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Secured fast prediction of cloud data stream with balanced load factor using Ensemble Tree Classification

机译:使用Ensemble Tree分类法以平衡的负载因子实现对云数据流的安全快速预测

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Cloud infrastructures are used for predicted the data stream with high latency rate on varying load factors with different ensemble models. some of existing stream applications analyze only the temporal relation between data but the Spatio-temporal data information is not processed. For the fast prediction of Spatio-temporal data stream from the cloud infrastructure data distribution, an effective load balancing query processing approach is not spread widely. To achieve load balance statistics on cloud data stream, Ensemble Tree Metric Space Indexing (E-tree MSI) technique is employed and performed with three processes such as scheduling, classification and mapping of cloud data stream for fast effective load balancing. Initially, Fast Predictive Look-ahead Scheduling (FPLS) approach is used to continuously schedule the Spatio-temporal data stream files. The workload of the infrastructure is scheduled in E-tree MSI technique and helps to easily balance the load factor. Secondly, Parallel Ensemble Tree Classification (PETC) in E-tree MSI technique executes the classification operations on cloud data stream. The classification of data stream in Etree MSI technique reduces the overload factor. Finally, bilinear quadrilateral mapping process in E-tree MSI technique linearly predicts the result from cloud data stream storage, with minimal execution time. Experiment is conducted on factors such as linear load balance factor measure, execution time for mapping, and classification accuracy rate.
机译:云基础架构用于通过不同的集成模型在不同的负载因子下以高延迟率预测数据流。现有的一些流应用程序仅分析数据之间的时间关系,但未处理时空数据信息。为了从云基础设施数据分布快速预测时空数据流,有效的负载平衡查询处理方法并未广泛推广。为了实现云数据流的负载均衡统计,采用了集成树度量空间索引(E-tree MSI)技术,并通过调度,分类和映射云数据流这三个过程来执行,以实现快速有效的负载均衡。最初,快速预测超前调度(FPLS)方法用于连续调度时空数据流文件。基础架构的工作负载是通过E-tree MSI技术进行调度的,有助于轻松地平衡负载因子。其次,电子树MSI技术中的并行集合树分类(PETC)对云数据流执行分类操作。 Etree MSI技术中的数据流分类降低了过载因子。最后,E-tree MSI技术中的双线性四边形映射过程可从云数据流存储中线性预测结果,而执行时间最短。针对线性负载平衡因子度量,映射执行时间和分类准确率等因素进行了实验。

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