MinerU Document Explorer
OfficialClick on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@MinerU Document Explorersearch my PDFs for machine learning basics"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
🤔 Why MinerU Document Explorer?
MinerU Document Explorer equips your agent with three tool suites — Retrieve, Deep Read, and Ingest — closing the full knowledge loop:

🔍 Retrieve — Cross-collection search: BM25, vector, and hybrid with LLM reranking and query expansion
📖 Deep Read — Navigate inside a single document without loading the whole file: table of contents, section reading, inline search, and element extraction
📝 Ingest — Build and maintain a LLM wiki from raw documents, following the Karpathy LLM Wiki pattern
Developed by the MinerU team, building on QMD and Karpathy's LLM Wiki.
💡 What can you do with it?
Research assistant — Point it at a folder of PDFs and ask your AI agent to survey the literature, compare methods, or find specific results across papers
Project knowledge base — Index your codebase, docs, and design specs; let the agent answer questions about architecture, find relevant code, or trace requirements
Study companion — Upload textbooks or lecture notes; use
doc_toc+doc_readto navigate,doc_grepto search, and build a wiki of key conceptsEnterprise document search — Index contracts, reports, or manuals and search them with natural language queries enhanced by LLM reranking
See it in action: The demo/ folder contains a complete end-to-end example — an AI agent automatically reads ~10 arXiv papers on RAG, builds an interlinked wiki knowledge base, and writes a research survey. See the Demo Guide for step-by-step instructions.
🚀 Quick Start
Agent-Assisted Setup: If you're using an AI agent (Claude Code, Cursor, etc.), simply ask it to help you deploy MinerU Document Explorer and install skills — the agent can handle the entire setup process for you, including MCP configuration.
Follow the https://github.com/opendatalab/MinerU-Document-Explorer/blob/main/docs/quickstart.md to install MinerU Document Explorer and walk the user through configuration.📖 Document Deep Reading
Navigate and search within a single document without reading the whole file:
# View document structure
qmd doc-toc papers/attention-is-all-you-need.pdf
# Read specific sections by address
qmd doc-read papers/attention-is-all-you-need.pdf "line:45-120"
# Search within one document
qmd doc-grep papers/attention-is-all-you-need.pdf "self-attention"🔌 MCP Server — 15 Tools for AI Agents
Integrate with AI agents via Model Context Protocol.
MCP Server vs CLI: The MCP server runs as a persistent process — LLM models (embeddings, reranker, query expansion) are loaded once and stay in memory across requests. CLI commands like
qmd querymust reload all models on every invocation, adding ~5–15 s of startup overhead each time. For agent workflows, always prefer the MCP server.
Two transport modes:
Mode | Command | Best for |
stdio |
| Claude Desktop, Claude Code — client spawns and manages the process |
HTTP daemon |
| Cursor, Windsurf, VS Code, multi-client setups — one shared persistent server |
# Start the HTTP daemon (recommended — models stay loaded across all requests)
qmd mcp --http --daemon # default port 8181
qmd mcp --http --daemon --port 8080 # custom port
# Verify server is running
curl http://localhost:8181/health
# Stop the daemon
qmd mcp stopClient Configuration
Option A — stdio (Cursor manages the process lifecycle):
{
"mcpServers": {
"qmd": {
"command": "qmd",
"args": ["mcp"]
}
}
}Option B — HTTP (run qmd mcp --http --daemon first; models stay loaded, faster responses):
{
"mcpServers": {
"qmd": {
"url": "http://localhost:8181/mcp"
}
}
}{
"mcpServers": {
"qmd": {
"command": "qmd",
"args": ["mcp"]
}
}
}{
"mcpServers": {
"qmd": {
"command": "qmd",
"args": ["mcp"]
}
}
}For stdio transport, use "command": "qmd", "args": ["mcp"] in your client's MCP configuration.
For HTTP transport, start qmd mcp --http --daemon and point your client to http://localhost:8181/mcp.
See MCP setup guide for all 15 tools and HTTP transport details.
Agent Skills
MinerU Document Explorer ships with a built-in Agent Skill that teaches AI agents how to use the full tool suite effectively — decision trees, usage patterns, and best practices for all 15 MCP tools.
# Install the skill (works with both npm and source installs)
qmd skill install # local project (.agents/skills/)
qmd skill install --global # global (~/.agents/skills/)
# Or from source repo
claude skill add ./skills/mineru-document-explorer/SKILL.md📊 How It Compares
MinerU Doc Explorer | LlamaIndex | Obsidian | NotebookLM | |
Runs 100% locally | ✅ | ⚠️ LLM APIs | ✅ | ❌ Cloud |
Agent integration (MCP) | 15 tools | Plugin | ❌ | ❌ |
Deep reading within docs | ✅ | ❌ | ❌ | ✅ |
Wiki knowledge compilation | ✅ | ❌ | Manual | ❌ |
Formats | MD, PDF, DOCX, PPTX | Many | MD | PDF, URL |
Search pipeline | BM25 + vec + rerank | Configurable | Basic | Proprietary |
Zero-config search | ✅ | ❌ | Plugin | N/A |
Open source | MIT | MIT | Partial | ❌ |
⚙️ Requirements
Requirement | Notes |
Node.js >= 22 or Bun | Runtime |
Python >= 3.10 | Document processing ( |
macOS |
|
📄 Document Processing Setup
Python 3.10+ is required for document processing (PDF, DOCX, PPTX):
# Check Python version
python3 --version # needs >= 3.10
# Install required Python packages
pip install pymupdf python-docx python-pptx
# Verify
python3 -c "import pymupdf; import docx; import pptx; print('OK')"pip install mineru-open-sdk
export MINERU_API_KEY="your-key" # get from https://mineru.netWhen MINERU_API_KEY is set, MinerU Cloud is automatically used as the primary PDF provider with PyMuPDF as fallback.
For advanced configuration (custom providers, local VLM models, GPT PageIndex), create ~/.config/qmd/doc-reading.json:
{
"docReading": {
"providers": {
"fullText": { "pdf": ["mineru_cloud", "pymupdf"] }
},
"credentials": {
"mineru": { "api_key": "your-api-key" }
}
}
}🤖 LLM Models (auto-downloaded on first use)
Model | Purpose | Size |
embeddinggemma-300M | Vector embeddings | ~300 MB |
qwen3-reranker-0.6b | Re-ranking | ~640 MB |
qmd-query-expansion-1.7B | Query expansion | ~1.1 GB |
Models are only needed for
qmd embed,qmd vsearch, andqmd query.qmd searchruns BM25 retrieval.
📚 Documentation
End-to-end example: agent-driven RAG research survey | |
All commands, options, output formats | |
Setup, 15 tools, HTTP transport | |
TypeScript API, types, examples | |
🏗️ Architecture | Search pipeline, scoring, data schema, chunking |
Development setup, code style, how to contribute |
❤️ Acknowledgments
MinerU Document Explorer builds upon these foundational projects:
QMD by Tobi Lutke — An on-device search engine and CLI toolkit for markdown documents
LLM Wiki by Andrej Karpathy — the conceptual pattern for LLM-maintained knowledge bases
MinerU by OpenDataLab — high-quality document parsing and extraction
📝 Changelog
v1 — 2026-04-07 (Current)
Rebuilt from an OpenClaw agent skill into a full agent-native knowledge engine: npm package (npm install -g mineru-document-explorer), qmd CLI, MCP server with 15 tools across three groups (Retrieval / Deep Reading / Knowledge Ingestion), multi-format support (MD, PDF, DOCX, PPTX), hybrid search (BM25 + vector + LLM reranking), and LLM Wiki knowledge base pattern.
v0 — 2026-03-30 (Previous)
OpenClaw-native agent skill (doc-search CLI). Four capabilities: Logic Retrieval, Semantic Retrieval, Keyword Retrieval, Evidence Extraction. See the v0 repository.
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