Large-Scale Simulator for Global Data Infrastructure Optimization

Sergio Herrero-Lopez, John R. Williams, Abel Sanchez
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引用次数: 9

Abstract

IT infrastructures in global corporations are appropriately compared with nervous systems, in which body parts (interconnected datacenters) exchange signals (request responses) in order to coordinate actions (data visualization and manipulation). A priori inoffensive perturbations in the operation of the system or the elements composing the infrastructure can lead to catastrophic consequences. Downtime disables the capability of clients reaching the latest versions of the data and/or propagating their individual contributions to other clients, potentially costing millions of dollars to the organization affected. The imperative need of guaranteeing the proper functioning of the system not only forces to pay particular attention to network outages, hot-objects or application defects, but also slows down the deployment of new capabilities, features and equipment upgrades. Under these circumstances, decision cycles for these modifications can be extremely conservative, and be prolonged for years, involving multiple authorities across departments of the organization. Frequently, the solutions adopted are years behind state-of-the art technologies or phased out compared to leading research on the IT infrastructure field. In this paper, the utilization of a large-scale data infrastructure simulator is proposed, in order to evaluate the impact of " what if" scenarios on the performance, availability and reliability of the system. The goal is to provide data center operators a tool that allows understanding and predicting the consequences of the deployment of new network topologies, hardware configurations or software applications in a global data infrastructure, without affecting the service. The simulator was constructed using a multi-layered approach, providing a granularity down to the individual server component and client action, and was validated against a downscaled version of the data infrastructure of a Fortune 500 company.
面向全局数据基础设施优化的大规模模拟器
全球企业的IT基础设施可以恰当地比作神经系统,在神经系统中,身体各部分(相互连接的数据中心)交换信号(请求响应)以协调行动(数据可视化和操作)。在系统或构成基础设施的要素的运行中,先验的无害扰动可能导致灾难性的后果。停机使客户无法访问最新版本的数据和/或将其个人贡献传播给其他客户,这可能会给受影响的组织造成数百万美元的损失。保证系统正常运行的迫切需要不仅迫使我们特别注意网络中断、热对象或应用程序缺陷,而且还减缓了新功能、特性和设备升级的部署。在这种情况下,这些修改的决策周期可能非常保守,并且会延长数年,涉及到组织各部门的多个权威。通常,与IT基础设施领域的领先研究相比,所采用的解决方案落后于最先进的技术或逐步淘汰。为了评估“假设”场景对系统性能、可用性和可靠性的影响,本文提出了使用大型数据基础设施模拟器的方法。目标是为数据中心运营商提供一种工具,使其能够理解和预测在全球数据基础设施中部署新网络拓扑、硬件配置或软件应用程序的后果,而不会影响服务。模拟器是使用多层方法构建的,提供到单个服务器组件和客户端操作的粒度,并针对一家财富500强公司的缩小版本的数据基础设施进行了验证。
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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