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Improving parallel data transfer times using predicted variances in shared networks

机译:使用共享网络中的预测差异改进并行数据传输时间

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It is increasingly common to use multiple distributed storage systems as a single data store within which large datasets may be replicated. Thus, we face the problem of how to access replicated data efficiently. Multiple-source parallel transfers can reduce access times by transferring data from several replicas in parallel. However, we then face the problem of deciding which data to fetch from which replicas. We propose a Tuned Conservative scheduling technique that uses predicted means and variances for network performance to make data selection decisions. This stochastic scheduling technique adjusts the amount of data fetched on a link according to not only the link performance but the expected variance in that performance. We incorporate our technique into the striped GridFTP server from the Globus Toolkit, and demonstrate that the technique can produce data transfer times that are significantly faster and less variable than those of other techniques.
机译:使用多个分布式存储系统作为单个数据存储越来越常见,可以复制大数据集。 因此,我们面临如何有效地访问复制数据的问题。 多源并行传输可以通过并行传输来自多个副本的数据来减少访问时间。 但是,我们将面临决定从哪个副本获取哪些数据的问题。 我们提出了一种调整的保守调度技术,该技术使用预测的手段和差异来进行网络性能来进行数据选择决策。 该随机调度技术根据链接性能,而是根据链接性能调整在链接上获取的数据量,而是该性能的预期方差。 我们将我们的技术与Globus Toolkit纳入条带化的Gridftp服务器,并证明该技术可以产生比其他技术的数据传输时间更快,更少的变量。

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