Course Outline

Introduction to Agentic AI

  • Defining agentic AI and its relationship to traditional AI systems
  • Overview of reasoning, memory, and goal-driven architectures
  • Key use cases and industry applications

Core Concepts and Design Patterns

  • The agent loop: perception, reasoning, and action
  • Single-agent vs. multi-agent systems
  • Environment interaction and tool invocation

Prompt Engineering Fundamentals

  • Designing effective prompts for reasoning and task decomposition
  • Using examples, constraints, and roles for better control
  • Debugging and iterating prompts systematically

Building Simple Agentic Workflows

  • Implementing an agent loop in Python
  • Integrating with APIs and simple tools
  • Managing agent state and memory

Responsible Design and Safety Practices

  • Ethical considerations and responsible use of agents
  • Bias, transparency, and accountability in AI systems
  • Access control, data protection, and content safety

Hands-on Project: Designing a Responsible Agent

  • Defining the problem scope and objectives
  • Developing the prompt and control logic
  • Testing, refining, and evaluating agent behavior

Summary and Next Steps

Requirements

  • Basic understanding of AI or machine learning concepts
  • Familiarity with Python syntax and scripting
  • Experience working with data or API-based applications

Audience

  • Data scientists new to agentic AI development
  • Junior ML engineers exploring applied agent architectures
  • Technology managers seeking to understand agent design and safety principles
 14 Hours

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