基于BMC的性能分析数据记录器

N. Nayak, D. S. Tomar, M. Shanmugasundaram
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引用次数: 1

摘要

在本场景中,服务器机架有多个附加平台,每个平台设计用于执行一组不同的操作,因此具有不同的硬件需求。要提高这种平台的吞吐量,要么增加硬件需求,要么完全替换平台。这种未经优化的方法是相当昂贵和低效的。[1]本文的重点是通过提供准确的分析和预测硬件需求来提高系统的性能,从而提高整体吞吐量。为此,在一段时间内收集数据日志,通过BMC收集连接到平台的传感器的性能数据转储。这些传感器监测平台并测量其内部物理参数。然后使用这些数据创建数据库和训练集。该集合用于训练机器学习算法,该算法提供了一种有效的算法来分析当前性能并给出准确的预测。这提供了一个提高平台吞吐量的最佳解决方案。机器学习,数据日志,BMC,性能分析和IPMI。
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BMC based Data Logger for Performance Analysis
In the present scenario, a server rack has multiple platforms attached to it, each designed to perform a different set of actions, thus, having different hardware requirements. To increase the throughput of such a platform either the hardware requirements are multiplied or the platform is replaced completely. This unoptimized method is rather expensive and inefficient. [1] This paper focuses on improving the performance of a system by providing accurate analysis and predict hardware requirements to improve overall throughput. For this, data logs are collected over a period of time which take performance data dumps of sensors connected to the platform via BMC. These sensors monitor the platform and measure its internal physical parameters. This data is then used to create a database and a training set. This set is used to train a machine learning algorithm which gives an efficient algorithm to analyze the present performance and give accurate prediction. This gives an optimal solution to increase throughput of a platform. [2] General Terms Machine learning, data logs, BMC, performance analysis and IPMI.
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