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Federated Machine Learning as a Self-Adaptive Problem

机译:联邦机器学习作为自适应问题

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摘要

Machine Learning (ML) enables the creation of a new generation of applications that “learn” from collected data, transferred and analyzed on centralized servers. Moving data may imply a significant overhead and may also undermine users' privacy. Federated Machine Learning (FedML) tries to address these issues by means of local training phases on client devices: only lightweight aggregated data are then sent to the centralized server. FedML solutions must offer response times and accuracy similar to traditional ML applications, but their management is distributed on devices that may be heterogeneous, may become unavailable, and are not as powerful as (cloud-based) servers. This paper considers FedML systems a novel example of self-adaptive applications, where clients and servers must cooperate to provide required results. In particular, this paper proposes: i) the formalization of FedML applications as self-adaptive systems, ii) an initial prototype that shows the feasibility of the approach, and iii) a preliminary evaluation that demonstrates the benefit of the proposed solution.
机译:机器学习(ML)可以创建从收集的数据中“学习”的新一代应用程序,在集中式服务器上传输和分析。移动数据可能意味着大量的开销,也可能会破坏用户的隐私。联合机器学习(FEDML)尝试通过客户端设备上的本地培训阶段来解决这些问题:然后将重量级聚合数据发送到集中式服务器。 FEDML解决方案必须提供与传统ML应用程序类似的响应时间和准确性,但它们的管理分布在可能是异构的设备上,可能变得不可用,并且不如(基于云)的服务器一样强大。本文考虑FedML系统的新颖示例的自适应应用程序,其中客户端和服务器必须合作以提供所需的结果。特别是,本文提出:i)FEDML应用程序的形式化为自适应系统,ii)初始原型,其展示了方法的可行性和III)初步评估,表明提出了提出的解决方案的利益。

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