Publication | Closed Access
Scalable and Configurable End-to-End Collection and Analysis of IoT Security Data : Towards End-to-End Security in IoT Systems
77
Citations
11
References
2019
Year
Unknown Venue
EngineeringMachine LearningSecurity DataInformation SecurityIot ProtocolIot SecuritySecurity IssuesIot SystemIot SystemsData ScienceDistributed Sensor NetworksInternet Of Things SecurityIot Security DataInternet Of ThingsData ManagementComputer EngineeringComputer ScienceDeep LearningIot Data ManagementData SecurityIot Data AnalyticsEdge ComputingCloud ComputingSecurityConfigurable End-to-end CollectionBig Data
In recent years, there is a surge of interest in approaches pertaining to security issues of Internet of Things deployments and applications that leverage machine learning and deep learning techniques. A key prerequisite for enabling such approaches is the development of scalable infrastructures for collecting and processing security-related datasets from IoT systems and devices. This paper introduces such a scalable and configurable data collection infrastructure for data-driven IoT security. It emphasizes the collection of (security) data from different elements of IoT systems, including individual devices and smart objects, edge nodes, IoT platforms, and entire clouds. The scalability of the introduced infrastructure stems from the integration of state of the art technologies for large scale data collection, streaming and storage, while its configurability relies on an extensible approach to modelling security data from a variety of IoT systems and devices. The approach enables the instantiation and deployment of security data collection systems over complex IoT deployments, which is a foundation for applying effective security analytics algorithms towards identifying threats, vulnerabilities and related attack patterns.
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