scaffold-mcp-server
Über
Diese Fähigkeit generiert ein vollständiges, lauffähiges MCP-Server-Projekt aus einer Toolspezifikation unter Verwendung des offiziellen TypeScript- oder Python-SDKs. Sie erstellt die korrekte Struktur inklusive Transportkonfiguration, Tool-Handlern und einem Test-Framework. Nutzen Sie sie, um schnell einen neuen Server zu initialisieren, bestehende Tools zu MCP zu migrieren oder eine Tool-Oberfläche zum Testen mit Claude Code zu prototypisieren.
Schnellinstallation
Claude Code
Empfohlennpx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/scaffold-mcp-serverKopieren Sie diesen Befehl und fügen Sie ihn in Claude Code ein, um diese Fähigkeit zu installieren
Dokumentation
MCPサーバーのスキャフォールド
Generate a complete, runnable MCP server project from a tool specification document, using the official MCP SDK for TypeScript or Python.
使用タイミング
- You have a tool specification (from
analyze-codebase-for-mcpor written manually) and need a working server - Starting a new MCP server project and want correct structure from the start
- Migrating an existing tool integration to the MCP protocol
- Prototyping a tool surface to test with Claude Code before full implementation
- Need both the server scaffold and a test harness for CI
入力
- 必須: Tool specification document (YAML or JSON with tool names, parameters, return types)
- 必須: Target language (
typescriptorpython) - 必須: Transport type (
stdioorsse) - 任意: Output directory (default: current directory)
- 任意: Package name and version
- 任意: Authentication method (
none,bearer-token,api-key) - 任意: Docker packaging (
trueorfalse, default:false)
手順
ステップ1: Select SDK Language and Transport
1.1. Choose the implementation language based on project context:
- TypeScript: Best for Node.js ecosystems, web-adjacent tools, JSON-heavy workloads
- Python: Best for data science, ML, and scientific computing tool surfaces
1.2. Choose the transport mechanism:
- stdio: Default for local tool execution. Claude Code launches the server as a subprocess.
- SSE (Server-Sent Events): For remote/shared servers. Requires HTTP hosting.
1.3. Determine authentication requirements:
- none: Local stdio servers (process-level trust)
- bearer-token: Remote SSE servers with static tokens
- api-key: Remote servers with per-client keys
期待結果: Clear language, transport, and auth choices documented.
失敗時: If requirements are ambiguous, default to TypeScript + stdio + no auth for fastest time-to-working-server.
ステップ2: Initialize Project Structure
2.1. Create the project directory and initialize:
TypeScript:
mkdir -p $PROJECT_NAME && cd $PROJECT_NAME
npm init -y
npm install @modelcontextprotocol/sdk zod
npm install -D typescript @types/node tsx
npx tsc --init --target ES2022 --module nodenext --moduleResolution nodenext --outDir dist
Python:
mkdir -p $PROJECT_NAME && cd $PROJECT_NAME
python -m venv .venv
source .venv/bin/activate
pip install mcp pydantic
2.2. Create the standard directory structure:
$PROJECT_NAME/
├── src/
│ ├── index.ts|main.py # Server entry point
│ ├── tools/ # One file per tool category
│ │ ├── index.ts|__init__.py
│ │ └── [category].ts|.py
│ └── utils/ # Shared utilities
│ └── validation.ts|.py
├── test/
│ ├── harness.ts|.py # MCP test harness
│ └── tools/
│ └── [category].test.ts|.py
├── package.json|pyproject.toml
├── tsconfig.json # TypeScript only
├── Dockerfile # If Docker requested
└── README.md
2.3. Add a bin entry for npm (TypeScript) or entry point for Python:
TypeScript package.json:
{
"name": "$PACKAGE_NAME",
"version": "1.0.0",
"type": "module",
"bin": { "$PACKAGE_NAME": "./dist/index.js" },
"scripts": {
"build": "tsc",
"start": "node dist/index.js",
"dev": "tsx src/index.ts",
"test": "tsx test/harness.ts"
}
}
期待結果: A buildable project skeleton with all dependencies installed.
失敗時: If npm/pip install fails, check network connectivity and registry access. For TypeScript, ensure Node.js >= 18. For Python, ensure Python >= 3.10.
ステップ3: Implement Tool Handlers from Spec
3.1. Parse the tool specification document and for each tool, generate a handler:
TypeScript handler template:
import { McpServer } from "@modelcontextprotocol/sdk/server/mcp.js";
import { z } from "zod";
export function registerTools(server: McpServer): void {
server.tool(
"tool_name",
"Tool description from spec",
{
param1: z.string().describe("Parameter description"),
param2: z.number().optional().default(10).describe("Optional param"),
},
async ({ param1, param2 }) => {
try {
// TODO: Implement tool logic
const result = await performAction(param1, param2);
return {
content: [{ type: "text", text: JSON.stringify(result, null, 2) }],
};
} catch (error) {
return {
content: [{ type: "text", text: `Error: ${(error as Error).message}` }],
isError: true,
};
}
}
);
}
Python handler template:
from mcp.server import Server
from mcp.types import Tool, TextContent
from pydantic import BaseModel
class ToolNameParams(BaseModel):
param1: str
param2: int = 10
async def handle_tool_name(params: ToolNameParams) -> list[TextContent]:
try:
result = await perform_action(params.param1, params.param2)
return [TextContent(type="text", text=json.dumps(result, indent=2))]
except Exception as e:
return [TextContent(type="text", text=f"Error: {e}")]
3.2. Generate one handler file per tool category from the specification.
3.3. Add input validation beyond type checking:
- String length limits
- Numeric range bounds
- Enum value constraints
- Required field enforcement
3.4. Add structured error responses for all anticipated failure modes.
期待結果: A handler file per category with typed parameters and error handling.
失敗時: If the spec contains ambiguous types, default to string and add a TODO comment for manual refinement.
ステップ4: Configure Transport
4.1. Create the server entry point with the chosen transport:
stdio (TypeScript):
import { McpServer } from "@modelcontextprotocol/sdk/server/mcp.js";
import { StdioServerTransport } from "@modelcontextprotocol/sdk/server/stdio.js";
import { registerTools } from "./tools/index.js";
const server = new McpServer({
name: "$PACKAGE_NAME",
version: "1.0.0",
});
registerTools(server);
const transport = new StdioServerTransport();
await server.connect(transport);
SSE (TypeScript):
import { McpServer } from "@modelcontextprotocol/sdk/server/mcp.js";
import { SSEServerTransport } from "@modelcontextprotocol/sdk/server/sse.js";
import { registerTools } from "./tools/index.js";
const server = new McpServer({
name: "$PACKAGE_NAME",
version: "1.0.0",
});
registerTools(server);
const transport = new SSEServerTransport("/messages", response);
await server.connect(transport);
4.2. If authentication is required, add middleware:
- Bearer token: validate
Authorizationheader - API key: validate
X-API-Keyheader
4.3. Add a shebang line for stdio servers to enable direct execution:
#!/usr/bin/env node
期待結果: A working entry point that starts the MCP server on the configured transport.
失敗時: If the SDK version does not match the import paths, check the @modelcontextprotocol/sdk version and adjust imports. The SDK restructured paths between versions.
ステップ5: Create Test Harness
5.1. Build a test harness that validates every tool:
import { McpServer } from "@modelcontextprotocol/sdk/server/mcp.js";
import { InMemoryTransport } from "@modelcontextprotocol/sdk/inMemory.js";
import { Client } from "@modelcontextprotocol/sdk/client/index.js";
async function runTests(): Promise<void> {
const server = createServer();
const [clientTransport, serverTransport] = InMemoryTransport.createLinkedPair();
await server.connect(serverTransport);
const client = new Client({ name: "test-client", version: "1.0.0" });
await client.connect(clientTransport);
// Test: tools/list returns all expected tools
const tools = await client.listTools();
console.assert(tools.tools.length === EXPECTED_TOOL_COUNT);
// Test: each tool with valid input
for (const tool of tools.tools) {
const result = await client.callTool({
name: tool.name,
arguments: getTestInput(tool.name),
});
console.assert(!result.isError, `${tool.name} failed`);
}
// Test: each tool with invalid input returns isError
for (const tool of tools.tools) {
const result = await client.callTool({
name: tool.name,
arguments: getInvalidInput(tool.name),
});
console.assert(result.isError, `${tool.name} should reject invalid input`);
}
console.log("All tests passed");
}
5.2. Create test fixtures for each tool: valid inputs, invalid inputs, and edge cases.
5.3. Add a test script to package.json or pyproject.toml.
期待結果: A test harness that exercises every tool with both valid and invalid inputs.
失敗時: If InMemoryTransport is not available in the SDK version, fall back to spawning the server as a subprocess and communicating via stdio pipes.
ステップ6: Generate Documentation and Configuration
6.1. Generate a README.md with:
- Project description
- Installation instructions
- Claude Code configuration command
- Claude Desktop JSON configuration snippet
- Tool listing with descriptions and parameter schemas
- Development and testing instructions
6.2. Generate Claude Code registration command:
# stdio transport
claude mcp add $PACKAGE_NAME stdio "node" "dist/index.js"
# SSE transport
claude mcp add $PACKAGE_NAME -e API_KEY=your_key -- mcp-remote http://localhost:3000/mcp
6.3. Generate Claude Desktop configuration snippet:
{
"mcpServers": {
"$PACKAGE_NAME": {
"command": "node",
"args": ["path/to/dist/index.js"]
}
}
}
6.4. If Docker was requested, generate a Dockerfile:
FROM node:20-slim AS build
WORKDIR /app
COPY package*.json ./
RUN npm ci
COPY . .
RUN npm run build
FROM node:20-slim
WORKDIR /app
COPY --from=build /app/dist ./dist
COPY --from=build /app/node_modules ./node_modules
COPY --from=build /app/package.json .
ENTRYPOINT ["node", "dist/index.js"]
期待結果: Complete documentation and configuration files for immediate use.
失敗時: If the generated README has placeholder values, search the project for actual values to substitute. If Docker build fails, verify the base image matches the Node.js/Python version used.
バリデーション
- Project builds without errors (
npm run buildor equivalent) - Server starts and responds to
tools/listJSON-RPC request - Every tool from the specification is registered and discoverable
- Test harness passes for all tools with valid inputs
- Test harness confirms error responses for invalid inputs
- Claude Code can connect via
claude mcp addcommand - README includes working installation and configuration instructions
- All generated code passes linting (if configured)
よくある落とし穴
- SDK import path changes: The
@modelcontextprotocol/sdkpackage restructured its exports between versions. Always check the installed version's actual export paths. - Forgetting the shebang: stdio servers invoked directly need
#!/usr/bin/env nodeas the first line to be executable. - Blocking the event loop: Tool handlers in TypeScript must be
async. Synchronous operations block all other tool calls on the server. - Missing
type: "module"in package.json: The MCP SDK uses ESM imports. Without"type": "module", Node.js treats files as CommonJS and imports fail. - Zod schema drift: If the tool spec evolves but Zod schemas are not updated, validation mismatches cause silent failures. Generate schemas from a single source of truth.
- stdout pollution: stdio transport uses stdout for JSON-RPC. Any
console.login tool handlers corrupts the protocol stream. Useconsole.erroror a file logger instead.
関連スキル
analyze-codebase-for-mcp- generate the tool specification this skill consumesbuild-custom-mcp-server- manual server implementation for complex casesconfigure-mcp-server- connect the scaffolded server to Claude Code/Desktoptroubleshoot-mcp-connection- debug connectivity issues after deploymentcontainerize-mcp-server- package the server in Docker for distribution
GitHub Repository
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