Distributed Learning in Trusted Execution Environment: A Case Study of Federated Learning in SGX

Tianxing Xu, Konglin Zhu, A. Andrzejak, Lin Zhang
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引用次数: 1

Abstract

Federated Learning (FL) is a distributed machine learning paradigm to solve isolated data island problems under privacy constraints. Recent works reveal that FL still exists security problems in which attackers can infer private data from gradients. In this paper, we propose a distributed FL framework in Trusted Execution Environment (TEE) to protect gradients in the perspective of hardware. We use trusted Software Guard eXtensions (SGX) as an instance to implement the FL, and proposed an SGX-FL framework. Firstly, to break through the limitation of physical memory space in SGX and meanwhile preserve the privacy, we leverage a gradient filtering mechanism to obtain the “important” gradients which preserve the utmost data privacy and put them into SGX. Secondly, to enhance the global adhesion of gradients so that the important gradients can be aggregated at maximum, a grouping method is carried out to put the most appropriate number of members into one group. Finally, to keep the accuracy of the FL model, the secondary gradients of group members and aggregated important gradients are simultaneously uploaded to the server and the computation procedure is validated by the integrity method of SGX. The evaluation results show that the proposed SGX-FL reduces the computation cost by 19 times compared with the existing approaches.
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可信执行环境下的分布式学习:SGX中联邦学习的案例研究
联邦学习(FL)是一种分布式机器学习范式,用于解决隐私约束下的孤立数据岛问题。最近的研究表明,FL仍然存在安全问题,攻击者可以从梯度中推断私人数据。本文提出了一种基于可信执行环境(TEE)的分布式FL框架,从硬件角度保护梯度。以可信软件保护扩展(SGX)为例,提出了一个可信软件保护扩展框架。首先,为了突破SGX物理内存空间的限制,在保护隐私的同时,我们利用梯度过滤机制,获得保护最大数据隐私的“重要”梯度,并将其放入SGX中。其次,为了增强梯度的全局粘附性,最大限度地聚集重要梯度,采用分组方法,将最合适数量的梯度成员归为一组;最后,为了保证FL模型的准确性,将组成员的次级梯度和聚合的重要梯度同时上传到服务器,并通过SGX的完整性方法对计算过程进行验证。评估结果表明,与现有方法相比,所提出的SGX-FL算法的计算量减少了19倍。
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