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The era of Big Data as arrived, and most organizations are woefully unprepared. Slowly, many are discovering that stalwarts like Excel spreadsheets, KPIs, standard reports, and even traditional business intelligence tools aren't sufficient. These old standbys can't begin to handle today's increasing streams, volumes, and types of data. Amidst all of the chaos, though, a new type of organization is emerging. In The Visual Organization, award-winning author and technology expert Phil Simon looks at how an increasingly number of organizations are embracing new dataviz tools and, more important, a…mehr
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The era of Big Data as arrived, and most organizations are woefully unprepared. Slowly, many are discovering that stalwarts like Excel spreadsheets, KPIs, standard reports, and even traditional business intelligence tools aren't sufficient. These old standbys can't begin to handle today's increasing streams, volumes, and types of data.
Amidst all of the chaos, though, a new type of organization is emerging.
In The Visual Organization, award-winning author and technology expert Phil Simon looks at how an increasingly number of organizations are embracing new dataviz tools and, more important, a new mind-set based upon data discovery and exploration. Simon adroitly shows how Amazon, Apple, Facebook, Google, Twitter, and other tech heavyweights use powerful data visualization tools to garner fascinating insights into their businesses. But make no mistake: these companies are hardly alone. Organizations of all types, industries, sizes are representing their data in new and amazing ways. As a result, they are asking better questions and making better business decisions.
Rife with real-world examples and case studies, The Visual Organization is a full-color tour-de-force.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Amidst all of the chaos, though, a new type of organization is emerging.
In The Visual Organization, award-winning author and technology expert Phil Simon looks at how an increasingly number of organizations are embracing new dataviz tools and, more important, a new mind-set based upon data discovery and exploration. Simon adroitly shows how Amazon, Apple, Facebook, Google, Twitter, and other tech heavyweights use powerful data visualization tools to garner fascinating insights into their businesses. But make no mistake: these companies are hardly alone. Organizations of all types, industries, sizes are representing their data in new and amazing ways. As a result, they are asking better questions and making better business decisions.
Rife with real-world examples and case studies, The Visual Organization is a full-color tour-de-force.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- SAS Institute Inc
- Verlag: Wiley & Sons
- Artikelnr. des Verlages: 1W118794380
- 1. Auflage
- Seitenzahl: 240
- Erscheinungstermin: 24. März 2014
- Englisch
- Abmessung: 263mm x 189mm x 23mm
- Gewicht: 751g
- ISBN-13: 9781118794388
- ISBN-10: 1118794389
- Artikelnr.: 39359999
- SAS Institute Inc
- Verlag: Wiley & Sons
- Artikelnr. des Verlages: 1W118794380
- 1. Auflage
- Seitenzahl: 240
- Erscheinungstermin: 24. März 2014
- Englisch
- Abmessung: 263mm x 189mm x 23mm
- Gewicht: 751g
- ISBN-13: 9781118794388
- ISBN-10: 1118794389
- Artikelnr.: 39359999
Phil Simon is a frequent keynote speaker and recognized technology expert. He is the awardwinning author of six management books He consults with organizations on matters related to strategy, data, and technology His contributions have been featured on The Harvard Business Review, CNN, NBC, CNBC, Inc. Magazine, BusinessWeek, The Huffington Post, Fast Company, The New York Times, ReadWriteWeb, and many other sites. #visualorg www.philsimon.com @philsimon
List of Figures and Tables xvii Preface xix Acknowledgments xxv How to Help
This Book xxvii Part I Book Overview and Background 1 Introduction 3
Adventures in Twitter Data Discovery 4 Contemporary Dataviz 101 9 Primary
Objective 9 Benefits 11 More Important Than Ever 13 Revenge of the
Laggards: The Current State of Dataviz 15 Book Overview 18 Defining the
Visual Organization 19 Central Thesis of Book 19 Cui Bono? 20 Methodology:
Story Matters Here 21 The Quest for Knowledge and Case Studies 24
Differentiation: A Note on Other Dataviz Texts 25 Plan of Attack 26 Next 27
Notes 27 Chapter 1 The Ascent of the Visual Organization 29 The Rise of Big
Data 30 Open Data 30 The Burgeoning Data Ecosystem 33 The New Web: Visual,
Semantic, and API-Driven 34 The Arrival of the Visual Web 34 Linked Data
and a More Semantic Web 35 The Relative Ease of Accessing Data 36 Greater
Efficiency via Clouds and Data Centers 37 Better Data Tools 38 Greater
Organizational Transparency 40 The Copycat Economy: Monkey See, Monkey Do
41 Data Journalism and the Nate Silver Effect 41 Digital Man 44 The Arrival
of the Visual Citizen 44 Mobility 47 The Visual Employee: A More Tech- and
Data-Savvy Workforce 47 Navigating Our Data-Driven World 48 Next 49 Notes
49 Chapter 2 Transforming Data into Insights: The Tools 51 Dataviz: Part of
an Intelligent and Holistic Strategy 52 The Tyranny of Terminology:
Dataviz, BI, Reporting, Analytics, and KPIs 53 Do Visual Organizations
Eschew All Tried-and-True Reporting Tools? 55 Drawing Some Distinctions 56
The Dataviz Fab Five 57 Applications from Large Enterprise Software Vendors
57 LESVs: The Case For 58 LESVs: The Case Against 59 Best-of-Breed
Applications 61 Cost 62 Ease of Use and Employee Training 62 Integration
and the Big Data World 63 Popular Open-Source Tools 64 D3.js 64 R 65 Others
66 Design Firms 66 Startups, Web Services, and Additional Resources 70 The
Final Word: One Size Doesn't Fit All 72 Next 73 Notes 73 Part II
Introducing the Visual Organization 75 Chapter 3 The Quintessential Visual
Organization 77 Netflix 1.0: Upsetting the Applecart 77 Netflix 2.0:
Self-Cannibalization 78 Dataviz: Part of a Holistic Big Data Strategy 80
Dataviz: Imbued in the Netflix Culture 81 Customer Insights 82 Better
Technical and Network Diagnostics 84 Embracing the Community 88 Lessons 89
Next 90 Notes 90 Chapter 4 Dataviz in the DNA 93 The Beginnings 94 UX Is
Paramount 95 The Plumbing 97 Embracing Free and Open-Source Tools 98
Extensive Use of APIs 101 Lessons 101 Next 102 Note 102 Chapter 5
Transparency in Texas 103 Background 104 Early Dataviz Efforts 105
Embracing Traditional BI 106 Data Discovery 107 Better Visibility into
Student Life 108 Expansion: Spreading Dataviz Throughout the System 110
Results 111 Lessons 113 Next 113 Notes 114 Part III Getting Started:
Becoming a Visual Organization 115 Chapter 6 The Four-Level Visual
Organization Framework 117 Big Disclaimers 118 A Simple Model 119 Limits
and Clarifications 120 Progression 122 Is Progression Always Linear? 123
Can a Small Organization Best Position Itself to Reach Levels 3 and 4? If
So, How? 123 Can an Organization Start at Level 3 or 4 and Build from the
Top Down? 123 Is Intralevel Progression Possible? 123 Are Intralevel and
Interlevel Progression Inevitable? 123 Can Different Parts of the
Organization Exist on Different Levels? 124 Should an Organization
Struggling with Levels 1 and 2 Attempt to Move to Level 3 or 4? 124
Regression: Reversion to Lower Levels 124 Complements, Not Substitutes 125
Accumulated Advantage 125 The Limits of Lower Levels 125 Relativity and
Sublevels 125 Should Every Organization Aspire to Level 4? 126 Next 126
Chapter 7 WWVOD? 127 Visualizing the Impact of a Reorg 128 Visualizing
Employee Movement 129 Starting Down the Dataviz Path 129 Results and
Lessons 133 Future 135 A Marketing Example 136 Next 137 Notes 137 Chapter 8
Building the Visual Organization 139 Data Tips and Best Practices 139 Data:
The Primordial Soup 139 Walk Before You Run . . . At Least for Now 140 A
Dataviz Is Often Just the Starting Point 140 Visualize Both Small and Big
Data 141 Don't Forget the Metadata 141 Look Outside of the Enterprise 143
The Beginnings: All Data Is Not Required 143 Visualize Good and Bad Data
144 Enable Drill-Down 144 Design Tips and Best Practices 148 Begin with the
End in Mind (Sort of) 148 Subtract When Possible 150 UX: Participation and
Experimentation Are Paramount 150 Encourage Interactivity 151 Use Motion
and Animation Carefully 151 Use Relative--Not Absolute--Figures 151
Technology Tips and Best Practices 152 Where Possible, Consider Using APIs
152 Embrace New Tools 152 Know the Limitations of Dataviz Tools 153 Be Open
153 Management Tips and Best Practices 154 Encourage Self-Service,
Exploration, and Data Democracy 154 Exhibit a Healthy Skepticism 154 Trust
the Process, Not the Result 155 Avoid the Perils of Silos and
Specialization 156 If Possible, Visualize 156 Seek Hybrids When Hiring 157
Think Direction First, Precision Later 157 Next 158 Notes 158 Chapter 9 The
Inhibitors: Mistakes, Myths, and Challenges 159 Mistakes 160 Falling into
the Traditional ROI Trap 160 Always--and Blindly--Trusting a Dataviz 161
Ignoring the Audience 162 Developing in a Cathedral 162 Set It and Forget
It 162 Bad Dataviz 163 TMI 163 Using Tiny Graphics 163 Myths 165
Data-visualizations Guarantee Certainty and Success 165 Data Visualization
Is Easy 165 Data Visualizations Are Projects 166 There Is One "Right"
Visualization 166 Excel Is Sufficient 167 Challenges 167 The Quarterly
Visualization Mentality 167 Data Defiance 168 Unlearning History:
Overcoming the Disappointments of Prior Tools 168 Next 169 Notes 169 Part
IV Conclusion and the Future of Dataviz 171 Coda: We're Just Getting
Started 173 Four Critical Data-Centric Trends 175 Wearable Technology and
the Quantified Self 175 Machine Learning and the Internet of Things 176
Multidimensional Data 177 The Forthcoming Battle Over Data Portability and
Ownership 179 Final Thoughts: Nothing Stops This Train 181 Notes 182
Afterword: My Life in Data 183 Appendix: Supplemental Dataviz Resources 187
Selected Bibliography 191 About the Author 193 Index 195
This Book xxvii Part I Book Overview and Background 1 Introduction 3
Adventures in Twitter Data Discovery 4 Contemporary Dataviz 101 9 Primary
Objective 9 Benefits 11 More Important Than Ever 13 Revenge of the
Laggards: The Current State of Dataviz 15 Book Overview 18 Defining the
Visual Organization 19 Central Thesis of Book 19 Cui Bono? 20 Methodology:
Story Matters Here 21 The Quest for Knowledge and Case Studies 24
Differentiation: A Note on Other Dataviz Texts 25 Plan of Attack 26 Next 27
Notes 27 Chapter 1 The Ascent of the Visual Organization 29 The Rise of Big
Data 30 Open Data 30 The Burgeoning Data Ecosystem 33 The New Web: Visual,
Semantic, and API-Driven 34 The Arrival of the Visual Web 34 Linked Data
and a More Semantic Web 35 The Relative Ease of Accessing Data 36 Greater
Efficiency via Clouds and Data Centers 37 Better Data Tools 38 Greater
Organizational Transparency 40 The Copycat Economy: Monkey See, Monkey Do
41 Data Journalism and the Nate Silver Effect 41 Digital Man 44 The Arrival
of the Visual Citizen 44 Mobility 47 The Visual Employee: A More Tech- and
Data-Savvy Workforce 47 Navigating Our Data-Driven World 48 Next 49 Notes
49 Chapter 2 Transforming Data into Insights: The Tools 51 Dataviz: Part of
an Intelligent and Holistic Strategy 52 The Tyranny of Terminology:
Dataviz, BI, Reporting, Analytics, and KPIs 53 Do Visual Organizations
Eschew All Tried-and-True Reporting Tools? 55 Drawing Some Distinctions 56
The Dataviz Fab Five 57 Applications from Large Enterprise Software Vendors
57 LESVs: The Case For 58 LESVs: The Case Against 59 Best-of-Breed
Applications 61 Cost 62 Ease of Use and Employee Training 62 Integration
and the Big Data World 63 Popular Open-Source Tools 64 D3.js 64 R 65 Others
66 Design Firms 66 Startups, Web Services, and Additional Resources 70 The
Final Word: One Size Doesn't Fit All 72 Next 73 Notes 73 Part II
Introducing the Visual Organization 75 Chapter 3 The Quintessential Visual
Organization 77 Netflix 1.0: Upsetting the Applecart 77 Netflix 2.0:
Self-Cannibalization 78 Dataviz: Part of a Holistic Big Data Strategy 80
Dataviz: Imbued in the Netflix Culture 81 Customer Insights 82 Better
Technical and Network Diagnostics 84 Embracing the Community 88 Lessons 89
Next 90 Notes 90 Chapter 4 Dataviz in the DNA 93 The Beginnings 94 UX Is
Paramount 95 The Plumbing 97 Embracing Free and Open-Source Tools 98
Extensive Use of APIs 101 Lessons 101 Next 102 Note 102 Chapter 5
Transparency in Texas 103 Background 104 Early Dataviz Efforts 105
Embracing Traditional BI 106 Data Discovery 107 Better Visibility into
Student Life 108 Expansion: Spreading Dataviz Throughout the System 110
Results 111 Lessons 113 Next 113 Notes 114 Part III Getting Started:
Becoming a Visual Organization 115 Chapter 6 The Four-Level Visual
Organization Framework 117 Big Disclaimers 118 A Simple Model 119 Limits
and Clarifications 120 Progression 122 Is Progression Always Linear? 123
Can a Small Organization Best Position Itself to Reach Levels 3 and 4? If
So, How? 123 Can an Organization Start at Level 3 or 4 and Build from the
Top Down? 123 Is Intralevel Progression Possible? 123 Are Intralevel and
Interlevel Progression Inevitable? 123 Can Different Parts of the
Organization Exist on Different Levels? 124 Should an Organization
Struggling with Levels 1 and 2 Attempt to Move to Level 3 or 4? 124
Regression: Reversion to Lower Levels 124 Complements, Not Substitutes 125
Accumulated Advantage 125 The Limits of Lower Levels 125 Relativity and
Sublevels 125 Should Every Organization Aspire to Level 4? 126 Next 126
Chapter 7 WWVOD? 127 Visualizing the Impact of a Reorg 128 Visualizing
Employee Movement 129 Starting Down the Dataviz Path 129 Results and
Lessons 133 Future 135 A Marketing Example 136 Next 137 Notes 137 Chapter 8
Building the Visual Organization 139 Data Tips and Best Practices 139 Data:
The Primordial Soup 139 Walk Before You Run . . . At Least for Now 140 A
Dataviz Is Often Just the Starting Point 140 Visualize Both Small and Big
Data 141 Don't Forget the Metadata 141 Look Outside of the Enterprise 143
The Beginnings: All Data Is Not Required 143 Visualize Good and Bad Data
144 Enable Drill-Down 144 Design Tips and Best Practices 148 Begin with the
End in Mind (Sort of) 148 Subtract When Possible 150 UX: Participation and
Experimentation Are Paramount 150 Encourage Interactivity 151 Use Motion
and Animation Carefully 151 Use Relative--Not Absolute--Figures 151
Technology Tips and Best Practices 152 Where Possible, Consider Using APIs
152 Embrace New Tools 152 Know the Limitations of Dataviz Tools 153 Be Open
153 Management Tips and Best Practices 154 Encourage Self-Service,
Exploration, and Data Democracy 154 Exhibit a Healthy Skepticism 154 Trust
the Process, Not the Result 155 Avoid the Perils of Silos and
Specialization 156 If Possible, Visualize 156 Seek Hybrids When Hiring 157
Think Direction First, Precision Later 157 Next 158 Notes 158 Chapter 9 The
Inhibitors: Mistakes, Myths, and Challenges 159 Mistakes 160 Falling into
the Traditional ROI Trap 160 Always--and Blindly--Trusting a Dataviz 161
Ignoring the Audience 162 Developing in a Cathedral 162 Set It and Forget
It 162 Bad Dataviz 163 TMI 163 Using Tiny Graphics 163 Myths 165
Data-visualizations Guarantee Certainty and Success 165 Data Visualization
Is Easy 165 Data Visualizations Are Projects 166 There Is One "Right"
Visualization 166 Excel Is Sufficient 167 Challenges 167 The Quarterly
Visualization Mentality 167 Data Defiance 168 Unlearning History:
Overcoming the Disappointments of Prior Tools 168 Next 169 Notes 169 Part
IV Conclusion and the Future of Dataviz 171 Coda: We're Just Getting
Started 173 Four Critical Data-Centric Trends 175 Wearable Technology and
the Quantified Self 175 Machine Learning and the Internet of Things 176
Multidimensional Data 177 The Forthcoming Battle Over Data Portability and
Ownership 179 Final Thoughts: Nothing Stops This Train 181 Notes 182
Afterword: My Life in Data 183 Appendix: Supplemental Dataviz Resources 187
Selected Bibliography 191 About the Author 193 Index 195
List of Figures and Tables xvii Preface xix Acknowledgments xxv How to Help
This Book xxvii Part I Book Overview and Background 1 Introduction 3
Adventures in Twitter Data Discovery 4 Contemporary Dataviz 101 9 Primary
Objective 9 Benefits 11 More Important Than Ever 13 Revenge of the
Laggards: The Current State of Dataviz 15 Book Overview 18 Defining the
Visual Organization 19 Central Thesis of Book 19 Cui Bono? 20 Methodology:
Story Matters Here 21 The Quest for Knowledge and Case Studies 24
Differentiation: A Note on Other Dataviz Texts 25 Plan of Attack 26 Next 27
Notes 27 Chapter 1 The Ascent of the Visual Organization 29 The Rise of Big
Data 30 Open Data 30 The Burgeoning Data Ecosystem 33 The New Web: Visual,
Semantic, and API-Driven 34 The Arrival of the Visual Web 34 Linked Data
and a More Semantic Web 35 The Relative Ease of Accessing Data 36 Greater
Efficiency via Clouds and Data Centers 37 Better Data Tools 38 Greater
Organizational Transparency 40 The Copycat Economy: Monkey See, Monkey Do
41 Data Journalism and the Nate Silver Effect 41 Digital Man 44 The Arrival
of the Visual Citizen 44 Mobility 47 The Visual Employee: A More Tech- and
Data-Savvy Workforce 47 Navigating Our Data-Driven World 48 Next 49 Notes
49 Chapter 2 Transforming Data into Insights: The Tools 51 Dataviz: Part of
an Intelligent and Holistic Strategy 52 The Tyranny of Terminology:
Dataviz, BI, Reporting, Analytics, and KPIs 53 Do Visual Organizations
Eschew All Tried-and-True Reporting Tools? 55 Drawing Some Distinctions 56
The Dataviz Fab Five 57 Applications from Large Enterprise Software Vendors
57 LESVs: The Case For 58 LESVs: The Case Against 59 Best-of-Breed
Applications 61 Cost 62 Ease of Use and Employee Training 62 Integration
and the Big Data World 63 Popular Open-Source Tools 64 D3.js 64 R 65 Others
66 Design Firms 66 Startups, Web Services, and Additional Resources 70 The
Final Word: One Size Doesn't Fit All 72 Next 73 Notes 73 Part II
Introducing the Visual Organization 75 Chapter 3 The Quintessential Visual
Organization 77 Netflix 1.0: Upsetting the Applecart 77 Netflix 2.0:
Self-Cannibalization 78 Dataviz: Part of a Holistic Big Data Strategy 80
Dataviz: Imbued in the Netflix Culture 81 Customer Insights 82 Better
Technical and Network Diagnostics 84 Embracing the Community 88 Lessons 89
Next 90 Notes 90 Chapter 4 Dataviz in the DNA 93 The Beginnings 94 UX Is
Paramount 95 The Plumbing 97 Embracing Free and Open-Source Tools 98
Extensive Use of APIs 101 Lessons 101 Next 102 Note 102 Chapter 5
Transparency in Texas 103 Background 104 Early Dataviz Efforts 105
Embracing Traditional BI 106 Data Discovery 107 Better Visibility into
Student Life 108 Expansion: Spreading Dataviz Throughout the System 110
Results 111 Lessons 113 Next 113 Notes 114 Part III Getting Started:
Becoming a Visual Organization 115 Chapter 6 The Four-Level Visual
Organization Framework 117 Big Disclaimers 118 A Simple Model 119 Limits
and Clarifications 120 Progression 122 Is Progression Always Linear? 123
Can a Small Organization Best Position Itself to Reach Levels 3 and 4? If
So, How? 123 Can an Organization Start at Level 3 or 4 and Build from the
Top Down? 123 Is Intralevel Progression Possible? 123 Are Intralevel and
Interlevel Progression Inevitable? 123 Can Different Parts of the
Organization Exist on Different Levels? 124 Should an Organization
Struggling with Levels 1 and 2 Attempt to Move to Level 3 or 4? 124
Regression: Reversion to Lower Levels 124 Complements, Not Substitutes 125
Accumulated Advantage 125 The Limits of Lower Levels 125 Relativity and
Sublevels 125 Should Every Organization Aspire to Level 4? 126 Next 126
Chapter 7 WWVOD? 127 Visualizing the Impact of a Reorg 128 Visualizing
Employee Movement 129 Starting Down the Dataviz Path 129 Results and
Lessons 133 Future 135 A Marketing Example 136 Next 137 Notes 137 Chapter 8
Building the Visual Organization 139 Data Tips and Best Practices 139 Data:
The Primordial Soup 139 Walk Before You Run . . . At Least for Now 140 A
Dataviz Is Often Just the Starting Point 140 Visualize Both Small and Big
Data 141 Don't Forget the Metadata 141 Look Outside of the Enterprise 143
The Beginnings: All Data Is Not Required 143 Visualize Good and Bad Data
144 Enable Drill-Down 144 Design Tips and Best Practices 148 Begin with the
End in Mind (Sort of) 148 Subtract When Possible 150 UX: Participation and
Experimentation Are Paramount 150 Encourage Interactivity 151 Use Motion
and Animation Carefully 151 Use Relative--Not Absolute--Figures 151
Technology Tips and Best Practices 152 Where Possible, Consider Using APIs
152 Embrace New Tools 152 Know the Limitations of Dataviz Tools 153 Be Open
153 Management Tips and Best Practices 154 Encourage Self-Service,
Exploration, and Data Democracy 154 Exhibit a Healthy Skepticism 154 Trust
the Process, Not the Result 155 Avoid the Perils of Silos and
Specialization 156 If Possible, Visualize 156 Seek Hybrids When Hiring 157
Think Direction First, Precision Later 157 Next 158 Notes 158 Chapter 9 The
Inhibitors: Mistakes, Myths, and Challenges 159 Mistakes 160 Falling into
the Traditional ROI Trap 160 Always--and Blindly--Trusting a Dataviz 161
Ignoring the Audience 162 Developing in a Cathedral 162 Set It and Forget
It 162 Bad Dataviz 163 TMI 163 Using Tiny Graphics 163 Myths 165
Data-visualizations Guarantee Certainty and Success 165 Data Visualization
Is Easy 165 Data Visualizations Are Projects 166 There Is One "Right"
Visualization 166 Excel Is Sufficient 167 Challenges 167 The Quarterly
Visualization Mentality 167 Data Defiance 168 Unlearning History:
Overcoming the Disappointments of Prior Tools 168 Next 169 Notes 169 Part
IV Conclusion and the Future of Dataviz 171 Coda: We're Just Getting
Started 173 Four Critical Data-Centric Trends 175 Wearable Technology and
the Quantified Self 175 Machine Learning and the Internet of Things 176
Multidimensional Data 177 The Forthcoming Battle Over Data Portability and
Ownership 179 Final Thoughts: Nothing Stops This Train 181 Notes 182
Afterword: My Life in Data 183 Appendix: Supplemental Dataviz Resources 187
Selected Bibliography 191 About the Author 193 Index 195
This Book xxvii Part I Book Overview and Background 1 Introduction 3
Adventures in Twitter Data Discovery 4 Contemporary Dataviz 101 9 Primary
Objective 9 Benefits 11 More Important Than Ever 13 Revenge of the
Laggards: The Current State of Dataviz 15 Book Overview 18 Defining the
Visual Organization 19 Central Thesis of Book 19 Cui Bono? 20 Methodology:
Story Matters Here 21 The Quest for Knowledge and Case Studies 24
Differentiation: A Note on Other Dataviz Texts 25 Plan of Attack 26 Next 27
Notes 27 Chapter 1 The Ascent of the Visual Organization 29 The Rise of Big
Data 30 Open Data 30 The Burgeoning Data Ecosystem 33 The New Web: Visual,
Semantic, and API-Driven 34 The Arrival of the Visual Web 34 Linked Data
and a More Semantic Web 35 The Relative Ease of Accessing Data 36 Greater
Efficiency via Clouds and Data Centers 37 Better Data Tools 38 Greater
Organizational Transparency 40 The Copycat Economy: Monkey See, Monkey Do
41 Data Journalism and the Nate Silver Effect 41 Digital Man 44 The Arrival
of the Visual Citizen 44 Mobility 47 The Visual Employee: A More Tech- and
Data-Savvy Workforce 47 Navigating Our Data-Driven World 48 Next 49 Notes
49 Chapter 2 Transforming Data into Insights: The Tools 51 Dataviz: Part of
an Intelligent and Holistic Strategy 52 The Tyranny of Terminology:
Dataviz, BI, Reporting, Analytics, and KPIs 53 Do Visual Organizations
Eschew All Tried-and-True Reporting Tools? 55 Drawing Some Distinctions 56
The Dataviz Fab Five 57 Applications from Large Enterprise Software Vendors
57 LESVs: The Case For 58 LESVs: The Case Against 59 Best-of-Breed
Applications 61 Cost 62 Ease of Use and Employee Training 62 Integration
and the Big Data World 63 Popular Open-Source Tools 64 D3.js 64 R 65 Others
66 Design Firms 66 Startups, Web Services, and Additional Resources 70 The
Final Word: One Size Doesn't Fit All 72 Next 73 Notes 73 Part II
Introducing the Visual Organization 75 Chapter 3 The Quintessential Visual
Organization 77 Netflix 1.0: Upsetting the Applecart 77 Netflix 2.0:
Self-Cannibalization 78 Dataviz: Part of a Holistic Big Data Strategy 80
Dataviz: Imbued in the Netflix Culture 81 Customer Insights 82 Better
Technical and Network Diagnostics 84 Embracing the Community 88 Lessons 89
Next 90 Notes 90 Chapter 4 Dataviz in the DNA 93 The Beginnings 94 UX Is
Paramount 95 The Plumbing 97 Embracing Free and Open-Source Tools 98
Extensive Use of APIs 101 Lessons 101 Next 102 Note 102 Chapter 5
Transparency in Texas 103 Background 104 Early Dataviz Efforts 105
Embracing Traditional BI 106 Data Discovery 107 Better Visibility into
Student Life 108 Expansion: Spreading Dataviz Throughout the System 110
Results 111 Lessons 113 Next 113 Notes 114 Part III Getting Started:
Becoming a Visual Organization 115 Chapter 6 The Four-Level Visual
Organization Framework 117 Big Disclaimers 118 A Simple Model 119 Limits
and Clarifications 120 Progression 122 Is Progression Always Linear? 123
Can a Small Organization Best Position Itself to Reach Levels 3 and 4? If
So, How? 123 Can an Organization Start at Level 3 or 4 and Build from the
Top Down? 123 Is Intralevel Progression Possible? 123 Are Intralevel and
Interlevel Progression Inevitable? 123 Can Different Parts of the
Organization Exist on Different Levels? 124 Should an Organization
Struggling with Levels 1 and 2 Attempt to Move to Level 3 or 4? 124
Regression: Reversion to Lower Levels 124 Complements, Not Substitutes 125
Accumulated Advantage 125 The Limits of Lower Levels 125 Relativity and
Sublevels 125 Should Every Organization Aspire to Level 4? 126 Next 126
Chapter 7 WWVOD? 127 Visualizing the Impact of a Reorg 128 Visualizing
Employee Movement 129 Starting Down the Dataviz Path 129 Results and
Lessons 133 Future 135 A Marketing Example 136 Next 137 Notes 137 Chapter 8
Building the Visual Organization 139 Data Tips and Best Practices 139 Data:
The Primordial Soup 139 Walk Before You Run . . . At Least for Now 140 A
Dataviz Is Often Just the Starting Point 140 Visualize Both Small and Big
Data 141 Don't Forget the Metadata 141 Look Outside of the Enterprise 143
The Beginnings: All Data Is Not Required 143 Visualize Good and Bad Data
144 Enable Drill-Down 144 Design Tips and Best Practices 148 Begin with the
End in Mind (Sort of) 148 Subtract When Possible 150 UX: Participation and
Experimentation Are Paramount 150 Encourage Interactivity 151 Use Motion
and Animation Carefully 151 Use Relative--Not Absolute--Figures 151
Technology Tips and Best Practices 152 Where Possible, Consider Using APIs
152 Embrace New Tools 152 Know the Limitations of Dataviz Tools 153 Be Open
153 Management Tips and Best Practices 154 Encourage Self-Service,
Exploration, and Data Democracy 154 Exhibit a Healthy Skepticism 154 Trust
the Process, Not the Result 155 Avoid the Perils of Silos and
Specialization 156 If Possible, Visualize 156 Seek Hybrids When Hiring 157
Think Direction First, Precision Later 157 Next 158 Notes 158 Chapter 9 The
Inhibitors: Mistakes, Myths, and Challenges 159 Mistakes 160 Falling into
the Traditional ROI Trap 160 Always--and Blindly--Trusting a Dataviz 161
Ignoring the Audience 162 Developing in a Cathedral 162 Set It and Forget
It 162 Bad Dataviz 163 TMI 163 Using Tiny Graphics 163 Myths 165
Data-visualizations Guarantee Certainty and Success 165 Data Visualization
Is Easy 165 Data Visualizations Are Projects 166 There Is One "Right"
Visualization 166 Excel Is Sufficient 167 Challenges 167 The Quarterly
Visualization Mentality 167 Data Defiance 168 Unlearning History:
Overcoming the Disappointments of Prior Tools 168 Next 169 Notes 169 Part
IV Conclusion and the Future of Dataviz 171 Coda: We're Just Getting
Started 173 Four Critical Data-Centric Trends 175 Wearable Technology and
the Quantified Self 175 Machine Learning and the Internet of Things 176
Multidimensional Data 177 The Forthcoming Battle Over Data Portability and
Ownership 179 Final Thoughts: Nothing Stops This Train 181 Notes 182
Afterword: My Life in Data 183 Appendix: Supplemental Dataviz Resources 187
Selected Bibliography 191 About the Author 193 Index 195