Why Selecting The Right Business Problem to Use AI to Solve is Essential
The Following is Adapted from Real World AI.When your company is just starting to explore AI, picking the first problem to solve is just as important as coming up with the AI solution itself. Pick a problem that鈥檚 too big or difficult, and your AI project will fail. Or pick a problem that鈥檚 unimportant, and it won鈥檛 matter whether your AI project succeeds or not.It鈥檚 the classic Goldilocks situation: you need a problem that is just right. If you can solve the first problem you attack and prove the impact AI can have, you鈥檒l have a much easier time getting support and resources to tackle the next 10 problems.You鈥檒l likely identify a variety of potentially great first problems.
Four Tips To Discover Your Goldilocks Problem for AI

Here are the top four tips for selecting the right problem to tackle with AI from .
#1: Start Small
The best Goldilocks problem for AI is small enough that you can solve it quickly.Problems that involve classifying something into one of two buckets are great candidates. By way of contrast, problems that require resolving ambiguity are probably not great candidates. If two people might disagree on the right answer, you鈥檒l have a much harder time showing that your model does the right thing most of the time.Imagine if the problem you choose is classifying each incoming ticket into one of 100 categories. It would take a well-trained person weeks to learn the categories and provide enough examples to get it right; even then, other people might agree or disagree frequently. This isn鈥檛 a good Goldilocks problem.As an example, the software company Autodesk was struggling with a lengthy help-ticket queue that was managed manually. An average support case took over a day to resolve. So, when Autodesk decided to bring AI into the mix, they narrowed in on one preeminent issue: improving the customer experience by reducing case resolution time.Rather than building a model to help automate all the inquiries into their contact center, which spanned dozens of use cases and questions, they focused on solving a single, narrow problem that represented a huge percentage of incoming support tickets: password resets. All their model needed to do was determine whether a ticket was a password reset: yes or no. That was a perfect Goldilocks problem.It鈥檚 tempting to want to throw AI at all your biggest problems right away, but by starting simple, you increase your chances of success.
#2: Go Where the Data Is
Another characteristic of a good Goldilocks problem for AI is a large bank of historical data obtained through past instances of solving that same problem.Autodesk鈥檚 password-reset inquiries fit this bill: the company had a pool of past instances of password-reset inquiries and the corresponding answers from human agents correctly identifying the nature of the inquiry.All past cases that have been classified into buckets become for your model. If you don鈥檛 have examples that have already been categorized, you might still have examples that you could spend time having humans go through and categorize now鈥攖ime-consuming work, but of huge benefit to your project.It鈥檚 important to ensure that you have not just quantity of data, but quality, to ensure accuracy and make sure you don鈥檛 introduce bias or unfairness unintentionally.For example, let鈥檚 say you want to use AI for speech recognition in a call center that primarily serves Spanish speakers. You could have a significant amount of call center data, even a significant amount involving Spanish speakers, but if it鈥檚 the wrong accent, that data won鈥檛 be able to produce a good model.Even if you identify a problem with a narrow scope and reasonably simple classifications, if you don鈥檛 have enough data鈥攐r the right kind of data鈥攊t won鈥檛 be a good Goldilocks problem.
#3: Deliver Quick Wins
The faster you can deliver wins, the faster you can prove the importance of AI. If you have a problem that could be solved in part or whole by an off-the-shelf model, that could be a great Goldilocks problem for AI.An off-the-shelf model is one that someone else has already developed and is selling as a service. This means that the model comes pre-trained, and the data that it's trained on matches the specific problem you鈥檙e solving. A common off-the-shelf model currently available, for example, is one that takes incoming customer requests and quickly recognizes what language the request is in.If you can deliver value quickly, and you don鈥檛 need to build a custom machine learning model to do so, then great! Choose that. The business will be far more willing to tolerate the nine to twelve months it can take to get a more complex, custom model built, tested, and in production.Additionally, offer a quick, cost-effective alternative to collecting and annotating data from scratch and can be used even if you鈥檙e building your own model. High-quality datasets can be used as-is or customized for specific project types. Not only is it advantageous from a price and speed perspective, but growing requirements for data privacy and security from both customers and authorities can make it complicated to use data you have on hand.You can see how used to expand into a new market.
#4: Make an Impact
Although your Goldilocks problem should be small enough to be solved quickly, it should still be big enough to have a clear business impact.Often, Goldilocks problems are linked to obvious things like revenue, customer net promoter score (NPS), or time value. It鈥檚 easy to see the value of a solution that measurably increases revenue or decreases costs. If your solution frees up people from performing a fairly mundane or tedious task that doesn鈥檛 give them a lot of satisfaction鈥攍ike, for instance, sorting individual envelopes by reading zip codes over and over, it鈥檒l be seen positively and reduce costs.A good rule of thumb is to not only be clear on the business impact but be able to clearly measure and prove it. The Autodesk password reset, for instance, fit this goal perfectly. They were able to quantify in time, and customer satisfaction scored the benefit of more quickly solving password reset issues.It鈥檚 also helpful for the first solution to be novel or innovative in some way, to grab even more attention. If non-AI teams get excited about what the AI team can do, the whole organization will start coming up with problems to solve and give support to the AI team who works on them.
AI is a Marathon, Not a Sprint
Building AI into your business doesn鈥檛 have to mean leveraging machine learning to solve every problem all at once. In fact, it shouldn鈥檛. Adopting AI is a marathon, not a sprint, so you want to pace yourself.It鈥檚 more important to pick the single right problem to start with and build momentum with its solution. Choosing the Goldilocks problem that hits the sweet spot of scale and impact with a manageable machine learning component is the most important thing you can do to set yourself up for success.For more advice on picking your Goldilocks problem for AI, you can find Real World AI on .Alyssa Rochwerger is a customer-driven product leader dedicated to building products that solve hard problems for real people. She delights in bringing products to market that make a positive impact for customers. Her experience in scaling products from concept to large-scale ROI has been proven at both startups and large enterprises alike. She has held numerous product leadership roles for machine learning organizations. She served as VP of product for Figure Eight (acquired by 色虎视频), VP of AI and data at 色虎视频, and director of product at IBM Watson. She recently left the space to pursue her dream of using technology to improve healthcare. Currently, she serves as director of product at Blue Shield of California, where she is happily surrounded by lots of data, many hard problems, and nothing but opportunities to make a positive impact. She is thrilled to pursue the mission of providing access to high-quality, affordable healthcare that is worthy of our families and friends. Alyssa was born and raised in San Francisco, California, and holds a BA in American studies from Trinity College. When she is not geeking out on data and technology, she can be found hiking, cooking, and dining at 鈥渙ff the beaten path鈥 restaurants with her family.Wilson Pang joined 色虎视频 in November 2018 as CTO and is responsible for the company鈥檚 products and technology. Wilson has over nineteen years鈥 experience in software engineering and data science. Prior to joining 色虎视频, Wilson was chief data officer of Ctrip in China, the second-largest online travel agency company in the world, where he led data engineers, analysts, data product managers, and scientists to improve user experience and increase operational efficiency that grew the business. Before that, he was senior director of engineering at eBay in California and provided leadership in various domains, including data service and solutions, search science, marketing technology, and billing systems. He worked as an architect at IBM prior to eBay, building technology solutions for various clients. Wilson obtained his master鈥檚 and bachelor鈥檚 degrees in electrical engineering from Zhejiang University in China.

