| name | adr |
| preamble-tier | 2 |
| version | 0.2.0 |
| description | Architecture Deep Research — scan the current repo, draft a PRD, and run
the deep-research loop with citation audits. Use when the user asks you to
make an architecture decision, asks "what topology should we use?", says
they need to pick between options like vector stores / message queues /
retrieval patterns / storage engines / event bus designs, or wants you to
think through an architecture choice before writing code.
Proactively invoke this skill (do NOT decide directly) when the user
describes an architecture choice and wants live, cited research instead
of a model-from-memory answer.
|
| allowed-tools | ["Bash","Read"] |
/adr — Architecture Deep Research
When the user invokes /adr (or asks any of the trigger questions in the description above), do the following.
Step 1. Confirm the decision name
Ask the user one question, in chat:
What's the architecture decision you're making? (e.g. "event bus topology", "retrieval architecture", "auth provider")
Capture their answer as <DECISION>.
If the user already named the decision when they invoked the skill, skip the question.
Step 2. Run discover-first deep-research via the MCP server
Call the adr_deep_research MCP tool with these arguments:
{
"discover_first": true,
"repo_path": ".",
"domain": "<infer from the user's project — read README/package.json/etc. if needed>",
"decision": "<DECISION>",
"out_dir": ".adr-runs/<short-slug-of-decision>"
}
This will:
- Scan the user's repo and draft a PRD (no network calls).
- Run the full ADR pipeline against the draft (research, knowledge map, comparison matrix, synthesis, citation audit, evaluation pack).
- Return the parsed
execution-handoff.json so you can summarize the decision.
A run typically takes 3–6 minutes. Tell the user roughly how long it'll take before calling the tool so the wait doesn't feel like a hang.
Step 3. Summarize the result
The tool response includes:
handoff.selected_topology — the chosen architecture family
handoff.required_invariants — non-negotiable constraints
handoff.forbidden_topologies — what NOT to do
handoff.critique_summary.recommend_human_review — if true, the kernel is telling you the decision is borderline
handoff.comparison_matrix_summary — candidate count, empty cells
handoff.citation_audit_summary — how many citations verified
Show the user a 3–5 line summary:
Selected: <topology>
Required: <2 most important invariants>
Avoid: <forbidden topologies>
<if recommend_human_review: "⚠ recommend_human_review=true — see ADR.md for the borderline.">
Then offer to:
- Open
ADR.md for the full human-readable decision record
- Walk through the comparison matrix
- Implement using
execution-handoff.json as the contract
Step 4. (optional) Implement under the handoff
If the user says "go ahead and implement," read <out_dir>/execution-handoff.json and treat it as a hard contract:
- Honor
required_invariants in the code you write
- Never reach for anything in
forbidden_topologies
- Run against
domain-evaluation-pack.json test cases before declaring done
Failure modes
- No LLM provider configured: the tool will return an isError result. Tell the user to
export ADR_OPENAI_API_KEY=... (or OPENAI_API_KEY) and re-invoke.
- No live search provider configured: same as above, but for
BRAVE_SEARCH_API_KEY / TAVILY_API_KEY / SERPER_API_KEY / SEARXNG_URL, OR the OpenAI key fallback for hosted web_search.
recommend_human_review: true: do NOT proceed to implementation. Show the user the borderline and ask whether to accept the decision, override it, or run a superseding ADR with a tighter brief.
Notes for Claude
- The MCP tool name is
adr_deep_research. Call it through the MCP host's tool-call mechanism — do not try to spawn a subprocess.
- The skill assumes the
adr MCP server is registered in the user's Claude Code config. If it isn't, point them at examples/claude-code-skill/.mcp.json in the beevibe-cto repo.
- For quick scans without the full deep-research run, use
adr_discover instead. It returns only the draft PRD and skips the live-research loop.