insight-mcp
Enables hybrid document search (BM25 and dense) over a configurable corpus via MCP tools, returning passages and sources for AI agents to cite in answers.
README
insight-mcp
Self-contained MCP (Model Context Protocol) server exposing hybrid document search as tools for AI agents (Claude Code, Claude Desktop, Anthropic API).
The server does retrieval only (BM25, then hybrid): it returns passages, scores and sources — the MCP client (the LLM) writes the cited answer. No inference cost, no API key on the server side.
Works out of the box: on first start, if no corpus exists, the server seeds a
small bundled demo corpus (original texts, committed with the repo) so the tools
answer immediately — no network, no ingestion step. Index a real corpus whenever
you want with scripts/ingest.py (URL list or sitemap, fully configurable).
Features
- 3 tools (
search_publications,get_publication,list_topics), 2 MCP resources, 1 grounded-answer prompt - Two search modes: BM25 (default, zero deps) or hybrid BM25 + dense
embeddings fused with Reciprocal Rank Fusion (
pip install .[hybrid]) - Two transports: stdio (local clients) and Streamable HTTP (remote, :8020)
- MCPOps built in: structured JSON logs, Prometheus metrics per tool
(
/metrics), bearer auth, per-token rate limiting, Docker, CI/CD
Architecture
MCP client (Claude Code / Desktop / API) ← the client GENERATES (cited answers)
│ stdio / Streamable HTTP (:8020, phase 3)
▼
insight-mcp (FastMCP)
│ local index: BM25 (+ dense, phase 2), SQLite
▼
data/ (gitignored) ← scripts/ingest.py ← public URLs (configurable corpus)
The corpus is configurable (URL list / sitemap). Indexed content is never committed — the repo ships code and seed URLs only. Ingestion is polite: robots.txt honored, identifiable User-Agent, ~1 req/s, disk cache.
Tools
| Tool | Arguments | Returns |
|---|---|---|
search_publications |
query, top_k=5 |
most relevant passages + relevance scores + source (title, url, date) |
get_publication |
doc_id |
full text + metadata of one publication |
list_topics |
— | corpus overview: counts + every publication's id/title/date/url |
Also exposed over MCP: resources corpus://stats and corpus://health, and the
grounded_answer prompt (answer only from retrieved passages, cite title + url).
Search modes
| Mode | How | When |
|---|---|---|
bm25 (default) |
lexical, pure Python, zero extra deps | exact terms, acronyms, product names |
hybrid |
BM25 + dense embeddings (fastembed, ONNX — no torch), fused with Reciprocal Rank Fusion | paraphrased questions that share few words with the text |
pip install -e ".[hybrid]"
# .env: SEARCH_MODE=hybrid (first run downloads the ONNX model, ~30 MB)
Example on the demo corpus: for "zero trust identity strategy" both modes rank the Continuous Identity publication first, but hybrid also surfaces the digital wallets & IAM publication — no shared keywords, pure semantic match. Trade-off: hybrid adds model load at startup and an embedding pass per query; BM25 stays dependency-free and instant.
Quick start
python -m venv .venv
.venv\Scripts\Activate.ps1
pip install -e .
python -m insight_mcp.server # works immediately (bundled demo corpus)
Index a real corpus (optional)
# From the seed URL list (scripts/seed_urls_wavestone.txt by default):
python scripts/ingest.py
# Or any corpus from a sitemap:
python scripts/ingest.py --sitemap https://example.com/sitemap.xml --filter=/blog/ --max-docs 50
Ingestion is polite (robots.txt, identifiable User-Agent, ~1 req/s, disk cache)
and the downloaded content stays in data/ — never committed.
Plug into Claude Code
claude mcp add insight -- <absolute-path-to>\.venv\Scripts\python.exe -m insight_mcp.server
Then ask e.g. "What does this corpus say about AI agents in the enterprise?" —
Claude calls search_publications and answers with cited sources.
Plug into Claude Desktop
claude_desktop_config.json (Settings → Developer → Edit Config):
{
"mcpServers": {
"insight": {
"command": "C:\\path\\to\\insight-mcp\\.venv\\Scripts\\python.exe",
"args": ["-m", "insight_mcp.server"]
}
}
}
Use the venv's absolute python path — Claude Desktop spawns the server itself and does not activate virtualenvs.
Demo scenario
- Ingest the demo corpus (
python scripts/ingest.py), plug into Claude Code or Desktop. - Ask: "According to the indexed publications, how should companies govern autonomous AI agents? Cite your sources."
- Claude calls
search_publications, then answers with passages cited as title (url) — every claim traceable to a public publication.
Inspect without a client
npx @modelcontextprotocol/inspector python -m insight_mcp.server
Every tool call is logged as structured JSON on stderr (tool, duration ms, status, response size) — stdout stays clean for the stdio transport.
Remote (Streamable HTTP)
# .env: MCP_AUTH_TOKEN=<strong-secret> ('changeme' is refused)
python -m insight_mcp.server --http # serves http://0.0.0.0:8020/mcp
Requests to /mcp without Authorization: Bearer <token> get 401. The token
is compared constant-time and never logged. A static bearer token fits a demo
deployment; OAuth 2.1 via the MCP SDK's auth hooks is the documented next step.
Docker
docker compose up --build
# or bare:
docker run -p 8020:8020 -e MCP_AUTH_TOKEN=<secret> -v ${PWD}/data:/app/data insight-mcp
The image contains code only — never the corpus (indexed third-party
content is not redistributed). Provide data at runtime: mount data/ as a
volume, or set INGEST_ON_BOOT=1 to build the index from the seed URLs when
the container starts.
Consume from the Anthropic API (MCP connector)
Once deployed behind HTTPS, any Claude API call can use the server directly — no MCP client needed:
python scripts/demo_mcp_connector.py --url https://<host>/mcp --token <secret>
Uses the mcp-client-2025-11-20 beta: the request declares the server under
mcp_servers and enables its tools with an mcp_toolset entry.
MCPOps
Operating the server is part of the design, not an afterthought:
| Concern | Implementation |
|---|---|
| Logging | one JSON line per tool call on stderr: tool, duration ms, status, response size (Authorization never logged) |
| Metrics | Prometheus at /metrics: mcp_tool_calls_total{tool,status}, mcp_tool_duration_seconds{tool} histogram |
| Auth | constant-time bearer token on /mcp; weak defaults refused at startup |
| Rate limiting | sliding window per token (RATE_LIMIT_PER_MINUTE, default 60; in-memory — Redis is the multi-replica evolution) |
| Health | corpus://health MCP resource + open /metrics for probes |
| CI/CD | ruff + pytest on 3.11/3.12 + Docker build on every push; GHCR publish on version tags |
Corpus & content rights
Indexed third-party content is never committed and never baked into a Docker
image — the repo ships code, seed URLs, and a small bundled demo corpus of
original texts. See docs/architecture.md for the full decision log.
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