Biblio

Filters: Author is Yu, Paul  [Clear All Filters]
2018-06-11
Aqil, Azeem, Khalil, Karim, Atya, Ahmed O.F., Papalexakis, Evangelos E., Krishnamurthy, Srikanth V., Jaeger, Trent, Ramakrishnan, K. K., Yu, Paul, Swami, Ananthram.  2017.  Jaal: Towards Network Intrusion Detection at ISP Scale. Proceedings of the 13th International Conference on Emerging Networking EXperiments and Technologies. :134–146.
We have recently seen an increasing number of attacks that are distributed, and span an entire wide area network (WAN). Today, typically, intrusion detection systems (IDSs) are deployed at enterprise scale and cannot handle attacks that cover a WAN. Moreover, such IDSs are implemented at a single entity that expects to look at all packets to determine an intrusion. Transferring copies of raw packets to centralized engines for analysis in a WAN can significantly impact both network performance and detection accuracy. In this paper, we propose Jaal, a framework for achieving accurate network intrusion detection at scale. The key idea in Jaal is to monitor traffic and construct in-network packet summaries. The summaries are then processed centrally to detect attacks with high accuracy. The main challenges that we address are (a) creating summaries that are concise, but sufficient to draw highly accurate inferences and (b) transforming traditional IDS rules to handle summaries instead of raw packets. We implement Jaal on a large scale SDN testbed. We show that on average Jaal yields a detection accuracy of about 98%, which is the highest reported for ISP scale network intrusion detection. At the same time, the overhead associated with transferring summaries to the central inference engine is only about 35% of what is consumed if raw packets are transferred.