Course Outline

Introduction to Multi-Agent Systems

  • Defining multi-agent systems in the AI ecosystem
  • Core benefits and challenges
  • Enterprise use cases and applications

AgentCore for Multi-Agent Orchestration

  • AgentCore orchestration architecture
  • Managing multiple agents across workflows
  • Hands-on lab: orchestrating simple agent interactions

Collaboration and Communication Models

  • Message passing and shared memory patterns
  • Negotiation and task allocation strategies
  • Hands-on lab: implementing agent collaboration protocols

Specialization and Role Assignment

  • Designing specialized agents for different tasks
  • Balancing autonomy with coordination
  • Hands-on lab: creating role-specific agents

Scaling Multi-Agent Systems

  • Architectural considerations for enterprise scale
  • Performance monitoring and load balancing
  • Hands-on lab: scaling an orchestrated agent system

Governance, Security, and Compliance

  • Auditability and observability for multi-agent workflows
  • Permissioning and security models
  • Case study: compliance in regulated environments

Future Directions in Multi-Agent AI

  • Trends in autonomous collaboration
  • Emerging research in agent collectives
  • Strategic implications for enterprise adoption

Summary and Next Steps

Requirements

  • Strong understanding of AI and machine learning systems
  • Experience with distributed system design
  • Familiarity with AWS services and cloud-based architectures

Audience

  • System architects
  • AI researchers
  • Enterprise strategy teams
 14 Hours

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Price per participant

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