TEESlice: Protecting Sensitive Neural Network Models in Trusted Execution Environments When Attackers have Pre-Trained Models
Ding Li,
Ziqi Zhang,
Mengyu Yao
et al.
Abstract:Trusted Execution Environments (TEE) are used to safeguard on-device models. However, directly employing TEEs to secure the entire DNN model is challenging due to the limited computational speed. Utilizing GPU can accelerate DNN's computation speed but commercial widely-available GPUs usually lack security protection. To this end, scholars introduce
TEE-shielded DNN partition
(TSDP), a method that protects privacy-sensitive weights within TEEs and offloads insensitive weights to GPUs. N… Show more
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