Litcius/Paper detail

TSPTQ-ViT: Two-Scaled Post-Training Quantization for Vision Transformer

Yu-Shan Tai, Ming-Guang Lin, An-Yeu Wu

202314 citationsDOI

Abstract

Vision transformers (ViTs) have achieved remarkable performance in various computer vision tasks. However, intensive memory and computation requirements impede ViTs from running on resource-constrained edge devices. Due to the non-normally distributed values after Softmax and GeLU, post- training quantization on ViTs results in severe accuracy degradation. Moreover, conventional methods fail to address the high channel-wise variance in LayerNorm. To reduce the quantization loss and improve classification accuracy, we propose a two-scaled post-training quantization scheme for vision transformer (TSPTQ-ViT). We design the value-aware two-scaled scaling factors (V-2SF) specialized for post- Softmax and post-GeLU values, which leverage the bit sparsity in non-normal distribution to save bit-widths. In addition, the outlier-aware two-scaled scaling factors (O-2SF) are introduced to LayerNorm, alleviating the dominant impacts from outlier values. Our experimental results show that the proposed methods reach near-lossless accuracy drops (<0.5%) on the ImageNet classification task under 8-bit fully quantized ViTs.

Topics & Concepts

Softmax functionQuantization (signal processing)Computer scienceTransformerScalingComputationOutlierArtificial intelligenceEdge deviceAlgorithmDeep learningMathematicsEngineeringVoltageElectrical engineeringOperating systemGeometryCloud computingCCD and CMOS Imaging SensorsAdvanced Memory and Neural ComputingInfrared Target Detection Methodologies