Archonics MCP Audit Server
Free MCP tools for context engineering audits of AI agents, offering on-demand analysis of system prompts, tool definitions, and context packing.
README
Archonics MCP Audit Server
Free-tier context engineering audits for production AI agents, delivered as MCP tools you can call from Claude Desktop, Cursor, Claude Code, or any MCP-compatible client.
What you get: top-3 findings on your system prompts, tool definitions, or context packing, on demand, no account needed.
What it costs: nothing. The free scan is genuinely free. Upgrade paths to the $49 Instant Audit and $750 Full Audit are surfaced in the response footer; they're not paywalls on this tool.
Why this exists
Most production agent failures aren't model failures — they're context engineering failures. Ambiguous instructions, underspecified tools, bloated context, no regression tests on prompt changes. Those problems are spottable by a trained reader. Archonics has trained that reader and published it as an MCP tool so you can get a second opinion on your agent's context without filing a support ticket.
The underlying audit engine applies Archonics Audit Methodology v1.0, the same spec that drives our paid audits.
Tools
audit_system_prompt
Paste a system prompt. Get back the three most important context engineering issues in it, ranked by severity, with specific recommendations.
Covers: role clarity, instruction conflicts, negative space, priority structure when instructions conflict, token efficiency, format specification precision, failure-mode coverage.
audit_tool_definition
Paste a tool/function definition. Get back the three most important issues affecting how reliably the model will call it.
Covers: description quality (the "when to use this tool" question), parameter schema precision, parameter documentation, error response design, discoverability.
audit_context_packing
Paste a representative context payload (or describe it structurally). Get back the three most important efficiency and quality issues.
Covers: content inventory, redundancy across sections, freshness/relevance, ordering, truncation risk, prompt-cache utilization.
Installation
Claude Desktop
Add to your claude_desktop_config.json:
{
"mcpServers": {
"archonics-audit": {
"command": "npx",
"args": ["-y", "@archonics/mcp-audit"],
"env": {
"ANTHROPIC_API_KEY": "your-anthropic-api-key-here"
}
}
}
}
Cursor
Add to your .cursor/mcp.json:
{
"mcpServers": {
"archonics-audit": {
"command": "npx",
"args": ["-y", "@archonics/mcp-audit"],
"env": {
"ANTHROPIC_API_KEY": "your-anthropic-api-key-here"
}
}
}
}
Claude Code
claude mcp add archonics-audit npx -y @archonics/mcp-audit
Then set ANTHROPIC_API_KEY in your environment.
Why does it need my Anthropic API key?
The audit engine runs on Claude. You bring your own API key so:
- Audit submissions go directly from your machine to Anthropic's API, never through Archonics servers.
- Your costs are transparent — a typical audit uses 2,000–4,000 tokens, well under a penny.
- There's no "free but actually limited" rate-limit surprise. Your API key, your limits.
If you'd rather not bring your own key, use the $49 Instant Audit at agent.market — we cover the API costs and return a full-methodology audit PDF.
Privacy
Submitted content is processed ephemerally. No prospect content is retained on Archonics infrastructure or used to train any model. The API call pattern is: your client → your Anthropic API key → Anthropic → your client. Archonics servers are not in this path.
Aggregated, anonymized patterns across many audits may inform improvements to the methodology — "18 of 20 audited systems lacked prompt-regression tests" — but specific content never feeds that process.
Details: archonics.ai/privacy
Upgrade paths
If the free scan surfaces issues worth fixing, two paid tiers go deeper:
- Instant Audit — $49 USDC via x402. Full methodology applied programmatically to a system you submit. 5-10 page PDF report covering all four dimensions (prompt, tools, context, eval) rather than just three findings in one dimension. Listed at agent.market/archonics.
- Full Audit — $750. Human-reviewed audit of a complete agent system. 15-25 page report tuned to your team's context. Contact audits@archonics.ai.
Contact
- Questions, feedback, or false-positive reports: audits@archonics.ai
- Methodology and full audit examples: archonics.ai
- Issues with this MCP server: github.com/archonics/mcp-audit/issues
License
MIT. Use it, fork it, audit yourself.
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