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There is no one, standard way to implement AI.This means there are a lot of different technologies and tools associated with AI, and each is complex to master. There is also an expectation mismatch between what enterprises expect of AI and what AI can actually do. Sometimes, a problem or use case needs to be broken down into a series of smaller, more concrete problems that existing AI technology can solve. Search, for example, has multiple problems: data enrichment/cleanup issues, natural language processing challenges, synonym differences, query understanding disconnects, etc. Currently, no single AI algorithm exists that is able to solve all these problems at once. Without an AI standard, mapping problems to specific technologies can be a challenge. Adopting AI requires a great deal of expertise, testing, and expensive resources. Think of the SQL standard for accessing and working with databases. I think an AI-related equivalent to the SQL standard is still far away. As it stands, there are some proposed standards that show promise but none that are easy to use and apply to multiple AI problems/use cases.
This lack of AI standards can contribute to a lack of AI transparency, and there is no AI algorithm that is 100 percent correct all the time. In other words, we may not understand exactly why AI made a particular decision or arrived at a specific result. This is problematic in search, as if we don’t know why the system arrived at a particular result, we can’t tune or change the configuration. If the wrong product is displayed, that means a lost business opportunity. Businesses need a way to not only understand search results but to tune and validate a specific query for relevance to their specific brand. Ideally, non-technical business owners would be able to see why their transparent AI ranked results the way it did. Meanwhile, these business owners would be able to accept, reject and/or overwrite the AI suggestion based on user behavior.
AI is not an automatic “cure-all” and creating an AI-powered search solution requires extensive testing, experimentation, and evolution. The first step to building an AI-powered search solution is having a clear definition of the problem you want to solve. One solution may map to one problem, but not another – and that requires you to redo the experimentation process. Netflix, for example, developed a specific algorithm (through extensive resources and a large volume of data) that has been optimized for one specific problem (recommending specific TV shows). Netflix can continue to optimize this algorithm again and again with new customers. Companies can also buy an off-the-shelf solution that contains existing software that includes AI techniques for a specific problem (an HR solution for analyzing job candidate resumes, for example). The challenge is to decide if your AI search problem requires a customized, off-the-shelf or hybrid approach (more on that later).
AI-powered search is a constantly changing work in progress, as customer behavior constantly changes.When customers search a brand’s site, it’s more of a journey to buy rather than a question-answer transaction. One specific query can mean different things depending on the context, situation, and user. Normally, the more time a customer spends to find their desired product indicates poor relevance, while better relevance should yield the perfect result instantly. When we think about discovery, we don’t look at the same metric. We look more at the customer’s interaction with the product – and how the customer arrived at their final choice. We can propose a select number of items we think a customer would like, and the more personalized to the user, location, and device, the better. She may then click on two items before making a final purchase. Ideally, we would propose one item if we were certain it would trigger the desired action.
What is needed for AI to compute a relevant answer (or potential answers) for the customer’s discovery experience, as well as make further relevant recommendations of complementary products or accessories? Many signals and a feedback loop. We need to take into account the customer’s behavior and individual actions. This should power data enrichment (continually cleaning, enhancing, and updating data), which gives us a more complete view of a customer. And this, in turn, maintains an ongoing, real-time feedback loop with the customer that fuels AI-powered search and query understanding. However, each piece of this puzzle requires different AI tools; no one technique solves everything at once, all the time.
Author: Julien Lemoine, Co-founder & CTO at Algolia