UM Logo

Data quality : empowering businesses with analytics and AI / Prashanth H. Southekal.

By: Material type: TextTextPublication details: Hoboken, New Jersey : John Wiley & Sons, Inc. ©2023.Description: xxvi, 271 pages : illustrations ; 24 cmISBN:
  • 9781394165230
Subject(s): Additional physical formats: Online version:: Data qualityDDC classification:
  • DC 658.05 2023 So882
LOC classification:
  • HF5548.2 .S687 2023
Contents:
Business data -- Data quality in business -- Causes for poor data quality -- Data lifecycle and lineage --  Profiling for data quality -- Reference architecture for data quality -- Best practices to realize data quality -- Best practices to realize data quality -- Data governance -- Protecting data -- Data ethics.
Summary: "Quality data is the key for business enterprises to offer improved performance in operations, compliance, and decision making. According to McKinsey, data driven organizations provide EBITDA increases between 15 to 25% than peers. However, to be a data driven organization, data quality is very important. But most companies are plagued with poor data quality. A HBR study found that just 3% of the data in a business enterprise meets quality standards. According to Gartner, 27% of data in the world's top companies is flawed--so companies are looking for practical guidance to improve data quality. This book examines the four-phase DARS approach (Define-Assess-Realize-Sustain) for companies to manage high quality data in organizations. This approach provides a combination of strategy and tactical elements to deliver the greatest value from data to the business. It is a playbook that offers prescriptive recommendations based on proven best practices to realize and sustain data quality"--
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Call number Status Date due Barcode
Circulation Circulation UM Digos College - LIC Circulation DC 658.05 So882 2023 (Browse shelf(Opens below)) Available 28016

Includes bibliographical references and index.

Business data -- Data quality in business -- Causes for poor data quality -- Data lifecycle and lineage --  Profiling for data quality -- Reference architecture for data quality -- Best practices to realize data quality -- Best practices to realize data quality -- Data governance -- Protecting data -- Data ethics.

"Quality data is the key for business enterprises to offer improved performance in operations, compliance, and decision making. According to McKinsey, data driven organizations provide EBITDA increases between 15 to 25% than peers. However, to be a data driven organization, data quality is very important. But most companies are plagued with poor data quality. A HBR study found that just 3% of the data in a business enterprise meets quality standards. According to Gartner, 27% of data in the world's top companies is flawed--so companies are looking for practical guidance to improve data quality. This book examines the four-phase DARS approach (Define-Assess-Realize-Sustain) for companies to manage high quality data in organizations. This approach provides a combination of strategy and tactical elements to deliver the greatest value from data to the business. It is a playbook that offers prescriptive recommendations based on proven best practices to realize and sustain data quality"--

There are no comments on this title.

to post a comment.