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Cloud-Based Machine Learning Tools for Enhanced Big Data Applications

机译:基于云的机器学习工具,用于增强大数据应用

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We propose Cloud-based machine learning tools for enhanced Big Data applications, where the main idea is that of predicting the "next" workload occurring against the target Cloud infrastructure via an innovative ensemble-based approach that combine the effectiveness of different well-known classifiers in order to enhance the whole accuracy of the final classification, which is very relevant at now in the specific context of Big Data. So-called workload categorization problem plays a critical role towards improving the efficiency and the reliability of Cloud-based big data applications. Implementation-wise, our method proposes deploying Cloud entities that participate to the distributed classification approach on top of virtual machines, which represent classical "commodity" settings for Cloud-based big data applications. Preliminary experimental assessment and analysis clearly confirm the benefits deriving from our classification framework.
机译:我们提出了基于云的机器学习工具,用于增强大数据应用,主要思想是通过创新的基于集合的方法预测对目标云基础设施的“下一个”工作负载,这些方法结合了不同着名的分类器的有效性为了提高最终分类的整体准确性,在大数据的具体背景下,现在在非常相关。所谓的工作负载分类问题旨在提高基于云的大数据应用的效率和可靠性的关键作用。实施方式,我们的方法建议将参与虚拟机顶部的分布式分类方法的云实体提出部署,这代表了基于云的大数据应用程序的经典“商品”设置。初步实验评估和分析明确证实了我们分类框架的益处。

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