Title: Study of skew mitigation techniques in MapReduce applications

Authors: Narinder K. Seera; S. Taruna

Addresses: Department of Mathematics and Computing, Banasthali Vidyapeeth, Tonk, Jaipur, Rajasthan- 304022, India ' Institute of Engineering and Technology, JK Lakshmipat University, Jaipur, Rajasthan, India

Abstract: Data skew is one of the reasons due to which MapReduce has been criticised for years. Skew occurs as a result of uneven assignment of workload to computational nodes. Many real world applications such as PageRank, CloudBurst, etc. severely suffer from the problem of skew which occurs either at map side or at reduce side in MapReduce model. Unfair task distribution in such applications shows the negative impact of skew on overall job execution and its performance. This study attempts to explore various types of skew, their causes and existing solutions for skew mitigation. The study observed that unfair task distribution in distributed environment leaves the potential parallelism unexploited. The paper also presents few applications which show the presence of skew and possible improvements.

Keywords: MapReduce; skew; straggler; skew mitigation; task distribution.

DOI: 10.1504/IJISDC.2018.097474

International Journal of Intelligent Systems Design and Computing, 2018 Vol.2 No.3/4, pp.281 - 296

Received: 04 Jun 2018
Accepted: 27 Sep 2018

Published online: 23 Jan 2019 *

Full-text access for editors Full-text access for subscribers Purchase this article Comment on this article