Book Image

MLOps with Red Hat OpenShift

By : Ross Brigoli, Faisal Masood
Book Image

MLOps with Red Hat OpenShift

By: Ross Brigoli, Faisal Masood

Overview of this book

MLOps with OpenShift offers practical insights for implementing MLOps workflows on the dynamic OpenShift platform. As organizations worldwide seek to harness the power of machine learning operations, this book lays the foundation for your MLOps success. Starting with an exploration of key MLOps concepts, including data preparation, model training, and deployment, you’ll prepare to unleash OpenShift capabilities, kicking off with a primer on containers, pods, operators, and more. With the groundwork in place, you’ll be guided to MLOps workflows, uncovering the applications of popular machine learning frameworks for training and testing models on the platform. As you advance through the chapters, you’ll focus on the open-source data science and machine learning platform, Red Hat OpenShift Data Science, and its partner components, such as Pachyderm and Intel OpenVino, to understand their role in building and managing data pipelines, as well as deploying and monitoring machine learning models. Armed with this comprehensive knowledge, you’ll be able to implement MLOps workflows on the OpenShift platform proficiently.
Table of Contents (13 chapters)
Free Chapter
1
Part 1: Introduction
3
Part 2: Provisioning and Configuration
6
Part 3: Operating ML Workloads

Understanding how OpenShift supports MLOps

As you have seen, an application platform provides an opinionated way of running services on Kubernetes. An example of this is OpenShift, which provides Prometheus and Grafana as monitoring services. A similar approach is applied to the software required to run MLOps on OpenShift. Red Hat and its partners provide MLOps components on top of the OpenShift platform that provides the services for a complete ML platform. Using OpenShift, all the MLOps capabilities can be consistently deployed on-premises and on the cloud.

Just like DevOps, one of the primary objectives of MLOps is to bridge the gap between the engineers who are building the applications – or in this case, the data scientists and ML engineers who are developing ML models – and the operations team. To achieve this, we need to have a common platform where engineers and operators will meet. The best tool we have for this is containerization platforms. This allows both...