FLeet: Online Federated Learning via Staleness Awareness and Performance Prediction

Georgios Damaskinos, R. Guerraoui, Anne-Marie Kermarrec, Vlad Nitu, Rhicheek Patra, Francois Taiani
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引用次数: 3

Abstract

Federated learning (FL) is very appealing for its privacy benefits: essentially, a global model is trained with updates computed on mobile devices while keeping the data of users local. Standard FL infrastructures are however designed to have no energy or performance impact on mobile devices, and are therefore not suitable for applications that require frequent (online) model updates, such as news recommenders. This article presents FLeet, the first Online FL system, acting as a middleware between the Android operating system and the machine learning application. FLeet combines the privacy of Standard FL with the precision of online learning thanks to two core components: (1) I-Prof, a new lightweight profiler that predicts and controls the impact of learning tasks on mobile devices, and (2) AdaSGD, a new adaptive learning algorithm that is resilient to delayed updates. Our extensive evaluation shows that Online FL, as implemented by FLeet, can deliver a 2.3× quality boost compared to Standard FL while only consuming 0.036% of the battery per day. I-Prof can accurately control the impact of learning tasks by improving the prediction accuracy by up to 3.6× in terms of computation time, and by up to 19× in terms of energy. AdaSGD outperforms alternative FL approaches by 18.4% in terms of convergence speed on heterogeneous data.
舰队:基于过时意识和性能预测的在线联合学习
联邦学习(FL)因其隐私优势而非常吸引人:本质上,一个全局模型是用在移动设备上计算的更新来训练的,同时保持用户的数据在本地。然而,标准的FL基础设施被设计为对移动设备没有能源或性能影响,因此不适合需要频繁(在线)模型更新的应用程序,例如新闻推荐。本文介绍了FLeet,第一个在线FL系统,作为Android操作系统和机器学习应用程序之间的中间件。FLeet将标准FL的隐私性与在线学习的精确性结合在一起,这要归功于两个核心组件:(1)I-Prof,一种新的轻量级分析器,可以预测和控制学习任务对移动设备的影响;(2)AdaSGD,一种新的自适应学习算法,可以适应延迟更新。我们的广泛评估表明,与标准FL相比,FLeet实施的在线FL可以提供2.3倍的质量提升,而每天仅消耗0.036%的电池。I-Prof可以准确地控制学习任务的影响,在计算时间方面提高预测精度高达3.6倍,在能量方面提高高达19倍。就异构数据的收敛速度而言,AdaSGD比其他FL方法高出18.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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