DeepSteal: Advanced Model Extractions Leveraging Efficient Weight Stealing in Memories
Adnan Siraj Rakin, Md Hafizul Islam Chowdhuryy, Fan Yao, Deliang, Fan

TL;DR
DeepSteal introduces a novel hardware-assisted model extraction attack that efficiently steals DNN weights using memory side-channel techniques and a new training algorithm, achieving high accuracy in substitute models.
Contribution
This work presents the first effective method to extract detailed DNN weights via hardware fault attacks and a new training algorithm, surpassing prior side-channel limitations.
Findings
Achieved over 90% accuracy in substitute models on CIFAR-10.
Successfully extracted weights of various DNN architectures.
Generated adversarial inputs to fool victim models.
Abstract
Recent advancements of Deep Neural Networks (DNNs) have seen widespread deployment in multiple security-sensitive domains. The need of resource-intensive training and use of valuable domain-specific training data have made these models a top intellectual property (IP) for model owners. One of the major threats to the DNN privacy is model extraction attacks where adversaries attempt to steal sensitive information in DNN models. Recent studies show hardware-based side channel attacks can reveal internal knowledge about DNN models (e.g., model architectures) However, to date, existing attacks cannot extract detailed model parameters (e.g., weights/biases). In this work, for the first time, we propose an advanced model extraction attack framework DeepSteal that effectively steals DNN weights with the aid of memory side-channel attack. Our proposed DeepSteal comprises two key stages.…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Security and Verification in Computing
