Almost ready!
In order to save audiobooks to your Wish List you must be signed in to your account.
Log in Create accountShop Small Sale
Shop our limited-time sale on bestselling audiobooks. Donโt miss outโpurchases support local bookstores.
Shop the saleLimited-time offer
Get two free audiobooks!
Nowโs a great time to shop indie. When you start a new one credit per month membership supporting local bookstores with promo code SWITCH, weโll give you two bonus audiobook credits at sign-up.
Sign up todayData Quality for Beginners
This audiobook uses AI narration.
Weโre taking steps to make sure AI narration is transparent.
Learn moreSummary
"Data Quality for Beginners: Architecting Scalable Solutions for Informed Decision-Making and Innovation" is an essential guide for those embarking on the journey to understand and improve the quality of data within their organizations. This comprehensive book demystifies the complexities surrounding data quality, offering readers a foundational understanding coupled with practical insights into architecting scalable solutions that foster informed decision-making and drive innovation.
Starting with the basics, the book explores the critical importance of high-quality data in the modern business landscape, where data-driven decisions and strategies have become paramount. It introduces readers to the key concepts of data quality, including accuracy, completeness, consistency, timeliness, and reliability, and explains why each is vital for organizational success.
The heart of the book is dedicated to guiding beginners through the process of establishing robust data quality management frameworks (DQMFs). It covers the steps involved in assessing current data quality, setting realistic improvement goals, and developing strategies to address identified issues. The book emphasizes the role of continuous monitoring and maintenance to ensure long-term data quality, alongside the implementation of effective data governance to support these efforts.
"Data Quality for Beginners" also dives into the technical aspects of architecting scalable data quality solutions, including the selection and application of data quality tools and technologies. It explores how artificial intelligence and machine learning can be leveraged to enhance data quality processes, making them more efficient and proactive.
ย