aiop支持的系统管理的人工智能治理和自动化水平

Anton Gulenko, Alexander Acker, O. Kao, Feng Liu
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引用次数: 5

摘要

IT运营人工智能(AIOps)描述了使用人工智能支持的方法和工具在数据中心维护和运营大型IT基础设施的过程,例如用于自动异常检测、根本原因分析、修复、优化和自动启动自稳定活动。初步结果和产品表明,AIOps平台可以帮助达到未来设置所需的可用性、可靠性、可靠性和可维护性水平,其中延迟和响应时间至关重要。人工操作人员看到了好处,但也看到了失去对系统控制的风险,同时仍然要对aiops管理的基础设施负责。虽然由于系统复杂性和qos限制响应的重要性,自动化是强制性的,但由人工智能控制的管理部门编译和部署的措施不容易理解或重现。因此,自动化系统采取的可解释的操作正在成为未来IT基础设施的监管需求。在本文中,我们讨论了人工智能治理的几个重要子方面,重点是IT服务和基础设施管理,并提供了一套规则和自动化水平,精确地描述了人工操作员和人工智能操作系统控制的管理之间的共同责任。我们的目标是为AIOps提供指导、决策支持和可解释的过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-Governance and Levels of Automation for AIOps-supported System Administration
Artificial Intelligence for IT Operations (AIOps) describes the process of maintaining and operating large IT infrastructures in data centers using AI-supported methods and tools, e.g. for automated anomaly detection, root cause analysis, for remediation, optimization, and for automated initiation of self-stabilizing activities. Initial results and products show that AIOps platforms can help to reach the required level of availability, reliability, dependability, and serviceability for future settings, where latency and response times are of crucial importance. The human operators see the benefits, but also the risks of losing a control over the system while still being accountable for the AIOps-managed infrastructure. While automation is mandatory due to the system complexity and the criticality of a QoS-bounded response, the measures compiled and deployed by the AI-controlled administration are not easily understood or reproducible. Therefore, explainable actions taken by the automated system is becoming a regulatory requirement for future IT infrastructures. In this paper we address several important sub-aspects of the AI-Governance with focus on IT service and infrastructure management and provide a set of rules and levels of automation that precisely describe the shared responsibility between human operators and the AIOps-controlled administration. We aim at providing guidance, decision-support, and explainable processes for AIOps.
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