scaffold-mcp-server
À propos
Cette compétence génère un projet de serveur MCP complet et exécutable à partir de spécifications d'outils, en utilisant les SDK officiels TypeScript ou Python. Elle crée une structure de projet appropriée incluant la configuration du transport, les gestionnaires d'outils et un environnement de test pour une utilisation immédiate. Utilisez-la pour démarrer un nouveau serveur MCP, migrer des outils existants vers MCP ou prototyper des interfaces d'outils pour des tests avec Claude Code.
Installation rapide
Claude Code
Recommandénpx 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-serverCopiez et collez cette commande dans Claude Code pour installer cette compétence
Documentation
MCP-Server aufsetzen
Generieren a complete, runnable MCP server project from a tool specification document, using the official MCP SDK for TypeScript or Python.
Wann verwenden
- You have a tool specification (from
analyze-codebase-for-mcpor written manuell) 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 vor full implementation
- Need both der Server scaffold and a test harness for CI
Eingaben
- Erforderlich: Tool specification document (YAML or JSON with tool names, parameters, return types)
- Erforderlich: Target language (
typescriptorpython) - Erforderlich: Transport type (
stdioorsse) - Optional: Output directory (default: current directory)
- Optional: Package name and version
- Optional: Authentication method (
none,bearer-token,api-key) - Optional: Docker packaging (
trueorfalse, default:false)
Vorgehensweise
Schritt 1: Auswaehlen SDK Language and Transport
1.1. Waehlen the implementation language basierend auf 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. Waehlen the transport mechanism:
- stdio: Default for local tool execution. Claude Code launches der Server as a subprocess.
- SSE (Server-Sent Events): For remote/shared servers. Requires HTTP hosting.
1.3. Bestimmen Authentifizierung requirements:
- none: Local stdio servers (process-level trust)
- bearer-token: Remote SSE servers with static tokens
- api-key: Remote servers with per-client keys
Erwartet: Clear language, transport, and auth choices documented.
Bei Fehler: If requirements are ambiguous, default to TypeScript + stdio + no auth for fastest time-to-working-server.
Schritt 2: Initialize Project Structure
2.1. Erstellen das Projekt 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. Erstellen the standard Verzeichnisstruktur:
$PROJECT_NAME/
├── src/
│ ├── index.ts|main.py # Server entry point
│ ├── tools/ # One file per tool category
│ │ ├── index.ts|__init__.py
│ │ └── [category].ts|.py
│ └── utils/ # Shared utilities
│ └── validation.ts|.py
├── test/
│ ├── harness.ts|.py # MCP test harness
│ └── tools/
│ └── [category].test.ts|.py
├── package.json|pyproject.toml
├── tsconfig.json # TypeScript only
├── Dockerfile # If Docker requested
└── README.md
2.3. Hinzufuegen a bin entry for npm (TypeScript) or entry point for Python:
TypeScript package.json:
{
"name": "$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"
}
}
Erwartet: A buildable project skeleton with all Abhaengigkeiten installed.
Bei Fehler: If npm/pip install fails, check network connectivity and registry access. For TypeScript, ensure Node.js >= 18. For Python, ensure Python >= 3.10.
Schritt 3: Implementieren Tool Handlers from Spec
3.1. Parsen the tool specification document and fuer jede 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: ${(error as Error).message}` }],
isError: true,
};
}
}
);
}
Python handler template:
from mcp.server import Server
from mcp.types import Tool, TextContent
from pydantic import BaseModel
class ToolNameParams(BaseModel):
param1: str
param2: int = 10
async def handle_tool_name(params: ToolNameParams) -> list[TextContent]:
try:
result = await perform_action(params.param1, params.param2)
return [TextContent(type="text", text=json.dumps(result, indent=2))]
except Exception as e:
return [TextContent(type="text", text=f"Error: {e}")]
3.2. Generieren one handler file per tool category from the specification.
3.3. Hinzufuegen input validation beyond type checking:
- String length limits
- Numeric range bounds
- Enum value constraints
- Required field enforcement
3.4. Hinzufuegen structured error responses for all anticipated failure modes.
Erwartet: A handler file per category with typed parameters and Fehlerbehandlung.
Bei Fehler: If the spec contains ambiguous types, default to string and add a TODO comment for manual refinement.
Schritt 4: Konfigurieren Transport
4.1. Erstellen der Server entry point with the chosen transport:
stdio (TypeScript):
import { McpServer } from "@modelcontextprotocol/sdk/server/mcp.js";
import { StdioServerTransport } from "@modelcontextprotocol/sdk/server/stdio.js";
import { registerTools } from "./tools/index.js";
const server = new McpServer({
name: "$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: "$PACKAGE_NAME",
version: "1.0.0",
});
registerTools(server);
const transport = new SSEServerTransport("/messages", response);
await server.connect(transport);
4.2. If Authentifizierung ist erforderlich, add middleware:
- Bearer token: validate
Authorizationheader - API key: validate
X-API-Keyheader
4.3. Hinzufuegen a shebang line for stdio servers to enable direct execution:
#!/usr/bin/env node
Erwartet: A working entry point that starts the MCP server on the configured transport.
Bei Fehler: If the SDK version nicht match the import paths, check the @modelcontextprotocol/sdk version and adjust imports. The SDK restructured paths zwischen versions.
Schritt 5: Erstellen Testen Harness
5.1. Erstellen a test harness that validates every tool:
import { McpServer } from "@modelcontextprotocol/sdk/server/mcp.js";
import { InMemoryTransport } from "@modelcontextprotocol/sdk/inMemory.js";
import { Client } from "@modelcontextprotocol/sdk/client/index.js";
async function runTests(): Promise<void> {
const server = createServer();
const [clientTransport, serverTransport] = InMemoryTransport.createLinkedPair();
await server.connect(serverTransport);
const client = new Client({ name: "test-client", version: "1.0.0" });
await client.connect(clientTransport);
// Test: tools/list returns all expected tools
const tools = await client.listTools();
console.assert(tools.tools.length === EXPECTED_TOOL_COUNT);
// Test: each tool with valid input
for (const tool of tools.tools) {
const result = await client.callTool({
name: tool.name,
arguments: getTestInput(tool.name),
});
console.assert(!result.isError, `${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. Erstellen test fixtures fuer jede tool: valid inputs, invalid inputs, and Grenzfaelle.
5.3. Hinzufuegen a test script to package.json or pyproject.toml.
Erwartet: A test harness that exercises every tool with both valid and invalid inputs.
Bei Fehler: If InMemoryTransport ist nicht available in the SDK version, fall back to spawning der Server as a subprocess and communicating via stdio pipes.
Schritt 6: Generieren Documentation and Configuration
6.1. Generieren 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. Generieren Claude Code registration command:
# stdio transport
claude mcp add $PACKAGE_NAME stdio "node" "dist/index.js"
# SSE transport
claude mcp add $PACKAGE_NAME -e API_KEY=your_key -- mcp-remote http://localhost:3000/mcp
6.3. Generieren Claude Desktop configuration snippet:
{
"mcpServers": {
"$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"]
Erwartet: Abschliessen documentation and configuration files for immediate use.
Bei Fehler: If the generated README has placeholder values, search das Projekt for actual values to substitute. If Docker build fails, verify the base image matches the Node.js/Python version used.
Validierung
- Project builds ohne errors (
npm run buildor equivalent) - Server starts and responds to
tools/listJSON-RPC request - Every tool from the specification is registered and discoverable
- Testen harness passes for all tools with valid inputs
- Testen 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)
Haeufige Stolperfallen
- SDK import path changes: The
@modelcontextprotocol/sdkpackage restructured its exports zwischen 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 muss
async. Synchronous operations block all other tool calls on der 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 sind nicht updated, validation mismatches cause silent failures. Generieren 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 stattdessen.
Verwandte Skills
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 nach deploymentcontainerize-mcp-server- package der Server in Docker for distribution
Dépôt GitHub
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