Description

Book Synopsis

For years, organizations have struggled to make sense out of their data. IT projects designed to provide employees with dashboards, KPIs, and business-intelligence tools often take a year or more to reach the finish line...if they get there at all.

This has always been a problem. Today, though, it''s downright unacceptable. The world changes faster than ever. Speed has never been more important. By adhering to antiquated methods, firms lose the ability to see nascent trendsand act upon them until it''s too late.

But what if the process of turning raw data into meaningful insights didn''t have to be so painful, time-consuming, and frustrating?

What if there were a better way to do analytics?

Fortunately, you''re in luck...

Analytics: The Agile Way is the eighth book from award-winning author and Arizona State University professor Phil Simon.

Analytics: The Agile Waydemonstrates how progressive organizations such as Google, Nextd

Table of Contents

Preface: The Power of Dynamic Data xvii

List of Figures and Tables xxvii

Introduction: It Didn’t Used to Be This Way 1

A Little History Lesson 2

Analytics and the Need for Speed 5

Book Scope, Approach, and Style 9

Intended Audience 12

Plan of Attack 13

Next 14

Notes 14

Part One Background and Trends 17

Chapter 1 Signs of the Times: Why Data and Analytics Are Dominating Our World 19

The Moneyball Effect 20

Digitization and the Great Unbundling 22

Amazon Web Services and Cloud Computing 24

Not Your Father’s Data Storage 26

Moore’s Law 28

The Smartphone Revolution 28

The Democratization of Data 29

The Primacy of Privacy 29

The Internet of Things 31

The Rise of the Data-Savvy Employee 31

The Burgeoning Importance of Data Analytics 32

Data-Related Challenges 40

Companies Left Behind 41

The Growth of Analytics Programs 42

Next 43

Notes 43

Chapter 2 The Fundamentals of Contemporary Data: A Primer on What It Is, Why It Matters, and How to Get It 45

Types of Data 46

Getting the Data 52

Data in Motion 61

Next 63

Notes 63

Chapter 3 The Fundamentals of Analytics: Peeling Back the Onion 65

Defining Analytics 66

Types of Analytics 69

Streaming Data Revisited 72

A Final Word on Analytics 74

Next 75

Notes 75

Part Two Agile Methods and Analytics 77

Chapter 4 A Better Way to Work: The Benefits and Core Values of Agile Development 79

The Case against Traditional Analytics Projects 80

Proving the Superiority of Agile Methods 82

The Case for Guidelines over Rules 84

Next 88

Notes 88

Chapter 5 Introducing Scrum: Looking at One of Today’s Most Popular Agile Methods 89

A Very Brief History 90

Scrum Teams 91

User Stories 94

Backlogs 97

Sprints and Meetings 98

Releases 101

Estimation Techniques 102

Other Scrum Artifacts, Tools, and Concepts 109

Next 112

Chapter 6 A Framework for Agile Analytics: A Simple Model for Gathering Insights 113

Perform Business Discovery 115

Perform Data Discovery 117

Prepare the Data 118

Model the Data 120

Score and Deploy 127

Evaluate and Improve 128

Next 130

Notes 130

Part Three Analytics in Action 131

Chapter 7 University Tutoring Center: An In-Depth Case Study on Agile Analytics 133

The UTC and Project Background 134

Project Goals and Kickoff 136

Iteration One 139

Iteration Two 140

Iteration Three 145

Iteration Four 146

Results 147

Lessons 148

Next 148

Chapter 8 People Analytics at Google/Alphabet: Not Your Father’s HR Department 149

The Value of Business Experiments 150

PiLab’s Adventures in Analytics 151

A Better Approach to Hiring 153

Staffing 156

The Value of Perks 158

Results and Lessons 162

Next 162

Notes 163

Chapter 9 The Anti-Google: Beneke Pharmaceuticals 165

Project Background 166

Business and Data Discovery 167

The Friction Begins 168

Astonishing Results 169

Developing Options 171

The Grand Finale 172

Results and Lessons 173

Next 174

Chapter 10 Ice Station Zebra Medical: How Agile Methods Solved a Messy Health-Care Data Problem 175

Paying Nurses 176

Enter the Consultant 178

User Stories 179

Agile: The Better Way 182

Results 183

Lessons 183

Next 184

Chapter 11 Racial Profiling at Nextdoor: Using Data to Build a Better App and Combat a PR Disaster 185

Unintended but Familiar Consequences 187

Evaluating the Problem 188

Results and Lessons 193

Next 195

Notes 195

Part Four Making the Most Out of Agile Analytics ..........197

Chapter 12 The Benefits of Agile Analytics: The Upsides of Small Batches 199

Life at IAC 200

Life at RDC 203

Comparing the Two 206

Next 206

Chapter 13 No Free Lunch: The Impediments to—and Limitations of—Agile Analytics 209

People Issues 210

Data Issues 212

The Limitations of Agile Analytics 216

Next 219

Chapter 14 The Importance of Designing for Data: Lessons from the Upstarts 221

The Genes of Music 222

The Tension between Data and Design 226

Next 229

Notes 229

Part Five Conclusions and Next Steps 231

Chapter 15 What Now?: A Look Forward 233

A Tale of Two Retailers 234

The Blurry Futures of Data, Analytics, and Related Issues 239

Final Thoughts and Next Steps 242

Notes 243

Afterword 245

Acknowledgments 247

Selected Bibliography 249

Books 249

Articles and Essays 251

About the Author 253

Index 255

Analytics

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    £30.39

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    RRP £37.99 – you save £7.60 (20%)

    Order before 4pm today for delivery by Sat 4 Jul 2026.

    A Hardback by Phil Simon

    1 in stock

      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of Analytics by Phil Simon

      Publisher: John Wiley & Sons Inc
      Publication Date: 25/08/2017
      ISBN13: 9781119423478, 978-1119423478
      ISBN10: 1119423473

      Description

      Book Synopsis

      For years, organizations have struggled to make sense out of their data. IT projects designed to provide employees with dashboards, KPIs, and business-intelligence tools often take a year or more to reach the finish line...if they get there at all.

      This has always been a problem. Today, though, it''s downright unacceptable. The world changes faster than ever. Speed has never been more important. By adhering to antiquated methods, firms lose the ability to see nascent trendsand act upon them until it''s too late.

      But what if the process of turning raw data into meaningful insights didn''t have to be so painful, time-consuming, and frustrating?

      What if there were a better way to do analytics?

      Fortunately, you''re in luck...

      Analytics: The Agile Way is the eighth book from award-winning author and Arizona State University professor Phil Simon.

      Analytics: The Agile Waydemonstrates how progressive organizations such as Google, Nextd

      Table of Contents

      Preface: The Power of Dynamic Data xvii

      List of Figures and Tables xxvii

      Introduction: It Didn’t Used to Be This Way 1

      A Little History Lesson 2

      Analytics and the Need for Speed 5

      Book Scope, Approach, and Style 9

      Intended Audience 12

      Plan of Attack 13

      Next 14

      Notes 14

      Part One Background and Trends 17

      Chapter 1 Signs of the Times: Why Data and Analytics Are Dominating Our World 19

      The Moneyball Effect 20

      Digitization and the Great Unbundling 22

      Amazon Web Services and Cloud Computing 24

      Not Your Father’s Data Storage 26

      Moore’s Law 28

      The Smartphone Revolution 28

      The Democratization of Data 29

      The Primacy of Privacy 29

      The Internet of Things 31

      The Rise of the Data-Savvy Employee 31

      The Burgeoning Importance of Data Analytics 32

      Data-Related Challenges 40

      Companies Left Behind 41

      The Growth of Analytics Programs 42

      Next 43

      Notes 43

      Chapter 2 The Fundamentals of Contemporary Data: A Primer on What It Is, Why It Matters, and How to Get It 45

      Types of Data 46

      Getting the Data 52

      Data in Motion 61

      Next 63

      Notes 63

      Chapter 3 The Fundamentals of Analytics: Peeling Back the Onion 65

      Defining Analytics 66

      Types of Analytics 69

      Streaming Data Revisited 72

      A Final Word on Analytics 74

      Next 75

      Notes 75

      Part Two Agile Methods and Analytics 77

      Chapter 4 A Better Way to Work: The Benefits and Core Values of Agile Development 79

      The Case against Traditional Analytics Projects 80

      Proving the Superiority of Agile Methods 82

      The Case for Guidelines over Rules 84

      Next 88

      Notes 88

      Chapter 5 Introducing Scrum: Looking at One of Today’s Most Popular Agile Methods 89

      A Very Brief History 90

      Scrum Teams 91

      User Stories 94

      Backlogs 97

      Sprints and Meetings 98

      Releases 101

      Estimation Techniques 102

      Other Scrum Artifacts, Tools, and Concepts 109

      Next 112

      Chapter 6 A Framework for Agile Analytics: A Simple Model for Gathering Insights 113

      Perform Business Discovery 115

      Perform Data Discovery 117

      Prepare the Data 118

      Model the Data 120

      Score and Deploy 127

      Evaluate and Improve 128

      Next 130

      Notes 130

      Part Three Analytics in Action 131

      Chapter 7 University Tutoring Center: An In-Depth Case Study on Agile Analytics 133

      The UTC and Project Background 134

      Project Goals and Kickoff 136

      Iteration One 139

      Iteration Two 140

      Iteration Three 145

      Iteration Four 146

      Results 147

      Lessons 148

      Next 148

      Chapter 8 People Analytics at Google/Alphabet: Not Your Father’s HR Department 149

      The Value of Business Experiments 150

      PiLab’s Adventures in Analytics 151

      A Better Approach to Hiring 153

      Staffing 156

      The Value of Perks 158

      Results and Lessons 162

      Next 162

      Notes 163

      Chapter 9 The Anti-Google: Beneke Pharmaceuticals 165

      Project Background 166

      Business and Data Discovery 167

      The Friction Begins 168

      Astonishing Results 169

      Developing Options 171

      The Grand Finale 172

      Results and Lessons 173

      Next 174

      Chapter 10 Ice Station Zebra Medical: How Agile Methods Solved a Messy Health-Care Data Problem 175

      Paying Nurses 176

      Enter the Consultant 178

      User Stories 179

      Agile: The Better Way 182

      Results 183

      Lessons 183

      Next 184

      Chapter 11 Racial Profiling at Nextdoor: Using Data to Build a Better App and Combat a PR Disaster 185

      Unintended but Familiar Consequences 187

      Evaluating the Problem 188

      Results and Lessons 193

      Next 195

      Notes 195

      Part Four Making the Most Out of Agile Analytics ..........197

      Chapter 12 The Benefits of Agile Analytics: The Upsides of Small Batches 199

      Life at IAC 200

      Life at RDC 203

      Comparing the Two 206

      Next 206

      Chapter 13 No Free Lunch: The Impediments to—and Limitations of—Agile Analytics 209

      People Issues 210

      Data Issues 212

      The Limitations of Agile Analytics 216

      Next 219

      Chapter 14 The Importance of Designing for Data: Lessons from the Upstarts 221

      The Genes of Music 222

      The Tension between Data and Design 226

      Next 229

      Notes 229

      Part Five Conclusions and Next Steps 231

      Chapter 15 What Now?: A Look Forward 233

      A Tale of Two Retailers 234

      The Blurry Futures of Data, Analytics, and Related Issues 239

      Final Thoughts and Next Steps 242

      Notes 243

      Afterword 245

      Acknowledgments 247

      Selected Bibliography 249

      Books 249

      Articles and Essays 251

      About the Author 253

      Index 255

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