Agentic AI systems leverage independent AI agents that reason, learn, and adapt to automate tasks and manage complex workflows in enterprises. Utilizing protocols like Model Context Protocol (MCP) and Agent2Agent (A2A), these autonomous agents enhance communication and collaboration while also presenting challenges in monitoring and security. The article discusses the fundamentals of AI agents, their operational analogies, and the importance of orchestration in achieving effective task management.