...
首页> 外文期刊>Journal of the Brazilian Computer Society >BitTorrent traffic from a caching perspective
【24h】

BitTorrent traffic from a caching perspective

机译:从缓存角度看BitTorrent流量

获取原文
获取原文并翻译 | 示例

摘要

BitTorrent currently contributes a significant amount of inter-ISP traffic. This has motivated research and development to explore caching and locality-aware neighbor selection mechanisms for costly traffic reduction. Recent researches have analyzed the possible effects of caching BitTorrent traffic and have provided preliminary results on its cacheability. However, little is known about the specifics of caching design that affect cache effectiveness and operation, such as replacement policy and cache size. This study addresses this gap with a comprehensive analysis of BitTorrent caching based on traces of user behavior in four popular BitTorrent sites. Our trace-driven simulation results show differences in BitTorrent traffic caching compared to that of the Web and other peer-to-peer applications. Differently from Web and other peer-to-peer caching, larger caches are necessary to achieve similar caching effectiveness in BitTorrent traffic. Furthermore, in BitTorrent caching, the LRU replacement policy that takes the temporal locality into account shows the best performance. We also use a locality-aware neighbor selection mechanism as a baseline to evaluate the LRU caching effectiveness. We find that LRU caching can provide greater traffic reduction than locality-aware neighbor selection in several scenarios of cache size and number of ISP clients.
机译:BitTorrent当前贡献了大量的ISP间通信。这激发了研究和开发探索缓存和位置感知的邻居选择机制的成本,以减少昂贵的流量。最近的研究分析了缓存BitTorrent流量的可能影响,并提供了有关其缓存能力的初步结果。但是,对于影响缓存有效性和操作(例如替换策略和缓存大小)的缓存设计的细节知之甚少。这项研究基于对四个流行的BitTorrent站点中用户行为的跟踪,对BitTorrent缓存进行了全面分析,从而解决了这一空白。我们的跟踪驱动模拟结果显示,与Web和其他对等应用程序相比,BitTorrent流量缓存有所不同。与Web和其他对等缓存不同,需要更大的缓存才能在BitTorrent流量中实现类似的缓存效果。此外,在BitTorrent缓存中,考虑了时间局部性的LRU替换策略显示了最佳性能。我们还使用位置感知邻居选择机制作为评估LRU缓存有效性的基准。我们发现,在几种缓存大小和ISP客户端数量的情况下,LRU缓存比本地感知邻居选择可以提供更大的流量减少。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号