Ddq
БесплатноНе проверенEnables AI coding agents to retrieve QA cases from a curated knowledge base grounded in real bugs, supporting symptom search and feature-wide coverage for test
Описание
Enables AI coding agents to retrieve QA cases from a curated knowledge base grounded in real bugs, supporting symptom search and feature-wide coverage for test planning.
README
An MCP server that turns real bug reports and QA experience into a searchable knowledge base, so your AI coding agent can plan QA the way an experienced QA engineer would — grounded in what actually breaks, not made-up checklists.
DDQ ships a curated QA knowledge base (real, bug-derived checkpoints tagged by domain / feature / failure type) and exposes it over the Model Context Protocol. Your agent (Claude Code, Cursor, …) calls DDQ's tools to retrieve the right QA cases, then does the reasoning — planning tests, writing scenarios, summarizing results — itself.
Why DDQ
- Grounded, not hallucinated. Cases come from real bugs and QA experience, rewritten as reusable checkpoints (reproduction, expected result, how to verify).
- Two retrieval modes, because "QA this login screen" and "the button is broken on mobile" are different requests (see Tools).
- Cost-zero by design. Embeddings run on a local, quantized multilingual model — no embedding API bill. The expensive LLM reasoning stays in your agent, which you already pay for. The DDQ server only does retrieval.
- No auth. The knowledge base is public shared knowledge, so there's no OAuth or token to manage — just a URL.
How it works
QA case Markdown (cases/*.md)
→ local embedding (multilingual, q8) → in-memory vector index
Your agent asks "QA this login flow"
→ DDQ returns the relevant cases (similar search OR feature coverage)
→ your agent writes the test plan / scenarios from that grounding
Installation
Remote (hosted) — nothing to download
DDQ runs at https://mcp.nogglee.com/mcp (Streamable HTTP). Add it to your
agent and you're done — the knowledge base lives on the server and is always
up to date.
Claude Code
claude mcp add --transport http --scope user ddq https://mcp.nogglee.com/mcp
Cursor / generic MCP config
{
"mcpServers": {
"ddq": {
"type": "http",
"url": "https://mcp.nogglee.com/mcp"
}
}
}
Local (stdio) — run it yourself
Fully offline, zero cost, private. Requires Node.js ≥ 20 and pnpm.
git clone https://github.com/nogglee-crew/domain-driven-qa.git
cd domain-driven-qa
pnpm install
pnpm build
claude mcp add ddq -- node "$(pwd)/dist/mcp/stdio.js"
The local server indexes cases/ on startup (downloads the embedding model once).
Tools
DDQ splits QA requests into two modes, plus a lookup:
search_qa_cases — symptom / similar search
For bug-shaped requests. Returns the top-k QA cases most similar to a natural language query (Korean and English both work).
{
"query": "the login button doesn't respond on mobile",
"topK": 5,
// optional tag filters:
"domain": "auth", "feature": "login",
"environment": ["mobile", "safari"], "severity": "high"
}
get_coverage_context — feature-wide QA coverage
For "QA this whole feature" requests (e.g. "QA the login flow"). Instead of a
few similar hits, it returns all cases for a domain/feature, grouped by
risk area (failure_type), and lists which risk areas have no cases yet
so your agent can fill the gaps from its own knowledge.
{ "domain": "auth", "feature": "login" } // feature optional → whole domain
Returns a coverage map (risk areas → cases), the KB gaps, and each case's full checkpoints — enough to write a complete test plan in one call.
get_qa_case — fetch one case
{ "id": "auth-login-rate-limit-002" }
QA case format
Each case is a Markdown file with YAML frontmatter (multi-axis tags) and a body of checkpoints / reproduction / expected result / how-to-verify:
---
id: auth-login-rate-limit-002
title: Login allows unlimited password attempts (no rate limiting)
domain: auth # auth | ecommerce | booking | payment | admin | content
feature: login
action: submit
environment: [desktop, chrome]
failure_type: [permission, network] # validation | race_condition | timezone
# | cache | permission | layout | input | network
severity: high # low | medium | high | critical
source: github_issue # github_issue | postmortem | manual_checklist | user_report
test_type: [e2e, regression]
---
## 체크포인트
- ...
## 재현 조건
- ...
## 기대 결과
- ...
## 확인 방법
- ...
The current knowledge base covers the auth domain (login / signup / logout / password reset).
Contributing
Add a cases/<id>.md file and open a PR — see CONTRIBUTING.md
for the full guide. In short:
- Rewrite raw bug reports as reusable QA checkpoints, not copies of the issue.
- Always include reproduction conditions, expected result, and how to verify.
- Never include sensitive/customer data. Anonymize and generalize.
- Cases can also be QA methodologies (
testing_principle) or test-generation rules (scenario_rule) — the agent reads these and applies them when planning.
Roadmap
risk_areaas a first-class axis (e.g. security, session) abovefailure_type.- More domains (payment, booking) and deeper auth coverage.
- Local-mode execution tools —
run_tests/save_reportvia Playwright. These belong to the local (stdio) server, since a remote server cannot reach yourlocalhostapp under test.
License
MIT © NOGGLEE CREW
Установка Ddq
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/nogglee-crew/domain-driven-qaFAQ
Ddq MCP бесплатный?
Да, Ddq MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Ddq?
Нет, Ddq работает без API-ключей и переменных окружения.
Ddq — hosted или self-hosted?
Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.
Как установить Ddq в Claude Desktop, Claude Code или Cursor?
Открой Ddq на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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