Each firm’s opponents are displaying up in AI-generated solutions, however do entrepreneurs know which of them, for which queries, and why? That’s precisely what AEO competitor evaluation is designed to inform groups. 
Reply engines like ChatGPT, Perplexity, and Google’s AI Overviews don’t rank pages. They cite sources. That shift adjustments the whole lot about how aggressive visibility works. A model can maintain a top-three natural rating and nonetheless be fully absent from the AI reply a prospect reads first.
If manufacturers usually are not monitoring who’s incomes these citations and the way, they’re making content material and search engine optimization selections with out half the image. This information walks by way of tips on how to run an AEO competitor evaluation from scratch — what to measure, which instruments to make use of, and tips on how to flip findings into content material that closes the hole.
Desk of Contents
What’s AEO competitor evaluation?
AEO competitor evaluation is the method of figuring out which manufacturers, pages, and sources reply engines cite in AI-generated responses — and benchmarking a model’s personal visibility in opposition to opponents throughout those self same queries.
“AEO” stands for Reply Engine Optimization: the follow of structuring content material in order that AI platforms like ChatGPT, Perplexity, Google’s AI Overviews, and Gemini floor it as a trusted reply.
AEO competitor evaluation extends that follow outward — as an alternative of selling groups simply optimizing their very own content material, they’re systematically monitoring who else the engines are citing, why, and what gaps they will shut.
I’ve discovered that groups usually confuse AEO with conventional search engine optimization aggressive analysis. The important thing distinction: Conventional search engine optimization competitor evaluation tracks key phrase rankings and backlinks. AEO competitor evaluation tracks quotation frequency, reply share, entity protection, and QA content material depth throughout AI-generated solutions. The items of measurement are completely different as a result of the underlying competitors is completely different — entrepreneurs and search engine optimization leaders usually are not combating for a rank place, they’re combating to be the supply an LLM trusts.
HubSpot AEO helps entrepreneurs monitor how their model seems throughout reply engines, displaying which prompts cite opponents as an alternative and the place they’re fully absent, so groups can benchmark visibility in opposition to rivals in a single view.
Why AEO Competitor Evaluation Issues Now
Rising channels could favor front-running adopters.
Reply engine search is just not a future development, so cease considering that approach. It’s a present channel with accelerating adoption. In keeping with Search Engine Land, 58.5% of U.S. Google searches and 59.7% of EU searches end in zero clicks. In the meantime, ChatGPT has surpassed 900 million weekly energetic customers.
Groups that construct AEO measurement and content material infrastructure now are establishing quotation authority earlier than most opponents have even began monitoring it.
I’ve spoken with search engine optimization leaders who deal with AI visibility as a “wait and see” channel. My expertise has taught me that’s a mistake. Quotation patterns in LLMs are usually sticky — as soon as a mannequin associates a model with authority on a subject, that affiliation persists throughout queries and mannequin updates.
AI solutions compress conventional SERPs.
Google’s AI Overviews push natural blue hyperlinks additional down the web page, usually beneath the fold. For prime-intent queries — “what’s the finest CRM for startups,” “how do I calculate buyer lifetime worth” — the AI reply is the SERP end result for many customers. If a competitor is constantly cited in these solutions and a model is just not, that model is successfully invisible for these queries, no matter its rankings.
Visibility shifts to citations, entities, and QA patterns.
Conventional search rewards pages. Reply engines reward entities and solutions. Reply engines consider content material primarily based on:
- Quotation frequency. How usually is a model or URL cited for a given subject set?
- Entity protection. Does the content material clearly set up what the model is, what it does, and who it serves?
- QA depth. Does the content material straight and fully reply the questions customers are literally asking?
Competitor evaluation on this surroundings means understanding not simply what a model’s rivals are publishing, however how their content material is structured and why LLMs choose it.
HubSpot AEO breaks down which domains, content material varieties, and sources reply engines are citing most frequently, giving entrepreneurs clear perception into what content material is at the moment favored and what they should create or optimize to enhance visibility.
Influence on pipeline affect, help deflection, and model authority.
AEO visibility has a downstream enterprise influence past visitors. Manufacturers that seem constantly in AI solutions for buying-stage queries — “finest [category] software program,” “how to decide on a [tool],” “[brand A] vs [brand B]” — affect buy selections earlier than a prospect ever visits a web site.
Groups monitoring AEO competitor knowledge are additionally utilizing it to determine help and product FAQ alternatives, deflecting inbound questions by proudly owning AI-generated solutions to frequent buyer points.
HubSpot AEO and AEO options in Advertising Hub Professional and Enterprise present a prioritized checklist of suggestions primarily based on visibility and quotation knowledge, serving to groups flip competitor insights into a transparent plan for bettering their presence in AI-generated solutions.
Find out how to Run an AEO Competitor Evaluation Step by Step

Step 1: Accumulate precedence questions that reply engines should resolve.
Begin by constructing a question set, which is a consultant checklist of questions your audience asks that reply engines are prone to resolve with a generated reply. These ought to span:
- Consciousness-stage questions – “What’s [category]?” / “How does [process] work?”
- Consideration-stage questions – “Greatest [tool type] for [use case]” / “[Brand A] vs [Brand B].”
- Determination-stage questions – “How a lot does [product] price?” / “Is [brand] proper for [company type]?”
- Assist and FAQ questions – Widespread points prospects seek for after buy.
Professional tip: Pull questions from the present key phrase analysis, buyer help tickets, gross sales name transcripts, and “Individuals Additionally Ask” packing containers in Google. Entrepreneurs need 30 to 100 queries throughout their core subject clusters to get a statistically significant view of reply share. For HubSpot customers, built-in AEO options in Advertising Hub Professional and Enterprise counsel prompts to trace primarily based on its information of their enterprise and prospects.
Step 2: Take a look at queries throughout chatbots and AI Overviews.
Run every question manually or with an AEO instrument throughout a number of reply engines: ChatGPT, Perplexity, Google AI Overviews, and Gemini. File:
- Which sources are cited (URLs and domains).
- Which manufacturers are talked about by identify (even and not using a quotation hyperlink).
- The construction and format of the reply (checklist, paragraph, desk, step-by-step).
- Whether or not your model seems in any respect.
At scale, that is the place AEO instruments develop into important — handbook testing throughout 50+ queries on 4 platforms isn’t sustainable. However I like to recommend beginning with handbook testing for a model’s prime 10 to fifteen queries. It builds instinct for why sure content material will get cited that dashboards alone received’t offer you.
With HubSpot AEO, entrepreneurs can robotically monitor prompts throughout ChatGPT, Perplexity, and Gemini, seeing which responses cite their model, which cite opponents, and the way visibility adjustments over time with out handbook testing.
Step 3: Extract cited sources and entities.
For every question in a set, doc each cited supply and named entity. Entrepreneurs are constructing a map of:
- Which competitor domains are most continuously cited (quotation frequency by area).
- Which particular pages or content material varieties win citations (weblog posts, documentation, touchdown pages, analysis reviews).
- Which entities are constantly talked about (model names, product names, folks, organizations).
Search for patterns. If a competitor’s weblog constantly will get cited whereas their product pages don’t, that tells entrepreneurs one thing about what content material format LLMs choose. If a direct competitor is showing for his or her core queries, that’s a brand new aggressive risk value monitoring.
Step 4: Map opponents by subject cluster and reply share.
With quotation knowledge collected, entrepreneurs ought to manage it by subject cluster — not simply by competitor. Calculate a tough reply share for every model: the share of queries in a subject cluster the place that model is cited.
This map reveals two issues:
- The place opponents dominate. Matter clusters the place a rival has a excessive reply share, and you’ve got low or none — these are precedence hole areas.
- The place the sector is open. Matter clusters the place no model dominates — these characterize fast-mover alternatives the place sturdy content material might shortly set up quotation authority.
Right here’s an instance of an AEO competitor evaluation chart:
Step 5: Diagnose why opponents win.
That is the step most groups skip — and it’s essentially the most helpful. Don’t simply determine that a competitor wins citations. Diagnose why.
For every competitor web page that constantly earns citations, analyze:
- Content material format. Is it a listicle, a long-form information, a FAQ web page, a comparability article?
- QA construction. Does the web page straight reply the query within the first 1–2 sentences, then present supporting element?
- Entity readability. Does the web page clearly state what the model/product/subject is, who it’s for, and what downside it solves?
- Freshness. When was the content material final up to date? LLMs usually favor not too long ago up to date content material for fast-moving matters.
- Schema markup. Does the web page use FAQ, HowTo, or different structured knowledge?
- Backlink authority. Is the web page well-cited by different authoritative sources?
What I like: Essentially the most actionable diagnostic query is: “If I have been a language mannequin attempting to reply this query, would this web page give me a transparent, reliable, full reply?” That framing cuts by way of a lot of the complexity.
AEO in HubSpot Advertising Hub generates prioritized, plain-language suggestions with clear subsequent steps, serving to groups transfer from perception to motion. Groups get helpful insights within the interface they already know.
AEO Competitor Evaluation Instruments and Workflows
1. HubSpot AEO

HubSpot AEO offers entrepreneurs a transparent view of how their model is displaying up throughout main reply engines, like ChatGPT, Perplexity, and Gemini. It tracks share of voice on the immediate stage, displaying precisely which prompts cite a model, which cite opponents, and the place a model is totally absent. As a substitute of requiring AEO experience, it interprets advanced visibility knowledge into plain-language insights that groups can act on instantly.
The instrument additionally connects that visibility knowledge to a concrete technique. Entrepreneurs can monitor precedence prompts, analyze which sources and content material varieties AI engines cite, and determine the place opponents are gaining share of voice. From there, HubSpot AEO generates prioritized suggestions with clear subsequent steps, serving to groups transfer from “we’re not displaying up” to an outlined plan for bettering visibility.
What I like: HubSpot AEO doesn’t simply floor gaps — it reveals entrepreneurs precisely the place they’re dropping floor to opponents and supplies a prioritized, plain-language motion plan they will use immediately.
Greatest for: Entrepreneurs who desire a quick, accessible solution to perceive how their model reveals up in AI-generated solutions and get a transparent motion plan.
2. HubSpot AEO Options in Advertising Hub

AEO options in Advertising Hub Professional and Enterprise give entrepreneurs a transparent view of how their model seems throughout reply engines. Markteres also can get a technique for bettering visibility and the instruments to implement it — multi function end-to-end system.
As a result of it’s linked to HubSpot CRM, the Advertising Hub robotically suggests essentially the most related prompts primarily based on an organization’s industries, opponents, and buyer segments, making insights extra particular and actionable from day one. Suggestions additionally get sharper over time as extra CRM knowledge informs the system.
HubSpot AEO surfaces visibility gaps throughout prompts and opponents, tracks reply share traits over time, and connects AI visibility knowledge to contact and pipeline reporting in HubSpot CRM — so entrepreneurs can tie AEO efficiency to precise enterprise outcomes, not simply impressions.
What I like: Groups with a number of hubs can take AEO ideas from Advertising Hub and implement them in Content material Hub. When the AEO instrument surfaces a spot, entrepreneurs can temporary and publish new content material.
Greatest for: Advertising groups that wish to join AI visibility insights on to execution utilizing their CRM knowledge and current advertising workflows.
3. HubSpot AEO Grader

HubSpot AEO Grader benchmarks reply engine visibility by measuring how usually a model seems in AI-generated solutions relative to opponents. It offers groups a snapshot of their share of voice throughout key prompts, together with perception into how their model is being represented in these solutions. This makes it simpler to know not simply whether or not a model is seen, however the way it compares in aggressive contexts.
The instrument acts as an entry level into AEO by serving to entrepreneurs shortly assess the place they stand and determine whether or not visibility gaps exist. From that preliminary benchmark, groups can begin to perceive which questions matter most for his or her enterprise and the place they might want to enhance their presence in AI-generated responses.
AEO Grader can be fully free, making it an excellent start line for entrepreneurs simply dipping their toes into AEO.
What I like: It supplies a fast, low-friction solution to perceive how usually a model seems in AI solutions and the way it stacks up in opposition to opponents, with out requiring any setup or prior AEO expertise.
Greatest for: Entrepreneurs benchmarking AI visibility throughout the funnel.
4. Perplexity

Working precedence queries straight in Perplexity offers entrepreneurs a quick, free view into what sources are being cited and the way solutions are structured. Perplexity reveals citations inline, making it straightforward to determine which competitor URLs are incomes placement.
Professional tip: Use Perplexity’s “Focus” modes (Net, Educational, Writing) to check how reply sources differ by question context.
Greatest for: Fast qualitative spot-checks.
5. ChatGPT with Browse

ChatGPT’s looking mode surfaces citations for present queries. It’s significantly helpful for testing consideration-stage and comparability queries (“finest X for Y” codecs), the place model mentions in AI solutions have the best buy affect.
Greatest for: Testing conversational and mid-funnel queries.
6. Ahrefs

Conventional search engine optimization instruments stay helpful for diagnosing why sure pages earn AI citations — backlink authority, on-page optimization, and topical authority indicators all contribute to LLM quotation patterns.
Use Ahrefs to audit competitor pages that constantly earn citations, and determine the search engine optimization elements that could be reinforcing their AI visibility.
Greatest for: Pairing conventional search engine optimization knowledge with AEO insights.
7. BrightEdge or Conductor

Enterprise search engine optimization platforms are starting so as to add AI Overview and reply engine monitoring options. These are finest fitted to massive groups managing a whole bunch of subject clusters that want automated quotation monitoring and executive-ready reporting.
Greatest for: Enterprise groups operating AEO at scale.
AEO Competitor Evaluation Metrics and Dashboards
Measure reply share and quotation frequency.
Reply share is the foundational AEO metric: the share of queries in an outlined set the place a model is cited within the AI-generated reply. It’s the AEO equal of natural market share.
Observe reply share at three ranges:
- General. Throughout a full question set.
- By subject cluster. To determine the place a model is profitable and dropping.
- Over time. To measure whether or not content material investments are bettering visibility.
Quotation frequency is the uncooked depend behind reply share — what number of instances a website or URL is cited throughout the question set. Excessive quotation frequency on a small variety of pages could point out over-reliance on just a few content material belongings; broad quotation frequency throughout many pages indicators sturdy topical authority.
Observe entity protection and QA depth.
Entity protection measures whether or not a model, product, and key matters are explicitly acknowledged and related accurately by reply engines. Take a look at this by asking LLMs straight: “What’s [your brand]?” / “What does [your brand] do?” / “Who makes use of [your product]?” If solutions are obscure, incomplete, or incorrect, entrepreneurs have an entity readability downside that may suppress citations throughout their full question set.
QA depth measures how fully a model’s content material solutions the particular questions in its question set. Rating competitor content material and your individual on a easy rubric:
- Does the web page reply the query straight within the opening part?
- Does it cowl the query comprehensively (together with follow-up questions and edge circumstances)?
- Is the reply structured for straightforward extraction (headers, bullets, numbered steps)?
Join AI reply visibility to conversions.
The toughest — and most necessary — AEO measurement problem is connecting AI visibility to the pipeline. I like to recommend a multi-touch method:
- UTM monitoring on cited URLs. Guarantee all high-priority content material belongings have UTM parameters so groups can monitor visitors from AI-referred clicks in HubSpot or GA4.
- Self-reported attribution. Add “How did you hear about us?” fields to varieties and monitor “AI search” or “ChatGPT/Perplexity” as a supply choice. This captures influenced pipeline that by no means generates a tracked click on.
- Darkish social monitoring. Monitor branded search quantity and direct visitors traits in parallel with AEO investments — AI reply visibility usually drives model searches that convert by way of direct channels.
Professional tip: In HubSpot, create a customized contact property for AI-attributed first contact. Over time, this builds a dataset that correlates AEO content material investments with precise contact and deal creation.
AEO in HubSpot Advertising Hub Professional and Enterprise connects AI visibility monitoring to CRM knowledge, making it potential to tie reply engine efficiency to contacts, pipeline, and income in the identical reporting system.
Flip AEO Competitor Insights Into Actions
As soon as your evaluation is full, translate findings right into a prioritized motion checklist. Listed here are the commonest and highest-impact actions I’ve seen AEO competitor evaluation floor:
- Create direct-answer content material for high-gap queries. If a competitor earns citations on 8 out of 10 queries in a subject cluster and also you earn 0, the quickest path to closing that hole is publishing purpose-built QA content material that straight solutions these questions — structured with a transparent query because the H2, a direct reply within the first 1–2 sentences, and supporting element beneath.
- Replace and restructure current pages. Many quotation wins come from reformatting current content material somewhat than creating new content material. Add direct solutions, FAQ sections with schema markup, and clearer entity statements to pages which can be already listed and authoritative.
- Construct entity disambiguation content material. If LLMs give incomplete or inaccurate solutions about your model, publish an authoritative “About” or “What’s [Brand]?” web page with structured entity info. Reinforce entity indicators throughout your web site and in third-party sources (Wikipedia, Crunchbase, press protection).
- Prioritize subject clusters the place reply share is low however competitor content material is weak. Not each hole requires competing with a dominant rival. Search for clusters the place no competitor has sturdy AEO content material — these are the quickest paths to establishing first-mover quotation authority.
- Add comparability and “finest for” content material. Comparability queries (“X vs. Y,” “finest [tool] for [use case]”) are high-intent and continuously answered by LLMs. If opponents are profitable these queries and also you’re not, comparability content material is a high-priority hole to shut.
- Strengthen inside linking between high-performing and low-performing pages. LLMs index topical authority indicators throughout a website. Pages that aren’t incomes citations could profit from stronger connections to your most-cited content material.
- Submit up to date content material to Google for re-indexing. For pages you’ve up to date to enhance QA depth or entity readability, use Google Search Console to request re-indexing so up to date indicators are picked up shortly.
- Observe adjustments at month-to-month intervals. AEO aggressive dynamics shift as opponents publish new content material and as LLMs replace. Construct a month-to-month cadence of operating your precedence question set and updating your reply share benchmarks.
Steadily Requested Questions About AEO Competitor Evaluation
How usually do you have to run AEO competitor evaluation?
I like to recommend a full AEO competitor evaluation — operating your full question set, documenting citations, and updating benchmarks — on a month-to-month cadence for many groups.
For aggressive markets or throughout energetic content material campaigns, biweekly monitoring of top-priority question clusters is definitely worth the funding. In contrast to conventional search engine optimization rankings, which replace repeatedly, AI quotation patterns can shift meaningfully after a competitor publishes new content material or after a mannequin replace — so common snapshots are essential to detect adjustments.
How do you attribute pipeline influence from AI solutions?
Pipeline attribution for AI solutions requires a mix of strategies as a result of AI-generated solutions don’t at all times generate trackable clicks.
Use UTM-tagged URLs on cited content material to seize direct referral visitors, add reply engines as a self-reported attribution choice on varieties and in gross sales conversations, and monitor branded search and direct visitors traits as a proxy for AI-influenced consciousness.
In HubSpot, customized contact properties and deal supply fields allow you to construct a longitudinal view of an AI-attributed pipeline over time. Inside HubSpot Advertising Hub, entrepreneurs can use CRM knowledge, customized properties, and reporting instruments to trace AI-influenced contacts and construct a clearer view of how AEO contributes to pipeline over time.
What’s the easiest way to construction QA content material for LLM citations?
The content material format most constantly cited by LLMs is the direct-answer construction: the goal query seems verbatim (or near-verbatim) as an H2 or H3 heading; the primary 1–3 sentences present a whole, direct reply to that query; supporting element, examples, and nuance observe in clearly organized subsections.
FAQ schema markup reinforces this construction for Google’s AI Overviews. HowTo schema works equally for process-oriented content material. Keep away from burying the reply in prolonged preambles — LLMs favor content material that will get to the purpose instantly.
When do you have to prioritize AEO over conventional search engine optimization?
AEO and conventional search engine optimization usually are not mutually unique — the identical content material high quality indicators that drive rankings (authority, depth, structured formatting, freshness) additionally drive AI citations.
Nevertheless, if analytics present declining natural click-through charges regardless of steady or bettering rankings, that’s a sign that AI solutions are intercepting clicks in your goal queries. In that state of affairs, investing in AEO content material construction and quotation optimization is prone to have the next marginal return than chasing further rating enhancements.
Extra broadly, for any question kind the place AI Overviews or LLM solutions are already dominant, AEO must be the first optimization lens.
From Evaluation to Motion: Turning AEO Insights Into Aggressive Benefit
AEO competitor evaluation offers entrepreneurs one thing conventional search engine optimization by no means totally might: a direct view into how manufacturers are literally beneficial in the mean time of decision-making. As a substitute of optimizing for rankings alone, groups can now measure quotation frequency, reply share, and entity presence — and perceive precisely why opponents are being surfaced in AI-generated solutions.
The true worth, nevertheless, comes from what occurs subsequent. Figuring out gaps is barely helpful if groups can act on them shortly and constantly. That’s the place instruments like HubSpot’s AEO Grader present an accessible start line, serving to entrepreneurs benchmark their present visibility and perceive how they examine. From there, HubSpot AEO and AEO options in HubSpot Advertising Hub allow ongoing monitoring, competitor evaluation, and prioritized suggestions — whereas additionally connecting these insights on to content material execution, CRM knowledge, and pipeline reporting.
For groups investing in AEO, the trail ahead is evident: Construct a dependable question set, monitor reply share over time, and repeatedly refine content material primarily based on what AI engines truly cite. The businesses that operationalize this course of early received’t simply sustain with opponents — they’ll outline how their class is represented in reply engines.









