Understanding demand volatility in large VoD systems

Di Niu, Baochun Li, Shuqiao Zhao
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引用次数: 22

Abstract

Bandwidth usage in large-scale Video on Demand (VoD) systems varies rapidly over time, due to unpredictable dynamics in user demand and network conditions. Such bandwidth volatility makes it hard to provision the exact amount of server resources that matches the demand in each video channel, posing significant challenges to achieving quality assurance and efficient resource allocation at the same time. In this paper, we seek to statistically model time-varying traffic volatility in VoD servers, leveraging heteroscedastic models first used to interpret economic time series, with the goal of forecasting not only traffic patterns but also traffic volatility. We present the application of volatility forecast to efficient resource allocation that provides probabilistic service level guarantees to user groups. We also discuss volatility reduction from diversification, and its implications to new strategies for cost-effective server management. Our study is based on monitoring the workload of a large-scale commercial VoD system widely deployed on the Internet.
了解大型视频点播系统的需求波动
由于用户需求和网络条件的不可预测的动态变化,大规模视频点播(VoD)系统的带宽使用随时间迅速变化。这种带宽波动使得很难提供与每个视频通道的需求相匹配的服务器资源的确切数量,同时对实现质量保证和有效的资源分配提出了重大挑战。在本文中,我们试图利用首先用于解释经济时间序列的异方差模型,对视频点播服务器的时变流量波动进行统计建模,其目标不仅是预测流量模式,还包括流量波动。本文提出了波动性预测在有效资源分配中的应用,为用户群提供了概率服务水平的保证。我们还讨论了从多样化中减少波动性,以及它对具有成本效益的服务器管理新策略的影响。我们的研究是基于对广泛部署在互联网上的大型商业视频点播系统的工作量监测。
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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