Social media knows you better than you know yourself. It is the life of the party, always suggesting new tunes to dance to, comedians to chuckle at, or life hacks to make your day brighter. And have you noticed how these new recommendations that continuously pop-up in your news feed always seem to align to your most recent opinions and searches?
At the same time, online retail leaders like Amazon have become your trusted shopping companions, guiding you through the best set of choices to discover the perfect product matching your unique preferences. Somehow, you always seem to be receiving hot offers and interesting product matches that are just right for you.
No, it is not magic, it’s artificial intelligence technology.
While many people are completely unaware of what goes on within the algorithms of our favourite apps and websites, artificial intelligence is the powerful tool that digital giants have been using for years to attract millions of recurrent users, hook us to their products and services and boost conversion rates.
In this article, we will pull back the curtain on how the algorithms behind recommendation engines work to create personalized and addictive experiences that keep us to scroll and keep coming back from more, but potentially also prevent us from receiving information that does not adhere to our own opinion.
We will cover how startups and SMEs can leverage this technology for their own benefit, and specially how it can be used in marketplaces, e-commerce and digital platforms to capitalize all the marketing efforts and investment, multiply conversion rates and drive revenue growth.
Welcome to the power of AI based recommendation engines, a strategy that has been used by the world's largest companies to enhance user experience and drive their own sales enormously for many years. Join us on this journey through the power of AI-driven recommendations, where machine learning algorithms make predictions, patterns come to life, and the digital world becomes our personalized playground.
At its core, a recommendation engine is a specialized software system that leverages artificial intelligence, machine learning and statistical modelling to provide personalized content, product, or service suggestions. These suggestions are based on known user behaviors such as clicks, purchases, likes, and comments, as well as data collected through cookies or sign-up forms.
Take the example of a social media company such as Instagram, whose goal is to keep you engaged by providing you with content that will interest you. In order to achieve this goal, they will utilise all of your interactions within Instagram and use a machine learning algorithm to predict the next post that will engage you into continuing with the desired action. For instance, a click onto one of their ad posts.
As always with machine learning algorithms, the more data we have, the better our algorithms. And guess what, giant tech conglomerates such Instagram´s Meta have far more data then we could ever imagine. This results in machine learning solutions that continuously recommend the user with the right content at the right time, creating an experience where the algorithm knows more about us then we do ourselves; or at least so it seems.
As a result, recommendation engines have been enormously successful across various applications over the past years and the statistics in this case speak for themselves. According to Straits Research (2023), the global recommendation engine market is projected to grow from $3 billion in 2021 to a staggering $54 billion by 2030, with a remarkable compound annual growth rate of 37%.
This meteoric rise in adoption reflects the growing recognition of recommendation engines as invaluable tools across industries, from e-commerce companies to marketing and advertising applications as well as content platforms.
All this success of machine learning based recommenders, especially within large conglomerates is great, but the question for many companies, especially startups and SMEs, is how to actually build and integrate these kinds of solutions. Luckily, while the final characteristics of the recommender depend very much on what you want to predict - a product purchase, an ad click or a post that will receive engagement - the kind of machine learning model you end up choosing and the type of data you have available, luckily each of these solutions follow more or less the same kind of framework.
Here is a simplified breakdown of how recommendation engines function:
Follow these steps with your product and data teams and you will be guaranteed to build an AI based recommendation algorithm that will drastically improve your user experience and generate you new revenue.
Now that we have seen how you can build and integrate your own recommendation engine, let's dive into the different kinds of applications and business models where an AI based recommender generate the most value.
In fact, these solutions have proven to be highly versatile tools with applications spanning across numerous digital industries. Their ability to comprehend billions of data points of user behaviour and deliver tailored suggestions for any single customer has completely reshaped the way we interact with digital platforms.
Let's explore some of the most prominent applications of recommendation engines:
Netflix's recommendation engine stands as a crucial driver in the company's remarkable success. The numbers speak for themselves: Netflix has revealed that approximately 80% of their subscribers' video selections come from the recommendations provided by the system. Over the years, Netflix has made substantial investments to refine and enhance this recommendation engine, resulting in the development of a sophisticated and highly valuable recommendation system, estimated to be worth over a billion dollars today (McAlone, 2016).
These are just a few examples of how recommendation engines have revolutionized digital experiences and become indispensable across a wide range of industries and applications.
Now that we have explored the nature and mechanics of recommendation engines as well as their diverse applications, it is time to explore the wide range of advantages, benefits, and potential these AI-driven technologies hold for digital businesses.
Understanding the power of recommendation engines could be the key to unlocking new heights of success for your digital venture.
While recommendation engines offer outstanding benefits, their successful integration into your business strategy requires a keen understanding of the challenges and obstacles that may arise along the way. Being aware of these challenges is a crucial step towards effectively harnessing the power of AI-driven recommendations:
Here is how AI algorithms can significantly boost conversion rates and drive revenue growth in digital businesses, especially in e-commerce, marketplaces, and digital platforms.
Recommender engines are a powerful tool for achieving these goals. They excel at delivering highly personalized content and product suggestions to users.
This is how you can apply AI recommendation engines in your digital business to accelerate your growth:
A great example of an extremely effective strategy leveraging recommendations to drive sales is the success case of Amazon. According to studies by McKinsey (MacKenzie et al., 2013), approximately 35 percent of consumer purchases on Amazon comes from product recommendations based on ML algorithms. Not only have they used the technology to augment their results, but they also built a reliable and crucial revenue stream within the retail platform.
Incorporating recommender engines into your digital business strategy can yield significant benefits by not only satisfying your users but also increasing the efficiency and impact of your marketing and sales teams. As a result, your business can leverage its marketing efforts and investments way more effectively and capitalize on all the opportunities of the digital landscape.
For digital businesses, the power of AI-driven recommendation engines cannot be overstated. These intelligent systems have revolutionized the way we interact with digital platforms, reshaping the user experience and propelling businesses to new heights of success.
For startups, SMEs, and established corporations alike, the benefits of recommendation engines are numerous and profound. These engines have a remarkable ability to boost conversion rates, drive revenue growth, enhance user engagement, and improve customer satisfaction. They provide a direct line to the hearts and minds of your customers, making their experience more enjoyable and productive.
So, whether you are a marketplace looking to increase your conversion rate or a startup aiming to improve customer experience, recommendation engines play a pivotal role in achieving your goals. These AI-driven technologies are the cornerstone of digital success, and their secrets are now available for all to explore.
Incorporating recommendation engines into your digital business strategy can lead to exponential revenue growth and be your secret weapon for staying competitive and relevant.
At Crata AI, we are passionate about helping businesses harness the full potential of artificial intelligence and recommendation engines to drive revenue growth and boost conversion rates. Our team specializes in tailoring AI solutions to your specific business objectives and needs.
Don't miss out on the AI-driven future—take the next step towards a more personalized and successful digital venture with us.
Contact us now to embark on your journey of AI-powered transformation. Let's explore how recommendation engines can generate extraordinary results for your company.
Straits Research. (2023). Recommendation Engines Market. https://straitsresearch.com/report/recommendation-engines-market
Epsilon. (2018). New Epsilon Research Indicates 80% of Consumers Are More Likely to Make a Purchase When Brands Offer Personalized Experiences. https://www.epsilon.com/us/about-us/pressroom/new-epsilon-research-indicates-80-of-consumers-are-more-likely-to-make-a-purchase-when-brands-offer-personalized-experiences
McAlone, Nathan. (2016). How Netflix's Recommendation Algorithm Works. Business Insider. https://www.businessinsider.com/netflix-recommendation-engine-worth-1-billion-per-year-2016-
Ding, Jessica. (2019). How Personalized Product Recommendations Increase Average Order Value. Salesforce Blog. https://www.salesforce.com/blog/holiday-readiness-differentiate-personalized-experiences/
MacKenzie, Ian, Meyer, Chris, & Noble, Steve. (2013). How retailers can keep up with consumers. McKinsey & Company. https://www.mckinsey.com/industries/retail/our-insights/how-retailers-can-keep-up-with-consumers