Marchisio, A., Mrazek, V., Massa, A., Bussolino, B., Martina, M., & Shafique, M. (2022). RoHNAS: A Neural Architecture Search Framework With Conjoint Optimization for Adversarial Robustness and Hardware Efficiency of Convolutional and Capsule Networks. IEEE Access, 10, 109043–109055. https://doi.org/10.1109/ACCESS.2022.3214312
E191-02 - Forschungsbereich Embedded Computing Systems
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Journal:
IEEE Access
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ISSN:
2169-3536
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Date (published):
13-Oct-2022
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Number of Pages:
13
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Publisher:
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
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Peer reviewed:
Yes
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Keywords:
Adversarial robustness; capsule networks; deep neural networks; energy efficiency; evolutionary algorithm; hardware-aware neural architecture search; latency; memory
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Abstract:
Neural Architecture Search (NAS) algorithms aim at finding efficient Deep Neural Network (DNN) architectures for a given application under given system constraints. DNNs are computationally-complex as well as vulnerable to adversarial attacks. In order to address multiple design objectives, we propose RoHNAS, a novel NAS framework that jointly optimizes for adversarial-robustness and hardware-efficiency of DNNs executed on specialized hardware accelerators. Besides the traditional convolutional DNNs, RoHNAS additionally accounts for complex types of DNNs such as Capsule Networks. For reducing the exploration time, RoHNAS analyzes and selects appropriate values of adversarial perturbation for each dataset to employ in the NAS flow. Extensive evaluations on multi-Graphics Processing Unit (GPU)-High Performance Computing (HPC) nodes provide a set of Pareto-optimal solutions, leveraging the tradeoff between the above-discussed design objectives. For example, a Pareto-optimal DNN for the CIFAR-10 dataset exhibits 86.07% accuracy, while having an energy of 38.63 mJ, a memory footprint of 11.85 MiB, and a latency of 4.47 ms.
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Research Areas:
Computer Engineering and Software-Intensive Systems: 100%