Back to Search Start Over

Testing MapReduce-Based Systems

Authors :
Marynowski, João Eugenio
Albonico, Michel
de Almeida, Eduardo Cunha
Sunyé, Gerson
Publication Year :
2012

Abstract

MapReduce (MR) is the most popular solution to build applications for large-scale data processing. These applications are often deployed on large clusters of commodity machines, where failures happen constantly due to bugs, hardware problems, and outages. Testing MR-based systems is hard, since it is needed a great effort of test harness to execute distributed test cases upon failures. In this paper, we present a novel testing solution to tackle this issue called HadoopTest. This solution is based on a scalable harness approach, where distributed tester components are hung around each map and reduce worker (i.e., node). Testers are allowed to stimulate each worker to inject failures on them, monitor their behavior, and validate testing results. HadoopTest was used to test two applications bundled into Hadoop, the Apache open source MapReduce implementation. Our initial implementation demonstrates promising results, with HadoopTest coordinating test cases across distributed MapReduce workers, and finding bugs.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1209.6580
Document Type :
Working Paper