This server provides a curated AI compliance knowledge base as callable tools, enabling AI agents and practitioners to navigate complex regulatory frameworks (28 regulations, 56+ controls). Available tools:
lookup_control: Search for security/compliance controls by regulation, category, enforcement surface, or sector. Returns applicable controls, tooling options (managed/OSS/commercial/standard), auditor-expected evidence shapes, and practitioner notes across frameworks like EU AI Act, HIPAA, GDPR, NIST AI RMF, ISO 42001, APRA CPS 234/230, and more.get_anti_pattern: Search a catalogue of named failure modes (e.g. "AI CoE Trap", "Vault Theatre", "SBOM Shelfware") — returns where each pattern appears, why it's harmful, what to do instead, and diagnostic "tells" to surface it in real architectures.crosswalk: Map requirements from one framework (e.g. EU AI Act) to equivalents in others (NIST AI RMF, ISO 42001, AU AI Safety Standard, GDPR, etc.) with overlap classifications (FULL/PARTIAL/NEW), so work done for one framework counts toward others.walk_playbook: Step through structured 12-week/90-day implementation playbooks (EU AI Act readiness, CISA Secure Software Attestation, Cloud FinOps maturity, or migrating to OIDC workload identity) week-by-week or gate-by-gate.classify_use_case: Classify an AI use case under the EU AI Act (Annex III + Article 5) and optionally the AU AI Safety Standard — returns risk tier, applicable obligations, enforcement dates, and recommended next steps.list_regulations: List all regulations covered by the dataset, filterable by jurisdiction (AU/EU/US/INTL), with slugs ready to use in other tool calls.
Provides tools for looking up AI controls from 28 global regulations, retrieving anti-patterns, crosswalking between frameworks, walking through playbooks, classifying use cases, and listing regulations.
mcp-regulated-ai-compliance
A Model Context Protocol server exposing the regulated-industry AI compliance knowledge from hellouchit.com as tools, resources, and prompts callable from any MCP-compatible AI client — Claude Desktop, Cursor, Zed, Windsurf, OpenAI ChatGPT, Continue, Cline, and ~40 other clients.
Free + open-source (Apache 2.0, dataset CC BY 4.0). Built by Uchit Vyas.
Disclaimer: This is a personal, open-source, non-commercial project. Views are my own. It is not affiliated with, endorsed by, or representative of my employer.
Why this exists
The OpenAI GPT Store hosts the EU AI Act and AU AI Safety Standard coaches as ChatGPT-only assets. The Claude Project equivalents are private to each user's Claude Pro account (no public sharing). Neither reaches the practitioners who work primarily inside Cursor, Zed, Continue, Cline, or the Claude API directly.
An MCP server is the only Claude-side asset that is genuinely shareable + multi-client. It surfaces the same dataset, anti-patterns, decision trees, and classification logic — but as tools any AI agent in any compatible client can call. One published server → 40+ client surfaces → the practitioner who never opens ChatGPT or claude.ai still ends up citing your work.
Related MCP server: EU AI Act Compliance MCP
What's in this folder
mcp-regulated-ai-compliance/
├── README.md ← you are here
├── scope/ ← the design docs (read FIRST)
│ ├── 00-product-brief.md What this is + who it's for
│ ├── 01-architecture.md System design + transport choices
│ ├── 02-tools-spec.md The 10 tools the server exposes
│ ├── 03-resources-spec.md The resources + prompts
│ ├── 04-distribution-strategy.md Where to list + how to get installs
│ └── 05-build-roadmap.md v0.1 → v1.0 in 4 phases
├── src/
│ ├── index.ts ← MCP server entry point (working stub)
│ ├── tools/ ← one file per tool
│ │ └── lookup-control.ts ← FULLY IMPLEMENTED as reference
│ ├── resources/ ← one file per resource type
│ ├── prompts/ ← pre-built prompt templates
│ ├── data/ ← embedded knowledge (dataset, anti-patterns, playbooks)
│ │ ├── dataset.json ← 56 controls × 28 regulations × 261 tools
│ │ ├── dataset.csv ← same data, CSV format
│ │ ├── anti-patterns.md ← 15 named failure modes
│ │ └── playbooks/ ← 90-day playbooks
│ └── lib/
├── docs/
│ └── install/ ← per-client install guides
├── examples/ ← sample conversations / use-cases
├── tests/
├── package.json ← npm config (working)
├── tsconfig.json ← TypeScript config
├── LICENSE ← Apache 2.0 (code) + CC BY 4.0 (dataset)
├── .gitignore
└── .github/workflows/ ← CI: build + publish to npmStatus — v0.2.1 shipped 2026-05-29
v0.2.1 = data-source abstraction so the same codebase runs on Node (stdio, node:http) AND on Cloudflare Workers / Deno Deploy / Vercel Edge. See
worker/for the Cloudflare scaffold.
👁 CI
👁 npm version
👁 npm downloads
👁 License: Apache 2.0
👁 Provenance
👁 MCP Registry
👁 Glama MCP score
Phase | Status |
Phase 0 — Scope + skeleton | ✅ done |
Phase 1 — Working server + reference tool | ✅ done |
Phase 2 — 6 core tools | ✅ done |
Phase 3 — 4 resource providers + 5 prompts | ✅ done |
Phase 4 — npm publish + directory submissions | ✅ done |
Phase 5 — HTTP transport + 4 playbooks + parser | ✅ done (v0.2.0) |
v0.2.0 ships with
Streamable HTTP transport —
npx mcp-regulated-ai-compliance-httpboots a Node HTTP server on port 3000 (configurable) at/mcp. Unlocks Smithery, ChatGPT MCP directory, browser-based clients, and any platform that prefers HTTP over stdio. Stateless by default; setMCP_STATEFUL=truefor per-session UUIDs.All 4 playbooks fully structured — markdown parser extracts 12-week / 12-gate / phase / anti-pattern / source-URL data:
eu-ai-act-12-weeks— Piloting → Articles 9-15 ready by 2 Aug 2026cisa-attestation-90-days— Federal contractor SSDF + Common Form 3201-NEWcloud-cost-aware-to-controlled— FinOps Aware → Controlled (AWS / Azure / GCP)vault-theatre-to-workload-identity— Long-lived creds → OIDC federation
6 tools —
lookup_control·get_anti_pattern·crosswalk·walk_playbook·classify_use_case·list_regulations4 resource providers (56 URIs) — full dataset (+ by-regulation + by-category), 15 anti-patterns (bundled + per-slug), 4 playbooks, the 20-entry crosswalk matrix
5 prompts —
eu-ai-act-classify·au-ai-safety-walkthrough·crosswalk-frameworks·playbook-week·anti-pattern-diagnosticEmbedded knowledge — 56 controls × 28 regulations × 261 tools, 15 named anti-patterns, 4 × 12-week playbooks, 20 crosswalks
CI + tests — GitHub Actions on Node 22 + 24, 24/24 unit tests, automated
npm publish --provenanceon version tag (sigstore-anchored)
Where you can find it
Channel | Status |
npm | |
Official MCP Registry | ✅ |
Glama | ✅ verified |
mcp.so | ⏳ awaiting review |
PulseMCP | ⏳ auto-pulls from Official Registry (~24h) |
awesome-mcp-servers (Security) | ⏳ PR #7084 |
Hosted endpoint | ✅ https://mcp.hellouchit.com/mcp (Cloudflare Worker · stateless) |
Smithery |
See scope/05-build-roadmap.md for the v0.2+ roadmap.
Quick install
For Claude Desktop:
# In your Claude Desktop config file (~/Library/Application Support/Claude/claude_desktop_config.json):
{
"mcpServers": {
"regulated-ai-compliance": {
"command": "npx",
"args": ["-y", "@hellouchit/mcp-regulated-ai-compliance"]
}
}
}Then restart Claude Desktop → you'll see new tools available: lookup_control, classify_use_case, get_anti_pattern, etc.
Regulation slugs (use these exact values in tool arguments)
eu_ai_act · cps234 · cps230 · soci · ai_safety_au · privacy_au · e8 · irap · dora · nis2 · gdpr · circia · hipaa · fda_samd · cisa_ssa · ssdf · ai_rmf · sp80053 · iso42001 · iso27001 · slsa · owasp_llm · atlas · bcbs239 · pci · iec62443 · iso13485 · iec62304
Local development
npm install
npm run build
npm run dev # runs server in dev mode (stdio transport)
npm test # runs the test suiteSee scope/01-architecture.md for the dev-loop details.
License
Code: Apache 2.0. Patent grant included. Dataset (regulations × controls × tooling, anti-patterns, playbooks, crosswalks): CC BY 4.0 — attribution to hellouchit.com required.
This is a personal, non-commercial project shared for the community. Contributions and issues are welcome on GitHub.
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