Book Image

Machine Learning Engineering with Python

By : Andrew P. McMahon
Book Image

Machine Learning Engineering with Python

By: Andrew P. McMahon

Overview of this book

Machine learning engineering is a thriving discipline at the interface of software development and machine learning. This book will help developers working with machine learning and Python to put their knowledge to work and create high-quality machine learning products and services. Machine Learning Engineering with Python takes a hands-on approach to help you get to grips with essential technical concepts, implementation patterns, and development methodologies to have you up and running in no time. You'll begin by understanding key steps of the machine learning development life cycle before moving on to practical illustrations and getting to grips with building and deploying robust machine learning solutions. As you advance, you'll explore how to create your own toolsets for training and deployment across all your projects in a consistent way. The book will also help you get hands-on with deployment architectures and discover methods for scaling up your solutions while building a solid understanding of how to use cloud-based tools effectively. Finally, you'll work through examples to help you solve typical business problems. By the end of this book, you'll be able to build end-to-end machine learning services using a variety of techniques and design your own processes for consistently performant machine learning engineering.
Table of Contents (13 chapters)
1
Section 1: What Is ML Engineering?
4
Section 2: ML Development and Deployment
9
Section 3: End-to-End Examples

Chapter 6: Scaling Up

The previous chapter was all about starting the conversation around how we get our solutions out into the world through different deployment patterns, as well as some of the tools we can use to do this. This chapter will aim to build on that conversation by discussing the concepts and tools we can use to scale up our solutions to cope with large volumes of data or traffic.

Running some simple Machine Learning (ML) models on a few thousand data points on your laptop is a good exercise, especially when you're performing the discovery and proof-of-concept steps we outlined previously at the beginning of any ML development project. This approach, however, is not appropriate if we have to run millions upon millions of data points at a relatively high frequency, or if we have to train thousands of models of a similar scale at any one time. This requires a different approach, mindset, and toolkit.

In the following pages, we will cover some details of the most...