Does the Past Say It All? Using History to Predict Change Sets in a CMDB

Sarah Nadi, R. Holt, S. Mankovskii
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引用次数: 4

Abstract

To avoid unnecessary maintenance costs in large IT systems resulting from poorly planned changes, it is essential to manage and control changes to the system and to verify that all items impacted by each change are updated as needed. This paper presents a method of decision support that helps guarantee that each change set (those items to be updated in the change) contains all the software or hardware components impacted by the proposed change. Today, many IT systems are managed by a Configuration Management Database (CMDB), which can be represented as a large graph in which the nodes are configuration items (CIs), such as software applications or servers, and the edges record dependencies between these items. In this paper we present a new approach to suggesting change sets based on our conjecture that each new change set is likely to be similar to instances of previous change sets. Accordingly, if the analyst determines that CI x is in a new change set, our method essentially searches for previous change sets, stored in the CMDB, that contain x, and suggests that CIs in those sets (appropriately ranked) should be considered for inclusion in the new change set. Our model uses support and confidence measures to estimate how closely nodes x and y are related, based on how often they have appeared together in past change sets. Based on these measures, we implement a prototype that suggests likely items to an analyst who is composing a change set. Based on a history of three years of a particular industrial CMDB, and several filtering techniques, the observed recall and precision values were as high as 69.8% and 88.5% respectively.
过去能说明一切吗?使用历史记录预测CMDB中的变更集
为了避免在大型IT系统中由于计划不周的更改而导致的不必要的维护成本,管理和控制系统的更改并验证受每个更改影响的所有项都按需要更新是必不可少的。本文提出了一种决策支持方法,该方法有助于保证每个变更集(在变更中要更新的那些项)包含受提议变更影响的所有软件或硬件组件。今天,许多IT系统都是由配置管理数据库(CMDB)管理的,它可以表示为一个大的图,其中的节点是配置项(ci),比如软件应用程序或服务器,边缘记录了这些项之间的依赖关系。在本文中,我们提出了一种新的方法来建议变更集基于我们的猜想,每个新的变更集可能是类似于以前的变更集的实例。因此,如果分析人员确定CI x在一个新的变更集中,我们的方法本质上搜索存储在CMDB中包含x的以前的变更集,并建议应该考虑将这些集中的CI(适当地排序)包含在新的变更集中。我们的模型使用支持度和置信度度量来估计节点x和y的相关程度,基于它们在过去的更改集中一起出现的频率。基于这些度量,我们实现了一个原型,该原型向组成变更集的分析人员建议可能的项。基于某工业CMDB的3年历史,结合几种滤波技术,观察到的查全率和查准率分别高达69.8%和88.5%。
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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