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AI HALO

Learn · The mechanics of AI visibility

AI assistants don't read your blog — they interrogate your entity with dozens of hidden questions.

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Proof & data

Most AI-visibility tools only watch — they report where you are absent and stop there. AI HALO does the work that changes the answer, then re-scans to prove it.

$29–$780/mo
what monitoring tools charge to report your AI visibility
$1,500–$50k/mo
what GEO agencies charge to execute — ongoing retainer
One investment
what AI HALO asks to do the work + a 30-day proof re-scan

Measured live across ChatGPT · Claude · Gemini · Meta AI · Grok · DeepSeek — we ask the models your buyers’ real questions, before and after.

Stop Writing Blogs: Why 'Fan-Out Queries' Are the Only Things That Matter Now

When a buyer asks ChatGPT, Gemini, or Perplexity about a business, the model rarely answers from one page. It silently generates a fan-out — a cluster of related sub-queries about pricing, location, reputation, and specialization — then synthesizes an answer from whichever sources satisfy the most of them. A 2,000-word blog post that ranked well in classic SEO often answers only one of those sub-queries, so it contributes almost nothing to the synthesized response. What wins instead is structured, unambiguous data: JSON-LD that states your service area, credentials, and offerings as facts, plus an llms.txt briefing that pre-answers the fan-out directly. AI HALO's audit identifies exactly which sub-queries a business is failing today, then builds the structured layer that answers the whole cluster at once — replacing guesswork content strategy with deliberate, engine-readable coverage.

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Questions

Answered.

What exactly is a fan-out query?+

It's the set of implicit sub-questions an AI model generates internally before answering a user's prompt — for example splitting 'best plumber in Calgary' into location, licensing, pricing, and review-sentiment queries — then merging whichever sources answer the most of them.

Can I see which fan-out queries my business is missing?+

Yes — a proper audit probes the model with the buyer's real questions and reports which sub-queries return your business versus a competitor, rather than guessing from generic keyword volume.

Does posting more blog content improve fan-out coverage?+

Rarely. Fan-out synthesis favors structured, explicit facts over long-form prose, so unstructured blog volume typically adds little unless the underlying entity data is also machine-readable.

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