---
title: "Agent Readiness Audit"
type: pricing
id: "agent-readiness-audit"
description: "Draft service package for making a website, documentation set, or knowledge base easier for AI agents to discover, parse, cite, and monitor."
last_updated: "2026-04-24"
status: "draft"
price_target:
  small_site: "$500-$2,500"
  company_docs: "$5,000+"
tags:
- "pricing"
- "audit"
- "agent-ready"
- "llms.txt"
- "service"
---

# Agent Readiness Audit

The Agent Readiness Audit is a service for teams that want their site, docs, or knowledge base to work better for AI agents.

The goal is practical: make content easy to discover, fetch, parse, cite, verify, and monitor.

## Included Review

- `llms.txt` availability and usefulness.
- Raw markdown or text access.
- Sitemap coverage.
- Robots policy for AI agents.
- Structured JSON availability.
- Metadata consistency.
- Source and freshness fields.
- Canonical ids and stable URLs.
- Per-page content hashes.
- Change feed or changed-since API.
- Internal link quality.
- Mobile and JavaScript dependency risks.
- Whether important content is blocked behind rendering or scripts.

## Deliverables

- Audit report in markdown.
- Agent access score.
- Priority fix list.
- Suggested `llms.txt`.
- Suggested metadata schema.
- Suggested JSON endpoint plan.
- Sitemap and robots recommendations.
- Example agent fetch workflow.
- Optional implementation patch or handoff checklist.

## Scoring

Draft score categories:

| Category | Weight |
|----------|--------|
| Discovery | 20 |
| Raw content access | 20 |
| Structured metadata | 20 |
| Freshness and verification | 15 |
| Change tracking | 10 |
| Citation and source quality | 10 |
| Performance and accessibility | 5 |

## Package Options

### Small Site Audit

For a marketing site, docs microsite, or small content library.

- 10 to 50 pages reviewed.
- One markdown report.
- Suggested `llms.txt`.
- Priority fix list.

### Documentation Audit

For product docs, developer docs, or knowledge bases.

- 50 to 500 pages sampled.
- Content structure review.
- Metadata and API recommendations.
- Agent workflow tests.
- Implementation plan.

### Implementation Package

For teams that want the fixes applied.

- Add or improve `llms.txt`.
- Add markdown or text export.
- Add JSON index.
- Add source/freshness fields.
- Add sitemap and robots updates.
- Add basic changed-since feed where practical.

## Good Fit

- AI product companies.
- Developer tool companies.
- SaaS docs teams.
- Agencies managing client sites.
- Research groups.
- Companies whose docs are often read by AI agents.

## Poor Fit

- Sites that do not want AI access.
- Sites that cannot expose useful content outside client-side rendering.
- Teams that want hidden paid influence over recommendations.
- Projects that need legal compliance review more than technical implementation.

## First Implementation Step

Create a short intake form or contact path with:

- Site URL.
- Content type.
- Number of pages.
- Whether raw markdown exists.
- Whether an API exists.
- Whether AI crawling is allowed.
- Main agent use case.

