preprintarXiv (Cornell University)Jan 1, 2024GREEN OA

DeepTrust^RT: Confidential Deep Neural Inference Meets Real-Time!

BMBabar, Mohammad FakhruddinHMHasan, Monowar

Washington State University

Indexed inarxivdatacite

Abstract

Deep Neural Networks (DNNs) are becoming common in "learning-enabled" time-critical applications such as autonomous driving and robotics. One approach to protect DNN inference from adversarial actions and preserve model privacy/confidentiality is to execute them within trusted enclaves available in modern processors. However, running DNN inference inside limited-capacity enclaves while ensuring timing guarantees is challenging due to (a) large size of DNN workloads and (b) extra switching between "normal" and "trusted" execution modes. This paper introduces new time-aware scheduling schemes - DeepTrust^RT - to securely execute deep neural inferences for learning-enabled real-time systems. We first propose a…

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Authors

2
  • BM
    Babar, Mohammad FakhruddinCorresponding

    Washington State University

  • HM
    Hasan, Monowar

    Washington State University

Topics & keywords

Keywords
  • Huffman coding
  • Computer science
  • Quantization (signal processing)
  • Artificial neural network
  • Speedup
  • Parallel computing
  • Coding (social sciences)
  • Cache
UN Sustainable Development Goals
  • Affordable and clean energy
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