Five tools dominate the AI visibility conversation in 2026: Profound at the enterprise end, Semrush's AI Visibility Toolkit and Ahrefs Brand Radar inside the big SEO suites, and Otterly.AI and Peec AI at the accessible end. All five are real and all five were built for brands, which means every one of them needs adaptation before it measures a person well. Here is what each actually tracks, where the person-level gaps are, and a sane stack by stage.
The market went from zero to crowded in about two years, and the marketing pages all promise the same thing. The useful question is narrower: what does each tool actually measure, and does any of it describe you, a named human, rather than a brand?
What should an AI visibility tool actually measure?
Strip the category to its mechanics and a serious tool needs to cover some subset of six jobs:
- Mention tracking: does the engine say your name in answers to a defined set of prompts, and how often?
- Citation tracking: when answers cite sources, is your domain among them?
- Share of voice: how does your mention rate compare with named competitors on the same prompts?
- Narrative quality: not just whether you appear, but what the engine says: accurate, stale, hedged, wrong.
- Crawler telemetry: are AI bots actually fetching your pages, which pages, how often?
- Referral outcomes: do humans arrive from AI surfaces and do they convert?
One structural caveat applies to the entire category: none of these vendors has inside access. There is no Search Console for ChatGPT. Every product works by sampling, running large volumes of prompts against the engines and aggregating what comes back, which means every number you see is an estimate built on someone's choice of prompts, phrasings and sampling schedule. Two reputable tools can report different visibility for the same name in the same week and both be honestly reporting their sample. That does not make the category useless; it makes trend lines trustworthy and absolute numbers decorative, and it should permanently calm you about any single scary data point.
No single product does all six well, which is why "which tool" is the wrong first question. The right first question is which of the six jobs your stage of work needs. We mapped the metrics themselves, independent of vendors, in How to Track Your AI Visibility.
The tools that are real in 2026
Everything below was verified as live in July 2026. Features move fast in this category, so treat descriptions as a snapshot and check vendor sites before buying. On pricing we will only say what tier of buyer each product is aimed at; published numbers change too often to print.
Profound
Profound is the flagship of the enterprise end. It monitors how a brand appears across a wide set of AI surfaces, ChatGPT, Perplexity, Gemini, Google's AI results, Copilot and others, and layers on the things enterprises pay for: estimated prompt volume data, misinformation detection for wrong claims engines make about a brand, agent-level crawler analytics showing which AI bots fetch which pages, and content workflows on top of the data. It is built and priced for organizations, with self-serve entry tiers appearing alongside the quote-based contracts. For a solo expert it is almost always too much machine.
Semrush AI Visibility Toolkit
Semrush folded AI answer monitoring into its suite as the AI Visibility Toolkit: mention counts, share of voice against tracked competitors, and coverage across the major answer engines, all living next to the classic rank tracking. The pull here is consolidation. If a team already runs Semrush for SEO, the marginal effort of adding AI monitoring is near zero, and Semrush's research arm publishes some of the better public data on how AI citations behave.
Ahrefs Brand Radar
Brand Radar is Ahrefs' answer to the same problem: tracking brand mentions across AI Overviews and the major chatbots, on top of Ahrefs' crawl infrastructure. Its strength is breadth of prompt coverage and the familiar Ahrefs interface; its structure is modular, with AI platforms tracked as separate indexes, so cost scales with how many engines you want watched. Again, the natural buyer is a company already inside the Ahrefs ecosystem.
Otterly.AI
Otterly.AI is the entry point of the category: you define specific prompts, it runs them on a schedule across the major engines and reports who got mentioned, who got linked, and how that changes over time. It skips the enterprise apparatus, which is precisely why it fits individuals and small teams. Prompt-level monitoring is also the mode that translates best to person tracking, because you can feed it the exact buyer questions you care about.
Peec AI
Peec AI, at peec.ai, occupies similar accessible territory with a benchmarking flavor: visibility snapshots across the major LLMs, competitor comparisons, and reporting aimed at marketing teams and agencies that need to show clients movement. Like Otterly, it is prompt-driven, which keeps it adaptable.
The comparison, side by side
| Tool | Built for | Core strength | Person-level fit |
|---|---|---|---|
| Profound | Enterprise brands | Breadth of surfaces, prompt volumes, crawler analytics | Low, unless you are the brand |
| Semrush AI Visibility Toolkit | Teams already on Semrush | Share of voice next to classic SEO data | Moderate, name-as-brand workaround |
| Ahrefs Brand Radar | Teams already on Ahrefs | Wide prompt coverage per engine index | Moderate, cost scales with engines |
| Otterly.AI | Individuals, small teams | Scheduled tracking of your exact prompts | Good, prompt-driven by design |
| Peec AI | Marketing teams, agencies | Competitor benchmarking snapshots | Good, same workaround applies |
| Manual 25-prompt audit | Anyone, free | Narrative nuance no dashboard captures | Highest, it was designed for people |
The catch: these tools were built for brands, not people
Every product above assumes the tracked entity is a company. That assumption leaks in three places. Prompt libraries default to commercial category queries, not the "who should I hire" and "is this person credible" questions that decide an individual's pipeline. Volume estimates are tuned to product categories, so the long-tail prompts where a person wins register as statistically invisible even when they are commercially decisive. And share-of-voice framing compares brands against brands, while your real competitors are other named humans who may not be tracked entities at all.
The workaround is honest but manual: configure your own name as the "brand," feed the tool the exact money prompts a real buyer would type, and add your competitor names by hand. Prompt-driven tools like Otterly and Peec absorb this gracefully. Index-driven enterprise tools absorb it awkwardly.
A dashboard measures whether you appear. It cannot tell you why the engine chose someone else, and the why is where all the work lives. Measurement without mechanism is a subscription, not a strategy.
The manual layer no tool replaces
Whatever you buy, keep running a hands-on audit monthly. Reading full answers in fresh sessions catches the things aggregate counts flatten: a fact imported from a namesake, a hedge before your name, a competitor consistently introduced with warmer language. The complete routine, 25 prompts across identity, recommendation, comparison, trust and citation, with scoring, is in The 25-Prompt Audit. It also matters because AI citations churn heavily month to month, so single snapshots mislead; trends are the only readable signal. And remember what the engines weigh when they pick a person in the first place, which no monitoring product changes: the mechanism is in The 3 Signals AI Uses to Recommend a Person.
A sane stack by stage
- Establishing a baseline: manual audit only. Buying software before you know your failure pattern is buying a speedometer for a parked car.
- Actively optimizing: manual audit monthly, plus an entry-level prompt monitor (Otterly.AI or Peec AI) for continuous coverage between rounds, plus an AI-referral segment in your analytics so mentions connect to visits. That last piece, following the mention to the money, is covered in From Mention to Money: Tracking AI Referral Traffic to Your Name.
- Company-backed expert: if your firm already pays for Semrush or Ahrefs, switch on their AI modules and add your personal name as a tracked entity alongside the brand. Marginal cost, decent coverage.
- Enterprise: Profound-class platforms earn their keep when multiple brands, markets and teams need the same data. That is a procurement decision, not a personal one.
How to run a fair trial before you pay
Most of these products offer trials or entry tiers, and most trials get wasted, because people evaluate the interface instead of the data. A fair trial works like this:
- Write your prompt set before you sign up. Ten to twenty questions a real buyer would type, drawn from your own money queries, not the tool's suggested library. If you configure the tool with its defaults, you are testing its marketing, not your visibility.
- Run your manual audit the same week. Now you have two readings of the same terrain. Where the tool and your own eyes disagree, investigate; that gap tells you what the dashboard flattens.
- Let it run a full month before judging. Single-day snapshots of a churning system are noise. You are buying trend detection, so evaluate the trend view, the alerting, and whether week-over-week movement is legible.
- Check data portability. Can you export raw answers and mention logs? This category is young, products get acquired and repriced, and your historical baseline should survive any vendor decision. If the data cannot leave, weigh that in.
- Price it against the alternative. The alternative is one hour of your time per month. A tool earns its subscription when it either saves meaningfully more than that hour or catches movement between your manual rounds that you acted on. If after a month it has done neither, cancel without guilt.
Do not confuse measurement with progress
The failure mode this category enables is watching a number instead of moving it. A tool tells you the engine named someone else; it does not build the identity layer, the citable knowledge base or the third-party proof that changes the outcome. Instrument first, yes. Then do the work the instruments point at. If you would rather have both the measurement and the mechanism handled, that is exactly the shape of our services.
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