MCP Client

Created By
1999AZZARa year ago
TypeScript client for interacting with MCP (Model Context Protocol) servers
Overview

what is MCP Client?

MCP Client is a TypeScript client designed for interacting with MCP (Model Context Protocol) servers, providing specialized clients for various services like Wikipedia, Dictionary, Google Search, and LRU Caching.

how to use MCP Client?

To use MCP Client, install it via npm or yarn, then create an instance of the client with the MCP server URL and make requests using the provided methods.

key features of MCP Client?

  • Full TypeScript support with type definitions
  • JSON-RPC 2.0 protocol support
  • Batch request capabilities
  • Configurable timeouts and headers
  • Comprehensive error handling
  • Specialized clients for different MCP services
  • Promise-based API for asynchronous operations

use cases of MCP Client?

  1. Interacting with Wikipedia to fetch articles and search results.
  2. Looking up definitions and synonyms using the Dictionary client.
  3. Performing web and image searches through the Google Search client.
  4. Managing cache with the LRU Cache client for efficient data retrieval.

FAQ from MCP Client?

  • What is the installation process for MCP Client?

You can install MCP Client using npm with npm install @your-org/mcp-client or yarn with yarn add @your-org/mcp-client.

  • Does MCP Client support batch requests?

Yes, MCP Client supports batch requests to make multiple JSON-RPC calls in a single request.

  • How does error handling work in MCP Client?

MCP Client provides detailed error handling, returning Promises that reject with error objects containing information about network issues, HTTP errors, and MCP protocol errors.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
1999AZZAR
Star
0
Language
TypeScript
License
-

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