Evading Cyber-Attacks on Hadoop Ecosystem: A Novel Machine Learning-Based Security-Centric Approach towards Big Data Cloud

Author:

Sharma Neeraj A.1ORCID,Kumar Kunal1ORCID,Khorshed Tanzim2,Ali A B M Shawkat1,Khalid Haris M.34,Muyeen S. M.5ORCID,Jose Linju6

Affiliation:

1. Department of Computer Science and Mathematics, School of Science and Technology, The University of Fiji, Lautoka 5276, Fiji

2. RedHat, Perth, WA 6000, Australia

3. College of Engineering and Information Technology, University of Dubai, Academic City, Dubai 14143, United Arab Emirates

4. Department of Electrical and Electronic Engineering Science, University of Johannesburg, Aukland Park 2006, South Africa

5. Department of Electrical Engineering, Qatar University, Doha 2713, Qatar

6. Department of Electrical and Electronics Engineering, Higher Colleges of Technology, Sharjah 7947, United Arab Emirates

Abstract

The growing industry and its complex and large information sets require Big Data (BD) technology and its open-source frameworks (Apache Hadoop) to (1) collect, (2) analyze, and (3) process the information. This information usually ranges in size from gigabytes to petabytes of data. However, processing this data involves web consoles and communication channels which are prone to intrusion from hackers. To resolve this issue, a novel machine learning (ML)-based security-centric approach has been proposed to evade cyber-attacks on the Hadoop ecosystem while considering the complexity of Big Data in Cloud (BDC). An Apache Hadoop-based management interface “Ambari” was implemented to address the variation and distinguish between attacks and activities. The analyzed experimental results show that the proposed scheme effectively (1) blocked the interface communication and retrieved the performance measured data from (2) the Ambari-based virtual machine (VM) and (3) BDC hypervisor. Moreover, the proposed architecture was able to provide a reduction in false alarms as well as cyber-attack detection.

Publisher

MDPI AG

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