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Course Outline

Introduction to Agentic AI Systems

  • Defining Agentic AI and its core capabilities
  • Key distinctions between rule-based AI and autonomous AI
  • Industry use cases and practical applications

Architecting Agentic AI Systems

  • Frameworks and tools for constructing autonomous AI
  • Designing AI agents with goal-oriented capabilities
  • Implementing memory management, context awareness, and adaptability

Developing AI Agents with Python and APIs

  • Constructing AI agents
  • Integrating AI models with external data sources
  • Managing API responses and enhancing agent interactions

Optimizing Multi-Agent Collaboration

  • Designing AI agents for cooperative and competitive scenarios
  • Managing inter-agent communication and task delegation
  • Scaling multi-agent systems for real-world deployment

Enhancing Decision-Making in Agentic AI

  • Reinforcement learning and self-improving AI agents
  • Strategic planning, reasoning, and long-term goal execution
  • Balancing automation with human oversight

Security, Ethics, and Compliance in Agentic AI

  • Addressing biases and ensuring responsible AI deployment
  • Security protocols for AI-driven decision-making
  • Regulatory considerations for autonomous AI systems

Future Trends in Agentic AI

  • Advancements in AI autonomy and self-learning systems
  • Expanding AI agent capabilities through multimodal learning
  • Preparing for the next generation of autonomous AI

Summary and Next Steps

Requirements

  • Foundational knowledge of AI and machine learning concepts
  • Proficiency in Python programming
  • Experience with API-based AI model integration

Target Audience

  • AI engineers developing autonomous AI solutions
  • Machine learning researchers investigating multi-agent AI frameworks
  • Developers implementing AI-driven automation
 21 Hours

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