Conference paper
Using graphical models as explanations in deep neural networks
Franck Le, Mudhakar Srivatsa, et al.
MASS 2019
Large-scale adoption of MapReduce applications on public clouds is hindered by the lack of trust on the participating virtual machines deployed on the public cloud. In this paper, we propose IntegrityMR, a multi-public clouds architecture-based solution, which performs the MapReduce-based result integrity check techniques at two alternative layers: the task layer and the application layer. Our experimental results show that solutions in both layers offer a high result integrity but non-negligible performance overheads.
Franck Le, Mudhakar Srivatsa, et al.
MASS 2019
Dan Harborne, Ramya Raghavendra, et al.
SPIE Defense + Security 2018
Shen Li, Md Tanvir Al Amin, et al.
ICDCS 2017
Shen Li, Shaohan Hu, et al.
USENIX ATC 2015