Feature / Agency GEO operations

Brand Hub actions

Brand Hub connects the client truth layer, knowledge graph, and audit findings so agencies can fix entity confusion, missing proof, weak source coverage, and unclear topical clusters with actions that strengthen both LLM visibility and the public SEO evidence layer.

Operational role

What this module helps an agency prove

Surface source gaps, entity ambiguity, competitor confusion, and missing proof from the brand knowledge graph.

Translate graph findings into agency work: public facts, proof pages, source building, schema, and content updates.

Prioritize actions that improve both AI understanding and traditional SEO stature.

Keep diagnostics inside the product while giving agencies client-ready remediation language.

New agency advantage

Persona + market location + prompt language in one AI audit layer

This is the feature agencies should lead with. A generic AI visibility score is too blunt for local client work. VectorGap lets the agency explain how AI perception changes by buyer persona, target market, and prompting language, which turns the audit into a local market intelligence product instead of a flat dashboard.

Persona-specific prompts

Test how executives, buyers, teams, journalists, analysts, and local prospects ask the same market question differently.

Market-local visibility

Separate Belgium, France, UK, US, or city-level AI perception instead of averaging every client into one global answer.

Prompting language control

Compare English, French, Dutch, German, Spanish, and other prompt languages to catch visibility gaps hidden by English-only audits.

Local AI market narrative

Help clients understand not just if they are visible, but how AI describes them to each local buyer segment.

Workflow

How this feature fits into agency delivery

Each feature page now uses the same product story: diagnose the AI-market signal, explain the local gap, prioritize the fix, and give the client proof they can understand.

1

Choose the client target

Set the buyer persona, market, language, prompt family, and competitor set before the audit runs. The point is to match the client conversation, not create a generic score.

2

Read the signal in context

Review provider-level evidence, competitor position, citations, public proof, and source gaps for that exact target.

3

Convert the gap into agency work

Package the diagnosis into content, source, entity, technical, and proof actions the client can approve.

4

Re-test and retain

Run the same target again after fixes ship so the agency can show movement in the market and buyer context that originally mattered.

Targeting layer

Market + persona + language

Agency output

Client-safe action plan

Retention loop

Repeatable target history

Agency outcomes

What the client understands after this audit

A stronger client diagnosis

The client sees the exact AI-answer context where they lose preference, perception, or share instead of arguing over a generic visibility number.

A cleaner remediation offer

The agency can scope fix sprints around source strength, public facts, content structure, entity clarity, and proof pages.

A measurable retainer story

Follow-up audits show whether shipped fixes improved the same target that exposed the original gap.

Turn this into the client baseline

The fastest buying path is clear product value: show the local AI-market gap, inspect the prompts and competitors behind it, and use the feature set as the remediation workflow.