Sponsored by Deepsite.site

SwiftMCP

Created By
G1Joshia year ago
Model Context Protocol (MCP) Swift
Content

SwiftMCP

A Swift implementation of the Model Context Protocol (MCP) for AI agent interactions.

Overview

SwiftMCP is a Model Context Protocol (MCP) implementation in Swift, consisting of both server and client components.

Requirements

  • Swift 6.1 or later
  • iOS 18.0+ / macOS 15.0+
  • Xcode 15.0+

Project Structure

The project is organized into two main components:

  • SwiftMCPServer: The server implementation
  • SwiftMCPClient: The client implementation

Dependencies

Installation

  1. Clone the repository:
git clone <repo>
cd SwiftMCP
  1. Build the project:
swift build

Server

The SwiftMCP server component provides a Model Context Protocol server implementation in Swift. It enables AI agents to interact with Swift applications using the standard MCP protocol.

Features

  • Built with Swift 6.1
  • Implements MCP protocol over standard I/O
  • Includes support for logging, prompts, resources, and tools
  • Designed for iOS 18+ and macOS 15+

Getting Started

  1. Build the server:
swift build --product SwiftMCPServer
  1. Run the server:
swift run SwiftMCPServer

Server Component Details

The server component (SwiftMCPServer) is responsible for:

  • Handling incoming MCP connections
  • Managing model context
  • Processing client requests
  • Maintaining state synchronization

Location: SwiftMCPServer/Sources

Client

The SwiftMCP client component allows Swift applications to connect to and interact with MCP-compatible AI agents.

Features

  • Built with Swift 6.1
  • Implements MCP client over standard I/O
  • Designed for iOS 18+ and macOS 15+
  • Simple API for initializing and communicating with MCP servers

Getting Started

  1. Build the client:
swift build --product SwiftMCPClient
  1. Run the client:
swift run SwiftMCPClient

Client Component Details

The client component (SwiftMCPClient) provides:

  • Connection management to MCP server
  • Model context synchronization
  • Real-time updates handling
  • Client-side state management

Location: SwiftMCPClient/Sources

Recommend Servers
TraeBuild with Free GPT-4.1 & Claude 3.7. Fully MCP-Ready.
Baidu Map百度地图核心API现已全面兼容MCP协议,是国内首家兼容MCP协议的地图服务商。
BlenderBlenderMCP connects Blender to Claude AI through the Model Context Protocol (MCP), allowing Claude to directly interact with and control Blender. This integration enables prompt assisted 3D modeling, scene creation, and manipulation.
Amap Maps高德地图官方 MCP Server
Howtocook Mcp基于Anduin2017 / HowToCook (程序员在家做饭指南)的mcp server,帮你推荐菜谱、规划膳食,解决“今天吃什么“的世纪难题; Based on Anduin2017/HowToCook (Programmer's Guide to Cooking at Home), MCP Server helps you recommend recipes, plan meals, and solve the century old problem of "what to eat today"
Visual Studio Code - Open Source ("Code - OSS")Visual Studio Code
EdgeOne Pages MCPAn MCP service designed for deploying HTML content to EdgeOne Pages and obtaining an accessible public URL.
CursorThe AI Code Editor
RedisA Model Context Protocol server that provides access to Redis databases. This server enables LLMs to interact with Redis key-value stores through a set of standardized tools.
WindsurfThe new purpose-built IDE to harness magic
Tavily Mcp
ChatWiseThe second fastest AI chatbot™
Playwright McpPlaywright MCP server
Serper MCP ServerA Serper MCP Server
AiimagemultistyleA Model Context Protocol (MCP) server for image generation and manipulation using fal.ai's Stable Diffusion model.
MCP AdvisorMCP Advisor & Installation - Use the right MCP server for your needs
Y GuiA web-based graphical interface for AI chat interactions with support for multiple AI models and MCP (Model Context Protocol) servers.
DeepChatYour AI Partner on Desktop
MiniMax MCPOfficial MiniMax Model Context Protocol (MCP) server that enables interaction with powerful Text to Speech, image generation and video generation APIs.
Jina AI MCP ToolsA Model Context Protocol (MCP) server that integrates with Jina AI Search Foundation APIs.
Zhipu Web SearchZhipu Web Search MCP Server is a search engine specifically designed for large models. It integrates four search engines, allowing users to flexibly compare and switch between them. Building upon the web crawling and ranking capabilities of traditional search engines, it enhances intent recognition capabilities, returning results more suitable for large model processing (such as webpage titles, URLs, summaries, site names, site icons, etc.). This helps AI applications achieve "dynamic knowledge acquisition" and "precise scenario adaptation" capabilities.