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Towards privacy preserving AI based composition framework in edge networks using fully homomorphic encryption

机译:在边缘网络中使用完全同态加密保留基于AI的隐私框架

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We present a privacy-preserving framework for Artificial Intelligence (AI) enabled composition for the edge networks. Edge computing is a very promising technology for provisioning realtime AI services due to low response time and network bandwidth requirements. Due to the lack of computational capabilities, an edge device alone cannot provide the complex AI services. Complex AI tasks should be divided into multiple sub-tasks and distributed among multiple edge devices for efficient service provisioning in the edge network. AI-enabled or automatic service composition is one of the essential AI tasks in the service provisioning. In edge computing-based service provisioning, service composition related tasks need to be offloaded to several edge nodes for efficient service. Edge nodes can be used for monitoring services, storing Quality-of-Service (QoS) data, and composing services to find the best composite service. Existing service composition methods use plaintext QoS data. Hence, attackers may compromise edge devices to reveal QoS data of services and modify them for giving an advantage to particular edge service providers, and the AI-based service composition becomes biased. From that point of view, a privacy-preserving framework for AI-based service composition is required for the edge networks. In our proposed framework, we introduce an AI-based composition model for edge services in the edge networks. Additionally, we present a privacy-preserving AI service composition framework to perform composition on encrypted QoS data using fully homomorphic encryption (FHE) algorithm. We conduct several experiments to evaluate the performance of our proposed privacy-preserving service composition framework using a synthetic QoS dataset.
机译:我们为边缘网络提供了一种用于人工智能(AI)的隐私保留框架。边缘计算是一种非常有前途的技术,可通过低响应时间和网络带宽要求提供实时AI服务。由于缺乏计算能力,单独的边缘设备无法提供复杂的AI服务。复杂的AI任务应分为多个子任务,并在多个边缘设备中分发,以便在边缘网络中提供高效的服务供应。 AI启用或自动服务组合是服务配置中的基本AI任务之一。在基于边缘计算的服务供应中,服务组合相关任务需要将其卸载到几个边缘节点以进行高效服务。边缘节点可用于监控服务,存储服务质量(QoS)数据,以及编写服务以查找最佳复合服务。现有服务组合方法使用明文QoS数据。因此,攻击者可能会危及边缘设备以揭示服务的QoS数据,并修改它们以向特定边缘服务提供商提供优点,并且基于AI的服务组合物变得偏置。从该角度来看,边缘网络需要一种基于AI的服务组合的隐私保留框架。在我们提出的框架中,我们在边缘网络中介绍了一个基于AI的ADE Adde Service模型。此外,我们还使用完全同态加密(FHE)算法来介绍一个隐私保留的AI服务组合框架,用于在加密的QoS数据上执行组合。我们进行多个实验,以评估我们使用合成QoS数据集的拟议隐私保留服务合成框架的表现。

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