Hadoop MapReduce Dependability and Performance Benchmarking
Cloud Computing


MapReduce is a popular programming model for distributed data processing. Extensive research has been conducted on the reliability of MapReduce, ranging from adaptive and on-demand fault-tolerance to new fault-tolerance models. However, realistic benchmarks are still missing to analyze and compare the effectiveness of these proposals. To date, most MapReduce fault-tolerance solutions have been evaluated using microbenchmarks in an ad-hoc and overly simplified setting, which may not be representative of real-world applications.

MRBS is a comprehensive benchmark suite for evaluating the dependability of MapReduce systems. MRBS includes five benchmarks covering several application domains and a wide range of execution scenarios such as data-intensive vs. compute-intensive applications, or batch applications vs. online interactive applications. MRBS allows to inject various types of faults at different rates. It also considers different application workloads and dataloads, and produces extensive reliability, availability and performance statistics. Current version support the use of MRBS with Hadoop clusters running on Amazon EC2, and on a private cloud.

Should you use MRBS, we kindly ask you to cite it using the following reference:

  • Amit Sangroya, Damian Serrano, Sara Bouchenak. Benchmarking Dependability of MapReduce Systems. In Proc. of the 31st IEEE Int. Symp. on Reliable Distributed Systems (SRDS). Oct 2012.
  • [.pdf] [.bib]