מה צריך לדעת לפני
שתתחיל
מתחיל 5 July 2026 09:06
נגמר 5 July 2026
3 hours
שדרוג אופציונלי זמין
בינוני
התקדמות בקצב שלך
Free Trial Available
שדרוג אופציונלי זמין
סקירה כללית
Integrate AI/LLM applications with APIs, databases, and filesystems easier than ever before with the Model Context Protocol (MCP). Why Learn the Model Context Protocol?Large language models can't access real-time data or take actions on their own, and wiring each tool or API with custom code doesn't scale.
The Model Context Protocol (MCP) solves this with a single, standardized way for AI applications to connect to external tools, data, and services—often called "the USB-C port for AI." In this course, you'll build MCP servers and clients from scratch in Python and wire them to an LLM.How Do I Build and Connect My First MCP Server?You'll start by learning the MCP architecture—host, client, and server—and the three primitives every server exposes:
tools, resources, and prompts. Then you'll build a currency converter server using FastMCP, add docstrings and type hints so an LLM can discover your tools, and write an async Python client that lists and calls those tools over stdio transport.How Do I Give an LLM Real-Time Tools and Context?Tools alone aren't enough—models also need data and behavioral instructions.
You'll add resources for read-only context and prompts to guide the model when inputs are vague, then wire all three primitives into an OpenAI LLM using the five-step tool-calling workflow so it can answer confidently or ask for clarification when it should.How Do I Take MCP Servers to Production?Real-world servers need more than happy-path code. You'll swap file-based resources for database-backed queries, add request timeouts, structured error handling, and secure API authentication that keeps keys server-side.
Finally, you'll connect to a third-party MCP server and see that the same client code works with any server that speaks the protocol.
סילבוס
- The Building Blocks of MCP
- MCP-Enabled LLM Applications
- Preparing MCP Servers for Production
נלמד על ידי
James Chapman and Korey Stegared-Pace
נושאים
Artificial Intelligence