首页> 外文会议>Distributed Computing Systems Workshops, 2009. ICDCS Workshops '09 >P2P Accelerated Mass Data Distribution over Booming Internet: Effectiveness and Bottlenecks
【24h】

P2P Accelerated Mass Data Distribution over Booming Internet: Effectiveness and Bottlenecks

机译:蓬勃发展的Internet上的P2P加速海量数据分发:有效性和瓶颈

获取原文

摘要

With the explosive growth of data-concentrated applications over Internet, the distribution of huge data in large scales with guarantee of quality of service (QoS), remains an elusive goal in both current and future Internet. The potential integration of peer-to-peer (P2P) paradigm into the Internet content distribution infrastructure provides a disruptive market opportunity to scale the Internet for higher quality data delivery. While the theoretical benefits of P2P has been widely reported, it remains unknown on its performance for mass data delivery over the booming Internet with increasing users and access speed, highly promising yet controversial. This paper thus provides an experimental study in exploring the following questions: 1) How fast and how scalable the mass data delivery can be with the assistance of P2P networks? 2) What are the bottlenecks in adopting P2P for content distribution in high-speed networks? 3) How could P2P be integrated as a reliable platform for QoS-guaranteed data delivery among dedicated server farms in industry? Our explorations quantify the unique strength of P2P technology for mass data delivery in high-speed networks, and identify factors that influence the downloading time of end users, namely, peer upload rate, file piece size, and seed capacity.
机译:随着Internet上以数据为中心的应用程序的爆炸性增长,在保证服务质量(QoS)的情况下大规模大规模分发海量数据仍然是当前和未来Internet的一个遥不可及的目标。对等(P2P)范式潜在集成到Internet内容分发基础结构中提供了颠覆性的市场机会,可以扩展Internet以获得更高质量的数据交付。尽管P2P的理论优势已得到广泛报道,但随着用户和访问速度的提高,它在蓬勃发展的Internet上进行海量数据传输的性能仍然未知,这是极有希望的但有争议的。因此,本文提供了探索以下问题的实验研究:1)在P2P网络的辅助下,海量数据交付的速度和可扩展性如何? 2)在高速网络中采用P2P进行内容分发的瓶颈是什么? 3)如何将P2P集成为可靠的平台,以在工业专用服务器场之间提供QoS保证的数据传输?我们的探索量化了P2P技术在高速网络中海量数据交付方面的独特优势,并确定了影响最终用户下载时间的因素,即对等上载率,文件大小和种子容量。

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