run belongs to an experiment. Each run may have a slightly different configuration, different hyperparameters, and sometimes, different...

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