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Monitoring, analysing and predicting network performance in grids

Research output: ThesisDoctoral Thesis

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Monitoring, analysing and predicting network performance in grids. / El-khatib, Yehia.
Lancaster University, 2011. 226 p.

Research output: ThesisDoctoral Thesis

Harvard

APA

El-khatib, Y. (2011). Monitoring, analysing and predicting network performance in grids. [Doctoral Thesis, Lancaster University]. Lancaster University.

Vancouver

Author

Bibtex

@phdthesis{5cadb5eddc6a48b28b82ecf85a5da51b,
title = "Monitoring, analysing and predicting network performance in grids",
abstract = "The grid computing paradigm has facilitated the instrumentation of complex, highly-demanding collaborative applications. The technologies that make grid computing possible have mostly evolved from parallel and cluster systems. Although this has certainly empowered the grid computing field, part of the heritage has been the perception that required network resources are taken for granted. This is precarious, considering that most grids rely on public IP networks, like the Internet, as the underlying network. This assumption has obstructed the path of grid computing. This thesis aims to improve the performance of grid applications by facilitating network-aware grid scheduling. This is achieved by providing network performance information to grid schedulers, allowing them to adapt to changes in the network. The contribution of this thesis is twofold: a novel approach to network measurement that is particularly suitable for grid environments; and a distributed system that collects and manages these measurements, predicts future network performance, and disseminates this information to schedulers. The accuracy and effectiveness of this system is evaluated on a production grid infrastructure used for e-science applications. The outcomes of this evaluation provide a strong argument for the introduction of network-aware grid schedulers, information systems, and job and resource description standards.",
keywords = "Grid computing, Grid middleware, Network measurement, network monitoring, passive network measurement, network analysis, network performance prediction, grid scheduling, cloud computing",
author = "Yehia El-khatib",
year = "2011",
month = sep,
language = "English",
publisher = "Lancaster University",
school = "Lancaster University",

}

RIS

TY - BOOK

T1 - Monitoring, analysing and predicting network performance in grids

AU - El-khatib, Yehia

PY - 2011/9

Y1 - 2011/9

N2 - The grid computing paradigm has facilitated the instrumentation of complex, highly-demanding collaborative applications. The technologies that make grid computing possible have mostly evolved from parallel and cluster systems. Although this has certainly empowered the grid computing field, part of the heritage has been the perception that required network resources are taken for granted. This is precarious, considering that most grids rely on public IP networks, like the Internet, as the underlying network. This assumption has obstructed the path of grid computing. This thesis aims to improve the performance of grid applications by facilitating network-aware grid scheduling. This is achieved by providing network performance information to grid schedulers, allowing them to adapt to changes in the network. The contribution of this thesis is twofold: a novel approach to network measurement that is particularly suitable for grid environments; and a distributed system that collects and manages these measurements, predicts future network performance, and disseminates this information to schedulers. The accuracy and effectiveness of this system is evaluated on a production grid infrastructure used for e-science applications. The outcomes of this evaluation provide a strong argument for the introduction of network-aware grid schedulers, information systems, and job and resource description standards.

AB - The grid computing paradigm has facilitated the instrumentation of complex, highly-demanding collaborative applications. The technologies that make grid computing possible have mostly evolved from parallel and cluster systems. Although this has certainly empowered the grid computing field, part of the heritage has been the perception that required network resources are taken for granted. This is precarious, considering that most grids rely on public IP networks, like the Internet, as the underlying network. This assumption has obstructed the path of grid computing. This thesis aims to improve the performance of grid applications by facilitating network-aware grid scheduling. This is achieved by providing network performance information to grid schedulers, allowing them to adapt to changes in the network. The contribution of this thesis is twofold: a novel approach to network measurement that is particularly suitable for grid environments; and a distributed system that collects and manages these measurements, predicts future network performance, and disseminates this information to schedulers. The accuracy and effectiveness of this system is evaluated on a production grid infrastructure used for e-science applications. The outcomes of this evaluation provide a strong argument for the introduction of network-aware grid schedulers, information systems, and job and resource description standards.

KW - Grid computing

KW - Grid middleware

KW - Network measurement

KW - network monitoring

KW - passive network measurement

KW - network analysis

KW - network performance prediction

KW - grid scheduling

KW - cloud computing

M3 - Doctoral Thesis

PB - Lancaster University

ER -