Rag
БесплатноНе проверенEnables semantic search and question answering over a knowledge base using hybrid retrieval and grounded answers, all running offline with no API keys.
Описание
Enables semantic search and question answering over a knowledge base using hybrid retrieval and grounded answers, all running offline with no API keys.
README
A semantic Retrieval-Augmented Generation engine, exposed as an MCP server so any MCP client (Claude Desktop, an IDE agent, …) can search and question a knowledge base as a native tool.
documents ─▶ chunk ─▶ embed ─▶ index ─┐
├─▶ hybrid retrieval ─▶ grounded answer
query ─────────────────────────────────┘ (semantic + BM25, with citations
fused by RRF) │
▼
MCP server ─▶ any MCP client
The whole thing runs offline out of the box — local LSA embeddings + an extractive, citation-grounded answerer — with zero API keys or model downloads. Production backends (Voyage / OpenAI / sentence-transformers for embeddings, Anthropic / OpenAI for generation) are a one-line config switch.
Demo corpus: a self-contained fictional SaaS knowledge base ("Nimbus" — a cloud data platform): authentication, billing, rate limits, data retention, security, incident runbook, webhooks, SDK. Nothing copyrighted; every answer is traceable to a source.
What it does
Ask a question phrased in your own words and get an answer grounded in the docs:
$ python scripts/demo_query.py "what happens if I go over my included usage?"
A: When you exceed your included quota, Nimbus does not cut off your service;
instead, additional usage is billed as overage at the metered rate
($0.50 per extra 10k calls, $0.10 per extra GB). [1]
Sources:
[1] billing.md — Billing and quotas
Note there's no keyword overlap between "go over my included usage" and "exceed your quota / overage" — that match is semantic, which is the point.
MCP tools exposed
| Tool | Purpose |
|---|---|
search_documents(query, top_k, method) |
Return the most relevant passages (semantic / lexical / hybrid). |
answer_question(question, top_k) |
A grounded answer with citations. |
list_sources() |
Documents currently indexed. |
get_stats() |
Index size + active backends. |
Verified end-to-end over the real MCP stdio protocol (see tests/). Register it
in a client with mcp.json.
Retrieval ablation (computed by make eval)
17 gold questions, deliberately paraphrased away from the documents' wording.
hit@k = correct document in the top-k; MRR = how highly it's ranked.
| Method | hit@4 | MRR |
|---|---|---|
| Lexical (BM25) | 0.941 | 0.873 |
| Semantic (LSA) | 0.941 | 0.912 |
| Hybrid (RRF fusion) | 0.941 | 0.941 |
All three usually find the right document on this clean corpus, but hybrid ranks it highest most consistently — fusing dense (semantic) and sparse (keyword) retrieval is a tuning-free win, and the paraphrased questions are exactly where pure keyword search ranks worse.
With a neural embedding backend (Voyage/OpenAI/ST) on a larger, noisier corpus the gap between lexical and semantic widens further; the local LSA backend keeps the demo runnable anywhere while preserving the same ranking behaviour.
Quickstart
pip install -r requirements.txt && pip install -e .
make demo # ask a question from the CLI
make eval # retrieval ablation → reports/eval_results.json
make server # run the MCP server (stdio)
make test # 10 tests, incl. an end-to-end MCP protocol check
Use it from Claude Desktop
Copy mcp.json into your client config (set the absolute cwd), restart the
client, and the four tools appear. Ask "search the Nimbus docs for how failover
works" and the model calls search_documents / answer_question.
Switch to production backends
pip install -r requirements-prod.txt
export MCPRAG_EMBEDDING_BACKEND=voyage VOYAGE_API_KEY=...
export MCPRAG_GENERATOR_BACKEND=anthropic ANTHROPIC_API_KEY=...
No code changes — the retriever and server are backend-agnostic.
Layout
src/mcprag/
ingest.py markdown loading + section-aware chunking w/ overlap
embeddings/ Embedder protocol · local LSA (offline) · neural backends
index/vector_store.py cosine + BM25 + hybrid RRF retrieval
generator/ extractive (offline, cited) · LLM backends
rag.py RAGEngine (ingest→embed→index→retrieve→generate)
evaluation.py hit@k / MRR
server.py FastMCP server exposing the tools
data/corpus/ the Nimbus knowledge base (8 markdown docs)
eval/qa_gold.json paraphrased gold questions
scripts/ demo_query · run_eval
tests/ retrieval, answers, evaluation, MCP protocol
Design notes
- Grounded by construction. The offline generator only emits sentences taken verbatim from retrieved chunks, each with a citation — it cannot hallucinate.
- Hybrid retrieval. Reciprocal Rank Fusion of dense + sparse rankings needs no weight tuning and is robust across query types.
- Backend-agnostic. Embeddings and generation are pluggable Protocols; offline and production share identical retrieval/serving code.
See docs/ARCHITECTURE.md, docs/RESULTS.md, and docs/IMPROVEMENTS.md.
Tech stack
Python · MCP SDK (FastMCP) · scikit-learn (TF-IDF + LSA) · rank_bm25 · numpy · pydantic. Optional: Voyage / OpenAI / sentence-transformers / Anthropic.
License
MIT. The demo corpus is fictional.
Установка Rag
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/elhassane1230/mcp-ragFAQ
Rag MCP бесплатный?
Да, Rag MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Rag?
Нет, Rag работает без API-ключей и переменных окружения.
Rag — hosted или self-hosted?
Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.
Как установить Rag в Claude Desktop, Claude Code или Cursor?
Открой Rag 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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