Evaluating Different Fault Injection Abstractions on the Assessment of DNN SW Hardening Strategies


연구 분야: Verification



학회: 2024 IEEE 33rd Asian Test Symposium (ATS)


초록

1 The reliability of Neural Networks has gained significant attention, prompting efforts to develop SW-based hardening techniques for safety-critical scenarios. However, evaluating hardening techniques using application-level fault injection (FI) strategies, which are commonly hardware-agnostic, may yield misleading results. This study for the first time compares two FI approaches (at the application level (APP) and instruction level (ISA)) to evaluate deep neural network SW hardening strategies. Results show that injecting permanent faults at ISA (a more detailed abstraction level than APP) changes completely the ranking of SW hardening techniques, in terms of both reliability and accuracy. These results highlight the relevance of using an adequate analysis abstraction for evaluating such techniques.


Author Profile
Giuseppe Esposito

Department of Control and Computer Engineering (DAUIN) Politecnico di Torino Turin Italy

Andorra
Author Profile
Juan-David Guerrero-Balaguera

Department of Control and Computer Engineering (DAUIN) Politecnico di Torino Turin Italy

Andorra
Author Profile
Josie E. Rodriguez Condia

Department of Control and Computer Engineering (DAUIN) Politecnico di Torino Turin Italy

Andorra

📄 논문 정보

발행 연도 2024년
인용수 45
출판 국가 Andorra
사이트 IEEE
좋아요 수 0

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