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APNN-TC

Boyuan Feng, Yuke Wang, Tong Geng, Ang Li, Yufei Ding

202136 citationsDOIOpen Access PDF

Abstract

Over the years, accelerating neural networks with quantization has been widely studied. Unfortunately, prior efforts with diverse precisions (e.g., 1-bit weights and 2-bit activations) are usually restricted by limited precision support on GPUs (e.g., int1 and int4). To break such restrictions, we introduce the first Arbitrary Precision Neural Network framework (APNN-TC)1 to fully exploit quantization benefits on Ampere GPU Tensor Cores. Specifically, APNN-TC first incorporates a novel emulation algorithm to support arbitrary short bit-width computation with int1 compute primitives and XOR/AND Boolean operations. Second, APNN-TC integrates arbitrary precision layer designs to efficiently map our emulation algorithm to Tensor Cores with novel batching strategies and specialized memory organization. Third, APNN-TC embodies a novel arbitrary precision NN design to minimize memory access across layers and further improve performance. Extensive evaluations show that APNN-TC can achieve significant speedup over CUTLASS kernels and various NN models, such as ResNet and VGG.

Topics & Concepts

EmulationComputer scienceSpeedupQuantization (signal processing)ComputationExploitAlgorithmArtificial neural networkResidual neural networkParallel computingTensor (intrinsic definition)Computer engineeringTheoretical computer scienceArtificial intelligenceMathematicsComputer securityEconomic growthEconomicsPure mathematicsAdvanced Neural Network ApplicationsAdversarial Robustness in Machine LearningDomain Adaptation and Few-Shot Learning
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