perun
Battling Under a Canopy of Russian and Ukrainian Drones
Members of Ukraine's 1st Separate Assault Battalion describe themselves as firemen. Their job is to rapidly deploy to areas along the front that are in danger of collapse. Lately, their service has been in high demand: the front is burning. A large-scale counter-offensive last year failed to achieve meaningful victories, and since then Russia has been on the attack. One of its priorities appears to be Kupyansk, a city in northeastern Ukraine, some twenty miles from the Russian border.
- Asia > Russia (0.72)
- Europe > Russia (0.57)
- Europe > Ukraine > Luhansk Oblast (0.05)
- (4 more...)
- Government > Regional Government > Europe Government (0.47)
- Government > Military > Army (0.33)
Perun: Secure Multi-Stakeholder Machine Learning Framework with GPU Support
Ozga, Wojciech, Quoc, Do Le, Fetzer, Christof
Confidential multi-stakeholder machine learning (ML) allows multiple parties to perform collaborative data analytics while not revealing their intellectual property, such as ML source code, model, or datasets. State-of-the-art solutions based on homomorphic encryption incur a large performance overhead. Hardware-based solutions, such as trusted execution environments (TEEs), significantly improve the performance in inference computations but still suffer from low performance in training computations, e.g., deep neural networks model training, because of limited availability of protected memory and lack of GPU support. To address this problem, we designed and implemented Perun, a framework for confidential multi-stakeholder machine learning that allows users to make a trade-off between security and performance. Perun executes ML training on hardware accelerators (e.g., GPU) while providing security guarantees using trusted computing technologies, such as trusted platform module and integrity measurement architecture. Less compute-intensive workloads, such as inference, execute only inside TEE, thus at a lower trusted computing base. The evaluation shows that during the ML training on CIFAR-10 and real-world medical datasets, Perun achieved a 161x to 1560x speedup compared to a pure TEE-based approach.
- Information Technology > Security & Privacy (1.00)
- Health & Medicine > Diagnostic Medicine > Imaging (0.46)