mcp-guide
Enables AI agents to access and manage project guidelines, documentation, and context through a structured content system with template support and workflow management.
README
mcp-guide
Structured content delivery for AI agents via Model Context Protocol
mcp-guide is an MCP server that provides AI agents with organised access to project guidelines, documentation, and context. It helps agents understand your project's standards, follow development workflows, and access relevant information through a flexible content management system.
Key Features
- Content Management - Organise documents, instructions and prompts by category and collection
- Template Support - Dynamic content with Mustache/Chevron templates
- Multiple Transports - STDIO, HTTP, and HTTPS modes
- Feature Flags - Project-specific and global configuration
- Workflow Management - Structured development phase tracking
- Profile System - Pre-configured setups for common scenarios
- Docker Support - Containerised deployment with SSL
- OpenSpec Integration - Spec-driven development workflow
Quick Start
mcp-guide is run using your AI Agent's MCP configuration, and not usually run directly, at least in stdio transport mode. In stdio mode, standard input and output are used to communicate with the MCP so the agent needs to control both in order to operate. In http mode, however, the server provides web server (http) transport, and this may be started in standalone mode, not necessarily by the agent directly (although typically it does).
The configurations below detail configuration with some cli agents, but almost all of them will be similar.
Configure with AI Agents
JSON configuration
These blocks can be used as is and inserted into the agent's configuration. The stdio mode is a straightforward configuration, although it requires the uv tool to be installed.
Stdio
{
"mcpServers": {
"mcp-guide": {
"command": "uvx",
"args": ["mcp-guide"]
}
}
}
If the "mcpServers" block already exists, add the "mcp-guide" block at the end, ensuring that the previously last item, if any, has a terminating comma.
Kiro-CLI
Add the above JSON block to ~/.kiro/settings/mcp.json.
Claude Code
Add the above JSON block to ~/.claude/settings.json.
GitHub Copilot CLI
Add this JSON block to ~/.config/.copilot/mcp.json.
Other clients will offer similar configuration, some also
See the Installation Guide for more detail in use with various clients, use with docker and using the http/sse transport mode.
Content Organisation
mcp-guide organises content using frontmatter (optional YAML metadata at the start of documents) to define document properties and behaviour.
Content is classified into three types via the type: field in frontmatter:
- user/information - Content displayed to users
- agent/information - Context for AI agents
- agent/instruction - Directives for agent behaviour
Content is organised using categories (file patterns and directories) and collections (groups of categories). Collections act as "macros" to provide targeted context for specific tasks or purposes.
See Content Management for details.
Feature Flags
Feature flags control behaviour, capabilities and special features and may be set globally or per project:
- workflow - Enable workflow phase tracking
- openspec - Enable OpenSpec integration
- content-style - Output format (None, plain, mime)
See Feature Flags for more information.
Documentation
- Documentation Index - Documentation overview
- Getting Started - First-time setup and basic concepts
- Changelog - Release notes and version history
Links
- Documentation: deeprave.github.io/mcp-guide
- Issues: GitHub Issues
- MCP Protocol: modelcontextprotocol.io
License
MIT License - See LICENSE.md for details.
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