Description

Book Synopsis
Exploit the power and potential of Big Data to revolutionize business outcomes Big Data Revolution is a guide to improving performance, making better decisions, and transforming business through the effective use of Big Data.

Table of Contents

Prologue 1

Berkeley, 1930s 1

Pattern Recognition 2

Nelson Peltz 3

Committing to One Percent 5

The Big Data Revolution 6

Introduction 7

Storytelling 7

Objective 7

Outline 8

Part I “The Revolution Starts Now: 9 Industries Transforming with Data” 8

Part II “Learning from Patterns in Big Data” 11

Part III “Leading the Revolution” 11

Storytelling (Continued) 13

Part I: the Revolution Starts Now: 9 Industries Transforming With Data 15

Chapter 1: Transforming Farms with Data 17

California, 2013 17

Brief History of Farming 18

The Data Era 19

Potato Farming 20

Precision Farming 21

Capturing Farm Data 22

Deere & Company Versus Monsanto 24

Integrated Farming Systems 25

Data Prevails 26

The Climate Corporation 26

Growsafe Systems 27

Farm of the Future 27

California, 2013 (Continued) 29

Chapter 2: Why Doctors Will Have Math Degrees 31

United States, 2014 31

The History of Medical Education 32

Scientific Method 32

Rise of Specialists 33

We Have a Problem 34

Ben Goldacre 35

Vinod Khosla 35

The Data Era 36

Collecting Data 36

Telemedicine 38

Innovating with Data 40

Implications of a Data-Driven Medical World 42

The Future of Medical School 42

A Typical Medical School 42

A Medical School for the Data Era 43

United States, 2030 44

Chapter 3: Revolutionizing Insurance: Why Actuaries Will Become Data Scientists 45

Middle of Somewhere, 2012 45

Short History of Property & Casualty Insurance and Underwriting 46

Actuarial Science In Insurance 47

Pensions, Insurance, Leases 49

Compound Interest 50

Probability 50

Mortality Data 50

Modern-Day Insurance 51

Eight Weeks to Eight Days 51

Online Policies 52

The Data Era 52

Dynamic Risk Management 52

Catastrophe Risk 54

Open Access Modeling 55

Opportunities 56

Middle of Somewhere, 2012 (Continued) 58

Chapter 4: Personalizing Retail and Fashion 59

Karolina 59

A Brief History of Retail 60

Retail Eras 60

Aristide Boucicaut 61

The Shift 62

The Data Era 63

Stitch Fix 63

Keaton Row 65

Zara 66

Karolina (Continued) 67

Chapter 5: Transforming Customer Relationships with Data 69

Buying a House 69

Brief History of Customer Service 70

Customer Service Over Time 70

Boeing 72

Financial Services 74

The Data Era 75

An Automobile Manufacturer 76

Zendesk 76

Buying a House (Continued) 77

Chapter 6: Intelligent Machines 79

Denmark 79

Intelligent Machines 80

Machine Data 81

The Data Era 82

General Electric 82

Drones 84

Tesla 86

Networks of Data 87

Denmark (Continued) 88

Chapter 7: Government and Society 89

Egypt, 2011 89

Social Media 90

Intelligence 90

Snowden Effect 91

Privacy Risk Versus Reward 91

Observation or Surveillance 93

Development Targets 93

Open Data 95

Hackathons 95

Open Access 95

Ensuring Personal Protection 96

Private Clouds 97

Sanitizing Data 97

Evidence-Based Policy 97

Public-Private Partnerships 98

Impact Bonds 101

Social Impact Bond 102

Development Impact Bonds 103

The Role of Big Data 104

Egypt, 2011 (Continued) 105

Chapter 8: Corporate Sustainability 107

City of London 107

Global Megaforces 109

Population 109

Carbon Footprint 110

Water Scarcity 110

Environmental Risk 111

BP and Exxon Mobile 111

Early Warning Systems 112

Social Media 113

Risk and Resilience 114

Measuring Sustainability 115

Long-Term Decision Making 116

Stranded Assets 117

City of London (Continued) 118

Chapter 9: Weather and Energy 119

India, 2012 119

The Weather 120

Forecasting the Weather 120

When are Weather Forecasts Wrong? 121

Chaos 122

Ensemble Forecasts 122

Communication 123

Renewable Energy 124

Solar, Hydro, and Wind Power 124

Volatile or Intermittent Supply 125

Energy Consumption 126

Smart Meters 127

Intelligent Demand-Side Management 128

India, 2012 (Continued) 129

Part II: Learning From Patterns in Big Data 131

Chapter 10: Pattern Recognition 133

Elements of Success Rhyme 133

Pattern Recognition: A Gift or Trap? 134

What Fish Teach Us About Pattern Recognition 135

Bayes’ Theorem 135

Tsukiji Market 135

Pattern Recognition 137

Rochester Institute of Technology 137

A Method for Recognizing Patterns 137

Elements of Success Rhyme (Continued) 140

Chapter 11: Why Patterns in Big Data Have Emerged 141

Meatpacking District 141

Business Models in the Data Era 142

Data as a Competitive Advantage 143

Data Improves Existing Products or Services 145

Data as the Product 145

Dun & Bradstreet 146

CoStar 148

Ihs 149

Meatpacking District (Continued) 151

Chapter 12: Patterns in Big Data 153

The Data Factor 154

Summary of Big Data Patterns 155

Redefining a Skilled Worker 155

Creating and Utilizing New Sources of Data 156

Building New Data Applications 157

Transforming and Creating New Business Processes 157

Data Collection for Competitive Advantage 158

Exposing Opinion-Based Biases 159

Real-Time Monitoring and Decision Making 159

Social Networks Leveraging and Creating Data 160

Deconstructing the Value Chain 161

New Product Offerings 161

Building for Customers Instead of Markets 162

Tradeoff Between Privacy and Insight 163

Changing the Definition of a Product 163

Inverting the Search Paradigm for Data Discovery 164

Data Security 165

New Partnerships Founded on Data 165

Shortening the Innovation Lifecycle 166

Defining New Channels to Market 166

New Economic Models 167

Forecasting and Predicting Future Events 168

Changing Incentives 168

New Partnerships (Public/Private) 169

Real-Time Monitoring and Decision Making (Early Warning Systems) 169

A Framework for Big Data Patterns 170

Part III: Leading the Revolution 171

Chapter 13: The Data Opportunity 173

What Oil Teaches Us About Data 173

Bain Study 175

Seizing the Opportunity 176

Chapter 14: Porsche 177

Rome 177

Ferdinand Porsche 178

The Birth of Porsche 178

The Porsche Sports Car 179

Porsche Today 180

Rome (Continued) 180

Chapter 15: Puma 181

Herzogenaurach 181

Advertising Wars 182

Jochen Zeitz 182

Environmental Profit and Loss 183

Herzogenaurach (Continued) 184

Chapter 16: A Methodology for Applying Big Data Patterns 185

Introduction 185

The Method 186

Step 1: Understand Data Assets 187

The Patterns 188

Step 2: Explore Data 191

Challenges 192

Questions 192

Hypotheses 193

Data 193

Models 193

Statistical Significance 194

Step 3: Design the Future 194

The Patterns 195

Step 4: Design a Data-Driven Business Model 197

The Patterns 197

Step 5: Transform Business Processes for the Data Era 199

The Patterns 199

Step 6: Design for Governance and Security 201

The Patterns 201

Step 7: Share Metrics and Incentives 202

Chapter 17: Big Data Architecture 205

Introduction 205

Architect for the Future 206

Lessons from Stuttgart 207

Big Data Reference Architectures 207

Leveraging Investments in Architecture 208

Big Data Reference Architectures 211

Business View 212

Logical View 213

Chapter 18: Business View Reference Architecture 215

Introduction 215

Men’s Trunk: A Retailer in the Data Era 216

The Business View Reference Architecture 217

Answer Fabric 218

Data Virtualization 219

Data Engines 220

Management 221

Data Governance 221

User Interface, Applications, and Business Processes 222

Summary 222

Chapter 19: Logical View Reference Architecture 223

Introduction 223

Men’s Trunk: A Retailer in the Data Era (Continued) 224

The Logical View Reference Architecture 226

Data Ingest 227

Analytics 227

Discovery 228

Landing 228

Operational Warehouse 229

Information Insight 230

Operational Data 231

Governance 231

Men’s Trunk: A Retailer in the Data Era (Continued) 232

Chapter 20: The Architecture of the Future 233

Men’s Trunk: A Retailer in the Data Era (Continued) 233

Men’s Trunk: Applying the Methodology 235

Step 1: Understand Data Assets 235

Step 2: Explore the Data 236

Step 3: Design the Future 237

Step 4: Design a Data-Driven Business Model 237

Step 5: Transform Business Processes for the Data Era 237

Step 6: Design for Governance and Security 237

Step 7: Share Metrics and Incentives 238

Men’s Trunk: The Business View Reference Architecture 239

Answer Fabric 240

Data Virtualization 241

Data Engines 241

Management 242

Data Governance 242

User Interface, Applications, and Business Processes 243

Men’s Trunk: The Logical View Reference Architecture 244

Approach 244

Men’s Trunk: A Retailer in the Data Era (Continued) 248

Epilogue 249

The Time is Now 249

Taking Action 250

Fear not Usual Competitors 251

The Future 252

Index 255

Big Data Revolution

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    A Paperback / softback by Rob Thomas, Patrick McSharry

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      Publisher: John Wiley & Sons Inc
      Publication Date: 20/03/2015
      ISBN13: 9781118943717, 978-1118943717
      ISBN10: 1118943716

      Description

      Book Synopsis
      Exploit the power and potential of Big Data to revolutionize business outcomes Big Data Revolution is a guide to improving performance, making better decisions, and transforming business through the effective use of Big Data.

      Table of Contents

      Prologue 1

      Berkeley, 1930s 1

      Pattern Recognition 2

      Nelson Peltz 3

      Committing to One Percent 5

      The Big Data Revolution 6

      Introduction 7

      Storytelling 7

      Objective 7

      Outline 8

      Part I “The Revolution Starts Now: 9 Industries Transforming with Data” 8

      Part II “Learning from Patterns in Big Data” 11

      Part III “Leading the Revolution” 11

      Storytelling (Continued) 13

      Part I: the Revolution Starts Now: 9 Industries Transforming With Data 15

      Chapter 1: Transforming Farms with Data 17

      California, 2013 17

      Brief History of Farming 18

      The Data Era 19

      Potato Farming 20

      Precision Farming 21

      Capturing Farm Data 22

      Deere & Company Versus Monsanto 24

      Integrated Farming Systems 25

      Data Prevails 26

      The Climate Corporation 26

      Growsafe Systems 27

      Farm of the Future 27

      California, 2013 (Continued) 29

      Chapter 2: Why Doctors Will Have Math Degrees 31

      United States, 2014 31

      The History of Medical Education 32

      Scientific Method 32

      Rise of Specialists 33

      We Have a Problem 34

      Ben Goldacre 35

      Vinod Khosla 35

      The Data Era 36

      Collecting Data 36

      Telemedicine 38

      Innovating with Data 40

      Implications of a Data-Driven Medical World 42

      The Future of Medical School 42

      A Typical Medical School 42

      A Medical School for the Data Era 43

      United States, 2030 44

      Chapter 3: Revolutionizing Insurance: Why Actuaries Will Become Data Scientists 45

      Middle of Somewhere, 2012 45

      Short History of Property & Casualty Insurance and Underwriting 46

      Actuarial Science In Insurance 47

      Pensions, Insurance, Leases 49

      Compound Interest 50

      Probability 50

      Mortality Data 50

      Modern-Day Insurance 51

      Eight Weeks to Eight Days 51

      Online Policies 52

      The Data Era 52

      Dynamic Risk Management 52

      Catastrophe Risk 54

      Open Access Modeling 55

      Opportunities 56

      Middle of Somewhere, 2012 (Continued) 58

      Chapter 4: Personalizing Retail and Fashion 59

      Karolina 59

      A Brief History of Retail 60

      Retail Eras 60

      Aristide Boucicaut 61

      The Shift 62

      The Data Era 63

      Stitch Fix 63

      Keaton Row 65

      Zara 66

      Karolina (Continued) 67

      Chapter 5: Transforming Customer Relationships with Data 69

      Buying a House 69

      Brief History of Customer Service 70

      Customer Service Over Time 70

      Boeing 72

      Financial Services 74

      The Data Era 75

      An Automobile Manufacturer 76

      Zendesk 76

      Buying a House (Continued) 77

      Chapter 6: Intelligent Machines 79

      Denmark 79

      Intelligent Machines 80

      Machine Data 81

      The Data Era 82

      General Electric 82

      Drones 84

      Tesla 86

      Networks of Data 87

      Denmark (Continued) 88

      Chapter 7: Government and Society 89

      Egypt, 2011 89

      Social Media 90

      Intelligence 90

      Snowden Effect 91

      Privacy Risk Versus Reward 91

      Observation or Surveillance 93

      Development Targets 93

      Open Data 95

      Hackathons 95

      Open Access 95

      Ensuring Personal Protection 96

      Private Clouds 97

      Sanitizing Data 97

      Evidence-Based Policy 97

      Public-Private Partnerships 98

      Impact Bonds 101

      Social Impact Bond 102

      Development Impact Bonds 103

      The Role of Big Data 104

      Egypt, 2011 (Continued) 105

      Chapter 8: Corporate Sustainability 107

      City of London 107

      Global Megaforces 109

      Population 109

      Carbon Footprint 110

      Water Scarcity 110

      Environmental Risk 111

      BP and Exxon Mobile 111

      Early Warning Systems 112

      Social Media 113

      Risk and Resilience 114

      Measuring Sustainability 115

      Long-Term Decision Making 116

      Stranded Assets 117

      City of London (Continued) 118

      Chapter 9: Weather and Energy 119

      India, 2012 119

      The Weather 120

      Forecasting the Weather 120

      When are Weather Forecasts Wrong? 121

      Chaos 122

      Ensemble Forecasts 122

      Communication 123

      Renewable Energy 124

      Solar, Hydro, and Wind Power 124

      Volatile or Intermittent Supply 125

      Energy Consumption 126

      Smart Meters 127

      Intelligent Demand-Side Management 128

      India, 2012 (Continued) 129

      Part II: Learning From Patterns in Big Data 131

      Chapter 10: Pattern Recognition 133

      Elements of Success Rhyme 133

      Pattern Recognition: A Gift or Trap? 134

      What Fish Teach Us About Pattern Recognition 135

      Bayes’ Theorem 135

      Tsukiji Market 135

      Pattern Recognition 137

      Rochester Institute of Technology 137

      A Method for Recognizing Patterns 137

      Elements of Success Rhyme (Continued) 140

      Chapter 11: Why Patterns in Big Data Have Emerged 141

      Meatpacking District 141

      Business Models in the Data Era 142

      Data as a Competitive Advantage 143

      Data Improves Existing Products or Services 145

      Data as the Product 145

      Dun & Bradstreet 146

      CoStar 148

      Ihs 149

      Meatpacking District (Continued) 151

      Chapter 12: Patterns in Big Data 153

      The Data Factor 154

      Summary of Big Data Patterns 155

      Redefining a Skilled Worker 155

      Creating and Utilizing New Sources of Data 156

      Building New Data Applications 157

      Transforming and Creating New Business Processes 157

      Data Collection for Competitive Advantage 158

      Exposing Opinion-Based Biases 159

      Real-Time Monitoring and Decision Making 159

      Social Networks Leveraging and Creating Data 160

      Deconstructing the Value Chain 161

      New Product Offerings 161

      Building for Customers Instead of Markets 162

      Tradeoff Between Privacy and Insight 163

      Changing the Definition of a Product 163

      Inverting the Search Paradigm for Data Discovery 164

      Data Security 165

      New Partnerships Founded on Data 165

      Shortening the Innovation Lifecycle 166

      Defining New Channels to Market 166

      New Economic Models 167

      Forecasting and Predicting Future Events 168

      Changing Incentives 168

      New Partnerships (Public/Private) 169

      Real-Time Monitoring and Decision Making (Early Warning Systems) 169

      A Framework for Big Data Patterns 170

      Part III: Leading the Revolution 171

      Chapter 13: The Data Opportunity 173

      What Oil Teaches Us About Data 173

      Bain Study 175

      Seizing the Opportunity 176

      Chapter 14: Porsche 177

      Rome 177

      Ferdinand Porsche 178

      The Birth of Porsche 178

      The Porsche Sports Car 179

      Porsche Today 180

      Rome (Continued) 180

      Chapter 15: Puma 181

      Herzogenaurach 181

      Advertising Wars 182

      Jochen Zeitz 182

      Environmental Profit and Loss 183

      Herzogenaurach (Continued) 184

      Chapter 16: A Methodology for Applying Big Data Patterns 185

      Introduction 185

      The Method 186

      Step 1: Understand Data Assets 187

      The Patterns 188

      Step 2: Explore Data 191

      Challenges 192

      Questions 192

      Hypotheses 193

      Data 193

      Models 193

      Statistical Significance 194

      Step 3: Design the Future 194

      The Patterns 195

      Step 4: Design a Data-Driven Business Model 197

      The Patterns 197

      Step 5: Transform Business Processes for the Data Era 199

      The Patterns 199

      Step 6: Design for Governance and Security 201

      The Patterns 201

      Step 7: Share Metrics and Incentives 202

      Chapter 17: Big Data Architecture 205

      Introduction 205

      Architect for the Future 206

      Lessons from Stuttgart 207

      Big Data Reference Architectures 207

      Leveraging Investments in Architecture 208

      Big Data Reference Architectures 211

      Business View 212

      Logical View 213

      Chapter 18: Business View Reference Architecture 215

      Introduction 215

      Men’s Trunk: A Retailer in the Data Era 216

      The Business View Reference Architecture 217

      Answer Fabric 218

      Data Virtualization 219

      Data Engines 220

      Management 221

      Data Governance 221

      User Interface, Applications, and Business Processes 222

      Summary 222

      Chapter 19: Logical View Reference Architecture 223

      Introduction 223

      Men’s Trunk: A Retailer in the Data Era (Continued) 224

      The Logical View Reference Architecture 226

      Data Ingest 227

      Analytics 227

      Discovery 228

      Landing 228

      Operational Warehouse 229

      Information Insight 230

      Operational Data 231

      Governance 231

      Men’s Trunk: A Retailer in the Data Era (Continued) 232

      Chapter 20: The Architecture of the Future 233

      Men’s Trunk: A Retailer in the Data Era (Continued) 233

      Men’s Trunk: Applying the Methodology 235

      Step 1: Understand Data Assets 235

      Step 2: Explore the Data 236

      Step 3: Design the Future 237

      Step 4: Design a Data-Driven Business Model 237

      Step 5: Transform Business Processes for the Data Era 237

      Step 6: Design for Governance and Security 237

      Step 7: Share Metrics and Incentives 238

      Men’s Trunk: The Business View Reference Architecture 239

      Answer Fabric 240

      Data Virtualization 241

      Data Engines 241

      Management 242

      Data Governance 242

      User Interface, Applications, and Business Processes 243

      Men’s Trunk: The Logical View Reference Architecture 244

      Approach 244

      Men’s Trunk: A Retailer in the Data Era (Continued) 248

      Epilogue 249

      The Time is Now 249

      Taking Action 250

      Fear not Usual Competitors 251

      The Future 252

      Index 255

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