Biblio
Consensus is a basic building block in distributed systems for a myriad of related problems that involve agreement. For asynchronous networks, consensus has been proven impossible, and is well known as Augean task. Failure Detectors (FDs) have since emerged as a possible remedy, able to solve consensus in asynchronous systems under certain assumptions. With the increasing use of asynchronous, wireless Internet of Things (IoT) technologies, such as IEEE 802.15.4/6LoWPAN, the demand of applications that require some form of reliability and agreement is on the rise. What was missing so far is an FD that can operate under the tight constraints offered by Low Power and Lossy Networks (LLNs) without compromising the efficiency of the network. We present 6LoFD, an FD specifically aimed at energy and memory efficient operation in small scale, unreliable networks, and evaluate its working principles by using an ns-3 implementation of 6LoFD.
Since the number of cyber attacks by insider threats and the damage caused by them has been increasing over the last years, organizations are in need for specific security solutions to counter these threats. To limit the damage caused by insider threats, the timely detection of erratic system behavior and malicious activities is of primary importance. We observed a major paradigm shift towards anomaly-focused detection mechanisms, which try to establish a baseline of system behavior – based on system logging data – and report any deviations from this baseline. While these approaches are promising, they usually have to cope with scalability issues. As the amount of log data generated during IT operations is exponentially growing, high-performance security solutions are required that can handle this huge amount of data in real time. In this paper, we demonstrate how high-performance bioinformatics tools can be leveraged to tackle this issue, and we demonstrate their application to log data for outlier detection, to timely detect anomalous system behavior that points to insider attacks.