
Why AI Knows You're Shopping — Before You Even Do
Opinions expressed by Entrepreneur contributors are their own.
The rules of digital engagement are changing rapidly, thanks to the rise of artificial intelligence and everything it brings to the table. One of the biggest shifts we're seeing in 2025 is happening in the way we search.
In the past, search was all about keywords — you typed in what you needed, whether it was a product, service or piece of information. But now, search is evolving into something smarter, something that can anticipate what you're looking for before you even start typing.
This shift toward predictive search capabilities is not just a technological leap; it's a seismic change in how businesses connect with intent, personalize experiences and drive conversions. For digital marketers, product teams and CX leaders, understanding the mechanics and applications of predictive AI in search is no longer optional; it is part and parcel of success.
Related: Want to Rank in AI Search? Focus on These Sources
The evolution from keyword to intent
Search used to be reactive, which means that a person has a need and they type it out into a search engine in order to find an answer. Based on that practice, brands optimised for what people were searching for, utilising keywords, trends, SEO tactics and other methods in order to be ranked by search engines and be found by people. But it responded instead of anticipated. These methods required users and consumers to make the first move.
In 2025, predictive AI is flipping the script. Instead of waiting for consumers to express intent, platforms are now learning to recognise patterns, analyze behaviors and predict probable actions. That means consumers are seeing content, products or answers they were about to search for, sometimes even before realising they needed it.
This shift is part of a broader movement toward proactive digital experiences, powered by big data, machine learning and hyper-personalisation. That isn't to say that search is dead, but it is becoming increasingly invisible, ambient and eerily prescient.
How predictive AI understands intent
At the heart of predictive search is an algorithmic cocktail: machine learning, natural language processing, deep behavioral analytics and vast datasets pulled from across channels — web activity, location data, app usage, purchase history and even social media sentiment.
AI models today can map micro-behaviors like scroll speed, dwell time or mouse hover to determine intent. How long you spend on a website or watching a TikTok video will all play into the content that will be shown to you across the board. Whether you are logging onto a shopping platform or a social media platform, your behaviors will carry forward and offer you similar things that you might be interested in.
For example, if a user browses organic skincare on Instagram, likes a product review and then opens a wellness app later in the day, an AI-driven search platform could predict that they're likely to seek "best clean moisturisers for sensitive skin" later that evening — and serve that result proactively, even before the user searches.
Google, Microsoft and the race for predictive dominance
The tech giants are locked in a quiet arms race to own the predictive future. Google's Search Generative Experience — now fully mainstream in 2025 — uses AI to blend traditional search with contextual understanding, generating summaries and proactive suggestions based on intent, not just input.
Microsoft's integration of Copilot into Bing and Microsoft 365 has also led to smarter enterprise search. Employees no longer have to look up files or protocols; they're suggested in the workflow before the query forms.
Both platforms are investing heavily in LLMs (Large Language Models) fine-tuned for intent prediction, not just language generation. The goal: remove friction and surface what users need before they ask for it.
Related: How to Control the Search Results For Your Name
What this means for brands in 2025
For brands, this is a goldmine of opportunity — but only if they're prepared. Predictive AI doesn't just change how users search; it changes how businesses must structure, tag and deploy their digital content.
Here's how brands are responding:
1. Creating content for "pre-intent" moments. Instead of focusing solely on transactional keywords ("buy running shoes"), forward-thinking marketers are now creating content for precursor behaviors.
That means that consuming information like "How to avoid knee pain when jogging" or "Signs your shoes need replacing" will alert AI algorithms to show you the best shoes that protect your knees.
It's about mapping the customer journey upstream, anticipating the questions that come before the conversion, and positioning your brand as the default source before the user is even aware of their need.
2. Structured data and AI-friendly taxonomy. To appear in predictive search, content must be easy for machines to read and index. Brands are investing in structured data, semantic markup and content taxonomies designed for AI interpretation.
This helps AI systems link product attributes, FAQs and guides to broader intent signals. So the next time you search for "how to pet-proof a rental apartment", you'll likely get ads with products tagged with things like "pet-proof", "small-space friendly" or other pet-related products and furniture that are non-destructive and ideal for rental spaces.
3. Integrating first-party data with predictive engines. Brands with strong CRM and loyalty ecosystems are integrating first-party data with predictive platforms. This includes purchase cycles, user preferences and engagement history. When done ethically and securely, this allows companies to anticipate individual needs with astonishing precision.
A beauty brand, for instance, might know that a customer repurchases foundation every six weeks. In week five, a push notification appears: "Running low? Your shade is in stock — and 10% off today."
Related: The Most Successful Founders Take Retreats — Here's Why You Should, Too
The privacy-intent tradeoff: A delicate balance
One of the biggest debates in 2025 is where the line lies between convenience and intrusion. Predictive AI walks a fine line between helpfulness and creepiness. Consumers are growing more aware of how their data is used—and more selective about who gets access to it.
This has led to a renewed focus on consent-based tracking, zero-party data and transparency. Companies that overstep with overly personal or mistimed suggestions risk backlash and lost trust. The key is relevance without overreach.
Predictive search must feel like intuition and not like surveillance.
For one consumer, getting a "rain expected this weekend – here are your most-viewed waterproof boots at 15% off" might signal convenience, but for another, it might feel like tech is encroaching on their privacy… but AI models will be able to glean consumer behaviors and dole out the appropriate approach for each consumer. For the latter consumer, AI models might subtly provide ads that are targeted at their subconscious needs or desires rather than their current situation.
For example, drawing information from their stress indicators or mood predictors, AI models may provide weekend getaway ideas with the current deals and promos. This not only offers what the stressed user might need, but it also doesn't feel too hard-sell, which can be a turn off for some.
What marketers need to do now
As predictive AI reshapes search, here's how marketers can future-proof their strategy:
Invest in clean, structured data: Make sure your product and content assets are indexed in machine-readable ways
Map out intent journeys: Don't just optimise for conversion—optimise for the moments that lead to it
Collaborate with AI teams: Work closely with data scientists to align content production with AI discovery
Respect privacy and trust: Make sure predictive suggestions feel empowering, not invasive
Test, learn, iterate: Predictive tools will improve rapidly—brands that experiment early will gain a lasting edge
We're entering an era where search is no longer a conscious act but a seamless service. Predictive AI in 2025 is transforming how intent is understood, how brands are discovered and how decisions are made. It rewards those who can think ahead about their customers, their data and their digital footprint.
For businesses willing to embrace this shift, the payoff is enormous: smoother journeys, higher engagement and deeper loyalty. Because in the end, the smartest brands won't wait for their customers to ask — they'll already be there with the answer.
Hashtags

Try Our AI Features
Explore what Daily8 AI can do for you:
Comments
No comments yet...
Related Articles
Yahoo
4 hours ago
- Yahoo
Apple might be building its own AI ‘answer engine'
Apple has formed a new team to build a ChatGPT-like app, according to according to Bloomberg's Mark Gurman. This team — reportedly called Answers, Knowledge, and Information — is working to build an 'answer engine' that can respond to questions using information from across the web. This could be a standalone app or provide search capabilities in Siri, Safari, and other Apple products. Gurman also notes that Apple is advertising for jobs with this team, specifically looking for applicants who have experience with search algorithms and engine development. While Apple has already integrated ChatGPT into Siri, a more personalized, AI-powered update to the voice assistant has been repeatedly delayed. Apple might also have to alter its search deal with Google as a result of the latter company's antitrust defeat. Error in retrieving data Sign in to access your portfolio Error in retrieving data Error in retrieving data Error in retrieving data Error in retrieving data


TechCrunch
4 hours ago
- TechCrunch
Apple might be building its own AI ‘answer engine'
In Brief Apple has formed a new team to build a ChatGPT-like app, according to according to Bloomberg's Mark Gurman. This team — reportedly called Answers, Knowledge, and Information — is working to build an 'answer engine' that can respond to questions using information from across the web. This could be a standalone app or provide search capabilities in Siri, Safari, and other Apple products. Gurman also notes that Apple is advertising for jobs with this team, specifically looking for applicants who have experience with search algorithms and engine development. While Apple has already integrated ChatGPT into Siri, a more personalized, AI-powered update to the voice assistant has been repeatedly delayed. Apple might also have to alter its search deal with Google as a result of the latter company's antitrust defeat.
Yahoo
7 hours ago
- Yahoo
Google AI summary feature deals blow to link clicks and website traffic
Google's algorithm changes last year led to a plummet in search engine traffic for news websites and publishers, and even resulted in the bankruptcy of some independent publishers, including Turkey's Gazete Duvar. The technology giant is now dealing another blow to online publishers through its artificial intelligence summaries. Google's Artificial Intelligence Overview feature is a service offered by the internet giant to compete with artificial intelligence tools such as ChatGPT. The feature offers short summaries generated by Gemini that appear at the top of search results. Below the summary, there are details such as links to the source and a "Show more" option. In other words, when a user types a query into the Google search engine, they can get the answer in a summary without clicking on the links below. But this presents a serious risk, especially for websites that rely on Google Ads revenue and traditional search engine optimisation (SEO) efforts. Traffic of popular websites dropped The introduction of the AI Overview has particularly affected traffic to sites that feature content such as holiday guides, health tips and product reviews. According to Similarweb, search traffic to websites decreased by 55% between April 2022 and April 2025. A report published by the Wall Street Journal indicates that traffic to many well-known news sites around the world is declining. Traffic from organic search to HuffPost's desktop and mobile sites has more than halved in the last three years, while the Washington Post has seen a nearly identical decline. Business Insider CEO Barbara Peng laid off about 21% of her staff in May, citing "extreme traffic declines beyond our control" as the reason for the layoffs. The share of traffic from organic search to the New York Times' desktop and mobile sites also fell to 36.5% in April 2025. Nicholas Thompson, CEO of The Atlantic, predicts that traffic from Google will drop towards zero and says the company needs to improve its business model. "Google is changing from a search engine to an answer engine," Thompson said in an interview with the Wall Street Journal. In an interview with the WSJ, Thompson and other industry leaders said they are trying to develop new strategies and are most concerned with building reader relationships. Users don't click on links Google executives argue that the company is committed to sending traffic to the web and that people who click on links after seeing the AI Overview tend to spend more time on these sites. However, survey studies show a different picture. According to a new study by the Pew Research Centre, only % of the 900 Google users in the US click on the source page specified as a result of a search that includes the Artificial Intelligence Overview summary. The rest are content with the short information provided by Google. Moreover, according to the study, the most frequently cited sources in both AI summaries and traditional search results are Wikipedia, YouTube (also a Google subsidiary) and Reddit. 15% of the sources in AI summaries come from these three sites. Referrals to government sites (e.g. with the 'gov' extension) are more common in AI summaries than in traditional search results. On the other hand, both AI summaries and traditional search results are equally likely to refer to news sites, at 5%. Worse still, 404 Media, a website known for specialised technology news, noticed that a story about AI-assisted music production was not showing up in Google searches. This was because Artificial Intelligence Overview summarised the content of the story, but did not link to the actual story. The site summarises the situation with the following statement: "The AI Overview ensures that information is presented in such a way that the source itself is never clicked on." SEO loses its impact The effects of the AI Overview on SEO (search engine optimisation) are also remarkable. According to the Register, the latest data showed that the click-through rate of the top-ranked site in searches with an AI summary fell by an average of 34.5%. Being on the first page is no longer as meaningful as it used to be. AI often provides false information Moreover, there is another risk: the reliability of artificial intelligence. 404 Media published a news article showing that one of the responses given by the feature in question was actually generated from another AI summary, which in turn was based on an AI source. The margin of error increases as the information moves away from the main source. This situation is described by experts as "the vicious circle of information that leads to the collapse of artificial intelligence models themselves". When there are not enough sources of quality information, users are left with inaccurate and superficial content produced by artificial intelligence. The advertising industry continues to work for Google The revenues of websites and Google are based on the following advertising cycle: Websites allow people who use search engines such as Google free access to their content. Google redirects users to websites where they see adverts as well as content. Most websites make money from these adverts. According to the BBC, an estimated 68% of internet activity starts on search engines, and around 90% of searches take place on Google. This means that websites rely heavily on Google to make money. It is stated that the Artificial Intelligence Overview mode could therefore destroy the business model that has existed for 23 years. However, Google experience no loss in this change, at least for now. Alphabet, the Google's parent company, increased its revenues to a record level in the last quarter of 2024. According to data released by the company, Google's total revenue increased by 14% compared to last year, reaching $96.4 billion. According to the Register, the bulk of the revenue still comes from advertising: exactly $54.2 billion. That's because Google now places adverts directly in or around AI Overview summaries. According to a study by SparkToro, by 2024, only 360 out of every 1,000 Google searches in the US led to sites that are not owned or advertised by Google. These rates are predicted to worsen with the rise of artificial intelligence summaries. 'Desperation not demand' While Google still dominates the market, rival AI-powered search engines such as Perplexity are slowly entering the competition. According to Bank of America executive Muhammad Rasulnejat, Google's spending of $14 billion on infrastructure investment in the last quarter alone points to "desperation in the face of competition", not growing demand. In addition to all this, the fact that the US Department of Justice still accuses Google of monopolisation creates a separate pressure. The Ministry is even demanding that Google divest its Chrome browser. The company's recent advertising and artificial intelligence moves may further inflame these debates.