Between the Spreadsheets: Classifying and Fixing Dirty Data, Second Edition
This title will be available Winter 2025. You may place an order and the item will be shipped when it becomes available. Customers outside of North America (USA and Canada) should contact Facet Publishing for purchasing information.
Primary tabs
You don't need to be an ALA Member to purchase from the ALA Store, but you'll be asked to create an online account/profile during checkout to proceed. This Web Account is for both Members and non-Members. Note that your ALA Member discount will be applied at the final step of the checkout process.
If you are Tax-Exempt, please verify that your account is currently set up as exempt before placing your order, as our new fulfillment center will need current documentation. Learn how to verify here.
- Description
- Table of Contents
- About the author
- Reviews
This is an essential read for anyone working with data who is looking to have cleaner and more accurate data in order to improve efficiency.
Dirty data is a problem that costs businesses thousands, if not millions, every year. And with the increasing use of AI and Generative AI, it's only getting worse. In organizations large and small across the globe you will hear talk of data quality issues. What you will rarely hear about is the consequences or best practices on how to fix it.
Fully revised and updated throughout, this new edition of Between the Spreadsheets draws on classification expert Susan Walsh's years of hands-on experience in data to present a fool-proof method for cleaning and classifying your data. The book covers everything from the very basics of data classification to normalization and taxonomies, and presents the author's proven COAT framework, helping ensure an organization's data is Consistent, Organized, Accurate, and Trustworthy. A series of data horror stories outlines what can go wrong in managing data, and if it does, how it can be fixed as well as new advice on using GenAI and why it is so important to have clean data before using it.
After reading this book, regardless of your level of experience, not only will you be able to work with your data more efficiently, but you will also understand the impact the work you do with it has, and how it affects the rest of the organization. Written in an engaging and highly practical manner, Between the Spreadsheets, Second Edition gives readers of all levels a deep understanding of the dangers of dirty data and the confidence and skills to work more efficiently and effectively with it.
Introduction
- The Dangers of Dirty Data
- Supplier Normalisation
- What is a Taxonomy?
- Spend Data Classification
- Basic Data Cleansing
- Before and After: Real-Life Data Cleaning Case Studies
- The Myth Exposed: Data Cleaning and GenAI
- Other Methodologies
- The Dirty Data Maturity Model
- Data Horror Stories
Conclusion
Susan Walsh
Susan Walsh is Founder and Managing Director of The Classification Guru, a specialist data classification, taxonomy customization and data cleansing consultancy. With over 13 years of experience in data, Susan is a world-renowned thought leader, data expert and speaker. She has been featured in the DataIQ 100 most influential people in data as well as winner of the 2022 & 2023 DataIQ Data Champion of the Year, a finalist for The Great British Businesswoman Awards, and Practitioner of the Year at the Big Data Awards. Susan has classified and cleaned data across a number of different sectors, countries, and languages for over 100 clients worldwide, and created and recently launched a self-service supplier normalization tool, Samification.
Have you read this book? Leave a review!
Praise for the first edition
"If you are teaching data science then all your students should be made aware of this book. When it comes to organizations. I can't see any reason for not making sure that anyone managing an Excel data base has a copy to refer to ... Excellent value for the price."
—Martin White, Informer
"I gained many practical tips for using a spreadsheet to clean data, and alternate ways of approaching classification while reading this book—there is hope for cleaner data!"
—Mary Silvia Whittaker, SLA Taxonomy
"The need for protection against the insidious effects of dirty data, which is broadly defined as anything incorrect, is the basis for the COAT metaphor. COAT stands for consistent, organized, accurate, and trustworthy. Throughout the book, Walsh argues that these four data qualities are interdependent and essential for a well-functioning business ... The real-life examples help solidify the importance of context, communication, and, of course, COATs when it comes to data work. While not written for librarians, Between the Spreadsheets is a good title for anyone whose job involves working with or presenting data. In the era of data-driven decision making, that encompasses a large percentage of the library profession."
—Journal of Electronic Resources Librarianship