- Towards Resilient and Secure QKD networks. 2025 25th Anniversary International Conference on Transparent Optical Networks (ICTON), IEEE, 2025, 1-3 mehr…
- Trust-Enhanced Quantum Key Management System for Meshed QKD Networks. Optical Fiber Communication Conference (OFC) 2025, Optica Publishing Group, 2025, M3Z.16 mehr…
- Improving End-to-end Key Security in Trusted Node-based QKD Networks with Secret Sharing. Optical Fiber Communication Conference (OFC) 2025, Optica Publishing Group, 2025, W1J.6 mehr…
Aktuelles
Adversarial Network Benchmarking: A Data-Driven Approach
Dr.-Ing. Andreas Blenk had the pleasure to present his work on "Adversarial Network Benchmarking: A Data-Driven Approach" two times in the last weeks. The first time was at the prestigeous conference AMLD organized by EPFL in Lausanne, Switzerland. The second presentation happened in Darmstadt during the SFB MAKI - Scientific Workshop 2020.
Talk Abstract: Communication networks have not only become a critical infrastructure of our digital society, but are also increasingly complex and hence error-prone. This has recently motivated the study of more automated and “self-driving” networks: networks which measure, analyze, and control themselves in an adaptive manner, reacting to changes in the environment. In particular, such networks hence require mechanisms to evaluate potential solutions to problems. However, evaluating solutions is interestingly a challenging task: when using human-constructed examples or real-world data, it is difficult to assess to which degree the data represents the input spectrum also of future demands. Moreover, evaluations that fail to show generalization might hide algorithm weak-spots. This could eventually lead to reliability and security issues later on. To solve this problem, we propose two data-driven frameworks: NetBOA and Toxin. In first proof-of-concept implementations, we show (1) how NetBOA can generate real network traffic to benchmark network functions (e.g., the Open vSwitch) and (2) how Toxin creates adversarial network algorithm input in a simulation environment for data centers. This procedure can bring many benefits: it can help to reveal weak-spots of algorithms or to make them bullet-proof for future network demands.