JavaScript Executor MCP Server
Execute JavaScript code in a modern runtime environment with support for various built-in modules.
JavaScript Executor MCP Server
This MCP server provides JavaScript execution capabilities with a modern runtime.
Features
The executeJS tool provides:
- Console API:
console.log(),console.error(),console.warn()(built-in) - HTTP Server:
serve()for server creation (viarequire('http/server')) - Fetch API: Modern
fetch()with Request, Response, Headers, FormData (global) - Timers:
setTimeout(),setInterval(),clearTimeout(),clearInterval()(global) - Buffer: Buffer, Blob, File APIs for binary data handling (global)
- Crypto: Cryptographic functions - hashing, encryption, HMAC (via
require('crypto')) - Cache: In-memory caching with TTL support (via
require('cache')) - Additional modules: encoding (global), url (global)
Getting Started
Installation
Using Go Install
go install github.com/mark3labs/codebench-mcp@latest
Usage
As a standalone server
codebench-mcp
With module configuration
# Enable only specific modules
codebench-mcp --enabled-modules http,fetch
# Disable specific modules (enable all others)
codebench-mcp --disabled-modules timers
# Set custom execution timeout (in seconds)
codebench-mcp --execution-timeout 600 # 10 minutes
# Show help
codebench-mcp --help
Available modules:
http- HTTP server creation and client requests (require('http/server'))fetch- Modern fetch API with Request, Response, Headers, FormData (available globally)timers- setTimeout, setInterval, clearTimeout, clearInterval (available globally)buffer- Buffer, Blob, File APIs for binary data handling (available globally)cache- In-memory caching with TTL support (require('cache'))crypto- Cryptographic functions (hashing, encryption, HMAC) (require('crypto'))encoding- TextEncoder, TextDecoder for text encoding/decoding (available globally)url- URL and URLSearchParams APIs (available globally)
All modules are enabled by default. You can selectively enable or disable modules using CLI flags.
Note: The executeJS tool description dynamically updates to show only the enabled modules and includes detailed information about what each module provides.
As a library in your Go project
package main
import (
"log"
"github.com/mark3labs/codebench-mcp/server"
"github.com/mark3labs/mcp-go/server"
)
func main() {
// Create a new JavaScript executor server
jss, err := server.NewJSServer()
if err != nil {
log.Fatalf("Failed to create server: %v", err)
}
// Serve requests
if err := server.ServeStdio(jss); err != nil {
log.Fatalf("Server error: %v", err)
}
}
Using InProcessTransport
package main
import (
"context"
"log"
"github.com/mark3labs/codebench-mcp/server"
"github.com/mark3labs/mcp-go/client"
"github.com/mark3labs/mcp-go/mcp"
)
func main() {
// Create the JS server with custom module configuration
config := server.ModuleConfig{
EnabledModules: []string{"fetch", "crypto", "buffer"},
}
jsServer, err := server.NewJSServerWithConfig(config)
if err != nil {
log.Fatalf("Failed to create server: %v", err)
}
// Create an in-process client
mcpClient, err := client.NewInProcessClient(jsServer)
if err != nil {
log.Fatalf("Failed to create client: %v", err)
}
defer mcpClient.Close()
// Start the client
if err := mcpClient.Start(context.Background()); err != nil {
log.Fatalf("Failed to start client: %v", err)
}
// Initialize the client
initRequest := mcp.InitializeRequest{}
initRequest.Params.ProtocolVersion = mcp.LATEST_PROTOCOL_VERSION
initRequest.Params.ClientInfo = mcp.Implementation{
Name: "my-app",
Version: "1.0.0",
}
_, err = mcpClient.Initialize(context.Background(), initRequest)
if err != nil {
log.Fatalf("Failed to initialize: %v", err)
}
// Execute JavaScript code
callRequest := mcp.CallToolRequest{}
callRequest.Params.Name = "executeJS"
callRequest.Params.Arguments = map[string]any{
"code": `
console.log("Hello from JavaScript!");
const result = Math.sqrt(16);
console.log("Square root of 16 is:", result);
result;
`,
}
result, err := mcpClient.CallTool(context.Background(), callRequest)
if err != nil {
log.Fatalf("Failed to call tool: %v", err)
}
if result.IsError {
log.Printf("JavaScript execution error: %v", result.Content)
} else {
log.Printf("JavaScript execution result: %v", result.Content)
}
}
Usage with Model Context Protocol
To integrate this server with apps that support MCP:
{
"mcpServers": {
"javascript": {
"command": "codebench-mcp"
}
}
}
Docker
Running with Docker
You can run the JavaScript Executor MCP server using Docker:
docker run -i --rm ghcr.io/mark3labs/codebench-mcp:latest
Docker Configuration with MCP
To integrate the Docker image with apps that support MCP:
{
"mcpServers": {
"javascript": {
"command": "docker",
"args": [
"run",
"-i",
"--rm",
"ghcr.io/mark3labs/codebench-mcp:latest"
]
}
}
}
Tool Reference
executeJS
Execute JavaScript code with a modern runtime environment.
Parameters:
code(required): JavaScript code to execute
Configuration:
- Default execution timeout: 5 minutes
- Configurable via
--execution-timeout <seconds>CLI flag
Example:
console.log("Hello, World!");
// Basic JavaScript execution
const result = 2 + 3;
console.log('Result:', result);
// Fetch API (available globally when enabled)
const response = await fetch('https://api.example.com/data');
const data = await response.json();
// HTTP server (require import)
const serve = require('http/server');
serve(8000, async (req) => {
return new Response('Hello World');
});
// Cache operations (require import)
const cache = require('cache');
cache.set('key', 'value');
console.log(cache.get('key'));
// Crypto operations (require import)
const crypto = require('crypto');
const hash = crypto.md5('hello').hex();
console.log('MD5 hash:', hash);
// Timers (available globally)
setTimeout(() => console.log('Hello after 1 second'), 1000);
// Buffer operations (available globally)
const buffer = Buffer.from('hello', 'utf8');
console.log(buffer.toString('base64'));
// URL operations (available globally)
const url = new URL('https://example.com/path?param=value');
console.log('Host:', url.host);
console.log('Pathname:', url.pathname);
Limitations
- No fs or process modules - File system and process APIs are not available in the runtime
- Module access varies - Some modules are global (fetch, http), others may need require()
- Each execution creates a fresh VM - For isolation, each execution starts with a clean state
- Module filtering - Configuration exists but actual runtime filtering not fully implemented
- Execution timeout - JavaScript execution is limited by configurable timeout (default: 5 minutes)
Building
go build -o codebench-mcp .
License
See the LICENSE file for details.
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