mcp
FreeNot checkedAEO scoring, llms.txt audit, and agent-readiness checks for AI agents.
About
AEO scoring, llms.txt audit, and agent-readiness checks for AI agents.
README
NeverRanked is a research engagement that measures what AI answer engines cite for a category. The output is a forensic memo plus a prepped punch list for the customer's team to execute against.
This repository holds the marketing site, the dashboard worker
source (under dashboard/), and the historical artifacts from
the company's prior product.
What this company was, and what it is now
Until May 2026, NeverRanked sold a JavaScript snippet that was claimed to drive AI citations. We ran a pre-registered kill test against our own domain. The result was zero citations. The LLM crawlers do not execute JavaScript, so the snippet was structurally invisible to them.
We stopped selling that product, retracted the public content that promoted it, and rebuilt the company around the measurement layer that does work.
This repository contains both states: the current honest surfaces (homepage, About, ASB pitch, terms, privacy, llms.txt) and the historical artifacts (retired blog posts, retired case studies, retired audits, retired explainers). Anything that contradicts the retraction is either replaced with an honest holder or marked as retired in place.
For the current state of every code path, see
~/.claude/projects/-Users-lanceroylo-Desktop-neverranked/memory/code_rewrite_status_2026-05-21.md
in Lance's local Claude memory.
What we measure now
Seven AI surfaces, every day.
- Five citation-grade engines that search the live web and cite their sources: Perplexity, ChatGPT search, Gemini grounded, Microsoft Copilot via Bing, Google AI Overviews.
- Two model-knowledge engines that answer purely from training data: Claude, Gemma.
Both layers measure different failure modes. A brand invisible in citation is invisible when AI fact-checks itself. A brand invisible in model knowledge is invisible at the baseline, before any search happens.
What we deliver
A forensic memo plus a prepped punch list. Per query, per engine, per competitor, per source type. Daily measurement. Monthly delta memo on ongoing engagements.
We do not execute. No content writing, no website edits, no schema deploys, no profile updates. The labor stays with the customer's team or their agency. That separation is structural.
Pricing
- $4,500 kickoff per category. One time.
- $1,500 per month per category, ongoing.
- Per category, not per client.
This is a research engagement, not a SaaS subscription. There is no self-serve dashboard.
Repository layout (current)
neverranked/
├── index.html honest homepage holder
├── about/, terms/, current honest pages
│ privacy/, thanks/
├── pitch/asb-hawaii/ current direct-buyer pitch shape
├── pitch/*/ retired pitch pages (holder)
├── blog/, case-studies/, retired catalogs (holders + noindex)
│ profile/, state-of-aeo/
├── standards/, schemas/, retired surfaces (holders)
│ agencies/, security/,
│ for-agencies/,
│ principles/, kit/
├── meetings/kits/ current meeting prep, demo bundle
├── dashboard/ app.neverranked.com Worker source
├── llms.txt rewritten for current state
└── sitemap.xml homepage only
The historical artifacts (retired pages, audit documents under
/audits/, prior explainers like EXPLAINER.md and
AGENCY-EXPLAINER.md, the original audit template under
/audit-template/) reflect the prior product premise and are
preserved for diff context but should not be acted on as current
guidance.
Contact
Install mcp in Claude Desktop, Claude Code & Cursor
unyly install io-github-lanceroyloInstalls into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.
First time? Get the CLI: curl -fsSL https://unyly.org/install | sh
Or configure manually
Run in your terminal:
claude mcp add io-github-lanceroylo -- npx -y @neverranked/mcpFAQ
Is mcp MCP free?
Yes, mcp MCP is free — one-click install via Unyly at no cost.
Does mcp need an API key?
No, mcp runs without API keys or environment variables.
Is mcp hosted or self-hosted?
Self-hosted: the server runs locally on your machine via the install command above.
How do I install mcp in Claude Desktop, Claude Code or Cursor?
Open mcp on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
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