Deakin University
Browse

Real time cyber attack analysis on Hadoop ecosystem using machine learning algorithms

Version 2 2024-06-03, 11:48
Version 1 2016-07-01, 16:16
conference contribution
posted on 2024-06-03, 11:48 authored by MT Khorshed, NA Sharma, AV Dutt, ABMS Ali, Y Xiang
Big Data technologies are exciting cutting-edge technologies that generate, collect, store and analyse tremendous amount of data. Like any other IT revolution, Big Data technologies also have big challenges that are obstructing it to be adopted by wider community or perhaps impeding to extract value from Big Data with pace and accuracy it is promising. In this paper we first offer an alternative view of «Big Data Cloud» with the main aim to make this complex technology easy to understand for new researchers and identify gaps efficiently. In our lab experiment, we have successfully implemented cyber-attacks on Apache Hadoop's management interface «Ambari». On our thought about «attackers only need one way in», we have attacked the Apache Hadoop's management interface, successfully turned down all communication between Ambari and Hadoop's ecosystem and collected performance data from Ambari Virtual Machine (VM) and Big Data Cloud hypervisor. We have also detected these cyber-attacks with 94.0187% accurateness using modern machine learning algorithms. From the existing researchs, no one has ever attempted similar experimentation in detection of cyber-attacks on Hadoop using performance data.

History

Pagination

1-7

Location

Nadi, Fiji

Start date

2015-12-02

End date

2015-12-04

ISBN-13

9781509007141

Language

eng

Publication classification

E Conference publication, E1 Full written paper - refereed

Copyright notice

2015, IEEE

Title of proceedings

APWC on CSE 2015: Proceedings of the Asia-Pacific Computer Science and Engineering 2015 World Congress

Event

Asia-Pacific Computer Science and Engineering. World Congress (2nd : 2015 : Nadi, Fiji)

Publisher

IEEE

Place of publication

Piscataway, N.J.