A Gossip-Enhanced Communication Substrate for Agentic AI: Toward Decentralized Coordination in Large-Scale Multi-Agent Systems
Nafiul I. Khan, Mansura Habiba, Rafflesia Khan

TL;DR
This paper explores how gossip protocols can enhance decentralized communication in large-scale agentic AI systems, addressing scalability, resilience, and emergent coordination challenges.
Contribution
It presents a research agenda for integrating gossip mechanisms into multi-agent communication to support scalable, adaptive, and robust agentic ecosystems.
Findings
Gossip supports context-rich state propagation.
Gossip enables resilient coordination under uncertainty.
Open problems include semantic filtering and trust management.
Abstract
As agentic platforms scale, agents are moving beyond fixed roles and predefined toolchains, creating an urgent need for flexible and decentralized coordination. Current structured communication protocols such as direct agent-to-agent messaging or MCP-style tool calls offer reliability, but they struggle to support the emergent and swarm-like intelligence required in large adaptive systems. Distributed agents must learn continuously, share context fluidly, and coordinate without depending solely on central planners. This paper revisits gossip protocols as a complementary substrate for agentic communication. Gossip mechanisms, long valued in distributed systems for their decentralized and fault-tolerant properties, provide scalable and adaptive diffusion of knowledge and fill gaps that structured protocols alone cannot efficiently address. However, gossip also introduces challenges,…
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Taxonomy
TopicsModular Robots and Swarm Intelligence · Opportunistic and Delay-Tolerant Networks · Distributed Control Multi-Agent Systems
