agentic-ai-course

enthudebugger
15
Explore Agentic AI with the Dapr Agentic Cloud Ascent (DACA) pattern, using OpenAI Agents SDK, MCP, A2A communication, knowledge graphs, and Dapr. Orchestrated via Rancher Desktop and Kubernetes, it enables scalable, resilient multi-agent AI systems.

Overview

What is agentic-ai-course

The agentic-ai-course is a comprehensive educational program designed to explore Agentic AI using the Dapr Agentic Cloud Ascent (DACA) pattern. It incorporates OpenAI Agents SDK, MCP, A2A communication, knowledge graphs, and Dapr, enabling the development of scalable and resilient multi-agent AI systems orchestrated via Rancher Desktop and Kubernetes.

How to Use

To use the agentic-ai-course, participants can enroll in the Panaversity Certified Agentic & Robotic AI Engineer program, which includes courses AI-201, AI-202, and AI-301. The course materials and resources are available in the repository, allowing learners to build and scale their own Agentic AI systems.

Key Features

Key features of the agentic-ai-course include the integration of Dapr for managing multi-agent systems, the use of OpenAI Agents SDK for beginners, and the emphasis on scalability and resilience in AI systems. The course also addresses the challenge of handling millions of concurrent agents efficiently.

Where to Use

The agentic-ai-course can be applied in various fields including education, software development, and AI research. It is particularly relevant for organizations looking to develop advanced AI systems capable of managing large-scale agent interactions.

Use Cases

Use cases for the agentic-ai-course include training AI developers, building startups focused on Agentic AI, and creating applications that require the management of numerous concurrent AI agents, such as customer service bots, automated trading systems, and smart city applications.

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