Book Image

Engineering MLOps

By : Emmanuel Raj
Book Image

Engineering MLOps

By: Emmanuel Raj

Overview of this book

Engineering MLps presents comprehensive insights into MLOps coupled with real-world examples in Azure to help you to write programs, train robust and scalable ML models, and build ML pipelines to train and deploy models securely in production. The book begins by familiarizing you with the MLOps workflow so you can start writing programs to train ML models. Then you’ll then move on to explore options for serializing and packaging ML models post-training to deploy them to facilitate machine learning inference, model interoperability, and end-to-end model traceability. You’ll learn how to build ML pipelines, continuous integration and continuous delivery (CI/CD) pipelines, and monitor pipelines to systematically build, deploy, monitor, and govern ML solutions for businesses and industries. Finally, you’ll apply the knowledge you’ve gained to build real-world projects. By the end of this ML book, you'll have a 360-degree view of MLOps and be ready to implement MLOps in your organization.
Table of Contents (18 chapters)
1
Section 1: Framework for Building Machine Learning Models
7
Section 2: Deploying Machine Learning Models at Scale
13
Section 3: Monitoring Machine Learning Models in Production

The ML solution development process

ML offers many possibilities to augment and automate business. To get the best from ML, teams and people engaged in ML-driven business transformation need to understand both ML and the business itself. Efficient business transformation begins with having a rough understanding of the business, including aspects such as value-chain analysis, use-case identification, data mapping, and business simulations to validate the business transformation. Figure 2.1 presents a process to develop ML solutions to augment or automate business operations:

Figure 2.1 – ML solution development process

Business understanding is the genesis of developing an ML solution. After having a decent business understanding, we proceed to data analysis, where the right data is acquired, versioned, and stored. Data is consumed for ML modeling using data pipelines where feature engineering is done to get the right features to train the model. We evaluate...