Description

Book Synopsis

Thomas Erl is a best-selling IT author who has authored and co-authored 15 books published by Prentice Hall and Pearson Education and dedicated to topics focused on contemporary information technology and practices. These titles were delivered for the Pearson Digital Enterprise Series from Thomas Erl (formerly the Prentice Hall Service Technology Series from Thomas Erl) for which Thomas also acts as series editor.


As founder and president of Arcitura Education (www.arcitura.com), Thomas also leads the development of curricula for internationally recognized, vendor-neutral training and accreditation programs. Arcitura's portfolio currently consists of over 100 courses, over 90 Pearson VUE exams, and over 40 certification tracks, covering topics such as Digital Transformation, Robotic Process Automation (RPA), DevOps, Blockchain, IoT, Containerization, Machine Learning, Artificial Intelligence (AI), Cybersecurity, Service-Oriented Architecture (

Table of Contents
About This Book xxvii
PART I: DIGITAL TRANSFORMATION FUNDAMENTALS
Chapter 1: Understanding Digital Transformation 3
(What is Digital Transformation?) 3
Business, Technology, Data and People 5
Digital Transformation and Business 6
Digital Transformation and Technology 7
Digital Transformation and Data 9
Digital Transformation and People 10
Digital Transformation and Organizations and Solutions 11
Chapter 2: Common Business Drivers 13
(What Led to Digital Transformation?) 13
Losing Touch with Customer Communities 14
Inability to Grow in Stale Marketplaces 16
Inability to Adapt to Rapidly Changing Marketplaces 16
Cold Customer Relationships 19
Inefficient Operations 19
Inefficient Decision-Making 21
Chapter 3: Common Technology Drivers 23
(What Enables Digital Transformation?) 23
Enhanced and Diverse Data Collection 25
Contemporary Data Science 27
Sophisticated Automation Technology 29
Autonomous Decision-Making 29
Centralized, Scalable, Resilient IT Resources 31
Immutable Data Storage 33
Ubiquitous Multiexperience Access 34
Chapter 4: Common Benefits and Goals 37
(Why Undergo a Digital Transformation?) 37
Enhanced Business Alignment 39
Enhanced Automation and Productivity 42
Enhanced Data Intelligence and Decision-Making 44
Improved Customer Experience and Customer Confidence 44
Improved Organizational Agility 48
Improved Ability to Attain Market Growth 50
Chapter 5: Common Risks and Challenges 53
(What Are the Pitfalls?) 53
Poor Data Quality and Data Bias 55
Increased Quantity of Vulnerable Digital Data 55
Resistance to Digital Culture 58
Risk of Over-Automation 59
Difficult to Govern 61
Chapter 6: Realizing Customer-Centricity 63
What Is a Product? 64
What Is a Customer? 65
Product-Centric vs. Customer-Centric Relationships 67
Transaction-Value vs. Relationship-Value Actions 69
Customer-Facing vs. Customer-Oriented Actions 71
Relationship Value and Warmth 71
Warmth in Communication 71
Warmth in Proactive Accommodation 74
Warmth in Customer Rewards 76
Warmth in Exceeding Customer Expectations 76
Single vs. Multi vs. Omni-Channel Customer Interactions 77
Customer Journeys 81
Customer Data Intelligence 84
Chapter 7: Data Intelligence Basics 89
Data Origins (Where Does the Data Come From?) 90
Corporate Data 92
Third-Party Data 92
Creating New Corporate Data Intelligence 92
Common Data Sources (Who Produces the Data?) 93
Operations Data 95
Customer Data 95
Social Media Data 95
Public Sector Data 96
Private Sector Data 97
Data Collection Methods (How Is the Data Collected?) 97
Manual Data Entry 98
Automated Data Entry or Collection 98
Telemetry Data Capture 98
Digitization 99
Data Ingress 101
Data Utilization Types (How Is the Data Used?) 101
Analysis and Reporting 101
Automated Decision-Making 102
Solution Input 103
Bot-Driven Automation 103
Model Training and Retraining 103
Historical Record Keeping 104
Chapter 8: Intelligent Decision-Making 105
Manual Decision-Making 107
Computer-Assisted Manual Decision-Making 107
Conditional Automated Decision-Making 108
Intelligent Manual Decision-Making 109
Intelligent Automated Decision-Making 112
Direct-Driven Automated Decision-Making 113
Periodic Automated Decision-Making 114
Realtime Automated Decision-Making 115
Intelligent Manual vs. Intelligent Automated Decision-Making 115
PART II: DIGITAL TRANSFORMATION IN PRACTICE
Chapter 9: Understanding Digital Transformation Solutions 121
Distributed Solution Design Basics 122
Data Ingress Basics 127
File Pull 127
File Push 128
API Pull 129
API Push 129
Data Streaming 130
Common Digital Transformation Technologies 132
Chapter 10: An Introduction to Digital Transformation Automation Technologies 135
Cloud Computing 137
Cloud Computing in Practice 138
Common Risks and Challenges 143
Blockchain 144
Blockchain in Practice 145
Partial Business Data Capture 147
Full Business Data Capture 148
Log Data Access Capture 150
Partial Business Data Store 151
Ledger Export 152
Common Risks and Challenges 153
Internet of Things (IoT) 154
IoT Devices 154
IoT in Practice 160
Common Risks and Challenges 163
Robotic Process Automation (RPA) 164
RPA in Practice 165
Common Risks and Challenges 168
Chapter 11: An Introduction to Digital Transformation Data Science Technologies 171
Big Data Analysis and Analytics 172
The Five V's of Big Data 175
Big Data in Practice 177
Common Risks and Challenges 178
Machine Learning 179
Model Training 180
Machine Learning in Practice 180
Common Risks and Challenges 184
Artificial Intelligence (AI) 186
Neural Networks 186
Automated Decision-Making 187
AI in Practice 189
Common Risks and Challenges 189
Chapter 12: Inside a Customer-Centric Solution 193
Scenario Background 195
Business Challenges 195
The Original Customer Journey 196
Business Objectives 201
Terminology Recap 201
Key Terms from Chapter 6: Realizing Customer-Centricity 202
Key Terms from Chapter 7: Data Intelligence Basics 202
Key Terms from Chapter 8: Intelligent Decision-Making 203
Key Terms from Chapter 9: Understanding Digital Transformation Solutions 203
Key Terms from Chapter 10: An Introduction to Digital Transformation Automation Technologies 204
Key Terms from Chapter 11: An Introduction to Digital Transformation Data Science Technologies 204
The Enhanced Customer Journey 204
Supporting Data Sources 205
Step-by-Step Business Process 206
Future Decision-Making 241
About the Authors 243
Index 245

Field Guide to Digital Transformation A

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A Paperback / softback by Thomas Erl, Roger Stoffers

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    Publisher: Pearson Education (US)
    Publication Date: 13/01/2022
    ISBN13: 9780137571840, 978-0137571840
    ISBN10: 0137571844

    Description

    Book Synopsis

    Thomas Erl is a best-selling IT author who has authored and co-authored 15 books published by Prentice Hall and Pearson Education and dedicated to topics focused on contemporary information technology and practices. These titles were delivered for the Pearson Digital Enterprise Series from Thomas Erl (formerly the Prentice Hall Service Technology Series from Thomas Erl) for which Thomas also acts as series editor.


    As founder and president of Arcitura Education (www.arcitura.com), Thomas also leads the development of curricula for internationally recognized, vendor-neutral training and accreditation programs. Arcitura's portfolio currently consists of over 100 courses, over 90 Pearson VUE exams, and over 40 certification tracks, covering topics such as Digital Transformation, Robotic Process Automation (RPA), DevOps, Blockchain, IoT, Containerization, Machine Learning, Artificial Intelligence (AI), Cybersecurity, Service-Oriented Architecture (

    Table of Contents
    About This Book xxvii
    PART I: DIGITAL TRANSFORMATION FUNDAMENTALS
    Chapter 1: Understanding Digital Transformation 3
    (What is Digital Transformation?) 3
    Business, Technology, Data and People 5
    Digital Transformation and Business 6
    Digital Transformation and Technology 7
    Digital Transformation and Data 9
    Digital Transformation and People 10
    Digital Transformation and Organizations and Solutions 11
    Chapter 2: Common Business Drivers 13
    (What Led to Digital Transformation?) 13
    Losing Touch with Customer Communities 14
    Inability to Grow in Stale Marketplaces 16
    Inability to Adapt to Rapidly Changing Marketplaces 16
    Cold Customer Relationships 19
    Inefficient Operations 19
    Inefficient Decision-Making 21
    Chapter 3: Common Technology Drivers 23
    (What Enables Digital Transformation?) 23
    Enhanced and Diverse Data Collection 25
    Contemporary Data Science 27
    Sophisticated Automation Technology 29
    Autonomous Decision-Making 29
    Centralized, Scalable, Resilient IT Resources 31
    Immutable Data Storage 33
    Ubiquitous Multiexperience Access 34
    Chapter 4: Common Benefits and Goals 37
    (Why Undergo a Digital Transformation?) 37
    Enhanced Business Alignment 39
    Enhanced Automation and Productivity 42
    Enhanced Data Intelligence and Decision-Making 44
    Improved Customer Experience and Customer Confidence 44
    Improved Organizational Agility 48
    Improved Ability to Attain Market Growth 50
    Chapter 5: Common Risks and Challenges 53
    (What Are the Pitfalls?) 53
    Poor Data Quality and Data Bias 55
    Increased Quantity of Vulnerable Digital Data 55
    Resistance to Digital Culture 58
    Risk of Over-Automation 59
    Difficult to Govern 61
    Chapter 6: Realizing Customer-Centricity 63
    What Is a Product? 64
    What Is a Customer? 65
    Product-Centric vs. Customer-Centric Relationships 67
    Transaction-Value vs. Relationship-Value Actions 69
    Customer-Facing vs. Customer-Oriented Actions 71
    Relationship Value and Warmth 71
    Warmth in Communication 71
    Warmth in Proactive Accommodation 74
    Warmth in Customer Rewards 76
    Warmth in Exceeding Customer Expectations 76
    Single vs. Multi vs. Omni-Channel Customer Interactions 77
    Customer Journeys 81
    Customer Data Intelligence 84
    Chapter 7: Data Intelligence Basics 89
    Data Origins (Where Does the Data Come From?) 90
    Corporate Data 92
    Third-Party Data 92
    Creating New Corporate Data Intelligence 92
    Common Data Sources (Who Produces the Data?) 93
    Operations Data 95
    Customer Data 95
    Social Media Data 95
    Public Sector Data 96
    Private Sector Data 97
    Data Collection Methods (How Is the Data Collected?) 97
    Manual Data Entry 98
    Automated Data Entry or Collection 98
    Telemetry Data Capture 98
    Digitization 99
    Data Ingress 101
    Data Utilization Types (How Is the Data Used?) 101
    Analysis and Reporting 101
    Automated Decision-Making 102
    Solution Input 103
    Bot-Driven Automation 103
    Model Training and Retraining 103
    Historical Record Keeping 104
    Chapter 8: Intelligent Decision-Making 105
    Manual Decision-Making 107
    Computer-Assisted Manual Decision-Making 107
    Conditional Automated Decision-Making 108
    Intelligent Manual Decision-Making 109
    Intelligent Automated Decision-Making 112
    Direct-Driven Automated Decision-Making 113
    Periodic Automated Decision-Making 114
    Realtime Automated Decision-Making 115
    Intelligent Manual vs. Intelligent Automated Decision-Making 115
    PART II: DIGITAL TRANSFORMATION IN PRACTICE
    Chapter 9: Understanding Digital Transformation Solutions 121
    Distributed Solution Design Basics 122
    Data Ingress Basics 127
    File Pull 127
    File Push 128
    API Pull 129
    API Push 129
    Data Streaming 130
    Common Digital Transformation Technologies 132
    Chapter 10: An Introduction to Digital Transformation Automation Technologies 135
    Cloud Computing 137
    Cloud Computing in Practice 138
    Common Risks and Challenges 143
    Blockchain 144
    Blockchain in Practice 145
    Partial Business Data Capture 147
    Full Business Data Capture 148
    Log Data Access Capture 150
    Partial Business Data Store 151
    Ledger Export 152
    Common Risks and Challenges 153
    Internet of Things (IoT) 154
    IoT Devices 154
    IoT in Practice 160
    Common Risks and Challenges 163
    Robotic Process Automation (RPA) 164
    RPA in Practice 165
    Common Risks and Challenges 168
    Chapter 11: An Introduction to Digital Transformation Data Science Technologies 171
    Big Data Analysis and Analytics 172
    The Five V's of Big Data 175
    Big Data in Practice 177
    Common Risks and Challenges 178
    Machine Learning 179
    Model Training 180
    Machine Learning in Practice 180
    Common Risks and Challenges 184
    Artificial Intelligence (AI) 186
    Neural Networks 186
    Automated Decision-Making 187
    AI in Practice 189
    Common Risks and Challenges 189
    Chapter 12: Inside a Customer-Centric Solution 193
    Scenario Background 195
    Business Challenges 195
    The Original Customer Journey 196
    Business Objectives 201
    Terminology Recap 201
    Key Terms from Chapter 6: Realizing Customer-Centricity 202
    Key Terms from Chapter 7: Data Intelligence Basics 202
    Key Terms from Chapter 8: Intelligent Decision-Making 203
    Key Terms from Chapter 9: Understanding Digital Transformation Solutions 203
    Key Terms from Chapter 10: An Introduction to Digital Transformation Automation Technologies 204
    Key Terms from Chapter 11: An Introduction to Digital Transformation Data Science Technologies 204
    The Enhanced Customer Journey 204
    Supporting Data Sources 205
    Step-by-Step Business Process 206
    Future Decision-Making 241
    About the Authors 243
    Index 245

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