Smart Shell MCP Server
Cross-platform command execution server that intelligently adapts shell commands to the operating system and detects project-specific package managers (npm/bun, pip/poetry), with runtime-editable command mappings per project.
README
smart-shell (MCP Server)
MCP Tool Server – Cross-Platform & Project-Aware Command Runner.
This server exposes tools that execute shell commands in an OS-aware way and adapt to each project's preferred package/runtime manager (npm ↔ bun, pip ↔ poetry, etc.). Agents can read and modify per-project command mappings at runtime.
Features
- OS-aware command translation (e.g.,
ls→diron Windows). - Project-specific overrides stored in
src/project-commands.jsonand editable via tools. - Execute mapped commands with additional args and return
{ stdout, stderr, exitCode }. - Structured error objects with actionable suggestions when a command fails.
- Tools:
executeCommand,getProjectCommands,setProjectCommand,removeProjectCommand,translateCommand.
Requirements
- Node.js 18+ (20+ recommended)
Install
# Dev (inside this repo)
npm install
# Production (global CLI)
npm install -g smart-shell-mcp
# or per-project without global install
npx smart-shell-mcp
Run
- Dev (no build):
npx tsx src/server.ts
- Build + run:
npm run build
npm start
This starts an MCP server over stdio. Point your MCP-compatible client at the command above.
Configuration Files
src/command-map.json: base translation from generic commands → per-OS variants. Example:
{
"base": {
"ls": { "windows": "dir", "linux": "ls", "darwin": "ls" },
"open": { "windows": "start", "linux": "xdg-open", "darwin": "open" }
}
}
src/project-commands.json: project-specific command overrides. Example:
{
"default": {
"install": "npm install",
"run": "npm start"
},
"my-bun-project": {
"install": "bun install",
"run": "bun run dev"
},
"python-api": {
"install": "pip install -r requirements.txt",
"run": "uvicorn app:app --reload"
}
}
Files are looked up in the current working directory first. If not found, the copies in src/ are used and will be created automatically if missing.
Tools
-
executeCommand({ projectName, commandKey, args?, options? })- Resolve project override → fallback to
default→ translate for OS → run. options(all optional):shell:auto | cmd | powershell | bashactivateVenv:auto | on | offvenvPath: path to a venv root if not.venv/venvcwd: working directory for the commandenv: key/value environment overrides
- Returns on success:
{ "stdout": "...", "stderr": "", "exitCode": 0, "resolvedCommand": "npm install" } - On failure returns structured error inside the tool result body (not thrown):
{ "errorCode": "COMMAND_FAILED", "message": "Command failed with exit code 1", "suggestion": "poetry install", "resolvedCommand": "pip install -r requirements.txt", "stdout": "...", "stderr": "...", "exitCode": 1 }
- Resolve project override → fallback to
-
getProjectCommands({ projectName })→ merged view{ ...default, ...project }. -
setProjectCommand({ projectName, key, value })→ upsert and persist. -
removeProjectCommand({ projectName, key })→ delete and persist. -
translateCommand({ rawCommand })→{ os, original, translated }.
Error Handling & Suggestions
When a command exits non‑zero the server embeds a structured error with optional suggestions, e.g.:
- If
npmfails and the workspace looks like a Bun project (bun.lockborpackage.json: { packageManager: "bun@..." }), suggestion:bun install(orbun run devforrun). - If
pipfails andpoetry.lockor[tool.poetry]inpyproject.tomlis present, suggestion:poetry install. - Also detects Yarn (
yarn.lock) and pnpm (pnpm-lock.yaml).
MCP JSON-RPC Examples
All examples assume stdio transport.
- List tools:
{ "jsonrpc": "2.0", "id": 1, "method": "tools/list" }
- Call
executeCommand:
{
"jsonrpc": "2.0",
"id": 2,
"method": "tools/call",
"params": {
"name": "executeCommand",
"arguments": {
"projectName": "python-api",
"commandKey": "install",
"args": ["-q"]
}
}
}
- Call
setProjectCommand:
{
"jsonrpc": "2.0",
"id": 3,
"method": "tools/call",
"params": {
"name": "setProjectCommand",
"arguments": {
"projectName": "my-bun-project",
"key": "lint",
"value": "bun run lint"
}
}
}
IDE Integration (Production)
After installing globally (npm i -g smart-shell-mcp), configure your IDE to run the smart-shell executable over stdio.
- Cursor, Kiro, Windsurf (example)
{
"mcpServers": {
"smart-shell": {
"command": "npx",
"args": [
"-y",
"smart-shell-mcp"
],
"env": {}
}
}
}
Or
{
"mcpServers": {
"smart-shell": {
"command": "smart-shell",
"args": [],
"env": {}
}
}
}
- Claude Desktop (reference)
{
"mcpServers": {
"smart-shell": { "command": "smart-shell" }
}
}
Notes
- If you prefer not to install globally, replace
smart-shellwithnpx smart-shell-mcpin the examples above. - Windows users can switch to PowerShell execution with the tool options (see below) if needed.
Project Scripts
npm run dev– start in dev (tsx)npm run build– build TypeScript todist/npm start– run compiled servernpm run typecheck– TypeScript type checking
Made with ❤️ by Mr-Wolf-GB for the MCP community
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