Feb. 2, 2024, 3:43 p.m. | Yu-Shan TaiAndy An-YeuAndy Wu

cs.CV updates on arXiv.org arxiv.org

While vision transformers (ViTs) have shown great potential in computer vision tasks, their intense computation and memory requirements pose challenges for practical applications. Existing post-training quantization methods leverage value redistribution or specialized quantizers to address the non-normal distribution in ViTs. However, without considering the asymmetry in activations and relying on hand-crafted settings, these methods often struggle to maintain performance under low-bit quantization. To overcome these challenges, we introduce SmoothQuant with bias term (SQ-b) to alleviate the asymmetry issue and reduce …

applications challenges computation computer computer vision cs.cv distribution memory mixed mixed-precision normal practical precision quantization requirements tasks training transformer transformers value vision vision transformers vit

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