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build-custom-mcp-server

pjt222
Updated 2 days ago
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Metaaitestingapimcpdesign

About

This skill guides developers in building custom MCP servers to expose domain-specific tools to AI assistants. It covers implementation in Node.js or R, including tool definition, transport configuration, and testing with Claude Code. Use it when you need specialized integrations beyond standard tools or to wrap existing APIs as MCP services.

Quick Install

Claude Code

Recommended
Primary
npx skills add pjt222/agent-almanac -a claude-code
Plugin CommandAlternative
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternative
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/build-custom-mcp-server

Copy and paste this command in Claude Code to install this skill

Documentation

Build Custom MCP Server

Create custom MCP server exposing domain-specific tools to AI assistants.

When Use

  • Need to expose custom functionality to Claude Code or Claude Desktop
  • Building specialized tools beyond what mcptools provides
  • Creating domain-specific AI assistant integration
  • Wrapping existing APIs or services as MCP tools

Inputs

  • Required: List of tools to expose (name, description, parameters, behavior)
  • Required: Implementation language (Node.js or R)
  • Required: Transport type (stdio or HTTP)
  • Optional: Authentication requirements
  • Optional: Docker packaging needs

Steps

Step 1: Define Tool Specifications

Before writing code, define each tool:

tools:
  - name: query_database
    description: Execute a read-only SQL query against the analysis database
    parameters:
      query:
        type: string
        description: SQL SELECT query to execute
        required: true
      limit:
        type: integer
        description: Maximum rows to return
        default: 100
    returns: JSON array of result rows

  - name: run_analysis
    description: Execute a predefined statistical analysis by name
    parameters:
      analysis_name:
        type: string
        description: Name of the analysis to run
        enum: [descriptive, regression, survival]
      dataset:
        type: string
        description: Dataset identifier
        required: true

Got: YAML or markdown spec for each tool with name, description, parameters (types, defaults, required flags), return type documented before writing code.

If fail: Tool specifications unclear? Interview domain expert or review existing API documentation for parameter types and return formats.

Step 2: Implement in Node.js (Using MCP SDK)

// server.js
import { McpServer } from "@modelcontextprotocol/sdk/server/mcp.js";
import { StdioServerTransport } from "@modelcontextprotocol/sdk/server/stdio.js";
import { z } from "zod";

const server = new McpServer({
  name: "my-analysis-server",
  version: "1.0.0",
});

// Define tools
server.tool(
  "query_database",
  "Execute a read-only SQL query against the analysis database",
  {
    query: z.string().describe("SQL SELECT query"),
    limit: z.number().default(100).describe("Max rows to return"),
  },
  async ({ query, limit }) => {
    // Validate read-only
    if (!/^\s*SELECT/i.test(query)) {
      return {
        content: [{ type: "text", text: "Error: Only SELECT queries allowed" }],
        isError: true,
      };
    }

    const results = await executeQuery(query, limit);
    return {
      content: [{ type: "text", text: JSON.stringify(results, null, 2) }],
    };
  }
);

server.tool(
  "run_analysis",
  "Execute a predefined statistical analysis",
  {
    analysis_name: z.enum(["descriptive", "regression", "survival"]),
    dataset: z.string().describe("Dataset identifier"),
  },
  async ({ analysis_name, dataset }) => {
    const result = await runAnalysis(analysis_name, dataset);
    return {
      content: [{ type: "text", text: JSON.stringify(result, null, 2) }],
    };
  }
);

// Start server with stdio transport
const transport = new StdioServerTransport();
await server.connect(transport);

Got: Working server.js imports MCP SDK, defines tools with Zod schemas, connects via stdio transport. Running node server.js starts server without errors.

If fail: Verify @modelcontextprotocol/sdk and zod installed (npm install). Check import paths match SDK version (SDK reorganized exports between versions).

Step 3: Implement in R (Using mcptools)

# server.R
library(mcptools)

# Register custom tools
mcp_tool(
  name = "query_database",
  description = "Execute a read-only SQL query",
  parameters = list(
    query = list(type = "string", description = "SQL SELECT query"),
    limit = list(type = "integer", description = "Max rows", default = 100)
  ),
  handler = function(query, limit = 100) {
    if (!grepl("^\\s*SELECT", query, ignore.case = TRUE)) {
      stop("Only SELECT queries allowed")
    }
    result <- DBI::dbGetQuery(con, paste(query, "LIMIT", limit))
    jsonlite::toJSON(result, auto_unbox = TRUE)
  }
)

# Start server
mcptools::mcp_server()

Got: Working server.R registers custom tools with mcp_tool(), starts server with mcp_server(). Running Rscript server.R starts MCP server.

If fail: Ensure mcptools installed from GitHub (remotes::install_github("posit-dev/mcptools")). Check handler function signatures match parameter definitions.

Step 4: Set Up Project Structure

my-mcp-server/
├── package.json          # Node.js dependencies
├── server.js             # Server implementation
├── tools/                # Tool implementations
│   ├── database.js
│   └── analysis.js
├── test/                 # Tests
│   └── tools.test.js
├── Dockerfile            # Container packaging
└── README.md             # Setup instructions

Got: Project directory created with server.js (or server.R), package.json, tools/ directory for modular tool implementations, test/ for tests.

If fail: Directory structure doesn't match implementation language? Adjust accordingly. R servers may use R/ instead of tools/ and tests/testthat/ instead of test/.

Step 5: Test the Server

Manual testing with stdio:

echo '{"jsonrpc":"2.0","method":"tools/list","id":1}' | node server.js

Register with Claude Code:

claude mcp add my-server stdio "node" "/path/to/server.js"

Verify tools appear:

Start Claude Code session, check custom tools listed and functional.

Got: tools/list JSON-RPC call returns all defined tools with correct names and schemas. claude mcp list shows server registered. Tools callable from Claude Code session.

If fail: tools/list returns empty array? Tools were not registered before server.connect(). Claude Code cannot find server? Verify command path in claude mcp add is absolute, binary is executable.

Step 6: Add Error Handling

server.tool("risky_operation", "...", schema, async (params) => {
  try {
    const result = await performOperation(params);
    return {
      content: [{ type: "text", text: JSON.stringify(result) }],
    };
  } catch (error) {
    return {
      content: [{ type: "text", text: `Error: ${error.message}` }],
      isError: true,
    };
  }
});

Got: Each tool handler wrapped in try/catch. Invalid inputs return isError: true with descriptive message instead of crashing server process.

If fail: Server still crashes on bad input? Check try/catch wraps entire handler body including async operations. Ensure promises awaited within try block.

Step 7: Package for Distribution

Create package.json with bin entry:

{
  "name": "my-mcp-server",
  "version": "1.0.0",
  "bin": {
    "my-mcp-server": "./server.js"
  },
  "dependencies": {
    "@modelcontextprotocol/sdk": "^1.0.0",
    "zod": "^3.22.0"
  }
}

Users install and configure:

npm install -g my-mcp-server
claude mcp add my-server stdio "my-mcp-server"

Got: package.json with bin entry pointing to server entry point. Users install globally with npm install -g, register with claude mcp add.

If fail: Bin entry doesn't work after global install? Ensure server.js has shebang line (#!/usr/bin/env node), is marked executable. Verify package name doesn't conflict with existing npm packages.

Checks

  • Server starts without errors
  • tools/list returns all defined tools with correct schemas
  • Each tool executes correctly with valid input
  • Tools return appropriate errors for invalid input
  • Server works with Claude Code via stdio transport
  • Tools discoverable and usable in Claude sessions

Pitfalls

  • Blocking operations: MCP servers should handle requests asynchronously. Long-running operations block other tool calls.
  • Missing error handling: Unhandled exceptions crash server. Always wrap tool handlers in try/catch.
  • Schema mismatches: Tool parameter schemas must exactly match what handler expects
  • stdio buffering: Using stdio transport? Ensure output flushed. Node.js buffers stdout by default.
  • Security: MCP servers have same access as process. Validate inputs carefully, especially for shell commands or database queries.

See Also

  • configure-mcp-server - connect built server to clients
  • troubleshoot-mcp-connection - debug connectivity issues
  • containerize-mcp-server - package server in Docker

GitHub Repository

pjt222/agent-almanac
Path: i18n/caveman/skills/build-custom-mcp-server
0
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