容量规划中神经网络技术与统计方法的比较分析

N. Vasudevan, G. Parthasarathy
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引用次数: 2

摘要

容量规划是一种技术,可用于在研究当前使用模式后预测组织未来的计算资源需求。考虑到大型基础设施和大量用户,这对于适应性企业来说尤为重要。事先确定资源需求是非常有益的,因为这是一种主动的方法,有助于防止资源紧张和服务水平违规。然而,预测值的准确性取决于用于预测的方法,也取决于历史数据的准确性。容量规划意义上的历史数据就是系统性能数据。用于此类预测的大多数方法都使用统计方法或基于排队论。本文将传统的基于统计的方法与基于神经网络的方法进行了比较。神经网络的训练集由要对其进行预测的度量(例如CPU利用率百分比)的历史值组成。本文还讨论了该方法相对于其他方法的优点。根据预测的信息,我们将说明如何进行容量规划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Neural Network Techniques Vs Statistical Methods in Capacity Planning
Capacity planning is a technique which can be used to predict the computing resource needs of an organization for the future after studying current usage patterns. This is of special import for adaptive enterprises, given the large infrastructure and large number of users. Determining resource needs beforehand can be very beneficial because it is a proactive approach and helps prevent resource crunches and service level violations. Accuracy of the predicted values, however, depends upon the methods used for the forecast and also upon the accuracy of the historical data. Historical data in the capacity planning sense is system performance data. Most of the approaches used for such a prediction make use of statistical methods or are based on queuing theory. This paper compares the traditional statistical based methods with a method based on neural networks. The training set for the neural network consists of historical values of a metric (for example CPU utilization percentage) for which the prediction is to be done. The advantages of this method over other methods have also been discussed. From the predicted information, we illustrate how capacity planning is done.
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