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Demonstrates how tools can be dynamically overridden across multiple Model Context Protocol servers.
Enables interaction with a Python interpreter and file system within a Docker container environment.
Enables LLMs to interact with and manage Obsidian vaults through the Model Context Protocol.
Adapt any HTTP API into a Model Context Protocol (MCP) toolset for AI agent interaction.
Integrates with Figma's API to interact with files, comments, components, and webhooks.
Submits URLs to search engines using the IndexNow protocol via a Model Context Protocol (MCP) server.
Generates complete WDIO test suites from user prompts, featuring intelligent file analysis for efficient script management.
Connects to Microsoft SQL Server databases via the Model Context Protocol, offering an OpenAPI proxy for data interaction and schema inspection.
Programmatically manage custom operational modes with full CRUD operations, schema validation, and file system watching.
Exposes all of MonkeyType's API endpoints as Model Context Protocol (MCP) tools for interaction with Large Language Models (LLMs).
Provides a basic Model Context Protocol (MCP) server demonstrating simple tools for greeting and arithmetic operations.
Delivers current weather conditions and system notifications to Model Context Protocol (MCP) clients like Claude.
Provides a playground environment for experimenting with and extending a TypeScript-based server.
Submits a GitHub repository as an MCP Server to the official MCPRepository registry.
Streamlines the creation and management of service reports.
Provides a Model Context Protocol server for managing a simple text-based notes system.
Enables secure remote execution of Rails console commands over SSH, facilitating both read-only operations and managed mutations in a deployed Rails environment.
Transforms mathematical problem descriptions into visual plots using AI.
Manages and summarizes notes using a Model Context Protocol server, integrating Retrieval Augmented Generation (RAG) and Large Language Models (LLMs).
Enables AI assistants to seamlessly interact with Atlassian Jira through a comprehensive Python-based Model Context Protocol server.
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