基于志愿者网络的集体数据下载的异质性研究

Jinoh Kim, A. Chandra, J. Weissman
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引用次数: 4

摘要

科学计算越来越多地部署在基于志愿者的分布式计算环境中,这些环境由捐赠的用户机器上的空闲资源组成。这些环境中的一个基本挑战是将数据传播到计算节点,作业的成功完成取决于跨计算节点的集体数据下载效率,而不仅仅是单个下载时间。本文考虑使用由分布在一组数据服务器上的数据组成的数据网络,并着重于服务器选择问题:单个节点如何选择用于下载数据的服务器以最小化通信makespan(数据文件的最大下载时间)。通过在PlanetLab上运行的糕点网络上进行的实验,我们证明了基于志愿者的网络中的节点在带宽、负载和容量等几个指标方面是异构的,这些指标会影响它们的下载行为。我们提出了包含这些指标的新的服务器选择启发式方法,并证明这些启发式方法优于传统的基于邻近性的服务器选择,将平均完工时间减少了至少30%。我们进一步表明,结合有关下载并发性的信息可以避免服务器过载,并且比仅考虑邻近性和带宽的启发式方法提高约17-43%的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Heterogeneity for Collective Data Downloading in Volunteer-based Networks
Scientific computing is being increasingly deployed over volunteer-based distributed computing environments consisting of idle resources on donated user machines. A fundamental challenge in these environments is the dissemination of data to the computation nodes, with the successful completion of jobs being driven by the efficiency of collective data download across compute nodes, and not only the individual download times. This paper considers the use of a data network consisting of data distributed across a set of data servers, and focuses on the server selection problem: how do individual nodes select a server for downloading data to minimize the communication makespan - the maximal download time for a data file. Through experiments conducted on a pastry network running on PlanetLab, we demonstrate that nodes in a volunteer-based network are heterogeneous in terms of several metrics, such as bandwidth, load, and capacity, which impact their download behavior. We propose new server selection heuristics that incorporate these metrics, and demonstrate that these heuristics outperform traditional proximity-based server selection, reducing average makespans by at least 30%. We further show that incorporating information about download concurrency avoids overloading servers, and improves performance by about 17-43% over heuristics considering only proximity and bandwidth.
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