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首页> 外文期刊>Journal of supercomputing >Host load prediction in cloud computing using Long Short-Term Memory Encoder-Decoder
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Host load prediction in cloud computing using Long Short-Term Memory Encoder-Decoder

机译:使用长短期内存编解码器的云计算中的主机负载预测

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摘要

Cloud computing has been developed as a means to allocate resources efficiently while maintaining service-level agreements by providing on-demand resource allocation. As reactive strategies cause delays in the allocation of resources, proactive approaches that use predictions are necessary. However, due to high variance of cloud host load compared to that of grid computing, providing accurate predictions is still a challenge. Thus, in this paper we have proposed a prediction method based on Long Short-Term Memory Encoder-Decoder (LSTM-ED) to predict both mean load over consecutive intervals and actual load multi-step ahead. Our LSTM-ED-based approach improves the memory capability of LSTM, which is used in the recent previous work, by building an internal representation of time series data. In order to evaluate our approach, we have conducted experiments using a 1-month trace of a Google data centre with more than twelve thousand machines. Our experimental results show that while multi-layer LSTM causes overfitting and decrease in accuracy compared to single-layer LSTM, which was used in the previous work, our LSTM-ED-based approach successfully achieves higher accuracy than other previous models, including the recent LSTM one.
机译:云计算已被开发为一种有效的资源分配方式,同时通过提供按需资源分配来维持服务级别协议。由于被动策略导致资源分配的延迟,因此使用预测的主动方法是必要的。但是,由于与网格计算相比,云主机负载的变化很大,因此提供准确的预测仍然是一个挑战。因此,在本文中,我们提出了一种基于长短期内存编解码器(LSTM-ED)的预测方法,以预测连续时间间隔内的平均负载以及提前的实际负载多步。我们的基于LSTM-ED的方法通过构建时间序列数据的内部表示,提高了LSTM的存储功能,该功能在最近的先前工作中得到了使用。为了评估我们的方法,我们进行了一个实验,使用了一个月追踪的Google数据中心,其中包含一万二千多台计算机。我们的实验结果表明,尽管与以前的工作相比,多层LSTM导致过拟合并降低了精度,但基于LSTM-ED的方法成功地实现了比其他先前模型(包括最新模型)更高的精度LSTM之一。

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