发现优秀的 MCP 服务器

通过 MCP 服务器扩展您的代理能力,拥有 16,380 个能力。

全部16,380
task

task

一个 MCP 服务器,用于暴露一种数据格式,以便将翻译任务转化为环境行动。 Or, a slightly more formal and technical translation: 一个 MCP 服务器,用于暴露一种数据格式,以将翻译任务转化为环境行为。

Seamless Sign-ups MCP Server

Seamless Sign-ups MCP Server

A demonstration project that uses Google Gemini 2.0 Flash to interact with a locally hosted Model Calling Protocol server for managing user registration data stored in CSV files.

Elysia MCP Starter

Elysia MCP Starter

A template for building Model Context Protocol servers using Elysia and Bun runtime, enabling LLM clients like Claude Desktop and Cody to access custom tools, prompts, and data resources.

Ignition MCP Server

Ignition MCP Server

Enables AI assistants to interact with Inductiveautomation's Ignition SCADA/MES platform through its REST API. Provides 45+ tools for gateway management, project operations, backup handling, log analysis, and license activation.

MSPaint MCP Server with AI-based Planning Algorithms

MSPaint MCP Server with AI-based Planning Algorithms

使用高级 AI 提示来增强 LLM 规划,以解决复杂的数学问题并在画图画布上绘制答案。 (Shǐyòng gāojí AI tíshì lái zēngqiáng LLM guīhuà, yǐ jiějué fùzá de shùxué wèntí bìng zài huàtú huàbù shàng huìzhì dá'àn.)

MCP Server

MCP Server

A server implementing Model Coupling Protocol for HDF5 file operations, Slurm job management, hardware monitoring, and data compression.

BooksAPI-MCP

BooksAPI-MCP

A Model Context Protocol (MCP) server implementation built with Python and FastAPI for educational purposes. Demonstrates MCP server functionality through a books API interface.

Lilith Shell

Lilith Shell

一个增强型的 MCP 服务器,赋予 AI 助手在用户系统上执行终端命令的能力,同时具有改进的安全控制,专为受控环境设计。

Google Cloud MCP Server

Google Cloud MCP Server

一个模型上下文协议服务器,连接到 Google Cloud 服务,允许用户通过自然语言交互查询日志、与 Spanner 数据库交互以及分析 Cloud Monitoring 指标。

Atlassian Confluence MCP Server

Atlassian Confluence MCP Server

镜子 (jìng zi)

JSer.info MCP Server

JSer.info MCP Server

A Model Context Protocol server that provides search and retrieval capabilities for JSer.info's JavaScript resource database, enabling access to items, posts, product information, and timeline data through various specialized tools.

MCP GitHub Server

MCP GitHub Server

Postman MCP Generator

Postman MCP Generator

Automatically converts Postman API collections into MCP-compatible tools for AI assistants. Enables users to interact with any API through natural language by generating JavaScript tools from Postman requests.

filesystem-mcp

filesystem-mcp

一个基于 TypeScript 的 MCP 服务器,实现了一个简单的笔记系统,允许用户通过 URI 和工具创建、访问和生成文本笔记的摘要。

Smithsonian Open Access MCP Server

Smithsonian Open Access MCP Server

Provides AI assistants with access to search, explore, and analyze over 3 million collection objects from the Smithsonian Institution's museums. Enables finding objects currently on exhibit, retrieving detailed metadata, high-resolution images, and 3D models from America's national museums.

MCP

MCP

Okay, here's a breakdown of how you might configure an MCP (presumably a "Management Console Platform" or similar) server to view company information and stock prices using Claude (likely referring to Anthropic's Claude AI model). This is a conceptual outline, as the specific steps will depend heavily on the MCP software you're using. **I. Understanding the Components** * **MCP Server:** This is the central system that manages and displays information. It likely has a database, a user interface, and some form of scripting or configuration capabilities. * **Claude AI:** This is the AI model that will provide the company information and stock price data. You'll need to interact with it through its API. * **Data Sources:** Claude will need access to reliable data sources for company information and stock prices. This might include: * **Financial APIs:** APIs like Alpha Vantage, IEX Cloud, or Finnhub provide real-time and historical stock data. * **Company Information Databases:** APIs or databases like Crunchbase, Clearbit, or even Wikipedia can provide company descriptions, industry information, and key personnel. **II. High-Level Steps** 1. **Choose and Set Up Data Sources:** * **Select APIs:** Research and choose the financial and company information APIs that best suit your needs (consider cost, data coverage, and ease of use). * **API Keys:** Obtain API keys from the chosen providers. Store these securely (e.g., using environment variables or a secrets management system). 2. **Develop an API Integration Layer (Middleware):** * **Purpose:** This layer acts as an intermediary between your MCP server and the Claude API and data sources. It handles: * **API Calls:** Making requests to the financial and company information APIs. * **Data Formatting:** Transforming the data from the APIs into a format that Claude can understand. * **Error Handling:** Managing API errors and retries. * **Rate Limiting:** Respecting the API rate limits to avoid being blocked. * **Technology:** You can build this layer using languages like Python, Node.js, or Java. Python is often a good choice due to its rich ecosystem of libraries for data science and API interaction. 3. **Integrate with Claude AI:** * **Claude API Access:** Obtain access to the Claude API (you'll likely need to sign up for an account with Anthropic). * **Prompt Engineering:** Craft effective prompts for Claude to extract the desired information. For example: * "Summarize the key financial information for [Company Name] based on the following data: [Financial Data]." * "Provide a brief overview of [Company Name], including its industry, key products, and recent news." * "What is the current stock price of [Stock Ticker]?" * **API Calls to Claude:** Send the formatted data and prompts to the Claude API. * **Response Handling:** Parse the response from Claude and extract the relevant information. 4. **Configure the MCP Server:** * **Data Display:** Design the user interface within your MCP to display the company information and stock prices. * **Data Retrieval:** Configure the MCP to call your API integration layer to retrieve the data. This might involve: * **Scripting:** Using the MCP's scripting language (if it has one) to make HTTP requests to your API. * **Plugins/Extensions:** Developing a plugin or extension for the MCP that handles the data retrieval and display. * **User Interface:** Create a user-friendly interface where users can search for companies and view their information. 5. **Testing and Refinement:** * **Thorough Testing:** Test the entire system with a variety of companies and stock tickers to ensure accuracy and reliability. * **Prompt Optimization:** Refine your prompts to Claude to improve the quality of the responses. * **Error Handling:** Implement robust error handling to gracefully handle API failures and other issues. * **Performance Tuning:** Optimize the performance of the system to ensure that data is retrieved and displayed quickly. **III. Example Implementation (Conceptual - Python with Flask)** This is a simplified example to illustrate the concepts. You'll need to adapt it to your specific MCP and data sources. ```python # Python (Flask) API Integration Layer from flask import Flask, request, jsonify import requests import os app = Flask(__name__) # API Keys (replace with your actual keys) ALPHAVANTAGE_API_KEY = os.environ.get("ALPHAVANTAGE_API_KEY") CLAUDE_API_KEY = os.environ.get("CLAUDE_API_KEY") # Function to get stock price from Alpha Vantage def get_stock_price(ticker): url = f"https://www.alphavantage.co/query?function=GLOBAL_QUOTE&symbol={ticker}&apikey={ALPHAVANTAGE_API_KEY}" try: response = requests.get(url) response.raise_for_status() # Raise HTTPError for bad responses (4xx or 5xx) data = response.json() price = data['Global Quote']['05. price'] return price except requests.exceptions.RequestException as e: print(f"Error fetching stock price: {e}") return None except KeyError: print("Error: Could not parse stock price data.") return None # Function to get company information from Claude (using a placeholder) def get_company_info(company_name): # In a real implementation, you'd fetch data from a company information API # and then use Claude to summarize it. This is a simplified example. prompt = f"Provide a brief overview of {company_name}." # Replace with actual Claude API call # response = requests.post("CLAUDE_API_ENDPOINT", headers={"Authorization": f"Bearer {CLAUDE_API_KEY}"}, json={"prompt": prompt}) # company_info = response.json()["text"] company_info = f"This is placeholder information for {company_name}." return company_info @app.route("/company_data") def get_company_data(): company_name = request.args.get("company") ticker = request.args.get("ticker") if not company_name or not ticker: return jsonify({"error": "Company name and ticker are required."}), 400 stock_price = get_stock_price(ticker) company_info = get_company_info(company_name) if stock_price is None: return jsonify({"error": "Could not retrieve stock price."}), 500 data = { "company_name": company_name, "ticker": ticker, "stock_price": stock_price, "company_info": company_info, } return jsonify(data) if __name__ == "__main__": app.run(debug=True) ``` **Explanation of the Python Example:** * **Flask:** A lightweight web framework for creating the API. * **API Keys:** The code retrieves API keys from environment variables (a secure way to store them). **Important:** Never hardcode API keys directly into your code. * **`get_stock_price()`:** Fetches the stock price from the Alpha Vantage API. It includes error handling for API requests and data parsing. * **`get_company_info()`:** This is a placeholder. In a real implementation, you would: 1. Fetch company data from a company information API (e.g., Crunchbase). 2. Construct a prompt for Claude that includes the company data. 3. Send the prompt to the Claude API. 4. Parse the response from Claude to extract the company overview. * **`/company_data` endpoint:** This endpoint takes the company name and ticker as query parameters. It calls the `get_stock_price()` and `get_company_info()` functions and returns the data as a JSON response. * **Error Handling:** The code includes basic error handling to catch API errors and missing data. **How to Use the Example with Your MCP:** 1. **Deploy the API:** Deploy the Python Flask API to a server (e.g., using Heroku, AWS, or Google Cloud). 2. **Configure Your MCP:** In your MCP, you would need to: * Create a user interface element (e.g., a search box) where users can enter the company name and ticker. * Use the MCP's scripting language or plugin system to make an HTTP request to your API endpoint (e.g., `http://your-api-server/company_data?company=Apple&ticker=AAPL`). * Parse the JSON response from the API and display the data in the MCP's user interface. **IV. Important Considerations** * **Security:** Protect your API keys and ensure that your API is secure. Consider using authentication and authorization to control access to the API. * **Scalability:** If you expect a large number of users, you'll need to design your API to be scalable. Consider using a load balancer and caching to improve performance. * **Cost:** Be aware of the costs associated with using the Claude API and the financial and company information APIs. Monitor your usage and set limits to avoid unexpected charges. * **Data Accuracy:** The accuracy of the data depends on the quality of the data sources and the effectiveness of your prompts to Claude. Verify the data and consider using multiple data sources to improve accuracy. * **Claude API Limitations:** Be aware of Claude's context window limits and other API limitations. You may need to break down large requests into smaller chunks. * **Prompt Engineering:** Experiment with different prompts to Claude to get the best results. Consider using techniques like few-shot learning to improve the accuracy and relevance of the responses. * **Rate Limiting:** All APIs have rate limits. Implement proper rate limiting in your API integration layer to avoid being blocked. **In Summary** Integrating Claude with your MCP to view company information and stock prices involves: 1. Setting up data sources (financial and company information APIs). 2. Creating an API integration layer to handle API calls, data formatting, and error handling. 3. Integrating with the Claude API to generate summaries and insights. 4. Configuring your MCP to retrieve and display the data. 5. Thoroughly testing and refining the system. Remember to adapt this outline to the specific capabilities of your MCP server and the requirements of your application. Good luck!

MCP DevTools

MCP DevTools

MCP DevTools:一套模型上下文协议服务器,使 AI 助手能够与开发者工具和服务进行交互

RTC MCP Server

RTC MCP Server

用于管理阿里云实时计算 Flink 资源的模型上下文协议 (MCP) 服务器实现

DNDzgz MCP Server

DNDzgz MCP Server

An MCP server that provides real-time information about the Zaragoza tram system, including arrival estimations and station details through the DNDzgz API.

Postgres MCP Server

Postgres MCP Server

Enables comprehensive PostgreSQL database management through natural language including queries, schema operations, user management, and administrative tasks. Features enterprise-grade connection pooling, transaction support, and full database administration capabilities.

MCP Gateway

MCP Gateway

聚合和提供多个 MCP 服务器的 MCP 网关

Xueqiu MCP

Xueqiu MCP

一个基于雪球 (中国股票市场) API 的 MCP 服务,使用户能够直接通过 Claude 或其他 AI 助手查询股票数据。

WSB Analyst MCP Server

WSB Analyst MCP Server

A Model Context Protocol server that enables LLM clients to fetch, analyze, and extract insights from real-time WallStreetBets posts, comments, and shared links for market analysis.

Klarna Payments MCP Server

Klarna Payments MCP Server

An MCP server that enables interaction with Klarna's Payments API, allowing applications to implement Klarna payment options through natural language commands.

Plane MCP Server

Plane MCP Server

A Model Context Protocol (MCP) server that enables LLMs to interact with Plane.so, allowing them to manage projects and issues through Plane's API. Using this server, LLMs like Claude can directly interact with your project management workflows while maintaining user control and security.

Soccer MCP Server

Soccer MCP Server

通过 API-Football 提供对全面足球统计数据和实时比赛数据的程序化访问,使应用程序能够检索联赛排名、球队赛程、球员统计数据和实时比赛事件。

Springboot + MCP + JUnit 模板项目

Springboot + MCP + JUnit 模板项目

一个使用 Spring Boot、MCP(服务器)和 JUnit 的模板项目,包含 JUnit 测试方法。 (Or, a slightly more literal translation:) 一个基于 Spring Boot、MCP(服务器)和 JUnit 的模板项目构想,其中包含 JUnit 测试方法。

Medium MCP Server

Medium MCP Server

Enables AI assistants to interact with Medium's platform for publishing, updating, and managing articles and drafts through OAuth 2.0 authentication with automatic retry logic and rate limit handling.

ProjectDocHelper

ProjectDocHelper

ProjectDocHelper 是一个 MCP (模型上下文协议) 服务器,旨在自动生成项目文档,并通过 MCP 使 AI 开发工具(如 Cursor)可以访问这些文档,从而提高 AI 响应的准确性和相关性。

Mcp Server

Mcp Server