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An Efficient and Extensible Zero-knowledge Proof Framework for Neural Networks
May 10, 2024, 3:06 a.m. |
IACR News www.iacr.org
ePrint Report: An Efficient and Extensible Zero-knowledge Proof Framework for Neural Networks
Tao Lu, Haoyu Wang, Wenjie Qu, Zonghui Wang, Jinye He, Tianyang Tao, Wenzhi Chen, Jiaheng Zhang
In recent years, cloud vendors have started to supply paid services for data analysis by providing interfaces of their well-trained neural network models. However, customers lack tools to verify whether outcomes supplied by cloud vendors are correct inferences from particular models, in the face of lazy or malicious vendors. The cryptographic primitive …
analysis chen cloud data data analysis eprint report framework knowledge network networks neural network neural networks paid proof report services supply tao vendors wang
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