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Artificial Neural Networks and Fault Injection Attacks

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arxiv 2008.07072 v2 pith:LXASKSP4 submitted 2020-08-17 cs.CR cs.LG

Artificial Neural Networks and Fault Injection Attacks

classification cs.CR cs.LG
keywords attacksfaultacceleratorsartificialinjectionneuralassessmentassets
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This chapter is on the security assessment of artificial intelligence (AI) and neural network (NN) accelerators in the face of fault injection attacks. More specifically, it discusses the assets on these platforms and compares them with ones known and well-studied in the field of cryptographic systems. This is a crucial step that must be taken in order to define the threat models precisely. With respect to that, fault attacks mounted on NNs and AI accelerators are explored.

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