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Enabling Execution Assurance of Federated Learning at Untrusted Participants

机译:在不受信任的参与者中实现联合学习的执行保证

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Federated learning (FL), as a privacy-preserving machine learning framework, draws growing attention in both industry and academia. It obtains a jointly accurate model by distributing training tasks into data owners and aggregating their model updates. However, FL faces new security problems, as it losses direct control to training processes. One fundamental demand is to ensure whether participants execute training tasks as intended.In this paper, we propose TrustFL, a practical scheme that leverages Trusted Execution Environments (TEEs) to build assurance of participants’ training executions with high confidence. Specifically, we use TEE to randomly check a small fraction of all training processes for tunable levels of assurance, while all computations are executed on the co-located faster yet insecure processor (e.g., GPU) for efficiency. To prevent various cheating behaviors like only processing TEE-requested computations or uploading old results, we devise a commitment-based method with specific data selection. We prototype TrustFL using GPU and SGX and evaluate its performance. The results show that TrustFL achieves one/two orders of magnitude speedups compared with naive training with SGX, when assuring correct training with a confidence level of 99%.
机译:联邦学习(FL)作为一种隐私式保存机学习框架,在行业和学术界中引起了不断的关注。它通过将培训任务分发到数据所有者并聚合其模型更新来获得共同准确的模型。但是,由于它损失了对培训流程的直接控制,因此FL面临新的安全问题。一个根本的需求是确保参与者根据预期执行培训任务。本文提出了一种实用方案,这是一种利用可信任的执行环境(TEES)的实用方案,以利用高信任地建立参与者的培训处决的保证。具体而言,我们使用TEE随机检查所有培训过程的一小部分,以便可调谐保证水平,而所有计算都在共同定位的更快但不安全的处理器(例如GPU)上执行效率。为防止各种作弊行为,如仅处理TEE所要求的计算或上传旧结果,我们设计了一种基于承诺的方法,具有特定的数据选择。我们使用GPU和SGX原型TrustFL并评估其性能。结果表明,与SGX的天真训练相比,TrustFL与SGX进行了一定/两个数量级加速度,当保证正确的训练,置信水平为99%。

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