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Your Brand Is No Longer What You Say It Is — It’s What AI Sa…


Your brand isn’t what you say it is anymore. It’s what AI decides it is.

While you’re reading this, thousands of potential customers are asking platforms like ChatGPT, Perplexity, and Gemini about solutions in your category. They’re not Googling and comparing but are asking a single question and trusting the answer they get from AI. And here’s the part that might keep you up at night: you have no idea what that answer says about your brand — or if it mentions you at all.

AI systems have quickly become the first evaluator of your brand. They’re synthesizing everything from the internet — press coverage, customer reviews, social media, podcasts, comparison pages — and forming an opinion. That opinion is now shaping buyer decisions at the exact moment of intent, before a human ever clicks on your website.

This shift forces a new question for modern marketers: what does AI really think about your brand — and are you shaping that perception, or just reacting to it?

Marketers no longer control how their brand appears online

For decades, marketers have operated under a comfortable assumption: control the message, control the brand. Press releases, ad campaigns, website copy, and social media were the levers that shaped public perception. But in 2026, the playbook has changed.

Today, when a potential customer asks ChatGPT or Gemini about the solutions in your category, they’re not clicking through 10 blue links. They’re receiving a synthesized answer. And if it mentions you, the description might bear little resemblance to your carefully crafted positioning.

Visibility in AI search is particularly critical because AI systems increasingly act as the first evaluator of a brand, not just a referrer. If AI doesn’t understand or accurately represent who we are, we effectively don’t exist at the moment of buyer intent.

Kathleen Booth
Vice President, Marketing, Sequel.io

According to Semrush data, marketers who actively optimize for AI visibility are seeing measurable gains, but most brands haven’t started. The opportunity window is still open, but it won’t stay that way for long. Dan Slagen, Senior Vice President of Marketing at Zapier, frames the shift clearly. He says:

Brand visibility is critical in 2026 because discovery is mediated by AI, not direct search. If AI systems don’t understand who you are and what you do, you simply won’t show up in the moments that matter. Visibility in AI search is no longer about rankings, it’s about being accurately represented.

Now the bigger question is this: If AI has become the gatekeeper of brand perception, what exactly is it looking at?

What AI actually sees when it evaluates your brand

Answer engines, unlike humans, do not just appreciate creative taglines or witty messaging. They don’t browse your website with fresh eyes. Instead, they form opinions based on patterns, repetition, and credibility signals across the entire web.

They look across thousands of sources and search for patterns. Over time, those patterns form a structured understanding of your brand: what you’re known for, who you serve, how credible you are, and how often you’re mentioned alongside competitors. AI prioritizes consistency and corroboration. A single high-performing campaign rarely outweighs dozens of smaller but aligned signals.

AI doesn’t ‘think’ about brands the way humans do, but it does form opinions based on patterns, repetition, and credibility signals. The brands that win will be the ones that are intentional about what those patterns say, and disciplined about reinforcing them everywhere they show up.

Dan Slagen
SVP, Marketing, Zapier

When someone queries an AI system about a category, the model synthesizes a lot of information to construct a response. So what determines whether your brand shows up accurately, prominently, or at all? It comes down to four key criteria:

1. Consistency: Do you describe your brand the same way across owned content, press coverage, customer testimonials, and industry publications?

2. Authority: Are credible sources — including analysts, customers, industry experts — talking about you in the context of problems you solve?

3. Legibility: Can AI models easily parse what you do, who it’s for, and why it matters, without ambiguity or marketing jargon?

4. Recency: Is there fresh, high-quality content being published that reinforces your positioning?

From an AI perspective, your brand is less a story and more a dataset that needs to be continuously updated, cross-referenced, and reinforced.

What’s working: Real-world approaches to AI brand visibility

Amidst all this jargon talk, some marketing teams are already seeing results from deliberate AI visibility strategies. Here’s what’s actually working:

Conversational, question-driven content

Fullcast has seen tangible results from restructuring content around how users naturally query AI systems. Amy Osmond Cook, Co-founder and Chief Marketing Officer at Fullcast, shared her insights with us on how they have strategized their content strategy and seen results.

In 2025, we deliberately evolved our content strategy to improve visibility across AI search platforms. We made our content more conversational and question-driven, added FAQs, long-form content, and landing pages that mirror how users naturally ask questions in AI search.

Amy Osmond
Co-founder and CMO at Fullcast

The results speak for themselves. Fullcast’s AI visibility score in Semrush increased by approximately 10 points — from 21 to 31 in 2025. More importantly, their sales team consistently hears from prospects that Fullcast appears as a cited source when they research RevOps solutions in ChatGPT and other LLM-based tools.

This approach works because it aligns with how AI models retrieve and synthesize information. When content explicitly addresses common questions in natural language, it becomes easier for AI systems to extract relevant answers and attribute them correctly.

Human expertise over AI-generated volume

The key to AI visibility isn’t producing more AI-generated content; it’s emphasizing authentic human expertise. Amy’s team has been deliberate about this:

We incorporated expert quotes from our GTM podcasts and cited speakers directly to strengthen expertise, authority, and trust. Our approach prioritizes insight-rich, human-sourced content (drawn from transcripts and original research) rather than generic spray-and-pray AI-generated material.

Amy Osmond
Co-founder and CMO at Fullcast

This strategy emphasizes how AI models are trained to identify and prioritize authoritative sources. Content that demonstrates real expertise (through named experts), original research, specific examples, and detailed insights yields better results than generic, surface-level material.

Signal over volume

Dan’s team at Zapier has embraced a “less is more” philosophy. He shares:

We’re focused on making our positioning clear across the open web: consistent narratives, strong third-party validation, and content that AI models can easily interpret. That includes doubling down on customer proof, structured content, and being present. The goal is less volume, more signal.

Dan Slagen
SVP, Marketing, Zapier

This shows a significant departure from traditional content marketing’s emphasis on publishing frequency. Instead of churning out dozens of blog posts, leading teams are focusing on fewer, higher-quality pieces that establish clear positioning and demonstrate genuine value.

Active learning and rapid testing

AI visibility optimization is still an emerging discipline, which means the most successful teams are those that treat it as an active learning exercise — like Kathleen Booth’s team at Sequel.io.

We treat this as an active learning loop: following practitioners experimenting in  AEO, monitoring how our brand appears across AI tools, and pressure-testing assumptions through content experiments. We also use AI itself — custom GPTs, synthetic buyer models, and retrieval testing, to understand how machines interpret our messaging and where it breaks down.

Kathleen Booth
VP, Marketing, Sequel.io

Having an experimental mindset is crucial. The algorithms powering ChatGPT, Perplexity, and other AI systems are constantly evolving. What works today might need adjustment tomorrow. The teams winning in this space are those that monitor their brand’s AI visibility regularly and adjust quickly based on what they observe.

Your brand is now an AI output. Shape it early

Brand reputation has fundamentally changed. It’s no longer just what people say about you; it’s what AI systems understand and communicate about you at the precise moment potential customers are evaluating solutions. As Kathleen puts it: “AI visibility isn’t a growth hack — it’s a trust exercise.”

This trust compounds over time. Brands that consistently reinforce the same signals across the web become easier for AI to understand — and safer to recommend.

FAQs

1. How does AI decide what to say about a brand?

AI systems synthesize information from across the web — press releases, reviews, analyst reports, long-form content, and repeated mentions. Based on those, they gain a structured understanding of what a brand is known for and whether it’s credible.

2. What is AEO, and why does it matter for brand teams?

AEO, or answer engine optimization, focuses on making content easy for AI systems to interpret, summarize, and cite. It matters because AI tools increasingly act as the first touchpoint in the buyer journey.

3. Who should own AI brand visibility inside an organization?

AI brand visibility is a shared responsibility across brand, content, SEO, PR, and demand teams, with strategic ownership typically sitting with CMOs or growth leaders.

Ready to go deeper? Our latest e-book on “Build Your Brand for the LLM Era” explores the strategies brands are using to earn trust, citations, and visibility in AI-driven discovery.


Edited by Supanna Das





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