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Learn Model Context Protocol with Python

You're reading from   Learn Model Context Protocol with Python Build agentic systems in Python with the new standard for AI capabilities

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Product type Paperback
Published in Oct 2025
Publisher Packt
ISBN-13 9781806103232
Length 304 pages
Edition 1st Edition
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Author (1):
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Christoffer Noring Christoffer Noring
Author Profile Icon Christoffer Noring
Christoffer Noring
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Toc

Table of Contents (17) Chapters Close

Preface 1. Introduction to the Model Context Protocol 2. Explaining the Model Context Protocol FREE CHAPTER 3. Building and Testing Servers 4. Building SSE Servers 5. Streamable HTTP 6. Advanced Servers 7. Building Clients 8. Consuming Servers 9. Sampling 10. Elicitation 11. Securing Your Application 12. Bringing MCP Apps to Production 13. Unlock Your Book’s Exclusive Benefits 14. Other Books You May Enjoy
15. Index
Appendix: Building for the Web with Modern Python

Introduction to the Model Context Protocol

Generative AI has rapidly become a force in today’s technological landscape, reshaping industries and redefining how we approach problem-solving. From natural language processing to image generation, the integration of generative AI into various domains has opened up new possibilities for innovation and efficiency.

For us developers, integrating generative AI into app development workflows is not without its complexities. We must carefully evaluate factors such as model accuracy, ethical considerations, and computational efficiency.

It’s in the process of building applications that we need to consider how we standardize the way we build our AI applications. Standardization means that everything looks the same, which should mean easier integration and collaboration across different teams and tools.

This is where the Model Context Protocol (MCP) comes in, to standardize how we ensure that AI-powered applications can easily find what they need from tools, content, and prompts; more on that shortly.

The chapter covers the following topics:

  • How we got here, from SOAP to REST to GraphQL to gRPC to MCP
  • The need for a standard
  • Endless possibilities: know how to prompt, and a world of MCP servers is your oyster
  • What is the MCP?
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