网络内联邦学习服务的功能配置与加速

Nour-El-Houda Yellas, B. Addis, R. Riggio, Stefano Secci
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引用次数: 1

摘要

边缘智能与联邦学习相结合,被认为是一种可扩展的分布式学习和推理任务的方法,通过分析接近其生成位置的数据,而不像传统云计算那样将数据卸载到远程服务器。在本文中,我们利用联邦学习和硬件加速来解决人工智能函数(AIF)的放置问题。考虑到虚拟基础设施异常检测用例的特定约束和经验行为,我们对联邦学习和相关推理点的行为进行建模,以指导放置决策。除了硬件加速外,我们还通过使用经验分段线性分布,在网络上分布训练时考虑特定的训练时间趋势。我们将定位问题建模为一个MILP,并提出了该问题的一个变体。仿真结果表明,硬件加速在决定启用的AIF数量时可以产生影响,同时除以相关因子的分布式训练时间。我们还展示了我们的方法如何加剧了监测端到端学习系统延迟预算的重要性,该延迟预算由aif位置的链路传播延迟和分布式训练时间组成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Function Placement and Acceleration for In-Network Federated Learning Services
Edge intelligence combined with federated learning is considered as a way to distributed learning and inference tasks in a scalable way, by analyzing data close to where it is generated, unlike traditional cloud computing where data is offloaded to remote servers. In this paper, we address the placement of Artificial Intelligence Functions (AIF) making use of federated learning and hardware acceleration. We model the behavior of federated learning and related inference point to guide the placement decision, taking into consideration the specific constraint and the empirical behavior of a virtualized infrastructure anomaly detection use-case. Besides hardware acceleration, we consider the specific training time trend when distributing training over a network, by using empirical piece-wise linear distributions. We model the placement problem as a MILP and we propose a variant of the problem. Simulation results show the impact that hardware acceleration can have in the decision of the number of AIF to enable, while dividing by a relevant factor the distributed training time. We also show how our approach exacerbates the importance of monitoring an end-to-end learning system delay budget composed of link propagation delay and distributed training time in the location of AIFs.
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