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DongneSOS

БесплатноНе проверен

Helps users prepare Korean neighborhood inconvenience reports by classifying issues, explaining evidence, and drafting neutral reports without submitting them.

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Описание

Helps users prepare Korean neighborhood inconvenience reports by classifying issues, explaining evidence, and drafting neutral reports without submitting them.

README

동네SOS / 이거 어디에 말해? PlayMCP candidate implementation.

This server helps a user prepare a civic inconvenience report without doing the reporting for them. It classifies a Korean neighborhood issue, explains what evidence to prepare, and drafts a neutral copy/paste report. It never submits a report, logs in, reads KakaoTalk, collects precise location, uploads photos, or calls external government APIs.

DongneSOS is not meant to replace search by summarizing web pages. Its service value is that it turns a messy local problem into an action package: official type, likely channel family, evidence checklist, privacy-safe official/public text split, neutral wording, and next action. Search gives pages; DongneSOS gives the next safe action.

MCP Tools

  • classify_civic_issue: classifies the issue into the fixed 28-item taxonomy, routes it to a channel family, and returns the canonical Pro Chat output fields: result_type, priority, routing, source_basis, action_card, draft_policy, and errors.
  • draft_civic_report: creates a neutral report preparation draft for non-emergency cases only.

The server intentionally exposes exactly those two tools. Both tools declare MCP inputSchema and outputSchema; the HTTP smoke verifies those schemas are visible in tools/list.

Safety Boundaries

  • Emergency or immediate-danger inputs return emergency_redirect or blocked_emergency; draft generation is blocked.
  • PII-like text is masked before draft output.
  • Defamation, punishment demands, and legal certainty phrases are neutralized.
  • Channel routing is advisory. Users must verify the real local government channel before submitting.
  • presentation_mock is a lightweight ChatGPT card shape, not a dependency on Kakao Widget APIs.

Local Run

npm install
npm run check
npm run smoke:http
npm run smoke:dist
npm run dev -- --host 127.0.0.1 --port 3000

After npm run build, production start uses:

npm start

Container build:

docker build -t dongnesos-mcp .
docker run --rm -p 3000:3000 dongnesos-mcp

PlayMCP in KC image builds require linux/amd64, including on Apple Silicon:

npm run image:build:amd64
npm run image:push:playmcp

npm run image:push:playmcp is a dry-run by default. It only pushes after external image publication is approved and the command is run with DRY_RUN=0 CONFIRM_EXTERNAL_IMAGE_PUSH=1.

Container release smoke:

npm run smoke:docker
npm run preflight:release
npm run package:deploy
npm run verify:bundle
npm run evidence:submission

Endpoints:

  • GET /healthz
  • POST /mcp

Verification

npm run validate:data
npm run scan:policy
npm test
npm run build
npm run smoke:http
npm run smoke:dist
npm run smoke:docker
npm run preflight:release
npm run package:deploy
npm run verify:bundle
npm run evidence:submission

After deployment, verify the public endpoint and write review evidence:

MCP_URL=https://<kakao-cloud-endpoint>/mcp \
EVIDENCE_OUT=deploy/playmcp/evidence/remote-smoke.json \
npm run smoke:endpoint

The current acceptance target is 72 passing tests plus the HTTP MCP smoke covering tools/list schemas, classify_civic_issue, and draft_civic_report. Source-card acceptance validates that classify_civic_issue returns official source-card matches plus a compact action card for evidence capture and public-sharing limits.

For the review narrative and sample cases, see DEMO_SCRIPT.md.

For actual-use verification steps and the future 이웃 도움 교류 expansion design, see docs/actual-use-and-neighbor-help-design.md.

For the product differentiation against ordinary search, see docs/search-vs-dongnesos-service-value-20260625.md. The initial official source-card corpus lives in data/source_cards.json and is validated by npm run validate:data; runtime matching lives in src/core/sourceCards.ts.

For owner approval and external deployment stop rules, see deploy/playmcp/owner-approval-packet.md.

For the contest path, deploy through PlayMCP in KC first, copy its Endpoint URL, then temporarily register that endpoint in the PlayMCP developer console. See deploy/playmcp/playmcp-in-kc-registration.md for the exact field mapping.

For a clean source bundle that excludes node_modules, dist, and local evidence files, run npm run package:deploy and use the tarball under deploy/playmcp/package/.

To prove the latest tarball works from a clean extraction, run npm run verify:bundle.

After local or remote smoke runs, npm run evidence:submission writes a review-ready evidence draft to deploy/playmcp/evidence/submission-evidence.generated.md.

from github.com/kjessie00/dongnesos-mcp

Установка DongneSOS

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/kjessie00/dongnesos-mcp

FAQ

DongneSOS MCP бесплатный?

Да, DongneSOS MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для DongneSOS?

Нет, DongneSOS работает без API-ключей и переменных окружения.

DongneSOS — hosted или self-hosted?

Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.

Как установить DongneSOS в Claude Desktop, Claude Code или Cursor?

Открой DongneSOS 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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