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Developing MCP-Powered Agentic AI Systems
Coursera
Course
Unknown

Developing MCP-Powered Agentic AI Systems

Edureka

Explore developing reliable, scalable agentic AI systems using the Model Context Protocol (MCP), including architecture, communication, and deployment for AI practitioners and developers.

Unknown4 weeksEnglish

About this Course

This program introduces you to Developing MCP-Powered Agentic AI Systems, designed for developers and AI practitioners who want to build reliable, scalable, and production-ready agent systems using the Model Context Protocol (MCP). You’ll begin by mastering the core architecture of MCP, learning how agents communicate with servers, discover tools, and access structured resources through standardized interfaces. You’ll build MCP servers, design namespaced tools, and expose real-world data through URI-based resources, establishing a strong foundation for interoperable agent systems. Next, you’ll dive into deep agent reasoning and resilience patterns. You’ll explore reflexive and self-improving agents, output-correction feedback loops, fallback strategies, and self-healing recovery mechanisms. Through hands-on demonstrations, you’ll design agents capable of multi-step planning, hierarchical reasoning, and reliable execution across complex workflows. As you progress, you’ll focus on deployment and observability. You’ll learn to expose agents as APIs, track execution visibility, evaluate agent quality, and monitor performance using modern observability tools. You’ll also deploy end-to-end agent applications, combining reasoning pipelines, monitoring, and user-facing interfaces into complete production systems. By the end of the program, you will be able to: - Explain MCP architecture and how it enables reliable, multi-agent communication. - Build MCP servers with structured tools and URI-based resource access. - Design agents that reason reflexively, recover from failures, and execute multi-step tasks. - Implement fallback logic, error recovery, and self-healing agent workflows. - Deploy production-grade agent APIs with execution visibility and observability. - Evaluate, monitor, and scale agent systems for real-world applications. This program is ideal for AI engineers, developers, and technical professionals who want to move beyond prompt-based systems and build robust agentic AI architectures. Prior experience with Python programming and basic AI concepts will help you get the most out of the course. Learners need a reliable internet connection, a modern web browser, and access to Python development tools. The course uses MCP-based agent tooling and modern AI frameworks, without requiring specialized hardware. Join this program to learn how to design, deploy, and operate intelligent, resilient, and production-ready agent systems powered by MCP

What You'll Learn

  • Explain MCP architecture and communication patterns enabling reliable agentic AI systems
  • Implement MCP servers, tools, and URI-based resources connecting agents to structured data
  • Design intelligent agents that reason reflexively, plan multi-step tasks, and recover from failures
  • Deploy and evaluate agent systems using APIs, monitoring, and scalable deployment

Prerequisites

  • Prior hands-on experience with the core concepts covered in this course
  • Comfort applying the main tools or methods independently

Instructors

E

Edureka

Topics

Software Development
Computer Science
Machine Learning
Data Science

Course Info

PlatformCoursera
LevelUnknown
PacingUnknown
PriceFree

Skills

تطوير البرمجيات
علوم الحاسوب
تعلم الآلة
علم البيانات

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