A MCP server designed to bridge the gap between specialized knowledge domains and AI assistants.
Reason this release was yanked:
buggy
Project description
knowledge-mcp: Specialized Knowledge Bases for AI Agents
1. Overview and Concept
knowledge-mcp is a MCP server designed to bridge the gap between specialized knowledge domains and AI assistants. It allows users to create, manage, and query dedicated knowledge bases, making this information accessible to AI agents through an MCP (Model Context Protocol) server interface.
The core idea is to empower AI assistants that are MCP clients (like Claude Desktop or IDEs like Windsurf) to proactively consult these specialized knowledge bases during their reasoning process (Chain of Thought), rather than relying solely on general semantic search against user prompts or broad web searches. This enables more accurate, context-aware responses when dealing with specific domains.
Key components:
- CLI Tool: Provides a user-friendly command-line interface for managing knowledge bases (creating, deleting, adding/removing documents, configuring, searching).
- Knowledge Base Engine: Leverages LightRAG to handle document processing, embedding, knowledge graph creation, and complex querying.
- MCP Server: Exposes the search functionality of the knowledge bases via the FastMCP protocol, allowing compatible AI agents to query them directly.
2. About LightRAG
This project utilizes LightRAG (HKUDS/LightRAG) as its core engine for knowledge base creation and querying. LightRAG is a powerful framework designed to enhance Large Language Models (LLMs) by integrating Retrieval-Augmented Generation (RAG) with knowledge graph techniques.
Key features of LightRAG relevant to this project:
- Document Processing Pipeline: Ingests documents (PDF, Text, Markdown, DOCX), chunks them, extracts entities and relationships using an LLM, and builds both a knowledge graph and vector embeddings.
- Multiple Query Modes: Supports various retrieval strategies (e.g., vector similarity, entity-centric, relationship-focused, hybrid) to find the most relevant context for a given query.
- Flexible Storage: Can use different backends for storing key-value data, vectors, graph information, and document status (this project uses the default file-based storage).
- LLM/Embedding Integration: Supports various providers like OpenAI (used in this project), Ollama, Hugging Face, etc.
By using LightRAG, knowledge-mcp benefits from advanced RAG capabilities that go beyond simple vector search.
3. Installation
Ensure you have Python 3.12 and uv installed.
-
Running the Tool: After installing the package (e.g., using
uv pip install -e .), you can run the CLI usinguvx:# General command structure uvx knowledge-mcp --config <path-to-your-config.yaml> <command> [arguments...] # Example: Start interactive shell uvx knowledge-mcp --config <path-to-your-config.yaml> shell
-
Configure MCP Client: To allow an MCP client (like Claude Desktop or Windsurf) to connect to this server, configure the client with the following settings. Replace the config path with the absolute path to your main
config.yaml.{ "mcpServers": { "knowledge-mcp": { "command": "uvx", "args": [ "knowledge-mcp", "--config", "<absolute-path-to-your-config.yaml>", "mcp" ] } } }
-
Set up configuration:
- Copy
config.example.yamltoconfig.yaml. - Copy
.env.exampleto.env. - Edit
config.yamland.envto add your API keys (e.g.,OPENAI_API_KEY) and adjust paths or settings as needed. Theknowledge_base.base_dirinconfig.yamlspecifies where your knowledge base directories will be created.
- Copy
4. Configuration
Configuration is managed via YAML files:
-
Main Configuration (
config.yaml): Defines global settings like the knowledge base directory (knowledge_base.base_dir), LightRAG parameters (LLM provider/model, embedding provider/model, API keys via${ENV_VAR}substitution), and logging settings. Refer toconfig.example.yamlfor the full structure and available options.knowledge_base: base_dir: ./kbs lightrag: llm: provider: "openai" model_name: "gpt-4.1-nano" api_key: "${OPENAI_API_KEY}" # ... other LLM settings embedding: provider: "openai" model_name: "text-embedding-3-small" api_key: "${OPENAI_API_KEY}" # ... other embedding settings embedding_cache: enabled: true similarity_threshold: 0.90 logging: level: "INFO" # ... logging settings env_file: .env # path to .env file
-
Knowledge Base Specific Configuration (
<base_dir>/<kb_name>/config.yaml): Contains parameters specific to querying that knowledge base, such as the LightRAG querymode,top_kresults, context token limits, etc. This file is automatically created with defaults when a KB is created and can be viewed/edited using theconfigCLI command. -
Knowledge Base Directory Structure: When you create knowledge bases, they are stored within the directory specified by
knowledge_base.base_dirin your mainconfig.yaml. The structure typically looks like this:<base_dir>/ # Main directory, contains a set of knowledge bases ├── config.yaml # Main application configuration (copied from config.example.yaml) ├── .env # Environment variables referenced in config.yaml ├── kbmcp.log ├── knowledge_base_1/ # Directory for the first KB │ ├── config.yaml # KB-specific configuration (query parameters) │ ├── <storage_files> # The LightRAG storage files └── knowledge_base_2/ # Directory for the second KB ├── config.yaml ├── <storage_files>
5. Usage (CLI)
The primary way to interact with knowledge-mcp is through its CLI, accessed via the knowledge-mcp command (if installed globally or via uvx knowledge-mcp within the activated venv).
All commands require the --config option pointing to your main configuration file.
knowledge-mcp --config config.yaml shell
Available Commands (Interactive Shell):
| Command | Description | Arguments |
|---|---|---|
create |
Creates a new knowledge base directory and initializes its structure. | <name>: Name of the KB.["description"]: Optional description. |
delete |
Deletes an existing knowledge base directory and all its contents. | <name>: Name of the KB to delete. |
list |
Lists all available knowledge bases and their descriptions. | N/A |
add |
Adds a document: processes, chunks, embeds, stores in the specified KB. | <kb_name>: Target KB.<file_path>: Path to the document file. |
remove |
Removes a document and its associated data from the KB by its ID. | <kb_name>: Target KB.<doc_id>: ID of the document to remove. |
config |
Manages the KB-specific config.yaml. Shows content or opens in editor. |
<kb_name>: Target KB.`[show |
query |
Searches the specified knowledge base using LightRAG. | <kb_name>: Target KB.<query_text>: Your search query text. |
clear |
Clears the terminal screen. | N/A |
exit |
Exits the interactive shell. | N/A |
EOF |
(Ctrl+D) Exits the interactive shell. | N/A |
help |
Shows available commands and their usage within the shell. | [command] (Optional command name) |
Example (Direct CLI):
# Create a knowledge base named 'my_docs'
knowledge-mcp --config config.yaml create my_docs
# Add a document to it
knowledge-mcp --config config.yaml add my_docs ./path/to/mydocument.pdf
# Search the knowledge base
knowledge-mcp --config config.yaml query my_docs "What is the main topic?"
# Start the interactive shell
knowledge-mcp --config config.yaml shell
(kbmcp) list
(kbmcp) query my_docs "Another query"
(kbmcp) exit
6. Development
- Tech Stack: Python 3.12, uv (dependency management), hatchling (build system), pytest (testing).
- Setup: Follow the installation steps, ensuring you install with
uv pip install -e ".[dev]". - Code Style: Adheres to PEP 8.
- Testing: Run tests using
uvx testorpytest. - Dependencies: Managed in
pyproject.toml. Useuv pip install <package>to add anduv pip uninstall <package>to remove dependencies, updatingpyproject.tomlaccordingly. - Scripts: Common tasks might be defined under
[project.scripts]inpyproject.toml. - MCP Inspector: Use
npx @modelcontextprotocol/inspector uv run cli --config ./kbs/config.yaml serveto start the MCP inspector.
7. MCP Inspector
Use npx @modelcontextprotocol/inspector uvx knowledge-mcp --config ./kbs/config.yaml mcp to start the MCP inspector.
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