Modeling Performance of Hadoop Applications: A Journey from Queueing Networks to Stochastic Well Formed Nets

Nowadays, many enterprises commit to the extraction of actionable knowledge from huge datasets as part of their core business activities. Applications belong to very different domains such as fraud detection or one-to-one marketing, and encompass business analytics and support to decision making in...

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Published inAlgorithms and Architectures for Parallel Processing Vol. 10048; pp. 599 - 613
Main Authors Ardagna, Danilo, Bernardi, Simona, Gianniti, Eugenio, Karimian Aliabadi, Soroush, Perez-Palacin, Diego, Requeno, José Ignacio
Format Book Chapter Conference Proceeding
LanguageEnglish
Published Switzerland Springer International Publishing AG 2016
Springer International Publishing
SeriesLecture Notes in Computer Science
Subjects
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ISBN9783319495828
3319495828
9783319495835
3319495836
ISSN0302-9743
1611-3349
1611-3349
DOI10.1007/978-3-319-49583-5_47

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Summary:Nowadays, many enterprises commit to the extraction of actionable knowledge from huge datasets as part of their core business activities. Applications belong to very different domains such as fraud detection or one-to-one marketing, and encompass business analytics and support to decision making in both private and public sectors. In these scenarios, a central place is held by the MapReduce framework and in particular its open source implementation, Apache Hadoop. In such environments, new challenges arise in the area of jobs performance prediction, with the needs to provide Service Level Agreement guarantees to the end-user and to avoid waste of computational resources. In this paper we provide performance analysis models to estimate MapReduce job execution times in Hadoop clusters governed by the YARN Capacity Scheduler. We propose models of increasing complexity and accuracy, ranging from queueing networks to stochastic well formed nets, able to estimate job performance under a number of scenarios of interest, including also unreliable resources. The accuracy of our models is evaluated by considering the TPC-DS industry benchmark running experiments on Amazon EC2 and the CINECA Italian supercomputing center. The results have shown that the average accuracy we can achieve is in the range 9–14%.
ISBN:9783319495828
3319495828
9783319495835
3319495836
ISSN:0302-9743
1611-3349
1611-3349
DOI:10.1007/978-3-319-49583-5_47