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AI & Intelligent Marketing, CX & Personalisation, E-Commerce & Retail, Personalised Shopping, Privacy & Consent Management
Muhammad Zulhusni
8th June 2026
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Most online shoppers are already using AI while shopping, but many still struggle to get the results they want, according to Adobe for Business research.
Adobe surveyed more than 1,000 shoppers in the US and found that 86% use AI tools while shopping. The tools range from integrated retail features, such as product recommendations and image search, to generative AI chatbots and customer service windows.
The survey showed that many shoppers use AI tools but still struggle when requests require specific wording. Nearly one in five shoppers said they had abandoned an AI shopping request because they did not know how to phrase what they wanted.
Shoppers tried an average of three prompts before giving up on AI-generated recommendations. Among Gen Z shoppers, nearly one in four abandoned a request during the search process.
The research also found differences in how consumers prompt AI tools. Gen Z shoppers wrote prompts that were 25% more detailed than those written by Baby Boomers when requesting shopping recommendations.
Integrated AI tools remain more commonly used than standalone generative AI chatbots. “Recommended for you” sections and image search were each used by 52% of shoppers. Customer service chat windows and generative AI chatbots were each used by 36%.
Size and fit predictions based on past purchases were used by 33% of shoppers. Such tools use past purchase data and product information to generate recommendations.
AI-assisted shopping was most common in electronics and apparel. Adobe found that 40% of shoppers used AI shopping assistance for electronics, while 39% used it for apparel and accessories.
Beauty and personal care followed at 32%, while health and wellness accounted for 31%. Groceries and food delivery accounted for 26%, and toys and games accounted for 24%.
Among parents with children under 18, 37% used AI tools for toy and game purchases. That compares with 24% of all shoppers.
Some shoppers reported savings from using AI tools. Nearly one in seven said they saved US$500 or more last year through AI-assisted shopping.
The most commonly cited benefits were faster product comparisons and time savings. Adobe found that 54% of shoppers valued AI’s ability to compare products quickly, while 53% cited time savings.
Another 41% said AI gave them access to more product information. Easier product discovery was cited by 39%, while money-saving was cited by 35%.
Shoppers wanted the most AI assistance with research and comparison. Adobe found that 62% wanted support in this area, while 56% wanted help monitoring deals and prices.
Inspiration and discovery was cited by 33% of shoppers. Fit and validation was cited by 24%, while order management, returns, and customer support were each cited by 22%.
The survey also showed what types of information shoppers wanted AI tools to remember. Size was cited by 55%, while budget range was cited by 54%.
Purchase history followed at 53%, while style preferences were cited by 52%. Loyalty status was cited by 42%.
Life context, such as household needs or personal circumstances, was cited by 21%.
The survey also asked shoppers about concerns around AI shopping assistants. Privacy was the top concern, cited by 29% of shoppers.
Bias in recommendations was cited by 24%, while lack of trust was cited by 23%. Adobe also found that 75% of shoppers said AI-generated content would not deter them from making a purchase.
When asked what would increase their engagement with AI shopping tools, 39% of shoppers cited improved recommendation accuracy. More reliable data was cited by 33%.
Enhanced privacy controls followed at 31%. The ability to remember past preferences was cited by 27%, while improved personalisation was cited by 26%.
Greater transparency around how AI functions work was cited by 25%.
The research also examined how consumers describe shopping needs when using AI. When searching for a laptop, shoppers were 80% more likely to mention a budget than when shopping for a gift.
Brand names appeared more often than price limits. Adobe found that shoppers were three times more likely to name a specific brand than to set a price cap.
Technical specifications were less common in prompts. Fewer than one in five shoppers included technical details. RAM and storage were the most common specifications, at 11% and 10%, respectively.
Adobe described agentic AI in retail as systems that interpret shopper intent and take action without requiring precise prompts. These actions can include recommending products or guiding a shopping journey.
Adobe said these systems use product data and customer history to respond to incomplete shopping requests. Behavioural signals and approved content can also help shape the response.
Adobe’s research also found that 26% of shoppers recognised the benefits of brand loyalty from AI-powered personalisation. The company said AI agents, real-time customer profiles, and product knowledge systems are used to match shopping requests with product information.
Shoppers said improved recommendation accuracy and more reliable data would increase their use of AI shopping tools. They also cited stronger privacy controls, memory of past preferences, and clearer explanations of how AI functions work.
(Photo by حامد طه)
See also: How AI is moving more ad production in-house
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Muhammad Zulhusni
Journalist
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