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Cerberus: Privacy-Preserving Computation in Edge Computing

机译:Cerberus:边缘计算中的隐私保护计算

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Edge computing reduces the overhead of data centers and improves the efficiency of data processing. However, traditional cloud data protection mechanisms are no longer applicable to edge devices. Data leakage and other privacy issues may occur when computation is outsourced to edge nodes. The decentralization raises new privacy challenge for data control, storage and computation. In this work, we present Cerberus, a brand-new framework that preserves data privacy in edge computing by combining blockchain, distributed data storage and trusted execution environment (TEE). Blockchain is used to maintain a global computation state, and also acts as a medium of information interaction. Distributed data storage provides a secure and large-capacity storage. TEE-based off-chain computation guarantees confidentiality and efficiency of data processing. We also implement a prototype of Cerberus using Hyperledger Fabric and Intel SGX. Our evaluation on a sample of data sorting application shows that Cerberus achieves significant speed ups over previous cryptographic schemes. Compared with non secure computation, Cerberus can preserve data privacy without incurring much performance loss.
机译:边缘计算减少了数据中心的开销,并提高了数据处理效率。但是,传统的云数据保护机制不再适用于边缘设备。当将计算外包给边缘节点时,可能会发生数据泄漏和其他隐私问题。分散化为数据控制,存储和计算提出了新的隐私挑战。在这项工作中,我们介绍了Cerberus,这是一个全新的框架,通过结合区块链,分布式数据存储和受信任的执行环境(TEE)来保留边缘计算中的数据隐私。区块链用于维护全局计算状态,并且还充当信息交互的媒介。分布式数据存储提供了安全的大容量存储。基于TEE的链下计算可确保数据处理的机密性和效率。我们还使用Hyperledger Fabric和Intel SGX实现了Cerberus的原型。我们对数据排序应用程序样本的评估表明,Cerberus与以前的加密方案相比,实现了显着的速度提升。与不安全的计算相比,Cerberus可以保留数据隐私,而不会造成很多性能损失。

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