A hybrid self-diagnosis mechanism with defective nodes locating and attack detection for parallel computing systems

Lake Bu, M. Karpovsky
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引用次数: 5

Abstract

In recent years parallel computing has been widely employed for both science research and commercial applications. For parallel systems such as many-core or computer clusters, it is inevitable to have one or more computing node failures due to random errors or injected attacks. Usually a diagnosis mechanism is able to locate several defective nodes through a number of tests and the analysis of those test signatures (syndromes). Although this covers the cases caused by random errors, sophisticated attacks are still able to manipulate the outputs of each node, so that they will be masked and pass the diagnosis. Therefore in this paper we propose a hybrid self-diagnosis mechanism. We adopt a new type of analysis with the linear syndromes, which are able to locate up to a certain number of defective nodes caused by random errors. In addition to this, we introduce a new type of robust analysis of the non-linear syndromes, which is capable of detecting the attacks undetectable by the linear syndromes at a probability close to one. Moreover, since this hybrid self-diagnosis mechanism is on the data level which makes little distinction among different operating systems and programming languages, it can be migrated onto any other platforms conveniently.
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并行计算系统缺陷节点定位与攻击检测的混合自诊断机制
近年来,并行计算在科学研究和商业应用中得到了广泛的应用。对于多核或计算机集群这样的并行系统,由于随机错误或注入攻击导致一个或多个计算节点失效是不可避免的。通常,一种诊断机制能够通过一系列测试和对这些测试特征(综合征)的分析来定位几个缺陷节点。虽然这涵盖了由随机错误引起的情况,但复杂的攻击仍然能够操纵每个节点的输出,以便掩盖它们并通过诊断。因此,本文提出了一种混合自诊断机制。我们采用了一种新的线性综合征分析方法,它可以定位到一定数量的随机误差引起的缺陷节点。除此之外,我们还引入了一种新型的非线性综合征鲁棒分析,它能够以接近1的概率检测出线性综合征无法检测到的攻击。此外,由于这种混合自诊断机制是在数据级别上的,对不同的操作系统和编程语言几乎没有区别,因此可以方便地移植到任何其他平台上。
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