arXiv Open Access 2025

CIMR-V: An End-to-End SRAM-based CIM Accelerator with RISC-V for AI Edge Device

Yan-Cheng Guo and Tian-Sheuan Chang Chih-Sheng Lin Bo-Cheng Chiou Chih-Ming Lai +3 lainnya
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Abstrak

Computing-in-memory (CIM) is renowned in deep learning due to its high energy efficiency resulting from highly parallel computing with minimal data movement. However, current SRAM-based CIM designs suffer from long latency for loading weight or feature maps from DRAM for large AI models. Moreover, previous SRAM-based CIM architectures lack end-to-end model inference. To address these issues, this paper proposes CIMR-V, an end-to-end CIM accelerator with RISC-V that incorporates CIM layer fusion, convolution/max pooling pipeline, and weight fusion, resulting in an 85.14\% reduction in latency for the keyword spotting model. Furthermore, the proposed CIM-type instructions facilitate end-to-end AI model inference and full stack flow, effectively synergizing the high energy efficiency of CIM and the high programmability of RISC-V. Implemented using TSMC 28nm technology, the proposed design achieves an energy efficiency of 3707.84 TOPS/W and 26.21 TOPS at 50 MHz.

Topik & Kata Kunci

Penulis (8)

Y

Yan-Cheng Guo and

T

Tian-Sheuan Chang

C

Chih-Sheng Lin

B

Bo-Cheng Chiou

C

Chih-Ming Lai

S

Shyh-Shyuan Sheu

W

Wei-Chung Lo

S

Shih-Chieh Chang

Format Sitasi

and, Y.G., Chang, T., Lin, C., Chiou, B., Lai, C., Sheu, S. et al. (2025). CIMR-V: An End-to-End SRAM-based CIM Accelerator with RISC-V for AI Edge Device. https://arxiv.org/abs/2503.22072

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2025
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en
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arXiv
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