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SynDCIM: A Performance-Aware Digital Computing-in-Memory Compiler with Multi-Spec-Oriented Subcircuit Synthesis

Authors :
Shao, Kunming
Tian, Fengshi
Wang, Xiaomeng
Zheng, Jiakun
Chen, Jia
He, Jingyu
Wu, Hui
Chen, Jinbo
Guan, Xihao
Deng, Yi
Tu, Fengbin
Yang, Jie
Sawan, Mohamad
Cheng, Tim Kwang-Ting
Tsui, Chi-Ying
Publication Year :
2024

Abstract

Digital Computing-in-Memory (DCIM) is an innovative technology that integrates multiply-accumulation (MAC) logic directly into memory arrays to enhance the performance of modern AI computing. However, the need for customized memory cells and logic components currently necessitates significant manual effort in DCIM design. Existing tools for facilitating DCIM macro designs struggle to optimize subcircuit synthesis to meet user-defined performance criteria, thereby limiting the potential system-level acceleration that DCIM can offer. To address these challenges and enable agile design of DCIM macros with optimal architectures, we present SynDCIM, a performance-aware DCIM compiler that employs multi-spec-oriented subcircuit synthesis. SynDCIM features an automated performance-to-layout generation process that aligns with user-defined performance expectations. This is supported by a scalable subcircuit library and a multi-spec-oriented searching algorithm for effective subcircuit synthesis. The effectiveness of SynDCIM is demonstrated through extensive experiments and validated with a test chip fabricated in a 40nm CMOS process. Testing results reveal that designs generated by SynDCIM exhibit competitive performance when compared to state-of-the-art manually designed DCIM macros.<br />Comment: Accepted by 2025 Design, Automation & Test in Europe Conference & Exhibition (DATE) as a regular paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.16806
Document Type :
Working Paper