Book Image

Machine Learning at Scale with H2O

By : Gregory Keys, David Whiting
Book Image

Machine Learning at Scale with H2O

By: Gregory Keys, David Whiting

Overview of this book

H2O is an open source, fast, and scalable machine learning framework that allows you to build models using big data and then easily productionalize them in diverse enterprise environments. Machine Learning at Scale with H2O begins with an overview of the challenges faced in building machine learning models on large enterprise systems, and then addresses how H2O helps you to overcome them. You’ll start by exploring H2O’s in-memory distributed architecture and find out how it enables you to build highly accurate and explainable models on massive datasets using your favorite ML algorithms, language, and IDE. You’ll also get to grips with the seamless integration of H2O model building and deployment with Spark using H2O Sparkling Water. You’ll then learn how to easily deploy models with H2O MOJO. Next, the book shows you how H2O Enterprise Steam handles admin configurations and user management, and then helps you to identify different stakeholder perspectives that a data scientist must understand in order to succeed in an enterprise setting. Finally, you’ll be introduced to the H2O AI Cloud platform and explore the entire machine learning life cycle using multiple advanced AI capabilities. By the end of this book, you’ll be able to build and deploy advanced, state-of-the-art machine learning models for your business needs.
Table of Contents (22 chapters)
1
Section 1 – Introduction to the H2O Machine Learning Platform for Data at Scale
5
Section 2 – Building State-of-the-Art Models on Large Data Volumes Using H2O
11
Section 3 – Deploying Your Models to Production Environments
14
Section 4 – Enterprise Stakeholder Perspectives
17
Section 5 – Broadening the View – Data to AI Applications with the H2O AI Cloud Platform

Chapter 1: Opportunities and Challenges

Machine Learning (ML) and data science are winning a popularity contest of sorts, as witnessed by their headline coverage in the popular and professional press and by expanding job openings across the technology landscape. Students typically learn ML techniques using their own computers on relatively small datasets. Those who enter the field often find themselves in the much different setting of a large company buzzing with workers performing specialized job roles, while collaborating with others scattered across the nation or world. Both data science students and data science workers have a few key things in common – they are in an exciting and growing field that businesses deem ever more critical to their future, and the data they thrive on is becoming exponentially more abundant and diverse.

There are huge opportunities for ML in enterprises because the transformational impacts of ML on businesses, customers, patients, and so on are diverse, widespread, lucrative, and life-changing. A backdrop of urgency exists as well from competitors who are all attempting the same thing. Enterprises are thus incented to invest in significant ML transformations and to supply the necessary data, tooling, production systems, and people to journey toward ML success. But challenges loom large as well, and these challenges commonly revolve around scale. The challenges of scale take on many forms inherent to ML at an enterprise level.

In this chapter, we will define and explore the challenge of ML at scale by covering the following main topics:

  • ML at scale
  • The ML life cycle and three challenge areas for ML at scale
  • H2O.ai's answer to these challenges