The Business Case for AI: A Leader's Guide to AI Strategies, Best Practices & Real-World Applications
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About this ebook
In this practical guide for business leaders, Kavita Ganesan takes the mystery out of implementing AI, showing you how to launch AI initiatives that get results. With real-world AI examples to spark your own ideas, you'll learn how to identify high-impact AI opportunities, prepare for AI transitions, and measure your AI performance.
Simple and compelling, The Business Case for AI gives leaders the information they need without the technical jargon. Whether you want to jumpstart your AI strategy, manage your AI initiatives for better outcomes, or simply find inspiration for your own AI applications, The Business Case for AI is your blueprint for AI success.
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The Business Case for AI - Kavita Ganesan
copyright © 2022 kavita ganesan
All rights reserved.
the business case for ai
A Leader's Guide to AI Strategies, Best Practices & Real-World Applications
isbn
978-1-5445-2871-7 Hardcover
isbn
978-1-5445-2872-4 Paperback
isbn
978-1-5445-2873-1 Ebook
To all you executives, innovators, and business leaders looking to make AI an integral part of your organization, I hope this book finds you.
contents
Introduction
Part 1: Frame Your AI Thinking
Chapter 1. The Promise of AI
Chapter 2. What Is AI?
Chapter 3. Five Tips to Maximize AI Success
Chapter 4. The Five Common Myths of AI
Part 2: Get AI Ideas Flowing
Chapter 5. How AI Can Improve Business Processes
Chapter 6. Optimize Decision-Making with AI
Part 3: Prepare for AI
Chapter 7. The Machine Learning Development Life Cycle
Chapter 8. B-CIDS: The Five Pillars of AI Preparation
Chapter 9. The Jumpstart AI Approach¹
Part 4: Find AI Opportunities
Chapter 10. How to Find AI Opportunities
Chapter 11. Steps 1 & 2 of the HI-AI Discovery Framework: Identify & Frame Potential AI Initiatives
Chapter 12. Steps 3 & 4 of the HI-AI Discovery Framework: Use Experts to Verify & Score PAIs
Part 5: Bring Your AI Vision to LifE
Chapter 13. Build or Buy?
Chapter 14. Measure Success
Conclusion: Start Now, Start Small
Liked This Book?
About the Author
Connect with Me
Bulk Orders
Acknowledgments
References
Introduction
Stop using AI.
That’s right—I’ve told several teams to stop and rethink.
AI is too expensive to be used on problems that are too small. Ones that could’ve been solved with better software engineering or even manually. If you’ve been talked into using AI and you’re yet to see a clear benefit, that’s a sign you’ve been overpromised.
You could’ve done without it.
With all the buzz and media hype around AI, you’re probably overwhelmed. There’s an overload of information and misinformation surrounding AI. Some claim that AI is bad for humanity and will result in human extinction. Some say AI will replace all our jobs. Others say they’re using AI, but they’re not seeing benefits from it.
So, what can we believe about AI?
There’s a reason why some of this is happening. We’re living in a time where there’s limitless access to information. But most of this information is put out by marketers, ghostwriters, sales teams, and enthusiasts—essentially people who have never done AI. And what about the people who are doing AI (the researchers and practitioners)? They’re often talking about the latest techniques, focused on advancing the field or their skills. They aren’t the least bit worried about what AI can do for your business.
As a leader looking to build an AI-ready company or invest in new AI products, all this contradicting information and information overload can be intimidating. Are you supposed to focus on the technical stuff or the high-level stuff? The good news or the bad news? In the end, you may not want anything to do with AI as you fear investing in the wrong problems or putting your company at financial risk. Worse still, if initiatives fail, it just makes you look bad. The ethical dilemma of employees losing their jobs may further amplify your fears.
However, you know that if you don’t attempt the necessary technological changes now, you may be in for a rocky ride in the future—when you’re forced to adapt and innovate quickly. CTOs and CIOs come to me all the time and ask about the lowest-hanging fruits for AI in their company. Some worry if they’re investing in the right problems. Founders of AI startups wonder if they’re doing AI the right way. Nontechnical managers worry about job security, and they often contact me asking if, by using AI, they’re putting their own jobs at risk.
These worries are real and happen across the management spectrum.
I know that you want to remain personally competitive for the next decade or two to come, and you want your team or your enterprise to do the same.
But for this to happen, you need a starting point—a single source of truth of what this AI beast is and what it can do for your business.
You need to know:
Where you can apply AI
How, as a leader, you can start preparing your organization for AI
How to find the right AI opportunities to invest in so you’re not wasting time and money
How to determine if your AI initiatives are generating meaningful outcomes
If such worries are keeping you up at night, then this book is for you.
It’s specifically written to guide leaders in their journey to implement AI in the organization to get meaningful and measurable outcomes.
If you put all the knowledge, frameworks, and tips from this book to full use, over time, I make a big, bold promise that you will be able to transform your organization into an AI-ready and capable company. Although 85% of all AI projects are estimated to fail, you’ll start seeing more successes than failures. And instead of waiting for people to bring AI problems to your attention, you’ll start spotting AI opportunities independently. After a few successful initiatives, you’ll notice that you’re experiencing the benefits of AI—from a productivity, customer experience, and financial perspective.
This is not an empty promise; it’s certainly possible, but you’ll have to put in the hard work.
Who Am I?
My name is Kavita Ganesan, and I’ve been doing AI since 2005—long before AI became the mainstream topic that it is today.
Since then, I’ve received a PhD in the field, done pure academic AI research, built AI products from scratch (yes, including the user interfaces), and led AI initiatives for Fortune 500 companies. Through my blog (www.Kavita-Ganesan.com), I’ve been teaching AI to data scientists and software engineers around the world. More recently, I’ve been coaching and training senior executives and product teams on getting value from AI. I’ve helped some of these executives fix existing AI challenges in the organization, and I’ve helped others develop strategies for the effective use of AI in their company. I’ve put many of them on the path to success.
Being in the trenches and then out of them to train and help leaders leverage AI has given me tremendous visibility into problems in the field. I’ve noticed one theme consistently showing up and holding companies back from realizing the value of AI, and that is disconnect.
There’s a considerable disconnect between what AI is at the leadership level and the reality at the implementation level. I’ve witnessed numerous canceled projects, non-AI initiatives labeled as AI initiatives, and investments in AI initiatives with dismissible benefits—all due to this disconnect.
As a result, my relationship with clients almost always involves education at the leadership level, and all this happens before implementation or any sort of planning. I find that this often leads to more realistic expectations and the know-how to start small and iterate to make things better. This has helped many AI initiatives make steady and positive progress.
I firmly believe that the knowledge I’ve been passing on to my clients, teams I teach, and blog readers should be more widely available and put in the context of today’s businesses. Plus, from my experience, for most problems, AI development is the easy part. The hard part? Everything else that goes around it. For example, how do you find the right problems to solve? Or how do you know you’re seeing benefits from your initiatives? And even, how to prepare for the adoption of AI as an organization?
This book will discuss many of these issues.
If you are the CIO, CTO, or any decision maker or influencer who possesses the lion’s share of technological understanding within your organization, this book will prepare you toward building an AI-ready and capable company. If you are an executive or founder who’s been wondering about AI, this book will give you a breadth of AI understanding, application ideas for your business, and help you avoid common industry pitfalls. If you’re an innovation manager, such as a product or project manager, this book will give you a general AI understanding and teach you how to navigate initiatives to maximize success.
What You’ll Learn
In this book, you’ll start from the very basics of AI. You’ll then work your way up to much deeper ideas for integrating AI in your organization. Specifically, there are five parts to this book.
Part 1: Frame Your AI Thinking
Without the right mindset, the fears around AI that we discussed earlier will continue to persist. So, you’re going to change the way you perceive AI. From thinking about AI as a humanity destroyer or a technology meant only for companies like Google and Meta (formerly Facebook),² you’ll start thinking about AI as a practical tool for business, which can become your competitive advantage. You’ll also start seeing what AI truly is and isn’t.
Part 2: Get AI Ideas Flowing
AI initiatives start with ideas. But unless you’re actively thinking about AI use cases or working on AI day in and day out, it’s harder to spark ideas for your own company. To get ideas flowing, we’ll explore different examples of how you can use AI to improve existing business processes and optimize decision-making.
Part 3: Prepare for AI
One of the biggest steps to becoming an AI-ready and -capable company is to lay the correct foundation. Part 3 introduces the elements toward becoming an AI-ready company and provides a systematic approach for putting that knowledge into action. Part 3 will help you jumpstart your organization’s AI strategy.
Part 4: Find AI Opportunities
As a leader or innovator, the ability to identify true, promising AI opportunities will increase your chances of success. In Part 4, you’ll learn to become proficient at discovering promising AI opportunities that make business sense and are ripe for implementation. You’ll no longer have to guess if an idea is worth pursuing; you’ll know for sure which ideas to pursue and which to skip.
Part 5: Bring Your AI Vision to Life
In Part 5, you’ll start seeing how to bring your AI vision to fruition in cost-effective ways. To further improve your outcomes from AI, you’ll also learn a systematic approach to evaluate the success of AI initiatives. You’ll never again be in the dark about the benefits you’re getting from AI.
What You Won’t Learn
There are many business-oriented AI books out in the market. Some lean toward the technical side, some focus on leadership, and many are filled with futuristic promises. These futuristic promises are nice to know, but they don’t guide a leader who’s looking to implement AI in their organization today.
To set expectations, let me tell you what this book will not cover:
We will not get into unproven AI concepts or pie-in-the-sky AI promises.
We will not dive into technical details meant purely for a data scientist or a software developer. There are many excellent data science books that do a great job on the technical side of things. If you’re looking for that sort of material, this book is not it.
There are no hacks to becoming an AI-capable company overnight. AI initiatives done with no pre-thought rarely deliver long-term value. My mission is to set companies up for the long term using short-term strides. When it comes to AI, knowledge, best practices, and sound strategies will trump hacks many times over.
Ready to put AI to work for your business? Buckle up. There’s a lot we’re going to tackle in this book, but we’ll start small and slowly build up your knowledge.
Part 1
Chapter 1
The Promise of AI
As a technologist, I see how AI and the fourth industrial revolution will impact every aspect of people’s lives.
—Fei-Fei Li, professor of computer science at Stanford University
It’s 4:00 a.m. You just received an email notification that your customer, on the other side of the world, in the Maldives, was successfully refunded for an item they received just minutes ago.
Behind the scenes, your AI agent read your customer’s 250-word support ticket and determined that it was about a broken remote-control toy. It also verified from the images uploaded that the toy was truly broken before issuing a refund. The AI agent then sent the customer a personalized apology email and finally closed out the ticket—all within seconds after receiving it.
You may be wondering, What’s remarkable about this?
First, this was all done with zero human involvement. The AI agent read the ticket, processed the images to verify the truth in the issue, and then determined the best set of actions to take including generating a personalized apology email. Next, with a twelve-hour average response time to customer service requests,³ this swift, near real-time response is sure to delight customers, especially because the refund was issued on the first contact.
This is not a fantasy. It’s the world we live in today, and some companies are already doing it.
Although some of us think of AI and robots as synonymous, ready to destroy humanity, it’s a practical tool for businesses to bring about improvements—improvements in the organization, the lives of customers, and society at large. Unfortunately, with all the noise around AI, it can be hard to cut through the clutter and see its true potential.
AI: Crucial for the Modern World
AI systems are computer programs that attempt to mimic human decision-making. This may seem like an intimidating concept, but it doesn’t mean that it’s going to do all the things humans do. But AI can complete some limited tasks as well as humans and sometimes even surpass human accuracy. It’s there to improve our lives in ways we’ve never thought possible.
Let’s look at some of the benefits of AI to businesses and society.
1. AI Eliminates Inefficiencies
Inefficiencies can show up in different ways. Examples of inefficiencies include long wait times at a hospital, tedious manual checks to discover fraudulent activities, and manual extraction of specific information from piles of documents.
In the early days of the COVID-19 pandemic, people who were laid off turned to Upwork, a popular freelancing platform, to quickly find work. Unfortunately, some of the employers
on Upwork were scammers ready to execute a check scam.⁴ They would send checks to freelancers they hired and then instruct them to pay for supplies via apps such as Venmo and Cash App. The only problem—the check doesn’t clear, and the payment ends up coming out of the freelancer’s account. Workers hired
by these scammers lost thousands of dollars.
With over 5 million businesses on Upwork, manually verifying each account to determine if it belongs to a trusted employer or a scam artist would be inefficient. It would require investigation into various aspects of an account, such as the types of jobs posted, previous policy violations, similarity to other scam postings, and more. The work is not just tedious but would require a large team to support the process.
This is an area where AI would’ve made a difference. AI can flag potential scam accounts in real time and analyze multiple accounts simultaneously. Humans can then decide if a flagged account should be suspended from the platform. Further, instead of reviewing millions of accounts, humans would need to review only a small percentage each day because of the automatic flagging, eliminating unnecessary inefficiencies. Unfortunately for Upwork, unless a user manually reports scam activity, the platform is blissfully unaware of these issues.
Credit card companies are on top of this by automatically detecting fraudulent transactions. Visa currently uses machine learning algorithms through their homegrown AI platform called Advanced Authorization to monitor suspicious activity in real time.⁵ This initiative saved them close to $25 billion in fraud in 2019 alone.⁶
Advanced Authorization considers:
Whether the account has been used at the store in the past
The type of transaction: for example, in-app or online? Contactless, chip, or magnetic stripe?
If the purchase took place at an unusual time of the day, for an unusually large amount of money
If the transaction is at odds with other aspects of the account’s spending patterns
Their AI tool assesses all these different attributes in about a millisecond and then produces a score on the transaction’s fraud probability. With Visa processing an average of 6 million transactions an hour, imagine how painful this process would be if done manually. More importantly, imagine the number of employees Visa would’ve had to hire to investigate the millions of transactions per hour.
Inefficiencies can be found everywhere. At the Royal Bolton Hospital, run by the UK’s National Health Service (NHS), patients often had to wait more than six hours for a specialist to examine their X-rays. Some knew that if an emergency room doctor could get an initial reading from an AI, it could significantly reduce wait times before a specialist provided a detailed diagnosis.
Dr. Rizwan Malik, a physician interested in AI at the Royal Bolton Hospital, took it upon himself to showcase the potential of AI for this purpose.⁷ He designed a conservative trial where, for all chest X-rays handled by his trainees, the experimental AI would offer a second opinion. If the AI’s opinions consistently matched his own, Dr. Malik would then use the system to double-check the work of his trainees. However, before the trial went into action, COVID-19 hit the UK. Early research⁸ had shown that in radiology images, the most severe COVID-19 cases displayed distinct lung abnormalities. Due to shortages and delays in tests, chest X-rays became the most convenient and affordable way for doctors to triage patients. The AI tool, which started off as a pet project, was repurposed to detect COVID-19-induced pneumonia to perform initial readings, not just double-check human ones.
Although inefficiencies present themselves in different ways, AI can be a great tool to automate repetitive and time-consuming work where human-level decision-making is involved.
2. AI Reduces Human Errors
Human error in the workplace is common and can be attributed to the lack of training, lapse in memory, boredom, distraction, and insufficient knowledge. In a 2017 survey of one hundred global manufacturers, researchers found that 23% of all unplanned downtime resulted from human error.⁹
Errors can be costly: they can result in discarding manufactured parts, prolonged customer follow-ups, a lengthy root cause analysis, and sometimes, errors can cost lives. However, AI can reduce these human errors as AI systems don’t get bored, tired, and forgetful as humans do. They can consistently and tirelessly complete tasks twenty-four hours a day, 365 days a year. As a few cancer researchers in the US have observed, this contributes to a more efficient medical diagnosis.
In traditional cancer treatment, radiologists track the progress of tumors using digital images. They manually measure the tumors on the images and dictate their findings into text-based reports. Unfortunately, this process is error-prone. There can be incorrect measurements, erroneous language in reports, and misidentified tumor locations.
In a recent study, researchers from the University of Alabama at Birmingham compared the traditional practice of evaluating tumor response in advanced cancer to similar measurements taken from an AI-assisted tool called AI Mass. AI Mass can measure tumors, automatically label their location, and track tumors over time.¹⁰ The researchers found that the AI-assisted approach increased accuracy by 25% and reduced major errors, such as measurement and tumor location errors, by 99%.