CARGO: Carbon-Aware Gossip Orchestration in Smart Shipping
Alexandros S. Kalafatelis, Nikolaos Nomikos, Vasileios Nikolakakis, Nikolaos Tsoulakos, Panagiotis Trakadas

TL;DR
CARGO is a novel framework for carbon-aware gossip orchestration in smart shipping, optimizing communication and participation to reduce carbon footprint while maintaining high AI model accuracy.
Contribution
It introduces a serverless, carbon-aware gossip approach that jointly manages communication resources, reliability, and participation in maritime AI applications.
Findings
CARGO reduces communication overheads compared to decentralized baselines.
It maintains high model accuracy under various stress conditions.
CARGO is practical for reliable, resource-conscious maritime AI deployment.
Abstract
Smart shipping operations increasingly depend on collaborative AI, yet the underlying data are generated across vessels with uneven connectivity, limited backhaul, and clear commercial sensitivity. In such settings, server-coordinated FL remains a weak systems assumption, depending on a reachable aggregation point and repeated wide-area synchronization, both of which are difficult to guarantee in maritime networks. A serverless gossip approach therefore represents a more natural approach, but existing methods still treat communication mainly as an optimization bottleneck, rather than as a resource that must be managed jointly with carbon cost, reliability, and long-term participation balance. In this context, this paper presents CARGO, a carbon-aware gossip orchestration framework for smart-shipping. CARGO separates learning into a control and a data plane. The data plane performs local…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
