Think about the last time you shopped online for a dress, a record player, or a new pair of running shoes. Chances are, you had questions about size, fit, features, or compatibility. And just as often, the answers you got from the site weren’t enough to make you feel confident.
That’s the gap AI agents are designed to close. Instead of leaving shoppers with guesswork and generic responses, they bring 24/7, context-aware intelligence to every step of the journey, helping customers make decisions they trust.
Until now, most ecommerce sites have relied on static FAQs, limited search tools, and customer support that stopped when business hours ended. ‘Personalization’ was often surface-level, and product data lagged behind real needs. For merchandisers and product managers, this meant trying to optimize with incomplete information instead of intent.
AI agents flip that equation, giving ecommerce teams a way to reduce friction, lift conversions, and free up resources while ensuring shoppers feel understood.
Ecommerce AI agents are self-improving digital assistants built to interpret context, data, and objectives; make decisions; and — most importantly — take purposeful action. They operate with more autonomy than traditional chatbots, which rely on scripted responses and rigid decision trees.
Here’s what the difference is in practice: a chatbot might answer “yes” or “no” when asked if a product is in stock. An AI agent, on the other hand, can scour a catalog to find the specific item for a shopper, and if said item is out of stock, recommend similar products based on that shopper’s affinities and behavioral data.
In other words, an AI agent does more than just respond. It helps the shopper move forward purposefully.
AI agents for ecommerce personalize responses by drawing on real-time product data, inventory levels, customer profiles, and session behavior. Most are built on large language models (LLMs), which use transformer architectures to interpret and generate language with high accuracy. That context-awareness allows agents to ask better questions, suggest more relevant products, and deliver timely answers that actually reflect what’s in stock or on offer.
It’s important to note that autonomy doesn’t mean a lack of control. Ecommerce teams can use guardrails to keep agents on-brand and aligned with business goals. These include response constraints, fallback protocols, and human-in-the-loop workflows for exceptions or sensitive interactions. In higher-stakes use cases like warranty claims or order issues, agents can escalate to a human to keep the experience seamless.
Consistency also matters. AI agents can (and should) be trained to reflect a brand’s voice, tone, and customer priorities, whether they’re answering a product question or guiding someone through a return. That alignment requires both thoughtful configuration and access to the same core systems that power personalized search and discovery.
To ensure you’re setting up your AI agent with your customers and business in mind, make sure you partner with the right people.
More than half of Americans have already used ChatGPT. And just as LLMs like ChatGPT and Perplexity have transformed how people search for information, shoppers now look for that same conversational, context-aware support when they shop, including on retail sites.
For retailers, this creates a new risk: sites that rely on rigid interfaces can’t keep up with the fluid expectations shaped by Generative AI (GenAI). Whether consumers are looking for information about size, fit, shipping, availability, or compatibility, they leave when they can’t find the answers they need quickly.
At the same time, it also creates an opportunity: GenAI can strip away much of the friction that slows down product discovery and purchase decisions. This allows GenAI-native tools like AI agents to allow retailers to meet these expectations without overwhelming internal teams.
AI agents can enhance the entire ecommerce experience, from first click to post-purchase follow-up. Here’s where AI agents help shoppers get what they need faster and more confidently:
AI agents like Constructor’s AI Shopping Agent (ASA) step in to act like 24/7 in-store associates. The GenAI-native solution leverages product data and shopper affinities to answer questions in real time and offer highly personalized product recommendations, guiding shoppers to the best-fit items.
For queries such as “Show outfits for an outdoor wedding in 90-degree weather” or “What do I need to mount a 60-inch TV to my wall?” suggestions highlight relevant products across categories. Or, for queries like "Show me fashion sneakers I can wear this fall," ASA can act as a style assistant, suggesting items that align with a shopper’s needs, tastes, and intent.
In other words, ASA ensures that every customer feels supported and understood, leading to a more seamless and satisfying shopping experience that improves conversions, AOV, LTV, and brand trust.
Explore more about how ASA can help here.
When shoppers arrive on a product detail page (PDP), a strategically placed LLM-powered chat agent can secure the sale. This is exactly what Constructor’s AI Product Insight Agent (PIA) does, delivering instant answers to final product questions at the final stretch.
Our PIA widget can be embedded anywhere within your product page, enabling an interactive chat experience through which shoppers can ask their own questions or choose from “frequently asked prompts” related specifically to the product being viewed. It then suggests follow-up questions after providing an answer for those looking to learn more. These follow-ups help shoppers explore topics more deeply or discover related information.
By proactively surfacing relevant questions, PIA reduces the cognitive load on shoppers — who may find it challenging to generate questions themselves — and helps maintain user engagement.
To learn more about how PIA works, in addition to the value it delivers for both retailers and consumers alike, click here.
AI agents like PIA enhance your customers' ownership experience by answering post-purchase questions like “what’s the best detergent to use with this fabric?” and providing technical troubleshooting tips. PIA can even accurately handle inquiries like “What’s your return policy?” or, at the very least, refer shoppers to the appropriate site resource.
AI agents can also re-engage satisfied buyers by suggesting related items or repurchase reminders based on previous behavior, which is yet another feature of PIA.
PIA enables ecommerce teams to send post-purchase emails requesting a product review and reminding customers that they can return to the product page at any time for additional questions (with a link).
Teams can even tag this URL with parameters that tell their website to serve a recommended products section near the PIA widget to spur an accessory or related product purchase.
On the service side, AI agents handle routine tickets instantly so support teams can prioritize more complex or sensitive issues. They can also accurately deflect common requests around shipping times, restocks, or store hours while staying within established brand guidelines.
Real-world examples of AI agents are becoming more common. Walmart, for instance, recently introduced Sparky, an AI-powered shopping assistant embedded in its app. Sparky helps customers navigate Walmart’s vast catalog through conversational guidance — narrowing options by style, budget, or use case — and is part of Walmart’s broader strategy to make product discovery more intuitive and efficient.
Constructor’s own platform and customers are also driving real-world impact. For example, our AI Shopping Agent (ASA) delivered a 10% lift in website revenue, a 6% boost in search conversions, and a 7% increase in click-through rate. These numbers show that agentic AI ecommerce isn’t theory or speculation. It’s driving tangible results. Right now.
This also aligns with broader industry trends:
These data points indicate a clear shift. AI agents are becoming fundamental tools in retail, enabling brands to drive conversion, merchandiser efficiency, and customer satisfaction.
Adopting a new tool comes with challenges, but most can be mitigated with the proper planning and oversight.
You don’t need to do a massive overhaul to get started with AI agents. The most effective pilots begin with a narrow use case, clear success metrics, and access to the systems that power your product discovery experience.
At the rate AI agents are evolving, soon they’ll anticipate needs based on real-time behavior and past interactions, offering size guidance, price drops, or restock alerts before the user searches. That shift from reactive to predictive support will fundamentally reshape how people shop.
We can expect more continuity across channels, too. Whether someone interacts via desktop, mobile app, voice assistant, or an in-store kiosk, the experience will feel seamless being powered by the same agent with shared context.
Most importantly, agents will become deeply embedded in the discovery experience. When working hand in hand with other solutions like search, browse, and recommendations, agents will form part of an ecosystem that guides shoppers through the entire purchase process in a cohesive and brand-aligned way.
If done well, agentic systems will not only support ecommerce teams but also redefine what great service looks like.
We're happy to discuss how agentic AI can help.