DocumentCode
3748395
Title
ATLAS: An AdapTive faiLure-Aware Scheduler for Hadoop
Author
Mbarka Soualhia;Foutse Khomh;Sofi?ne Tahar
Author_Institution
Concordia University, Qu?bec, Canada
fYear
2015
Firstpage
1
Lastpage
8
Abstract
Hadoop has become the de facto standard for processing large data in today´s cloud environment. The performance of Hadoop in the cloud has a direct impact on many important applications ranging from web analytic, web indexing, image and document processing to high-performance scientific computing. However, because of the scale, complexity and dynamic nature of the cloud, failures are common and these failures often impact the performance of jobs running in Hadoop. Although Hadoop possesses built-in failure detection and recovery mechanisms, several scheduled jobs still fail because of unforeseen events in the cloud environment. A single task failure can cause the failure of the whole job and unpredictable job running times. In this paper, we propose ATLAS (AdapTive faiLure-Aware Scheduler), a new scheduler for Hadoop that can adapt its scheduling decisions to events occurring in the cloud environment. Using statistical models, ATLAS predicts task failures and adjusts its scheduling decisions on the fly to reduce task failure occurrences. We implement ATLAS in the Hadoop framework of Amazon Elastic MapReduce (EMR) and perform a case study to compare its performance with those of the FIFO, Fair and Capacity schedulers. Results show that ATLAS can reduce the percentage of failed jobs by up to 28% and the percentage of failed tasks by up to 39%, and the total execution time of jobs by 10 minutes on average. ATLAS also reduces CPU and memory usages.
Keywords
"Predictive models","Delays","Facebook","Standards","Distance measurement","Indexing","Complexity theory"
Publisher
ieee
Conference_Titel
Computing and Communications Conference (IPCCC), 2015 IEEE 34th International Performance
Electronic_ISBN
2374-9628
Type
conf
DOI
10.1109/PCCC.2015.7410316
Filename
7410316
Link To Document