CoPriv: Network/Protocol Co-Optimization for Communication-Efficient Private Inference
Deep neural network (DNN) inference based on secure 2-party computation (2PC) can offer cryptographically-secure privacy protection but suffers from orders of magnitude latency overhead due to enormous communication. Previous works heavily rely on a proxy metric of ReLU counts to approximate the com...
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Main Authors | , , , , , |
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Format | Journal Article |
Language | English |
Published |
03.11.2023
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Subjects | |
Online Access | Get full text |
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Summary: | Deep neural network (DNN) inference based on secure 2-party computation (2PC)
can offer cryptographically-secure privacy protection but suffers from orders
of magnitude latency overhead due to enormous communication. Previous works
heavily rely on a proxy metric of ReLU counts to approximate the communication
overhead and focus on reducing the ReLUs to improve the communication
efficiency. However, we observe these works achieve limited communication
reduction for state-of-the-art (SOTA) 2PC protocols due to the ignorance of
other linear and non-linear operations, which now contribute to the majority of
communication. In this work, we present CoPriv, a framework that jointly
optimizes the 2PC inference protocol and the DNN architecture. CoPriv features
a new 2PC protocol for convolution based on Winograd transformation and
develops DNN-aware optimization to significantly reduce the inference
communication. CoPriv further develops a 2PC-aware network optimization
algorithm that is compatible with the proposed protocol and simultaneously
reduces the communication for all the linear and non-linear operations. We
compare CoPriv with the SOTA 2PC protocol, CrypTFlow2, and demonstrate 2.1x
communication reduction for both ResNet-18 and ResNet-32 on CIFAR-100. We also
compare CoPriv with SOTA network optimization methods, including SNL,
MetaPruning, etc. CoPriv achieves 9.98x and 3.88x online and total
communication reduction with a higher accuracy compare to SNL, respectively.
CoPriv also achieves 3.87x online communication reduction with more than 3%
higher accuracy compared to MetaPruning. |
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DOI: | 10.48550/arxiv.2311.01737 |