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Discover what AI can do for your business with this approachable and comprehensive resource
Reimagining Businesses with AI acquaints readers with both the business challenges and opportunities presented by the rapid growth and progress of artificial intelligence. The accomplished authors and digital executives of the book provide you with a multi-industry approach to understanding the intersection of AI and business.
The book walks you through the process of recognizing and capitalizing on AI's potential for your own business. The authors describe:
Perfect for business executives and managers who seek a jargon-free and approachable manual on how to implement artificial intelligence in everyday operations, Reimagining Businesses with AI also belongs on the bookshelves of anyone curious about the interaction between artificial intelligence and business.
SUDHI SINHA is a business and technology leader with over two decades of international experience. He currently advises several multinational and startup organizations on product, business, and technology strategy. He previously served as the GM and VP of Digital Solutions for Johnson Controls as well as leading many technology businesses for that organization.
KHALED AL HURAIMEL is the Group CEO of Bee'ah, the Middle East's sustainability pioneer. He is the architect of that organization's twin-pillared strategy that integrates digitalization into sustainability and the driving force behind its ventures that range from circular economy projects to renewable energy and sustainable transportation.
Acknowledgments xi
Chapter 1: Introduction 1
Evolution of AI 3
AI and Its Branches 9
A Bit about Algorithms 11
Critical Success Factors for AI Initiatives 12
Purpose and Structure of the Book 13
References 14
Chapter 2: Building a Framework for Applying AI 15
Introduction 15
Identifying the Future State 18
Building the Technology Strategy 23
Defining the Business Case 24
Creating the Solution Roadmap 27
Identifying AI Capabilities 28
Establishing a Governance Process 29
Summary 31
References 32
Chapter 3: Transforming Healthcare with AI 33
Introduction 33
Understanding the Macroscopic Factors Driving Smart Capabilities in the Future of the Healthcare Industry 35
The Critical Role of AI in the Healthcare of the Future 38
Personal Health Cloud 40
Smart Hospitals of the Future 42
AI Applications in Healthcare 46
Business Models of the Future in Healthcare 51
Summary 52
References 54
Chapter 4: Transforming Education with AI 55
Introduction 55
Improving Performance through a Learning Ecosystem 57
Understanding the Macroscopic Factors Driving Smart Techniques in the Future of the Education Industry 59
The Critical Role of AI in the Education of the Future 62
The Changing Landscape of Learning at Various Levels 70
Executive Education in AI 74
Summary 76
References 77
Chapter 5: Transforming Transportation with AI 79
Introduction 79
Understanding the Macroscopic Factors Influencing the Future of the Transportation Industry 81
How AI Will Change the Transportation Industry of the Future 83
Impact of Autonomous Driving Beyond Transportation 92
Summary 93
References 94
Chapter 6: Transforming Retail with AI 95
Introduction 95
Understanding How and Why the Retail Industry Has Been Changing 96
How AI Will Change the Retail Industry of the Future 99
Summary 110
References 111
Chapter 7: Transforming Financial Services with AI 113
Introduction 113
How AI Will Change the Financial Services Industry of the Future 114
Summary 122
References 124
Chapter 8: Transforming the Built Environment with AI 125
Introduction 125
Understanding Why the Built Environment Is Changing 127
Defining a Digital Building 132
How AI Will Change the Built Environment of the Future 135
The Future of Building Systems and Technologies with AI 144
Summary 148
Chapter 9: Transforming Smart Cities with AI 151
Introduction 151
Enablers for AI in Smart Cities 153
Applications of AI in Smart Cities 156
Best Practices for AI Initiatives in Smart Cities 162
References 166
Chapter 10: Transforming Government and Citizen Services with AI 167
Introduction 167
How AI Will Change the Government and Citizen Services of the Future 169
Creating a National AI Agenda 175
Summary 177
Chapter 11: Building the Right Technology Landscape 179
Introduction 179
The Data Platform for AI 180
Analytical Engine 185
Multi-agent Systems and AI 186
Adaptive User Experiences 188
Software-Defined General-Purpose Gateways 189
Technology Partner Ecosystem 190
Summary 190
Chapter 12: Dealing with Ethics, Privacy, and Security 193
Introduction 193
Ethics 194
Privacy 197
Cybersecurity 199
AI in Cyber-Defense 204
Summary 205
References 206
Chapter 13: Building the Partner Ecosystem for AI-Driven Transformation 207
Introduction 207
Building the Partner Strategy 208
Developing the Three-Dimensional Capability Model 214
Building a Partner Selection Framework 215
Managing Partner Engagements 218
Monitoring Partner Effectiveness 222
Summary 223
Chapter 14: Building Winning Teams for AI-Driven Transformation 225
Introduction 225
Identifying What Makes AI-Driven Digital Businesses Different 226
Building the Key Capabilities 227
Solving the Leadership Question: CDO/CIO/CTO? 234
Organizing Teams for Success 237
Motivating the Individuals and Managing the teams 240
Summary 242
References 243
Chapter 15: Managing Change for AI-Driven Transformation 245
Introduction 245
Understanding Changes Caused by AI 246
The Significance of Changes 248
Applying the IMMERSE Framework for Managing Change 249
Creating Stakeholder-Groups to Drive Change 255
Preventing Barriers to Change Management 256
Summary 257
References 258
About the Authors 259
Index 261
"Artificial intelligence will reach human levels by around 2029. Follow that out further to, say, 2045, we will have multiplied the intelligence, the human biological machine intelligence of our civilization a billion-fold."
-Ray Kurzweil
Evolution is the story of tension and mutation. A difference between aspirations and available resources creates tension while changing needs and advancing technology drive mutations. Successful mutations thrive until eventually they, too, are replaced by more successful variants. By its very definition and design, evolution is a slow process. However, every once in a while, evolution is known to change pace, resulting in rapid strides that suddenly leave the standard way of life redundant and usher in a new era.
We live in an increasingly digital world - one in which we are inundated by IoT devices, connectivity, data, applications, and new experiences every moment. Our economy and our way of life are rapidly transforming into a digital one for most parts. This change is requiring businesses to rapidly reinvent themselves in this new world order, not only to thrive but sometimes just to survive.
In very recent times, Artificial Intelligence (AI) has taken center stage in the digital space. AI has existed as a discipline for more than 60 years now; its recent rejuvenation is driven by the advances in digital capabilities around IoT, big data management, cloud computing, and communication technologies. As per a recent McKinsey study,(1) by the end of 2030, the impact of AI is expected to be about $13 trillion with over 70% of companies impacted by AI. An Accenture study on the subject talks about a similar impact and interestingly identifies innovation diffusion as a key benefit in addition to productivity-related benefits. A Forbes study quoting a similar influence cites AI as the "new electricity" already driving a $2 trillion impact on the economy. Whichever study we refer to, the effect of AI on the economy and our lives is undeniable. While these numbers are pre-COVID-19 crisis, they still hold. While the timing may shift as the world starts returning to normalcy, there is no doubt about the extent of the impact. As we will see in several later chapters, COVID-19 has increased the need for AI in every aspect of our lives.
The promise of AI was rooted in the desire to simulate human cognition in the machines as they started becoming more pervasive in the first half of the 20th century. While the academic community and selected industry researchers were successful in developing the mathematical and statistical foundation to solve several AI problems, lack of data and computational power limited the practical implementation of AI on a large scale. These recent digital technological advances allow us to now connect to a very large population of people and things to collect huge volumes and varieties of data, manage and process that data inexpensively and effectively, and apply the AI-based algorithmic analytics to create new insights and drive new experiences and outcomes.
Let us first understand why AI even matters. In the last couple of years, we have already moved from an information age to an algorithmic age.(2) A few factors have driven this transition:
algorithmic age
Traditional business practices and underlying technology infrastructure that were based on predefined rules do not allow one to respond to these types of rapid synthesis and reaction scenarios. It is not possible to know every possible scenario and plan for it, so we need more machine-driven cognitive capabilities that require AI to now become more pervasive, hence the transition from the information age to algorithmic age. In his Future of Life Institute article, AI researcher at the University of Louisville Roman Yampolskiy said, "AI makes over 85% of all stock trades, controls operation of power plants, nuclear reactors, electric grid, traffic light coordination and . military nuclear response.. Complexity and speed required to meaningfully control those sophisticated processes prevent meaningful human control. We are simply not quick enough to respond to ultrafast events such as those in algorithmic trading and . in military drones."
While AI brings a lot of new possibilities, it also brings new problems because businesses have to now reinvent themselves in this new world order. Traditional economic models and management practices are being disrupted. Companies that have considered AI as only a technology enabler for incremental improvements have missed the mark and there is increasing realization among business leaders about that. Those who have taken a more holistic transformative approach are emerging as the leaders in their space in this new world order. The largest technology companies of the world like Microsoft and Google are pivoting with more AI centricity; financial services companies like JPMC are using AI to renovate their client engagement; a traditional industrial giant like Schindler is driving rapid growth using digital and AI; a new age environment management company like Bee'ah is basing its future on AI; and small progressive nations like UAE have made AI a national agenda with possibly being the only country with a separate minister of AI.
The recent COVID-19 crisis has amplified the need for us to focus on digitization and AI. Our world rapidly changed in the first three months of 2020. From being highly integrated and interdependent, we moved into an era of isolation, containment, fear, and remote working in no time. A previously vibrant global economy is seeing one of its worst crises ever; many companies will not make it through this crisis. Organizational resilience in being able to meet the challenges of an unpredictable future is key to survival in this environment. Analytics today is a core capability for achieving such resilience. AI has also been incredibly useful in working through the crisis, forecasting the rate and direction of infection spread, and helping with decision support for containment strategy effectiveness and even with research around the vaccine.
While AI did see many springs and winters over the past 70 years of its existence, it is now firmly intertwined with everything we do. Let us begin our journey into the exciting world of AI.
This book is about the future, but we will spend a little time discussing the past because understanding evolution gives us context and helps us appreciate the path to the future. In this section, we have divided the evolution into multiple eras; these are our choices, they are not industry standards.
Since the beginning of civilization, humans have been ruminating about recreating human-like capabilities in machines. Starting with Greek mythology, there are references to machine-men. Fiction literature is littered with examples of artificial intelligence for a couple of hundred years now. Mary Shelley's Frankenstein (1818), Samuel Butler's Darwin Among the Machines (1863), and Karel Capek's R.U.R. Rossum's Universal Robots (1920) are some examples of publications where concepts of intelligent devices and robots were discussed. Beyond literature, these ideas also showed up in motion pictures and television from the early days. Arguably, the 1927 German science-fiction film Metropolis is the first movie to depict a robot. A very popular show from the 1960s in the United States, The Jetsons, also very accurately depicted a future world. While the show was set in 2062, a number of the cool technologies shown in that are already part of our daily lives; these include video calls, robotic vacuum cleaners, robotic assistants, tablet computers, smartwatches, drones, holograms, flying cars, flat televisions, jetpacks, and many more. The trend of depicting a technology-enriched future has continued to the present day. We often take inspiration in life from literature and fiction. That can be said to be true for AI as well.
The birth of AI as a formal disciple of study and practice happened in the 1950s. Alan Turing, John McCarthy, Marvin Minsky, Allen Newell, Nathaniel Rochester, Claude Shannon, and Herbert A. Simon are considered as the founding fathers of AI. Norbert Wiener laid the foundation for cybernetics,...
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