AI models prioritize objective, verifiable data like certifications (e.g., USDA Organic), ingredient disclosures, and safety testing over subjective promotional language. Inconsistencies in how claims are phrased across different retail platforms are treated as uncertainty by the AI, which ultimately harms product visibility.
Future AI recommendation engines will prioritize trust signals heavily. A key signal is pricing transparency. If an AI cannot find a pricing page or, ideally, an interactive cost estimator on your site, it will view your business as non-transparent and will not recommend you in search results.
Beyond data privacy, a key ethical responsibility for marketers using AI is ensuring content integrity. This means using platforms that provide a verifiable trail for every asset, check for originality, and offer AI-assisted verification for factual accuracy. This protects the brand, ensures content is original, and builds customer trust.
A key operational use of AI at Affirm is for regulatory compliance. The company deploys models to automatically scan thousands of merchant websites and ads, flagging incorrect or misleading claims about its financing products for which Affirm itself is legally responsible.
Just as a brand negotiates for shelf space with Walmart, it must also "sell" to AI algorithms. This means feeding them content that proves the brand drives "category growth" for the platform, thereby earning preferential treatment and visibility.
Unlike traditional SEO, AI-generated answers are personalized based on a user's entire conversation history. Two people can get different results for the same prompt. Therefore, chasing keywords is a flawed strategy. Brands should instead focus on building a deep, structured, authoritative data foundation that the AI can interpret for any context.
Generative AI tools are only as good as the content they're trained on. Lenovo intentionally delayed activating an AI search feature because they lacked confidence in their content governance. Without a system to ensure content is accurate and up-to-date, AI tools risk providing false information, which erodes seller trust.
Traditional SEO often involves technical debates (e.g., subdomains vs. folders) and link building. In contrast, optimizing for AI search (AIO) is about teaching the LLM about your product's value, features, and benefits, much like training a salesperson. It requires strong product marketing skills over technical SEO expertise.
Unlike consumer chatbots, AlphaSense's AI is designed for verification in high-stakes environments. The UI makes it easy to see the source documents for every claim in a generated summary. This focus on traceable citations is crucial for building the user confidence required for multi-billion dollar decisions.
In AI-driven commerce, brands win by being selected by an agent, not by ranking on a search page. This shift favors brands with trustworthy, structured, and verifiable data over those with the largest advertising budgets, leveling the playing field for smaller, agile companies.
As AI agents and synthesized search become intermediaries, traditional channels are insufficient. The new imperative is ensuring your brand’s data is accessible to AI models as they reason and generate responses, directly influencing the outcome before it reaches the consumer.