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PIIM: Method of Identifying Malicious Workers in the MapReduce System with an Open Environment

机译:PIIM:在开放环境中识别MapReduce系统中恶意工作者的方法

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MapReduce is widely utilized as a typical computation model of mass data processing. When a MapReduce framework is deployed in an open computation environment, the trustworthiness of the participant workers becomes an important issue because of security threats and the motivation of subjective cheating. Current integrity protection mechanisms are based on replication techniques and use redundant computation to process the same task. However, these solutions require a large amount of computation resource and lack scalability. A probe injection-based identification of malicious worker (PIIM) method is explored in this study. The method randomly injects the probes, whose results are previously known, into the input data and detects malicious workers by analyzing the processed results of the probes. A method of obtaining the set of workers involved in the computation of each probe is proposed by analyzing the shuffle phase in the MapReduce programming model. An EnginTrust-based reputation mechanism that employs information on probe execution is then designed to evaluate the trustworthiness of all the workers and detect the malicious ones. The proposed method operates at the application level and requires no modification to the MapReduce framework. Simulation experiments indicate that the proposed method is effective in detecting malicious workers in large-scale computations. In a system with 100 workers wherein 20 of them are malicious, a detection rate of above 97% can be achieved with only 500 randomly injected probes.
机译:MapReduce被广泛用作海量数据处理的典型计算模型。当MapReduce框架部署在开放的计算环境中时,由于安全威胁和主观作弊的动机,参与者的可信赖性成为一个重要问题。当前的完整性保护机制基于复制技术,并使用冗余计算来处理同一任务。但是,这些解决方案需要大量的计算资源并且缺乏可伸缩性。本研究探讨了基于探针注入的恶意工作者识别(PIIM)方法。该方法将结果已知的探针随机注入到输入数据中,并通过分析探针的处理结果来检测恶意工作者。通过分析MapReduce编程模型中的混洗阶段,提出了一种获取涉及每个探针计算的一组工人的方法。然后设计一种基于EnginTrust的信誉机制,该机制利用有关探针执行的信息来评估所有工作人员的可信度并检测恶意工作人员。所提出的方法在应用程序级别上运行,不需要修改MapReduce框架。仿真实验表明,该方法可有效检测大规模计算中的恶意工作者。在一个有100个工作人员的系统中,其中20个是恶意程序,仅使用500个随机注入的探针就可以实现97%以上的检测率。

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