Using Semi-supervised Classifier to Forecast Extreme CPU Utilization

N. Khosla, D. Sharma
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引用次数: 1

Abstract

A semi-supervised classifier is used in this paper is to investigate a model for forecasting unpredictable load on the IT systems and to predict extreme CPU utilization in a complex enterprise environment with large number of applications running concurrently. This proposed model forecasts the likelihood of a scenario where extreme load of web traffic impacts the IT systems and this model predicts the CPU utilization under extreme stress conditions. The enterprise IT environment consists of a large number of applications running in a real time system. Load features are extracted while analysing an envelope of the patterns of work-load traffic which are hidden in the transactional data of these applications. This method simulates and generates synthetic workload demand patterns, run use-case high priority scenarios in a test environment and use our model to predict the excessive CPU utilization under peak load conditions for validation. Expectation Maximization classifier with forced-learning, attempts to extract and analyse the parameters that can maximize the chances of the model after subsiding the unknown labels. As a result of this model, likelihood of an excessive CPU utilization can be predicted in short duration as compared to few days in a complex enterprise environment. Workload demand prediction and profiling has enormous potential in optimizing usages of IT resources with minimal risk.
使用半监督分类器预测极端CPU利用率
本文使用了一个半监督分类器来研究一个模型,该模型用于预测IT系统上不可预测的负载,并预测在大量应用程序同时运行的复杂企业环境中CPU的极端利用率。所提出的模型预测了网络流量的极端负载影响IT系统的情况的可能性,并且该模型预测了极端压力条件下的CPU利用率。企业IT环境由在实时系统中运行的大量应用程序组成。负载特征是在分析隐藏在这些应用程序的事务数据中的工作负载流量模式的包络时提取的。该方法模拟并生成合成的工作负载需求模式,在测试环境中运行用例高优先级场景,并使用我们的模型预测峰值负载条件下的过度CPU利用率以进行验证。具有强制学习的期望最大化分类器,试图提取和分析在沉降未知标签后能够最大化模型机会的参数。该模型的结果是,与复杂企业环境中的几天相比,可以在短时间内预测CPU过度使用的可能性。工作负载需求预测和分析在以最小风险优化IT资源使用方面具有巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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