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Digging deeper into content to improve caching efficiency
Speaker: Dr. Lazaros Gkatzikis Huawei France Research Center Paris, France Title: "Digging deeper into content to improve caching efficiency" Date: Thursday, 30 June 2016 Time: 4:00pm - 5:00pm Venue: Room 3501 (near lifts 25/26), HKUST Abstract: Content caching at the edge is promising for the sustainability and performance of future wireless networks. Access latency and core network traffic can be reduced by bringing content closer to the user. However, caching in the access network suffers from two unavoidable technical problems: 1) Due to the large number of caches to be deployed, each individual cache has to be small (in comparison to the file catalogue), and hence only a negligible fraction of the catalog can be stored in a single cache. 2) The user population accessing a given cache at the access level is typically small compared to caching at the CDN level, and hence estimating the popularity of dynamic content in time is challenging. In this talk, we present two methods based on content chunking to improve caching efficiency. First, we focus on video content which represents a significant portion of the network traffic. Rarely do users watch online contents entirely. Several video delivery platforms, such as YouTube, collect statistics on the user engagement performance of their videos, usually called "Audience retention rate". We demonstrate how this information can be used to achieve a significant traffic reduction on the core network. We characterize the performance upper bound of a cache able to store parts of videos and the best performance achievable by chunk-LRU. Next, we address the problem small sample sizes focusing on L local caches and one global cache. On one hand we show that the global cache learns L times faster by aggregating all requests from local caches, which improves hit rates. On the other hand, assuming locality of interest, aggregation washes out local characteristics which leads to a hit rate penalty. This motivates coordination mechanisms that combine global learning of popularity in clusters and LRU with prefetching. ******************* Biography: Lazaros Gkatzikis (S'09-M'13) received the Ph.D. degree in computer engineering and communications at the University of Thessaly, Volos, Greece. He is a Research Staff Member with the Huawei France Research Center, Paris, France. In the fall of 2011, he was a Research Intern with the Technicolor Paris Research Laboratory. He was a Postdoctoral Researcher with the University of Thessaly, Volos, Greece (2013) and the KTH RoyalInstitute of Technology, Stockholm, Sweden (2014). His research interests include network optimization, game theory, and performance analysis.