联邦学习的多智能体体系结构

Yuleisy Perez Gonzalez, I. Kholod
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引用次数: 1

摘要

联邦学习的概念在处理数据方面已经变得非常普遍,主要是因为它允许直接在存储数据的节点上对数据进行训练。因此,不需要数据传输。每个节点上的训练完成后,只将训练好的模型传输到中心服务器进行聚合。多代理系统的行为方式类似,因为代理允许您在本地设备上训练机器学习模型,同时保留机密信息。代理相互交互的能力使得一般化(聚合)这些模型并重用它们成为可能。本文介绍了用于联邦学习的多智能体系统的体系结构。重点介绍了组成代理平台的元素和JADE平台的结构。描述用于在MAC\_FL环境中执行完整训练周期的所有代理的生命周期。分析和描述了联邦学习的每个拟议的多智能体系统体系结构的智能体放置配置:集中式、分散式和分层式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-agent Architecture for Federated Learning
The concept of federated learning has become widespread in working with data, mainly due to the fact that it allows training on data directly on the nodes where they are stored. As a result, no data transfer is required. After the training is completed on each node, only the trained model is transmitted to the central server for aggregation. Multi-agent systems behave in a similar way, because agents allow you to train machine learning models on local devices, while preserving confidential information. The ability of agents to interact with each other makes it possible to generalize (aggregate) such models and reuse them. This article presents the architecture of multi-agent systems for federated learning. It highlights the elements that make up the agent platform and the structure of the JADE platform. Describes the lifecycle of all agents used to perform a full training cycle in the MAC\_FL environment. The configurations of agent placement for each of the proposed architectures of multi-agent systems of federated learning are analyzed and described: centralized, decentralized and hierarchical.
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