Building Intelligent Multi-Agent Systems with Context-Aware Coordination

DEV CommunityThursday, October 30, 2025 at 2:07:41 AM
In the journey of developing multi-agent systems, the author shares valuable insights gained from months of experimentation. Initially believing it would be simple to create AI agents that communicate, they soon realized the complexity involved in achieving true intelligence. This guide emphasizes the importance of context-aware coordination and specialized roles, making it a crucial read for anyone interested in advancing their understanding of AI systems. It matters because as technology evolves, mastering these concepts will be essential for creating more effective and intelligent systems.
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