Publication | Open Access
Multi-GPU Design and Performance Evaluation of Homomorphic Encryption on GPU Clusters
47
Citations
21
References
2020
Year
Cluster ComputingEngineeringGpu BenchmarkingInformation SecurityComputer ArchitectureGpu ComputingHardware SecurityCompute KernelData ScienceParallel ComputingGpu ClustersComputer EngineeringComputer ScienceGpu ClusterAvailable GpusData SecurityCryptographyMulti-gpu DesignGpu ArchitectureHardware AccelerationEdge ComputingCloud ComputingParallel ProgrammingHomomorphic Encryption
We present a multi-GPU design, implementation and performance evaluation of the Halevi-Polyakov-Shoup (HPS) variant of the Fan-Vercauteren (FV) levelled Fully Homomorphic Encryption (FHE) scheme. Our design follows a data parallelism approach and uses partitioning methods to distribute the workload in FV primitives evenly across available GPUs. The design is put to address space and runtime requirements of FHE computations. It is also suitable for distributed-memory architectures, and includes efficient GPU-to-GPU data exchange protocols. Moreover, it is user-friendly as user intervention is not required for task decomposition, scheduling or load balancing. We implement and evaluate the performance of our design on two homogeneous and heterogeneous NVIDIA GPU clusters: K80, and a customized P100. We also provide a comparison with a recent shared-memory-based multi-core CPU implementation using two homomorphic circuits as workloads: vector addition and multiplication. Moreover, we use our multi-GPU Levelled-FHE to implement the inference circuit of two Convolutional Neural Networks (CNNs) to perform homomorphically image classification on encrypted images from the MNIST and CIFAR - 10 datasets. Our implementation provides 1 to 3 orders of magnitude speedup compared with the CPU implementation on vector operations. In terms of scalability, our design shows reasonable scalability curves when the GPUs are fully connected.
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