Skip to the main content

Original scientific paper

https://doi.org/10.17559/TV-20141006121105

Distributed log analysis on the cloud using MapReduce

Galip Aydin ; Firat University, Faculty of Engineering, Computer Engineering Department, Elazig, Turkey
Ibrahim R. Hallac orcid id orcid.org/0000-0003-0568-3114 ; Firat University, Faculty of Engineering, Computer Engineering Department, Elazig, Turkey


Full text: croatian pdf 982 Kb

page 1011-1016

downloads: 714

cite

Full text: english pdf 982 Kb

page 1011-1016

downloads: 359

cite


Abstract

In this paper we describe our work on designing a web based, distributed data analysis system based on the popular MapReduce framework deployed on a small cloud; developed specifically for analyzing web server logs. The log analysis system consists of several cluster nodes, it splits the large log files on a distributed file system and quickly processes them using MapReduce programming model. The cluster is created using an open source cloud infrastructure, which allows us to easily expand the computational power by adding new nodes. This gives us the ability to automatically resize the cluster according to the data analysis requirements. We implemented MapReduce programs for basic log analysis needs like frequency analysis, error detection, busy hour detection etc. as well as more complex analyses which require running several jobs. The system can automatically identify and analyze several web server log types such as Apache, IIS, Squid etc. We use open source projects for creating the cloud infrastructure and running MapReduce jobs.

Keywords

cloud computing; Hadoop; log analysis; MapReduce

Hrčak ID:

163745

URI

https://hrcak.srce.hr/163745

Publication date:

16.8.2016.

Article data in other languages: croatian

Visits: 2.609 *