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Demonstrates implementation and usage of Anthropic's Model Context Protocol (MCP) with AWS Bedrock.
Enables interaction with X (formerly Twitter) for retrieving tweets, creating new posts, and replying to existing ones.
Runs Python code locally within an interactive REPL environment.
Enables programmatic Gmail access for sending and receiving emails without local credential or token setup.
Integrates Flowise chatflows and assistants into the Model Context Protocol (MCP) ecosystem, enabling dynamic tool registration and simplified configurations.
Extracts the chain of thought from the Deepseek R1 reasoning model for use in Claude Desktop or any MCP client.
Manages containerd CRI interfaces using the Rust Model Context Protocol (RMCP) library.
Connects agents to Model Context Protocol (MCP) servers by securely exposing them to the internet.
Build and run Nostr NIP90 Data Vending Machines (DVMs) in Python.
Provides a standardized interface for AI models to interact with Glean's search and chat capabilities.
Provides a collection of examples and demos to help people building the web with Netlify.
Simplifies authorization for Python Model Context Protocol (MCP) servers.
Fetches portfolio details from the Interactive Brokers (IBKR) API.
Enables AI agents to send real-time notifications to devices via ntfy, supporting both public and self-hosted instances with token authentication.
Access and manage Kibana instances through natural language or programmatic requests within an MCP-compatible client.
Enables language models to perform symbolic mathematics and computer algebra through tool-calling.
Provides LLM tools to search and retrieve comprehensive clinical trial data from the official ClinicalTrials.gov REST API.
Provides a detailed, iterative walkthrough for implementing authorization in an Model Context Protocol (MCP) server.
Enables developers to interact with AI systems through speech across multiple channels, functioning as both a command-line tool and a Python library.
Empowers AI agents with deep visibility into HTTP traffic for enhanced debugging and analysis.
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