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AI SEO - Boost your visibility and get recommended in AI answers

AI SEO (also called AI search) is the discipline that ensures your visibility in ChatGPT, Google AI Overviews, Perplexity and other AI-powered search engines. This page gives you the complete introduction: what AI SEO is, how it differs from classic SEO, why it has become business-critical and how you can start working strategically with it.
Henning Madsen</trp-post-container
Henning Madsen
Founder, CEO & Chief SEO Strategist

What is AI SEO?

AI SEO (Artificial Intelligence Search Engine Optimization) is the overall discipline of optimizing a company's digital visibility to be recommended and cited by AI-powered search engines, while maintaining and strengthening classic Google visibility.

Where classic SEO is about ranking high in Google's organic results, AI SEO is about convincing a language model that your content is the most credible and relevant answer to the user's question. It requires a deep understanding of how AI models retrieve, evaluate and synthesize information, and it requires a content and authority strategy designed specifically for the new reality.

AI SEO is not a replacement for classic SEO. It's an extension that ensures your investments also bear fruit in the fastest growing channel.

Why AI SEO has become business critical

The search landscape is undergoing the biggest change since Google's launch. Four trends point in the same direction:

The new reality in numbers (April 2026)

60%
of Google searches end without clicks (SparkToro)
5,2 billion.
monthly ChatGPT visits (July 2025)
1200%
Growth in traffic from AI platforms (Adobe)
4,4×
Higher conversion rate on AI traffic (Semrush)

These numbers collectively tell a clear story: More and more customers are making decisions in dialog with AI, often without visiting a website. Those who do visit are more targeted in their research and are further along in the buying process when they arrive. Companies that aren't mentioned in the AI's response not only lose traffic, but they also lose the opportunity to be part of the consideration process altogether.

The industry predicts that AI searches will overtake classic Google search by 2028, giving you a window of a few years to build the authority you need to be visible in the new reality.

AI is changing the messy middle“

Google's concept of “the messy middle” describes the messy phase of the customer journey between the initial impulse and the actual purchase, where the customer researches, compares, evaluates and changes their mind multiple times. Historically, this phase has taken place across Google searches, blog posts, reviews and comparison sites.

AI moves much of this process into conversations with ChatGPT and similar assistants. Customers ask AI for recommendations, compare products, ask for pros and cons and build a short-list before they even visit your website. For you as a business, this means that if you're not part of the AI's answer, you're not part of the decision-making process.

The difference between classic SEO and AI SEO

The two disciplines have the same goal - digital visibility - but they require different tools, signals and metrics. The table below shows where the differences lie:

ParameterClassic SEOAI SEO
Primary goalHigh ranking in organic resultsBeing cited as a source in AI answers
Content formatLong, keyword-dense textsAccurate, question-based answer blocks
Keyword typeShort head terms (“SEO agency”)Long conversational questions
Success KPIClick-through rate (CTR) and organic trafficShare of Voice in AI responses
Main signalsBacklinks and internal link structureSchema Markup and E-E-A-T signals

AI-Search, AEO, GEO and LLMO - key terms explained

Recently, several different terms have emerged, all describing the work to strengthen presence in AI-powered searches. AI SEO is emerging as the overarching umbrella term, but alongside it are a number of more specific terms encountered in practice. Some describe disciplines, others describe approaches, and one describes a technique that you should steer clear of. Here are the most important ones:

AI-Search

The search behavior itself

The umbrella term for all AI-powered search experiences: ChatGPT, Google AI Overviews, Perplexity, Gemini and the like. Where AI SEO is the discipline, AI Search is the phenomenon itself, i.e. the channel being optimized for.

AI-SEO

AI-centric SEO strategy

The strategic approach where AI is central both as a goal and as a method: you optimize for AI search engines, while AI tools are integrated into the work itself, from analysis and research to content production and ongoing optimization. The hyphenated spelling emphasizes that AI is at the center of the entire SEO effort.

AEO

Answer Engine Optimization

The discipline of structuring content so that it is easily identified and quoted as direct answers by AI models and voice assistants. Focus on precise answer blocks, logical H1-H3 structure and comprehensive Schema Markup.

GEO

Generative Engine Optimization

The more specific discipline of optimizing content for generative AI search engines like Google AI Overviews and Perplexity. Closely related to AEO, but with a greater focus on semantic depth and the generative synthesis.

LLMO

Large Language Model Optimization

Working to optimize content and technical infrastructure to be quoted by major language models like ChatGPT, Gemini and Claude. LLMO embraces both AEO and GEO under one roof.

PROGRAMMATIC THIS

Mass production of pages (beware)

The technique of automatically generating hundreds or thousands of landing pages from data sets, for example “best [product] in [all cities]”. Can be used legitimately by the biggest data platforms, but is often abused to create thin, generic pages at scale. Google increasingly frames this practice as “scaled content abuse” and AI models rarely cite programmatic pages because they lack semantic depth and credibility signals. A risky shortcut that rarely pays off.

In practice, most of the concepts overlap significantly and the terminology is still evolving. The important thing is not to keep them sharply separated, but to understand that serious AI visibility is always built on the same basic substance: content structured with precision, credible signals and real authority in the market. Shortcuts like programmatic SEO promise quick results but undermine the very signals needed to be selected by both Google and the AI models.

How AI models make their choices

When a user asks a question to ChatGPT or Google AI Overviews, three things happen in a matter of seconds:

01 - Fan-out

The question is split up

The AI breaks the question down into several sub-questions so it can cover all the nuances. One question turns into 5-10 internal searches.

02 - Selection

The sources are assessed

The AI finds the most credible and relevant sources based on E-E-A-T (Experience, Expertise, Authoritativeness, Trustworthiness) signals.

03 - Synthesis

Put together the answer

The selected sources are synthesized into a single answer, often with citations. Only the companies cited here are given visibility.

The fan-out process has an important consequence: the AI must be able to recognize and understand your content across many different formulations of the same question. This is why semantic depth and question-based content structures are so important. You need to be able to match the question, no matter how it's asked.

Bias, heuristics and how AI makes recommendations

AI models are trained on human text and therefore inherit human decision-making patterns. Three of these patterns directly influence who gets recommended:

  • Authority bias: AI values sources with named experts, official organizations, and well-documented credentials over anonymous posts.
  • Social proof: Companies that are positively mentioned across many independent sources (media, forums, reviews, LinkedIn) are perceived as more trustworthy.
  • Category heuristics: When AI is asked to name the “best X”, it often picks companies that are clearly associated with the category across the web, not necessarily the objectively best.

This means that AI SEO is not just about content on your own website. External publicity, digital PR, strong citations and industry authority play a crucial role. A company that only optimizes onsite but doesn't build external authority will have a hard time breaking through.

The three pillars of AI SEO work

AI SEO work can be divided into three pillars, all of which must be in place for the effort to succeed. None of them work alone, and it's the interaction between them that determines whether you get picked or overlooked by the AI models.

PILLAR 01

Query portfolio

Mapping out the queries you need to be visible on. A strong query portfolio focuses on the queries your customers are actually asking AI (not the keywords you used to rank for in Google), prioritizes them by commercial value and tracks them continuously. Without a defined portfolio, you're optimizing against everything and nothing at the same time.

PILLAR 02

Onsite: Optimization and enrichment

Working on your own website: restructuring existing pages into question-based answer blocks, implementing Schema Markup, building E-E-A-T signals (named authors, external citations, technical language) and adding semantic depth. In many cases, it's about refining the content you already have to be citable, not creating something completely new.

PILLAR 03

Offsite: Digital PR and brand mentions

Everything that happens outside your own site: mentions in industry and niche media, quotes in press coverage, expert posts on authoritative platforms, LinkedIn posts from named experts and partnerships. This is what reinforces AI models' perception of you as a credible player in the category and connects your brand with the intentions customers have when they ask.

A company that only works with one of the pillars rarely gets the full benefit. Onsite without offsite lacks the authority signals needed to be chosen. Offsite without onsite has no gateway to direct traffic to. And both without a sharp query portfolio end up optimizing in directions that don't create commercial value.

How is AI SEO measured? Share of Voice as a new KPI

In classic SEO, success is measured in ranking and click-through rate. In AI SEO, the most important KPI is Share of Voice (SoV), which expresses the proportion of relevant AI responses your brand is mentioned in.

For example, if 100 potential customers ask ChatGPT for recommendations for a supplier area and your brand is mentioned in 35 of the responses, you have a Share of Voice of 35%. That number is measurable, can be tracked over time, and correlates strongly with the commercial value of the AI channel.

Alongside Share of Voice, you also track referral traffic from AI platforms, the quality of leads coming through the AI channel and the development of your classic organic performance. Together, these metrics provide a complete picture of the impact.

Can AI SEO be quantified commercially?

Yes, it is. Share of Voice is a strong starting point, but by itself it doesn't tell you where the commercial value lies. It only does that when coupled with existing data from Google Ads, Google Analytics and Google Search Console.

By looking at which search terms are bid on in Ads, which ones generate impressions and clicks in Search Console, and which ones convert best in Analytics, we get a picture of where the real business value lies. When these data sources are combined with the measurement of your AI visibility, it becomes clear which terms and areas to prioritize to create the greatest impact on revenue and leads.

GOOGLE ADS

Where is there purchasing power?

Shows which search terms your competitors are bidding on and where the CPC is high. A high CPC is a strong indicator that the term has commercial value, even if it is not yet driving organic traffic to you.

SEARCH CONSOLE

Where do you stand today?

Shows which organic searches are already driving impressions and clicks to you and where you are ranked. Provides a basis for identifying where there is most to gain, or lose, from the rise of AI search engines.

ANALYTICS

What really converts?

Shows which pages, traffic sources and campaigns actually deliver leads and revenue. Uncover which areas of your business have the highest value per visitor and where AI visibility pays off best.

The result is that AI SEO is not an abstract visibility project, but a measurable effort tied directly to business KPIs. You know what you get for your investment, and you can continuously adjust according to what really works commercially.

Brand searches: The hidden benefit of increased AI visibility

Alongside Share of Voice and the link to Ads, Search Console and Analytics, there is a more subtle but highly measurable effect of AI SEO work: Increasing brand searches. This is one of the clearest indicators that AI visibility is making a real difference in the minds of customers.

The mechanics are simple. In complex customer journeys, especially in B2B, customers spend days, weeks or months researching before making a decision. When they ask ChatGPT, Perplexity or Google AI Overviews for recommendations in your category along the way, and your brand is mentioned repeatedly, you end up on their mental “net list” - the short list of suppliers that are actually considered.

The mechanism here is often referred to as intent-based branding. Classic brand work requires a high frequency of exposure over a long period of time to shift perceptions. AI exposure, on the other hand, hits precisely at the moment when the customer is in active research mode and most receptive to new names. The more often you are mentioned in AI responses to relevant queries, the more likely you are to end up on the customer's shortlist, not as abstract brand awareness, but as a real, actively considered supplier.

From there, predictable behavior follows. The customer searches your brand directly on Google, not the generic category but your company name, to visit the website, read cases and make the next decision. That behavior is directly measurable:

  • Google Search Console Shows increase in impressions and clicks on branded queries (your company name and variations thereof)
  • Google Analytics shows increase in direct traffic and sessions from users arriving via brand searches

This means that the effect of AI SEO work doesn't only show up in Share of Voice. It also works indirectly through classic search data, such as the increased brand awareness that comes from being the recommended option in the AI conversation. Brand searches typically have significantly higher conversion rates than generic searches because the customer has already formed an opinion about you before they click.

How to get started with AI SEO

A serious AI SEO effort follows a structured sequence. The order matters because each step builds on the previous one:

01

Baseline analysis

Map your current Share of Voice. You can't improve what you don't measure.

02

Technical AI readiness

Ensure AI crawlers can find, read and cite your content. Schema markup and crawlability are the foundation.

03

Content optimization

Optimize and enrich existing content into question-based answer blocks that contain the queries customers typically ask in their buying journey.

04

Authority building

Build external publicity, digital PR and citable resources that strengthen your position in AI training data and real-time lookups.

05

Continuous measurement

Track Share of Voice, referral traffic and lead quality. The AI landscape is changing rapidly, so efforts need to be adjusted continuously.

Do it yourself or work with an AI SEO agency?

Some companies choose to build AI SEO expertise in-house. This is a perfectly legitimate approach, especially if you have a large marketing team with the resources to keep up with a constantly evolving field. But there are four reasons why many companies choose to partner with a specialized AI SEO agency instead:

01

The pace of the field

AI search changes every month. Models are updated, algorithms are fine-tuned and best practices shift. A specialized agency works daily in the field and translates the new insights to you, where an in-house team will inevitably fall behind.

02

Tools and data basis

Serious Share of Voice measurement requires either expensive SaaS licenses or proprietary analytics platforms, neither of which is profitable for a single company. An agency spreads the cost across many customers and gives you access to data you wouldn't otherwise have.

03

Experience across industries

An agency sees which strategies work across markets, languages and industries. That experience translates to your context and saves you from many of the mistakes you would otherwise have to make on your own.

04

Accountability and quality control

Without experience, it's easy to fall into the traps: AI-generated content without professional validation, overlooked technical signals or pure spam tactics that get hit by Google sanctions. An agency vouches for quality and ensures that what is published in your name can carry the day.

The most effective model for most companies is a hybrid partnership: the agency provides strategy, Share of Voice measurement and the heavy lifting, while your in-house team takes over more of the day-to-day operations. This gives you expertise without creating dependency.

Want to know more about an AI SEO collaboration?

Read more about how we as an AI SEO agency help companies get recommended in ChatGPT, Google AI Overviews and Perplexity, or contact us directly for a non-binding dialog.

See our AI SEO services
Contact us

Frequently asked questions about AI SEO

Is AI search replacing traditional Google search?
No, AI search is not replacing traditional search, but complementing and gradually taking over parts of it. Information searches and complex questions are increasingly answered directly by AI (zero-click searches), while navigational and transactional searches are still largely done via traditional links. A robust digital strategy in 2026 covers both channels.
Does AI SEO require us to build a new website?
No, it isn't. AI SEO is primarily about restructuring and optimizing the content you already have. By adding Schema Markup, adjusting heading structures, writing precise answer blocks and strengthening E-E-A-T signals, an existing website can be made fully AI-ready without a total rebuild.
How long does it take to see the effects of AI SEO?
Typically within 4-8 weeks for the first measurable changes, and 3 months for a solid baseline. The technical quick wins can take effect quickly, while authority building and semantic depth is a longer-term effort that builds over time. The industry and competitive landscape also affect the pace.
Can you measure Share of Voice in ChatGPT and Google AI Overviews?
How it works. Share of Voice is measured by sending a representative selection of relevant queries to the AI models and recording how often your brand is mentioned in the responses and how you compare to competitors. This requires either specialized third-party tools or proprietary platforms, but is entirely possible and provides data-driven insights into your AI visibility.
Is AI SEO relevant for B2B, B2C or both?
Both, but the impact is different. In B2B, where research and evaluation weigh heavily in the decision-making process, AI visibility has a particularly strong impact on which suppliers are considered. In B2C, AI visibility is increasingly influencing purchasing decisions, especially for considered purchases like electronics, financial products and travel.
What is E-E-A-T and why is it important for AI SEO?
E-E-A-T stands for Experience, Expertise, Authoritativeness and Trustworthiness, and are the four quality signals that both Google and AI models use to assess whether a source is trustworthy. Named authors, documented credentials, external citations and consistent quality across content are all examples of strong E-E-A-T signals. Without them, the AI will rarely cite you, no matter how good your content is.
What is Schema Markup and why does it matter?
Schema Markup (structured data) is a coding language that acts as a translation layer between your website and the AI models. Schema tells the AI explicitly what the content is: an article, an FAQ, a product, an author. Without Schema, the AI has to guess, and guesses often go wrong. With Schema, you have a much higher chance of being correctly identified and cited.
Is uncritical use of AI-generated content hurting our SEO?
Yes, potentially serious. Google has introduced penalties for “scaled content abuse”, which affects websites that mass produce AI content without quality control or editorial value. At the same time, the penalties often affect the entire domain, not just individual pages. AI can be a great productivity multiplier, but only when combined with professional judgment and systematic quality assurance.
Henning Madsen</trp-post-container
Henning Madsen
Founder, CEO & Chief SEO Strategist
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