ABSTRACT
"Catch-up", or on-demand access of previously broadcast TV content over the public Internet, constitutes a significant fraction of peak time network traffic. This paper analyses consumption patterns of nearly 6 million users of a nationwide deployment of a catch-up TV service, to understand the network support required. We find that catch-up has certain natural scaling properties compared to traditional TV: The on-demand nature spreads load over time, and users have much higher completion rates for content streams than previously reported. Users exhibit strong preferences for serialised content, and for specific genres.
Exploiting this, we design a Speculative Content Offloading and Recording Engine (SCORE) that predictively records a personalised set of shows on user-local storage, and thereby offloads traffic that might result from subsequent catch-up access. Evaluations show that even with a modest storage of ~32GB, an oracle with complete knowledge of user consumption can save up to 74% of the energy, and 97% of the peak bandwidth compared to the current IP streaming-based architecture. In the best case, optimising for energy consumption, SCORE can recover more than 60% of the traffic and energy savings achieved by the oracle. Optimising purely for traffic rather than energy can reduce bandwith by an additional 5%.
- Commission Regulation No 107/2009 of 4 February 2009 implementing Directive 2005/32/EC of the European Parliament and of the Council with regard to ecodesign requirements for simple set-top boxes. Official Journal of the European Union L36 (2009), 8--14.Google Scholar
- Nordig unified requirements for integrated receiver decoders for use in cable, satellite, terrestrial and ip-based networks. Ver. 2.2.1, 2010.Google Scholar
- Annapureddy, S., Guha, S., Gkantsidis, C., Gunawardena, D., and Rodriguez, P. Is high-quality VoD feasible using P2P swarming? In Proc. Intl. Conf. on World Wide Web (WWW) (2007). Google ScholarDigital Library
- Applegate, D., Archer, A., Gopalakrishnan, V., Lee, S., and Ramakrishnan, K. Optimal content placement for a large-scale VoD system. In Proceedings of the 6th International Conference on Networking EXperiments and Technologies (CoNEXT 2012) (2010), ACM, p. 4. Google ScholarDigital Library
- Baliga, J., Ayre, R., Hinton, K., Sorin, W. V., and Tucker, R. S. Energy consumption in optical IP networks. Journal of Lightwave Technology 27, 13 (Jul 2009), 2391--2403.Google ScholarCross Ref
- Borst, S., Gupta, V., and Walid, A. Distributed caching algorithms for content distribution networks. In Proc. IEEE INFOCOM (2010). Google ScholarDigital Library
- Castro, M., Druschel, P., Kermarrec, A., Nandi, A., Rowstron, A., and Singh, A. Splitstream: high-bandwidth multicast in cooperative environments. In 19th ACM Symposium on Operating Systems Principles (SOSP) (2003). Google ScholarDigital Library
- Cha, M., Rodriguez, P., Crowcroft, J., Moon, S., and Amatriain, X. Watching television over an IP network. In Proceedings of the 8th ACM SIGCOMM conference on Internet measurement (IMC) (2008), ACM, pp. 71--84. Google ScholarDigital Library
- Chandaria, J., Hunter, J., and Williams, A. A comparison of the carbon footprint of digital terrestrial television with video-on-demand. BBC Research Whitepaper 189, March 2011.Google Scholar
- Choe, Y., Schuff, D., Dyaberi, J., and Pai, V. Improving VoD server efficiency with bittorrent. In Proceedings of the 15th international conference on Multimedia (2007), ACM, pp. 117--126. Google ScholarDigital Library
- Deloitte. Technology, media & telecom predictions, May 2012.Google Scholar
- Dobrian, F., Awan, A., Joseph, D., Ganjam, A., Zhan, J., Sekar, V., Stoica, I., and Zhang, H. Understanding the impact of video quality on user engagement. SIGCOMM-Computer Communication Review 41, 4 (2011), 362. Google ScholarDigital Library
- Hei, X., Liang, C., Liang, J., Liu, Y., and Ross, K. A measurement study of a large-scale P2P IPTV system. IEEE Transactions on Multimedia 9, 8 (2007), 1672--1687. Google ScholarDigital Library
- Huang, C., Li, J., and Ross, K. W. Can Internet video-on-demand be profitable? In Proc. ACM SIGCOMM (2007). Google ScholarDigital Library
- Huang, Y., Fu, T. Z., Chiu, D.-M., Lui, J. C., and Huang, C. Challenges, design and analysis of a large-scale P2P-VoD system. SIGCOMM '08. Google ScholarDigital Library
- Kostić, D., Rodriguez, A., Albrecht, J., and Vahdat, A. Bullet: high bandwidth data dissemination using an overlay mesh. In SOSP (2003). Google ScholarDigital Library
- Neilsen. Report: Bigger TVs, DVR and Wi-Fi among Hot U.S. Home Technology Trends, 2010.Google Scholar
- Ofcom. Communications market report 2012. Available from http://stakeholders.ofcom.org.uk/binaries/research/cmr/cmr12/CMR_UK_2012.pdf, July 2012.Google Scholar
- Sandvine. Global internet phenomena report, 1h 2012, May 2012.Google Scholar
- TiVo. How to find great new shows with TiVo Suggestions. Available from http://www.tivo.com/mytivo/howto/getthemostoutoftv/howto_use_suggestions.html, Last accessed 25 Apr 2012.Google Scholar
- Verhoeyen, M., De Vleeschauwer, D., and Robinson, D. Content storage architectures for boosted IPTV service. Bell Labs Tech. J. 13, 3 (2008), 29--43. Google ScholarDigital Library
- Yang, X., Gjoka, M., Chhabra, P., Markopoulou, A., and Rodriguez, P. Kangaroo: video seeking in P2P systems. In Proc. Intl. Conf. on peer-to-peer Systems (2009), USENIX Association. Google ScholarDigital Library
- YouView TV Ltd. Youview core technical specification, 2011.Google Scholar
- Yu, H., Zheng, D., Zhao, B., and Zheng, W. Understanding user behavior in large-scale video-on-demand systems. ACM SIGOPS Operating Systems Review 40, 4 (2006), 333--344. Google ScholarDigital Library
Index Terms
- Understanding and decreasing the network footprint of catch-up tv
Recommendations
Catch-up TV recommendations: show old favourites and find new ones
RecSys '13: Proceedings of the 7th ACM conference on Recommender systemsWeb-based catch-up TV has revolutionised watching habits as it provides users the opportunity to watch programs at their preferred time and place, using a variety of devices. With the increasing offer of TV content, there is an emergent need for ...
Catch-up TV analytics: statistical characterization and consumption patterns identification on a production service
Multimedia IP Television services, such as on-demand Catch-up TV, are in an active migration process towards Over-The-Top (OTT) delivery using state-of-the-art Content Delivery Networks (CDNs). Maintaining the same Quality-of-Experience (QoE) of managed ...
Catch-up TV forecasting: enabling next-generation over-the-top multimedia TV services
Due to recent developments in Over-The-Top (OTT) technologies, Pay-TV operators have begun a migration process of managed IP Television (IPTV) services to more appealing OTT approaches. In these scenarios, being able to predict when and what resources ...
Comments