AI in ecommerce: Current applications and future prospects
AI in ecommerce
Algorithms powered by AI analyze user behavior and historical data to provide customized product recommendations. These recommendations improve the user experience and increase the chances of conversions. By recognizing a shopper's preferences, AI can curate a selection of products that match their tastes, resulting in increased customer satisfaction and engagement.
Amazon is the most well-known ecommerce marketplace for product recommendations. In fact, according to reports, 44% of purchases via Amazon come from AI recommendations. These recommendations also increase brand loyalty for millennials by 28%.
Visual search from images (Pinterest)
Visual search takes shopping to a new level. Platforms like Pinterest employ AI to enable users to search for products based on images. This innovative ecommerce technology allows shoppers to snap a photo or upload a picture, and the AI system finds similar products available for purchase. This seamless integration of AI and visual search enhances the discovery of unique items, making the shopping journey more intuitive and enjoyable.
AI-Powered product bundle creation
Product bundling is a strategic marketing approach encouraging customers to purchase complementary items. AI-driven algorithms analyze customer preferences and buying patterns to suggest ideal product bundles. This increases sales and enhances cross-selling opportunities, allowing retailers to cater to diverse consumer needs.
AI can generate unique product titles and descriptions with the assistance of large language models, allowing you to save time and add a creative touch to your messaging. This can be reflected across all marketplaces you operate on, making it an excellent sales-boosting tool.
Amazon, Shopify, and Rakuten use AI-driven algorithms to optimize product bundling creation.
AI-powered advertising (Google ads)
AI is revolutionizing advertising campaigns by optimizing targeting and delivery. In Google Ads, AI algorithms analyze vast amounts of data to determine the most effective keywords, ad placements, and bidding strategies. This results in improved ad performance, higher click-through rates, and a better return on investment for ecommerce businesses.
Image Source - Secret Escapes Google Ads Smart Bidding Performance
Secret Escapes, a British travel company that sells drastically discounted luxury travel packages, deployed machine learning to optimize its Google Ads, enhance its bidding setup, and lower its Cost Per Lead (CPL). Secret Escapes reduced its CPL by 38% and increased its ad click-through rate by 23% by utilizing Google Ads campaign models, experiments, and Smart Bidding.
Chat bots and virtual assistants
AI-powered chatbots and virtual assistants provide real-time support to online shoppers. 61% of US consumers say they are more inclined to purchase from a brand if they can message them.
These intelligent agents can answer customer queries, provide product information, and even assist in the purchasing process. AI-driven chatbots improve customer satisfaction and reduce cart abandonment rates by offering instant, personalized assistance.
Lego, one of the world's most successful toy companies, was the first toy retailer to implement an ecommerce chatbot for customers.
In 2017, Ralph the chatbot was introduced to support holiday sales and was an instant hit.
Utilizing Facebook Messenger generated 25% of all social media sales and reduced the cost per conversion by 71%.
Unsurprisingly, Lego chose to extend the use of its ecommerce chatbot: Ralph now directs customers year-round through Lego's vast catalog.
AI ecommerce: What's Next?
Augmented reality (AR) shopping
The online shopping experience is about to change thanks to augmented reality (AR). Customers can see products in their environment before purchasing with AR, which superimposes digital features on the actual world. AR improves customer confidence and lowers the possibility of post-purchase dissatisfaction by allowing users to put on virtual clothes and arrange furnishings in a room.
The upscale brand Valentino collaborated with Wanna, an augmented reality startup owned by Farfetch. Customers can try on handpicked items from the Valentino Urban Flows Fall 2023 men's collection using the Wanna Wear smartphone app, sampling virtual clothing in real-time, and sharing looks with friends.
Automated inventory management
Using machine learning algorithms to identify products likely to sell well based on historical sales data is the first step toward automating inventory management. This can be accomplished by analyzing previous purchases or by employing predictive analytics tools such as Google's Cloud Machine Learning Engine (MLE).
Once you know what customers have purchased in the past, you can use this information to determine which items should be kept in stock at all times and how many units must be replenished when they run out.
Real-time inventory management is provided by Fellow AI using image recognition. NAVii, one of its robot editions, can move up and down building aisles to see what items are present and is outfitted with data-collecting cameras.
Lowe's, a chain of home improvement stores, utilizes Fellow robots called "LoweBots" in some locations to assist customers and keep an eye on inventories.
In ecommerce, based on data from orders and returns, H&M utilizes predictive AI to decide which products to recommend to customers. The brand receives information from the AI system about which products to supply in each market and which should be marketed based on popular products.
Walmart employs AI to improve their ecommerce operations including daily supply chain workflows and forecast demand cycles, particularly during high or unforeseen customer activity. Finding solutions has taken years of work in data curation, data collection, adaptable algorithm development, and a worldwide, not piecemeal, technology strategy.
Integration with IoT
The Internet of Things (IoT) is about interconnected devices sharing data. AI can harness this data to offer personalized shopping suggestions. For example, a smart refrigerator could detect when a household is running low on specific items and automatically add them to an online shopping cart. This level of integration creates a seamless shopping experience tailored to individual needs.
IoT can also help merchants better under the logistics process by tracking items throughout the supply chain. Access to data like traffic conditions, weather, location, and personnel IDs (Radio-Frequency Identification) can be made possible via cloud-based technologies like GPS and RFID. Such data can help to optimize shipping and order fulfillment.