Server selection in large-scale video-on-demand systems

Author:

Carlsson Niklas1,Eager Derek L.1

Affiliation:

1. University of Saskatchewan, SK, Canada

Abstract

Video on demand, particularly with user-generated content, is emerging as one of the most bandwidth-intensive applications on the Internet. Owing to content control and other issues, some video-on-demand systems attempt to prevent downloading and peer-to-peer content delivery. Instead, such systems rely on server replication, such as via third-party content distribution networks, to support video streaming (or pseudostreaming) to their clients. A major issue with such systems is the cost of the required server resources. By synchronizing the video streams for clients that make closely spaced requests for the same video from the same server, server costs (such as for retrieval of the video data from disk) can be amortized over multiple requests. A fundamental trade-off then arises, however, with respect to server selection. Network delivery cost is minimized by selecting the nearest server, while server cost is minimized by directing closely spaced requests for the same video to a common server. This article compares classes of server selection policies within the context of a simple system model. We conclude that: (i) server selection using dynamic system state information (rather than only proximities and average loads) can yield large improvements in performance, (ii) deferring server selection for a request as late as possible (i.e., until just before streaming is to begin) can yield additional large improvements, and (iii) within the class of policies using dynamic state information and deferred selection, policies using only “local” (rather than global) request information are able to achieve most of the potential performance gains.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture

Reference29 articles.

1. On optimal batching policies for video-on-demand storage servers

2. Minimizing Delivery Cost in Scalable Streaming Content Distribution Systems

3. Analysis of educational media server workloads

4. Multicast protocols for scalable on-demand download

5. Carlsson N. 2006. Scalable download protocols. Ph.D. thesis University of Saskatchewan Saskatoon SK Canada. Carlsson N. 2006. Scalable download protocols. Ph.D. thesis University of Saskatchewan Saskatoon SK Canada.

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