Automating Data Quality Monitoring: Scaling Beyond Rules with Machine Learning (Paperback or Softback). Your source for quality books at reduced prices. Your Privacy. Condition Guide. Item Availability.
Oops! Looks like we're having trouble connecting to our server.
Refresh your browser window to try again.
About this product
Product Identifiers
PublisherO'reilly Media, Incorporated
ISBN-101098145933
ISBN-139781098145934
eBay Product ID (ePID)25060880302
Product Key Features
Number of Pages217 Pages
LanguageEnglish
Publication NameAutomating Data Quality Monitoring : Scaling Beyond Rules with Machine Learning
Publication Year2024
SubjectData Modeling & Design, Databases / Data Warehousing, Data Processing, Databases / Data Mining
TypeTextbook
AuthorJeremy Stanley, Paige Schwartz
Subject AreaComputers
FormatTrade Paperback
Dimensions
Item Height0.5 in
Item Weight13.9 Oz
Item Length9.2 in
Item Width7.4 in
Additional Product Features
LCCN2024-441393
IllustratedYes
Dewey Decimal658.05 006.31
SynopsisThe world's businesses ingest a combined 2.5 quintillion bytes of data every day. But how much of this vast amount of data--used to build products, power AI systems, and drive business decisions--is poor quality or just plain bad? This practical book shows you how to ensure that the data your organization relies on contains only high-quality records. Most data engineers, data analysts, and data scientists genuinely care about data quality, but they often don't have the time, resources, or understanding to create a data quality monitoring solution that succeeds at scale. In this book, Jeremy Stanley and Paige Schwartz from Anomalo explain how you can use automated data quality monitoring to cover all your tables efficiently, proactively alert on every category of issue, and resolve problems immediately. This book will help you: Learn why data quality is a business imperative Understand and assess unsupervised learning models for detecting data issues Implement notifications that reduce alert fatigue and let you triage and resolve issues quickly Integrate automated data quality monitoring with data catalogs, orchestration layers, and BI and ML systems Understand the limits of automated data quality monitoring and how to overcome them Learn how to deploy and manage your monitoring solution at scale Maintain automated data quality monitoring for the long term