自动化ITSM事件管理过程

Rajeev Gupta, K. H. Prasad, M. Mohania
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引用次数: 51

摘要

客户使用服务台来报告企业系统中的IT问题。这些服务请求大多由1级人员(服务台服务员)通过向客户提供信息/快速解决方案来解决。对于每个服务请求,1级人员识别重要的关键字,并查看传入的请求是否与任何历史事件相似。否则,将创建事件票证,并将其与其他相关信息一起转发给事件主题专家(SME)。事件管理流程用于管理所有事件的生命周期。组织花费大量资源来保持其IT资源无事件,因此,需要及时解决传入的事件以实现这一目标。目前,事件管理过程主要是手动的,容易出错且耗时。在本文中,我们使用信息集成技术和机器学习来自动化事件管理工作流中的各种过程。给出了一种将传入事件与存储在配置管理数据库(CMDB)中的配置项(ci)相关联的方法。这种相关性可用于正确地将事件路由到中小企业、事件调查和根本原因分析。在我们的技术中,我们通过利用事件票证中可用的结构化和非结构化信息来发现相关的ci。我们提出了一种高效的算法,通过有效浏览ci之间的关系,将故障组件的识别准确率提高了70%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automating ITSM Incident Management Process
Service desks are used by customers to report IT issues in enterprise systems. Most of these service requests are resolved by level-1 persons (service desk attendants) by providing information/quick-fix solutions to customers. For each service request, level- 1 personnel identify important keywords and see if the incoming request is similar to any historic incident. Otherwise, an incident ticket is created and, with other related information, forwarded to incident's subject matter expert (SME). Incident management process is used for managing the life cycle of all incidents. An organization spends lots of resources to keep its IT resources incident free and, therefore, timely resolution of incoming incident is required to attain that objective. Currently, the incident management process is largely manual, error prone and time consuming. In this paper, we use information integration techniques and machine learning to automate various processes in the incident management workflow. We give a method for correlating the incoming incident with configuration items (CIs) stored in Configuration management database (CMDB). Such a correlation can be used for correctly routing the incident to SMEs, incident investigation and root cause analysis. In our technique, we discover relevant CIs by exploiting the structured and unstructured information available in the incident ticket. We present efficient algorithm which gives more than 70% improvement in accuracy of identifying the failing component by efficiently browsing relationships among CIs.
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