“On the Feasibility of Byzantine Fault-Tolerant MapReduce in Clouds-of-Cloud”
From Navigators
(Difference between revisions)
(Created page with "{{Publication |type=inproceedings |document=Document for Publication-Correia2012-CoC.pdf |title=On the Feasibility of Byzantine Fault-Tolerant MapReduce in Clouds-of-Cloud |autho...") |
|||
Line 8: | Line 8: | ||
|abstract=MapReduce is a framework for processing large data sets largely used in cloud computing. MapReduce implementations like Hadoop can tolerate crashes and file corruptions, but there is evidence that general arbitrary faults do occur and can affect the correctness of job executions. Furthermore, many individual cloud outages have been reported, raising concerns about depending on a single cloud. We present a MapReduce runtime that tolerates arbitrary faults and runs in a set of clouds at a reasonable cost in terms of computation and execution time. The main challenge is to avoid sending through the internet the huge amount of data that would normally be exchanged between map and reduce tasks | |abstract=MapReduce is a framework for processing large data sets largely used in cloud computing. MapReduce implementations like Hadoop can tolerate crashes and file corruptions, but there is evidence that general arbitrary faults do occur and can affect the correctness of job executions. Furthermore, many individual cloud outages have been reported, raising concerns about depending on a single cloud. We present a MapReduce runtime that tolerates arbitrary faults and runs in a set of clouds at a reasonable cost in terms of computation and execution time. The main challenge is to avoid sending through the internet the huge amount of data that would normally be exchanged between map and reduce tasks | ||
|address=San Francisco, California | |address=San Francisco, California | ||
+ | |booktitle=First International Workshop on Dependability Issues in Cloud Computing (DISCCO 2012) | ||
}} | }} |
Latest revision as of 15:31, 21 January 2013
Miguel Correia, Pedro Costa, Marcelo Pasin, Alysson Bessani, Fernando Ramos, Paulo Verissimo
in First International Workshop on Dependability Issues in Cloud Computing (DISCCO 2012), San Francisco, California, 2012.
Abstract: MapReduce is a framework for processing large data sets largely used in cloud computing. MapReduce implementations like Hadoop can tolerate crashes and file corruptions, but there is evidence that general arbitrary faults do occur and can affect the correctness of job executions. Furthermore, many individual cloud outages have been reported, raising concerns about depending on a single cloud. We present a MapReduce runtime that tolerates arbitrary faults and runs in a set of clouds at a reasonable cost in terms of computation and execution time. The main challenge is to avoid sending through the internet the huge amount of data that would normally be exchanged between map and reduce tasks
Download paper
Download On the Feasibility of Byzantine Fault-Tolerant MapReduce in Clouds-of-Cloud
Export citation
Project(s):
Research line(s): Fault and Intrusion Tolerance in Open Distributed Systems (FIT)