Book Image

Machine Learning on Kubernetes

By : Faisal Masood, Ross Brigoli
Book Image

Machine Learning on Kubernetes

By: Faisal Masood, Ross Brigoli

Overview of this book

MLOps is an emerging field that aims to bring repeatability, automation, and standardization of the software engineering domain to data science and machine learning engineering. By implementing MLOps with Kubernetes, data scientists, IT professionals, and data engineers can collaborate and build machine learning solutions that deliver business value for their organization. You'll begin by understanding the different components of a machine learning project. Then, you'll design and build a practical end-to-end machine learning project using open source software. As you progress, you'll understand the basics of MLOps and the value it can bring to machine learning projects. You will also gain experience in building, configuring, and using an open source, containerized machine learning platform. In later chapters, you will prepare data, build and deploy machine learning models, and automate workflow tasks using the same platform. Finally, the exercises in this book will help you get hands-on experience in Kubernetes and open source tools, such as JupyterHub, MLflow, and Airflow. By the end of this book, you'll have learned how to effectively build, train, and deploy a machine learning model using the machine learning platform you built.
Table of Contents (16 chapters)
1
Part 1: The Challenges of Adopting ML and Understanding MLOps (What and Why)
5
Part 2: The Building Blocks of an MLOps Platform and How to Build One on Kubernetes
10
Part 3: How to Use the MLOps Platform and Build a Full End-to-End Project Using the New Platform

Exploring the model development components

Once the cleaned data is available, data scientists then go through the problem and try to determine what set of patterns would be helpful for the situation. The key here is that the data scientist's primary role is to find patterns in the data. Model development components of the ML platform explore data patterns, build and train ML models, and trial multiple configurations to find the best set of configurations and algorithms to achieve the desired performance of the model.

Within the course of model development, data scientists or ML engineers build multiple models based on multiple algorithms. These models are then trained using the data gathered and prepared from the data engineering flow. The data scientist then plays around with several hyperparameters to get different results from model testing. The result of such training and testing is then compared with each of the other models. These experimentation processes are then repeated...