Title
Power-based Attacks on Spatial DNN Accelerators
Abstract
AbstractWith proliferation of DNN-based applications, the confidentiality of DNN model is an important commercial goal. Spatial accelerators, which parallelize matrix/vector operations, are utilized for enhancing energy efficiency of DNN computation. Recently, model extraction attacks on simple accelerators, either with a single processing element or running a binarized network, were demonstrated using the methodology derived from differential power analysis (DPA) attack on cryptographic devices. This article investigates the vulnerability of realistic spatial accelerators using general, 8-bit, number representation.We investigate two systolic array architectures with weight-stationary dataflow: (1) a 3 × 1 array for a dot-product operation and (2) a 3 × 3 array for matrix-vector multiplication. Both are implemented on the SAKURA-G FPGA board. We show that both architectures are ultimately vulnerable. A conventional DPA succeeds fully on the 1D array, requiring 20K power measurements. However, the 2D array exhibits higher security even with 460K traces. We show that this is because the 2D array intrinsically entails multiple MACs simultaneously dependent on the same input. However, we find that a novel template-based DPA with multiple profiling phases is able to fully break the 2D array with only 40K traces. Corresponding countermeasures need to be investigated for spatial DNN accelerators.
Year
DOI
Venue
2022
10.1145/3491219
ACM Journal on Emerging Technologies in Computing Systems
DocType
Volume
Issue
Journal
18
3
ISSN
Citations 
PageRank 
1550-4832
0
0.34
References 
Authors
0
3
Name
Order
Citations
PageRank
Ge Li100.34
Mohit Tiwari244523.94
Michael Orshansky31299110.06