h-IQ:服务交付数据质量的人类智能

M. Vukovic, Jim Laredo, V. Salapura
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引用次数: 1

摘要

服务交付中心是非常动态的环境,在其中,大量的全球分布式系统管理员(sa)代表客户管理大量的IT系统。情景应用程序在有效解决传入客户请求的巨大时间压力下,可能远远不能准确捕获复杂的技术问题,从而影响票务数据的质量。同时,聚合有关操作的业务见解的各种数据存储和仓库的可靠性取决于它们的来源。验证如此庞大的数据集是一项费力而昂贵的任务。在本文中,我们提出了h-IQ系统,它嵌入了一个分级模式和一个主动学习机制,以识别最不确定的数据样本,以及最合适的人类专家来验证它们。专家资格是根据服务器访问日志和过去完成的票据建立的。介绍了该系统并讨论了票务数据评估过程的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
h-IQ: Human Intelligence for Quality of Service Delivery Data
Service delivery centers are extremely dynamic environments in which large numbers of globally distributed system administrators (SAs) manage a vast number of IT systems on behalf of customers. SAs are under significant time pressure to efficiently resolve incoming customer requests, and may fall far short of accurately capturing the intricacies of technical problems, affecting the quality of ticket data. At the same time, various data stores and warehouses aggregating business insights about operations are only as reliable as their sources. Verifying such large data sets is a laborious and expensive task. In this paper we propose system h-IQ, which embeds a grading schema and an active learning mechanism, to identify most uncertain samples of data, and most suitable human expert(s) to validate them. Expert qualification is established based on server access logs and past tickets completed. We present the system and discuss the results of ticket data assessment process.
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