“On the Performance of Byzantine Fault-Tolerant MapReduce”
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|title=On the Performance of Byzantine Fault-Tolerant MapReduce | |title=On the Performance of Byzantine Fault-Tolerant MapReduce | ||
|author=Pedro Costa, Marcelo Pasin, Alysson Bessani, Miguel Correia | |author=Pedro Costa, Marcelo Pasin, Alysson Bessani, Miguel Correia | ||
+ | |Project=Project:TCLOUDS, Project:RC-Clouds, | ||
+ | |ResearchLine=Fault and Intrusion Tolerance in Open Distributed Systems (FIT) | ||
|year=2013 | |year=2013 | ||
|abstract=MapReduce is often used for critical data processing, e.g., in the context of scientific or financial simulation. However, there is evidence in the literature that there are arbitrary (or Byzantine) faults that may corrupt the results of MapReduce without being detected. We present a Byzantine fault-tolerant MapReduce framework that can run in two modes: non-speculative and speculative. | |abstract=MapReduce is often used for critical data processing, e.g., in the context of scientific or financial simulation. However, there is evidence in the literature that there are arbitrary (or Byzantine) faults that may corrupt the results of MapReduce without being detected. We present a Byzantine fault-tolerant MapReduce framework that can run in two modes: non-speculative and speculative. |
Latest revision as of 18:33, 31 January 2013
Pedro Costa, Marcelo Pasin, Alysson Bessani, Miguel Correia
IEEE Transactions on Dependable and Secure Computing, 2013.
Abstract: MapReduce is often used for critical data processing, e.g., in the context of scientific or financial simulation. However, there is evidence in the literature that there are arbitrary (or Byzantine) faults that may corrupt the results of MapReduce without being detected. We present a Byzantine fault-tolerant MapReduce framework that can run in two modes: non-speculative and speculative. We thoroughly evaluate experimentally the performance of these two versions of the framework, showing that they use around twice more resources than Hadoop MapReduce, instead of the three times more of alternative solutions. We believe this cost is acceptable for many critical applications.
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Project(s): Project:TCLOUDS, Project:RC-Clouds
Research line(s): Fault and Intrusion Tolerance in Open Distributed Systems (FIT)