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Exploiting Correlations in Request Streams: A Case for Hybrid Caching in Cache Networks

机译:利用请求流中的相关性:缓存网络中的混合缓存的一种情况

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With the increasing popularity of cache networks, in recent years, multiple static and dynamic caching strategies have been proposed that seek to improve user-level performance. Most existing caching strategies rely heavily on assumptions such as content popularity following a well-known Zipfian distribution and request streams following an Independent Reference Model (IRM). In this paper, we consider multiple real-world user request stream traces to investigate the validity of these assumptions and observe that they do not hold true. We conduct a detailed factor analysis and observe that violation of the IRM assumption significantly impacts the performance of caching strategies. We identify the interplay between the skewness of the content popularity distribution and the request stream correlation among unpopular content as the key factor impacting performance. We identify that in the high popularity skewness-low correlation regime, static caching outperforms dynamic caching, while the reverse is true in the low popularity skewness-high correlation regime. For the high popularity skewness-high correlation regime, static and dynamic caching provide similar performance. For this scenario, we propose Hybrid Caching that effectively combines static and dynamic caching strategies. The main idea is to split the cache into two parts-a static cache that statically caches content based on popularity and a dynamic cache that exploits the correlation in request streams. We conduct experiments on multiple real-world networks (e.g., WIDE, GEANT, GARR) and demonstrate that Hybrid Caching outperforms static or dynamic caching alone in the high popularity skewness-high correlation regime.
机译:随着高速缓存网络的日益普及,近年来,已提出了多种静态和动态高速缓存策略,以寻求改善用户级性能。大多数现有的缓存策略在很大程度上依赖于这样的假设,例如遵循众所周知的Zipfian分布的内容受欢迎程度以及遵循独立参考模型(IRM)的请求流。在本文中,我们考虑了多个现实世界中的用户请求流跟踪,以调查这些假设的有效性,并观察到它们不成立。我们进行了详细的因素分析,并观察到违反IRM假设会严重影响缓存策略的性能。我们确定内容受欢迎程度分布的偏斜度与不受欢迎内容之间的请求流相关性之间的相互作用是影响性能的关键因素。我们发现,在高流行度偏度-低相关性方案中,静态缓存的性能优于动态缓存,而在低流行度偏度-高相关性方案中则相反。对于高度流行的偏度-高相关机制,静态和动态缓存提供了相似的性能。对于这种情况,我们提出了混合缓存,它有效地结合了静态和动态缓存策略。主要思想是将缓存分为两部分:基于流行度静态缓存内容的静态缓存和利用请求流中的相关性的动态缓存。我们在多个真实世界的网络(例如WIDE,GEANT,GARR)上进行了实验,并证明了在高速度偏度-高相关性体制下,混合缓存优于单独的静态或动态缓存。

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