Discover Top MCP Servers - Improve Your AI Workflows
One-Stop MCP Server & Client Integration - 121,231 Services Listed
Categories
No LimitDeveloper toolsArtificial intelligence chatbotsResearch and dataKnowledge management and memoryEducation and learning toolsDatabaseFinanceSearch toolsSecurityVersion controlCloud platformImage and video processingMonitoringCommunication toolsOperating system automationEntertainment and mediaGames and gamificationNote-taking toolsSchedule managementMarketingHome automation and IoTLocation servicesBrowser automationFile systemE-commerce and retailCustomer supportSocial mediaVoice processingHealth and wellnessCustomer data platformTravel and transportationVirtualizationCloud storageLaw and complianceArt and cultureOtherLanguage translation
Authentication Status
No LimitOfficial CertificationUnofficial Certification
Location
No LimitLocalRemote
Programming Language
No LimitC# GoJavaJavaScriptPythonRustTypeScript
Type
Filter
Found a total of 3 results related to

Unrealgenaisupport
A generative AI support plugin for Unreal Engine that integrates multiple cutting - edge LLM/GenAI model APIs, providing AI integration layer support in game development, including chat and structured output functions for models such as OpenAI, Claude, and Deepseek, and supporting the Model Control Protocol (MCP) to achieve advanced functions such as scene object control and blueprint generation.
cpp
10.8K
3 points

Proyecto Tfg
This project designs and implements an architecture that connects the data space with generative AI. Through the Model Context Protocol (MCP) server as a secure middle layer, the language model can indirectly access the DuckDB database. It has the characteristics of modularity, extensibility, and log tracking, laying the foundation for future upgrades to the RAG architecture.
Python
7.7K
2 points

MCP Run Python
PydanticAI is a Python agent framework developed by the Pydantic team, aiming to simplify the development of production-grade applications based on generative AI. It supports multiple AI models, integrates Pydantic validation and structured output, provides a dependency injection system, streaming responses, and graph support, and seamlessly integrates with Pydantic Logfire. It is suitable for building AI applications that require type safety and efficiency.
Python
18.7K
0 points