Affiliation:
1. University of Niš, Faculty of Electronic Engieering, Niš, Serbia
Abstract
Intrusion detection system (IDS) is one of the most important components
being used to monitor network for possible cyber-attacks. However, the
amount of data that should be inspected imposes a great challenge to IDSs.
With recent emerge of various big data technologies, there are ways for
overcoming the problem of the increased amount of data. Nevertheless, some
of this technologies inherit data distribution techniques that can be a
problem when splitting a sensitive data such as network data frames across a
cluster nodes. The goal of this paper is design and implementation of Hadoop
based IDS. In this paper we propose different input split techniques
suitable for network data distribution across cloud nodes and test the
performances of their Apache Hadoop implementation. Four different data
split techniques will be proposed and analysed. The techniques will be
described in detail. The system will be evaluated on Apache Hadoop cluster
with 17 slave nodes. We will show that processing speed can differ for more
than 30% depending on chosen input split design strategy. Additionally,
we?ll show that malicious level of network traffic can slow down the
processing time, in our case, for nearly 20%. The scalability of the system
will al so be discussed.
Funder
Ministry of Education, Science and Technological Development of the Republic of Serbia
Publisher
National Library of Serbia
Cited by
4 articles.
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