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Integrates the Perplexity API as a tool within an MCP (Managed Code Platform) environment.
Analyzes Next.js app directories to extract information about API routes, including paths, methods, and schemas.
Integrates with the Box API to perform operations such as file search, text extraction, and AI-based querying.
Enhances Payload CMS development by providing code validation, template generation, and project scaffolding.
Generates production-ready Model Context Protocol (MCP) server boilerplate from OpenAPI specifications, enabling exposure of existing APIs as powerful tools for AI agents.
Connect Claude/Anthropic AI systems to Bitbucket to access and manage repositories, pull requests, and workspace data.
Provides a Model Context Protocol (MCP) server for streamlined PocketBase database interactions.
Executes Postman collections using Newman and exposes detailed API test results.
Provides a Rust-based CLI server template for implementing the Model Context Protocol (MCP).
Connects to managed indexes on LlamaCloud to provide queryable tools for use with MCP clients.
Provides a CLI and API to manage and execute MCPs locally.
Integrates MCP Clients with Stability AI to generate, edit, and upscale images.
Enables LLMs to interact with and manipulate JSON data through standardized tools.
Integrates OpenAI's o1 model and Flux capabilities through Model Context Protocol (MCP) servers.
Provides a foundational server for managing and deploying AI agents within Svelte applications.
Provides Go bindings for the txtai API, enabling access to semantic search, LLM orchestration, and language model workflows.
Provides a centralized gateway and registry for managing and accessing multiple Model Context Protocol (MCP) servers.
Provides fast and standardized access to 1C:Enterprise platform reference information for AI assistants.
Provides a flexible memory system for AI applications, integrating with MCP-compatible applications or functioning as a direct library.
Enables Large Language Models to interact with Model Context Protocol (MCP) servers by writing and executing TypeScript/JavaScript code through a local HTTP proxy.
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