Integrating Model Context Protocol (MCP) Tools with Semantic Kernel: A Step-by-Step Guide
@LiteObject
What is MCP with Semantic Kernel?
MCP with Semantic Kernel is a project that integrates Model Context Protocol (MCP) tools with Microsoft Semantic Kernel to create AI-driven workflows. It allows large language models (LLMs) to seamlessly call external tools, enhancing AI interoperability and contextual understanding.
How to use MCP with Semantic Kernel?
To use this project, clone the repository, restore dependencies, and configure your OpenAI API key. Then, connect to an MCP server to retrieve available tools for use with Semantic Kernel.
Key features of MCP with Semantic Kernel?
- Integration of MCP tools with Semantic Kernel for enhanced AI capabilities.
- Dynamic function calling by LLMs based on user prompts.
- Standardized protocol for tool integration, promoting interoperability.
- Sample code provided for developers to get started easily.
Use cases of MCP with Semantic Kernel?
- Automating workflows by connecting AI models with external data sources.
- Enhancing data retrieval processes through AI orchestration.
- Integrating various services and APIs into AI applications.
FAQ from MCP with Semantic Kernel?
- What is Model Context Protocol (MCP)?
MCP is an open-standard protocol that standardizes how applications provide context to AI models, acting as a universal connector for LLMs.
- Do I need prior experience with C# to use this project?
Basic familiarity with C# and Semantic Kernel concepts is recommended, but the project includes step-by-step guidance for setup.