Title :
Hardware acceleration of Hadoop MapReduce
Author :
Honjo, Toshimori ; Oikawa, K.
Author_Institution :
NTT Software Innovation Center, NTT Corp., Tokyo, Japan
Abstract :
MapReduce is widely used for BigData processing. It was originally designed to overcome the I/O bottleneck of commodity servers. However, several high speed storage and network devices have recently emerged, and speeds continue to increase. Employing such brand new devices will solve the I/O bottleneck, making the CPU the next serious bottleneck in the MapReduce framework. In this paper, we conduct a performance study of Hadoop MapReduce by using a server cluster built on state-of-the-art devices. We show the CPU is the bottleneck in such an environment. To overcome the CPU bottleneck, we propose hardware acceleration for MapReduce. We implement a prototype using a many core processor board developed by Tilera and show the feasibility of our proposal.
Keywords :
Big Data; distributed processing; multiprocessing systems; BigData processing; CPU bottleneck; Hadoop MapReduce; Tilera; commodity server I-O bottleneck; hardware acceleration; many core processor; server cluster; Acceleration; Bandwidth; Benchmark testing; Data processing; Hardware; Servers; Throughput; Benchmark; Hardware offload; Many-core processor; MapReduce;
Conference_Titel :
Big Data, 2013 IEEE International Conference on
Conference_Location :
Silicon Valley, CA
DOI :
10.1109/BigData.2013.6691562