Executing Data Quality Projects: Ten Steps to Quality Data and Trusted Information (Tm)

Executing Data Quality Projects: Ten Steps to Quality Data and Trusted Information (Tm)

  • Downloads:3550
  • Type:Epub+TxT+PDF+Mobi
  • Create Date:2021-03-23 09:30:58
  • Update Date:2025-09-07
  • Status:finish
  • Author:Danette McGilvray
  • ISBN:0128180153
  • Environment:PC/Android/iPhone/iPad/Kindle

Summary

Executing Data Quality Projects, Second Edition presents a structured yet flexible approach for creating, improving, sustaining and managing the quality of data and information within any organization。

Studies show that data quality problems are costing businesses billions of dollars each year, with poor data linked to waste and inefficiency, damaged credibility among customers and suppliers, and an organizational inability to make sound decisions。 Help is here! This book describes a proven Ten Step approach that combines a conceptual framework for understanding information quality with techniques, tools, and instructions for practically putting the approach to work - with the end result of high-quality trusted data and information, so critical to today's data-dependent organizations。

The Ten Steps approach applies to all types of data and all types of organizations - for-profit in any industry, non-profit, government, education, healthcare, science, research, and medicine。 This book includes numerous templates, detailed examples, and practical advice for executing every step。 At the same time, readers are advised on how to select relevant steps and apply them in different ways to best address the many situations they will face。 The layout allows for quick reference with an easy-to-use format highlighting key concepts and definitions, important checkpoints, communication activities, best practices, and warnings。 The experience of actual clients and users of the Ten Steps provide real examples of outputs for the steps plus highlighted, sidebar case studies called Ten Steps in Action。

This book uses projects as the vehicle for data quality work and the word broadly to include: 1) focused data quality improvement projects, such as improving data used in supply chain management, 2) data quality activities in other projects such as building new applications and migrating data from legacy systems, integrating data because of mergers and acquisitions, or untangling data due to organizational breakups, and 3) ad hoc use of data quality steps, techniques, or activities in the course of daily work。 The Ten Steps approach can also be used to enrich an organization's standard SDLC (whether sequential or Agile) and it complements general improvement methodologies such as six sigma or lean。 No two data quality projects are the same but the flexible nature of the Ten Steps means the methodology can be applied to all。

The new Second Edition highlights topics such as artificial intelligence and machine learning, Internet of Things, security and privacy, analytics, legal and regulatory requirements, data science, big data, data lakes, and cloud computing, among others, to show their dependence on data and information and why data quality is more relevant and critical now than ever before。

Download

Reviews

Mirjam

Een uitstekend boek als eerste stap in DQ-land。 Het helpt je praktisch op weg zonder al te veel theoretische ballast。 De templates zijn helder en niet al te uitgebreid, zodat je ze kan implementeren zonder meteen bureaucratisch genoemd te worden。

Steven De Landtsheer

I bought this book as I was tackling a new assignment focused on determining data quality in several business systems which had not been addressed before。 Although I had extensive experience in both project management and handling business data, I felt a novice in a data quality project。This book therefore addressed a central need I had, which was to provide a framework for how I could best tackle this challenge。 I must say that I feel that the author Danette McGilvray delivers on her goal: ten I bought this book as I was tackling a new assignment focused on determining data quality in several business systems which had not been addressed before。 Although I had extensive experience in both project management and handling business data, I felt a novice in a data quality project。This book therefore addressed a central need I had, which was to provide a framework for how I could best tackle this challenge。 I must say that I feel that the author Danette McGilvray delivers on her goal: ten steps to quality data and trusted information。It is the strength and to a certain degree the weakness of the book。 This is more a reference work than an actual book to read from cover to cover。 So while I started first with reading this book and the framework provided great help, I turned to other books for more in depth information and understanding。 This is of course more proof of the book delivering on it's promise。 The reason I did not give a five star rating is that I find the detailed content underpinning the ten steps sometimes rather vague and therefore not that helpfull。 That is the catch of course: where do you start and where do you stop? I think the book would gain by referencing more other works and expertise instead of trying to capture an important activity in just two very general pages lacking the necessary detail。Overall a very good book and very usefull to keep as a reference work that you can quickly review。 。。。more

Zhongchen Zhou

reading on Chapter 3: The Ten Steps Process

Edafe

A book that keeps on giving。I bought this 3 years ago when I began on a master data management project and it is still helping me wrangle data strategy and data quality projects today。 Based on the information as an asset, a currency within organisations, this book closely ties business motivations to technical tasks。 Content is clear, well-written and in plain English。 Each step covers a description, business benefit/context and approach, alongside useful examples and templates。 An essential ad A book that keeps on giving。I bought this 3 years ago when I began on a master data management project and it is still helping me wrangle data strategy and data quality projects today。 Based on the information as an asset, a currency within organisations, this book closely ties business motivations to technical tasks。 Content is clear, well-written and in plain English。 Each step covers a description, business benefit/context and approach, alongside useful examples and templates。 An essential addition to your data toolkit。 。。。more