Using Regression Techniques to Predict Large Data Transfers
Sudharshan Vazhkudai, Jennifer M. Schopf

TL;DR
This paper presents regression-based models that accurately predict large data transfer times in Data Grids by incorporating system load factors, improving transfer efficiency planning.
Contribution
It introduces a suite of univariate and multivariate predictors that integrate load variations and system performance data for more accurate transfer time predictions.
Findings
Predictions within 15% error for testbed sites.
Effective modeling of load variations on transfer times.
Improved transfer scheduling accuracy.
Abstract
The recent proliferation of Data Grids and the increasingly common practice of using resources as distributed data stores provide a convenient environment for communities of researchers to share, replicate, and manage access to copies of large datasets. This has led to the question of which replica can be accessed most efficiently. In such environments, fetching data from one of the several replica locations requires accurate predictions of end-to-end transfer times. The answer to this question can depend on many factors, including physical characteristics of the resources and the load behavior on the CPUs, networks, and storage devices that are part of the end-to-end data path linking possible sources and sinks. Our approach combines end-to-end application throughput observations with network and disk load variations and captures whole-system performance and variations in load…
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Taxonomy
TopicsDistributed and Parallel Computing Systems · Parallel Computing and Optimization Techniques · Advanced Data Storage Technologies
