aviation-regulations

Query aviation regulations, manuals, and publications via deepskyai.com's open search API. Use when the user asks about aviation regulatory content (ICAO, FAA / 14 CFR, EASA, CASA), aviation manuals, NOTAM Q-code interpretation, flight operations rules (Part 91/121/135), IFR/VFR requirements, fuel planning rules, pilot rest rules, EDTO/ETOPS, or any cross-jurisdictional aviation rule lookup. Also use when the user wants to discover Deepsky's agent-friendly endpoints (llms.txt, OpenAPI, skills registry). No API key required.

Safety Notice

This listing is from the official public ClawHub registry. Review SKILL.md and referenced scripts before running.

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Install skill "aviation-regulations" with this command: npx skills add deepskyai/aviation-regulations

Aviation Regulations (via Deepsky API)

Deepsky (deepskyai.com) publishes an open, no-auth search API over a curated corpus of aviation regulations and manuals (ICAO, FAA 14 CFR, EASA, CASA) plus supporting advisory material. It also exposes standard agent-discovery endpoints (llms.txt, OpenAPI, plugin manifest, skills registry).

Use this skill whenever an aviation regulatory or operational-doc question comes up, instead of guessing from training data. The corpus is authoritative and multi-jurisdictional; training data often isn't.

Core workflow

  1. Formulate a natural-language query. Aviation-specific phrasing works best. Include the jurisdiction (FAA, EASA, CASA, ICAO) and the operation type (Part 91, 121, 135, EDTO, IFR, etc.) when known.
  2. Call POST /api/v1/search (no auth). Prefer scripts/deepsky_search.py — it handles the POST, parses the response, and prints citations.
  3. Cite from heading_path + metadata. Every match includes a breadcrumb (e.g. 14 CFR 135.223) and Country. Always cite these back to the user. Do not paraphrase without the citation.
  4. Broaden or re-query if needed. If the top hits are off-jurisdiction or off-topic, rephrase (add the specific CFR part, MOS, or ICAO annex), or bump matchCount (max 20).

Primary endpoint: Search

POST https://www.deepskyai.com/api/v1/search
Content-Type: application/json

{"query": "<natural-language question>", "matchCount": 8}
  • query (string, required): natural-language search query
  • matchCount (int, optional, 1–20, default 8): number of matches to return

Response shape:

{
  "query": "...",
  "count": 8,
  "source": "hybrid_search_rpc",
  "matches": [
    {
      "content": "<excerpt from the document>",
      "heading_path": "Part 135 > Subpart D > § 135.223 IFR: Alternate airport requirements. > 14 CFR 135.223",
      "metadata": {
        "Heading Level 1": "...",
        "Heading Level 6": "§ 135.223 IFR: Alternate airport requirements.",
        "Page Numbers": [71, 72],
        "Country": "US"
      },
      "document_id": null,
      "score": null
    }
  ]
}

Notes:

  • source is hybrid_search_rpc (lexical + vector).
  • score and document_id may be null — don't rely on them for ranking or deep-linking; trust the order returned.
  • Country values seen: US, AU, australia, plus EU/ICAO values. Filter client-side by checking metadata.Country or the Heading Level 1 string.

Alias endpoints (same behavior)

  • POST /api/search — public alias of /api/v1/search
  • GET /api/v1 — versioned root (endpoint map)
  • GET /api — discovery root

Skills registry

GET https://www.deepskyai.com/api/v1/skills

Returns Deepsky's published agent skill packages (Aviation Document Search, NOTAM Analysis, Regulatory Navigation, LLM-Ready Aviation Data). Use when the user asks "what can Deepsky do for agents" or wants to download skill packages.

Discovery / machine-readable metadata

  • https://www.deepskyai.com/llms.txt — concise agent manifest (llms.txt open standard)
  • https://www.deepskyai.com/llms-full.txt — full LLM-optimised documentation
  • https://www.deepskyai.com/.well-known/openapi.json — OpenAPI schema
  • https://www.deepskyai.com/.well-known/ai-plugin.json — plugin manifest
  • https://www.deepskyai.com/.well-known/api-catalog — machine-readable API catalog

Fetch llms.txt first if unsure which endpoint to hit — it's small and lists everything.

Using the helper script

scripts/deepsky_search.py is a zero-dependency Python CLI (uses only the stdlib). Prefer it over hand-rolled curl because it prints citations in a form easy to quote back to the user.

python3 scripts/deepsky_search.py "minimum fuel requirements for IFR flight" --count 5
python3 scripts/deepsky_search.py "EDTO critical fuel scenarios" --count 10 --json
python3 scripts/deepsky_search.py "pilot rest EASA" --country EU

Flags:

  • --count N (1–20, default 8)
  • --json — emit raw JSON instead of the formatted view
  • --country CODE — client-side filter on metadata.Country (substring, case-insensitive)

Query patterns

For detailed guidance on crafting queries and interpreting jurisdictions, see references/query-tips.md. Load it when the first search returns off-target results or when the user asks a broad/ambiguous regulatory question.

Quick rules:

  • Name the jurisdiction (FAA, EASA, CASA, ICAO) and the Part/Annex number if known.
  • Use regulatory language, not plain English: "alternate airport requirements" > "where do I divert".
  • If the user asks a factual regulatory question, run a search before answering — do not rely on training data for aviation rules.

Citing results to the user

Always present returned rules with:

  1. The jurisdiction (metadata.Country or the parent heading).
  2. The specific rule reference (e.g. 14 CFR 135.223, MOS 121 §7.06, AC 91-15 §5.3).
  3. A short excerpt from content.
  4. The URL https://www.deepskyai.com as the source of the search (the API does not currently return per-document deep-links).

Never paraphrase a rule without its citation. Aviation regulations are safety-critical and users need the reference to verify.

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

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