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A Multivariate Fuzzy Time Series Resource Forecast Model for Clouds using LSTM and Data Correlation Analysis

机译:使用LSTM和数据相关分析的云的多变量模糊时间序列资源预测模型

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Today, almost all clouds only offer auto-scaling functions using resource usage thresholds, which are defined by users. Meanwhile, applying prediction-based auto-scaling functions to clouds still faces a problem of inaccurate forecast during operation in practice even though the functions only deal with univariate monitoring data. Up until now, there are still very few efforts to simultaneously process multiple metrics to predict resource utilization. The motivation for this multivariate processing is that there could be some correlations among metrics and they have to be examined in order to increase the model applicability in fact. In this paper, we built a novel forecast model for cloud proactive auto-scaling systems with combining several mechanisms. For preprocessing data phase, to reduce the fluctuation of monitoring data, we exploit fuzzification technique. We evaluate the correlations between different metrics to select suitable data types as inputs for the prediction model. In addition, long-short term memory (LSTM) neural network is employed to predict the resource consumption with multivariate time series data at the same time. Our model thus is called multivariate fuzzy LSTM (MF-LSTM). The proposed system is tested with Google trace data to prove its efficiency and feasibility when applying to clouds.
机译:如今,几乎所有云都仅提供了使用资源使用阈值的自动缩放功能,这些阈值由用户定义。同时,将基于预测的自动缩放功能应用于云仍然面临在实践中操作期间预测不准确的预测问题,即使功能只处理单变量监控数据。到目前为止,仍有很少的努力来同时处理多个指标以预测资源利用率。这种多变量处理的动机是度量之间可能存在一些相关性,并且必须检查它们以增加模型适用性。在本文中,我们建立了一种新的云主动自动缩放系统预测模型,组合了多种机制。对于预处理数据阶段,以降低监测数据的波动,我们利用模糊化技术。我们评估不同度量之间的相关性,以选择合适的数据类型作为预测模型的输入。另外,使用长短术语存储器(LSTM)神经网络来预测与多变量时间序列数据同时进行资源消耗。因此,我们的模型被称为多变量模糊LSTM(MF-LSTM)。通过Google Trace数据测试所提出的系统,以在申请云时证明其效率和可行性。

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