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Papers/Trade-offs in Decentralized Agentic AI Discovery Across the Compute Continuum
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Trade-offs in Decentralized Agentic AI Discovery Across the Compute Continuum

May 12, 2026

arXiv
Abstract

Agentic systems deployed across the compute continuum need discovery mechanisms that remain effective across cloud, edge, and intermittently connected domains. In some emerging agentic architectures, decentralized discovery is already an active design direction, placing DHT-based lookup on the path toward agent directories. This paper studies the trade-offs among major structured-overlay families for agent discovery, comparing Chord, Pastry, and Kademlia as candidate indexing substrates within a shared control-plane framework. Using a benchmark subset centered on a 4096-node stationary comparison and a representative 4096-node churn benchmark, the paper characterizes how discovery reliability, startup behavior, and control-plane overhead vary across these overlays. The goal is to clarify the operating points they expose for agent discovery across edge-to-cloud environments.

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Authors
Patrizio Dazzi, Emanuele Carlini, Matteo Mordacchini, Saul Urso
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arXiv:2605.11839