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Enables read-only access to PostgreSQL databases with enhanced multi-schema support for Model Context Protocol.
Enables large language models to interact with the Alpaca trading API for stock trading and account management through natural language.
Enables Claude to programmatically create, edit, and retrieve data from Google Forms.
Enables AI assistants to interact with movie data from The Movie Database (TMDB) API.
Access Eight Sleep Pod data through a Model Context Protocol (MCP) server.
Enables querying of the Consumer Financial Protection Bureau's (CFPB) Consumer Complaint Database API from within applications like Claude Desktop.
Extract insights from TikTok data through video discovery and metadata retrieval.
Connect AI agents to Tigris object storage for seamless bucket and object management.
Manages NFL data, provides comprehensive fantasy league tools, and extracts web content for AI applications via REST and FastMCP protocols.
Deploys an agentic AI architecture on AWS Fargate for Amazon ECS, enabling an AI service to interact with multiple Model Context Protocol servers to perform various actions.
Orchestrates enterprise-grade AI agents to streamline developer and DevOps workflows across various toolchains.
Analyzes website performance, accessibility, and SEO using Google Lighthouse, offering actionable recommendations and AI-powered insights.
Provides personalized Korean Beauty information, skin analysis, and product recommendations through real-time web search and curated knowledge.
Converts Claude-style skills into callable tools, enabling seamless integration for non-Claude MCP clients.
Builds self-contained, searchable documentation servers with hybrid vector and keyword search capabilities.
Integrates real-time Indian options market data and comprehensive volatility analytics into Claude Desktop for AI-driven financial insights.
Offers a collection of Zoo-built utilities accessible via the Model Context Protocol.
Predicts optimal k-point distances and grids for SCF DFT calculations using machine learning models trained on Quantum ESPRESSO data.
Provides AI agents with high-performance, self-evolving long-term memory and knowledge management capabilities.
Enables Large Language Models to interact with and control a running Common Lisp image.
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