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Enables querying of live Dynamics CRM data through natural language questions using LLMs like Claude Desktop.
Enables querying of live Elasticsearch data from Claude Desktop using CData JDBC Drivers through a read-only MCP interface.
Indexes and semantically searches Markdown documents using vector embeddings and a self-contained vector database.
Implements the Model Context Protocol (MCP) as a comprehensive Python backend, integrating JSON-RPC 2.0, Azure OpenAI, and Server-Sent Events for streaming responses.
Exposes GraphQL schema information for Raphtory graphs, enabling LLMs to understand graph structure.
Adapts existing web APIs into a standardized Model Context Protocol (MCP) interface for structured and consistent AI access.
Enables connecting to Excel Online data from Claude Desktop through CData JDBC Drivers.
Enables Claude AI to directly control and manipulate molecular structures within PyMOL.
Analyzes text for toxicity using the Perspective API within the Model Context Protocol.
Enables querying of BigQuery tables using MCP.
Serves as a server for interacting with biodiversity models.
Exposes code repositories to AI clients, enabling direct read, write, and navigation of codebase files.
Manages product inventory with advanced features, PostgreSQL backend, Docker containerization, and multi-platform AI integrations.
Extracts and analyzes data from documents such as invoices and bank statements, enabling interactive querying of their content through an AI agent system.
Enables interaction with Watson Discovery to retrieve project details, collections, and documents matching specific queries.
Demonstrates the Model Context Protocol (MCP) using a locally hosted LLM and Java Spring Boot.
Extracts clean, LLM-ready content from any URL using Jina AI's Reader API for intelligent web reading, delivered as a Model Context Protocol server.
Retrieves information from the AWS Knowledge Base using the Bedrock Agent Runtime, enabling Retrieval-Augmented Generation (RAG).
Augments Claude with Python code execution, shell command capabilities, and file manipulation.
Enables the application of Model-Context-Protocol concepts through an agent-based programming approach.
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