Practical DataOps Book Cover
Now Available

Practical DataOps

Delivering Agile Data Science at Scale

A comprehensive guide to applying DevOps principles to data analytics and machine learning. Learn how to build high-performing data teams, implement continuous delivery for data pipelines, and create a culture of collaboration and continuous improvement.

What You'll Learn

Practical strategies and techniques for transforming your data organization

Build a data strategy aligned with business goals
Apply Lean principles to data processes
Implement agile practices for data teams
Create effective feedback loops
Build trust in data products
Automate data pipelines with CI/CD
Structure teams for DataOps success
Select the right tools and platforms
Scale data science with a factory approach

Chapter Overview

A structured journey through the principles and practices of DataOps

00

Introduction

Setting the stage for DataOps and why it matters.

01

The Problem

Understanding the challenges organizations face with data delivery.

02

Data Strategy

Building a data strategy that delivers measurable value.

03

Lean Thinking

Applying Lean principles to eliminate waste in data processes.

04

Agile Collaboration

Fostering effective collaboration between data teams.

05

Measurement & Feedback

Establishing metrics and feedback loops for continuous improvement.

06

Building Trust

Creating trusted data products and earning stakeholder confidence.

07

DevOps for DataOps

Applying DevOps practices to data pipelines and analytics.

08

Organizing for DataOps

Structuring teams and organizations for DataOps success.

09

Tools & Platforms

Selecting and implementing the right technology stack.

10

The DataOps Data Science Factory

Building a scalable, repeatable approach to data science.

Where to Buy

Available in paperback, Kindle, and digital formats