Murakami Sale
 
 

Recently Viewed clear list


The Powell's Playlist | August 8, 2014

Peter Mendelsund: IMG The Powell's Playlist: Water Music by Peter Mendelsund



We "see" when we read, and we "see" when we listen. There are many ways in which music can create the cross-sensory experience of this seeing...... Continue »
  1. $11.87 Sale Trade Paper add to wish list

spacer
Qualifying orders ship free.
$98.95
New Hardcover
Ships in 1 to 3 days
Add to Wishlist
available for shipping or prepaid pickup only
Available for In-store Pickup
in 7 to 12 days
Qty Store Section
3 Remote Warehouse Business- Quality and Total Quality Management TQM

Competing with High Quality Data: Concepts, Tools, and Techniques for Building a Successful Approach to Data Quality

by

Competing with High Quality Data: Concepts, Tools, and Techniques for Building a Successful Approach to Data Quality Cover

 

Synopses & Reviews

Publisher Comments:

Praise for Competing with High Quality Data:

“Without use of correct data and design principles, well functioning systems cannot be designed and created. In this book by Dr. Jugulum, readers will learn how data can be systematically collected and deduced. Recommend it highly.”
—Nam P Suh, Former President of Korea Advanced Institute of Science and Technology, Ralph E & Eloise F. Cross Professor Emeritus at MIT

“It is common sense that without quality data there cannot be quality decisions . . . Rajesh does an excellent job of explaining step by step how to develop a data quality program and implement it.”
—Desh Deshpande, Entrepreneur, Life member MIT Corporation, Co-chair National Council for Innovation and Entrepreneurship

In today’s data-driven world, how you handle data is perhaps even more important than how much data you have. As the volume of data being created, collected, and analyzed continues to grow at a staggering pace, increased regulation and legal responsibilities have inevitably followed. Competing with High Quality Data: Concepts, Tools, and Techniques for Building a Successful Approach to Data Quality provides you with the fundamentals to successfully execute a data quality program that is both robust and flexible enough to meet your organization’s needs. As a data quality professional, you must ask yourself whether you are meeting current industry standards, such as the pervasive regulatory oversight programs that include Dodd-Frank, BASEL III, and Solvency II. This book shows you how to meet these new standards, adhere to data quality best practices, and prepare for new challenges with a step-by-step approach.

Bad data can truly equate to bad business. Events as momentous and disastrous as the global financial crisis of 2007 were precipitated partially through the use of poor quality data that was analyzed to determine risk management strategies and procedures. In this context, the extreme importance of proper data management and data quality is evident. Organizations have opened their eyes to this reality and are now viewing data as a critical resource to lasting success. As a professional with a concern for data quality, you can use this book to glean some of the keys to success in this arena, even as the requirements and challenges related to data quality continue to grow. You’ll learn how to build your company’s data quality team and processes with a four-phased implementation strategy: Define, Assess, Improve, and Control.

With real world examples and lessons learned, this book provides a comprehensive roadmap for businesses and organizations to strive for and achieve best practices in data quality. Among other lessons, you’ll learn about the effects of a poor data quality program and how quality data can help your organization maximize efficiencies and other benefits that result in process quality. Competing with High Quality Data will provide you with the information you need to help your organization realize the massive benefits of a well-developed data quality program.

Synopsis:

“In this book by Dr. Jugulum, readers will learn how data can be systematically collected and deduced. Recommend it highly.”
—Nam P Suh, Former President of Korea Advanced Institute of Science and Technology, Ralph E & Eloise F. Cross Professor Emeritus at MIT

“It is common sense that without quality data there cannot be quality decisions . . . Rajesh does an excellent job of explaining step by step how to develop a data quality program and implement it.”
—Desh Deshpande, Entrepreneur, Life member MIT Corporation, Co-chair National Council for Innovation and Entrepreneurship

QUALITY DATA MEANS QUALITY BUSINESS

All over the world, organizations are under scrutiny for how they manage and handle the massive volumes of data that they collect and store. You can get ahead today with Competing with High Quality Data: Concepts, Tools, and Techniques for Building a Successful Approach to Data Quality, a comprehensive guide for professionals concerned with data quality issues and programs.

In Competing with High Quality Data, Rajesh Jugulum takes you through the steps you can follow to vault your company to the next level of operational efficiency through data quality management. The book explains:

  • The data quality program and its four-phase approach: Define, Assess, Improve, and Control
  • How data quality can increase efficiencies and maximize organizational benefits
  • The effects of a poor or non-existent data quality program
  • Why data quality must be integrated with process quality
  • The importance of building an enterprise-wide data quality practices center

With a four-phase approach, Jugulum shows you how to ensure that every data quality project follows these phases to:

  • Reduce costs
  • Reduce manual processing or rework
  • Improve reporting
  • Enhance revenue opportunities

Prepare your company for the future of increased competition and enhanced regulation that demands quality data. With Competing with High Quality Data, get your data quality program in order before, rather than after, you make decisions that could affect the future of your organization.

Synopsis:

Create a competitive advantage with data quality

Data is rapidly becoming the powerhouse of industry, but low-quality data can actually put a company at a disadvantage. To be used effectively, data must accurately reflect the real-world scenario it represents, and it must be in a form that is usable and accessible. Quality data involves asking the right questions, targeting the correct parameters, and having an effective internal management, organization, and access system. It must be relevant, complete, and correct, while falling in line with pervasive regulatory oversight programs.

Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality takes a holistic approach to improving data quality, from collection to usage. Author Rajesh Jugulum is globally-recognized as a major voice in the data quality arena, with high-level backgrounds in international corporate finance. In the book, Jugulum provides a roadmap to data quality innovation, covering topics such as:

  • The four-phase approach to data quality control
  • Methodology that produces data sets for different aspects of a business
  • Streamlined data quality assessment and issue resolution
  • A structured, systematic, disciplined approach to effective data gathering

The book also contains real-world case studies to illustrate how companies across a broad range of sectors have employed data quality systems, whether or not they succeeded, and what lessons were learned. High-quality data increases value throughout the information supply chain, and the benefits extend to the client, employee, and shareholder. Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality provides the information and guidance necessary to formulate and activate an effective data quality plan today.

About the Author

DR. RAJESH JUGULUM, Ph.D., is a Data Quality and Analytics Professional. Rajesh held executive positions in these fields at Citi Group and Bank of America. Before joining financial industry, Rajesh was with MIT where he was involved in research and teaching. Currently, he teaches at Northeastern University in Boston. His honors include 2002 American Society for Quality’s Feigenbaum medal and 2006 International Technology Institute’s Rockwell medal.

Table of Contents

Foreword xiii

Prelude xv

Preface xvii

Acknowledgments xix

1 The Importance of Data Quality 1

1.0 Introduction 1

1.1 Understanding the Implications of Data Quality 1

1.2 The Data Management Function 4

1.3 The Solution Strategy 6

1.4 Guide to This Book 6

Section I Building a Data Quality Program 2 The Data Quality Operating Model 13

2.0 Introduction 13

2.1 Data Quality Foundational Capabilities 13

2.1.1 Program Strategy and Governance 14

2.1.2 Skilled Data Quality Resources 14

2.1.3 Technology Infrastructure and Metadata 15

2.1.4 Data Profi ling and Analytics 15

2.1.5 Data Integration 15

2.1.6 Data Assessment 16

2.1.7 Issues Resolution (IR) 16

2.1.8 Data Quality Monitoring and Control 16

2.2 The Data Quality Methodology 17

2.2.1 Establish a Data Quality Program 17

2.2.2 Conduct a Current-State Analysis 17

2.2.3 Strengthen Data Quality Capability through Data Quality Projects 18

2.2.4 Monitor the Ongoing Production Environment and Measure Data Quality Improvement Effectiveness 18

2.2.5 Detailed Discussion on Establishing the Data Quality Program 18

2.2.6 Assess the Current State of Data Quality 21

2.3 Conclusions 22

3 The DAIC Approach 23

3.0 Introduction 23

3.1 Six Sigma Methodologies 23

3.1.1 Development of Six Sigma Methodologies 25

3.2 DAIC Approach for Data Quality 28

3.2.1 The Defi ne Phase 28

3.2.2 The Assess Phase 31

3.2.3 The Improve Phase 36

3.2.4 The Control Phase (Monitor and Measure) 37

3.3 Conclusions 40

Section II Executing a Data Quality Program 4 Quantification of the Impact of Data Quality 43

4.0 Introduction 43

4.1 Building a Data Quality Cost Quantifi cation Framework 43

4.1.1 The Cost Waterfall 44

4.1.2 Prioritization Matrix 46

4.1.3 Remediation and Return on Investment 50

4.2 A Trading Offi ce Illustrative Example 51

4.3 Conclusions 54

5 Statistical Process Control and Its Relevance in Data Quality Monitoring and Reporting 55

5.0 Introduction 55

5.1 What Is Statistical Process Control? 55

5.1.1 Common Causes and Special Causes 57

5.2 Control Charts 59

5.2.1 Different Types of Data 59

5.2.2 Sample and Sample Parameters 60

5.2.3 Construction of Attribute Control Charts 62

5.2.4 Construction of Variable Control Charts 65

5.2.5 Other Control Charts 67

5.2.6 Multivariate Process Control Charts 69

5.3 Relevance of Statistical Process Control in Data Quality Monitoring and Reporting 69

5.4 Conclusions 70

6 Critical Data Elements: Identification, Validation, and Assessment 71

6.0 Introduction 71

6.1 Identifi cation of Critical Data Elements 71

6.1.1 Data Elements and Critical Data Elements 71

6.1.2 CDE Rationalization Matrix 72

6.2 Assessment of Critical Data Elements 75

6.2.1 Data Quality Dimensions 76

6.2.2 Data Quality Business Rules 78

6.2.3 Data Profi ling 79

6.2.4 Measurement of Data Quality Scores 80

6.2.5 Results Recording and Reporting (Scorecard) 80

6.3 Conclusions 82

7 Prioritization of Critical Data Elements (Funnel Approach) 83

7.0 Introduction 83

7.1 The Funnel Methodology (Statistical Analysis for CDE Reduction) 83

7.1.1 Correlation and Regression Analysis for Continuous CDEs 85

7.1.2 Association Analysis for Discrete CDEs 88

7.1.3 Signal-to-Noise Ratios Analysis 90

7.2 Case Study: Basel II 91

7.2.1 Basel II: CDE Rationalization Matrix 91

7.2.2 Basel II: Correlation and Regression Analysis 94

7.2.3 Basel II: Signal-to-Noise (S/N) Ratios 96

7.3 Conclusions 99

8 Data Quality Monitoring and Reporting Scorecards 101

8.0 Introduction 101

8.1 Development of the DQ Scorecards 102

8.2 Analytical Framework (ANOVA, SPCs, Thresholds, Heat Maps) 102

8.2.1 Thresholds and Heat Maps 103

8.2.2 Analysis of Variance (ANOVA) and SPC Charts 107

8.3 Application of the Framework 109

8.4 Conclusions 112

9 Data Quality Issue Resolution 113

9.0 Introduction 113

9.1 Description of the Methodology 113

9.2 Data Quality Methodology 114

9.3 Process Quality/Six Sigma Approach 115

9.4 Case Study: Issue Resolution Process Reengineering 117

9.5 Conclusions 119

10 Information System Testing 121

10.0 Introduction 121

10.1 Typical System Arrangement 122

10.1.1 The Role of Orthogonal Arrays 123

10.2 Method of System Testing 123

10.2.1 Study of Two-Factor Combinations 123

10.2.2 Construction of Combination Tables 124

10.3 MTS Software Testing 126

10.4 Case Study: A Japanese Software Company 130

10.5 Case Study: A Finance Company 133

10.6 Conclusions 138

11 Statistical Approach for Data Tracing 139

11.0 Introduction 139

11.1 Data Tracing Methodology 139

11.1.1 Statistical Sampling 142

11.2 Case Study: Tracing 144

11.2.1 Analysis of Test Cases and CDE Prioritization 144

11.3 Data Lineage through Data Tracing 149

11.4 Conclusions 151

12 Design and Development of Multivariate Diagnostic Systems 153

12.0 Introduction 153

12.1 The Mahalanobis-Taguchi Strategy 153

12.1.1 The Gram Schmidt Orthogonalization Process 155

12.2 Stages in MTS 158

12.3 The Role of Orthogonal Arrays and Signal-to-Noise Ratio in Multivariate Diagnosis 159

12.3.1 The Role of Orthogonal Arrays 159

12.3.2 The Role of S/N Ratios in MTS 161

12.3.3 Types of S/N Ratios 162

12.3.4 Direction of Abnormals 164

12.4 A Medical Diagnosis Example 172

12.5 Case Study: Improving Client Experience 175

12.5.1 Improvements Made Based on Recommendations from MTS Analysis 177

12.6 Case Study: Understanding the Behavior Patterns of Defaulting Customers 178

12.7 Case Study: Marketing 180

12.7.1 Construction of the Reference Group 181

12.7.2 Validation of the Scale 181

12.7.3 Identification of Useful Variables 181

12.8 Case Study: Gear Motor Assembly 182

12.8.1 Apparatus 183

12.8.2 Sensors 184

12.8.3 High-Resolution Encoder 184

12.8.4 Life Test 185

12.8.5 Characterization 185

12.8.6 Construction of the Reference Group or Mahalanobis Space 186

12.8.7 Validation of the MTS Scale 187

12.8.8 Selection of Useful Variables 188

12.9 Conclusions 189

13 Data Analytics 191

13.0 Introduction 191

13.1 Data and Analytics as Key Resources 191

13.1.1 Different Types of Analytics 193

13.1.2 Requirements for Executing Analytics 195

13.1.3 Process of Executing Analytics 196

13.2 Data Innovation 197

13.2.1 Big Data 198

13.2.2 Big Data Analytics 199

13.2.3 Big Data Analytics Operating Model 206

13.2.4 Big Data Analytics Projects: Examples 207

13.3 Conclusions 208

14. Building a Data Quality Practices Center 209

14.0 Introduction 209

14.1 Building a DQPC 209

14.2 Conclusions 211

Appendix A 213

Equations for Signal-to-Noise (S/N) Ratios 213

Nondynamic S/N Ratios 213

Dynamic S/N Ratios 214

Appendix B 217

Matrix Theory: Related Topics 217

What Is a Matrix? 217

Appendix C 221

Some Useful Orthogonal Arrays 221

Two-Level Orthogonal Arrays 221

Three-Level Orthogonal Arrays 255

Index of Terms and Symbols 259

References 261

Index 267

Product Details

ISBN:
9781118342329
Author:
Jugulum, Rajesh
Publisher:
John Wiley & Sons
Author:
Gray, Donald H.
Subject:
Quality Control
Subject:
Industrial Engineering / Quality Control
Subject:
Competing with Data Quality, Rajesh Jugulum, Dodd-Frank, BASEL III, Solvency II, DQ, regulatory oversight programs
Subject:
Business-Quality and Total Quality Management TQM
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
ta collection; data gathering; holistic data management; data design; data collection parameters; data quality assessment; data profiling techniques; information quality; information systems
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; Donald H. Gray; data quality; data management; data quality systems; data quality plan; data oversight; data collection re
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Subject:
Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality; Rajesh Jugulum; data quality; data management; data quality systems; data quality plan; data oversight; data collection regulations;
Copyright:
Edition Description:
WOL online Book (not BRO)
Publication Date:
20140310
Binding:
HARDCOVER
Language:
English
Pages:
304
Dimensions:
243.79 x 165.1 x 21.8 mm 19.68 oz

Related Subjects

Arts and Entertainment » Art » Art Business Guides
Arts and Entertainment » Art » Illustration
Business » Quality and Total Quality Management TQM
Computers and Internet » Computers Reference » General
Computers and Internet » Personal Computers » General
Science and Mathematics » Mathematics » General

Competing with High Quality Data: Concepts, Tools, and Techniques for Building a Successful Approach to Data Quality New Hardcover
0 stars - 0 reviews
$98.95 In Stock
Product details 304 pages John Wiley & Sons - English 9781118342329 Reviews:
"Synopsis" by , “In this book by Dr. Jugulum, readers will learn how data can be systematically collected and deduced. Recommend it highly.”
—Nam P Suh, Former President of Korea Advanced Institute of Science and Technology, Ralph E & Eloise F. Cross Professor Emeritus at MIT

“It is common sense that without quality data there cannot be quality decisions . . . Rajesh does an excellent job of explaining step by step how to develop a data quality program and implement it.”
—Desh Deshpande, Entrepreneur, Life member MIT Corporation, Co-chair National Council for Innovation and Entrepreneurship

QUALITY DATA MEANS QUALITY BUSINESS

All over the world, organizations are under scrutiny for how they manage and handle the massive volumes of data that they collect and store. You can get ahead today with Competing with High Quality Data: Concepts, Tools, and Techniques for Building a Successful Approach to Data Quality, a comprehensive guide for professionals concerned with data quality issues and programs.

In Competing with High Quality Data, Rajesh Jugulum takes you through the steps you can follow to vault your company to the next level of operational efficiency through data quality management. The book explains:

  • The data quality program and its four-phase approach: Define, Assess, Improve, and Control
  • How data quality can increase efficiencies and maximize organizational benefits
  • The effects of a poor or non-existent data quality program
  • Why data quality must be integrated with process quality
  • The importance of building an enterprise-wide data quality practices center

With a four-phase approach, Jugulum shows you how to ensure that every data quality project follows these phases to:

  • Reduce costs
  • Reduce manual processing or rework
  • Improve reporting
  • Enhance revenue opportunities

Prepare your company for the future of increased competition and enhanced regulation that demands quality data. With Competing with High Quality Data, get your data quality program in order before, rather than after, you make decisions that could affect the future of your organization.

"Synopsis" by , Create a competitive advantage with data quality

Data is rapidly becoming the powerhouse of industry, but low-quality data can actually put a company at a disadvantage. To be used effectively, data must accurately reflect the real-world scenario it represents, and it must be in a form that is usable and accessible. Quality data involves asking the right questions, targeting the correct parameters, and having an effective internal management, organization, and access system. It must be relevant, complete, and correct, while falling in line with pervasive regulatory oversight programs.

Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality takes a holistic approach to improving data quality, from collection to usage. Author Rajesh Jugulum is globally-recognized as a major voice in the data quality arena, with high-level backgrounds in international corporate finance. In the book, Jugulum provides a roadmap to data quality innovation, covering topics such as:

  • The four-phase approach to data quality control
  • Methodology that produces data sets for different aspects of a business
  • Streamlined data quality assessment and issue resolution
  • A structured, systematic, disciplined approach to effective data gathering

The book also contains real-world case studies to illustrate how companies across a broad range of sectors have employed data quality systems, whether or not they succeeded, and what lessons were learned. High-quality data increases value throughout the information supply chain, and the benefits extend to the client, employee, and shareholder. Competing with High Quality Data: Concepts, Tools and Techniques for Building a Successful Approach to Data Quality provides the information and guidance necessary to formulate and activate an effective data quality plan today.

spacer
spacer
  • back to top
Follow us on...




Powell's City of Books is an independent bookstore in Portland, Oregon, that fills a whole city block with more than a million new, used, and out of print books. Shop those shelves — plus literally millions more books, DVDs, and gifts — here at Powells.com.