4.5 Article

Predictive CDN Selection for Video Delivery Based on LSTM Network Performance Forecasts and Cost-Effective Trade-Offs

期刊

IEEE TRANSACTIONS ON BROADCASTING
卷 67, 期 1, 页码 145-158

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TBC.2020.3031724

关键词

Streaming media; Servers; Media; Quality of service; Measurement; Transform coding; Content delivery network; MPEG-DASH; operational expenditure; quality of service

资金

  1. EC projects Fed4Fire+ [732638]
  2. Open-VERSO project (Red Cervera Program, Spanish Government's Centre for the Development of Industrial Technology)

向作者/读者索取更多资源

Future telecommunication networks are expected to outperform current networks in terms of key performance indicators due to increasing consumption of video streams and demand for higher quality content. Content delivery networks (CDNs) are used to enhance media availability and delivery performance across the Internet, but extreme concurrency dynamics can impact CDN capacity and performance. Therefore, network accelerators are needed to enforce CDN resilience and efficient utilization, as well as to achieve reliable and cost-effective content delivery through predictive CDN adaptability and business constraints.
Owing to increasing consumption of video streams and demand for higher quality content and more advanced displays, future telecommunication networks are expected to outperform current networks in terms of key performance indicators (KPIs). Currently, content delivery networks (CDNs) are used to enhance media availability and delivery performance across the Internet in a cost-effective manner. The proliferation of CDN vendors and business models allows the content provider (CP) to use multiple CDN providers simultaneously. However, extreme concurrency dynamics can affect CDN capacity, causing performance degradation and outages, while overestimated demand affects costs. 5G standardization communities envision advanced network functions executing video analytics to enhance or boost media services. Network accelerators are required to enforce CDN resilience and efficient utilization of CDN assets. In this regard, this study investigates a cost-effective service to dynamically select the CDN for each session and video segment at the Media Server, without any modification to the video streaming pipeline being required. This service performs time series forecasts by employing a Long Short-Term Memory (LSTM) network to process real time measurements coming from connected video players. This service also ensures reliable and cost-effective content delivery through proactive selection of the CDN that fits with performance and business constraints. To this end, the proposed service predicts the number of players that can be served by each CDN at each time; then, it switches the required players between CDNs to keep the (Quality of Service) QoS rates or to reduce the CP's operational expenditure (OPEX). The proposed solution is evaluated by a real server, CDNs, and players and delivering dynamic adaptive streaming over HTTP (MPEG-DASH), where clients are notified to switch to another CDN through a standard MPEG-DASH media presentation description (MPD) update mechanism.

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