Supports executing task-specific sub-agents using the Gemini CLI as a backend execution engine.
Integrates with the OpenAI Codex CLI to run defined AI sub-agents for development tasks like code review and test generation.
Click 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., "@Sub-Agents MCPUse the code-reviewer agent to check my UserService class"
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.
Sub-Agents MCP Server
Bring Claude Code–style sub-agents to any MCP-compatible tool.
This MCP server lets you define task-specific AI agents (like "test-writer" or "code-reviewer") in markdown files, and execute them via Cursor CLI, Claude Code, Gemini CLI, or Codex backends.
Why?
Claude Code offers powerful sub-agent workflows—but they're limited to its own environment. This MCP server makes that workflow portable, so any MCP-compatible tool (Cursor, Claude Desktop, Windsurf, etc.) can use the same agents.
Concrete benefits:
Define reusable agents once, use them across multiple tools
Share agent definitions within teams regardless of IDE choice
Leverage Cursor CLI, Claude Code, Gemini CLI, or Codex capabilities from any MCP client
Table of Contents
Prerequisites
Node.js 20 or higher
One of these execution engines (they actually run the sub-agents):
cursor-agentCLI (from Cursor)claudeCLI (from Claude Code)geminiCLI (from Gemini CLI)codexCLI (from Codex)
An MCP-compatible tool (Cursor IDE, Claude Desktop, Windsurf, etc.)
Quick Start
1. Create Your First Agent
Create a folder for your agents and add code-reviewer.md:
# Code Reviewer
You are a specialized AI assistant that reviews code.
Focus on:
- Finding bugs and potential issues
- Suggesting improvements
- Checking code quality2. Install Your Execution Engine
Pick one based on which tool you use:
For Cursor users:
# Install Cursor CLI (includes cursor-agent)
curl https://cursor.com/install -fsS | bash
# Authenticate (required before first use)
cursor-agent loginFor Claude Code users:
# Option 1: Native install (recommended)
curl -fsSL https://claude.ai/install.sh | bash
# Option 2: NPM (requires Node.js 18+)
npm install -g @anthropic-ai/claude-codeNote: Claude Code installs the claude CLI command.
For Gemini CLI users:
# Install Gemini CLI
npm install -g @google/gemini-cli
# Authenticate via browser (required before first use)
geminiNote: Gemini CLI uses OAuth authentication. Run gemini once to authenticate via browser.
For Codex users:
# Install Codex
npm install -g @openai/codex3. Configure MCP
Add this to your MCP configuration file:
Cursor: ~/.cursor/mcp.json
Claude Desktop: ~/Library/Application Support/Claude/claude_desktop_config.json (macOS)
{
"mcpServers": {
"sub-agents": {
"command": "npx",
"args": ["-y", "sub-agents-mcp"],
"env": {
"AGENTS_DIR": "/absolute/path/to/your/agents-folder",
"AGENT_TYPE": "cursor" // or "claude", "gemini", or "codex"
}
}
}
}Important: Use absolute paths only.
✅
/Users/john/Documents/my-agents(Mac/Linux)✅
C:\\Users\\john\\Documents\\my-agents(Windows)❌
./agentsor~/agentswon't work
Restart your IDE and you're ready to go.
4. Fix "Permission Denied" Errors When Running Shell Commands
Sub-agents may fail to execute shell commands with permission errors. This happens because sub-agents can't respond to interactive permission prompts.
Recommended approach:
Run your CLI tool directly with the task you want sub-agents to handle:
# For Cursor users cursor-agent # For Claude Code users claude # For Gemini CLI users gemini # For Codex CLI users codexWhen prompted to allow commands (e.g., "Add Shell(cd), Shell(make) to allowlist?"), approve them
This automatically updates your configuration file, and those commands will now work when invoked via MCP sub-agents
Manual configuration (alternative):
If you prefer to configure permissions manually, edit:
Cursor:
<project>/.cursor/cli.jsonor~/.cursor/cli-config.jsonClaude Code:
.claude/settings.jsonor.claude/settings.local.json
{
"permissions": {
"allow": [
"Shell(cd)",
"Shell(make)",
"Shell(git)"
]
}
}Note: Agents often run commands as one-liners like cd /path && make build, so you need to allow all parts of the command.
Usage Examples
Just tell your AI to use an agent:
"Use the code-reviewer agent to check my UserService class""Use the test-writer agent to create unit tests for the auth module""Use the doc-writer agent to add JSDoc comments to all public methods"Your AI automatically invokes the specialized agent and returns results.
Tip: Always include what you want done in your request—not just which agent to use. For example:
✅ "Use the code-reviewer agent to check my UserService class"
❌ "Use the code-reviewer agent" (too vague—the agent won't know what to review)
The more specific your task, the better the results.
Agent Examples
Each .md or .txt file in your agents folder becomes an agent. The filename becomes the agent name (e.g., test-writer.md → "test-writer").
Test Writer
test-writer.md
# Test Writer
You specialize in writing comprehensive unit tests.
- Cover edge cases
- Follow project testing patterns
- Ensure good coverageSQL Expert
sql-expert.md
# SQL Expert
You're a database specialist who helps with queries.
- Optimize for performance
- Suggest proper indexes
- Help with complex JOINsSecurity Checker
security-checker.md
# Security Checker
You focus on finding security vulnerabilities.
- Check for SQL injection risks
- Identify authentication issues
- Find potential data leaksConfiguration Reference
Required Environment Variables
AGENTS_DIR
Path to your agents folder. Must be absolute.
AGENT_TYPE
Which execution engine to use:
"cursor"- usescursor-agentCLI"claude"- usesclaudeCLI"gemini"- usesgeminiCLI"codex"- usescodexCLI (OpenAI Codex)
Optional Settings
EXECUTION_TIMEOUT_MS
How long agents can run before timing out (default: 5 minutes, max: 10 minutes)
Example with timeout:
{
"mcpServers": {
"sub-agents": {
"command": "npx",
"args": ["-y", "sub-agents-mcp"],
"env": {
"AGENTS_DIR": "/absolute/path/to/agents",
"AGENT_TYPE": "cursor",
"EXECUTION_TIMEOUT_MS": "600000"
}
}
}
}Security Note
Agents have access to your project directory. Only use agent definitions from trusted sources.
Session Management
Session management allows sub-agents to remember previous executions, which helps when you want agents to build on earlier work or maintain context across multiple calls.
Why Sessions Matter
By default, each sub-agent execution starts with no context. With sessions enabled:
Agents can reference their earlier work
You get execution history for debugging
Related tasks share context
Enabling Sessions
Add these environment variables to your MCP configuration:
{
"mcpServers": {
"sub-agents": {
"command": "npx",
"args": ["-y", "sub-agents-mcp"],
"env": {
"AGENTS_DIR": "/absolute/path/to/agents",
"AGENT_TYPE": "cursor",
"SESSION_ENABLED": "true",
"SESSION_DIR": "/absolute/path/to/session-storage",
"SESSION_RETENTION_DAYS": "1"
}
}
}
}Configuration options:
SESSION_ENABLED- Set to"true"to enable session management (default:false)SESSION_DIR- Where to store session files (default:.mcp-sessionsin the current working directory)SESSION_RETENTION_DAYS- How long to keep session files based on last modification time in days (default: 1)
Security consideration: Session files contain execution history and may include sensitive information. Use absolute paths for SESSION_DIR.
When to Use Sessions
Sessions work well for:
Iterative development: "Based on your earlier findings, now fix the issues"
Multi-step workflows: Breaking complex tasks into smaller sub-agent calls
Debugging: Reviewing exactly what was executed and what results were returned
Note that sessions require additional storage and processing overhead.
How Session Continuity Works
When sessions are enabled, the MCP response includes a session_id field. To continue the same session, pass this ID back in the next request.
Important: Your AI assistant must explicitly include the session_id in subsequent requests. While some assistants may do this automatically, it's not guaranteed. For reliable session continuity, add explicit instructions to your prompts or project rules.
Example prompt instruction:
When using sub-agents with sessions enabled, always include the session_id
from the previous response in your next request to maintain context.Example project rule (e.g.,
# Sub-Agent Session Guidelines
When calling the same sub-agent multiple times:
1. Extract the session_id from the MCP response
2. Pass it as a parameter in subsequent calls
3. This preserves context between executionsTroubleshooting
Timeout errors or authentication failures
If using Cursor CLI:
Run cursor-agent login to authenticate. Sessions can expire, so just run this command again if you see auth errors.
Verify installation:
which cursor-agentIf using Claude Code: Make sure the CLI is properly installed and accessible.
Agent not found
Check that:
AGENTS_DIRpoints to the correct directory (use absolute path)Your agent file has
.mdor.txtextensionThe filename uses hyphens or underscores (no spaces)
Other execution errors
Verify
AGENT_TYPEis set correctly (cursor,claude,gemini, orcodex)Ensure your chosen CLI tool is installed and accessible
Double-check that all environment variables are set in the MCP config
Design Philosophy
Why Independent Contexts Matter
Every sub-agent starts with a fresh context. This adds some startup overhead for each call, but it ensures that every task runs independently and without leftover state from previous runs.
Context Isolation
Each agent only receives the information relevant to its task
No context leakage between runs
The main agent stays focused and lightweight
Accuracy and Reliability
Sub-agents can specialize in a single goal without interference
Less risk of confusion from unrelated context
More consistent results in complex, multi-step workflows
Scalability
Large tasks can be safely split into smaller sub-tasks
Each sub-agent operates within its own token limit
The main agent coordinates without hitting global context limits
The startup overhead is an intentional trade-off: the system favors clarity and accuracy over raw execution speed.
How It Works
This MCP server acts as a bridge between your AI tool and a supported execution engine (Cursor CLI, Claude Code, Gemini CLI, or Codex).
The flow:
You configure the MCP server in your client (Cursor, Claude Desktop, etc.)
The client automatically launches
sub-agents-mcpas a background process when it startsWhen your main AI assistant needs a sub-agent, it makes an MCP tool call
The MCP server reads the agent definition (markdown file) and invokes the selected CLI (
cursor-agent,claude,gemini, orcodex)The execution engine runs the agent and streams results back through the MCP server
Your main assistant receives the results and continues working
This architecture lets any MCP-compatible tool benefit from specialized sub-agents, even if it doesn't have native support.
License
MIT
AI-to-AI collaboration through Model Context Protocol