Agentic Peer-to-Peer Networks: From Content Distribution to Capability and Action Sharing
Taotao Wang, Lizhao You, Jingwen Tong, Chonghe Zhao, and Shengli Zhang

TL;DR
This paper explores the development of agentic peer-to-peer networks for local AI agents, focusing on capability sharing, secure discovery, and verification methods to enable safe and effective collaboration among autonomous agents.
Contribution
It introduces a layered architecture and verification spectrum for secure, capability-based P2P networks, addressing challenges of trust, safety, and efficiency in agent collaboration.
Findings
Tiered verification improves workflow success
Discovery latency remains near-constant
Control-plane overhead is modest
Abstract
The ongoing shift of AI models from centralized cloud APIs to local AI agents on edge devices is enabling \textit{Client-Side Autonomous Agents (CSAAs)} -- persistent personal agents that can plan, access local context, and invoke tools on behalf of users. As these agents begin to collaborate by delegating subtasks directly between clients, they naturally form \emph{Agentic Peer-to-Peer (P2P) Networks}. Unlike classic file-sharing overlays where the exchanged object is static, hash-indexed content (e.g., files in BitTorrent), agentic overlays exchange \emph{capabilities and actions} that are heterogeneous, state-dependent, and potentially unsafe if delegated to untrusted peers. This article outlines the networking foundations needed to make such collaboration practical. We propose a plane-based reference architecture that decouples connectivity/identity, semantic discovery, and…
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Taxonomy
TopicsPeer-to-Peer Network Technologies · Blockchain Technology Applications and Security · Scientific Computing and Data Management
