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In this video, you’ll get a clear, exam-focused explanation of the Model Context Protocol (MCP)—one of the most important concepts in modern agentic AI systems. Originally introduced by Anthropic, MCP provides a standardized way for AI agents to interact with tools, data sources, and external systems. Often described as a “USB-C port for AI applications,” MCP allows agents to plug into a wide range of capabilities without custom integrations. This video explains how MCP works, what MCP servers provide, and how MCP is deployed on AWS. What You’ll Learn What the Model Context Protocol (MCP) is and why it matters How MCP standardizes tool and context access for AI agents MCP architecture and request-response model (high level) What MCP servers expose: tools, resources, and prompts Real-world MCP server examples (GitHub, Jira, Slack, PostgreSQL, and more) How to deploy MCP servers on AWS When to use AWS Lambda vs Amazon ECS (Fargate) for MCP workloads How MCP fits into Amazon Bedrock Agent Core architectures This video is ideal for: AWS certification candidates (Generative AI, ML, and Architect tracks) Developers building agentic AI systems with tools and context Architects designing scalable MCP and agent runtimes on AWS 👍 If this video helps you, like and subscribe for more AWS and Agentic AI exam-focused content. #ModelContextProtocol #MCP #AgenticAI #AWSGenerativeAI #AmazonBedrock #MCPServers #AWSLambda #AmazonECS #AWSCertification #AWSExamPrep