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Byzantine-Tolerant Inference in Distributed Deep Intelligent System: Challenges and Opportunities

机译:分布式深度智能系统中的拜占庭容忍推理:挑战和机遇

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Cyber-physical systems in the Internet-of-Things (IoT) era increasingly need responses that are not only timely, but also intelligent. To that end, decentralized Deep Neural Network (DNN) systems have been studied for near-sensor processing to enable localized inference and global network partition in a given, limited power budget. In the real world, however, such systems are fundamentally heterogeneous in per-node information quality, since each virtually or physically dispersed sensor captures only part of the observable environment. Recent work in collective DNN systems has leveraged this variation in information quality across nodes in a network hierarchy to improve accuracy and reduce design cost. Unfortunately, in noisy or dynamic environments, there are clear optimization challenges in properly measuring information quality or its proxies, which can make such systems even more sensitive to noise than a quality-agnostic design. This implies that the unequal weighting in an information-quality exploiting distributed DNN will likely present new opportunities to subvert collective decision making. Inspired by the classical fault models of distributed systems, specifically those designed to endure coordinated node failure (Byzantine failure), this article explores interactions between collaborative DNN models, their reliance on information quality metrics in various fault scenarios, and the corresponding system design costs for achieving reasonable accuracy and reliability. As a proof-of-concept, we perform a case study on a distributed multi-view camera system operating under faults introduced both by environmental noise and adversarial inputs, and present results on inference robustness supported by consensus mechanisms in Byzantine settings.
机译:物联网时代的网络物理系统越来越需要不仅及时而且智能的响应。为此,已经研究了分布式深度神经网络(DNN)系统用于近传感器处理,以在给定的有限功率预算内实现局部推断和全局网络划分。然而,在现实世界中,由于每个虚拟或物理分散的传感器仅捕获可观察环境的一部分,因此此类系统在每个节点的信息质量上基本上是异构的。集体DNN系统中的最新工作利用了网络层次结构中各个节点之间信息质量的这种变化,以提高准确性并降低设计成本。不幸的是,在嘈杂或动态的环境中,正确测量信息质量或其代理存在明显的优化挑战,这可能会使此类系统对噪声的敏感度高于与质量无关的设计。这意味着在利用分布式DNN的信息质量中不平等的加权可能会提供颠覆集体决策的新机会。受经典的分布式系统故障模型的启发,特别是那些旨在承受协同节点故障(拜占庭式故障)的模型,本文探讨了协作DNN模型之间的相互作用,它们在各种故障情况下对信息质量指标的依赖以及相应的系统设计成本。实现合理的准确性和可靠性。作为概念验证,我们对在环境噪声和对抗性输入共同引入的故障下运行的分布式多视图相机系统进行了案例研究,并提出了拜占庭环境中共识机制支持的推理鲁棒性的结果。

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